Towards AI-enabled multimodal diagnostics and management of COVID-19 and comorbidities in resource-limited settings
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Date
Authors
Daramola, Olawande
Nyasulu, Peter
Mashamba‑Thompson, Tivani Phosa
Moser, Thomas
Broomhead, Sean
Hamid, Ameera
Naidoo, Jaishree
Whati, Lindiwe
Kotze, Maritha J.
Stroetmann, Karl
Journal Title
Journal ISSN
Volume Title
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.
Description
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)
Sustainable Development Goals
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.