International Journal of Molecular Medicine is an international journal devoted to molecular mechanisms of human disease.
International Journal of Oncology is an international journal devoted to oncology research and cancer treatment.
Covers molecular medicine topics such as pharmacology, pathology, genetics, neuroscience, infectious diseases, molecular cardiology, and molecular surgery.
Oncology Reports is an international journal devoted to fundamental and applied research in Oncology.
Experimental and Therapeutic Medicine is an international journal devoted to laboratory and clinical medicine.
Oncology Letters is an international journal devoted to Experimental and Clinical Oncology.
Explores a wide range of biological and medical fields, including pharmacology, genetics, microbiology, neuroscience, and molecular cardiology.
International journal addressing all aspects of oncology research, from tumorigenesis and oncogenes to chemotherapy and metastasis.
Multidisciplinary open-access journal spanning biochemistry, genetics, neuroscience, environmental health, and synthetic biology.
Open-access journal combining biochemistry, pharmacology, immunology, and genetics to advance health through functional nutrition.
Publishes open-access research on using epigenetics to advance understanding and treatment of human disease.
An International Open Access Journal Devoted to General Medicine.
Cancer cell signaling networks are highly complex and dynamically regulated systems that play key roles in tumor initiation, its progression, metastasis, therapeutic response and drug resistance (1). Rather than functioning as isolated pathways, these networks operate through extensive crosstalk and feedback among multiple signaling cascades, thereby regulating key malignant behaviors such as proliferation, apoptosis, invasion, metabolic reprogramming and immune evasion (2). Advances in multi-omics and systems biology have offered deeper insights into the organization and regulatory principles of these networks (3,4). Such insights have improved the current understanding of tumor heterogeneity and evolutionary dynamics, while also identifying new therapeutic targets and more individualized treatment strategies (5,6). Although several oncogenic pathways overlap across cancers, their functional roles and clinical relevance remain highly context dependent.
In this review, the core architecture of cancer signaling networks, the major oncogenic pathways embedded within them and the dynamic properties that shape their biological and clinical effects were summarized. Particular emphasis was placed on pathway crosstalk, feedback regulation and adaptive reprogramming, and it was discussed how these dynamic features influence tumor phenotypes, therapeutic resistance and clinical outcomes. Rather than providing a static summary of individual signaling pathways, this review adopts a network-level perspective that integrates structural organization, dynamic regulation and translational implications within a unified conceptual framework. Because several oncogenic signaling pathways display context-dependent outputs for different tumor types, this review revolves around common network principles while incorporating representative tumor-specific examples. By linking pathway architecture with adaptive network behavior, the present study aimed to elucidate how signaling interactions (not as isolated pathways) drive tumor progression and mediate therapeutic responses.
Previous reviews have summarized major cancer-related signaling pathways and their crosstalk, particularly focusing on canonical pathways such as MAPK, PI3K/Akt/mTOR and Wnt/β-catenin signaling (7,8). A recent review has also discussed how signaling networks influence cancer metabolism and therapeutic response (2). The present review aimed to take a broader perspective by emphasizing how these pathways interact within a dynamic network. This perspective may provide a more integrated understanding of signaling networks in tumor progression and therapeutic resistance. Compared with previous reviews focusing mainly on individual signaling pathways and selected crosstalk mechanisms, the present review emphasizes the hierarchical organization of cancer signaling networks, adaptive responses under therapeutic pressure, microenvironment-mediated resistance and their translational implications for network-based therapeutic strategies. Fig. 1 presents a simplified conceptual framework of cancer signaling networks, showing the hierarchical flow of signaling from membrane receptors through intracellular transducers and downstream effectors to drive diverse tumor phenotypes. It also highlights major dynamic interactions among oncogenic pathways, including crosstalk, feedback regulation and adaptive reprogramming.
Membrane receptors serve as the initiating nodes of cancer signaling networks by sensing extracellular and microenvironmental cues and transmitting signals intracellularly to drive tumor cell proliferation, migration, survival and other malignant behaviors. Major receptor classes include receptor tyrosine kinases [e.g., EGFR, human EGFR 2 (HER2)], G protein-coupled receptors, integrins, immune checkpoint receptors [e.g., programmed cell death 1 (PD-1)/programmed death ligand 1 (PD-L1)] and cytokine receptors (e.g., TNF and Wnt receptors). Upon ligand binding, these receptors activate downstream cascades, particularly the MAPK, PI3K/Akt and JAK/STAT pathways, thereby promoting tumorigenesis and disease progression (9–12). Aberrant EGFR and HER2 activation is frequently observed across multiple cancers (13,14), while increased PD-1/PD-L1 signaling contributes to tumor immune evasion (15). As central regulatory nodes, membrane receptors are primary targets in precision oncology, with targeted inhibitors and monoclonal antibodies demonstrating substantial clinical benefit across diverse malignancies (16).
Signal transducers act as critical intermediates between membrane receptors and downstream effectors; they integrate, amplify and diversify signaling inputs to dictate cellular responses to extracellular stimuli (17). These molecules fall into four major categories.
G proteins are categorized as heterotrimeric G proteins, which couple to G protein-coupled receptors, and small GTPases, including members of the Ras and Rho families (18). Heterotrimeric G proteins regulate intracellular second messengers such as cAMP, inositol 1,4,5-trisphosphate and diacylglycerol (19), thereby modulating cellular metabolism, ion channel activity and gene expression (20–23). Small GTPases are central nodes in cancer signaling: Ras proteins act as key signaling hubs, where oncogenic mutations often trigger constitutive MAPK/ERK and PI3K/Akt activation, promoting proliferation, survival and metastasis (24,25). By contrast, Rho family proteins primarily regulate cytoskeletal dynamics and cell motility, contributing to cancer invasion and metastatic potential (26).
Kinase cascades, particularly the MAPK and PI3K/Akt/mTOR pathways, amplify and diversify signaling through sequential phosphorylation events (27,28). These pathways regulate key biological processes, with MAPK being primarily involved in proliferation, differentiation and stress responses (29,30), and PI3K/Akt in cell survival, metabolism and therapeutic resistance (31–33). Their multi-layered structure and extensive branching not only confer flexibility in signal processing but also foster tumor heterogeneity and treatment resistance when persistently activated.
Signal integration proteins organize signaling pathways in space and time, including scaffold proteins such as receptor for activated C kinase 1, A-kinase anchoring proteins and IQ motif-containing GTPase-activating protein 1, as well as adaptor proteins such as growth factor receptor-bound protein 2 (Grb2), Src homology 2 domain-containing transforming protein and Grb2-associated binder 1/2 (34–36). By assembling signaling complexes, these molecules enhance signal transduction efficiency and facilitate pathway crosstalk. Certain proteins, such as β-arrestin and Grb2 (Table I), function as both scaffolds and adaptors to coordinate signaling (37,38). Dysregulated proteins disrupt signaling homeostasis, triggering malignancy. Representative scaffold and adaptor proteins involved in signaling integration, together with their associated pathways and tumor-related functions, are summarized in Table I (39–48).
Table I.Representative scaffold and adaptor proteins in cancer signaling networks and their roles in signaling integration and tumor phenotypes. |
Regulatory enzymes and negative regulators critically balance signaling. These include phosphatases such as phosphatase and tensin homolog (PTEN), as well as ubiquitin ligases and SUMOylation enzymes (49,50). These molecules limit persistent pathway activation and preserve network homeostasis. Loss or inactivation of PTEN leads to uncontrolled amplification of oncogenic signaling and represents a key event in cancer progression (51,52).
Downstream effectors are the final mediators that execute the biological consequences of signaling activation. They include transcription factors, cell cycle and apoptosis regulators, metabolic enzymes, cytoskeletal proteins and immune modulators. They collectively control processes such as proliferation, apoptosis, differentiation, metabolism, migration and immune responses (7). Specifically, transcription factors including NF-κB, c-Myc and β-catenin regulate tumor-associated gene expression (53,54), while proteins such as Bcl-2 family members, caspases and p53 control apoptosis and cell cycle progression (55–57). Metabolic regulators such as mTOR and HIF-1α support cellular adaptation (58), while Rho GTPases and Fascin mediate cytoskeletal remodeling and invasion (59,60). Additionally, PD-L1 plays a pivotal role in tumor immune evasion (61). Dysregulated effectors generate malignant phenotypes, drive therapeutic resistance and often yield poor clinical outcomes (62,63). These downstream consequences arise not from isolated signaling events but from the coordinated activation of oncogenic pathways operating within interconnected networks.
Although the major oncogenic pathways described below are broadly involved in cancer biology, their activation patterns, biological functions and clinical relevance vary across tumor types. In certain cancers, specific pathways act as dominant drivers of tumor growth and therapeutic response, while in others, they coordinate with additional signaling modules. Importantly, these pathways are embedded within dynamic networks where crosstalk and feedback regulation shape their functional output. Interactions with parallel pathways and microenvironmental cues further modulate these signals, underscoring the necessity of a network-level perspective to understand tumor behavior and therapeutic response. Such a framework accounts for adaptive reprogramming that ultimately dictates clinical effects.
