I Dönnhoff, D Kindermann, S Stahl-Toyota, J Nowak, M Orth, H-C Friederich, C Nikendei
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引用次数: 0
摘要
背景:自从在诊断手册《DSM-5》和《ICD-11》中引入 "人格功能 "这一概念以来,它受到了越来越多的关注。然而,目前仍不清楚哪些因素可以预测人格功能的改善:我们对海德堡心理治疗研究所(Heidelberg Institute for Psychotherapy)的 172 名治疗师完成的 648 次心理动力学心理治疗进行了抽样调查。我们采用了一种机器学习方法,从每次心理动力学心理治疗开始时收集的一组广泛的变量数据中筛选出与人格功能改善预测相关的变量:平均而言,我们发现 OPD-SQ 改善了 0.24(SD = 0.48)。这相当于人格功能改善的中等效果。最初损伤程度较高的患者的改善幅度尤其大。总体而言,我们发现了许多对人格功能改善具有预测作用的变量。身体和情绪问题导致的社交活动受限被证明是人格功能改善的最重要预测因素之一。大多数效应大小都很小:总体而言,心理治疗期间人格功能的改善更多地取决于大量微小效应的总和,而非单个变量。尤其是那些能反映社会生活领域的变量被证明是强有力的预测因素。
Predictors for improvement in personality functioning during outpatient psychotherapy: A machine learning approach within a psychodynamic psychotherapy sample.
Background: Since its introduction in the diagnostic manuals DSM-5 and ICD-11, the construct of personality functioning has gained increasing attention. However, it remains unclear which factors might predict improvement in personality functioning.
Methods: We examined a sample of 648 completed psychodynamic psychotherapies conducted by 172 therapists at the Heidelberg Institute for Psychotherapy. A machine learning approach was used to filter for variables that are relevant for the prediction of the improvement of personality functioning from a broad data set of variables collected at the beginning of each psychodynamic psychotherapy.
Results: On average, we found an improvement of 0.24 (SD = 0.48) in the OPD-SQ. This corresponds to a medium effect in the improvement of personality functioning. Patients with initially high impairment experienced particularly large improvements. Overall, we found a large number of variables that proved to be predictive for the improvement of personality functioning. Limitations in social activity due to physical and emotional problems proved to be one of the most important predictors of improvement. Most of the effect sizes were small.
Conclusions: Overall, the improvement in personality functioning during psychotherapy is determined more by the sum of a large number of small effects than by individual variables. In particular, variables that capture social areas of life proved to be robust predictors.
期刊介绍:
European Psychiatry, the official journal of the European Psychiatric Association, is dedicated to sharing cutting-edge research, policy updates, and fostering dialogue among clinicians, researchers, and patient advocates in the fields of psychiatry, mental health, behavioral science, and neuroscience. This peer-reviewed, Open Access journal strives to publish the latest advancements across various mental health issues, including diagnostic and treatment breakthroughs, as well as advancements in understanding the biological foundations of mental, behavioral, and cognitive functions in both clinical and general population studies.