Infectious Diseases Institute, College of Health Sciences, Makerere University, Kampala, Uganda; Department of Pharmacology and Therapeutics, College of Health Sciences, Makerere University, Kampala, Uganda; Breakthrough Analytics Limited, Kampala, Uganda.
Infectious Diseases Institute, College of Health Sciences, Makerere University, Kampala, Uganda.
Comput Biol Med. 2017 Dec 1;91:366-371. doi: 10.1016/j.compbiomed.2017.11.001. Epub 2017 Nov 9.
A wealth of genetic, demographic, clinical and biomarker data is collected from routine clinical care of HIV patients and exists in the form of medical records available among the medical care and research communities. Machine learning (ML) methods have the ability to identify and discover patterns in complex datasets and predict future outcomes of HIV treatment. We survey published studies that make use of ML techniques in HIV clinical research and care. An advanced search relevant to the use of ML in HIV research was conducted in the PubMed biomedical database. The survey outcomes of interest include data sources, ML techniques, ML tasks and ML application paradigms. A growing trend in application of ML in HIV research was observed. The application paradigm has diversified to include practical clinical application, but statistical analysis remains the most dominant application. There is an increase in the use of genomic sources of data and high performance non-parametric ML methods with a focus on combating resistance to antiretroviral therapy (ART). There is need for improvement in collection of health records data and increased training in ML so as to translate ML research into clinical application in HIV management.
从 HIV 患者的常规临床护理中收集了大量的遗传、人口统计学、临床和生物标志物数据,这些数据以医疗保健和研究界可获得的医疗记录的形式存在。机器学习 (ML) 方法能够识别和发现复杂数据集中的模式,并预测 HIV 治疗的未来结果。我们调查了在 HIV 临床研究和护理中使用 ML 技术的已发表研究。在 PubMed 生物医学数据库中进行了与 HIV 研究中使用 ML 相关的高级搜索。感兴趣的调查结果包括数据源、ML 技术、ML 任务和 ML 应用范例。观察到 ML 在 HIV 研究中的应用呈增长趋势。应用范例已经多样化,包括实际的临床应用,但统计分析仍然是最主要的应用。越来越多地使用基因组数据源和高性能非参数 ML 方法,重点是对抗抗逆转录病毒疗法 (ART) 的耐药性。需要改进健康记录数据的收集,并增加对 ML 的培训,以便将 ML 研究转化为 HIV 管理中的临床应用。