The PI3K/Akt/mTOR pathway centrally regulates cancer cell proliferation, survival, metabolic reprogramming and therapeutic resistance. Activated downstream of receptor tyrosine kinases and G protein-coupled receptors, sequential activation of PI3K, Akt and mTOR promotes cell growth while suppressing apoptosis (64–68). Aberrant activation of this pathway is frequent in cancer and is often driven by PTEN loss or activating mutations in phosphatidylinositol-4,5-bisphosphate 3-kinase catalytic subunit α (PIK3CA), resulting in constitutive output that supports tumor progression and resistance to therapy (69–71). Its clinical relevance is particularly notable in breast cancer, endometrial cancer and glioblastoma, where PI3K alterations are prevalent. Given its central role, the PI3K/Akt/mTOR pathway has become a major target in precision oncology and its mechanistic inhibition may relieve negative feedback on upstream receptor tyrosine kinases, thereby triggering compensatory activation of parallel signaling cascades, particularly MAPK/ERK (72). This adaptive reprogramming sustains tumor survival, limits the durability of single-pathway inhibition and drives therapeutic resistance (73).
The MAPK/ERK cascade, organized around the Ras-Raf-MEK-ERK kinase axis, regulates multiple biological processes, including proliferation, differentiation, apoptosis and migration (74,75). Oncogenic alterations, particularly mutations in Ras or BRAF, frequently trigger constitutive MAPK/ERK signaling, thereby driving tumor growth, metastasis and therapeutic resistance; accordingly, the clinical importance of this pathway is especially evident in melanoma and colorectal cancer, where Ras or BRAF mutations often function as primary oncogenic drivers (76–81).
Notably, the MAPK/ERK and PI3K/Akt/mTOR pathways are intimately interconnected. Their extensive crosstalk coordinates control of proliferation, survival and stress responses. In numerous tumor contexts, inhibiting one pathway can induce compensatory activation of the other, thereby maintaining downstream signaling output and reducing therapeutic efficacy (82). This reciprocal regulation is a key mechanism of treatment resistance, providing a strong rationale for pharmacological combination therapies targeting both axes. Often, this compensatory response is mediated by the relief of ERK-dependent negative feedback on upstream nodes, which restores signaling after targeted inhibition (83).
The Wnt/β-catenin pathway is a vital regulator of cancer cell stemness, self-renewal and metastatic potential. Upon signaling, β-catenin accumulates in the cytoplasm and translocates to the nucleus to drive the expression of genes involved in proliferation and epithelial-mesenchymal transition (EMT) (84–88). Aberrant Wnt activation has been implicated in colorectal cancer and other tumor contexts, where it contributes to tumor initiation, progression and the maintenance of stem-like and aggressive phenotypes (89,90). Beyond its tumor-intrinsic effects, the Wnt/β-catenin axis modulates the tumor microenvironment and immune responses, further supporting tumor progression (91,92). Mechanistically, stabilized nuclear β-catenin promotes the transcription of EMT-related genes, such as Snail and c-Myc, enhancing tumor invasion, metastasis and therapeutic resistance (93). These features position the pathway as a key candidate for combination-based therapeutic strategies.
In addition to the major pathways described, several other signaling cascades regulate cancer progression, including the JAK/STAT, Notch, Hippo/Yes-associated protein (YAP), NF-κB and Hedgehog pathways. These regulate diverse processes, such as inflammation, immune modulation, cell fate determination and stemness, in a context-dependent manner. For instance, JAK/STAT and NF-κB signaling link inflammation, immune responses to therapeutic resistance (94–98), whereas Notch and Hippo/YAP primarily influence cell fate decisions and cellular plasticity (99,100). Aberrant Hedgehog signaling further promotes tumor proliferation and metastasis, particularly in cancers reactivating developmental programs (101–103). Importantly, these pathways are integrated through extensive crosstalk and feedback regulation, forming a dynamic network with context-dependent outputs. Such interactions, mediated by shared signaling intermediates and transcriptional programs, coordinate regulation of inflammation, immune evasion and tumor cell plasticity (104).
Cancer signaling pathways operate within adaptive network systems rather than as isolated modules. These networks are characterized by crosstalk, feedback regulation and adaptive reprogramming that yield context-dependent signaling outputs (105). Such dynamic properties drive phenotypic plasticity, allowing cancer cells to respond to environmental and therapeutic stresses. Consequently, it is essential to understand how these signaling networks drive tumor phenotypes, adapt to therapeutic pressure and shape clinical outcomes.
Signaling events are tightly regulated spatiotemporally, with their activation, propagation and termination restricted within specific cellular compartments and temporal windows. For example, receptor tyrosine kinases frequently localize to membrane microdomains or lipid rafts for activation (106), while the subcellular localization and nucleo-cytoplasmic shuttling of proteins such as NF-κB, β-catenin and STAT critically influence downstream gene expression and cellular phenotypes. Furthermore, signaling pathways may display transient or sustained activation patterns, as exemplified by the MAPK/ERK cascade (107–110), triggering distinct cellular outcomes ranging from proliferation to differentiation or apoptosis.
A defining feature of cancer signaling networks is their capacity for dynamic adaptation under stress. In response to environmental changes or therapeutic pressure, cancer cells can reprogram signaling activity to sustain survival. Inhibiting dominant pathways, such as PI3K/Akt, often triggers compensatory activation of alternative cascades, including MAPK, Wnt or JAK/STAT (111–113). This adaptive reprogramming may arise from altered protein expression, pathway switching or regulatory mutations (114), representing a central mechanism for drug resistance, metastasis and tumor heterogeneity (115,116). In addition, resistance emerges from pathway reactivation, activation of parallel signaling routes or microenvironment-mediated survival signals (117).
Fig. 1 outlines the signaling hierarchy and directionality from membrane receptors to downstream effectors, while Fig. 2 illustrates the mechanistic basis of pathway crosstalk, therapeutic inhibition and adaptive responses under treatment pressure. Specifically, inhibiting dominant hubs such as PI3K/Akt/mTOR can induce compensatory activation of parallel routes, notably MAPK/ERK and Wnt/β-catenin, maintaining downstream signaling and promoting therapeutic resistance. These adaptive responses often stem from pathway reactivation, bypass signaling or microenvironment-derived cues such as cytokines and growth factors, which collectively shield signaling activity from therapeutic inhibition (118).
Cancer signaling networks possess substantial topological complexity, incorporating branched pathways, positive and negative feedback loops, feedforward regulation and redundant signaling routes. Key nodes such as Ras, Akt and β-catenin serve as central hubs that integrate and distribute signals across multiple axes (8,119). While this complex architecture enhances cellular adaptability under stress, it also enables compensatory signaling and therapeutic escape (120).
Certain signaling circuits exhibit oscillatory or bistable behaviors in response to external stimuli, as seen in the p53-MDM2 and NF-κB-IκB regulatory loops (121,122). These dynamic patterns trigger switch-like responses or periodic signaling activity, enabling flexible transitions between cellular states. Such behaviors drive tumor heterogeneity, cellular adaptability and the development of therapeutic resistance.
Signaling activation is closely linked to epigenetic regulation, including chromatin remodeling, histone modification and DNA methylation (123,124). These processes can encode prior signaling events, generating a form of epigenetic ‘memory’ that stabilizes tumor phenotypes even after the initial stimulus dissipates (125).
Simultaneously, cancer signaling networks continuously engage with the tumor microenvironment (104). Immune cells, fibroblasts and other stromal components can modulate pathway activity, while tumor cells reciprocally remodel their surroundings. These bidirectional interactions further promote tumor progression, immune evasion and adaptive responses to therapy (126). Tumor microenvironment-mediated resistance is also an important cause of treatment failure. In addition to tumor cells themselves, fibroblasts, immune cells, endothelial cells, extracellular matrix components, hypoxia and soluble cytokines can all influence pathway activity during therapy (117,127). For instance, cancer-associated fibroblasts may release hepatocyte growth factor, which activates MET signaling and downstream PI3K/Akt and MAPK pathways, thereby reducing the efficacy of EGFR tyrosine kinase inhibitors (128). Cytokines such as IL-6 and TGF-β can also activate JAK/STAT3, SMAD or EMT-related signaling, promoting tumor cell survival, immune escape and drug resistance (95,97,129). Furthermore, extracellular matrix remodeling may strengthen integrin-FAK/Src signaling (130), while hypoxia can induce HIF-1α-dependent programs related to angiogenesis, metabolic adaptation and treatment resistance (131). These findings suggest that effective treatment may need to target both tumor-intrinsic oncogenic pathways and protective signals from the surrounding microenvironment.
The biological relevance of cancer signaling networks lies in their coordinated ability to shape malignant phenotypes and remodel the tumor microenvironment. Dysregulation of these networks drives key features of cancer, including uncontrolled proliferation, resistance to apoptosis, invasion, metastasis and metabolic reprogramming (132,133). Beyond these tumor-intrinsic effects, these networks reconfigure surrounding stromal and immune components through cytokines, exosomes and other mediators (134).
For example, persistent PI3K/Akt/mTOR and MAPK/ERK activation promotes tumor growth and therapeutic resistance (135–137), while Wnt/β-catenin signaling enhances stemness and metastatic potential (138,139). These alterations can upregulate immunosuppressive molecules, notably PD-L1 (140), and reprogram tumor-associated stromal cells to reinforce immune evasion, angiogenesis and tumor aggressiveness (141). Notably, although many signaling principles are shared across cancers, the phenotypic and therapeutic consequences of dysregulation are highly context-dependent, shaped by lineage, genomic background and the microenvironment. These differences ultimately regulate the efficacy, durability and resistance patterns of targeted therapies.
