Literature DB >> 31592719

Implementing Artificial Intelligence and Digital Health in Resource-Limited Settings? Top 10 Lessons We Learned in Congenital Heart Defects and Cardiology.

Nicholas Ekow Thomford1,2,3, Christian Domilongo Bope1,2,3,4, Francis Edem Agamah1,2, Kevin Dzobo2,5, Richmond Owusu Ateko6, Emile Chimusa1,2, Gaston Kuzamunu Mazandu1, Simon Badibanga Ntumba4, Collet Dandara1,2, Ambroise Wonkam1,2.   

Abstract

Artificial intelligence (AI) is one of the key drivers of digital health. Digital health and AI applications in medicine and biology are emerging worldwide, not only in resource-rich but also resource-limited regions. AI predates to the mid-20th century, but the current wave of AI builds in part on machine learning (ML), big data, and algorithms that can learn from massive amounts of online user data from patients or healthy persons. There are lessons to be learned from AI applications in different medical specialties and across developed and resource-limited contexts. A case in point is congenital heart defects (CHDs) that continue to plague sub-Saharan Africa, which calls for innovative approaches to improve risk prediction and performance of the available diagnostics. Beyond CHDs, AI in cardiology is a promising context as well. The current suite of digital health applications in CHD and cardiology include complementary technologies such as neural networks, ML, natural language processing and deep learning, not to mention embedded digital sensors. Algorithms that build on these advances are beginning to complement traditional medical expertise while inviting us to redefine the concepts and definitions of expertise in molecular diagnostics and precision medicine. We examine and share here the lessons learned in current attempts to implement AI and digital health in CHD for precision risk prediction and diagnosis in resource-limited settings. These top 10 lessons on AI and digital health summarized in this expert review are relevant broadly beyond CHD in cardiology and medical innovations. As with AI itself that calls for systems approaches to data capture, analysis, and interpretation, both developed and developing countries can usefully learn from their respective experiences as digital health continues to evolve worldwide.

Entities:  

Keywords:  artificial intelligence; congenital heart defects; deep learning; digital health; eHealth; machine learning

Mesh:

Year:  2019        PMID: 31592719     DOI: 10.1089/omi.2019.0142

Source DB:  PubMed          Journal:  OMICS        ISSN: 1536-2310


  3 in total

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2.  A Research Agenda for Precision Medicine in Sepsis and Acute Respiratory Distress Syndrome: An Official American Thoracic Society Research Statement.

Authors:  Faraaz Ali Shah; Nuala J Meyer; Derek C Angus; Rana Awdish; Élie Azoulay; Carolyn S Calfee; Gilles Clermont; Anthony C Gordon; Arthur Kwizera; Aleksandra Leligdowicz; John C Marshall; Carmen Mikacenic; Pratik Sinha; Balasubramanian Venkatesh; Hector R Wong; Fernando G Zampieri; Sachin Yende
Journal:  Am J Respir Crit Care Med       Date:  2021-10-15       Impact factor: 30.528

3.  Study protocol for a pilot prospective, observational study investigating the condition suggestion and urgency advice accuracy of a symptom assessment app in sub-Saharan Africa: the AFYA-'Health' Study.

Authors:  Elizabeth Millen; Nahya Salim; Hila Azadzoy; Mustafa Miraji Bane; Lisa O'Donnell; Marcel Schmude; Philipp Bode; Ewelina Tuerk; Ria Vaidya; Stephen Henry Gilbert
Journal:  BMJ Open       Date:  2022-04-11       Impact factor: 2.692

  3 in total

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