Learning across diverse biomedical data modalities and cohorts: Challenges and opportunities for innovation.

TitleLearning across diverse biomedical data modalities and cohorts: Challenges and opportunities for innovation.
Publication TypeJournal Article
Year of Publication2024
AuthorsRajendran S, Pan W, Sabuncu MR, Chen Y, Zhou J, Wang F
JournalPatterns (N Y)
Volume5
Issue2
Pagination100913
Date Published2024 Feb 09
ISSN2666-3899
Abstract

In healthcare, machine learning (ML) shows significant potential to augment patient care, improve population health, and streamline healthcare workflows. Realizing its full potential is, however, often hampered by concerns about data privacy, diversity in data sources, and suboptimal utilization of different data modalities. This review studies the utility of cross-cohort cross-category (C4) integration in such contexts: the process of combining information from diverse datasets distributed across distinct, secure sites. We argue that C4 approaches could pave the way for ML models that are both holistic and widely applicable. This paper provides a comprehensive overview of C4 in health care, including its present stage, potential opportunities, and associated challenges.

DOI10.1016/j.patter.2023.100913
Alternate JournalPatterns (N Y)
PubMed ID38370129
PubMed Central IDPMC10873158
Grant ListRF1 AG072449 / AG / NIA NIH HHS / United States
Division: 
Institute of Artificial Intelligence for Digital Health
Category: 
Faculty Publication