학술논문

DiNeR: a Differential graphical model for analysis of co-regulation Network Rewiring
Document Type
article
Source
BMC Bioinformatics. 21(1)
Subject
Biological Sciences
Bioinformatics and Computational Biology
Genetics
Cancer
Human Genome
Hematology
Networking and Information Technology R&D (NITRD)
Aetiology
2.1 Biological and endogenous factors
Generic health relevance
Chromatin Immunoprecipitation
Gene Expression Regulation
Gene Regulatory Networks
Genome
Humans
K562 Cells
Leukemia
Myelogenous
Chronic
BCR-ABL Positive
Models
Genetic
Protein Binding
Software
Transcription Factors
Transcription
Genetic
Transcription factor co-regulation network
ENCODE
TF dysregulation
Network changes
Mathematical Sciences
Information and Computing Sciences
Bioinformatics
Biological sciences
Information and computing sciences
Mathematical sciences
Language
Abstract
BACKGROUND:During transcription, numerous transcription factors (TFs) bind to targets in a highly coordinated manner to control the gene expression. Alterations in groups of TF-binding profiles (i.e. "co-binding changes") can affect the co-regulating associations between TFs (i.e. "rewiring the co-regulator network"). This, in turn, can potentially drive downstream expression changes, phenotypic variation, and even disease. However, quantification of co-regulatory network rewiring has not been comprehensively studied. RESULTS:To address this, we propose DiNeR, a computational method to directly construct a differential TF co-regulation network from paired disease-to-normal ChIP-seq data. Specifically, DiNeR uses a graphical model to capture the gained and lost edges in the co-regulation network. Then, it adopts a stability-based, sparsity-tuning criterion -- by sub-sampling the complete binding profiles to remove spurious edges -- to report only significant co-regulation alterations. Finally, DiNeR highlights hubs in the resultant differential network as key TFs associated with disease. We assembled genome-wide binding profiles of 104 TFs in the K562 and GM12878 cell lines, which loosely model the transition between normal and cancerous states in chronic myeloid leukemia (CML). In total, we identified 351 significantly altered TF co-regulation pairs. In particular, we found that the co-binding of the tumor suppressor BRCA1 and RNA polymerase II, a well-known transcriptional pair in healthy cells, was disrupted in tumors. Thus, DiNeR successfully extracted hub regulators and discovered well-known risk genes. CONCLUSIONS:Our method DiNeR makes it possible to quantify changes in co-regulatory networks and identify alterations to TF co-binding patterns, highlighting key disease regulators. Our method DiNeR makes it possible to quantify changes in co-regulatory networks and identify alterations to TF co-binding patterns, highlighting key disease regulators.