Variation in compulsory psychiatric inpatient admission in England: a cross-sectional, multilevel analysis
Background: Rates of compulsory admission have increased in England in recent decades, and this trend is accelerating. Studying variation in rates between people and places can help identify modifiable causes. Objectives: To quantify and model variances in the rate of compulsory admission in England...
Main Authors: | , , , , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
NIHR Journals Library
2014-12-01
|
Series: | Health Services and Delivery Research |
Online Access: | https://doi.org/10.3310/hsdr02490 |
id |
doaj-ce0c11f6aa4b404f843a39c01f54a0c7 |
---|---|
record_format |
Article |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Scott Weich Orla McBride Liz Twigg Patrick Keown Eva Cyhlarova David Crepaz-Keay Helen Parsons Jan Scott Kamaldeep Bhui |
spellingShingle |
Scott Weich Orla McBride Liz Twigg Patrick Keown Eva Cyhlarova David Crepaz-Keay Helen Parsons Jan Scott Kamaldeep Bhui Variation in compulsory psychiatric inpatient admission in England: a cross-sectional, multilevel analysis Health Services and Delivery Research |
author_facet |
Scott Weich Orla McBride Liz Twigg Patrick Keown Eva Cyhlarova David Crepaz-Keay Helen Parsons Jan Scott Kamaldeep Bhui |
author_sort |
Scott Weich |
title |
Variation in compulsory psychiatric inpatient admission in England: a cross-sectional, multilevel analysis |
title_short |
Variation in compulsory psychiatric inpatient admission in England: a cross-sectional, multilevel analysis |
title_full |
Variation in compulsory psychiatric inpatient admission in England: a cross-sectional, multilevel analysis |
title_fullStr |
Variation in compulsory psychiatric inpatient admission in England: a cross-sectional, multilevel analysis |
title_full_unstemmed |
Variation in compulsory psychiatric inpatient admission in England: a cross-sectional, multilevel analysis |
title_sort |
variation in compulsory psychiatric inpatient admission in england: a cross-sectional, multilevel analysis |
publisher |
NIHR Journals Library |
series |
Health Services and Delivery Research |
issn |
2050-4349 2050-4357 |
publishDate |
2014-12-01 |
description |
Background: Rates of compulsory admission have increased in England in recent decades, and this trend is accelerating. Studying variation in rates between people and places can help identify modifiable causes. Objectives: To quantify and model variances in the rate of compulsory admission in England at different spatial levels and to assess the extent to which this was explained by characteristics of people and places. Design: Cross-sectional analysis using multilevel statistical modelling. Setting: England, including 98% of Census lower layer super output areas (LSOAs), 95% of primary care trusts (PCTs), 93% of general practices and all 69 NHS providers of specialist mental health services. Participants: 1,287,730 patients. Main outcome measure: The study outcome was compulsory admission, defined as time spent in an inpatient mental illness bed subject to the Mental Health Act (2007) in 2010/11. We excluded patients detained under sections applying to emergency assessment only (including those in places of safety), guardianship or supervision of community treatment. The control group comprised all other users of specialist mental health services during the same period. Data sources: The Mental Health Minimum Data Set (MHMDS). Data on explanatory variables, characterising each of the spatial levels in the data set, were obtained from a wide range of sources, and were linked using MHMDS identifiers. Results: A total of 3.5% of patients had at least one compulsory admission in 2010/11. Of (unexplained) variance in the null model, 84.5% occurred between individuals. Statistically significant variance occurred between LSOAs [6.7%, 95% confidence interval (CI) 6.2% to 7.2%] and provider trusts (6.9%, 95% CI 4.3% to 9.5%). Variances at these higher levels remained statistically significant even after adjusting for a large number of explanatory variables, which together explained only 10.2% of variance in the study outcome. The number of provider trusts whose observed rate of compulsory admission differed from the model average to a statistically significant extent fell from 45 in the null model to 20 in the fully adjusted model. We found statistically significant associations between compulsory admission and age, gender, ethnicity, local area deprivation and ethnic density. There was a small but statistically significant association between (higher) bed occupancy and compulsory admission, but this was subsequently confounded by other covariates. Adjusting for PCT investment in mental health services did not improve model fit in the fully adjusted models. Conclusions: This was the largest study of compulsory admissions in England. While 85% of the variance in this outcome occurred between individuals, statistically significant variance (around 7% each) occurred between places (LSOAs) and provider trusts. This higher-level variance in compulsory admission remained largely unchanged even after adjusting for a large number of explanatory variables. We were constrained by data available to us, and therefore our results must be interpreted with caution. We were also unable to consider many hypotheses suggested by the service users, carers and professionals who we consulted. There is an imperative to develop and evaluate interventions to reduce compulsory admission rates. This requires further research to extend our understanding of the reasons why these rates remain so high. Funding: The National Institute for Health Research Health Services and Delivery Research programme. |