From a clinical perspective, the significance of cancer signaling networks lies in their coordinated behavior, rather than in isolated oncogenic drivers. Traditional approaches targeting single signaling nodes such as EGFR, PI3K or BRAF have yielded substantial clinical benefits in selected patient populations (142,143). Representative examples include EGFR tyrosine kinase inhibitors for EGFR-mutant non-small cell lung cancer, BRAF/MEK inhibitors for BRAF-mutant melanoma and colorectal cancer, PI3K pathway inhibitors for biomarker-selected tumors and immune checkpoint inhibitors for tumors with specific immune-related biomarkers. In the case of PI3K pathway inhibitors, patients are usually selected according to molecular alterations in the PI3K/Akt/mTOR axis, such as activating PIK3CA mutations, PTEN loss, or other evidence of pathway activation (144). For example, PI3K inhibitors have been used in hormone receptor-positive, HER2-negative, PIK3CA-mutated advanced breast cancer (145). For immune checkpoint therapy, ‘high immune regulatory signaling’ mainly refers to clinically used biomarkers, including increased PD-L1 expression, microsatellite instability-high status, mismatch repair deficiency, high tumor mutational burden or an inflamed tumor microenvironment (146). However, these biomarkers are not perfect predictors, and their clinical value may differ among tumor types and treatment settings (147).
However, the clinical benefit of single-target inhibition is often limited by the adaptive nature of cancer signaling networks (148). In many tumor contexts, suppression of a dominant node fails to fully extinguish oncogenic output, as parallel pathways are reactivated or newly engaged. A representative example is the reciprocal crosstalk between the PI3K/Akt/mTOR and MAPK/ERK axes, where inhibition of one axis can relieve negative feedback or trigger bypass signaling through the other, sustaining proliferation and survival (149,150). Furthermore, intratumoral heterogeneity and microenvironment-mediated survival signals may promote treatment resistance by allowing resistant cell states to persist or emerge under therapeutic pressure. These observations underscore that cancer signaling networks function as integrated systems rather than isolated pathways.
Accordingly, a network-based therapeutic framework has emerged, guiding strategies by pathway interactions and dynamic network behavior. Key approaches include targeting dominant oncogenic drivers such as EGFR, PI3K or BRAF; co-inhibition of parallel pathways to prevent compensatory signaling, notably combined targeting of PI3K and MAPK; vertical inhibition within signaling cascades to ensure sustained pathway suppression; and integration of targeted therapy with immunotherapy or conventional treatments to modulate both tumor-intrinsic and microenvironmental signaling (151). From a translational and pharmacological perspective, these strategies aim not only to suppress primary oncogenic drivers, but to preempt or overcome the pathway reactivation, bypass signaling and adaptive reprogramming that frequently emerge during treatment.
Despite these advances, major challenges remain, including intratumoral heterogeneity, acquired resistance and adaptive network responses (152). Addressing these challenges will require therapeutic strategies accounting for the dynamic and context-dependent signaling networks. A deeper understanding of network-level regulation and its interaction with the tumor microenvironment is warranted for advancing precision oncology with improved long-term clinical outcomes. Mechanistically, resistance to targeted therapies often arises from feedback reactivation of inhibited pathways or compensatory activation of parallel signaling networks, underscoring the need for rational combination therapies based on network-level interactions (153).
Despite substantial progress in targeting cancer signaling networks, certain challenges remain. Tumor heterogeneity is a primary challenge, as pathway activity vary across patients, tumor regions and microenvironments, complicating both network analysis and therapeutic targeting (154,155). In addition, integrating multi-omics data and monitoring dynamic signaling changes in real time remain technically crucial (156), limiting a comprehensive understanding of tumor adaptability and resistance mechanisms. These limitations also hinder the identification of clinically actionable vulnerabilities and the rational design of durable combination therapies.
Emerging technologies are beginning to address these limitations. Advances in single-cell omics, spatial transcriptomics and computational modeling have greatly improved the signaling network resolutions (157–159). These approaches enable more precise characterization of dynamic network rewiring and intercellular interactions, and support targeted discovery and development of more personalized therapeutic strategies.
Furthermore, artificial intelligence (AI) seems promising in this field (160). Machine learning and network-based algorithms can integrate multi-omics and spatial data to reconstruct signaling interactions, identify key regulatory hubs and predict context-specific responses (161). In drug development, AI-assisted approaches may prioritize therapeutic targets, predict synergistic drug combinations and identify resistance-associated adaptations at an earlier stage (162). In addition, AI-driven patient stratification based on signaling signatures may improve biomarker-guided treatment selection (163). However, important challenges remain, including data heterogeneity, limited interpretability and insufficient clinical generalizability.
Looking forward, network-level intervention and multi-target combination strategies are likely to become increasingly important for overcoming therapeutic resistance and improving patient outcomes. A deeper understanding of dynamic signaling networks, with continued integration of multi-omics profiling, real-time monitoring and computational modeling, will be essential for advancing precision oncology.
Research on cancer signaling networks has substantially advanced the current understanding of tumor biology and facilitated the development of precision therapeutic strategies. Rather than functioning as isolated pathways, these networks operate as highly interconnected and dynamic systems that shape tumor behavior, therapeutic response and drug resistance. In this review, it was emphasized that the biological and clinical significance of cancer signaling lies not only in individual oncogenic pathways, but also in the network-level interactions that link signaling architecture with adaptive reprogramming, phenotypic plasticity and therapeutic adaptation. A key challenge moving forward is to elucidate how crosstalk, compensatory activation and adaptive reprogramming collectively drive tumor phenotypes across diverse biological and clinical contexts. Addressing this challenge will require integrated approaches that combine multi-omics analysis, systems biology and real-time monitoring of signaling dynamics. Ultimately, deciphering context-dependent network behavior is essential to improve treatment outcomes and advance precision oncology.
Not applicable.
Funding: No funding was received.
Not applicable.
HL and SS wrote the original draft. LW and QL contributed to conceptualization, literature search and selection, interpretation of the literature, and critical revision of the manuscript. LW provided project administration. Data authentication is not applicable. All authors have read and approved the final manuscript.
Not applicable.
Not applicable.
The authors declare that they have no competing interests.
AI-assisted tools were used only for minor language polishing. Specifically, ChatGPT (OpenAI, GPT-5; http://chatgpt.com/) was used to improve the readability and language of the manuscript. The authors reviewed and edited the final manuscript and take full responsibility for its content. All contents of this review were conceptualized, analyzed and critically reviewed by the authors.
