The K-nearest neighbor algorithm predicted rehabilitation potential better than current Clinical Assessment Protocol

TitleThe K-nearest neighbor algorithm predicted rehabilitation potential better than current Clinical Assessment Protocol
Publication TypeJournal Article
Year of Publication2007
AuthorsZhu M, Chen W, Hirdes JP, Stolee P
JournalJournal of clinical epidemiology
Volume60
Issue10
Pagination1015-1021
ISBN Number0895-4356
Accession Number17884595
KeywordsActivities of Daily Living, Algorithms, Artificial Intelligence, Bayes Theorem, Computer Simulation, Decision Making, Computer-Assisted, Diagnostic Errors, Health Status Indicators, Home Care Services/organization & administration, Humans, Ontario, Patient Selection, Prognosis, Rehabilitation/ organization & administration
Abstract

OBJECTIVE: There may be great potential for using computer-modeling techniques and machine-learning algorithms in clinical decision making, if these can be shown to produce results superior to clinical protocols currently in use. We aim to explore the potential to use an automatic, data-driven, machine-learning algorithm in clinical decision making. STUDY DESIGN AND SETTING: Using a database containing comprehensive health assessment information (the interRAI-HC) on home care clients (N=24,724) from eight community-care regions in Ontario, Canada, we compare the performance of the K-nearest neighbor (KNN) algorithm and a Clinical Assessment Protocol (the "ADLCAP") currently used to predict rehabilitation potential. For our purposes, we define a patient as having rehabilitation potential if the patient had functional improvement or remained at home over a follow-up period of approximately 1 year. RESULTS: The KNN algorithm has a lower false positive rate in all but one of the eight regions in the sample, and lower false negative rates in all regions. Compared using likelihood ratio statistics, KNN is uniformly more informative than the ADLCAP. CONCLUSION: This article illustrates the potential for a machine-learning algorithm to enhance clinical decision making.

DOI10.1016/j.jclinepi.2007.06.001
Link

https://www.math.uwaterloo.ca/~m3zhu/papers/jce2007.pdf