Ensemble machine learning classification of daily living abilities among older people with HIV

Background: clinically relevant methods to identify individuals at risk for impaired daily living abilities secondary to neurocognitive impairment (ADLs) remain elusive. This is especially true for complex clinical conditions such as HIV-Associated Neurocognitive Disorders (HAND). The aim of this st...

Full description

Bibliographic Details
Main Authors: Robert Paul, Torie Tsuei, Kyu Cho, Andrew Belden, Benedetta Milanini, Jacob Bolzenius, Shireen Javandel, Joseph McBride, Lucette Cysique, Samantha Lesinski, Victor Valcour
Format: Article
Language:English
Published: Elsevier 2021-05-01
Series:EClinicalMedicine
Subjects:
HIV
Online Access:http://www.sciencedirect.com/science/article/pii/S2589537021001255
id doaj-a3be0ac9c4a34f3689d5713e1853b0d3
record_format Article
collection DOAJ
language English
format Article
sources DOAJ
author Robert Paul
Torie Tsuei
Kyu Cho
Andrew Belden
Benedetta Milanini
Jacob Bolzenius
Shireen Javandel
Joseph McBride
Lucette Cysique
Samantha Lesinski
Victor Valcour
spellingShingle Robert Paul
Torie Tsuei
Kyu Cho
Andrew Belden
Benedetta Milanini
Jacob Bolzenius
Shireen Javandel
Joseph McBride
Lucette Cysique
Samantha Lesinski
Victor Valcour
Ensemble machine learning classification of daily living abilities among older people with HIV
EClinicalMedicine
ADLs
HIV
Aging
Machine learning
author_facet Robert Paul
Torie Tsuei
Kyu Cho
Andrew Belden
Benedetta Milanini
Jacob Bolzenius
Shireen Javandel
Joseph McBride
Lucette Cysique
Samantha Lesinski
Victor Valcour
author_sort Robert Paul
title Ensemble machine learning classification of daily living abilities among older people with HIV
title_short Ensemble machine learning classification of daily living abilities among older people with HIV
title_full Ensemble machine learning classification of daily living abilities among older people with HIV
title_fullStr Ensemble machine learning classification of daily living abilities among older people with HIV
title_full_unstemmed Ensemble machine learning classification of daily living abilities among older people with HIV
title_sort ensemble machine learning classification of daily living abilities among older people with hiv
publisher Elsevier
series EClinicalMedicine
issn 2589-5370
publishDate 2021-05-01
description Background: clinically relevant methods to identify individuals at risk for impaired daily living abilities secondary to neurocognitive impairment (ADLs) remain elusive. This is especially true for complex clinical conditions such as HIV-Associated Neurocognitive Disorders (HAND). The aim of this study was to identify novel and modifiable factors that have potential to improve diagnostic accuracy of ADL risk, with the long-term goal of guiding future interventions to minimize ADL disruption. Methods: study participants included 79 people with HIV (PWH; mean age = 63; range = 55–80) enrolled in neuroHIV studies at University California San Francisco (UCSF) between 2016 and 2019. All participants were virally suppressed and exhibited objective evidence of neurocognitive impairment. ADL status was defined as either normative (n = 39) or at risk (n = 40) based on a task-based protocol. Gradient boosted multivariate regression (GBM) was employed to identify the combination of variables that differentiated ADL subgroup classification. Predictor variables included demographic factors, HIV disease severity indices, brain white matter integrity quantified using diffusion tensor imaging, cognitive test performance, and health co-morbidities. Model performance was examined using average Area Under the Curve (AUC) with repeated five-fold cross validation. Findings: the univariate GBM yielded an average AUC of 83% using Wide Range Achievement test 4 (WRAT-4) reading score, self-reported thought confusion and difficulty reading, radial diffusivity (RD) in the left external capsule, fractional anisotropy (FA) in the left cingulate gyrus, and Stroop performance. The model allowing for two-way interactions modestly improved classification performance (AUC of 88%) and revealed synergies between race, reading ability, cognitive performance, and neuroimaging metrics in the genu and uncinate fasciculus. Conversion of Neuropsychological Assessment Battery Daily Living Module (NAB-DLM) performance from raw scores into T scores amplified differences between White and non-White study participants. Interpretation: demographic and sociocultural factors are critical determinants of ADL risk status among older PWH who meet diagnostic criteria for neurocognitive impairment. Task-based ADL assessment that relies heavily on reading proficiency may artificially inflate the frequency/severity of ADL impairment among diverse clinical populations. Culturally relevant measures of ADL status are needed for individuals with acquired neurocognitive disorders, including HAND.
topic ADLs
HIV
Aging
Machine learning
url http://www.sciencedirect.com/science/article/pii/S2589537021001255
work_keys_str_mv AT robertpaul ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
AT torietsuei ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
AT kyucho ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
