Identification of Type 2 Diabetes Based on a Ten-Gene Biomarker Prediction Model Constructed Using a Support Vector Machine Algorithm

被引:7
|
作者
Li, Jiabin [1 ]
Ding, Jieying [1 ]
Zhi, D. U. [1 ]
Gu, Kaiyun [2 ]
Wang, Hui [3 ]
机构
[1] Zhejiang Univ, Dept Pharm, Sch Med, Childrens Hosp, Hangzhou 310052, Peoples R China
[2] Zhejiang Univ, Dept Natl Ctr, Sch Med, Childrens Hosp, Hangzhou 310052, Peoples R China
[3] Zhejiang Univ Tradit Chinese Med, Lab & Equipment Management Off, Hangzhou 310052, Peoples R China
关键词
CELLS; DEFICIENCY; EXPRESSION; MELLITUS; RISK;
D O I
10.1155/2022/1230761
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
Background. Type 2 diabetes is a major health concern worldwide. The present study is aimed at discovering effective biomarkers for an efficient diagnosis of type 2 diabetes. Methods. Differentially expressed genes (DEGs) between type 2 diabetes patients and normal controls were identified by analyses of integrated microarray data obtained from the Gene Expression Omnibus database using the Limma package. Functional analysis of genes was performed using the R software package clusterProfiler. Analyses of protein-protein interaction (PPI) performed using Cytoscape with the CytoHubba plugin were used to determine the most sensitive diagnostic gene biomarkers for type 2 diabetes in our study. The support vector machine (SVM) classification model was used to validate the gene biomarkers used for the diagnosis of type 2 diabetes. Results. GSE164416 dataset analysis revealed 499 genes that were differentially expressed between type 2 diabetes patients and normal controls, and these DEGs were found to be enriched in the regulation of the immune effector pathway, type 1 diabetes mellitus, and fatty acid degradation. PPI analysis data showed that five MCODE clusters could be considered as clinically significant modules and that 10 genes (IL1B, ITGB2, ITGAX, COL1A1, CSF1, CXCL12, SPP1, FN1, C3, and MMP2) were identified as "real" hub genes in the PPI network using algorithms such as Degree, MNC, and Closeness. The sensitivity and specificity of the SVM model for identifying patients with type 2 diabetes were 100%, with an area under the curve of 1 in the training as well as the validation dataset. Conclusion. Our results indicate that the SVM-based model developed by us can facilitate accurate diagnosis of type 2 diabetes.
引用
收藏
页数:15
相关论文
共 50 条
  • [41] FACE RECOGNITION ALGORITHM BASED ON PEARSON MIXTURE MODEL USING SUPPORT VECTOR MACHINE
    Jagadesh, B. N.
    Satyanarayana, Ch.
    ADVANCES AND APPLICATIONS IN MATHEMATICAL SCIENCES, 2021, 20 (11): : 2487 - 2491
  • [42] GISMO -: gene identification using a support vector machine for ORF classification
    Krause, Lutz
    McHardy, Alice C.
    Nattkemper, Tim W.
    Puehler, Alfred
    Stoye, Jens
    Meyer, Folker
    NUCLEIC ACIDS RESEARCH, 2007, 35 (02) : 540 - 549
  • [43] Classification and biomarker identification using gene network modules and support vector machines
    Yousef, Malik
    Ketany, Mohamed
    Manevitz, Larry
    Showe, Louise C.
    Showe, Michael K.
    BMC BIOINFORMATICS, 2009, 10
  • [44] Classification and biomarker identification using gene network modules and support vector machines
    Malik Yousef
    Mohamed Ketany
    Larry Manevitz
    Louise C Showe
    Michael K Showe
    BMC Bioinformatics, 10
  • [45] Dynamic prediction model of fetal growth restriction based on support vector machine and logistic regression algorithm
    Lian, Cuiting
    Wang, Yan
    Bao, Xinyu
    Yang, Lin
    Liu, Guoli
    Hao, Dongmei
    Zhang, Song
    Yang, Yimin
    Li, Xuwen
    Meng, Yu
    Zhang, Xinyu
    Li, Ziwei
    FRONTIERS IN SURGERY, 2022, 9
  • [46] A Genetic Algorithm Based Support Vector Machine Model for Blood-Brain Barrier Penetration Prediction
    Zhang, Daqing
    Xiao, Jianfeng
    Zhou, Nannan
    Zheng, Mingyue
    Luo, Xiaomin
    Jiang, Hualiang
    Chen, Kaixian
    BIOMED RESEARCH INTERNATIONAL, 2015, 2015
  • [47] A Model for Hepatotoxicity Prediction Based on Coarse-Grained Parallel Genetic Algorithm and Support Vector Machine
    Ding, Sha
    Zhao, Shi-Yuan
    Chen, Zhi
    Lin, Tao
    JOURNAL OF MEDICAL IMAGING AND HEALTH INFORMATICS, 2016, 6 (08) : 1896 - 1903
  • [48] Gene Selection Based on Support Vector Machine using Bootstrap
    Song, Seuck Heun
    Kim, Kyoung Hee
    Park, Changyi
    Koo, Ja-Yong
    KOREAN JOURNAL OF APPLIED STATISTICS, 2007, 20 (03) : 531 - 540
  • [49] Screening for pre-diabetes using support vector machine model
    Chung, Jai Won
    Kim, Won Jae
    Choi, Soo Beom
    Park, Jee Soo
    Kim, Deok Won
    2014 36TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY (EMBC), 2014, : 2472 - 2475
  • [50] Prediction of Treatment Failure of Tuberculosis using Support Vector Machine with Genetic Algorithm
    Kanesamoorthy, Keethansana
    Dissanayake, Maheshi B.
    INTERNATIONAL JOURNAL OF MYCOBACTERIOLOGY, 2021, 10 (03) : 279 - 284