4.2 Article

Extracting functional insights from loss-of-function screens using deep link prediction

Journal

CELL REPORTS METHODS
Volume 2, Issue 2, Pages -

Publisher

CELL PRESS
DOI: 10.1016/j.crmeth.2022.100171

Keywords

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Funding

  1. Fonds Wetenschappelijk Onderzoek-Vlaanderen (FWO) [3G046318, G.0371.06]
  2. UGent BOF.
  3. personal Baekeland grant from VLAIO [HBC.2019.2608]
  4. Fonds Wetenschappelijk Onderzoek [G.0371.06]

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We present deep link prediction (DLP), a method for the interpretation of loss-of-function screens. Our approach uses representation-based link prediction to reprioritize phenotypic readouts by integrating screening experiments with gene-gene interaction networks. DLP-DeepWalk outperforms other methods in recovering cell-specific dependencies, achieving an average precision well above 90% across 7 different cancer types and on both RNAi and CRISPR data. The genes ranked highest by DLP-DeepWalk are more enriched in drug targets compared to the ranking based on original screening scores.
We present deep link prediction (DLP), a method for the interpretation of loss-of-function screens. Our approach uses representation-based link prediction to reprioritize phenotypic readouts by integrating screening experiments with gene-gene interaction networks. We validate on 2 different loss-of-function technologies, RNAi and CRISPR, using datasets obtained from DepMap. Extensive benchmarking shows that DLP-DeepWalk outperforms other methods in recovering cell-specific dependencies, achieving an average precision well above 90% across 7 different cancer types and on both RNAi and CRISPR data. We show that the genes ranked highest by DLP-DeepWalk are appreciably more enriched in drug targets compared to the ranking based on original screening scores. Interestingly, this enrichment is more pronounced on RNAi data compared to CRISPR data, consistent with the greater inherent noise of RNAi screens. Finally, we demonstrate how DLP-DeepWalk can infer the molecular mechanism through which putative targets trigger cell line mortality.

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