Open Access

Expression profile analysis of long non-coding RNAs involved in the metformin-inhibited gluconeogenesis of primary mouse hepatocytes

  • Authors:
    • Yao Wang
    • Hongju Tang
    • Xueying Ji
    • Yuqing Zhang
    • Wan Xu
    • Xue Yang
    • Ruyuan Deng
    • Yun Liu
    • Fengying Li
    • Xiao Wang
    • Libin Zhou
  • View Affiliations

  • Published online on: November 7, 2017     https://doi.org/10.3892/ijmm.2017.3243
  • Pages: 302-310
  • Copyright: © Wang et al. This is an open access article distributed under the terms of Creative Commons Attribution License.

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Abstract

Long non-coding RNAs (lncRNAs) have been demonstrated to regulate metabolic tissue development and function, including adipogenesis, hepatic lipid metabolism, islet function and energy balance. However, the role of lncRNAs in gluconeogenesis remains completely unknown. Metformin reduces glucose output mainly via the inhibition of gluconeogenesis. In the present study, the lncRNA expression profile of primary mouse hepatocytes exposed to cyclic adenosine monophosphate (cAMP), a gluconeogenic stimulus, with or without metformin was analyzed by microarray. Among the 22,016 lncRNAs that were identified, 456 were upregulated and 409 were downregulated by cAMP (fold-change ≥2.0). Furthermore, the cAMP-induced upregulation of 189 lncRNAs and downregulation of 167 lncRNAs was attenuated by metformin. The expression levels of eight lncRNAs were validated by reverse transcription-quantitative polymerase chain reaction, and the results were consistent with those of the microarray analysis. Among them, two lncRNAs NR_027710 and ENSMUST00000138573, were identified to have an association with two protein coding genes, namely peroxisome proliferator-activated receptor-γ coactivator-1α, a critical transcriptional coactivator in gluconeogenesis, and G protein-coupled receptor 155, respectively. The two protein coding genes exhibited similar expression patterns to their associated lncRNAs. The findings of the present study suggest that lncRNAs are potentially involved in the regulation of gluconeogenesis.

Introduction

The incidence of diabetes mellitus is increasing, and this condition is becoming one of the major causes of morbidity and mortality across the globe (1). Blood glucose levels are maintained within a narrow range in healthy individuals by the liver through the opposing actions of insulin and glucagon (2). Hepatic gluconeogenesis, which is inhibited by insulin and stimulated by glucagon, serves an essential role in the maintenance of a normal blood glucose level during fasting. Gluconeogenesis becomes unrestrained in diabetes due to either deficient insulin secretion in type 1 diabetes mellitus or deficient insulin action in type 2 diabetes mellitus, which contributes to hyperglycemia (3). Therefore, elucidation of the molecular mechanism involved in the regulation of hepatic gluconeogenesis is likely to provide new avenues for the treatment of type 2 diabetes mellitus.

Long non-coding RNAs (lncRNAs) are defined as transcripts of >200 nucleotides (nt) that do not encode protein. According to their position relative to nearby coding genes, lncRNAs can generally be classified into four categories, namely sense overlap, antisense overlap, bidirectional and intergenic noncoding RNAs (4). It has been suggested that lncRNAs serve a pivotal role in physiology and disease (5,6). Morán et al (7) uncovered hundreds of islet lncRNAs by strand-specific analysis, some of which were dysregulated in type 2 diabetes or mapped to genetic loci underlying diabetes susceptibility. In adipose tissue, numerous lncRNAs have been identified to regulate adipogenesis (8). In muscle cells, H19 LncRNA has been indicated to mediate the regulation of glucose metabolism (9). However, little is known about the role of lncRNAs in hepatic gluconeogenesis.

