PubMed 37750448

PubMed ID: 37750448

View on PubMed
Dimensionality reduction methods for extracting functional networks from large-scale CRISPR screens.
Authors: Hassan Arshia Zernab, Ward Henry N, Rahman Mahfuzur, Billmann Maximilian, Lee Yoonkyu, Myers Chad L
Journal: Molecular systems biology (Mol Syst Biol), Vol.19(11), 2023‑Nov‑09

DOI: 10.48550/arXiv.1312.6114 PMCID: PMC5241818

Abstract
CRISPR-Cas9 screens facilitate the discovery of gene functional relationships and phenotype-specific dependencies. The Cancer Dependency Map (DepMap) is the largest compendium of whole-genome CRISPR screens aimed at identifying cancer-specific genetic dependencies across human cell lines. A mitochondria-associated bias has been previously reported to mask signals for genes involved in other functions, and thus, methods for normalizing this dominant signal to improve co-essentiality networks are of interest. In this study, we explore three unsupervised dimensionality reduction methods-autoencoders, robust, and classical principal component analyses (PCA)-for normalizing the DepMap to improve functional networks extracted from these data. We propose a novel "onion" normalization technique to combine several normalized data layers into a single network. Benchmarking analyses reveal that robust PCA combined with onion normalization outperforms existing methods for normalizing the DepMap. Our work demonstrates the value of removing low-dimensional signals from the DepMap before constructing functional gene networks and provides generalizable dimensionality reduction-based normalization tools.
Publication Types
Journal Article Research Support, Non-U.S. Gov't Research Support, N.I.H., Extramural
Keywords
auto-encoder gene co-essentiality network normalization robust principal component analysis unsupervised dimensionality reduction
Grant Support
Related Articles