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Screening biomarkers for spinal cord injury using weighted gene co-expression network analysis and machine learning 被引量:6
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作者 Xiaolu Li Ye Yang +3 位作者 Senming Xu Yuchang Gui Jianmin Chen Jianwen Xu 《Neural Regeneration Research》 SCIE CAS CSCD 2024年第12期2723-2734,共12页
Immune changes and inflammatory responses have been identified as central events in the pathological process of spinal co rd injury.They can greatly affect nerve regeneration and functional recovery.However,there is s... Immune changes and inflammatory responses have been identified as central events in the pathological process of spinal co rd injury.They can greatly affect nerve regeneration and functional recovery.However,there is still limited understanding of the peripheral immune inflammato ry response in spinal cord inju ry.In this study.we obtained microRNA expression profiles from the peripheral blood of patients with spinal co rd injury using high-throughput sequencing.We also obtained the mRNA expression profile of spinal cord injury patients from the Gene Expression Omnibus(GEO)database(GSE151371).We identified 54 differentially expressed microRNAs and 1656 diffe rentially expressed genes using bioinformatics approaches.Functional enrichment analysis revealed that various common immune and inflammation-related signaling pathways,such as neutrophil extracellular trap formation pathway,T cell receptor signaling pathway,and nuclear factor-κB signal pathway,we re abnormally activated or inhibited in spinal cord inju ry patient samples.We applied an integrated strategy that combines weighted gene co-expression network analysis,LASSO logistic regression,and SVM-RFE algorithm and identified three biomarke rs associated with spinal cord injury:ANO10,BST1,and ZFP36L2.We verified the expression levels and diagnostic perfo rmance of these three genes in the original training dataset and clinical samples through the receiver operating characteristic curve.Quantitative polymerase chain reaction results showed that ANO20 and BST1 mRNA levels were increased and ZFP36L2 mRNA was decreased in the peripheral blood of spinal cord injury patients.We also constructed a small RNA-mRNA interaction network using Cytoscape.Additionally,we evaluated the proportion of 22 types of immune cells in the peripheral blood of spinal co rd injury patients using the CIBERSORT tool.The proportions of naive B cells,plasma cells,monocytes,and neutrophils were increased while the proportions of memory B cells,CD8^(+)T cells,resting natural killer cells,resting dendritic cells,and eosinophils were markedly decreased in spinal cord injury patients increased compared with healthy subjects,and ANO10,BST1 and ZFP26L2we re closely related to the proportion of certain immune cell types.The findings from this study provide new directions for the development of treatment strategies related to immune inflammation in spinal co rd inju ry and suggest that ANO10,BST2,and ZFP36L2 are potential biomarkers for spinal cord injury.The study was registe red in the Chinese Clinical Trial Registry(registration No.ChiCTR2200066985,December 12,2022). 展开更多
关键词 bioinformatics analysis BIOMARKER CIBERSORT GEO dataset LASSO miRNA-mRNA network RNA sequencing spinal cord injury SVM-RFE weighted gene co-expression network analysis
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Identification of key genes involved in axon regeneration and Wallerian degeneration by weighted gene co-expression network analysis 被引量:5
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作者 Yan Lu Qi Shan +4 位作者 Mei Ling Xi-An Ni Su-Su Mao Bin Yu Qian-Qian Cao 《Neural Regeneration Research》 SCIE CAS CSCD 2022年第4期911-919,共9页
Peripheral nerve injury repair requires a certain degree of cooperation between axon regeneration and Wallerian degeneration.Therefore,investigating how axon regeneration and degeneration work together to repair perip... Peripheral nerve injury repair requires a certain degree of cooperation between axon regeneration and Wallerian degeneration.Therefore,investigating how axon regeneration and degeneration work together to repair peripheral nerve injury may uncover the molecular mechanisms and signal cascades underlying peripheral nerve repair and provide potential strategies for improving the low axon regeneration capacity of the central nervous system.In this study,we applied weighted gene co-expression network analysis to identify differentially expressed genes in proximal and distal sciatic nerve segments from rats with sciatic nerve injury.We identified 31 and 15 co-expression modules from the proximal and distal sciatic nerve segments,respectively.Functional enrichment analysis revealed that the differentially expressed genes in proximal modules promoted regeneration,while the differentially expressed genes in distal modules promoted neurodegeneration.Next,we constructed hub gene networks for selected modules and identified a key hub gene,Kif22,which was up-regulated in both nerve segments.In vitro experiments confirmed that Kif22 knockdown inhibited proliferation and migration of Schwann cells by modulating the activity of the extracellular signal-regulated kinase signaling pathway.Collectively,our findings provide a comparative framework of gene modules that are co-expressed in injured proximal and distal sciatic nerve segments,and identify Kif22 as a potential therapeutic target for promoting peripheral nerve injury repair via Schwann cell proliferation and migration.All animal experiments were approved by the Institutional Animal Ethics Committee of Nantong University,China(approval No.S20210322-008)on March 22,2021. 展开更多
关键词 axon regeneration extracellular signal-regulated kinase signaling pathway hub genes Kif22 peripheral nerve injury protein kinase Schwann cells Wallerian degeneration weighted gene co-expression network analysis
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Identification of Potential Therapeutic Targets of Alzheimer's Disease By Weighted Gene Co-Expression Network Analysis 被引量:2
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作者 Fan Zhang Siran Zhong +5 位作者 Siman Yang Yuting Wei Jingjing Wang Jinlan Huang Dengpan Wu Zhenguo Zhong 《Chinese Medical Sciences Journal》 CAS CSCD 2020年第4期330-341,共12页
