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Machine-learning classification of neurocognitive performance in children with perinatal HIV initiating de novo antiretroviral therapy.
- Source :
-
AIDS (London, England) [AIDS] 2020 Apr 01; Vol. 34 (5), pp. 737-748. - Publication Year :
- 2020
-
Abstract
- Objective: To develop a predictive model of neurocognitive trajectories in children with perinatal HIV (pHIV).<br />Design: Machine learning analysis of baseline and longitudinal predictors derived from clinical measures utilized in pediatric HIV.<br />Methods: Two hundred and eighty-five children (ages 2-14 years at baseline; Mage = 6.4 years) with pHIV in Southeast Asia underwent neurocognitive assessment at study enrollment and twice annually thereafter for an average of 5.4 years. Neurocognitive slopes were modeled to establish two subgroups [above (n = 145) and below average (n = 140) trajectories). Gradient-boosted multivariate regressions (GBM) with five-fold cross validation were conducted to examine baseline (pre-ART) and longitudinal predictive features derived from demographic, HIV disease, immune, mental health, and physical health indices (i.e. complete blood count [CBC]).<br />Results: The baseline GBM established a classifier of neurocognitive group designation with an average AUC of 79% built from HIV disease severity and immune markers. GBM analysis of longitudinal predictors with and without interactions improved the average AUC to 87 and 90%, respectively. Mental health problems and hematocrit levels also emerged as salient features in the longitudinal models, with novel interactions between mental health problems and both CD4 cell count and hematocrit levels. Average AUCs derived from each GBM model were higher than results obtained using logistic regression.<br />Conclusion: Our findings support the feasibility of machine learning to identify children with pHIV at risk for suboptimal neurocognitive development. Results also suggest that interactions between HIV disease and mental health problems are early antecedents to neurocognitive difficulties in later childhood among youth with pHIV.
- Subjects :
- Algorithms
CD4 Lymphocyte Count
Child
Child, Preschool
Executive Function drug effects
Female
HIV Infections complications
Humans
Male
Mental Health
Parturition
Pregnancy
Cognition drug effects
HIV Infections drug therapy
HIV Infections psychology
Infectious Disease Transmission, Vertical
Machine Learning
Psychomotor Performance drug effects
Subjects
Details
- Language :
- English
- ISSN :
- 1473-5571
- Volume :
- 34
- Issue :
- 5
- Database :
- MEDLINE
- Journal :
- AIDS (London, England)
- Publication Type :
- Academic Journal
- Accession number :
- 31895148
- Full Text :
- https://doi.org/10.1097/QAD.0000000000002471