Predicting Conversion to Dementia Using Machine Learning and Neuropsychological Test Data - Robotics Institute Carnegie Mellon University

Predicting Conversion to Dementia Using Machine Learning and Neuropsychological Test Data

Emily Brickell, Andrew Whitford, Jessica Hodgins, and Munro Cullum
Journal Article, Alzheimer's & Dementia, Vol. 15, No. 7, pp. P784 - P785, July, 2019

Abstract

Future disease-modifying treatments will target early stages of Alzheimer’s disease and related conditions to mitigate functional loss, which will require identification of pre-clinical individuals at risk for developing dementia. Machine learning algorithms using various parameters such as neuroimaging, genetics, and neuropsychological test data have shown promise in recent years. Here, we examine the performance of several such algorithms in a large, well-characterized national sample. To evaluate the potential for future clinical implementation, we used machine learning techniques to predict conversion to dementia using readily available and cost-effective neuropsychological test scores, basic health history, and demographic information.

BibTeX

@article{Brickell-2019-121965,
author = {Emily Brickell and Andrew Whitford and Jessica Hodgins and Munro Cullum},
title = {Predicting Conversion to Dementia Using Machine Learning and Neuropsychological Test Data},
journal = {Alzheimer's & Dementia},
year = {2019},
month = {July},
volume = {15},
number = {7},
pages = {P784 - P785},
}