4.7 Article

A statistical framework for predicting critical regions of p53-dependent enhancers

Journal

BRIEFINGS IN BIOINFORMATICS
Volume 22, Issue 3, Pages -

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbaa053

Keywords

critical enhancer regions; computational CRISPR; p53; K-mer; TF motifs

Funding

  1. National Natural Science Foundation of China (NSFC) [11671003]
  2. Fundamental Research Funds for the Central University HZAU [2662017JC048]

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P53, known as the 'guardian of the genome', regulates cell cycle and apoptosis. The development of the 'Computational CRISPR Strategy' provides a new way to predict P53-dependent critical enhancer regions. This approach shows great potential in accurately identifying and understanding the role of P53-dependent CERs.
P53 is the 'guardian of the genome' and is responsible for regulating cell cycle and apoptosis. The genomic p53 binding regions, where activating transcriptional factors and cofactors like p300 simultaneously bind, are called '03-dependent enhancers', which play an important role in tumorigenesis. Current experimental assays generally provide a broad peak of each enhancer element, leaving our knowledge about critical enhancer regions (CERs) limited. Under the inspiration of enhancer dissection by CRISPR-Cas9 screen library on genome-wide p53 binding sites, here we introduce a statistical framework called 'Computational CRISPR Strategy' (CCS), to predict whether a given DNA fragment will be a p53-dependent CER by employing 7-mer as feature extractions along with random forest as the regressor. When training on a p53 CRISPR enhancer dataset, CCS not only accurately fitted the top-ranked enriched single guide RNA5 (sgRNAs) but also successfully reproduced two known CERs that were validated by experiments. When applying it to an independent testing dataset on a tilling of a 2K-b genomic region of CRISPR-deCDKN1A-Lib, the trained model shows great generalizability by identifying a CER containing five top-ranked sgRNAs. A feature importance analysis further indicates that top-ranked 7-mers are mapped onto informative TF motifs including POUSF1 and SOXS, which are differentially enriched in p53-dependent CERs and are potential factors to make a general p53 binding site to form a p53-dependent CER, providing the interpretability of the trained model. Our results demonstrate that CCS is an alternative way of the CRISPR experiment to screen the genome for mapping p53-dependent CERs.

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