Objective Alzheimer's disease(AD)is the most common cause of dementia.The pathophysiology of the disease mostly remains unearthed,thereby challenging drug development for AD.This study aims to screen high throughp... Objective Alzheimer's disease(AD)is the most common cause of dementia.The pathophysiology of the disease mostly remains unearthed,thereby challenging drug development for AD.This study aims to screen high throughput gene expression data using weighted co-expression network analysis(WGCNA)to explore the potential therapeutic targets.Methods The dataset of GSE36980 was obtained from the Gene Expression Omnibus(GEO)database.Normalization,quality control,filtration,and soft-threshold calculation were carried out before clustering the co-expressed genes into different modules.Furthermore,the correlation coefiidents between the modules and clinical traits were computed to identify the key modules.Gene ontology and pathway enrichment analyses were performed on the key module genes.The STRING database was used to construct the protein-protein interaction(PPI)networks,which were further analyzed by Cytoscape app(MCODE).Finally,validation of hub genes was conducted by external GEO datasets of GSE 1297 and GSE 28146.Results Co-expressed genes were clustered into 27 modules,among which 6 modules were identified as the key module relating to AD occurrence.These key modules are primarily involved in chemical synaptic transmission(G0:0007268),the tricarboxylic acid(TCA)cycle and respiratory electron transport(R-HSA-1428517).WDR47,OXCT1,C3orfl4,ATP6V1A,SLC25A14,NAPB were found as the hub genes and their expression were validated by external datasets.Conclusions Through modules co-expression network analyses and PPI network analyses,we identified the hub genes of AD,including WDR47,0XCT1,C3orfl4i ATP6V1A,SLC25A14 and NAPB.Among them,three hub genes(ATP6V1A,SLC25A14,OXCT1)might contribute to AD pathogenesis through pathway of TCA cycle. 展开更多
关键词 bioinformatics analysis Alzheimer's disease Tricarboxylic acid(TCA)cycle weighted gene co-expression network analysis OXCT1 ATP6V1A
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Weighted Gene Co-expression Network Analysis of Gene Modules for the Prognosis of Esophageal Cancer 被引量:2
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作者 张丛 孙茜 《Journal of Huazhong University of Science and Technology(Medical Sciences)》 SCIE CAS 2017年第3期319-325,共7页
Esophageal cancer is a common malignant tumor, whose pathogenesis and prognosis factors are not fully understood. This study aimed to discover the gene clusters that have similar functions and can be used to predict t... Esophageal cancer is a common malignant tumor, whose pathogenesis and prognosis factors are not fully understood. This study aimed to discover the gene clusters that have similar functions and can be used to predict the prognosis of esophageal cancer. The matched microarray and RNA sequencing data of 185 patients with esophageal cancer were downloaded from The Cancer Genome Atlas(TCGA), and gene co-expression networks were built without distinguishing between squamous carcinoma and adenocarcinoma. The result showed that 12 modules were associated with one or more survival data such as recurrence status, recurrence time, vital status or vital time. Furthermore, survival analysis showed that 5 out of the 12 modules were related to progression-free survival(PFS) or overall survival(OS). As the most important module, the midnight blue module with 82 genes was related to PFS, apart from the patient age, tumor grade, primary treatment success, and duration of smoking and tumor histological type. Gene ontology enrichment analysis revealed that 'glycoprotein binding' was the top enriched function of midnight blue module genes. Additionally, the blue module was the exclusive gene clusters related to OS. Platelet activating factor receptor(PTAFR) and feline Gardner-Rasheed(FGR) were the top hub genes in both modeling datasets and the STRING protein interaction database. In conclusion, our study provides novel insights into the prognosis-associated genes and screens out candidate biomarkers for esophageal cancer. 展开更多
关键词 esophageal cancer The Cancer Genome Atlas co-expression network analysis weighted gene co-expression network analysis enrichment analysis
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Weighted gene co-expression network analysis reveals similarities and differences of molecular features between dilated and ischemic cardiomyopathies 被引量:1
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作者 Felix K.Biwott Ni-Ni Rao +1 位作者 Chang-Long Dong Guang-Bin Wang 《Journal of Electronic Science and Technology》 EI CAS CSCD 2023年第2期14-29,共16页
Cardiomyopathies represent the most common clinical and genetic heterogeneous group of diseases that affect the heart function.Though progress has been made to elucidate the process,molecular mechanisms of different c... Cardiomyopathies represent the most common clinical and genetic heterogeneous group of diseases that affect the heart function.Though progress has been made to elucidate the process,molecular mechanisms of different classes of cardiomyopathies remain elusive.This paper aims to describe the similarities and differences in molecular features of dilated cardiomyopathy(DCM)and ischemic cardiomyopathy(ICM).We firstly detected the co-expressed modules using the weighted gene co-expression network analysis(WGCNA).Significant modules associated with DCM/ICM were identified by the Pearson correlation coefficient(PCC)between the modules and the phenotype of DCM/ICM.The differentially expressed genes in the modules were selected to perform functional enrichment.The potential transcription factors(TFs)prediction was conducted for transcription regulation of hub genes.Apoptosis and cardiac conduction were perturbed in DCM and ICM,respectively.TFs demonstrated that the biomarkers and the transcription regulations in DCM and ICM were different,which helps make more accurate discrimination between them at molecular levels.In conclusion,comprehensive analyses of the molecular features may advance our understanding of DCM and ICM causes and progression.Thus,this understanding may promote the development of innovative diagnoses and treatments. 展开更多
关键词 Dilated cardiomyopathy(DCM) Hub genes Ischemic cardiomyopathy(ICM) Transcription factors(TFs) weighted gene co-expression network analysis(WGCNA)
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Identification of Potential Zinc Deficiency Responsive Genes and Regulatory Pathways in Rice by Weighted Gene Co-expression Network Analysis
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作者 Blaise Pascal MUVUNYI LU Xiang +2 位作者 ZHAN Junhui HE Sang YE Guoyou 《Rice science》 SCIE CSCD 2022年第6期545-558,共14页