|
Zhou H, Tan L, Liu B and Guan XY: Cancer stem cells: Recent insights and therapies. Biochem Pharmacol. 209:1154412023. View Article : Google Scholar : PubMed/NCBI | |
|
Manning BD and Dibble CC: Growth signaling networks orchestrate cancer metabolic networks. Cold Spring Harb Perspect Med. 14:a0415432024. View Article : Google Scholar : PubMed/NCBI | |
|
Rossi C, Cicalini I, Cufaro MC, Consalvo A, Upadhyaya P, Sala G, Antonucci I, Del Boccio P, Stuppia L and De Laurenzi V: Breast cancer in the era of integrating ‘Omics’ approaches. Oncogenesis. 11:172022. View Article : Google Scholar : PubMed/NCBI | |
|
Joo JI, Park HJ and Cho KH: Normalizing input-output relationships of cancer networks for reversion therapy. Adv Sci (Weinh). 10:e22073222023. View Article : Google Scholar : PubMed/NCBI | |
|
Cortés-Hernández LE, Eslami-S Z, Pantel K and Alix-Panabières C: Molecular and functional characterization of circulating tumor cells: From discovery to clinical application. Clin Chem. 66:97–104. 2020. View Article : Google Scholar : PubMed/NCBI | |
|
Zendehdel H, Esgandari M, Panahinia P, Fazeli R, Etezadi A and Rahimi S: The neutrophil-NET axis in ovarian cancer: Drivers of tumor microenvironment remodeling and therapeutic resistance. Int Immunopharmacol. 168:1158262026. View Article : Google Scholar : PubMed/NCBI | |
|
Hoxhaj G and Manning BD: The PI3K-AKT network at the interface of oncogenic signalling and cancer metabolism. Nat Rev Cancer. 20:74–88. 2020. View Article : Google Scholar : PubMed/NCBI | |
|
Fu D, Hu Z, Xu X, Dai X and Liu Z: Key signal transduction pathways and crosstalk in cancer: Biological and therapeutic opportunities. Transl Oncol. 26:1015102022. View Article : Google Scholar : PubMed/NCBI | |
|
Farooqi AA, Shepetov AM, Rakhmetova V, Ruslan Z, Almabayeva A, Saussakova S, Baigonova K, Baimaganbetova K, Sundetgali K and Kapanova G: Interplay between JAK/STAT pathway and non-coding RNAs in different cancers. Noncoding RNA Res. 9:1009–1022. 2024. View Article : Google Scholar : PubMed/NCBI | |
|
Raji L, Tetteh A and Amin ARMR: Role of c-Src in carcinogenesis and drug resistance. Cancers (Basel). 16:322023. View Article : Google Scholar : PubMed/NCBI | |
|
Xu Q, Fan G and Shao S: Role of TNFRSF12A in cell proliferation, apoptosis, and proinflammatory cytokine expression by regulating the MAPK and NF-κB pathways in thyroid cancer cells. Cytokine. 186:1568412025. View Article : Google Scholar : PubMed/NCBI | |
|
Villarroel A, Del Valle-Pérez B, Fuertes G, Curto J, Ontiveros N, Garcia de Herreros A and Duñach M: Src and Fyn define a new signaling cascade activated by canonical and non-canonical Wnt ligands and required for gene transcription and cell invasion. Cell Mol Life Sci. 77:919–935. 2020. View Article : Google Scholar : PubMed/NCBI | |
|
Buccinnà B, Ramondetti C and Piccinini M: AMPK activation attenuates HER3 upregulation and neuregulin-mediated rescue of cell proliferation in HER2-overexpressing breast cancer cell lines exposed to lapatinib. Biochem Pharmacol. 204:1152282022. View Article : Google Scholar : PubMed/NCBI | |
|
Tsutsumi H, Iwama E, Ibusuki R, Shimauchi A, Ota K, Yoneshima Y, Inoue H, Tanaka K, Nakanishi Y and Okamoto I: Mutant forms of EGFR promote HER2 trafficking through efficient formation of HER2-EGFR heterodimers. Lung Cancer. 175:101–111. 2023. View Article : Google Scholar : PubMed/NCBI | |
|
Ahn M, Mun JG, Han Y and Seo JH: Cancer cell-derived extracellular vesicles: A potential target for overcoming tumor immunotherapy resistance and immune evasion strategies. Front Immunol. 16:16012662025. View Article : Google Scholar : PubMed/NCBI | |
|
Naim MJ and Samad A: A review on EGFR-tyrosine kinase inhibitors and their resistance mechanisms. Curr Pharm Des. March 11–2025.(Epub ahead of print). PubMed/NCBI | |
|
Ullo MF and Case LB: How cells sense and integrate information from different sources. WIREs Mech Dis. 15:e16042023. View Article : Google Scholar : PubMed/NCBI | |
|
Bannoura SF, Khan HY, Uddin MH, Mohammad RM, Pasche BC and Azmi AS: Targeting guanine nucleotide exchange factors for novel cancer drug discovery. Expert Opin Drug Discov. 19:949–959. 2024. View Article : Google Scholar : PubMed/NCBI | |
|
Ray K, Ujvari B, Ramana V and Donald J: Cross-talk between EGFR and IL-6 drives oncogenic signaling and offers therapeutic opportunities in cancer. Cytokine Growth Factor Rev. 41:18–27. 2018. View Article : Google Scholar : PubMed/NCBI | |
|
Pavlova NN and Thompson CB: Oncogenic control of metabolism. Cold Spring Harb Perspect Med. 14:a0415312024. View Article : Google Scholar : PubMed/NCBI | |
|
Huff TC, Camarena V, Sant DW, Wilkes Z, Van Booven D, Aron AT, Muir RK, Renslo AR, Chang CJ, Monje PV and Wang G: Oscillatory cAMP signaling rapidly alters H3K4 methylation. Life Sci Alliance. 3:e2019005292019. View Article : Google Scholar : PubMed/NCBI | |
|
Rimessi A, Pedriali G, Vezzani B, Tarocco A, Marchi S, Wieckowski MR, Giorgi C and Pinton P: Interorganellar calcium signaling in the regulation of cell metabolism: A cancer perspective. Semin Cell Dev Biol. 98:167–180. 2020. View Article : Google Scholar : PubMed/NCBI | |
|
Kankanamge D, Tennakoon M, Weerasinghe A, Cedeno-Rosario L, Chadee DN and Karunarathne A: G protein αq exerts expression level-dependent distinct signaling paradigms. Cell Signal. 58:34–43. 2019. View Article : Google Scholar : PubMed/NCBI | |
|
Wang Y, Tong Y, Tso PH and Wong YH: Regulator of G protein signaling 19 suppresses Ras-induced neoplastic transformation and tumorigenesis. Cancer Lett. 339:33–41. 2013. View Article : Google Scholar : PubMed/NCBI | |
|
Karapetis CS, Jonker D, Daneshmand M, Hanson JE, O'Callaghan CJ, Marginean C, Zalcberg JR, Simes J, Moore MJ, Tebbutt NC, et al: PIK3CA, BRAF, and PTEN status and benefit from cetuximab in the treatment of advanced colorectal cancer-results from NCIC CTG/AGITG CO.17. Clin Cancer Res. 20:744–753. 2014. View Article : Google Scholar : PubMed/NCBI | |
|
Lou Y, Jiang Y, Liang Z, Liu B, Li T and Zhang D: Role of RhoC in cancer cell migration. Cancer Cell Int. 21:5272021. View Article : Google Scholar : PubMed/NCBI | |
|
Bendell JC, Javle M, Bekaii-Saab TS, Finn RS, Wainberg ZA, Laheru DA, Weekes CD, Tan BR, Khan GN, Zalupski MM, et al: A phase 1 dose-escalation and expansion study of binimetinib (MEK162), a potent and selective oral MEK1/2 inhibitor. Br J Cancer. 116:575–583. 2017. View Article : Google Scholar : PubMed/NCBI | |
|
Wu H, Wei M, Li Y, Ma Q and Zhang H: Research progress on the regulation mechanism of key signal pathways affecting the prognosis of glioma. Front Mol Neurosci. 15:9105432022. View Article : Google Scholar : PubMed/NCBI | |
|
Szabó Z, Hornyák L, Miskei M and Székvölgyi L: Two targets, one hit: New anticancer therapeutics to prevent tumorigenesis without cardiotoxicity. Front Pharmacol. 11:5699552021. View Article : Google Scholar : PubMed/NCBI | |
|
Kadasah SF: Targeting the MAPK pathway in cancer. Int J Mol Sci. 27:2142025. View Article : Google Scholar : PubMed/NCBI | |
|
Daver N, Boumber Y, Kantarjian H, Ravandi F, Cortes J, Rytting ME, Kawedia JD, Basnett J, Culotta KS, Zeng Z, et al: A phase I/II study of the mTOR inhibitor everolimus in combination with HyperCVAD chemotherapy in patients with relapsed/refractory acute lymphoblastic leukemia. Clin Cancer Res. 21:2704–2714. 2015. View Article : Google Scholar : PubMed/NCBI | |
|
Shanware NP, Bray K and Abraham RT: The PI3K, metabolic, and autophagy networks: Interactive partners in cellular health and disease. Annu Rev Pharmacol Toxicol. 53:89–106. 2013. View Article : Google Scholar : PubMed/NCBI | |
|
Kim E, Kim JY, Smith MA, Haura EB and Anderson ARA: Cell signaling heterogeneity is modulated by both cell-intrinsic and -extrinsic mechanisms: An integrated approach to understanding targeted therapy. PLoS Biol. 16:e20029302018. View Article : Google Scholar : PubMed/NCBI | |
|
