Literature DB >> 32266825

Random forest machine learning algorithm predicts virologic outcomes among HIV infected adults in Lausanne, Switzerland using electronically monitored combined antiretroviral treatment adherence.

Susan Kamal1,2,3,4, John Urata3,4, Matthias Cavassini5, Honghu Liu6,7,8, Roger Kouyos9, Olivier Bugnon1,2, Wei Wang4,10, Marie-Paule Schneider1,2.   

Abstract

Machine Learning (ML) can improve the analysis of complex and interrelated factors that place adherent people at risk of viral rebound. Our aim was to build ML model to predict RNA viral rebound from medication adherence and clinical data. Patients were followed up at the Swiss interprofessional medication adherence program (IMAP). Sociodemographic and clinical variables were retrieved from the Swiss HIV Cohort Study (SHCS). Daily electronic medication adherence between 2008-2016 were analyzed retrospectively. Predictor variables included: RNA viral load (VL), CD4 count, duration of ART, and adherence. Random Forest, was used with 10 fold cross validation to predict the RNA class for each data observation. Classification accuracy metrics were calculated for each of the 10-fold cross validation holdout datasets. The values for each range from 0 to 1 (better accuracy). 383 HIV+ patients, 56% male, 52% white, median (Q1, Q3): age 43 (36, 50), duration of electronic monitoring of adherence 564 (200, 1333) days, CD4 count 406 (209, 533) cells/mm3, time since HIV diagnosis was 8.4 (4, 13.5) years, were included. Average model classification accuracy metrics (AUC and F1) for RNA VL were 0.6465 and 0.7772, respectively. In conclusion, combining adherence with other clinical predictors improve predictions of RNA.

Entities:  

Keywords:  AIV/AIDS; Antiretroviral adherence; machine learning; medication adherence; methods

Mesh:

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Year:  2020        PMID: 32266825     DOI: 10.1080/09540121.2020.1751045

Source DB:  PubMed          Journal:  AIDS Care        ISSN: 0954-0121


  2 in total

Review 1.  Machine Learning and Clinical Informatics for Improving HIV Care Continuum Outcomes.

Authors:  Jessica P Ridgway; Alice Lee; Samantha Devlin; Jared Kerman; Anoop Mayampurath
Journal:  Curr HIV/AIDS Rep       Date:  2021-03-04       Impact factor: 5.495

2.  Studying patterns and predictors of HIV viral suppression using A Big Data approach: a research protocol.

Authors:  Jiajia Zhang; Bankole Olatosi; Xueying Yang; Sharon Weissman; Zhenlong Li; Jianjun Hu; Xiaoming Li
Journal:  BMC Infect Dis       Date:  2022-02-04       Impact factor: 3.090

  2 in total

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