Survey and Evaluation of Hypertension Machine Learning Research

Author:

du Toit Clea1ORCID,Tran Tran Quoc Bao1ORCID,Deo Neha2ORCID,Aryal Sachin3ORCID,Lip Stefanie1ORCID,Sykes Robert1ORCID,Manandhar Ishan3ORCID,Sionakidis Aristeidis4ORCID,Stevenson Leah3,Pattnaik Harsha5ORCID,Alsanosi Safaa16ORCID,Kassi Maria1,Le Ngoc1,Rostron Maggie1ORCID,Nichol Sarah1ORCID,Aman Alisha1ORCID,Nawaz Faisal7ORCID,Mehta Dhruven8ORCID,Tummala Ramakumar3ORCID,McCallum Linsay1ORCID,Reddy Sandeep9ORCID,Visweswaran Shyam10ORCID,Kashyap Rahul11ORCID,Joe Bina3ORCID,Padmanabhan Sandosh1ORCID

Affiliation:

1. School of Cardiovascular and Metabolic Health University of Glasgow Glasgow United Kingdom

2. Mayo Clinic Alix School of Medicine Rochester MN

3. Center for Hypertension and Precision Medicine, Department of Physiology and Pharmacology University of Toledo College of Medicine and Life Sciences Toledo OH

4. Institute of Genetics and Cancer University of Edinburgh Edinburgh United Kingdom

5. Lady Hardinge Medical College New Delhi India

6. Department of Pharmacology and Toxicology, Faculty of Medicine Umm Al Qura University Makkah Saudi Arabia

7. College of Medicine Mohammed Bin Rashid University of Medicine and Health Sciences Dubai UAE

8. Department of Internal Medicine TriStar Centennial Medical Center, HCA Healthcare Nashville TN

9. School of Medicine Deakin University Geelong Australia

10. Department of Biomedical Informatics University of Pittsburgh Pittsburgh PA

11. Department of Anesthesiology and Critical Care Medicine Mayo Clinic Rochester MN

Abstract

Background Machine learning (ML) is pervasive in all fields of research, from automating tasks to complex decision‐making. However, applications in different specialities are variable and generally limited. Like other conditions, the number of studies employing ML in hypertension research is growing rapidly. In this study, we aimed to survey hypertension research using ML, evaluate the reporting quality, and identify barriers to ML's potential to transform hypertension care. Methods and Results The Harmonious Understanding of Machine Learning Analytics Network survey questionnaire was applied to 63 hypertension‐related ML research articles published between January 2019 and September 2021. The most common research topics were blood pressure prediction (38%), hypertension (22%), cardiovascular outcomes (6%), blood pressure variability (5%), treatment response (5%), and real‐time blood pressure estimation (5%). The reporting quality of the articles was variable. Only 46% of articles described the study population or derivation cohort. Most articles (81%) reported at least 1 performance measure, but only 40% presented any measures of calibration. Compliance with ethics, patient privacy, and data security regulations were mentioned in 30 (48%) of the articles. Only 14% used geographically or temporally distinct validation data sets. Algorithmic bias was not addressed in any of the articles, with only 6 of them acknowledging risk of bias. Conclusions Recent ML research on hypertension is limited to exploratory research and has significant shortcomings in reporting quality, model validation, and algorithmic bias. Our analysis identifies areas for improvement that will help pave the way for the realization of the potential of ML in hypertension and facilitate its adoption.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Cardiology and Cardiovascular Medicine

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