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首页> 外文期刊>BMC Psychiatry >Predictors of remission from body dysmorphic disorder after internet-delivered cognitive behavior therapy: a machine learning approach
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Predictors of remission from body dysmorphic disorder after internet-delivered cognitive behavior therapy: a machine learning approach

机译:互联网交付的认知行为治疗后身体疑难生紊乱缓解的预测因素:机器学习方法

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摘要

Previous attempts to identify predictors of treatment outcomes in body dysmorphic disorder (BDD) have yielded inconsistent findings. One way to increase precision and clinical utility could be to use machine learning methods, which can incorporate multiple non-linear associations in prediction models. This study used a random forests machine learning approach to test if it is possible to reliably predict remission from BDD in a sample of 88 individuals that had received internet-delivered cognitive behavioral therapy for BDD. The random forest models were compared to traditional logistic regression analyses. Random forests correctly identified 78% of participants as remitters or non-remitters at post-treatment. The accuracy of prediction was lower in subsequent follow-ups (68, 66 and 61% correctly classified at 3-, 12- and 24-month follow-ups, respectively). Depressive symptoms, treatment credibility, working alliance, and initial severity of BDD were among the most important predictors at the beginning of treatment. By contrast, the logistic regression models did not identify consistent and strong predictors of remission from BDD. The results provide initial support for the clinical utility of machine learning approaches in the prediction of outcomes of patients with BDD. ClinicalTrials.gov ID: NCT02010619.
机译:以前试图识别身体疑难生症(BDD)中治疗结果的预测因子是否产生了不一致的结果。提高精度和临床实用程序的一种方法可以使用机器学习方法,该方法可以在预测模型中包含多个非线性关联。本研究用来使用随机森林机器学习方法来测试,如果可以在88个个体的样本中可靠地预测来自BDD的缓解,该互联网为BDD提供了互联网的认知行为治疗。将随机林模型与传统的逻辑回归分析进行比较。随机森林正确地将78%的参与者确定为后处理的储层或非汇总。随后的后续后续预测的准确性较低(68,66和61%,分别在3-,12-和24个月的随访中正确分类)。 BDD的抑郁症状,治疗信誉,工作联盟和初始严重程度是在治疗开始时最重要的预测因子。相比之下,Logistic回归模型没有识别BDD的缓解的一致和强烈预测因子。结果提供了对机器学习方法在预测BDD患者的结果中的临床用途的初步支持。 ClinicalTrials.gov ID:NCT02010619。

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