Department of Electrical and Electronic Engineering, University of Rajshahi, Rajshahi 6205, Bangladesh.
Department of Computer Science and Engineering, University of Rajshahi, Rajshahi 6205, Bangladesh.
IET Syst Biol. 2020 Apr;14(2):75-84. doi: 10.1049/iet-syb.2019.0074.
Cardiomyopathy (CMP) is a group of myocardial diseases that progressively impair cardiac function. The mechanisms underlying CMP development are poorly understood, but lifestyle factors are clearly implicated as risk factors. This study aimed to identify molecular biomarkers involved in inflammatory CMP development and progression using a systems biology approach. The authors analysed microarray gene expression datasets from CMP and tissues affected by risk factors including smoking, ageing factors, high body fat, clinical depression status, insulin resistance, high dietary red meat intake, chronic alcohol consumption, obesity, high-calorie diet and high-fat diet. The authors identified differentially expressed genes (DEGs) from each dataset and compared those from CMP and risk factor datasets to identify common DEGs. Gene set enrichment analyses identified metabolic and signalling pathways, including MAPK, RAS signalling and cardiomyopathy pathways. Protein-protein interaction (PPI) network analysis identified protein subnetworks and ten hub proteins (CDK2, ATM, CDT1, NCOR2, HIST1H4A, HIST1H4B, HIST1H4C, HIST1H4D, HIST1H4E and HIST1H4L). Five transcription factors (FOXC1, GATA2, FOXL1, YY1, CREB1) and five miRNAs were also identified in CMP. Thus the authors' approach reveals candidate biomarkers that may enhance understanding of mechanisms underlying CMP and their link to risk factors. Such biomarkers may also be useful to develop new therapeutics for CMP.
心肌病(CMP)是一组心肌疾病,可逐渐损害心脏功能。CMP 发展的机制尚不清楚,但生活方式因素显然是危险因素。本研究旨在采用系统生物学方法鉴定与炎症性 CMP 发展和进展相关的分子生物标志物。作者分析了来自 CMP 和受吸烟、衰老因素、高体脂、临床抑郁状态、胰岛素抵抗、高膳食红肉类摄入、慢性酒精摄入、肥胖、高热量饮食和高脂肪饮食等危险因素影响的组织的微阵列基因表达数据集。作者从每个数据集识别差异表达基因(DEG),并比较 CMP 和危险因素数据集的 DEG 以识别共同的 DEG。基因集富集分析鉴定了代谢和信号通路,包括 MAPK、RAS 信号和心肌病途径。蛋白质-蛋白质相互作用(PPI)网络分析鉴定了蛋白质子网络和十个枢纽蛋白(CDK2、ATM、CDT1、NCOR2、HIST1H4A、HIST1H4B、HIST1H4C、HIST1H4D、HIST1H4E 和 HIST1H4L)。还在 CMP 中鉴定了五个转录因子(FOXC1、GATA2、FOXL1、YY1、CREB1)和五个 miRNAs。因此,作者的方法揭示了候选生物标志物,这些标志物可能有助于增强对 CMP 及其与危险因素之间关系的机制的理解。这些生物标志物也可能有助于开发治疗 CMP 的新疗法。