Differential Network Analysis of Longitudinal Gene Expression in Response to Perturbations

Autor: Carlo Piermarocchi, Shuyue Xue, Lavida R. K. Rogers, Minzhang Zheng, Jin He, George I. Mias
Rok vydání: 2021
Předmět:
Popis: Understanding changes in gene expression under the effects of a perturbation is a key goal of systems biology. A powerful approach to address this goal uses gene networks and describes the perturbation’s effects as a rewiring of each gene’s connections. This approach is known as differential network (DN) analysis. Here, we used DNs to analyze RNA-sequencing time series datasets, focusing on expression changes: (i) In the saliva of a human subject after vaccination with a pneumococcal vaccine (PPSV23), and (ii) in B cells treatedex vivowith a monoclonal antibody drug (Rituximab). Using network community detection, we revealed the collective behavior of clusters of genes, and detected communities of genes based on their longitudinal behavior, and corresponding pathway activations. We identified biological pathways consistent with the mechanism of action of the vaccine and with Rituximab’s targets. The approach may be useful in drug development by providing an effective analysis of expressing changes in response to a drug.
Databáze: OpenAIRE