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Machine learning methods for predicting guide RNA effects in CRISPR epigenome editing experiments.

Publication ,  Journal Article
Mu, W; Luo, T; Barrera, A; Bounds, LR; Klann, TS; Ter Weele, M; Bryois, J; Crawford, GE; Sullivan, PF; Gersbach, CA; Love, MI; Li, Y
Published in: bioRxiv
April 19, 2024

CRISPR epigenomic editing technologies enable functional interrogation of non-coding elements. However, current computational methods for guide RNA (gRNA) design do not effectively predict the power potential, molecular and cellular impact to optimize for efficient gRNAs, which are crucial for successful applications of these technologies. We present "launch-dCas9" (machine LeArning based UNified CompreHensive framework for CRISPR-dCas9) to predict gRNA impact from multiple perspectives, including cell fitness, wildtype abundance (gauging power potential), and gene expression in single cells. Our launchdCas9, built and evaluated using experiments involving >1 million gRNAs targeted across the human genome, demonstrates relatively high prediction accuracy (AUC up to 0.81) and generalizes across cell lines. Method-prioritized top gRNA(s) are 4.6-fold more likely to exert effects, compared to other gRNAs in the same cis-regulatory region. Furthermore, launchdCas9 identifies the most critical sequence-related features and functional annotations from >40 features considered. Our results establish launch-dCas9 as a promising approach to design gRNAs for CRISPR epigenomic experiments.

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Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

April 19, 2024

Location

United States
 

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Mu, W., Luo, T., Barrera, A., Bounds, L. R., Klann, T. S., Ter Weele, M., … Li, Y. (2024). Machine learning methods for predicting guide RNA effects in CRISPR epigenome editing experiments. BioRxiv. https://doi.org/10.1101/2024.04.18.590188
Mu, Wancen, Tianyou Luo, Alejandro Barrera, Lexi R. Bounds, Tyler S. Klann, Maria Ter Weele, Julien Bryois, et al. “Machine learning methods for predicting guide RNA effects in CRISPR epigenome editing experiments.BioRxiv, April 19, 2024. https://doi.org/10.1101/2024.04.18.590188.
Mu W, Luo T, Barrera A, Bounds LR, Klann TS, Ter Weele M, et al. Machine learning methods for predicting guide RNA effects in CRISPR epigenome editing experiments. bioRxiv. 2024 Apr 19;
Mu, Wancen, et al. “Machine learning methods for predicting guide RNA effects in CRISPR epigenome editing experiments.BioRxiv, Apr. 2024. Pubmed, doi:10.1101/2024.04.18.590188.
Mu W, Luo T, Barrera A, Bounds LR, Klann TS, Ter Weele M, Bryois J, Crawford GE, Sullivan PF, Gersbach CA, Love MI, Li Y. Machine learning methods for predicting guide RNA effects in CRISPR epigenome editing experiments. bioRxiv. 2024 Apr 19;

Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

April 19, 2024

Location

United States