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Cultural Consensus Theory for the evaluation of patients' mental health scores in forensic psychiatric hospitals

机译:法医精神医院患者心理健康成绩评价文化共识理论

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In many forensic psychiatric hospitals, patients' mental health is monitored at regular intervals. Typically, clinicians score patients using a Likert scale on multiple criteria including hostility. Having an overview of patients' scores benefits staff members in at least three ways. First, the scores may help adjust treatment to the individual patient; second, the change in scores over time allows an assessment of treatment effectiveness; third, the scores may warn staff that particular patients are at high risk of turning violent, either before or after release. Practical importance notwithstanding, current practices for the analysis of mental health scores are suboptimal: evaluations from different clinicians are averaged (as if the Likert scale were linear and the clinicians identical), and patients are analyzed in isolation (as if they were independent). Uncertainty estimates of the resulting score are often ignored. Here we outline a quantitative program for the analysis of mental health scores using cultural consensus theory (CCT; Anders and Batchelder, 2015). CCT models take into account the ordinal nature of the Likert scale, the individual differences among clinicians, and the possible commonalities between patients. In a simulation, we compare the predictive performance of the CCT model to the current practice of aggregating raw observations and, as an alternative, against often-used machine learning toolboxes. In addition, we outline the substantive conclusions afforded by the application of the CCT model. We end with recommendations for clinical practitioners who wish to apply CCT in their own work. (c) 2020 The Author(s). Published by Elsevier Inc. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
机译:在许多法医精神病医院,定期监测患者的心理健康状况。通常,临床医生使用利克特量表根据包括敌意在内的多个标准对患者进行评分。了解患者的评分至少在三个方面对员工有利。首先,分数可能有助于调整治疗以适应个别患者;第二,随着时间的推移,分数的变化允许评估治疗效果;第三,分数可能会提醒工作人员,特定患者在获释前或获释后有很高的暴力风险。尽管具有实际重要性,但目前用于分析心理健康得分的做法并不理想:对不同临床医生的评估进行平均(就好像利克特量表是线性的,临床医生是相同的),对患者进行隔离分析(就好像他们是独立的)。对结果分数的不确定性估计常常被忽略。在这里,我们概述了一个使用文化共识理论分析心理健康分数的定量计划(CCT;Anders和Batchelder,2015)。CCT模型考虑了Likert量表的顺序性质、临床医生之间的个体差异以及患者之间可能的共性。在模拟中,我们将CCT模型的预测性能与当前聚合原始观测值的实践进行比较,并与常用的机器学习工具箱进行比较。此外,我们概述了应用CCT模型得出的实质性结论。最后,我们为希望在自己的工作中应用CCT的临床从业者提供建议。(c) 2020作者。由爱思唯尔公司出版。这是一篇基于CC by license的开放获取文章(http://creativecommons.org/licenses/by/4.0/).

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