| Literature DB >> 29936186 |
Yang Yang1, Quanquan Gu2, Yang Zhang1, Takayo Sasaki3, Julianna Crivello4, Rachel J O'Neill4, David M Gilbert3, Jian Ma5.
Abstract
A large amount of multi-species functional genomic data from high-throughput assays are becoming available to help understand the molecular mechanisms for phenotypic diversity across species. However, continuous-trait probabilistic models, which are key to such comparative analysis, remain under-explored. Here we develop a new model, called phylogenetic hidden Markov Gaussian processes (Phylo-HMGP), to simultaneously infer heterogeneous evolutionary states of functional genomic features in a genome-wide manner. Both simulation studies and real data application demonstrate the effectiveness of Phylo-HMGP. Importantly, we applied Phylo-HMGP to analyze a new cross-species DNA replication timing (RT) dataset from the same cell type in five primate species (human, chimpanzee, orangutan, gibbon, and green monkey). We demonstrate that our Phylo-HMGP model enables discovery of genomic regions with distinct evolutionary patterns of RT. Our method provides a generic framework for comparative analysis of multi-species continuous functional genomic signals to help reveal regions with conserved or lineage-specific regulatory roles.Entities:
Keywords: comparative genomics; continuous-trait probabilistic model; phylogenetic hidden Markov Gaussian processes; replication timing
Mesh:
Year: 2018 PMID: 29936186 PMCID: PMC6107375 DOI: 10.1016/j.cels.2018.05.022
Source DB: PubMed Journal: Cell Syst ISSN: 2405-4712 Impact factor: 10.304