Construction of a Disulfidptosis-Related Prediction Model for Acute Myocardial Infarction Based on Transcriptome Data.

Q4 Medicine
Qiu-Rong Tang, Yang Feng, Yao Zhao, Yun-Fei Bian
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引用次数: 0

Abstract

Objective To identify disulfidptosis-related gene(DRG)in acute myocardial infarction(AMI)by bioinformatics,analyze the molecular pattern of DRGs in AMI,and construct a DRGs-related prediction model.Methods AMI-related datasets were downloaded from the Gene Expression Omnibus database,and DRGs with differential expression were screened in AMI.CIBERSORT method was used to analyze the immune infiltration.Based on the differentially expressed DRGs,the AMI patients were classified into distinct subtypes via consensus clustering,followed by immune infiltration analysis,differential expression analysis,gene ontology and Kyoto encyclopedia of genes and genomes enrichment analysis,and gene set variation analysis.Weighted gene co-expression network analysis(WGCNA)was then performed to construct subtype-associated modules and identify hub genes.Finally,least absolute shrinkage and selection operator,random forest,and support vector machine-recursive feature elimination were used to screen feature genes to construct a DRGs-related prediction model.The model's diagnostic efficacy was evaluated by nomogram and receiver operating characteristic(ROC)curve analysis,followed by external validation.Results Nine differentially expressed DRGs were identified between AMI patients and controls.Based on the expression levels of these nine DRGs,AMI patients were divided into two DRGs subtypes,C1 and C2.Increased infiltration of monocytes,M0 macrophages,and neutrophils was observed in AMI patients and C1 subtype(all P<0.05),indicating a close correlation between DRGs and immune cells.There were 257 differentially expressed genes between the C1 and C2 subtypes,which were related to biological processes such as myeloid leukocyte activation and positive regulation of cytokines.Fcγ receptor-mediated phagocytosis and NOD-like receptor signaling pathway activity were enhanced in C1 subtype.WGCNA analysis suggested that the brown module exhibited the strongest correlation with DRG subtypes(r=0.67),from which 23 differentially expressed genes were identified.The feature genes screened by three machine learning methods were interpolated to obtain a DRGs-related prediction model consisting of three genes(AQP9,F5 and PYGL).Nomogram and ROC curves(AUCtrain=0.891,AUCtest=0.840)showed good diagnostic efficacy.Conclusions DRGs were closely related to the occurrence and progression of AMI.The DRGs-related prediction model consisting of AQP9,F5 and PYGL may provide targets for the diagnosis and personalized treatment of AMI.

基于转录组数据的急性心肌梗死二硫醇相关预测模型构建
目的应用生物信息学方法鉴定急性心肌梗死(AMI)中二硫塌陷相关基因(DRG),分析AMI中DRG的分子模式,构建DRGs相关预测模型。方法从基因表达Omnibus数据库下载AMI相关数据集,筛选AMI中差异表达的DRGs。采用CIBERSORT法对免疫浸润进行分析。基于差异表达的DRGs,通过共识聚类将AMI患者划分为不同的亚型,然后进行免疫浸润分析、差异表达分析、基因本体论和京都基因百科及基因组富集分析、基因集变异分析。然后进行加权基因共表达网络分析(WGCNA)来构建亚型相关模块并识别中心基因。最后,利用最小绝对收缩和选择算子、随机森林和支持向量机递归特征消去筛选特征基因,构建drgs相关预测模型。采用nomogram和receiver operating characteristic(ROC)曲线分析评价模型的诊断效果,并进行外部验证。结果AMI患者与对照组共鉴定出9个差异表达DRGs。根据这9种DRGs的表达水平,将AMI患者分为C1和C2两个DRGs亚型。AMI患者和C1亚型患者单核细胞、M0巨噬细胞和中性粒细胞浸润增加(Pr均为0.67),其中鉴定出23个差异表达基因。将3种机器学习方法筛选的特征基因内插,得到由3个基因(AQP9、F5和PYGL)组成的drgs相关预测模型。Nomogram和ROC曲线(AUCtrain=0.891,AUCtest=0.840)显示较好的诊断效果。结论DRGs与AMI的发生、发展密切相关。由AQP9、F5和PYGL组成的drgs相关预测模型可为AMI的诊断和个性化治疗提供靶标。
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来源期刊
中国医学科学院学报
中国医学科学院学报 Medicine-Medicine (all)
CiteScore
0.60
自引率
0.00%
发文量
6813
期刊介绍: Acta Academiae Medicinae Sinicae was founded in February 1979. It is a comprehensive medical academic journal published in China and abroad, supervised by the Ministry of Health of the People's Republic of China and sponsored by the Chinese Academy of Medical Sciences and Peking Union Medical College. The journal mainly reports the latest research results, work progress and dynamics in the fields of basic medicine, clinical medicine, pharmacy, preventive medicine, biomedicine, medical teaching and research, aiming to promote the exchange of medical information and improve the academic level of medicine. At present, the journal has been included in 10 famous foreign retrieval systems and their databases [Medline (PubMed online version), Elsevier, EMBASE, CA, WPRIM, ExtraMED, IC, JST, UPD and EBSCO-ASP]; and has been included in important domestic retrieval systems and databases [China Science Citation Database (Documentation and Information Center of the Chinese Academy of Sciences), China Core Journals Overview (Peking University Library), China Science and Technology Paper Statistical Source Database (China Science and Technology Core Journals) (China Institute of Scientific and Technological Information), China Science and Technology Journal Paper and Citation Database (China Institute of Scientific and Technological Information)].
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