The developmental and evolutionary characteristics of transcription factor binding site clustered regions based on an explainable machine learning model

Author:

Ouyang Zhangyi1ORCID,Liu Feng2ORCID,Li Wanying1,Wang Junting1,Chen Bijia1,Zheng Yang1,Li Yaru1,Tao Huan1,Xu Xiang1,Li Cheng3,Cong Yuwen1,Li Hao1,Bo Xiaochen1ORCID,Chen Hebing1ORCID

Affiliation:

1. Academy of Military Medical Sciences , Beijing  100850 , China

2. College of Medical Informatics, Chongqing Medical University , Chongqing  400016 , China

3. Center for Bioinformatics, School of Life Sciences, Center for Statistical Science, Peking University , Beijing  100871 , China

Abstract

Abstract Gene expression is temporally and spatially regulated by the interaction of transcription factors (TFs) and cis-regulatory elements (CREs). The uneven distribution of TF binding sites across the genome poses challenges in understanding how this distribution evolves to regulate spatio-temporal gene expression and consequent heritable phenotypic variation. In this study, chromatin accessibility profiles and gene expression profiles were collected from several species including mammals (human, mouse, bovine), fish (zebrafish and medaka), and chicken. Transcription factor binding sites clustered regions (TFCRs) at different embryonic stages were characterized to investigate regulatory evolution. The study revealed dynamic changes in TFCR distribution during embryonic development and species evolution. The synchronization between TFCR complexity and gene expression was assessed across species using RegulatoryScore. Additionally, an explainable machine learning model highlighted the importance of the distance between TFCR and promoter in the coordinated regulation of TFCRs on gene expression. Our results revealed the developmental and evolutionary dynamics of TFCRs during embryonic development from fish, chicken to mammals. These data provide valuable resources for exploring the relationship between transcriptional regulation and phenotypic differences during embryonic development.

Funder

National Natural Science Foundation of China

Beijing Nova Program of Science and Technology

Beijing Natural Science Foundation

Chongqing Natural Science Foundation of China

Publisher

Oxford University Press (OUP)

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