Discovering functional sequences with RELICS, an analysis method for CRISPR screens.

CRISPR screens are a powerful technology for the identification of genome sequences that affect cellular phenotypes such as gene expression, survival, and proliferation. By targeting non-coding sequences for perturbation, CRISPR screens have the potential to systematically discover novel functional...

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Main Authors: Patrick C Fiaux, Hsiuyi V Chen, Poshen B Chen, Aaron R Chen, Graham McVicker
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-09-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1008194
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spelling doaj-6b5fc805c7904a6d889d978e145c263d2021-04-21T15:17:56ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582020-09-01169e100819410.1371/journal.pcbi.1008194Discovering functional sequences with RELICS, an analysis method for CRISPR screens.Patrick C FiauxHsiuyi V ChenPoshen B ChenAaron R ChenGraham McVickerCRISPR screens are a powerful technology for the identification of genome sequences that affect cellular phenotypes such as gene expression, survival, and proliferation. By targeting non-coding sequences for perturbation, CRISPR screens have the potential to systematically discover novel functional sequences, however, a lack of purpose-built analysis tools limits the effectiveness of this approach. Here we describe RELICS, a Bayesian hierarchical model for the discovery of functional sequences from CRISPR screens. RELICS specifically addresses many of the challenges of non-coding CRISPR screens such as the unknown locations of functional sequences, overdispersion in the observed single guide RNA counts, and the need to combine information across multiple pools in an experiment. RELICS outperforms existing methods with higher precision, higher recall, and finer-resolution predictions on simulated datasets. We apply RELICS to published CRISPR interference and CRISPR activation screens to predict and experimentally validate novel regulatory sequences that are missed by other analysis methods. In summary, RELICS is a powerful new analysis method for CRISPR screens that enables the discovery of functional sequences with unprecedented resolution and accuracy.https://doi.org/10.1371/journal.pcbi.1008194
collection DOAJ
language English
format Article
sources DOAJ
author Patrick C Fiaux
Hsiuyi V Chen
Poshen B Chen
Aaron R Chen
Graham McVicker
spellingShingle Patrick C Fiaux
Hsiuyi V Chen
Poshen B Chen
Aaron R Chen
Graham McVicker
Discovering functional sequences with RELICS, an analysis method for CRISPR screens.
PLoS Computational Biology
author_facet Patrick C Fiaux
Hsiuyi V Chen
Poshen B Chen
Aaron R Chen
Graham McVicker
author_sort Patrick C Fiaux
title Discovering functional sequences with RELICS, an analysis method for CRISPR screens.
title_short Discovering functional sequences with RELICS, an analysis method for CRISPR screens.
title_full Discovering functional sequences with RELICS, an analysis method for CRISPR screens.
title_fullStr Discovering functional sequences with RELICS, an analysis method for CRISPR screens.
title_full_unstemmed Discovering functional sequences with RELICS, an analysis method for CRISPR screens.
title_sort discovering functional sequences with relics, an analysis method for crispr screens.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2020-09-01
description CRISPR screens are a powerful technology for the identification of genome sequences that affect cellular phenotypes such as gene expression, survival, and proliferation. By targeting non-coding sequences for perturbation, CRISPR screens have the potential to systematically discover novel functional sequences, however, a lack of purpose-built analysis tools limits the effectiveness of this approach. Here we describe RELICS, a Bayesian hierarchical model for the discovery of functional sequences from CRISPR screens. RELICS specifically addresses many of the challenges of non-coding CRISPR screens such as the unknown locations of functional sequences, overdispersion in the observed single guide RNA counts, and the need to combine information across multiple pools in an experiment. RELICS outperforms existing methods with higher precision, higher recall, and finer-resolution predictions on simulated datasets. We apply RELICS to published CRISPR interference and CRISPR activation screens to predict and experimentally validate novel regulatory sequences that are missed by other analysis methods. In summary, RELICS is a powerful new analysis method for CRISPR screens that enables the discovery of functional sequences with unprecedented resolution and accuracy.
url https://doi.org/10.1371/journal.pcbi.1008194
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