Strengthening public health through AI, data science, and lifestyle interventions: a holistic approach to cancer detection, HIV Care and workforce efficiency
1 Independent Researcher, Pediatric Adolescent Treatment Africa, Abuja Nigeria.
2 Department of Pharmacy, Achieving Health Nigeria Initiative.
3 Independent Researcher, San Francisco California.
4 Department of Radiology, Malens Diagnostics and Healthcare, Lagos Nigeria.
5 Virginia Commonwealth University, Richmond USA.
Review
International Journal of Scientific Research Updates, 2025, 09(01), 012-016.
Article DOI: 10.53430/ijsru.2025.9.1.0025
Publication history:
Received on 05 January 2025; revised on 27 February 2025; accepted on 02 March 2025
Abstract:
The convergence of artificial intelligence (AI), data science, and lifestyle interventions is transforming public health by enhancing early disease detection, optimizing healthcare workforce efficiency, and improving chronic disease management. This manuscript explores a holistic approach to strengthening public health through the integration of AI-powered diagnostics for early cancer detection, automation, and predictive analytics for healthcare workforce optimization, and evidence-based lifestyle interventions for people living with HIV.
AI-driven technologies have demonstrated significant improvements in diagnostic accuracy, reducing delays in cancer detection and facilitating early intervention. Additionally, predictive analytics and automation enable dynamic workforce allocation, improving operational efficiency and addressing resource gaps in underserved populations. Lifestyle interventions, grounded in behavioral science and clinical evidence, play a critical role in managing comorbidities and improving health outcomes for individuals living with HIV. This paper discusses the synergistic potential of these approaches to reduce health disparities, enhance disease prevention strategies, and promote health equity, offering a roadmap for policymakers, healthcare providers, and researchers to leverage technology and data-driven interventions for sustainable public health outcomes.
Keywords:
Artificial Intelligence (AI); Data Science; Early Cancer Detection HIV Care; Lifestyle Interventions; Predictive Analytics
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Copyright © 2025 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0