DeFea KA: Beta-arrestins as regulators of signal termination and transduction: How do they determine what to scaffold? Cell Signal. 23:621–629. 2011. View Article : Google Scholar : PubMed/NCBI | |
|
Ma TL, Zhou Y, Zhang CY, Gao ZA and Duan JX: The role and mechanism of β-arrestin2 in signal transduction. Life Sci. 275:1193642021. View Article : Google Scholar : PubMed/NCBI | |
|
Satpathy S, Wagner SA, Beli P, Gupta R, Kristiansen TA, Malinova D, Francavilla C, Tolar P, Bishop GA, Hostager BS and Choudhary C: Systems-wide analysis of BCR signalosomes and downstream phosphorylation and ubiquitylation. Mol Syst Biol. 11:8102015. View Article : Google Scholar : PubMed/NCBI | |
|
Song Q, Ji Q and Li Q: The role and mechanism of β-arrestins in cancer invasion and metastasis (review). Int J Mol Med. 41:631–639. 2018.PubMed/NCBI | |
|
Iwata T, Sedukhina AS, Kubota M, Oonuma S, Maeda I, Yoshiike M, Usuba W, Minagawa K, Hames E, Meguro R, et al: A new bioinformatics approach identifies overexpression of GRB2 as a poor prognostic biomarker for prostate cancer. Sci Rep. 11:56962021. View Article : Google Scholar : PubMed/NCBI | |
|
Yang JC, Du YY, Zuo WQ, Yao JY, Ma K, Liang Y, Zhao MG and Li ZM: RACK1: A multifunctional scaffold protein involved in signal transduction, ribosomal regulation, and cancer pathogenesis. Cell Signal. 144:1125192026. View Article : Google Scholar : PubMed/NCBI | |
|
Kolosov P, Biziaev N and Alkalaeva E: A duality of function: An integrative model of RACK1 as a switch between translational and signaling hubs. Int J Mol Sci. 26:117332025. View Article : Google Scholar : PubMed/NCBI | |
|
Lau HR, Smith HS, Alural B, Martin CE, New LA, Tilak M, Banerjee SL, Robeson HN, Bisson N, Gingras AC, et al: ShcD adaptor protein drives invasion of triple negative breast cancer cells by aberrant activation of EGFR signaling. Mol Oncol. 19:2833–2859. 2025. View Article : Google Scholar : PubMed/NCBI | |
|
Thines L, Roushar FJ, Hedman AC and Sacks DB: The IQGAP scaffolds: Critical nodes bridging receptor activation to cellular signaling. J Cell Biol. 222:e2022050622023. View Article : Google Scholar : PubMed/NCBI | |
|
Franke FC, Slusarenko BO, Engleitner T, Johannes W, Laschinger M, Rad R, Nitsche U and Janssen KP: Novel role for CRK adaptor proteins as essential components of SRC/FAK signaling for epithelial-mesenchymal transition and colorectal cancer aggressiveness. Int J Cancer. 147:1715–1731. 2020. View Article : Google Scholar : PubMed/NCBI | |
|
Bucko PJ and Scott JD: Drugs that regulate local cell signaling: AKAP targeting as a therapeutic option. Annu Rev Pharmacol Toxicol. 61:361–379. 2021. View Article : Google Scholar : PubMed/NCBI | |
|
Pérez-Baena MJ, Cordero-Pérez FJ, Pérez-Losada J and Holgado-Madruga M: The role of GAB1 in cancer. Cancers (Basel). 15:41792023. View Article : Google Scholar : PubMed/NCBI | |
|
Bywaters BC and Rivera GM: Nck adaptors at a glance. J Cell Sci. 134:jcs2589652021. View Article : Google Scholar : PubMed/NCBI | |
|
Zhang Y, Yan M, Yu Y, Wang J, Jiao Y, Zheng M and Zhang S: 14-3-3ε: A protein with complex physiology function but promising therapeutic potential in cancer. Cell Commun Signal. 22:722024. View Article : Google Scholar : PubMed/NCBI | |
|
Farhadi P and Park T: The p130Cas-Crk/CrkL axis: A therapeutic target for invasive cancers unveiled by collaboration among p130Cas, Crk, and CrkL. Int J Mol Sci. 26:40172025. View Article : Google Scholar : PubMed/NCBI | |
|
Dave B, Migliaccio I, Gutierrez MC, Wu MF, Chamness GC, Wong H, Narasanna A, Chakrabarty A, Hilsenbeck SG, Huang J, et al: Loss of phosphatase and tensin homolog or phosphoinositol-3 kinase activation and response to trastuzumab or lapatinib in human epidermal growth factor receptor 2-overexpressing locally advanced breast cancers. J Clin Oncol. 29:166–173. 2011. View Article : Google Scholar : PubMed/NCBI | |
|
Yang J and Yin Y: PTEN in chromatin remodeling. Cold Spring Harb Perspect Med. 10:a0361602020. View Article : Google Scholar : PubMed/NCBI | |
|
Luongo F, Colonna F, Calapà F, Vitale S, Fiori ME and De Maria R: PTEN tumor-suppressor: The dam of stemness in cancer. Cancers (Basel). 11:10762019. View Article : Google Scholar : PubMed/NCBI | |
|
Guo Y, He J, Zhang H, Chen R, Li L, Liu X, Huang C, Qiang Z, Zhou Z, Wang Y, et al: Linear ubiquitination of PTEN impairs its function to promote prostate cancer progression. Oncogene. 41:4877–4892. 2022. View Article : Google Scholar : PubMed/NCBI | |
|
Li F, Zhang J, Arfuso F, Chinnathambi A, Zayed ME, Alharbi SA, Kumar AP, Ahn KS and Sethi G: NF-κB in cancer therapy. Arch Toxicol. 89:711–731. 2015. View Article : Google Scholar : PubMed/NCBI | |
|
Shafi O and Siddiqui G: Tracing the origins of glioblastoma by investigating the role of gliogenic and related neurogenic genes/signaling pathways in GBM development: A systematic review. World J Surg Oncol. 20:1462022. View Article : Google Scholar : PubMed/NCBI | |
|
Du Y, Li C, Zhao Z, Liu Y, Zhang C and Yan J: Efficacy and safety of venetoclax combined with hypomethylating agents for relapse of acute myeloid leukemia and myelodysplastic syndrome post allogeneic hematopoietic stem cell transplantation: A systematic review and meta-analysis. BMC Cancer. 23:7642023. View Article : Google Scholar : PubMed/NCBI | |
|
Shabana SM, Gad NS, Othman AI, Mohamed AF and El-Missiry MA: β-caryophyllene oxide induces apoptosis and inhibits proliferation of A549 lung cancer cells. Med Oncol. 40:1892023. View Article : Google Scholar : PubMed/NCBI | |
|
Marimuthu P and Singaravelu K: Deciphering the crucial residues involved in heterodimerization of Bak peptide and anti-apoptotic proteins for apoptosis. J Biomol Struct Dyn. 36:1637–1648. 2018. View Article : Google Scholar : PubMed/NCBI | |
|
Tong Y, Gao WQ and Liu Y: Metabolic heterogeneity in cancer: An overview and therapeutic implications. Biochim Biophys Acta Rev Cancer. 1874:1884212020. View Article : Google Scholar : PubMed/NCBI | |
|
Dang Y, Jiang N, Wang H, Chen X, Gao Y, Zhang X, Qin G, Li Y and Chen R: Proto-oncogene serine/threonine kinase PIM3 promotes cell migration via modulating Rho GTPase signaling. J Proteome Res. 19:1298–1309. 2020. View Article : Google Scholar : PubMed/NCBI | |
|
de Moraes RP, Pimenta R, Mori FNC, Dos Santos GA, Viana NI, Guimarães VR, de Camargo JA, Leite KRM, Srougi M, Nahas WC and Reis ST: Tissue expression of MMP-9, TIMP-1, RECK, and miR338-3p in prostate gland: Can it predict cancer? Mol Biol Res Commun. 10:149–156. 2021.PubMed/NCBI | |
|
Jiang X, Wang J, Deng X, Xiong F, Ge J, Xiang B, Wu X, Ma J, Zhou M, Li X, et al: Role of the tumor microenvironment in PD-L1/PD-1-mediated tumor immune escape. Mol Cancer. 18:102019. View Article : Google Scholar : PubMed/NCBI | |
|
MacNeil IA, Khan SA, Sen A, Soltani SM, Burns DJ, Sullivan BF and Laing LG: Functional signaling test identifies HER2 negative breast cancer patients who may benefit from c-Met and pan-HER combination therapy. Cell Commun Signal. 20:42022. View Article : Google Scholar : PubMed/NCBI | |
|
Da C, Pu J, Liu Z, Wei J, Qu Y, Wu Y, Shi B, Yang J, He N and Hou P: HACE1-mediated NRF2 activation causes enhanced malignant phenotypes and decreased radiosensitivity of glioma cells. Signal Transduct Target Ther. 6:3992021. View Article : Google Scholar : PubMed/NCBI | |
|
van der Ploeg P, Uittenboogaard A, Thijs AMJ, Westgeest HM, Boere IA, Lambrechts S, van de Stolpe A, Bekkers RLM and Piek JMJ: The effectiveness of monotherapy with PI3K/AKT/mTOR pathway inhibitors in ovarian cancer: A meta-analysis. Gynecol Oncol. 163:433–444. 2021. View Article : Google Scholar : PubMed/NCBI | |
|
Tian LY, Smit DJ and Jücker M: The role of PI3K/AKT/mTOR signaling in hepatocellular carcinoma metabolism. Int J Mol Sci. 24:26522023. View Article : Google Scholar : PubMed/NCBI | |
|
Courtney KD, Corcoran RB and Engelman JA: The PI3K pathway as drug target in human cancer. J Clin Oncol. 28:1075–1083. 2010. View Article : Google Scholar : PubMed/NCBI | |
|
