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Published in: Current Atherosclerosis Reports 5/2021

01-05-2021 | Evidence-Based Medicine, Clinical Trials and Their Interpretations (K. Nasir, Section Editor)

Strengthening the Learning Health System in Cardiovascular Disease Prevention: Time to Leverage Big Data and Digital Solutions

Authors: Anjali A Wagle, Nino Isakadze, Khurram Nasir, Seth Shay Martin

Published in: Current Atherosclerosis Reports | Issue 5/2021

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Abstract

Purpose of Review

The past few decades have seen significant technologic innovation for the treatment and diagnosis of cardiovascular diseases. The subsequent growing complexity of modern medicine, however, is causing fundamental challenges in our healthcare system primarily in the spheres of patient involvement, data generation, and timely clinical implementation. The Institute of Medicine advocated for a learning health system (LHS) in which knowledge generation and patient care are inherently symbiotic. The purpose of this paper is to review how the advances in technology and big data have been used to further patient care and data generation and what future steps will need to occur to develop a LHS in cardiovascular disease.

Recent Findings

Patient-centered care has progressed from technologic advances yielding resources like decision aids. LHS can also incorporate patient preferences by increasing and standardizing patient-reported information collection. Additionally, data generation can be optimized using big data analytics by developing large interoperable datasets from multiple sources to allow for real-time data feedback.

Summary

Developing a LHS will require innovative technologic solutions with a patient-centered lens to facilitate symbiosis in data generation and clinical practice.
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Metadata
Title
Strengthening the Learning Health System in Cardiovascular Disease Prevention: Time to Leverage Big Data and Digital Solutions
Authors
Anjali A Wagle
Nino Isakadze
Khurram Nasir
Seth Shay Martin
Publication date
01-05-2021
Publisher
Springer US
Published in
Current Atherosclerosis Reports / Issue 5/2021
Print ISSN: 1523-3804
Electronic ISSN: 1534-6242
DOI
https://doi.org/10.1007/s11883-021-00916-5

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