Doorgaan naar hoofdnavigatie Doorgaan naar zoeken Ga verder naar hoofdinhoud

Development of a computer-based clinical decision support tool for selecting appropriate rehabilitation interventions for injured workers

Douglas P Gross, Jing Zhang, Ivan Steenstra, Susan Barnsley, Calvin Haws, Tyler Amell, Greg McIntosh, Juliette Cooper, Osmar Zaiane

Onderzoeksoutput: ArticleAcademicpeer review

Samenvatting

Purpose: To develop a classification algorithm and accompanying computer-based clinical decision support tool to help categorize injured workers toward optimal rehabilitation interventions based on unique worker characteristics.

Methods: Population-based historical cohort design. Data were extracted from a Canadian provincial workers' compensation database on all claimants undergoing work assessment between December 2009 and January 2011. Data were available on: (1) numerous personal, clinical, occupational, and social variables; (2) type of rehabilitation undertaken; and (3) outcomes following rehabilitation (receiving time loss benefits or undergoing repeat programs). Machine learning, concerned with the design of algorithms to discriminate between classes based on empirical data, was the foundation of our approach to build a classification system with multiple independent and dependent variables.

Results: The population included 8,611 unique claimants. Subjects were predominantly employed (85 %) males (64 %) with diagnoses of sprain/strain (44 %). Baseline clinician classification accuracy was high (ROC = 0.86) for selecting programs that lead to successful return-to-work. Classification performance for machine learning techniques outperformed the clinician baseline classification (ROC = 0.94). The final classifiers were multifactorial and included the variables: injury duration, occupation, job attachment status, work status, modified work availability, pain intensity rating, self-rated occupational disability, and 9 items from the SF-36 Health Survey.

Conclusions: The use of machine learning classification techniques appears to have resulted in classification performance better than clinician decision-making. The final algorithm has been integrated into a computer-based clinical decision support tool that requires additional validation in a clinical sample.
Originele taal-2English
Pagina's (van-tot)597-609
Aantal pagina's13
TijdschriftJournal of Occupational Rehabilitation
Volume23
Nummer van het tijdschrift4
StatusPublished - dec. 2013
Extern gepubliceerdJa

Keywords

  • klinische besluitvorming
  • rehabilitatie
  • interventies

Vingerafdruk

Duik in de onderzoeksthema's van 'Development of a computer-based clinical decision support tool for selecting appropriate rehabilitation interventions for injured workers'. Samen vormen ze een unieke vingerafdruk.

Citeer dit