Machine learning for predicting cognitive deficits using auditory and demographic factors.

Journal: PloS one

Volume: 19

Issue: 5

Year of Publication: 2024

Affiliated Institutions:  Geisel School of Medicine at Dartmouth, Space Medicine Innovations Laboratory, Lebanon, NH, United States of America. Dartmouth Health, Department of Pathology and Laboratory Medicine, Lebanon, NH, United States of America. Dartmouth Health, Department of Medicine, Division of Hyperbaric Medicine, Lebanon, NH, United States of America. Geisel School of Medicine at Dartmouth, Program in Quantitative Biomedical Sciences, Lebanon, NH, United States of America. Muhimbili University of Health and Allied Sciences, Dar es Salaam, Tanzania.

Abstract summary 

Predicting neurocognitive deficits using complex auditory assessments could change how cognitive dysfunction is identified, and monitored over time. Detecting cognitive impairment in people living with HIV (PLWH) is important for early intervention, especially in low- to middle-income countries where most cases exist. Auditory tests relate to neurocognitive test results, but the incremental predictive capability beyond demographic factors is unknown.Use machine learning to predict neurocognitive deficits, using auditory tests and demographic factors.The Infectious Disease Center in Dar es Salaam, Tanzania.Participants were 939 Tanzanian individuals from Dar es Salaam living with and without HIV who were part of a longitudinal study. Patients who had only one visit, a positive history of ear drainage, concussion, significant noise or chemical exposure, neurological disease, mental illness, or exposure to ototoxic antibiotics (e.g., gentamycin), or chemotherapy were excluded. This provided 478 participants (349 PLWH, 129 HIV-negative). Participant data were randomized to training and test sets for machine learning.The main outcome was whether auditory variables combined with relevant demographic variables could predict neurocognitive dysfunction (defined as a score of <26 on the Kiswahili Montreal Cognitive Assessment) better than demographic factors alone. The performance of predictive machine learning algorithms was primarily evaluated using the area under the receiver operational characteristic curve. Secondary metrics for evaluation included F1 scores, accuracies, and the Youden's indices for the algorithms.The percentage of individuals with cognitive deficits was 36.2% (139 PLWH and 34 HIV-negative). The Gaussian and kernel naïve Bayes classifiers were the most predictive algorithms for neurocognitive impairment. Algorithms trained with auditory variables had average area under the curve values of 0.91 and 0.87, F1 scores (metric for precision and recall) of 0.81 and 0.76, and average accuracies of 86.3% and 81.9% respectively. Algorithms trained without auditory variables as features were statistically worse (p < .001) in both the primary measure of area under the curve (0.82/0.78) and the secondary measure of accuracy (72.3%/74.5%) for the Gaussian and kernel algorithms respectively.Auditory variables improved the prediction of cognitive function. Since auditory tests are easy-to-administer and often naturalistic tasks, they may offer objective measures or predictors of neurocognitive performance suitable for many global settings. Further research and development into using machine learning algorithms for predicting cognitive outcomes should be pursued.

Authors & Co-authors:  Niemczak Christopher E CE Montagnese Basile B Levy Joshua J Fellows Abigail M AM Gui Jiang J Leigh Samantha M SM Magohe Albert A Massawe Enica R ER Buckey Jay C JC

Study Outcome 

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Statistics
Citations :  Gates GA, Cobb JL, Linn RT, Rees T, Wolf PA, D’Agostino RB. Central Auditory Dysfunction, Cognitive Dysfunction, and Dementia in Older People. Archives of Otolaryngology—Head and Neck Surgery. 1996;122(2):161–7. doi: 10.1001/archotol.1996.01890140047010
Authors :  9
Identifiers
Doi : e0302902
SSN : 1932-6203
Study Population
Male,Female
Mesh Terms
Humans
Other Terms
Study Design
Study Approach
Country of Study
Tanzania
Publication Country
United States