Machine Learning Predicts Conversion from Normal Aging to Mild Cognitive Impairment Using Medical History, APOE Genotype, and Neuropsychological Assessment

利用病史、APOE基因型和神经心理学评估,机器学习预测正常衰老向轻度认知障碍的转化

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Abstract

BACKGROUND: Identifying individuals at risk for mild cognitive impairment (MCI) is of urgent clinical need. OBJECTIVE: This study aimed to determine whether machine learning approaches could harness longitudinal neuropsychology measures, medical data, and APOEɛ4 genotype to identify individuals at risk of MCI 1 to 2 years prior to diagnosis. METHODS: Data from 676 individuals who participated in the 'APOE in the Predisposition to, Protection from and Prevention of Alzheimer's Disease' longitudinal study (N = 66 who converted to MCI) were utilized in supervised machine learning algorithms to predict conversion to MCI. RESULTS: A random forest algorithm predicted conversion 1-2 years prior to diagnosis with 97% accuracy (p = 0.0026). The global minima (each individual's lowest score) of memory measures from the 'Rey Auditory Verbal Learning Test' and the 'Selective Reminding Test' were the strongest predictors. CONCLUSIONS: This study demonstrates the feasibility of using machine learning to identify individuals likely to convert from normal cognition to MCI.

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