Artificial Intelligence in Global Health —A Framework and Strategy for Adoption and Sustainability

Artificial Intelligence (AI) applications in medicine have grown considerably in recent years. AI in the forms of Machine Learning, Natural Language Processing, Expert Systems, Planning and Logistics methods, and Image Processing networks provide great analytical aptitude. While AI methods were fir...

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Main Authors: Trevor D. Hadley, BSA, Rowland W. Pettit, BS, Tahir Malik, BS, Amelia A. Khoei, BS, Hamisu M. Salihu, MD, PhD
Format: Article
Language:English
Published: Global Health and Education Projects, Inc. 2020-02-01
Series:International Journal of Maternal and Child Health and AIDS
Online Access:https://mchandaids.org/index.php/IJMA/article/view/296
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spelling doaj-b108611994364c1cb9a86880ae8898f52021-09-02T08:19:20ZengGlobal Health and Education Projects, Inc.International Journal of Maternal and Child Health and AIDS2161-86742161-864X2020-02-019110.21106/ijma.296Artificial Intelligence in Global Health —A Framework and Strategy for Adoption and SustainabilityTrevor D. Hadley, BSA0Rowland W. Pettit, BS1Tahir Malik, BS2Amelia A. Khoei, BS3Hamisu M. Salihu, MD, PhD4Baylor College of Medicine, Houston, TX 77098, USABaylor College of Medicine, Houston, TX 77098, USABaylor College of Medicine, Houston, TX 77098, USABaylor College of Medicine, Houston, TX 77098, USACenter of Excellence in Health Equity, Training and Research Baylor College of Medicine, Houston, TX 77098, USA Artificial Intelligence (AI) applications in medicine have grown considerably in recent years. AI in the forms of Machine Learning, Natural Language Processing, Expert Systems, Planning and Logistics methods, and Image Processing networks provide great analytical aptitude. While AI methods were first conceptualized for radiology, investigations today are established across all medical specialties. The necessity for proper infrastructure, skilled labor, and access to large, well-organized data sets has kept the majority of medical AI applications in higher-income countries. However, critical technological improvements, such as cloud computing and the near-ubiquity of smartphones, have paved the way for use of medical AI applications in resource-poor areas. Global health initiatives (GHI) have already begun to explore ways to leverage medical AI technologies to detect and mitigate public health inequities. For example, AI tools can help optimize vaccine delivery and community healthcare worker routes, thus enabling limited resources to have a maximal impact. Other promising AI tools have demonstrated an ability to: predict burn healing time from smartphone photos; track regions of socioeconomic disparity combined with environmental trends to predict communicable disease outbreaks; and accurately predict pregnancy complications such as birth asphyxia in low resource settings with limited patient clinical data. In this commentary, we discuss the current state of AI-driven GHI and explore relevant lessons from past technology-centered GHI. Additionally, we propose a conceptual framework to guide the development of sustainable strategies for AI-driven GHI, and we outline areas for future research. Keywords: • Artificial Intelligence • AI Framework • Global Health • Implementation • Sustainability • AI Strategy   Copyright © 2020 Hadley et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. https://mchandaids.org/index.php/IJMA/article/view/296
collection DOAJ
language English
format Article
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author Trevor D. Hadley, BSA
Rowland W. Pettit, BS
Tahir Malik, BS
Amelia A. Khoei, BS
Hamisu M. Salihu, MD, PhD
spellingShingle Trevor D. Hadley, BSA
Rowland W. Pettit, BS
Tahir Malik, BS
Amelia A. Khoei, BS
Hamisu M. Salihu, MD, PhD
Artificial Intelligence in Global Health —A Framework and Strategy for Adoption and Sustainability
International Journal of Maternal and Child Health and AIDS
author_facet Trevor D. Hadley, BSA
Rowland W. Pettit, BS
Tahir Malik, BS
Amelia A. Khoei, BS
Hamisu M. Salihu, MD, PhD
author_sort Trevor D. Hadley, BSA
title Artificial Intelligence in Global Health —A Framework and Strategy for Adoption and Sustainability
title_short Artificial Intelligence in Global Health —A Framework and Strategy for Adoption and Sustainability
title_full Artificial Intelligence in Global Health —A Framework and Strategy for Adoption and Sustainability
title_fullStr Artificial Intelligence in Global Health —A Framework and Strategy for Adoption and Sustainability
title_full_unstemmed Artificial Intelligence in Global Health —A Framework and Strategy for Adoption and Sustainability
title_sort artificial intelligence in global health —a framework and strategy for adoption and sustainability
publisher Global Health and Education Projects, Inc.
series International Journal of Maternal and Child Health and AIDS
issn 2161-8674
2161-864X
publishDate 2020-02-01
description Artificial Intelligence (AI) applications in medicine have grown considerably in recent years. AI in the forms of Machine Learning, Natural Language Processing, Expert Systems, Planning and Logistics methods, and Image Processing networks provide great analytical aptitude. While AI methods were first conceptualized for radiology, investigations today are established across all medical specialties. The necessity for proper infrastructure, skilled labor, and access to large, well-organized data sets has kept the majority of medical AI applications in higher-income countries. However, critical technological improvements, such as cloud computing and the near-ubiquity of smartphones, have paved the way for use of medical AI applications in resource-poor areas. Global health initiatives (GHI) have already begun to explore ways to leverage medical AI technologies to detect and mitigate public health inequities. For example, AI tools can help optimize vaccine delivery and community healthcare worker routes, thus enabling limited resources to have a maximal impact. Other promising AI tools have demonstrated an ability to: predict burn healing time from smartphone photos; track regions of socioeconomic disparity combined with environmental trends to predict communicable disease outbreaks; and accurately predict pregnancy complications such as birth asphyxia in low resource settings with limited patient clinical data. In this commentary, we discuss the current state of AI-driven GHI and explore relevant lessons from past technology-centered GHI. Additionally, we propose a conceptual framework to guide the development of sustainable strategies for AI-driven GHI, and we outline areas for future research. Keywords: • Artificial Intelligence • AI Framework • Global Health • Implementation • Sustainability • AI Strategy   Copyright © 2020 Hadley et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
url https://mchandaids.org/index.php/IJMA/article/view/296
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