Zinc(Zn)malnutrition is a major public health issue.Genetic biofortification of Zn in rice grain can alleviate global Zn malnutrition.Therefore,elucidating the genetic mechanisms regulating Zn deprivation response in ... Zinc(Zn)malnutrition is a major public health issue.Genetic biofortification of Zn in rice grain can alleviate global Zn malnutrition.Therefore,elucidating the genetic mechanisms regulating Zn deprivation response in rice is essential to identify elite genes useful for breeding high grain Zn rice varieties.Here,a meta-analysis of previous RNA-Seq studies involving Zn deficient conditions was conducted using the weighted gene co-expression network analysis(WGCNA)and other in silico prediction tools to identify modules(denoting cluster of genes with related expression pattern)of co-expressed genes,modular genes which are conserved differentially expressed genes(DEGs)across independent RNA-Seq studies,and the molecular pathways of the conserved modular DEGs.WGCNA identified 16 modules of co-expressed genes.Twenty-eight and five modular DEGs were conserved in leaf and crown,and root tissues across two independent RNA-Seq studies.Functional enrichment analysis showed that 24 of the 28 conserved modular DEGs from leaf and crown tissues significantly up-regulated 2 Kyoto Encyclopedia of Genes and Genomes(KEGG)pathways and 15 Gene Ontology(GO)terms,including the substrate-specific transmembrane transporter and the small molecule metabolic process.Further,the well-studied transcription factors(OsWOX11 and OsbHLH120),protein kinase(OsCDPK20 and OsMPK17),and miRNAs(OSA-MIR397A and OSA-MIR397B)were predicted to target some of the identified conserved modular DEGs.Out of the 24 conserved and up-regulated modular DEGs,19 were yet to be experimentally validated as Zn deficiency responsive genes.Findings from this study provide a comprehensive insight on the molecular mechanisms of Zn deficiency response and may facilitate gene and pathway prioritization for improving Zn use efficiency and Zn biofortification in rice. 展开更多
关键词 RICE BIOFORTIFICATION zinc deficiency gene expression weighted gene co-expression network analysis
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Identification of potential key molecules and signaling pathways for psoriasis based on weighted gene co-expression network analysis
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作者 Xin Shu Xiao-Xia Chen +4 位作者 Xin-Dan Kang Min Ran You-Lin Wang Zhen-Kai Zhao Cheng-Xin Li 《World Journal of Clinical Cases》 SCIE 2022年第18期5965-5983,共19页
BACKGROUND Psoriasis is a chronic inflammatory skin disease,the pathogenesis of which is more complicated and often requires long-term treatment.In particular,moderate to severe psoriasis usually requires systemic tre... BACKGROUND Psoriasis is a chronic inflammatory skin disease,the pathogenesis of which is more complicated and often requires long-term treatment.In particular,moderate to severe psoriasis usually requires systemic treatment.Psoriasis is also associated with many diseases,such as cardiometabolic diseases,malignant tumors,infections,and mood disorders.Psoriasis can appear at any age,and lead to a substantial burden for individuals and society.At present,psoriasis is still a treatable,but incurable,disease.Previous studies have found that micro RNAs(mi RNAs)play an important regulatory role in the progression of various diseases.Currently,mi RNAs studies in psoriasis and dermatology are relatively new.Therefore,the identification of key mi RNAs in psoriasis is helpful to elucidate the molecular mechanism of psoriasis.AIM To identify key molecular markers and signaling pathways to provide potential basis for the treatment and management of psoriasis.METHODS The mi RNA and m RNA data were obtained from the Gene Expression Omnibus database.Then,differentially expressed m RNAs(DEm RNAs)and differentially expressed mi RNAs(DEmi RNAs)were screened out by limma R package.Subsequently,DEm RNAs were analyzed for Gene Ontology and Kyoto Encyclopedia of Genes and Genomics functional enrichment.The“WGCNA”R package was used to analyze the co-expression network of all mi RNAs.In addition,we constructed mi RNA-m RNA regulatory networks based on identified hub mi RNAs.Finally,in vitro validation was performed.All experimental procedures were approved by the ethics committee of Chinese PLA General Hospital(S2021-012-01).RESULTS A total of 639 DEm RNAs and 84 DEmi RNAs were identified.DEm RNAs screening criteria were adjusted P(adj.P)value<0.01 and|log Fold Change|(|log FC|)>1.DEmi RNAs screening criteria were adj.P value<0.01 and|logFC|>1.5.KEGG functional analysis demonstrated that DEm RNAs were significantly enriched in immune-related biological functions,for example,tolllike receptor signaling pathway,cytokine-cytokine receptor interaction,and chemokine signaling pathway.In weighted gene co-expression network analysis,turquoise module was the hub module.Moreover,10 hub mi RNAs were identified.Among these 10 hub mi RNAs,only 8 hub mi RNAs predicted the corresponding target m RNAs.97 negatively regulated mi RNA-m RNA pairs were involved in the mi RNA-m RNA regulatory network,for example,hsa-mi R-21-5 pclaudin 8(CLDN8),hsa-mi R-30 a-3 p-interleukin-1 B(IL-1 B),and hsa-mi R-181 a-5 p/hsa-mi R-30 c-2-3 p-C-X-C motif chemokine ligand 9(CXCL9).Real-time polymerase chain reaction results showed that IL-1 B and CXCL9 were up-regulated and CLDN8 was down-regulated in psoriasis with statistically significant differences.CONCLUSION The identification of potential key molecular markers and signaling pathways provides potential research directions for further understanding the molecular mechanisms of psoriasis.This may also provide new research ideas for the prevention and treatment of psoriasis in the future. 展开更多
关键词 PSORIASIS MICRORNAS weighted gene co-expression network analysis Functional enrichment MicroRNA-mRNA regulatory network
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Identify the signature genes for diagnose of uveal melanoma by weight gene co-expression network analysis 被引量:10
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作者 Kai Shi Zhi-Tong Bing +4 位作者 Gui-Qun Cao Ling Guo Ya-Na Cao Hai-Ou Jiang Mei-Xia Zhang 《International Journal of Ophthalmology(English edition)》 SCIE CAS 2015年第2期269-274,共6页
