Recursive Feature Elimination with Cross Validation for Alzheimer's Disease Classification using Cognitive Exam Scores Conference

Freytes, CY, Perry Mayrand, R, Sawada, LO et al. (2023). Recursive Feature Elimination with Cross Validation for Alzheimer's Disease Classification using Cognitive Exam Scores . 327-332. 10.1109/IMSA58542.2023.10217660

cited authors

  • Freytes, CY; Perry Mayrand, R; Sawada, LO; Yan Liang, T; Curiel Cid, RE; Burke, S; Loewenstein, D; Duara, R; Adjouadi, M

abstract

  • Prodromal detection of Alzheimer's Disease(AD) is a substantial challenge in the research community. Among the tools used in AD diagnosis, cognitive exams are standard in most procedures. However, the barrage of cognitive examinations is both time and resource consuming. With the use of Machine Learning, Feature Elimination (FE) can be combined with classification algorithms to determine which cognitive exams are best suited for diagnosis. Using the results of FE, it can be determined if subsections of different composite scores can be combined to create a new enhanced and exhaustive exam. This paper implements a Recursive Feature Elimination with Cross Validation (RFECV) machine learning algorithm to determine which cognitive exams perform best for AD classification tasks. Out of 119 features, an average of 16 features were selected as optimal. These optimal features average 75% Accuracy, 70% Precision, and 75% Recall and an F1 Weighted score of 71% in classification.

publication date

  • January 1, 2023

Digital Object Identifier (DOI)

International Standard Book Number (ISBN) 13

start page

  • 327

end page

  • 332