Machine Learning Quantifies Accelerated White-Matter Aging in Persons With HIV

J Infect Dis. 2022 Aug 12;226(1):49-58. doi: 10.1093/infdis/jiac156.

Abstract

Background: Persons with HIV (PWH) undergo white matter changes, which can be quantified using the brain-age gap (BAG), the difference between chronological age and neuroimaging-based brain-predicted age. Accumulation of microstructural damage may be accelerated in PWH, especially with detectable viral load (VL).

Methods: In total, 290 PWH (85% with undetectable VL) and 165 HIV-negative controls participated in neuroimaging and cognitive testing. BAG was measured using a Gaussian process regression model trained to predict age from diffusion magnetic resonance imaging in publicly available normative controls. To test for accelerated aging, BAG was modeled as an age × VL interaction. The relationship between BAG and global neuropsychological performance was examined. Other potential predictors of pathological aging were investigated in an exploratory analysis.

Results: Age and detectable VL had a significant interactive effect: PWH with detectable VL accumulated +1.5 years BAG/decade versus HIV-negative controls (P = .018). PWH with undetectable VL accumulated +0.86 years BAG/decade, although this did not reach statistical significance (P = .052). BAG was associated with poorer global cognition only in PWH with detectable VL (P < .001). Exploratory analysis identified Framingham cardiovascular risk as an additional predictor of pathological aging (P = .027).

Conclusions: Aging with detectable HIV and cardiovascular disease may lead to white matter pathology and contribute to cognitive impairment.

Keywords: HIV; MRI; aging; brain age; diffusion tensor imaging; machine learning; white matter.

Publication types

  • Research Support, N.I.H., Extramural
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Aging
  • Brain / pathology
  • HIV Infections*
  • Humans
  • Machine Learning
  • Viral Load
  • White Matter* / diagnostic imaging
  • White Matter* / pathology