url |
https://doi.org/10.3310/hsdr02490 |
work_keys_str_mv |
AT scottweich variationincompulsorypsychiatricinpatientadmissioninenglandacrosssectionalmultilevelanalysis AT orlamcbride variationincompulsorypsychiatricinpatientadmissioninenglandacrosssectionalmultilevelanalysis AT liztwigg variationincompulsorypsychiatricinpatientadmissioninenglandacrosssectionalmultilevelanalysis AT patrickkeown variationincompulsorypsychiatricinpatientadmissioninenglandacrosssectionalmultilevelanalysis AT evacyhlarova variationincompulsorypsychiatricinpatientadmissioninenglandacrosssectionalmultilevelanalysis AT davidcrepazkeay variationincompulsorypsychiatricinpatientadmissioninenglandacrosssectionalmultilevelanalysis AT helenparsons variationincompulsorypsychiatricinpatientadmissioninenglandacrosssectionalmultilevelanalysis AT janscott variationincompulsorypsychiatricinpatientadmissioninenglandacrosssectionalmultilevelanalysis AT kamaldeepbhui variationincompulsorypsychiatricinpatientadmissioninenglandacrosssectionalmultilevelanalysis |
_version_ |
1716809092276682752 |
spelling |
doaj-ce0c11f6aa4b404f843a39c01f54a0c72020-11-24T20:48:03ZengNIHR Journals LibraryHealth Services and Delivery Research2050-43492050-43572014-12-0124910.3310/hsdr0249010/1011/70Variation in compulsory psychiatric inpatient admission in England: a cross-sectional, multilevel analysisScott Weich0Orla McBride1Liz Twigg2Patrick Keown3Eva Cyhlarova4David Crepaz-Keay5Helen Parsons6Jan Scott7Kamaldeep Bhui8Warwick Medical School, University of Warwick, Coventry, UKSchool of Psychology, University of Ulster, Londonderry, UKDepartment of Geography, University of Portsmouth, Portsmouth, UKAcademic Psychiatry, Newcastle University, Newcastle upon Tyne, UKMental Health Foundation, London, UKMental Health Foundation, London, UKWarwick Medical School, University of Warwick, Coventry, UKAcademic Psychiatry, Newcastle University, Newcastle upon Tyne, UKCentre for Psychiatry, Barts and The London School of Medicine and Dentistry, Queen Mary University of London, London, UKBackground: Rates of compulsory admission have increased in England in recent decades, and this trend is accelerating. Studying variation in rates between people and places can help identify modifiable causes. Objectives: To quantify and model variances in the rate of compulsory admission in England at different spatial levels and to assess the extent to which this was explained by characteristics of people and places. Design: Cross-sectional analysis using multilevel statistical modelling. Setting: England, including 98% of Census lower layer super output areas (LSOAs), 95% of primary care trusts (PCTs), 93% of general practices and all 69 NHS providers of specialist mental health services. Participants: 1,287,730 patients. Main outcome measure: The study outcome was compulsory admission, defined as time spent in an inpatient mental illness bed subject to the Mental Health Act (2007) in 2010/11. We excluded patients detained under sections applying to emergency assessment only (including those in places of safety), guardianship or supervision of community treatment. The control group comprised all other users of specialist mental health services during the same period. Data sources: The Mental Health Minimum Data Set (MHMDS). Data on explanatory variables, characterising each of the spatial levels in the data set, were obtained from a wide range of sources, and were linked using MHMDS identifiers. Results: A total of 3.5% of patients had at least one compulsory admission in 2010/11. Of (unexplained) variance in the null model, 84.5% occurred between individuals. Statistically significant variance occurred between LSOAs [6.7%, 95% confidence interval (CI) 6.2% to 7.2%] and provider trusts (6.9%, 95% CI 4.3% to 9.5%). Variances at these higher levels remained statistically significant even after adjusting for a large number of explanatory variables, which together explained only 10.2% of variance in the study outcome. The number of provider trusts whose observed rate of compulsory admission differed from the model average to a statistically significant extent fell from 45 in the null model to 20 in the fully adjusted model. We found statistically significant associations between compulsory admission and age, gender, ethnicity, local area deprivation and ethnic density. There was a small but statistically significant association between (higher) bed occupancy and compulsory admission, but this was subsequently confounded by other covariates. Adjusting for PCT investment in mental health services did not improve model fit in the fully adjusted models. Conclusions: This was the largest study of compulsory admissions in England. While 85% of the variance in this outcome occurred between individuals, statistically significant variance (around 7% each) occurred between places (LSOAs) and provider trusts. This higher-level variance in compulsory admission remained largely unchanged even after adjusting for a large number of explanatory variables. We were constrained by data available to us, and therefore our results must be interpreted with caution. We were also unable to consider many hypotheses suggested by the service users, carers and professionals who we consulted. There is an imperative to develop and evaluate interventions to reduce compulsory admission rates. This requires further research to extend our understanding of the reasons why these rates remain so high. Funding: The National Institute for Health Research Health Services and Delivery Research programme.https://doi.org/10.3310/hsdr02490 |