» Articles » PMID: 26173222

Big Data for Health

Overview
Date 2015 Jul 15
PMID 26173222
Citations 131
Authors
Affiliations
Soon will be listed here.
Abstract

This paper provides an overview of recent developments in big data in the context of biomedical and health informatics. It outlines the key characteristics of big data and how medical and health informatics, translational bioinformatics, sensor informatics, and imaging informatics will benefit from an integrated approach of piecing together different aspects of personalized information from a diverse range of data sources, both structured and unstructured, covering genomics, proteomics, metabolomics, as well as imaging, clinical diagnosis, and long-term continuous physiological sensing of an individual. It is expected that recent advances in big data will expand our knowledge for testing new hypotheses about disease management from diagnosis to prevention to personalized treatment. The rise of big data, however, also raises challenges in terms of privacy, security, data ownership, data stewardship, and governance. This paper discusses some of the existing activities and future opportunities related to big data for health, outlining some of the key underlying issues that need to be tackled.

Citing Articles

Leveraging Administrative Health Databases to Address Health Challenges in Farming Populations: Scoping Review and Bibliometric Analysis (1975-2024).

Petit P, Vuillerme N JMIR Public Health Surveill. 2025; 11:e62939.

PMID: 39787587 PMC: 11757986. DOI: 10.2196/62939.


Detection of Disease Features on Retinal OCT Scans Using RETFound.

Du K, Nair A, Shah S, Gadari A, Vupparaboina S, Bollepalli S Bioengineering (Basel). 2025; 11(12.

PMID: 39768004 PMC: 11672910. DOI: 10.3390/bioengineering11121186.


Prediction of Survival in Patients With Esophageal Cancer After Immunotherapy Based on Small-Size Follow-Up Data.

Su Y, Huang C, Yang C, Lin Q, Chen Z IEEE Open J Eng Med Biol. 2024; 5:769-782.

PMID: 39464488 PMC: 11505867. DOI: 10.1109/OJEMB.2024.3452983.


Conceptualizing bias in EHR data: A case study in performance disparities by demographic subgroups for a pediatric obesity incidence classifier.

Campbell E, Bose S, Masino A PLOS Digit Health. 2024; 3(10):e0000642.

PMID: 39441784 PMC: 11498669. DOI: 10.1371/journal.pdig.0000642.


Exploring Computational Techniques in Preprocessing Neonatal Physiological Signals for Detecting Adverse Outcomes: Scoping Review.

Rahman J, Brankovic A, Tracy M, Khanna S Interact J Med Res. 2024; 13:e46946.

PMID: 39163610 PMC: 11372324. DOI: 10.2196/46946.