Towards AI-enabled multimodal diagnostics and management of COVID-19 and comorbidities in resource-limited settings

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Authors

Daramola, Olawande
Nyasulu, Peter
Mashamba‑Thompson, Tivani Phosa
Moser, Thomas
Broomhead, Sean
Hamid, Ameera
Naidoo, Jaishree
Whati, Lindiwe
Kotze, Maritha J.
Stroetmann, Karl

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Publisher

MDPI

Abstract

A conceptual artificial intelligence (AI)-enabled framework is presented in this study involving triangulation of various diagnostic methods for management of coronavirus disease 2019 (COVID-19) and its associated comorbidities in resource-limited settings (RLS). The proposed AIenabled framework will afford capabilities to harness low-cost polymerase chain reaction (PCR)-based molecular diagnostics, radiological image-based assessments, and end-user provided information for the detection of COVID-19 cases and management of symptomatic patients. It will support selfdata capture, clinical risk stratification, explanation-based intelligent recommendations for patient triage, disease diagnosis, patient treatment, contact tracing, and case management. This will enable communication with end-users in local languages through cheap and accessible means, such as WhatsApp/Telegram, social media, and SMS, with careful consideration of the need for personal data protection. The objective of the AI-enabled framework is to leverage multimodal diagnostics of COVID-19 and associated comorbidities in RLS for the diagnosis and management of COVID-19 cases and general support for pandemic recovery. We intend to test the feasibility of implementing the proposed framework through community engagement in sub-Saharan African (SSA) countries where many people are living with pre-existing comorbidities. A multimodal approach to disease diagnostics enabling access to point-of-care testing is required to reduce fragmentation of essential services across the continuum of COVID-19 care.

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Keywords

Multimodal diagnostics, Diagnostics, Machine learning, Explainable AI, Point-of-care, COVID-19 pandemic, Coronavirus disease 2019 (COVID-19), Artificial intelligence (AI), Resource-limited settings (RLS), Polymerase chain reaction (PCR), Sub-Saharan Africa (SSA)

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Citation

Daramola, O.; Nyasulu, P.; Mashamba-Thompson, T.; Moser, T.; Broomhead, S.; Hamid, A.; Naidoo, J.; Whati, L.; Kotze, M.J.; Stroetmann, K.; et al. Towards AI-Enabled Multimodal Diagnostics and Management of COVID-19 and Comorbidities in Resource-Limited Settings. Informatics 2021, 8, 63. https://DOI.org/10.3390/informatics8040063.