Affiliation:
1. Department of Biotechnology Motilal Nehru Institute of Technology Allahabad Prayagraj India
Abstract
AbstractAdvancements in sequencing technologies have facilitated omics level information generation for various diseases in human. High‐throughput technologies have become a powerful tool to understand differential expression studies and transcriptional network analysis. An understanding of complex transcriptional networks in human diseases requires integration of datasets representing different RNA species including microRNA (miRNA) and messenger RNA (mRNA). This review emphasises on conceptual explanation of generalized workflow and methodologies to the miRNA mediated responses in human diseases by using different in silico analysis. Although, there have been many prior explorations in miRNA‐mediated responses in human diseases, the advantages, limitations and overcoming the limitation through different statistical techniques have not yet been discussed. This review focuses on miRNAs as important gene regulators in human diseases, methodologies for miRNA‐target gene prediction and data driven methods for enrichment and network analysis for miRnome–targetome interactions. Additionally, it proposes an integrative workflow to analyse structural components of networks obtained from high‐throughput data. This review explains how to apply the existing methods to analyse miRNA‐mediated responses in human diseases. It addresses unique characteristics of different analysis, its limitations and its statistical solutions influencing the choice of methods for the analysis through a workflow. Moreover, it provides an overview of promising common integrative approaches to comprehend miRNA‐mediated gene regulatory events in biological processes in humans. The proposed methodologies and workflow shall help in the analysis of multi‐source data to identify molecular signatures of various human diseases.