2022
DOI: 10.1186/s12888-022-04107-7
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Determinants of compulsory hospitalisation at admission and in the course of inpatient treatment in people with mental disorders—a retrospective analysis of health records of the four psychiatric hospitals of the city of Cologne

Abstract: Background We aimed to identify differences in predictors of involuntary psychiatric hospitalisation depending on whether the inpatient stay was involuntary right from the beginning since admission or changed from voluntary to involuntary in the course of in-patient treatment. Methods We conducted an analysis of 1,773 mental health records of all cases treated under the Mental Health Act in the city of Cologne in the year 2011. 79.4% cases were adm… Show more

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Cited by 4 publications
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“…A person‐centered approach, as opposed to the traditional variable‐centered approaches, was considered most appropriate and was sought for data analysis. Contemporary advances in data analysis offer many options, including the use of machine‐learning, decision trees and ensemble learning algorithms, which are supported by suitable software programs (e.g., Blankers et al, 2020; Hotzy et al, 2018; Karasch et al, 2020; Peters et al, 2022; Silva et al, 2021). In the present work, Latent Class Analysis (LCA) was chosen because it is a psychometric measurement model and as a classification procedure is suitable for the present data and the theory‐driven orientation pursued.…”
Section: Methodsmentioning
confidence: 99%
“…A person‐centered approach, as opposed to the traditional variable‐centered approaches, was considered most appropriate and was sought for data analysis. Contemporary advances in data analysis offer many options, including the use of machine‐learning, decision trees and ensemble learning algorithms, which are supported by suitable software programs (e.g., Blankers et al, 2020; Hotzy et al, 2018; Karasch et al, 2020; Peters et al, 2022; Silva et al, 2021). In the present work, Latent Class Analysis (LCA) was chosen because it is a psychometric measurement model and as a classification procedure is suitable for the present data and the theory‐driven orientation pursued.…”
Section: Methodsmentioning
confidence: 99%