In the fasting state, the increased secretion of the catabolic hormone glucagon stimulates gluconeogenesis by triggering the cyclic adenosine monophosphate (cAMP)/protein kinase A pathway and promoting the transcription of gluconeogenic genes (10). Metformin is currently the first drug of choice for the treatment of type 2 diabetes mellitus (11). It has been demonstrated that metformin reduces glucose output mainly via the inhibition of gluconeogenesis (12). However, the exact mechanism remains unclear (1315). To identify whether lncRNAs are involved in the metformin-mediated inhibition of gluconeogenesis, a systematic analysis of the lncRNA expression profile in cAMP-stimulated primary mouse hepatocytes was performed in the present study. The cAMP-induced changes in lncRNA expression that were attenuated by metformin were identified. Among them, the expression levels of eight lncRNAs were validated by reverse transcription-quantitative polymerase chain reaction (RT-qPCR). The aim of the present study was to identify the potential role of lncRNAs in the regulation of gluconeogenesis.

Materials and methods

Materials

A total of 48 C57Bl/6 mice (age, 8–12 weeks old; weight, 18–20 g) were purchased from Shanghai Slack Experimental Center (Shanghai, China) and were housed in a specific pathogen free (SPF) environment (24–26°C; relative humidity 50–60%) with a 12-h light/dark cycle and free access to food and water. Dulbecco's modified Eagle's medium (DMEM) and Hank's balanced salt solution (HBSS) were obtained from Gibco (Thermo Fisher Scientific, Inc., Waltham, MA, USA). Hepatocyte medium was purchased from ScienCell Research Laboratories, Inc. (Carlsbad, CA, USA). Sodium pyruvate, sodium lactate, dexamethasone, bovine serum albumin (BSA), 8-bromoadenosine 3′,5′-cyclic monophosphate (8-br-cAMP) and metformin were acquired from Sigma-Aldrich (Merck KGaA, Darmstadt, Germany). All the primers used in RT-qPCR were synthesized by Shanghai Sangon Biological Engineering Technology and Services Co., Ltd. (Shanghai, China).

Primary mouse hepatocyte isolation and culture

All experiments were supervised and approved by the laboratory ethics committee of Ruijin Hospital affiliated with Shanghai Jiaotong University School of Medicine (Shanghai, China). Hepatocytes were isolated from 8–12 week old male C57Bl/6 mice. Briefly, following anesthesia, mouse livers were perfused with 10 ml 1X HBSS without calcium, followed by perfusion with 0.05% collagenase IV in calcium-containing HBSS in a recirculating manner. The liver was then detached and filtered through a 70 μm nylon mesh and hepatocytes were sedimented by centrifugation at 200 × g for 5 min at 4°C. The hepatocytes were plated onto 6-well plates and grown in hepatocyte medium supplemented with BSA, penicillin/streptomycin and hepatocyte growth factor. The cultures were maintained at 37°C in humidified atmosphere (95% air and 5% CO2). After 24 h, the cells had become attached to the plates and the medium was replaced with low glucose DMEM containing 0.25% BSA with dexamethasone (100 nM) for prestimulation for 12–16 h. The cells were then incubated with 100 μM 8-br-cAMP (a permeable analogue of cAMP) in the presence or absence of 2 mM metformin in glucose-free DMEM containing gluconeogenic substrates (10 mM sodium lactate and 1 mM sodium pyruvate) for 8 h.

RNA extraction and quality control

Total RNA was extracted from primary mice hepatocytes using TRIzol reagent (Invitrogen; Thermo Fisher Scientific, Inc.) according to the manufacturer's protocol. The RNA purity and concentration was evaluated with a NanoDrop-2000 spectrophotometer (Thermo Fisher Scientific, Inc.). The optical density (OD) absorbance ratio at 260 and 280 nm (A260/A280 ratio) was ~2.0 and the OD A260/A230 ratio was ~1.8. RNA integrity was determined by standard denaturing agarose gel electrophoresis, which revealed that the samples were good quality.