Moghbeli M: PI3K/AKT pathway as a pivotal regulator of epithelial-mesenchymal transition in lung tumor cells. Cancer Cell Int. 24:1652024. View Article : Google Scholar : PubMed/NCBI | |
|
Xu W, Yang Z and Lu N: A new role for the PI3K/Akt signaling pathway in the epithelial-mesenchymal transition. Cell Adh Migr. 9:317–324. 2015. View Article : Google Scholar : PubMed/NCBI | |
|
Fumarola C, Bonelli MA, Petronini PG and Alfieri RR: Targeting PI3K/AKT/mTOR pathway in non small cell lung cancer. Biochem Pharmacol. 90:197–207. 2014. View Article : Google Scholar : PubMed/NCBI | |
|
Liu YY, Huang WL, Wang ST, Hsu HP, Kao TC, Chung WP and Young KC: CD36 inhibition enhances the anti-proliferative effects of PI3K inhibitors in PTEN-loss anti-HER2 resistant breast cancer cells. Cancer Metab. 13:62025. View Article : Google Scholar : PubMed/NCBI | |
|
Yu J, Wu X, Song J, Zhao Y, Li H, Luo M and Liu X: Loss of MHC-I antigen presentation correlated with immune checkpoint blockade tolerance in MAPK inhibitor-resistant melanoma. Front Pharmacol. 13:9282262022. View Article : Google Scholar : PubMed/NCBI | |
|
Browne IM and Okines AFC: Resistance to targeted inhibitors of the PI3K/AKT/mTOR pathway in advanced oestrogen-receptor-positive breast cancer. Cancers (Basel). 16:22592024. View Article : Google Scholar : PubMed/NCBI | |
|
Chen Y and Zhou X: Research progress of mTOR inhibitors. Eur J Med Chem. 208:1128202020. View Article : Google Scholar : PubMed/NCBI | |
|
Guo YJ, Pan WW, Liu SB, Shen ZF, Xu Y and Hu LL: ERK/MAPK signalling pathway and tumorigenesis. Exp Ther Med. 19:1997–2007. 2020.PubMed/NCBI | |
|
Yang M and Huang CZ: Mitogen-activated protein kinase signaling pathway and invasion and metastasis of gastric cancer. World J Gastroenterol. 21:11673–11679. 2015. View Article : Google Scholar : PubMed/NCBI | |
|
Lu H, Liu S, Zhang G, Wu B, Zhu Y, Frederick DT, Hu Y, Zhong W, Randell S, Sadek N, et al: PAK signalling drives acquired drug resistance to MAPK inhibitors in BRAF-mutant melanomas. Nature. 550:133–136. 2017. View Article : Google Scholar : PubMed/NCBI | |
|
Corcoran RB, André T, Atreya CE, Schellens JHM, Yoshino T, Bendell JC, Hollebecque A, McRee AJ, Siena S, Middleton G, et al: Combined BRAF, EGFR, and MEK inhibition in patients with BRAFV600E-mutant colorectal cancer. Cancer Discov. 8:428–443. 2018. View Article : Google Scholar : PubMed/NCBI | |
|
Subbiah V, Kreitman RJ, Wainberg ZA, Gazzah A, Lassen U, Stein A, Wen PY, Dietrich S, de Jonge MJA, Blay JY, et al: Dabrafenib plus trametinib in BRAFV600E-mutated rare cancers: The phase 2 ROAR trial. Nat Med. 29:1103–1112. 2023. View Article : Google Scholar : PubMed/NCBI | |
|
Kciuk M, Gielecińska A, Budzinska A, Mojzych M and Kontek R: Metastasis and MAPK pathways. Int J Mol Sci. 23:38472022. View Article : Google Scholar : PubMed/NCBI | |
|
Wright CJ and McCormack PL: Trametinib: First global approval. Drugs. 73:1245–1254. 2013. View Article : Google Scholar : PubMed/NCBI | |
|
Thota R, Johnson DB and Sosman JA: Trametinib in the treatment of melanoma. Expert Opin Biol Ther. 15:735–747. 2015. View Article : Google Scholar : PubMed/NCBI | |
|
Boulos JC, Yousof Idres MR and Efferth T: Investigation of cancer drug resistance mechanisms by phosphoproteomics. Pharmacol Res. 160:1050912020. View Article : Google Scholar : PubMed/NCBI | |
|
Zhao Y, Murciano-Goroff YR, Xue JY, Ang A, Lucas J, Mai TT, Da Cruz Paula AF, Saiki AY, Mohn D, Achanta P, et al: Diverse alterations associated with resistance to KRAS(G12C) inhibition. Nature. 599:679–683. 2021. View Article : Google Scholar : PubMed/NCBI | |
|
Yang K, Wang X, Zhang H, Wang Z, Nan G, Li Y, Zhang F, Mohammed MK, Haydon RC, Luu HH, et al: The evolving roles of canonical WNT signaling in stem cells and tumorigenesis: Implications in targeted cancer therapies. Lab Invest. 96:116–136. 2016. View Article : Google Scholar : PubMed/NCBI | |
|
Trejo-Solis C, Escamilla-Ramirez A, Jimenez-Farfan D, Castillo-Rodriguez RA, Flores-Najera A and Cruz-Salgado A: Crosstalk of the Wnt/β-catenin signaling pathway in the induction of apoptosis on cancer cells. Pharmaceuticals (Basel). 14:8712021. View Article : Google Scholar : PubMed/NCBI | |
|
Hiremath IS, Goel A, Warrier S, Kumar AP, Sethi G and Garg M: The multidimensional role of the Wnt/β-catenin signaling pathway in human malignancies. J Cell Physiol. 237:199–238. 2022. View Article : Google Scholar : PubMed/NCBI | |
|
Wu Y, Ginther C, Kim J, Mosher N, Chung S, Slamon D and Vadgama JV: Expression of Wnt3 activates Wnt/β-catenin pathway and promotes EMT-like phenotype in trastuzumab-resistant HER2-overexpressing breast cancer cells. Mol Cancer Res. 10:1597–1606. 2012. View Article : Google Scholar : PubMed/NCBI | |
|
Zhang Z, Westover D, Tang Z, Liu Y, Sun J, Sun Y, Zhang R, Wang X, Zhou S, Hesilaiti N, et al: Wnt/β-catenin signaling in the development and therapeutic resistance of non-small cell lung cancer. J Transl Med. 22:5652024. View Article : Google Scholar : PubMed/NCBI | |
|
Qu HL, Hasen GW, Hou YY and Zhang CX: THBS2 promotes cell migration and invasion in colorectal cancer via modulating Wnt/β-catenin signaling pathway. Kaohsiung J Med Sci. 38:469–478. 2022. View Article : Google Scholar : PubMed/NCBI | |
|
Aoki T, Nishida N and Kudo M: Current perspectives on the immunosuppressive niche and role of fibrosis in hepatocellular carcinoma and the development of antitumor immunity. J Histochem Cytochem. 70:53–81. 2022. View Article : Google Scholar : PubMed/NCBI | |
|
Pai SG, Carneiro BA, Mota JM, Costa R, Leite CA, Barroso-Sousa R, Kaplan JB, Chae YK and Giles FJ: Wnt/beta-catenin pathway: Modulating anticancer immune response. J Hematol Oncol. 10:1012017. View Article : Google Scholar : PubMed/NCBI | |
|
Tang L, Xu H, Wu T, Wu W, Lu Y, Gu J, Wang X, Zhou M, Chen Q, Sun X and Cai H: Advances in tumor microenvironment and underlying molecular mechanisms of bladder cancer: A systematic review. Discov Oncol. 15:1112024. View Article : Google Scholar : PubMed/NCBI | |
|
Seo J, Ha J, Kang E and Cho S: The role of epithelial-mesenchymal transition-regulating transcription factors in anti-cancer drug resistance. Arch Pharm Res. 44:281–292. 2021. View Article : Google Scholar : PubMed/NCBI | |
|
Ma Q, Hao S, Hong W, Tergaonkar V, Sethi G, Tian Y and Duan C: Versatile function of NF-ĸB in inflammation and cancer. Exp Hematol Oncol. 13:682024. View Article : Google Scholar : PubMed/NCBI | |
|
Yu H, Lee H, Herrmann A, Buettner R and Jove R: Revisiting STAT3 signalling in cancer: New and unexpected biological functions. Nat Rev Cancer. 14:736–746. 2014. View Article : Google Scholar : PubMed/NCBI | |
|
Lalle G, Twardowski J and Grinberg-Bleyer Y: NF-κB in cancer immunity: Friend or foe? Cells. 10:3552021. View Article : Google Scholar : PubMed/NCBI | |
|
Sabaawy HE, Ryan BM, Khiabanian H and Pine SR: JAK/STAT of all trades: Linking inflammation with cancer development, tumor progression and therapy resistance. Carcinogenesis. 42:1411–1419. 2021. View Article : Google Scholar : PubMed/NCBI | |
|
Rinkenbaugh AL and Baldwin AS: The NF-κB pathway and cancer stem cells. Cells. 5:162016. View Article : Google Scholar : PubMed/NCBI | |
|
Richter S, Bedard PL, Chen EX, Clarke BA, Tran B, Hotte SJ, Stathis A, Hirte HW, Razak ARA, Reedijk M, et al: A phase I study of the oral gamma secretase inhibitor R04929097 in combination with gemcitabine in patients with advanced solid tumors (PHL-078/CTEP 8575). Invest New Drugs. 32:243–249. 2014. View Article : Google Scholar : PubMed/NCBI | |
|
Yuan Y, Zhong W, Ma G, Zhang B and Tian H: Yes-associated protein regulates the growth of human non-small cell lung cancer in response to matrix stiffness. Mol Med Rep. 11:4267–4272. 2015. View Article : Google Scholar : PubMed/NCBI | |
|
Giammona A, Crivaro E and Stecca B: Emerging roles of hedgehog signaling in cancer immunity. Int J Mol Sci. 24:13212023. View Article : Google Scholar : PubMed/NCBI | |
|
