Harnessing Predictive Modeling to Advance HIV Self-Testing in SubSaharan Africa: A Viewpoint on Equity-Driven Implementation

ABSTRACT Predictive modeling presents a transformative opportunity to enhance HIV self-testing (HIVST) uptake across SubSaharan Africa (SSA). While machine learning techniques such as Random Forest (RF) and Classification and Regression Trees (CART) offer powerful tools for identifying high-risk po...

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Bibliographic Details
Main Authors: Felix Emeka Anyiam, Maureen Nokuthula Sibiya, Olanrewaju Oladimeji
Format: Article
Language:English
Published: Makhdoomi Printers 2025-07-01
Series:Global Journal of Medicine and Public Health
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Online Access:https://nicpd.ac.in/ojs-/index.php/gjmedph/article/view/4150
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Summary:ABSTRACT Predictive modeling presents a transformative opportunity to enhance HIV self-testing (HIVST) uptake across SubSaharan Africa (SSA). While machine learning techniques such as Random Forest (RF) and Classification and Regression Trees (CART) offer powerful tools for identifying high-risk populations and optimizing HIVST distribution, their adoption in public health remains limited. This Viewpoint examines how stigma, economic constraints, and urban-centric data biases hinder the integration of predictive analytics into HIVST and argues for equity-driven implementation strategies. The authors argue that leveraging predictive modeling requires an ethical, community-driven approach that prioritizes fairness, transparency, and real-world applicability. Without inclusive implementation strategies, predictive analytics risks reinforcing disparities rather than reducing them.This article presents a strategic framework for integrating machine learning into HIVST policy and practice while addressing concerns around data bias, public trust, and stakeholder engagement. By bridging the gap between artificial intelligence (AI) and global health equity, predictive modeling can serve as a catalyst for achieving UNAIDS’ 2030 goals for broad, equitable HIV testing access.
ISSN:2277-9604