AIM: To identify and understand the relationship between co-expression pattern and clinic traits in uveal melanoma, weighted gene co-expression network analysis(WGCNA) is applied to investigate the gene expression lev... AIM: To identify and understand the relationship between co-expression pattern and clinic traits in uveal melanoma, weighted gene co-expression network analysis(WGCNA) is applied to investigate the gene expression levels and patient clinic features. Uveal melanoma is the most common primary eye tumor in adults. Although many studies have identified some important genes and pathways that were relevant to progress of uveal melanoma, the relationship between co-expression and clinic traits in systems level of uveal melanoma is unclear yet. We employ WGCNA to investigate the relationship underlying molecular and phenotype in this study.METHODS: Gene expression profile of uveal melanoma and patient clinic traits were collected from the Gene Expression Omnibus(GEO) database. The gene co-expression is calculated by WGCNA that is the R package software. The package is used to analyze the correlation between pairs of expression levels of genes.The function of the genes were annotated by gene ontology(GO).RESULTS: In this study, we identified four co-expression modules significantly correlated with clinictraits. Module blue positively correlated with radiotherapy treatment. Module purple positively correlates with tumor location(sclera) and negatively correlates with patient age. Module red positively correlates with sclera and negatively correlates with thickness of tumor. Module black positively correlates with the largest tumor diameter(LTD). Additionally, we identified the hug gene(top connectivity with other genes) in each module. The hub gene RPS15 A, PTGDS, CD53 and MSI2 might play a vital role in progress of uveal melanoma.CONCLUSION: From WGCNA analysis and hub gene calculation, we identified RPS15 A, PTGDS, CD53 and MSI2 might be target or diagnosis for uveal melanoma. 展开更多
关键词 weighted gene co-expression network analysis microarray data gene ontology
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Prognostic value of sorting nexin 10 weak expression in stomach adenocarcinoma revealed by weighted gene coexpression network analysis
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作者 Jun Zhang Yue Wu +5 位作者 Hao-Yi Jin Shuai Guo Zhe Dong Zhi-Chao Zheng Yue Wang Yan Zhao 《World Journal of Gastroenterology》 SCIE CAS 2018年第43期4906-4919,共14页
AIM TO detect significant clusters of co-expressed genes associated with tumorigenesis that might help to predict stomach adenocarcinoma (SA) prognosis.METHODS The Cancer Genome Atlas database was used to obtain RNA... AIM TO detect significant clusters of co-expressed genes associated with tumorigenesis that might help to predict stomach adenocarcinoma (SA) prognosis.METHODS The Cancer Genome Atlas database was used to obtain RNA sequences as well as complete clinical data of SA and adjacent normal tissues from patients. Weighted gene co-expression network analysis (WGCNA) was used to investigate the meaningful module along with hub genes. Expression of hub genes was analyzed in 362 paraffin-embedded SA biopsy tissues by immunohistochemical staining. Patients were classified into two groups (according to expression of hub genes): Weak expression and over-expression groups. Correlation of biomarkers with clinicopathological factors indicated patient survival.RESULTS Whole genome expression level screening identified 6,231 differentially expressed genes. Twenty-four co- expressed gene modules were identified using WGCNA. Pearson's correlation analysis showed that the tan module was the most relevant to tumor stage (r = 0.24, P = 7 × 10 -6). In addition, we detected sorting nexin (SNX)10 as the hub gene of the tan module. SNX10 expression was linked to T category (P = 0.042, x2= 8.708), N category (P = 0.000, x2= 18.778), TNM stage (P = 0.001, x2 = 16.744) as well as tumor differentiation (P = 0.000,x2= 251.930). Patients with high SNX10 expression tended to have longer diseasefree survival (DFS; 44.97 mo vs 33.85 mo, P = 0.000) as well as overall survival (OS; 49.95 vs 40.84 mo, P = 0.000) in univariate analysis. Multivariate analysis showed that dismal prognosis could be precisely predicted clinicopathologically using SNX10 [DFS: P = 0.014, hazard ratio (HR) = 0.698, 95% confidence interval (CI): 0.524-0.930, OS: P = 0.017, HR = 0.704, 95%CI: 0.528-0.940].CONCLUSION This study provides a new technique for screening prognostic biomarkers of SA. Weak expression of SNX10 is linked to poor prognosis, and is a suitable prognostic biomarker of SA. 展开更多
关键词 Stomach adenocarcinoma The Cancer Genome Atlas weighted gene co-expression network analysis Sorting nexin 10 Clinicopathological pre-dictors Diseasefree survival Overall survival
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Co-expression Network Analysis Identifies Fourteen Hub Genes Associated with Prognosis in Clear Cell Renal Cell Carcinoma
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作者 Jia-yi CHEN Yan SUN +4 位作者 Nan QIAO Yang-yang GE Jian-hua LI Yun LIN Shang-long YAO 《Current Medical Science》 SCIE CAS 2020年第4期773-785,共13页
Summary:Renal cancer is a common genitourinary malignance,of which clear cell renal cell carcinoma(ccRCC)has high aggressiveness and leads to most cancer-related deaths.Identification of sensitive and reliable biomark... Summary:Renal cancer is a common genitourinary malignance,of which clear cell renal cell carcinoma(ccRCC)has high aggressiveness and leads to most cancer-related deaths.Identification of sensitive and reliable biomarkers for predicting tumorigenesis and progression has great significance in guiding the diagnosis and treatment of ccRCC.Here,we identified 2397 common difTerentially expressed genes(DEGs)using paired normal and tumor ccRCC tissues from GSE53757 and The Cancer Genome Atlas(TCGA).Then,we performed weighted gene co-expression network analysis and protein-protein interaction network analysis,17 candidate hub genes were identified.These candidate hub genes were further validated in GSE36895 and Oncomine database and 14 real hub genes were identified.All the hub genes were up-regulated and significantly positively correlated with pathological stage and histologic grade of ccRCC.Survival analysis showed that the higher expression level of each hub gene tended to predict a worse clinical outcome.ROC analysis showed that all the hub genes can accurately distinguish between tumor and normal samples,and between early stage and advanced stage ccRCC.Moreover,all the hub genes were positively associated with distant metastasis,lymph node infiltration,tumor recurrence and the expression of MKi67,suggesting these genes might promote tumor proliferation,invasion and metastasis.Furthermore,the functional annotation demonstrated that most genes were enriched in cell-cycle related biological function.In summary,our study identified 14 potential biomarkers for predicting tumorigenesis and progression,which might contribute to early diagnosis,prognosis prediction and therapeutic intervention. 展开更多
