Identification of driver genes in renal stress condition using network clustering approach
Identification of driver genes in renal stress condition using network clustering approach
Blog Article
Chronic kidney disease (CKD) is a non-contagious, ageing-related sex shop arles and covert disease.It is a (chronic) disease of the kidneys leading to renal failure, huge public health problem worldwide and common comorbidity with type 2 diabetes mellitus (T2DM).Its presence and severity influence disease prognosis significantly.Identification of driver genes which regulate the CKD network is one of the main challenges in understanding its biological significance.
We have analyzed microarray dataset and compare the gene expression profile of the patient with healthy control.Besides, we studied the gene regulatory networks that may help to understand the molecular mechanism in CKD.Further, after a comparative analysis of CKD and DKD.We proposed five driver genes, namely ALB, WT1, IL7R, PTPRC and DOCK2, that play an essential role in the pathogenesis of CKD and could serve as biomarkers.
In the present study, we have mapped and analyzed the interactions of these five genes in click here the form of network and in addition to this we also tracked down the other essential, i.e.driver genes responsible for the modular nature of the network.The proposed study is based on network analysis approaches to predict some unknown CKD-associated genes, which can be validated as reliable candidates for further in vitro/in vivo experiment.