Microarray analysis

ArrayStar mouse LncRNA microarray version 2.0 (ArrayStar Inc., Rockville, MD, USA) is designed for the global profiling of mouse lncRNAs in hepatocytes isolated from 3 mice (i.e., 3 groups at 3 replicates). The sample preparations and microarray hybridization were performed based on the manufacturer's protocols. Briefly, 1 μg total RNA from each sample was amplified and transcribed into fluorescent cRNA using Agilent's Quick Amp Labeling kits (Agilent Technologies, Inc., Santa Clara, CA, USA) according to the manufacturer's protocol. The labeled cRNAs were hybridized onto the mouse 8×60K LncRNA array. After washing, the arrays were scanned using the Agilent G2505C Microarray Scanner System, and Agilent Feature Extraction software was used to analyze the acquired array images (Agilent Technologies, Inc.). Quantile normalization and subsequent data processing were performed using the GeneSpring GX v12.0 software package (Agilent Technologies, Inc.). The threshold set for significantly differential genes was an absolute log value of fold-change ≥2 and a P-value ≤0.05. The microarray analysis was performed by KangChen Bio-tech Inc. Corporations (Shanghai, China).

RT-qPCR

Following total RNA extraction, as described above, cDNA was synthesized by reverse transcription using Superscript II RT reagent kit (Promega Corporation, Madison, WI, USA) according to the manufacturer's protocol. RT-qPCR was performed with the Roche LightCycle 480 instrument (Roche Diagnostics, Basel, Switzerland) using SYBR Premix Ex Taq (Takara Bio, Inc., Otsu, Japan) in a final volume of 10 μl. The PCR conditions were as follows: Denaturation at 95°C for 10 sec, 40 cycles at 95°C for 5 sec and 60°C for 31 sec. A melting curve was constructed in the temperature range of 60 to 95°C at the end of the amplification. The sequences of the primers used are shown in Table I. Relative gene expression levels were quantified based on the cycle threshold (Cq) values and normalized to the internal control gene β-actin, which received a value of 1. The relative gene expression was calculated using the 2−ΔΔCq method (16).

Table I

Sequence of the primers used for reverse transcription-quantitative polymerase chain reaction.

Table I

Sequence of the primers used for reverse transcription-quantitative polymerase chain reaction.

GeneForward sequence (5′ to 3′)Reverse sequence (5′ to 3′)
PEPCK GTGCTGGAGTGGATGTTCGG CTGGCTGATTCTCTGTTTCAGG
AK133602 GACCAGTCTGACCCCTATCC TAACCAGCCATTCACCCTC
ENSMUST00000138573 CCTCAGCACAGAAACCACC AGCCTGTCCAACTATGCGT
ENSMUST00000129953 TTCAGCCTACAATCCCAAG GTGGAATACACCCCGAAGT
uc009njr.1 TTTGTCGCTCATCCACGCT GCAAATGGTCCCGCAAATA
AA591058 GACCACCAGGCAGCACTTC ACCACACACACCCACACACAC
NR_027710 TGCCATATCTTCCAGTGACC TAAGGTTCGCTCAATAGTCTTG
NR_030715 TGGGGTGGAGAAGACAACA AGCACAACCACAAGCATCTAC
ENSMUST00000145208 TCTCAACTCTATGCCGCCTT GCACACTTCCGCTTCACCT
Gpr155 GTTTTTCTGTGCCGTGTTTAACT GGGGGATTCTCTGTCTGCT
PGC-1α ATACCGCAAAGAGCACGAGAAG CTCAAGAGCAGCGAAAGCGTCACAG
β-actin GGCTGTATTCCCCTCCATCG CCAGTTGGTAACAATGCCATGT

[i] PEPCK, phosphoenolpyruvate carboxykinase; Gpr155, G protein-coupled receptor 155; PGC-1α, peroxisome proliferator-activated receptor-γ coactivator-1α.

Statistical analysis

All values are presented as mean ± standard deviation from at least three independent experiments, and P≤0.05 was considered to indicate a statistically significant difference. Differential expression levels of genes were compared using ANOVA for multiple groups or Student's t-test for two groups. Statistical analysis was performed by SPSS 18.0 software (IBM, Armonk, NY, USA).