关键词 BIOINFORMATICS clear cell renal cell carcinoma weighted gene co-expression network analysis BIOMARKER
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Identification of a TSPY co-expression network associated with DNA hypomethylation and tumor gene expression in somatic cancers 被引量:2
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作者 Tatsuo Kido Yun-Fai Chris Lau 《Journal of Genetics and Genomics》 SCIE CAS CSCD 2016年第10期577-585,共9页
Testis specific protein Y-encoded(TSPY) is a Y-located proto-oncogene predominantly expressed in normal male germ cells and various types of germ cell tumor. Significantly, TSPY is frequently expressed in somatic ca... Testis specific protein Y-encoded(TSPY) is a Y-located proto-oncogene predominantly expressed in normal male germ cells and various types of germ cell tumor. Significantly, TSPY is frequently expressed in somatic cancers including liver cancer but not in adjacent normal tissues, suggesting that ectopic TSPY expression could be associated with oncogenesis in non-germ cell cancers. Various studies demonstrated that TSPY expression promotes growth and proliferation in cancer cells; however, its relationship to other oncogenic events in TSPY-positive cancers remains unknown. The present study seeks to correlate TSPY expression with other molecular features in clinical cancer samples, by analyses of RNA-seq transcriptome and DNA methylation data in the Cancer Genome Atlas(TCGA) database. A total of 53 genes,including oncogenic lineage protein 28 homolog B(LIN28B) gene and RNA-binding motif protein Y-linked(RBMY) gene, are identified to be consistently co-expressed with TSPY, and have been collectively designated as the TSPY co-expression network(TCN). TCN genes were simultaneously activated in subsets of liver hepatocellular carcinoma(30%) and lung adenocarcinoma(10%) regardless of pathological stage, but only minimally in other cancer types. Further analysis revealed that the DNA methylation level was globally lower in the TCN-active than TCN-silent cancers. The specific expression and methylation patterns of TCN genes suggest that they could be useful as biomarkers for the diagnosis,prognosis and clinical management of cancers, especially those for liver and lung cancers, associated with TSPY co-expression network genes. 展开更多
关键词 co-expression network DNA methylation gene expression signature Cancer subclassification Y chromosome genes TSPY Cancer/testis antigens
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Identification of key genes underlying clinical features of hepatocellular carcinoma based on weighted gene co‑expression network analysis and bioinformatics analysis
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作者 ZHANG Kan LONG Fu‑li +3 位作者 LI Yuan SHU Fa‑ming YAO Fan WEI Ai‑Ling 《Journal of Hainan Medical University》 2023年第2期49-55,共7页
Objective: To identify module genes that are closely related to clinical features of hepatocellular carcinoma (HCC) by weighted gene co‑expression network analysis, and to provide a reference for early clinical diagno... Objective: To identify module genes that are closely related to clinical features of hepatocellular carcinoma (HCC) by weighted gene co‑expression network analysis, and to provide a reference for early clinical diagnosis and treatment. Methods: GSE84598 chip data were downloaded from the GEO database, and module genes closely related to the clinical features of HCC were extracted by comprehensive weighted gene co‑expression network analysis. Hub genes were identified through protein interaction network analysis by the maximum clique centrality (MCC) algorithm;Finally, the expression of hub genes was validated by TCGA database and the Kaplan Meier plotter online database was used to evaluate the prognostic relationship between hub genes and HCC patients. Results: By comparing the gene expression data between HCC tissue samples and normal liver tissue samples, a total of 6 262 differentially expressed genes were obtained, of which 2 207 were upregulated and 4 055 were downregulated. Weighted gene co‑expression network analysis was applied to identify 120 genes of key modules. By intersecting with the differentially expressed genes, 115 candidate hub genes were obtained. The results of enrichment analysis showed that the candidate hub genes were closely related to cell mitosis, p53 signaling pathway and so on. Further application of the MCC algorithm to the protein interaction network of 115 candidate hub genes identified five hub genes, namely NUF2, RRM2, UBE2C, CDC20 and MAD2L1. Validation of hub genes by TCGA database revealed that all five hub genes were significantly upregulated in HCC tissues compared to normal liver tissues;Moreover, survival analysis revealed that high expression of hub genes was closely associated with poor prognosis in HCC patients. Conclusions: This study identifies five hub genes by combining multiple databases, which may provide directions for the clinical diagnosis and treatment of HCC. 展开更多
关键词 weighted gene co‑expression network analysis Bioinformatics Hepatocellular carcinoma Maximal clique centrality algorithm
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Identification of Prognostic Genes for Colon Cancer through Gene Coexpression Network Analysis 被引量:1
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作者 Dan-wen WANG Zhang-shuo YANG +5 位作者 Jian XU Li-jie YANG Tie-cheng YANG Hua-qiao WANG Mao-hui FENG Fei SU 《Current Medical Science》 SCIE CAS 2021年第5期1012-1022,共11页
