Litcius/Paper detail

Integrated multi-omics with machine learning to uncover the intricacies of kidney disease

Xinze Liu, Jingxuan Shi, Yuanyuan Jiao, Jiaqi An, Jingwei Tian, Yue Yang, Li Zhuo

2024Briefings in Bioinformatics45 citationsDOIOpen Access PDF

Abstract

The development of omics technologies has driven a profound expansion in the scale of biological data and the increased complexity in internal dimensions, prompting the utilization of machine learning (ML) as a powerful toolkit for extracting knowledge and understanding underlying biological patterns. Kidney disease represents one of the major growing global health threats with intricate pathogenic mechanisms and a lack of precise molecular pathology-based therapeutic modalities. Accordingly, there is a need for advanced high-throughput approaches to capture implicit molecular features and complement current experiments and statistics. This review aims to delineate strategies for integrating multi-omics data with appropriate ML methods, highlighting key clinical translational scenarios, including predicting disease progression risks to improve medical decision-making, comprehensively understanding disease molecular mechanisms, and practical applications of image recognition in renal digital pathology. Examining the benefits and challenges of current integration efforts is expected to shed light on the complexity of kidney disease and advance clinical practice.

Topics & Concepts

Computer scienceOmicsDiseaseComputational biologyArtificial intelligenceMachine learningBioinformaticsBiologyMedicinePathologyRenal and Vascular PathologiesChronic Kidney Disease and DiabetesArtificial Intelligence in Healthcare