Wu, XiaoweiLiu, ShichengLiang, Guanying2022-12-122022-12-122022-12-09BMC Bioinformatics. 2022 Dec 09;23(1):535http://hdl.handle.net/10919/112853Background Rapidly growing genome-wide ChIP-seq data have provided unprecedented opportunities to explore transcription factor (TF) binding under various cellular conditions. Despite the rich resources, development of analytical methods for studying the interaction among TFs in gene regulation still lags behind. Results In order to address cooperative TF binding and detect TF clusters with coordinative functions, we have developed novel computational methods based on clustering the sample paths of nonhomogeneous Poisson processes. Simulation studies demonstrated the capability of these methods to accurately detect TF clusters and uncover the hierarchy of TF interactions. A further application to the multiple-TF ChIP-seq data in mouse embryonic stem cellsĀ (ESCs) showed that our methods identified the cluster of core ESC regulators reported in the literature and provided new insights on functional implications of transcrisptional regulatory modules. Conclusions Effective analytical tools are essential for studying protein-DNA relations. Information derived from this research will help us better understand the orchestration of transcription factors in gene regulation processes.application/pdfenCreative Commons Attribution 4.0 InternationalDetecting clusters of transcription factors based on a nonhomogeneous poisson process modelArticle - Refereed2022-12-11The Author(s)BMC Bioinformaticshttps://doi.org/10.1186/s12859-022-05090-2