Objective:The present study was aimed to identify novel key genes,prognostic biomarkers and molecular pathways implicated in tumorigenesis of colon cancer.Methods:The microarray data GSE41328 containing 10 colon cance... Objective:The present study was aimed to identify novel key genes,prognostic biomarkers and molecular pathways implicated in tumorigenesis of colon cancer.Methods:The microarray data GSE41328 containing 10 colon cancer samples and 10 adjacent normal tissues was analyzed to identify 4763 differentially expressed genes.Meanwhile,another microarray data GSE17536 was performed for weighted gene co-expression network analysis(WGCNA).Results:In present study,12 co-expressed gene modules associated with tumor progression were identified for further studies.The red module showed the highest association with pathological stage by Pearson's correlation analysis.Functional enrichment analysis revealed that genes in red module focused on cell division,cell proliferation,cell cycle and metabolic related pathway.Then,a total of 26 key hub genes were identified,and GEPIA database was subsequently selected for validation.Holliday junction-recognizing protein(HJURP)and cell division cycle 25 homolog C(CDC25C)were identified as effective prognosis biomarkers,which were all detrimental to prognosis.Gene set enrichment analyses(GSEA)found the two hub genes were enriched in“oocyte meiosis”,“oocyte maturation that are progesterone-mediated”,“p53 signaling pathway”,and“cell cycle”.Furthermore,the immunohistochemistry and western blotting showed that HJURP was highly expressed in colon cancer tissue.Conclusion:HJURP was identified as a key gene associated with colon cancer progression and prognosis by WGCNA,which might influence the prognosis by regulating cell cycle pathways. 展开更多
关键词 colon cancer biomarkers weighted gene co-expression network analysis prognosis pathological stage
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Identification of key hub genes associated with anti-gastric cancer effects of lotus plumule based on machine learning algorithms
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作者 Fan-Di Meng Shu-Min Jia +5 位作者 Yu-Bin Ma Yu-Hua Du Wen-Jing Liu Yi Yang Ling Yuan Yi Nan 《World Journal of Gastrointestinal Oncology》 2025年第4期384-415,共32页
BACKGROUND Lotus plumule and its active components have demonstrated inhibitory effects on gastric cancer(GC).However,the molecular mechanism of lotus plumule against GC remains unclear and requires further investigat... BACKGROUND Lotus plumule and its active components have demonstrated inhibitory effects on gastric cancer(GC).However,the molecular mechanism of lotus plumule against GC remains unclear and requires further investigation.AIM To identify the key hub genes associated with the anti-GC effects of lotus plumule.METHODS This study investigated the potential targets of traditional Chinese medicine for inhibiting GC using weighted gene co-expression network analysis and bio-informatics.Initially,the active components and targets of the lotus plumule and the differentially expressed genes associated with GC were identified.Sub-sequently,a protein-protein interaction network was constructed to elucidate the interactions between drug targets and disease-related genes,facilitating the identification of hub genes within the network.The clinical significance of these hub genes was evaluated,and their upstream transcription factors and down-stream targets were identified.The binding ability of a hub gene with its down-stream targets was verified using molecular docking technology.Finally,molecular docking was performed to evaluate the binding affinity between the active ingredients of lotus plumule and the hub gene.RESULTS This study identified 26 genes closely associated with GC.Machine learning analysis and external validation narrowed the list to four genes:Aldo-keto reductase family 1 member B10,fructose-bisphosphatase 1,protein arginine methyltransferase 1,and carbonic anhydrase 9.These genes indicated a strong correlation with anti-GC activity.CONCLUSION Lotus plumule exhibits anti-GC effects.This study identified four hub genes with potential as novel targets for diagnosing and treating GC,providing innovative perspectives for its clinical management. 展开更多
关键词 Gastric cancer Lotus plumule network pharmacology weighted gene co-expression network analysis Machine learning
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Bioinformatics and In-Silico Findings Reveal Candidate Genes forTetralogy of Fallot via Integrative Multi-Omics Data
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作者 Jiawei Shi Zhen Wang +11 位作者 Ying Bai shiying Li Xin Zhang Tianshu Liu Liu Hong Li Cui Yi Zhang Jing Ma Juanjuan Liu Jing Zhang Haiyan Cao Jing Wan 《Congenital Heart Disease》 2025年第2期213-229,共17页
Background:Tetralogy of Fallot(TOF),the predominant cyanotic congenital heart defect,arisesfrom multifactorial gene-envirorment interactions disrup ting cardiac developmental networks.This studyinvestiga ted TOF-speci... Background:Tetralogy of Fallot(TOF),the predominant cyanotic congenital heart defect,arisesfrom multifactorial gene-envirorment interactions disrup ting cardiac developmental networks.This studyinvestiga ted TOF-specific transcriptional alterations and identified high-confidence candidate genes.Methods:Based on GSE36761 transcriptome data,a weighted gene co-exp ression network analysis(WGCNA)andprotein-protein interaction(PPI)network were conducted to identify TOF-related sub-netrwork and Hub genes.The potentialbiological functions among these genes were revealed by enrichment analysis.Genetic,epigeneticand transcriptional alteration in the Fub genes were analyzed with leveraged public resources:a methylationdataset(CSE62629)and two single-cell datasets(EGAS00001003996 and GSE126128),Results:Eight Hub geneswere identified using the WGCNA network and PPl network,and functional errichment analysis revealedthatGJA1,RUNX2,FTK7,PRICKLE1,and SPRP1 were involved in the morphogenesis of an epithelium,anddysregulation of the signaling were also found in the other two TOF datasets,Furthermore,the study foundthat the promoters of GJA1,RUNX2,FTK7,and PRICKLE1 genes were hypermethylated and that GJA1 andSFRP1 are highly expressed in mouse second heart field cells and neural crest cells,and the la tter is expressedin human embry onic outflow tract cells.Since RUNX2 was not expressed in human and mouse embryonichearts,GJA1,FTK7,PRICKLE1,and SPRP1 were ultimately identified as TOF candidate genes.Conclusion:Based on the WGCNA network and various bioinformatics analysis approaches,we screened 4 TOF candidatepathogenic genes,and found that the signaling pathways related to the morphogenesis of an epithelium maybe involved in the pathogenesis of TOF. 展开更多
关键词 Tetralogy of Fallot gene regulatory networks weighted gene co-expression network analysis protein-protein interaction network d isease candidate genes
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Detection of new candidate genes controlling seed weight by integrating gene coexpression analysis and QTL mapping in Brassica napus L.