Ding J, Li HY, Zhang L, Zhou Y and Wu J: Hedgehog signaling, a critical pathway governing the development and progression of hepatocellular carcinoma. Cells. 10:1232021. View Article : Google Scholar : PubMed/NCBI | |
|
Wang Y, Wang H, Yan Z, Li G, Hu G, Zhang H, Huang D, Wang Y, Zhang X, Yan Y, et al: The critical role of dysregulated Hh-FOXM1-TPX2 signaling in human hepatocellular carcinoma cell proliferation. Cell Commun Signal. 18:1162020. View Article : Google Scholar : PubMed/NCBI | |
|
Zhang X, Ma H, Gao Y, Liang Y, Du Y, Hao S and Ni T: The tumor microenvironment: Signal transduction. Biomolecules. 14:4382024. View Article : Google Scholar : PubMed/NCBI | |
|
Wang X, Jiang W, Du Y, Zhu D, Zhang J, Fang C, Yan F and Chen ZS: Targeting feedback activation of signaling transduction pathways to overcome drug resistance in cancer. Drug Resist Updat. 65:1008842022. View Article : Google Scholar : PubMed/NCBI | |
|
Delos Santos RC, Garay C and Antonescu CN: Charming neighborhoods on the cell surface: Plasma membrane microdomains regulate receptor tyrosine kinase signaling. Cell Signal. 27:1963–1976. 2015. View Article : Google Scholar : PubMed/NCBI | |
|
Ullah R, Yin Q, Snell AH and Wan L: RAF-MEK-ERK pathway in cancer evolution and treatment. Semin Cancer Biol. 85:123–154. 2022. View Article : Google Scholar : PubMed/NCBI | |
|
Kang Y, Lv R, Feng Z and Zhu J: Tumor-associated macrophages improve hypoxia-induced endoplasmic reticulum stress response in colorectal cancer cells by regulating TGF-β1/SOX4. Cell Signal. 99:1104302022. View Article : Google Scholar : PubMed/NCBI | |
|
Jiang Z, Zhang G, Huang L, Yuan Y, Wu C and Li Y: Transmissible endoplasmic reticulum stress: A novel perspective on tumor immunity. Front Cell Dev Biol. 8:8462020. View Article : Google Scholar : PubMed/NCBI | |
|
Lebrun H, Turpin A and Zerbib P: Therapeutic implications of B-RAF mutations in colorectal cancer. J Visc Surg. 158:487–496. 2021. View Article : Google Scholar : PubMed/NCBI | |
|
Radovich M, Solzak JP, Wang CJ, Hancock BA, Badve S, Althouse SK, Bray SM, Storniolo AMV, Ballinger TJ, Schneider BP and Miller KD: Initial phase I safety study of gedatolisib plus cofetuzumab pelidotin for patients with metastatic triple-negative breast cancer. Clin Cancer Res. 28:3235–3241. 2022. View Article : Google Scholar : PubMed/NCBI | |
|
De Luca A, Maiello MR, D'Alessio A, Pergameno M and Normanno N: The RAS/RAF/MEK/ERK and the PI3K/AKT signalling pathways: Role in cancer pathogenesis and implications for therapeutic approaches. Expert Opin Ther Targets. 16 (Suppl 2):S17–S27. 2012. View Article : Google Scholar : PubMed/NCBI | |
|
Shapiro GI, LoRusso P, Cho DC, Musib L, Yan Y, Wongchenko M, Chang I, Patel P, Chan IT, Sanabria-Bohorquez S, et al: A phase Ib open-label dose escalation study of the safety, pharmacokinetics, and pharmacodynamics of cobimetinib (GDC-0973) and ipatasertib (GDC-0068) in patients with locally advanced or metastatic solid tumors. Invest New Drugs. 39:163–174. 2021. View Article : Google Scholar : PubMed/NCBI | |
|
Perez-Stable C, de Las Pozas A, Wangpaichitr M, Sha W, Wang H, Cai R and Schally AV: Growth hormone-releasing hormone (GHRH) antagonist peptides combined with PI3K isoform inhibitors enhance cell death in prostate cancer. Cancers (Basel). 17:16432025. View Article : Google Scholar : PubMed/NCBI | |
|
Henderson V, Smith B, Burton LJ, Randle D, Morris M and Odero-Marah VA: Snail promotes cell migration through PI3K/AKT-dependent Rac1 activation as well as PI3K/AKT-independent pathways during prostate cancer progression. Cell Adh Migr. 9:255–264. 2015. View Article : Google Scholar : PubMed/NCBI | |
|
Palombo R, Passacantilli I, Terracciano F, Capone A, Matteocci A, Tournier S, Alberdi A, Chiurchiù V, Volpe E and Paronetto MP: Inhibition of the PI3K/AKT/mTOR signaling promotes an M1 macrophage switch by repressing the ATF3-CXCL8 axis in Ewing sarcoma. Cancer Lett. 555:2160422023. View Article : Google Scholar : PubMed/NCBI | |
|
Shee K, Yang W, Hinds JW, Hampsch RA, Varn FS, Traphagen NA, Patel K, Cheng C, Jenkins NP, Kettenbach AN, et al: Therapeutically targeting tumor microenvironment-mediated drug resistance in estrogen receptor-positive breast cancer. J Exp Med. 215:895–910. 2018. View Article : Google Scholar : PubMed/NCBI | |
|
Saleem H, Kulsoom Abdul U, Küçükosmanoglu A, Houweling M, Cornelissen FMG, Heiland DH, Hegi ME, Kouwenhoven MCM, Bailey D, Würdinger T and Westerman BA: The TICking clock of EGFR therapy resistance in glioblastoma: Target Independence or target compensation. Drug Resist Updat. 43:29–37. 2019. View Article : Google Scholar : PubMed/NCBI | |
|
Georgescu MM, Islam MZ, Li Y, Traylor J and Nanda A: Novel targetable FGFR2 and FGFR3 alterations in glioblastoma associate with aggressive phenotype and distinct gene expression programs. Acta Neuropathol Commun. 9:692021. View Article : Google Scholar : PubMed/NCBI | |
|
Yang Y, Mou Y, Wan LX, Zhu S, Wang G, Gao H and Liu B: Rethinking therapeutic strategies of dual-target drugs: An update on pharmacological small-molecule compounds in cancer. Med Res Rev. 44:2600–2623. 2024. View Article : Google Scholar : PubMed/NCBI | |
|
Nelson DE, Ihekwaba AEC, Elliott M, Johnson JR, Gibney CA, Foreman BE, Nelson G, See V, Horton CA, Spiller DG, et al: Oscillations in NF-kappaB signaling control the dynamics of gene expression. Science. 306:704–708. 2004. View Article : Google Scholar : PubMed/NCBI | |
|
Konopleva M, Martinelli G, Daver N, Papayannidis C, Wei A, Higgins B, Ott M, Mascarenhas J and Andreeff M: MDM2 inhibition: An important step forward in cancer therapy. Leukemia. 34:2858–2874. 2020. View Article : Google Scholar : PubMed/NCBI | |
|
Xu Y, Tsai CW, Chang WS, Han Y, Huang M, Pettaway CA, Bau DT and Gu J: Epigenome-wide association study of prostate cancer in African Americans identifies DNA methylation biomarkers for aggressive disease. Biomolecules. 11:18262021. View Article : Google Scholar : PubMed/NCBI | |
|
Creixell P, Schoof EM, Erler JT and Linding R: Navigating cancer network attractors for tumor-specific therapy. Nat Biotechnol. 30:842–848. 2012. View Article : Google Scholar : PubMed/NCBI | |
|
Fenercioglu AK, Uzun H and Unal DO: The convergent immunopathogenesis of cigarette smoke exposure: From oxidative stress to epigenetic reprogramming in chronic disease. Int J Mol Sci. 27:1872025. View Article : Google Scholar : PubMed/NCBI | |
|
Grout JA, Sirven P, Leader AM, Maskey S, Hector E, Puisieux I, Steffan F, Cheng E, Tung N, Maurin M, et al: Spatial positioning and matrix programs of cancer-associated fibroblasts promote T-cell exclusion in human lung tumors. Cancer Discov. 12:2606–2625. 2022. View Article : Google Scholar : PubMed/NCBI | |
|
Dzobo K, Senthebane DA and Dandara C: The tumor microenvironment in tumorigenesis and therapy resistance revisited. Cancers (Basel). 15:3762023. View Article : Google Scholar : PubMed/NCBI | |
|
Dai S, Liu Y, Liu Z, Li R, Luo F, Li Y, Dai L and Peng X: Cancer-associated fibroblasts mediate resistance to anti-EGFR therapies in cancer. Pharmacol Res. 206:1073042024. View Article : Google Scholar : PubMed/NCBI | |
|
Liu S, Ren J and Ten Dijke P: Targeting TGFβ signal transduction for cancer therapy. Signal Transduct Target Ther. 6:82021. View Article : Google Scholar : PubMed/NCBI | |
|
Huang J, Zhang L, Wan D, Zhou L, Zheng S, Lin S and Qiao Y: Extracellular matrix and its therapeutic potential for cancer treatment. Signal Transduct Target Ther. 6:1532021. View Article : Google Scholar : PubMed/NCBI | |
|
Sleeboom JJF, van Tienderen GS, Schenke-Layland K, van der Laan LJW, Khalil AA and Verstegen MMA: The extracellular matrix as hallmark of cancer and metastasis: From biomechanics to therapeutic targets. Sci Transl Med. 16:eadg38402024. View Article : Google Scholar : PubMed/NCBI | |
|
Straub CS: Targeting IAPs as an approach to anti-cancer therapy. Curr Top Med Chem. 11:291–316. 2011. View Article : Google Scholar : PubMed/NCBI | |
|
