Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
7315743 | Cortex | 2014 | 17 Pages |
Abstract
Latent information in semantic fluency word lists is useful for predicting cognitive and functional decline among elderly individuals at increased risk for developing AD. Modern machine learning methods may incorporate latent information to enhance the diagnostic value of semantic fluency raw scores. These methods could yield information valuable for patient care and clinical trial design with a relatively small investment of time and money.
Keywords
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Behavioral Neuroscience
Authors
D.G. Clark, P. Kapur, D.S. Geldmacher, J.C. Brockington, L. Harrell, T.P. DeRamus, P.D. Blanton, K. Lokken, A.P. Nicholas, D.C. Marson,