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作者 Hongli Dong Lei Yang +9 位作者 Yilin Liu Guifu Tian Huan Tang Shuangshuang Xin Yixin Cui Qing Xiong Huafang Wan Zhi Liu Christian Jung Wei Qian 《The Crop Journal》 SCIE CSCD 2023年第3期842-851,共10页
Seed weight is a component of seed yield in rapeseed(Brassica napus L.).Although quantitative trait loci(QTL)for seed weight have been reported in rapeseed,only a few causal quantitative trait genes(QTGs)have been ide... Seed weight is a component of seed yield in rapeseed(Brassica napus L.).Although quantitative trait loci(QTL)for seed weight have been reported in rapeseed,only a few causal quantitative trait genes(QTGs)have been identified,resulting in a limitation in understanding of seed weight regulation.We constructed a gene coexpression network at the early seed developmental stage using transcripts of 20,408 genes in QTL intervals and 1017 rapeseed homologs of known genes from other species.Among the 10 modules in this gene coexpression network,modules 1 and 2 were core modules and contained genes involved in source–flow–sink processes such as synthesis and transportation of fatty acid and protein,and photosynthesis.A hub gene SERINE CARBOXYPEPTIDASE-LIKE 19(SCPL19)was identified by candidate gene association analysis in rapeseed and functionally investigated using Arabidopsis T-DNA mutant and overexpression lines.Our study demonstrates the power of gene coexpression analysis to prioritize candidate genes from large candidate QTG sets and enhances the understanding of molecular mechanism for seed weight at the early developmental stage in rapeseed. 展开更多
关键词 Brassica napus L gene coexpression network Quantitative trait gene SCPL19 Seed weight
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加权基因共表达网络分析结合机器学习筛选及验证骨关节炎生物标记物
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作者 张倩 黄东锋 《中国组织工程研究》 北大核心 2026年第5期1096-1105,共10页
背景:脂质代谢异常影响软骨细胞代谢,在骨关节炎的发生和进展中有着重要的作用,但目前其机制尚不明确。目的:采用加权基因共表达网络分析结合机器学习算法鉴定骨关节炎软骨细胞脂质代谢特征基因,并进行初步验证。方法:采用加权基因共表... 背景:脂质代谢异常影响软骨细胞代谢,在骨关节炎的发生和进展中有着重要的作用,但目前其机制尚不明确。目的:采用加权基因共表达网络分析结合机器学习算法鉴定骨关节炎软骨细胞脂质代谢特征基因,并进行初步验证。方法:采用加权基因共表达网络分析和微阵列数据的线性模型获得差异共表达基因,结合机器学习方法,最终筛选得到脂质代谢相关的特征基因。通过蛋白质互作网络分析,探究差异共表达基因的蛋白质互作网络关系;采用基因本体论和京都基因与基因组百科全书富集分析探索差异共表达基因所在信号通路;运用免疫相关性分析鉴定特征基因与免疫细胞浸润模式;体外分子实验验证特征基因的mRNA和蛋白表达水平。结果与结论:①经数据标准化处理和主成分分析、加权基因共表达网络分析和微阵列数据的线性模型获得高/低表达的差异共表达基因123和110个;②运用逻辑回归、随机森林和支持向量机3种机器学习算法筛选得到特征基因37个,最终得到2个脂质代谢相关的特征基因SMPD3和CYP4F3;③蛋白质互作网络分析显示SMPD3和CYP4F3蛋白相互作用均较低;④基因本体论结果显示差异共表达基因主要富集在中性粒细胞脱颗粒、中性粒细胞免疫反应和应答、中性粒细胞激活和白细胞脱颗粒等;而京都基因与基因组百科全书富集分析提示差异共表达基因主要涉及细胞外基质受体的作用和黏附等关键通路;⑤基于基因表达数据的细胞类型亚型鉴定分析显示8种免疫细胞在骨关节炎中具有显著差异;相关性分析显示SMPD3与静息态树突状细胞显著正相关(r=0.44,P=3.6×10^(-3)),与中性粒细胞显著负相关(r=-0.48,P=1.7×10^(-3));而CYP4F3与单核细胞和中性粒细胞显著正相关(r=0.76,P=7.6×10^(-9);r=0.73,P=6.0×10^(-8)),与T细胞滤泡辅助细胞和静息态树突状细胞显著负相关(r=-0.38,P=0.01;r=-0.38,P=0.01);⑥体外分子实验证明,在骨关节炎组SMPD3 mRNA和蛋白水平显著增高,而CYP4F3降低;⑦结果显示,骨关节炎软骨细胞脂质代谢特征基因SMPD3和CYP4F3可作为骨关节炎靶向治疗及软骨修复或退变的潜在生物标记物,为深入探究国人群体中脂质代谢异常与骨关节炎的关系及临床靶向治疗提供新策略。 展开更多
关键词 骨关节炎 脂质代谢 加权基因共表达网络分析 机器学习 靶向治疗 软骨修复或退变
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Identification of key genes regulating the synthesis of quercetin derivatives in Rosa roxburghii through integrated transcriptomics and metabolomics 被引量:1
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作者 Liyao Su Min Wu +2 位作者 Tian Zhang Yan Zhong Zongming(Max) Cheng 《Journal of Integrative Agriculture》 SCIE CAS CSCD 2024年第3期876-887,共12页
