TY - JOUR
T1 - Dimensionality reduction methods for extracting functional networks from large-scale CRISPR screens
AU - Hassan, Arshia Zernab
AU - Ward, Henry N.
AU - Rahman, Mahfuzur
AU - Billmann, Maximilian
AU - Lee, Yoonkyu
AU - Myers, Chad L.
N1 - Publisher Copyright:
© 2023 The Authors. Published under the terms of the CC BY 4.0 license.
PY - 2023/11/9
Y1 - 2023/11/9
N2 - 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.
AB - 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.
KW - auto-encoder
KW - gene co-essentiality network
KW - normalization
KW - robust principal component analysis
KW - unsupervised dimensionality reduction
UR - https://www.scopus.com/pages/publications/85172284053
UR - https://www.scopus.com/inward/citedby.url?scp=85172284053&partnerID=8YFLogxK
U2 - 10.15252/msb.202311657
DO - 10.15252/msb.202311657
M3 - Article
C2 - 37750448
AN - SCOPUS:85172284053
SN - 1744-4292
VL - 19
JO - Molecular Systems Biology
JF - Molecular Systems Biology
IS - 11
M1 - e11657
ER -