Ontology-based modeling, integration, and analysis of heterogeneous clinical, pathological, and molecular kidney data for precision medicine.
Yongqun Oliver HeLaura BarisoniAvi Z RosenbergPeter Nick RobinsonAlexander D DiehlYichao ChenJimmy P PhuongJens HansenBruce W HerrKaty BörnerJennifer A SchaubNikki BonevichGhida ArnousSaketh BoddapatiJie ZhengFadhl M Al-AkwaaPinaki SarderWilliam D DuncanChen LiangM Todd ValeriusSanjay JainRavi IyengarJonathan HimmelfarbMatthias Kretzlernull nullPublished in: bioRxiv : the preprint server for biology (2024)
Many data resources generate, process, store, or provide kidney related molecular, pathological, and clinical data. Reference ontologies offer an opportunity to support knowledge and data integration. The Kidney Precision Medicine Project (KPMP) team contributed to the representation and addition of 329 kidney phenotype terms to the Human Phenotype Ontology (HPO), and identified many subcategories of acute kidney injury (AKI) or chronic kidney disease (CKD). The Kidney Tissue Atlas Ontology (KTAO) imports and integrates kidney-related terms from existing ontologies (e.g., HPO, CL, and Uberon) and represents 259 kidney-related biomarkers. We also developed a precision medicine metadata ontology (PMMO) to integrate 50 variables from KPMP and CZ CellxGene data resources and applied PMMO for integrative kidney data analysis. The gene expression profiles of kidney gene biomarkers were specifically analyzed under healthy control or AKI/CKD disease statuses. This work demonstrates how ontology-based approaches support multi-domain data and knowledge integration in precision medicine.