Rosa roxburghii fruit is rich in flavonoids, but little is known about their biosynthetic pathways. In this study, we employed transcriptomics and metabolomics to study changes related to the flavonoids at five differ... Rosa roxburghii fruit is rich in flavonoids, but little is known about their biosynthetic pathways. In this study, we employed transcriptomics and metabolomics to study changes related to the flavonoids at five different stages of R. roxburghii fruit development. Flavonoids and the genes related to their biosynthesis were found to undergo significant changes in abundance across different developmental stages, and numerous quercetin derivatives were identified. We found three gene expression modules that were significantly associated with the abundances of the different flavonoids in R. roxburghii and identified three structural UDP-glycosyltransferase genes directly involved in the synthesis of quercetin derivatives within these modules. In addition, we found that RrBEH4, RrLBD1 and RrPIF8could significantly increase the expression of downstream quercetin derivative biosynthesis genes. Taken together,these results provide new insights into the metabolism of flavonoids and the accumulation of quercetin derivatives in R. roxburghii. 展开更多
关键词 Rosa roxburghii quercetin derivatives weighted gene co-expression network analysis transcription factor TRANSCRIPTOME METABOLOME
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藜麦GRAS基因家族的鉴定及其在生殖发育中的调控功能
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作者 杨炀 张帅 +3 位作者 董陈文华 曾孟琼 林春 毛自朝 《浙江农业学报》 北大核心 2026年第1期35-53,共19页
GRAS基因家族在植物生长发育与逆境响应中具有重要调控功能,但目前尚未见其在藜麦(Chenopodium quinoa)生殖发育中的相关报道。本研究基于最新藜麦基因组数据,系统鉴定并分析藜麦GRAS家族(CqGRAS)成员,重点解析其基因结构、启动子顺式... GRAS基因家族在植物生长发育与逆境响应中具有重要调控功能,但目前尚未见其在藜麦(Chenopodium quinoa)生殖发育中的相关报道。本研究基于最新藜麦基因组数据,系统鉴定并分析藜麦GRAS家族(CqGRAS)成员,重点解析其基因结构、启动子顺式作用元件,以及在营养与生殖生长阶段的表达模式与调控机制。同时,将CqGRAS成员与拟南芥、藜麦二倍体祖先Chenopodium watsonii(A基因组)和Chenopodium suecicum(B基因组)的GRAS基因进行对比分析。结果共鉴定到51个CqGRAS基因,这些基因普遍内含子数量较少,且与拟南芥及二倍体藜属物种GRAS基因具有较高同源性。启动子分析表明,该家族基因富含响应植物激素(如赤霉素、脱落酸、乙烯和茉莉酸)、生长发育与逆境胁迫的顺式作用元件。系统进化分析将CqGRAS家族划分为10个亚家族,其中HAM(CqHAM01)、PAT1(CqPAT1-06/07/08)、DELLA(CqDELLA01/02)、DLT(CqDLT01/02)和SHR(CqSHR05/06)在花序和发育种子中表达水平较高。加权基因共表达网络分析提示,这些与生殖发育相关的CqGRAS基因可能通过整合光信号与激素信号通路,调控藜麦花和种子的生长发育。本研究为阐明GRAS家族在藜麦生殖发育中的功能提供了新见解,并为深入解析其分子机制与育种应用奠定了基础。 展开更多
关键词 藜麦 GRAS基因家族 生殖调控 加权基因共表达网络分析 生殖发育
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自然越冬过程不同种源天竺桂激素信号转导及转录组分析
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作者 崔罗敏 殷云龙 +3 位作者 於朝广 喻方圆 陶承友 芦治国 《植物资源与环境学报》 北大核心 2026年第1期25-35,47,共12页
以栽培于江苏南京的安徽、河南和浙江3个种源的天竺桂(Cinnamomum japonicum Siebold)为研究材料,对自然越冬过程其叶片中激素含量和转录组进行分析。结果表明:自然越冬过程河南种源的天竺桂叶片中吲哚乙酸含量显著高于(p<0.05)安徽... 以栽培于江苏南京的安徽、河南和浙江3个种源的天竺桂(Cinnamomum japonicum Siebold)为研究材料,对自然越冬过程其叶片中激素含量和转录组进行分析。结果表明:自然越冬过程河南种源的天竺桂叶片中吲哚乙酸含量显著高于(p<0.05)安徽和浙江种源,安徽种源的天竺桂叶片中脱落酸、水杨酸和赤霉素A1含量总体显著高于河南和浙江种源。转录组测序共获得192466个unigene,进行Nr、Nt、KO、Swiss-Prot、KOG、GO和PFAM 7大数据库的基因功能注释,注释率为54.4%。差异表达基因筛选、k-means聚类分析和加权基因共表达网络分析(WGCNA)结果表明:植物-病原体互作、淀粉和蔗糖代谢以及植物激素信号转导3个关键KEGG通路显著富集。脱落酸和水杨酸信号通路是天竺桂应对自然越冬的重要代谢通路,其中脱落酸受体基因(PYR/PYL)、蔗糖非发酵激酶基因(SnRK 2)、脱落酸应答元件结合因子基因(ABF)、病程相关基因非表达子1(NPR1)、TGACG结合模体(TGA)转录因子基因和病程相关基因(PR-1)具有重要作用。随机挑选6个差异表达基因的实时荧光定量PCR相对表达量与转录组表达量的变化趋势一致。综上所述,3个种源天竺桂通过特异的激素动态平衡与激素信号通路协同调控适应自然越冬,其中河南种源表现出更强的抗寒代谢调控能力。 展开更多
关键词 天竺桂 自然越冬 植物激素 抗寒性 转录组 加权基因共表达网络分析(WGCNA)
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