Tanaka M and Siemann DW: Gas6/Axl signaling pathway in the tumor immune microenvironment. Cancers (Basel). 12:18502020. View Article : Google Scholar : PubMed/NCBI | |
|
Yang Y, Li CW, Chan LC, Wei Y, Hsu JM, Xia W, Cha JH, Hou J, Hsu JL, Sun L, et al: Exosomal PD-L1 harbors active defense function to suppress T cell killing of breast cancer cells and promote tumor growth. Cell Res. 28:862–864. 2018. View Article : Google Scholar : PubMed/NCBI | |
|
Avan A, Narayan R, Giovannetti E and Peters GJ: Role of Akt signaling in resistance to DNA-targeted therapy. World J Clin Oncol. 7:352–369. 2016. View Article : Google Scholar : PubMed/NCBI | |
|
Gao Z, Long Y, Wu Y, Pu Y and Xue F: LncRNA LINC02253 activates KRT18/MAPK/ERK pathway by mediating N6-methyladenosine modification of KRT18 mRNA in gastric cancer. Carcinogenesis. 43:419–429. 2022. View Article : Google Scholar : PubMed/NCBI | |
|
Wang Z, Martin D, Vitale-Cross L, Feng X, Molinolo AA, Allevato MM, Wu VH, Gilardi M, Xu H, Chen Q and Gutkind JS: Abstract 5884: 4EBP1 is a tumor suppressor gene unleashed by mTOR inhibition in head and neck squamous cell carcinoma. Cancer Res. 78 (13 Suppl):S58842018. View Article : Google Scholar | |
|
Li P, Zhang Z and Sun P: DOT1L promotes expression of CD44 through the Wnt/β-catenin signaling pathway in early gastric carcinoma. J Cancer. 15:2276–2291. 2024. View Article : Google Scholar : PubMed/NCBI | |
|
Ren J, Yang Y, Peng T and Xu D: Predictive value of β-catenin in bladder cancer: A systematic review and meta-analysis. Biosci Rep. 40:BSR202021272020. View Article : Google Scholar : PubMed/NCBI | |
|
Wang B, Cheng D, Ma D, Chen R, Li D, Zhao W, Fang C and Ji M: Mutual regulation of PD-L1 immunosuppression between tumor-associated macrophages and tumor cells: A critical role for exosomes. Cell Commun Signal. 22:212024. View Article : Google Scholar : PubMed/NCBI | |
|
Kounatidis D, Vallianou NG, Karampela I, Grivakou E and Dalamaga M: The intricate role of adipokines in cancer-related signaling and the tumor microenvironment: Insights for future research. Semin Cancer Biol. 113:130–150. 2025. View Article : Google Scholar : PubMed/NCBI | |
|
Hendriks LE, Kerr KM, Menis J, Mok TS, Nestle U, Passaro A, Peters S, Planchard D, Smit EF, Solomon BJ, et al: Oncogene-addicted metastatic non-small-cell lung cancer: ESMO clinical practice guideline for diagnosis, treatment and follow-up. Ann Oncol. 34:339–357. 2023. View Article : Google Scholar : PubMed/NCBI | |
|
Zecchin D, Moore C, Michailidis F, Horswell S, Rana S, Howell M and Downward J: Combined targeting of G protein-coupled receptor and EGF receptor signaling overcomes resistance to PI3K pathway inhibitors in PTEN-null triple negative breast cancer. EMBO Mol Med. 12:e119872020. View Article : Google Scholar : PubMed/NCBI | |
|
Hossain MT and Hossain MA: Targeting PI3K in cancer treatment: A comprehensive review with insights from clinical outcomes. Eur J Pharmacol. 996:1774322025. View Article : Google Scholar : PubMed/NCBI | |
|
André F, Ciruelos E, Rubovszky G, Campone M, Loibl S, Rugo HS, Iwata H, Conte P, Mayer IA, Kaufman B, et al: Alpelisib for PIK3CA-mutated, hormone receptor-positive advanced breast cancer. N Engl J Med. 380:1929–1940. 2019. View Article : Google Scholar : PubMed/NCBI | |
|
Disis ML, Adams SF, Bajpai J, Butler MO, Curiel T, Dodt SA, Doherty L, Emens LA, Friedman CF, Gatti-Mays M, et al: Society for immunotherapy of cancer (SITC) clinical practice guideline on immunotherapy for the treatment of gynecologic cancer. J Immunother Cancer. 11:e0066242023. View Article : Google Scholar : PubMed/NCBI | |
|
Havel JJ, Chowell D and Chan TA: The evolving landscape of biomarkers for checkpoint inhibitor immunotherapy. Nat Rev Cancer. 19:133–150. 2019. View Article : Google Scholar : PubMed/NCBI | |
|
Das A, Bhattacharya B and Roy S: Decrypting a path based approach for identifying the interplay between PI3K and GSK3 signaling cascade from the perspective of cancer. Genes Dis. 9:868–888. 2022. View Article : Google Scholar : PubMed/NCBI | |
|
Kocher F, Amann A, Zimmer K, Geisler S, Fuchs D, Pichler R, Wolf D, Kurz K, Seeber A and Pircher A: High indoleamine-2,3-dioxygenase 1 (IDO) activity is linked to primary resistance to immunotherapy in non-small cell lung cancer (NSCLC). Transl Lung Cancer Res. 10:304–313. 2021. View Article : Google Scholar : PubMed/NCBI | |
|
Sun Y, Meyers BA, Czako B, Leonard P, Mseeh F, Harris AL, Wu Q, Johnson S, Parker CA, Cross JB, et al: Allosteric SHP2 inhibitor, IACS-13909, overcomes EGFR-dependent and EGFR-independent resistance mechanisms toward osimertinib. Cancer Res. 80:4840–4853. 2020. View Article : Google Scholar : PubMed/NCBI | |
|
Li W, Zheng C, Xu X, Xia Y, Zhang K, Huang A, Zhang X, Zheng Y, Chen G and Zhang S: Combined therapy of dabrafenib and an anti-HER2 antibody-drug conjugate for advanced BRAF-mutant melanoma. Cell Mol Biol Lett. 29:502024. View Article : Google Scholar : PubMed/NCBI | |
|
Kwok HH, Li H, Yang J, Deng J, Lee NCM, Au TW, Sit AK, Hsin MK, Ma SKY, Cheung LWK, et al: Single-cell transcriptomic analysis uncovers intratumoral heterogeneity and drug-tolerant persister in ALK-rearranged lung adenocarcinoma. Cancer Commun (Lond). 43:951–955. 2023. View Article : Google Scholar : PubMed/NCBI | |
|
Chandarlapaty S: Negative feedback and adaptive resistance to the targeted therapy of cancer. Cancer Discov. 2:311–319. 2012. View Article : Google Scholar : PubMed/NCBI | |
|
Wu R, Guo W, Qiu X, Wang S, Sui C, Lian Q, Wu J, Shan Y, Yang Z, Yang S, et al: Comprehensive analysis of spatial architecture in primary liver cancer. Sci Adv. 7:eabg37502021. View Article : Google Scholar : PubMed/NCBI | |
|
Mei Y, Xiao W, Hu H, Lu G, Chen L, Sun Z, Lü M, Ma W, Jiang T, Gao Y, et al: Single-cell analyses reveal suppressive tumor microenvironment of human colorectal cancer. Clin Transl Med. 11:e4222021. View Article : Google Scholar : PubMed/NCBI | |
|
Sun YF, Wu L, Liu SP, Jiang MM, Hu B, Zhou KQ, Guo W, Xu Y, Zhong Y, Zhou XR, et al: Dissecting spatial heterogeneity and the immune-evasion mechanism of CTCs by single-cell RNA-seq in hepatocellular carcinoma. Nat Commun. 12:40912021. View Article : Google Scholar : PubMed/NCBI | |
|
Sinjab A, Han G, Treekitkarnmongkol W, Hara K, Brennan PM, Dang M, Hao D, Wang R, Dai E, Dejima H, et al: Resolving the spatial and cellular architecture of lung adenocarcinoma by multiregion single-cell sequencing. Cancer Discov. 11:2506–2523. 2021. View Article : Google Scholar : PubMed/NCBI | |
|
Yan H, Shi J, Dai Y, Li X, Wu Y, Zhang J, Gu Z, Zhang C and Leng J: Technique integration of single-cell RNA sequencing with spatially resolved transcriptomics in the tumor microenvironment. Cancer Cell Int. 22:1552022. View Article : Google Scholar : PubMed/NCBI | |
|
Hastings JF, O'Donnell YEI, Fey D and Croucher DR: Applications of personalised signalling network models in precision oncology. Pharmacol Ther. 212:1075552020. View Article : Google Scholar : PubMed/NCBI | |
|
Jiang Z, Zhang H, Gao Y and Sun Y: Multi-omics strategies for biomarker discovery and application in personalized oncology. Mol Biomed. 6:1152025. View Article : Google Scholar : PubMed/NCBI | |
|
Park S, Ock CY, Kim H, Pereira S, Park S, Ma M, Choi S, Kim S, Shin S, Aum BJ, et al: Artificial intelligence-powered spatial analysis of tumor-infiltrating lymphocytes as complementary biomarker for immune checkpoint inhibition in non-small-cell lung cancer. J Clin Oncol. 40:1916–1928. 2022. View Article : Google Scholar : PubMed/NCBI | |
|
Yang X, Wang Y, Byrne R, Schneider G and Yang S: Concepts of Artificial Intelligence for Computer-Assisted Drug Discovery. Chem Rev. 119:10520–10594. 2019. View Article : Google Scholar : PubMed/NCBI | |
|
Esteva A, Feng J, van der Wal D, Huang SC, Simko JP, DeVries S, Chen E, Schaeffer EM, Morgan TM, Sun Y, et al: Prostate cancer therapy personalization via multi-modal deep learning on randomized phase III clinical trials. NPJ Digit Med. 5:712022. View Article : Google Scholar : PubMed/NCBI |