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Machine Learning Approaches to Understand Cognitive Phenotypes in People With HIV.

The Journal of infectious diseases | 2023

Cognitive disorders are prevalent in people with HIV (PWH) despite antiretroviral therapy. Given the heterogeneity of cognitive disorders in PWH in the current era and evidence that these disorders have different etiologies and risk factors, scientific rationale is growing for using data-driven models to identify biologically defined subtypes (biotypes) of these disorders. Here, we discuss the state of science using machine learning to understand cognitive phenotypes in PWH and their associated comorbidities, biological mechanisms, and risk factors. We also discuss methods, example applications, challenges, and what will be required from the field to successfully incorporate machine learning in research on cognitive disorders in PWH. These topics were discussed at the National Institute of Mental Health meeting on "Biotypes of CNS Complications in People Living with HIV" held in October 2021. These ongoing research initiatives seek to explain the heterogeneity of cognitive phenotypes in PWH and their associated biological mechanisms to facilitate clinical management and tailored interventions.

Pubmed ID: 36930638 RIS Download

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Associated grants

  • Agency: NIAAA NIH HHS, United States
    Id: U01 AA017347
  • Agency: NIMH NIH HHS, United States
    Id: U24 MH100925
  • Agency: NIMH NIH HHS, United States
    Id: R01 MH113406
  • Agency: NIMH NIH HHS, United States
    Id: R01 MH118514
  • Agency: NIAID NIH HHS, United States
    Id: P30 AI094189
  • Agency: NIMH NIH HHS, United States
    Id: P30 MH062261
  • Agency: NIMH NIH HHS, United States
    Id: K23 MH115812
  • Agency: NIMH NIH HHS, United States
    Id: R01 MH128868
  • Agency: NIMH NIH HHS, United States
    Id: R01 MH113560
  • Agency: NIMH NIH HHS, United States
    Id: R01 MH114152
  • Agency: NIMH NIH HHS, United States
    Id: R56 MH115853
  • Agency: NIMH NIH HHS, United States
    Id: R03 MH123290
  • Agency: NIMH NIH HHS, United States
    Id: R01 MH118031
  • Agency: NIH HHS, United States
    Id: 5R01MH110259
  • Agency: NIMH NIH HHS, United States
    Id: R01 MH110259
  • Agency: NIMH NIH HHS, United States
    Id: F32 MH129151

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RRID:SCR_002244

NIMH Strategic Plan developing, for research purposes, new ways of classifying psychopathology based on dimensions of observable behavior and neurobiological measures. In brief, the effort is to define basic dimensions of functioning (such as fear circuitry or working memory) to be studied across multiple units of analysis, from genes to neural circuits to behaviors, cutting across disorders as traditionally defined. The intent is to translate rapid progress in basic neurobiological and behavioral research to an improved integrative understanding of psychopathology and the development of new and/or optimally matched treatments for mental disorders. The various domains of functioning, and their constituent elements, are being defined by an ongoing series of consensus workshops; input from the research community and other interested stakeholders is encouraged.

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