Results

Phosphoenolpyruvate carboxykinase (PEPCK) expression levels under different conditions

Gluconeogenesis is tightly controlled through the transcriptional regulation of PEPCK, the rate-limiting enzyme of hepatic gluconeogenesis (17). Metformin has been reported to suppress PEPCK expression in primary hepatocytes (14). Prior to microarray analysis, the effect of metformin on PEPCK mRNA expression in the primary mouse hepatocytes was investigated. Following the incubation of primary mouse hepatocytes with 100 μM 8-br-cAMP for 8 h, PEPCK mRNA expression was significantly increased, and this increase was significantly suppressed by 2 mM metformin (Fig. 1). This indicates that the experimental conditions are suitable for studying the mechanism of gluconeogenesis. Therefore, the microarray analysis of the lncRNAs expression profile was performed using the same conditions.

Profile of the microarray data

A total of 22,016 lncRNAs were detected in the primary mouse hepatocytes using ArrayStar Mouse LncRNA Microarray version 2.0. The lncRNAs represented in this microarray have been sourced from authoritative databases, including RefSeq, UCSC Knowngenes and Ensembls. Scatter plots were used to assess the variation in the expression of lncRNAs between the cAMP group and the control group (Fig. 2A) or between the metformin group and the cAMP group (Fig. 2B). By setting a threshold for differential expression at fold-change >2.0-fold, 865 differentially expressed lncRNAs (456 upregulated and 409 downregulated lncRNAs) were identified in the cAMP group vs. the control group. Compared with the cAMP group, 4,580 differentially expressed lncRNAs were identified, of which 2,114 lncRNAs were upregulated and 2,466 lncRNAs were downregulated in the metformin group. Among the cAMP-upregulated lncRNAs, 189 were downregulated by metformin. Among the cAMP-downregulated lncRNAs, 167 were upregulated by metformin. Heatmaps demonstrate the lncRNA expression profiles of the groups, and the expression values of the 30 most strongly cAMP-upregulated and cAMP-downregulated lncRNAs (Fig. 2C and D and Table II) reversed by metformin are presented.

Table II

Top 30 cAMP-upregulated lncRNAs and cAMP-downregulated lncRNAs reversed by metformin.

Table II

Top 30 cAMP-upregulated lncRNAs and cAMP-downregulated lncRNAs reversed by metformin.

SeqnameFold-changeRegulation (cAMP vs. control)Fold-changeRegulation (metformin vs. cAMP)
AK00875463.58867Up55.04594Down
AK03602357.2507Up3.325115Down
ENSMUST0000013857337.43524Up2.130461Down
uc007biz.131.35165Up17.08355Down
NR_03071525.00611Up45.54781Down
uc009njr.122.53223Up4.457007Down
MM9LINCRNAEXON1027119.73751Up2.071386Down
ENSMUST0000012995318.7799Up8.698158Down
uc008hhq.115.70811Up8.776502Down
AK13360215.02128Up8.871666Down
ENSMUST0000014786814.96649Up32.93101Down
AA59105814.75416Up16.43587Down
uc009jlk.112.59451Up43.2916Down
AK0402398.804657Up8.449728Down
AK0185027.718255Up8.491624Down
ENSMUST000001665597.339848Up2.552899Down
ENSMUST000001646456.906824Up2.483507Down
uc007otm.16.888684Up6.263191Down
ENSMUST000001452086.529995Up19.36338Down
uc007idu.16.296531Up3.856799Down
AK0526096.237578Up7.895747Down
CR5189616.112049Up2.601747Down
ENSMUST000001375826.028889Up8.330698Down
NR_0245136.003099Up10.10774Down
NR_0279015.708479Up20.74246Down
ENSMUST000001300945.705397Up33.7096Down
ENSMUST000001422605.699138Up15.27239Down
ENSMUST000001614915.59761Up29.0643Down
ENSMUST000001297585.463225Up5.843725Down
NR_0307825.312138Up2.623824Down
BY00847921.01573Down2.650546Up
NR_03353315.91963Down2.650648Up
NR_03071914.39216Down3.259029Up
uc.71+12.23815Down2.515803Up
ENSMUST000001190078.960969Down2.669164Up
AK0185768.671295Down3.36866Up
NR_0307206.8741Down4.131914Up
AK1717756.527647Down2.402267Up
uc008ref.16.215065Down5.873268Up
ENSMUST000001171856.061Down3.369349Up
uc008iqy.16.043397Down3.388012Up
AA6361625.986786Down2.320948Up
mouselincRNA1303+5.755683Down7.49714Up
MM9LINCRNAEXON11420+5.640478Down3.268149Up
ENSMUST000001521905.534303Down2.962099Up
AK1489675.531486Down3.036806Up
uc007qpd.15.508539Down8.222444Up
AK1404665.259056Down2.131494Up
ENSMUST000001698815.179452Down3.134108Up
uc007cua.15.058929Down3.124969Up
AI5861754.876382Down4.435117Up
NR_0336294.820504Down2.005511Up
AK0196124.674555Down2.644345Up
mouselincRNA1040+4.510026Down49.62078Up
NR_0027024.507347Down4.266528Up
ENSMUST000001296094.367185Down5.31341Up
ENSMUST000001198284.262482Down11.6708Up
uc008ijm.14.213697Down4.486794Up
AK0356104.009485Down2.407165Up
uc009spu.13.959393Down2.946273Up

