Data mining and machine learning in HIV infection risk research: An overview and recommendations

Artif Intell Med. 2024 Apr 30:153:102887. doi: 10.1016/j.artmed.2024.102887. Online ahead of print.

Abstract

In the contemporary era, the applications of data mining and machine learning have permeated extensively into medical research, significantly contributing to areas such as HIV studies. By reviewing 38 articles published in the past 15 years, the study presents a roadmap based on seven different aspects, utilizing various machine learning techniques for both novice researchers and experienced researchers seeking to comprehend the current state of the art in this area. While traditional regression modeling techniques have been commonly used, researchers are increasingly adopting more advanced fully supervised machine learning and deep learning techniques, which often outperform the traditional methods in predictive performance. Additionally, the study identifies nine new open research issues and outlines possible future research plans to enhance the outcomes of HIV infection risk research. This review is expected to be an insightful guide for researchers, illuminating current practices and suggesting advancements in the field.

Keywords: Data mining; HIV infection risk; Infection risk analysis; Machine learning.

Publication types

  • Review