Login / Signup

Independent component analysis recovers consistent regulatory signals from disparate datasets.

Anand V SastryAlyssa HuDavid HeckmannSaugat PoudelErol S KavvasBernhard O Palsson
Published in: PLoS computational biology (2021)
The availability of bacterial transcriptomes has dramatically increased in recent years. This data deluge could result in detailed inference of underlying regulatory networks, but the diversity of experimental platforms and protocols introduces critical biases that could hinder scalable analysis of existing data. Here, we show that the underlying structure of the E. coli transcriptome, as determined by Independent Component Analysis (ICA), is conserved across multiple independent datasets, including both RNA-seq and microarray datasets. We subsequently combined five transcriptomics datasets into a large compendium containing over 800 expression profiles and discovered that its underlying ICA-based structure was still comparable to that of the individual datasets. With this understanding, we expanded our analysis to over 3,000 E. coli expression profiles and predicted three high-impact regulons that respond to oxidative stress, anaerobiosis, and antibiotic treatment. ICA thus enables deep analysis of disparate data to uncover new insights that were not visible in the individual datasets.
Keyphrases
  • rna seq
  • single cell
  • oxidative stress
  • transcription factor
  • escherichia coli
  • big data
  • gene expression
  • data analysis
  • machine learning
  • smoking cessation
  • heat shock
  • heat shock protein