[i] The table lists only some of the results for lncRNAs with an up- or downregulation in expression in the cAMP group compared with the control group and in the metformin group compared with the cAMP group. Seqname, lncRNA name; fold-change, absolute fold-change between the compared groups; up, upregulation; down, downregulation; cAMP, cyclic adenosine monophosphate; lncRNA, long non-coding RNA.

Expression signatures of metformin-reversed lncRNAs

It is likely that these metformin-reversed lncRNAs serve a critical role in the regulation of gluconeogenesis. Therefore, some general signatures of these lncRNAs, such as their sources, classification, length distribution and chromosome distribution, were investigated. A pie chart was constructed to show the number of metformin-reversed lncRNAs collected from different databases (Fig. 3A). There were 78 antisense overlap, 25 bidirectional, 214 intergenic and 39 sense overlap lncRNAs among these lncRNAs (Fig. 3B), which were mainly between 400 and 3,600 nt in length (Fig. 3C). Chromosome distribution analysis demonstrated that these metformin-reversed lncRNAs were located on a number of different chromosomes (Fig. 3D and E).

RT-qPCR validation

Among the identified metformin-reversed lncRNAs, 8 cAMP-stimulated and metformin-inhibited l ncR NAs (A K1336 02, ENSM UST 0 0 0 0 0138573, ENSMUST00000129953, uc009njr.1, AA591058, NR_027710, NR_030715 and ENSMUST00000145208) were selected for analysis by RT-qPCR in order to verify the microarray data. The expression levels of all 8 cAMP-stimulated lncRNAs were significantly decreased in the presence of metformin as shown by RT-qPCR (Fig. 4), consistent with the results of the microarray analysis.

Associated coding gene expression

Ponjavic et al (18) emphasized the importance of lncRNA and its adjacent protein-coding gene pairs when investigating the function of lncRNAs. Therefore, using the UCSC genome browser (http://genome.ucsc.edu/) and NONCODE database (http://www.noncode.org), the sequences of the eight validated lncRNAs and their associated coding genes were obtained (data not shown). The lncRNA ENSMUST00000138573 is a 614-nt antisense overlapping lncRNA associated with the G protein-coupled receptor 155 (Gpr155) gene. LncRNA NR_027710 is a sense overlapping lncRNA, which is located near the PGC-1α gene. Notably, RT-qPCR analysis demonstrated that Gpr155 and PGC-1α displayed a similar expression pattern to their associated lncRNAs under the same treatment conditions (Fig. 5A and B). Therefore, it is possible that the two lncRNAs modulate gluconeogenesis through their associated protein-coding genes.

