Title of article
Optimizing Neuropsychological Assessments for Cognitive, Behavioral, and Functional Impairment Classification: A Machine Learning Study
Author/Authors
Battista, Petronilla Institute of Molecular Bioimaging and Physiology - National Research Council (IBFM-CNR), Milano, Italy , Salvatore, Christian Institute of Molecular Bioimaging and Physiology - National Research Council (IBFM-CNR), Milano, Italy , Castiglioni, Isabella Institute of Molecular Bioimaging and Physiology - National Research Council (IBFM-CNR), Milano, Italy
Pages
19
From page
1
To page
19
Abstract
Subjects with Alzheimer's disease (AD) show loss of cognitive functions and change in behavioral and functional state affecting the quality of their daily life and that of their families and caregivers. A neuropsychological assessment plays a crucial role in detecting such changes from normal conditions. However, despite the existence of clinical measures that are used to classify and diagnose AD, a large amount of subjectivity continues to exist. Our aim was to assess the potential of machine learning in quantifying this process and optimizing or even reducing the amount of neuropsychological tests used to classify AD patients, also at an early stage of impairment. We investigated the role of twelve state-of-the-art neuropsychological tests in the automatic classification of subjects with none, mild, or severe impairment as measured by the clinical dementia rating (CDR). Data were obtained from the ADNI database. In the groups of measures used as features, we included measures of both cognitive domains and subdomains. Our findings show that some tests are more frequently best predictors for the automatic classification, namely, LM, ADAS-Cog, AVLT, and FAQ, with a major role of the ADAS-Cog measures of delayed and immediate memory and the FAQ measure of financial competency.
Keywords
Optimizing Neuropsychological , Cognitive , Functional Impairment Classification , Machine Learning Study Behavioral , Functional Impairment Classification , Machine Learning Study
Journal title
Behavioural Neurology
Serial Year
2017
Record number
2604453
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