AT andrewbelden ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
AT benedettamilanini ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
AT jacobbolzenius ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
AT shireenjavandel ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
AT josephmcbride ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
AT lucettecysique ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
AT samanthalesinski ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
AT victorvalcour ensemblemachinelearningclassificationofdailylivingabilitiesamongolderpeoplewithhiv
_version_ 1721424576497319936
spelling doaj-a3be0ac9c4a34f3689d5713e1853b0d32021-05-28T05:04:01ZengElsevierEClinicalMedicine2589-53702021-05-0135100845Ensemble machine learning classification of daily living abilities among older people with HIVRobert Paul0Torie Tsuei1Kyu Cho2Andrew Belden3Benedetta Milanini4Jacob Bolzenius5Shireen Javandel6Joseph McBride7Lucette Cysique8Samantha Lesinski9Victor Valcour10Missouri Institute of Mental Health, University of Missouri-St. Louis, St. Louis, MO 63121-4400, United States; Department of Psychological Sciences, University of Missouri-St. Louis, St. Louis, MO, United States; Corresponding author at: Missouri Institute of Mental Health, University of Missouri-St. Louis, St. Louis, MO 63121-4400, United States.Memory and Aging Center, Department of Neurology, University of California San Francisco, San Francisco, CA, United StatesMissouri Institute of Mental Health, University of Missouri-St. Louis, St. Louis, MO 63121-4400, United StatesMissouri Institute of Mental Health, University of Missouri-St. Louis, St. Louis, MO 63121-4400, United StatesMemory and Aging Center, Department of Neurology, University of California San Francisco, San Francisco, CA, United StatesMissouri Institute of Mental Health, University of Missouri-St. Louis, St. Louis, MO 63121-4400, United StatesMemory and Aging Center, Department of Neurology, University of California San Francisco, San Francisco, CA, United StatesMissouri Institute of Mental Health, University of Missouri-St. Louis, St. Louis, MO 63121-4400, United StatesSchool of Psychology, University of New South Wales, Sydney, AustraliaMissouri Institute of Mental Health, University of Missouri-St. Louis, St. Louis, MO 63121-4400, United StatesMemory and Aging Center, Department of Neurology, University of California San Francisco, San Francisco, CA, United States; Global Brain Health Institute, University of California San Francisco, San Francisco, CA, United StatesBackground: clinically relevant methods to identify individuals at risk for impaired daily living abilities secondary to neurocognitive impairment (ADLs) remain elusive. This is especially true for complex clinical conditions such as HIV-Associated Neurocognitive Disorders (HAND). The aim of this study was to identify novel and modifiable factors that have potential to improve diagnostic accuracy of ADL risk, with the long-term goal of guiding future interventions to minimize ADL disruption. Methods: study participants included 79 people with HIV (PWH; mean age = 63; range = 55–80) enrolled in neuroHIV studies at University California San Francisco (UCSF) between 2016 and 2019. All participants were virally suppressed and exhibited objective evidence of neurocognitive impairment. ADL status was defined as either normative (n = 39) or at risk (n = 40) based on a task-based protocol. Gradient boosted multivariate regression (GBM) was employed to identify the combination of variables that differentiated ADL subgroup classification. Predictor variables included demographic factors, HIV disease severity indices, brain white matter integrity quantified using diffusion tensor imaging, cognitive test performance, and health co-morbidities. Model performance was examined using average Area Under the Curve (AUC) with repeated five-fold cross validation. Findings: the univariate GBM yielded an average AUC of 83% using Wide Range Achievement test 4 (WRAT-4) reading score, self-reported thought confusion and difficulty reading, radial diffusivity (RD) in the left external capsule, fractional anisotropy (FA) in the left cingulate gyrus, and Stroop performance. The model allowing for two-way interactions modestly improved classification performance (AUC of 88%) and revealed synergies between race, reading ability, cognitive performance, and neuroimaging metrics in the genu and uncinate fasciculus. Conversion of Neuropsychological Assessment Battery Daily Living Module (NAB-DLM) performance from raw scores into T scores amplified differences between White and non-White study participants. Interpretation: demographic and sociocultural factors are critical determinants of ADL risk status among older PWH who meet diagnostic criteria for neurocognitive impairment. Task-based ADL assessment that relies heavily on reading proficiency may artificially inflate the frequency/severity of ADL impairment among diverse clinical populations. Culturally relevant measures of ADL status are needed for individuals with acquired neurocognitive disorders, including HAND.http://www.sciencedirect.com/science/article/pii/S2589537021001255ADLsHIVAgingMachine learning