Discussion

Excessive glucose output via gluconeogenesis is a critical pathological factor contributing to hyperglycemia in type 2 diabetes mellitus, during which the liver synthesizes glucose from non-carbohydrate precursors, including pyruvate and lactate (19,20). Under the fasting state, increased pancreatic hormone glucagon interacts with the glucagon receptor and activates adenylate cyclase, thus leading to an elevation of intracellular cAMP (10). Elevated cAMP then triggers gluconeogenesis via activation of the transcriptional factor cAMP-response element binding protein (CREB) (10, 21). It is well known that the activity of the gluconeogenic pathway is controlled by the gene expression of several key enzymes, including PEPCK. A large body of evidence from animal studies and diabetic patients has demonstrated that metformin lowers blood glucose levels by inhibiting gluconeogenesis (1214). The present research team have also observed that metformin decreases glucose production in primary mouse hepatocytes (data not shown). In the present study, cAMP-induced PEPCK mRNA expression was demonstrated to be suppressed by metformin, consistent with previous studies (13,14).

lncRNAs were initially considered to be transcriptional 'noise' of the mammalian genome; however, there is considerable evidence that lncRNAs serve key roles in various biological processes via the regulation of gene expression at the level of chromatin remodeling, transcriptional control and post-transcriptional processing (22). LncRNAs have also been implicated in numerous human diseases, including Alzheimer's disease (23), cardiovascular diseases (24), diabetes (25) and various cancers (26). There are many studies demonstrating that lncRNAs are involved in the differentiation and homeostasis of metabolic tissues, including islets, skeletal muscle and adipose tissues, as summarized in a recent review (27). Particularly in islets, there is growing evidence that lncRNAs are involved in the determination of β-cell identity and participate in the misregulation of gene expression during type 2 diabetes (7,28). However, to the best of our knowledge, the effect of lncRNA on hepatic gluconeogenesis has not been elucidated. In the present study, a hepatocyte model with cAMP and metformin treatment was used to better understand the potential role of lncRNAs in the hepatic gluconeogenesis process.

Using microarray analysis, 865 and 4,580 differentially expressed lncRNAs were identified in the cAMP group vs. the control group and the metformin group vs. the cAMP group, respectively. Among the cAMP-regulated lncRNAs, 356 were reversed by metformin treatment, and the expression of 189 AMP-upregulated lncRNAs was decreased by metformin. Previous studies have demonstrated that metformin suppresses the cAMP-stimulated expression of genes involved in gluconeogenesis (14,29). By analyzing the expression signatures of the metformin-reversed lncRNAs, it was found that the majority were long intergenic noncoding RNAs. Therefore, it is possible that these lncRNAs regulate the expression of neighbouring protein-coding genes. A set of 8 cAMP-upregulated and metformin-downregulated lncRNAs was selected with which to validate the results of the micro-array using RT-qPCR. The results suggest that metformin may decrease gluconeogenesis by globally altering hepatic lncRNA expression.

Although the precise roles of these lncRNAs in gluconeogenesis remain unknown, lncRNAs have been demonstrated to regulate neighbouring gene expression through cis- and trans-mechanisms (5). Notably, a strong co-expression of lncRNA NR_027710 and PGC-1α was validated by the RT-qPCR analysis in the present study, as shown in Figs. 4F and 5A. This implies a potential role of NR_027710 in the regulation of PGC-1α expression. Hormonal signaling regulates hepatic gluconeogenesis by triggering a cascade of transcriptional events involving various transcriptional activators and coactivators, including PGC-1α, CREB and transducer of regulated CREB activity 2 (3032). LncRNA NR_027710 has been found to be transcribed from the natural-sense strand of the gene PGC-1α, which encodes the transcriptional coactivator PGC-1α. Herzig et al (30) demonstrated that PGC-1α is induced by CREB to trigger the expression of gluconeogenic genes. The results of the present study and previous studies (14,17) demonstrated that 8-br-cAMP caused a significant increase in the PGC-1α transcript, which was suppressed by metformin. According to the bioinformatic analysis, ENSMUST00000138573, a 614-nt lncRNA exhibits a natural antisense association with the coding gene Gpr155 in chromosome 2. In the present study, the expression level of Gpr155 displayed a similar pattern of change to that of lncRNA ENSMUST00000138573. Kobayashi et al (33) revealed that Gpr155 was one of four candidate genes for type 2 diabetes by performing exome sequencing analysis. It has been shown that lncRNAs act as transcriptional cofactors to modulate the transcription of adjacent protein coding genes (34), which suggests that lncRNA NR_027710 and lncRNA ENSMUST00000138573 may affect the expression of PGC-1α and Gpr155 through an unknown mechanism. These two lncRNA-mRNA gene pairs highlight the importance of lncRNAs in the modulation of glucose homeostasis.

