Using machine learning algorithms to guide rehabilitation planning for home care clients
Open Access
- 20 December 2007
- journal article
- research article
- Published by Springer Nature in BMC Medical Informatics and Decision Making
- Vol. 7 (1) , 41
- https://doi.org/10.1186/1472-6947-7-41
Abstract
Background: Targeting older clients for rehabilitation is a clinical challenge and a research priority. We investigate the potential of machine learning algorithms – Support Vector Machine (SVM) and K-Nearest Neighbors (KNN) – to guide rehabilitation planning for home care clients. Methods: This study is a secondary analysis of data on 24,724 longer-term clients from eight home care programs in Ontario. Data were collected with the RAI-HC assessment system, in which the Activities of Daily Living Clinical Assessment Protocol (ADLCAP) is used to identify clients with rehabilitation potential. For study purposes, a client is defined as having rehabilitation potential if there was: i) improvement in ADL functioning, or ii) discharge home. SVM and KNN results are compared with those obtained using the ADLCAP. For comparison, the machine learning algorithms use the same functional and health status indicators as the ADLCAP. Results: The KNN and SVM algorithms achieved similar substantially improved performance over the ADLCAP, although false positive and false negative rates were still fairly high (FP > .18, FN > .34 versus FP > .29, FN. > .58 for ADLCAP). Results are used to suggest potential revisions to the ADLCAP. Conclusion: Machine learning algorithms achieved superior predictions than the current protocol. Machine learning results are less readily interpretable, but can also be used to guide development of improved clinical protocols.Keywords
This publication has 20 references indexed in Scilit:
- Effect of an In‐Home Occupational and Physical Therapy Intervention on Reducing Mortality in Functionally Vulnerable Older People: Preliminary FindingsJournal of the American Geriatrics Society, 2006
- An Analysis of the Feasibility of Home Rehabilitation Among Elderly People With Proximal Femoral FracturesArchives of Physical Medicine and Rehabilitation, 2006
- Machine Learning Can Improve Prediction of Severity in Acute Pancreatitis Using Admission Values of APACHE II Score and C-Reactive ProteinPancreatology, 2006
- Artificial Neural Network Models for Prediction of Acute Coronary Syndromes Using Clinical Data From the Time of PresentationAnnals of Emergency Medicine, 2005
- Home Care Quality Indicators (HCQIs) Based on the MDS-HCThe Gerontologist, 2004
- Bayesian analysis, pattern analysis, and data mining in health careCurrent Opinion in Critical Care, 2004
- Patient and caregiver outcomes 12 months after home-based therapy for hip fracture: a randomized controlled trial11No commercial party having a direct financial interest in the results of the research supporting this article has or will confer a benefit on the authors or any organization with which the authors are associated.Archives of Physical Medicine and Rehabilitation, 2003
- State of the art in geriatric rehabilitation. Part I: Review of frailty and comprehensive geriatric assessmentArchives of Physical Medicine and Rehabilitation, 2003
- Falling Through the Cracks: Challenges and Opportunities for Improving Transitional Care for Persons with Continuous Complex Care NeedsJournal of the American Geriatrics Society, 2003
- A randomized, controlled comparison of home versus institutional rehabilitation of patients with hip fractureClinical Rehabilitation, 2002