Development of mental health quality indicators (MHQIs) for inpatient psychiatry based on the interRAI mental health assessment

TitleDevelopment of mental health quality indicators (MHQIs) for inpatient psychiatry based on the interRAI mental health assessment
Publication TypeJournal Article
Year of Publication2013
AuthorsPerlman CM, Hirdes JP, Barbaree H, Fries BE, McKillop I, Morris JN, Rabinowitz T
JournalBmc Health Services Research
Volume13
Pagination15
Date PublishedJan 10
ISBN Number1472-6963 (Electronic)<br/>1472-6963 (Linking)
Accession NumberWOS:000314230900001<br/>23305286
Keywordsassessment system, care, cognitive performance, indicators, InterRAI, mds-hc, mental health, Minimum data set, nursing-homes, outcome indicators, Outcomes, performance, psychiatry, quality, RAI-MH, reliability, Resident assessment instrument, risk-adjustment models
Abstract

Background: Outcome quality indicators are rarely used to evaluate mental health services because most jurisdictions lack clinical data systems to construct indicators in a meaningful way across mental health providers. As a result, important information about the effectiveness of health services remains unknown. This study examined the feasibility of developing mental health quality indicators (MHQIs) using the Resident Assessment Instrument Mental Health (RAI-MH), a clinical assessment system mandated for use in Ontario, Canada as well as many other jurisdictions internationally.Methods: Retrospective analyses were performed on two datasets containing RAI-MH assessments for 1,056 patients from 7 facilities and 34,788 patients from 70 facilities in Ontario, Canada. The RAI-MH was completed by clinical staff of each facility at admission and follow-up, typically at discharge. The RAI-MH includes a breadth of information on symptoms, functioning, socio-demographics, and service utilization. Potential MHQIs were derived by examining the empirical patterns of improvement and incidence in depressive symptoms and cognitive performance across facilities in both sets of data. A prevalence indicator was also constructed to compare restraint use. Logistic regression was used to evaluate risk adjustment of MHQIs using patient case-mix index scores derived from the RAI-MH System for Classification of Inpatient Psychiatry.Results: Subscales from the RAI-MH, the Depression Severity Index (DSI) and Cognitive Performance Scale (CPS), were found to have good reliability and strong convergent validity. Unadjusted rates of five MHQIs based on the DSI, CPS, and restraints showed substantial variation among facilities in both sets of data. For instance, there was a 29.3% difference between the first and third quartile facility rates of improvement in cognitive performance. The case-mix index score was significantly related to MHQIs for cognitive performance and restraints but had a relatively small impact on adjusted rates/prevalence.Conclusions: The RAI-MH is a feasible assessment system for deriving MHQIs. Given the breadth of clinical content on the RAI-MH there is an opportunity to expand the number of MHQIs beyond indicators of depression, cognitive performance, and restraints. Further research is needed to improve risk adjustment of the MHQIs for their use in mental health services report card and benchmarking activities.

DOI10.1186/1472-6963-13-15
PMCID

PMC3560122

Alternate JournalBmc Health Serv Res