In conclusion, to the best of our knowledge, the present study is the first to reveal the role of lncRNA in gluconeogenesis by conducting a global microarray analysis. It is likely that metformin inhibits hepatic gluconeogenesis by regulating lncRNA expression. In addition, two lncRNAs NR_027710 and ENSMUST00000138573 are associated with PGC-1α and Gpr155, respectively. The two pairs of lncRNAs and coding protein genes exhibit a similar expression pattern, suggesting that lncRNAs may exert their functions through interactions with coding transcripts and proteins in gluconeogenesis. The present study provides a new perspective for understanding the glucose-lowering mechanism of metformin. However, the exact regulatory mechanisms of the specific lncRNAs involved in gluconeogenesis require further investigation, potentially via loss and gain of function studies.

Acknowledgments

The present study was funded by grants from the National Natural Science Foundation of China (grant nos. 81170720, 81270910, 81370876 and 81471030).

Glossary

Abbreviations

Abbreviations:

lncRNA

long non-coding RNA

cAMP

cyclic adenosine monophosphate

PGC-1α

peroxisome proliferator-activated receptor-γ coactivator-1α

Gpr155

G protein-coupled receptor 155

8-br-cAMP

8-bromoadenosine 3′,5′-cyclic monophosphate

RT-qPCR

reverse transcription-quantitative polymerase chain reaction

PEPCK

phosphoenolpyruvate carboxykinase

CREB

cAMP-response element binding protein

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January-2018
Volume 41 Issue 1

Print ISSN: 1107-3756
Online ISSN:1791-244X

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Copy and paste a formatted citation
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Spandidos Publications style
Wang Y, Tang H, Ji X, Zhang Y, Xu W, Yang X, Deng R, Liu Y, Li F, Wang X, Wang X, et al: Expression profile analysis of long non-coding RNAs involved in the metformin-inhibited gluconeogenesis of primary mouse hepatocytes. Int J Mol Med 41: 302-310, 2018.
APA
Wang, Y., Tang, H., Ji, X., Zhang, Y., Xu, W., Yang, X. ... Zhou, L. (2018). Expression profile analysis of long non-coding RNAs involved in the metformin-inhibited gluconeogenesis of primary mouse hepatocytes. International Journal of Molecular Medicine, 41, 302-310. https://doi.org/10.3892/ijmm.2017.3243
MLA
Wang, Y., Tang, H., Ji, X., Zhang, Y., Xu, W., Yang, X., Deng, R., Liu, Y., Li, F., Wang, X., Zhou, L."Expression profile analysis of long non-coding RNAs involved in the metformin-inhibited gluconeogenesis of primary mouse hepatocytes". International Journal of Molecular Medicine 41.1 (2018): 302-310.
Chicago
Wang, Y., Tang, H., Ji, X., Zhang, Y., Xu, W., Yang, X., Deng, R., Liu, Y., Li, F., Wang, X., Zhou, L."Expression profile analysis of long non-coding RNAs involved in the metformin-inhibited gluconeogenesis of primary mouse hepatocytes". International Journal of Molecular Medicine 41, no. 1 (2018): 302-310. https://doi.org/10.3892/ijmm.2017.3243