Pathways to chronic disease detection and prediction: Mapping the potential of machine learning to the pathophysiological processes while navigating ethical challenges

Author:

Afrifa‐Yamoah Ebenezer1ORCID,Adua Eric23ORCID,Peprah‐Yamoah Emmanuel4ORCID,Anto Enoch O.35ORCID,Opoku‐Yamoah Victor6ORCID,Acheampong Emmanuel7ORCID,Macartney Michael J.8ORCID,Hashmi Rashid2ORCID

Affiliation:

1. School of Science Edith Cowan University Joondalup Western Australia Australia

2. Rural Clinical School, Medicine and Health University of New South Wales Sydney New South Wales Australia

3. School of Medical and Health Sciences Edith Cowan University Joondalup Western Australia Australia

4. Teva Pharmaceuticals Salt Lake City Utah USA

5. Department of Medical Diagnostics, Faculty of Allied Health Sciences, College of Health Sciences Kwame Nkrumah University of Science and Technology Kumasi Ghana

6. School of Optometry and Vision Science University of Waterloo Waterloo Ontario Canada

7. Department of Genetics and Genome Biology Leicester Cancer Research Centre University of Leicester Leicester UK

8. Faculty of Science Medicine and Health University of Wollongong Wollongong New South Wales Australia

Abstract

AbstractChronic diseases such as heart disease, cancer, and diabetes are leading drivers of mortality worldwide, underscoring the need for improved efforts around early detection and prediction. The pathophysiology and management of chronic diseases have benefitted from emerging fields in molecular biology like genomics, transcriptomics, proteomics, glycomics, and lipidomics. The complex biomarker and mechanistic data from these “omics” studies present analytical and interpretive challenges, especially for traditional statistical methods. Machine learning (ML) techniques offer considerable promise in unlocking new pathways for data‐driven chronic disease risk assessment and prognosis. This review provides a comprehensive overview of state‐of‐the‐art applications of ML algorithms for chronic disease detection and prediction across datasets, including medical imaging, genomics, wearables, and electronic health records. Specifically, we review and synthesize key studies leveraging major ML approaches ranging from traditional techniques such as logistic regression and random forests to modern deep learning neural network architectures. We consolidate existing literature to date around ML for chronic disease prediction to synthesize major trends and trajectories that may inform both future research and clinical translation efforts in this growing field. While highlighting the critical innovations and successes emerging in this space, we identify the key challenges and limitations that remain to be addressed. Finally, we discuss pathways forward toward scalable, equitable, and clinically implementable ML solutions for transforming chronic disease screening and prevention.

Publisher

Wiley

Reference150 articles.

1. World Health Organisation (WHO).Non‐Communicable Diseases WHO;2021. Accessed January 2 2024.https://www.who.int/news-room/fact-sheets/detail/noncommunicable-diseases

2. Profiling of cardio‐metabolic risk factors and medication utilisation among type II diabetes patients in Ghana: a prospective cohort study;Adua E;Clin Transl Med,2017

3. Predictive model and feature importance for early detection of type II diabetes mellitus;Adua E;Transl Med Commun,2021

4. Medicine in the early twenty‐first century: paradigm and anticipation‐EPMA position paper 2016;Golubnitschaja O;EPMA J,2016

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