Nature Communications (Aug 2024)

MOCHA’s advanced statistical modeling of scATAC-seq data enables functional genomic inference in large human cohorts

  • Samir Rachid Zaim,
  • Mark-Phillip Pebworth,
  • Imran McGrath,
  • Lauren Okada,
  • Morgan Weiss,
  • Julian Reading,
  • Julie L. Czartoski,
  • Troy R. Torgerson,
  • M. Juliana McElrath,
  • Thomas F. Bumol,
  • Peter J. Skene,
  • Xiao-jun Li

DOI
https://doi.org/10.1038/s41467-024-50612-6
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 24

Abstract

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Abstract Single-cell assay for transposase-accessible chromatin using sequencing (scATAC-seq) is being increasingly used to study gene regulation. However, major analytical gaps limit its utility in studying gene regulatory programs in complex diseases. In response, MOCHA (Model-based single cell Open CHromatin Analysis) presents major advances over existing analysis tools, including: 1) improving identification of sample-specific open chromatin, 2) statistical modeling of technical drop-out with zero-inflated methods, 3) mitigation of false positives in single cell analysis, 4) identification of alternative transcription-starting-site regulation, and 5) modules for inferring temporal gene regulatory networks from longitudinal data. These advances, in addition to open chromatin analyses, provide a robust framework after quality control and cell labeling to study gene regulatory programs in human disease. We benchmark MOCHA with four state-of-the-art tools to demonstrate its advances. We also construct cross-sectional and longitudinal gene regulatory networks, identifying potential mechanisms of COVID-19 response. MOCHA provides researchers with a robust analytical tool for functional genomic inference from scATAC-seq data.