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首页> 外文期刊>International Journal of Genomics >Data Mining Mycobacterium tuberculosis Pathogenic Gene Transcription Factors and Their Regulatory Network Nodes
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Data Mining Mycobacterium tuberculosis Pathogenic Gene Transcription Factors and Their Regulatory Network Nodes

机译:数据挖掘分枝杆菌结核病致病基因转录因子及其监管网络节点

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摘要

Tuberculosis (TB) is one of the deadliest infectious diseases worldwide. In Mycobacterium tuberculosis, changes in gene expression are highly variable and involve many genes, so traditional single-gene screening of M. tuberculosis targets has been unable to meet the needs of clinical diagnosis. In this study, using the National Center for Biotechnology Information (NCBI) GEO Datasets, whole blood gene expression profile data were obtained in patients with active pulmonary tuberculosis. Linear model-experience Bayesian statistics using the Limma package in R combined with f-tests were applied for nonspecific filtration of the expression profile data, and the differentially expressed human genes were determined. Using DAVID and KEGG, the functional analysis of differentially expressed genes (GO analysis) and the analysis of signaling pathways were performed. Based on the differentially expressed gene, the transcriptional regulatory element databases (TRED) were integrated to construct the M. tuberculosis pathogenic gene regulatory network, and the correlation of the network genes with disease was analyzed with the DAVID online annotation tool. It was predicted that IL-6, JUN, and TP53, along with transcription factors SRC, TNF, and MAPK14, could regulate the immune response, with their function being extracellular region activity and protein binding during infection with M. tuberculosis.
机译:结核病(TB)是世界上最致命的传染病之一。在结核分枝杆菌中,基因表达的变化是高度可变的并且涉及许多基因,因此Cuberculosis靶的传统单基因筛选是无法满足临床诊断的需求。在本研究中,利用国家生物技术信息中心(NCBI)地理数据集,在有活性肺结核患者中获得全血基因表达谱数据。使用r族中的Limma封装与F-Tests的Limma封装进行线性模型 - 体验贝叶斯统计学用于表达谱数据的非特异性过滤,并且测定差异表达的人类基因。使用David和Kegg,进行差异表达基因的功能分析(GO分析)和信号通路分析。基于差异表达的基因,通过David在线注释工具分析了转录调节元素数据库(TRED)对构建M.结核病致病性基因调节网络的构建。据预测,IL-6,6月和TP53以及转录因子SRC,TNF和MAPK14可以调节免疫应答,其功能是在用M.结核病感染期间的细胞外区域活性和蛋白质结合。

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