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Using network analysis for the prediction of treatment dropout in patients with mood and anxiety disorders: A methodological proof-of-concept study

机译:使用网络分析对情绪和焦虑症患者的治疗辍学预测:一种方法论概念研究

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There are large health, societal, and economic costs associated with attrition from psychological services. The recently emerged, innovative statistical tool of complex network analysis was used in the present proof-of-concept study to improve the prediction of attrition. Fifty-eight patients undergoing psychological treatment for mood or anxiety disorders were assessed using Ecological Momentary Assessments four times a day for two weeks before treatment (3,248 measurements). Multilevel vector autoregressive models were employed to compute dynamic symptom networks. Intake variables and network parameters (centrality measures) were used as predictors for dropout using machine-learning algorithms. Networks for patients differed significantly between completers and dropouts. Among intake variables, initial impairment and sex predicted dropout explaining 6% of the variance. The network analysis identified four additional predictors: Expected force of being excited, outstrength of experiencing social support, betweenness of feeling nervous, and instrength of being active. The final model with the two intake and four network variables explained 32% of variance in dropout and identified 47 out of 58 patients correctly. The findings indicate that patients’ dynamic network structures may improve the prediction of dropout. When implemented in routine care, such prediction models could identify patients at risk for attrition and inform personalized treatment recommendations.
机译:与心理服务的消耗有大量的健康,社会和经济成本。最近出现的复杂网络分析的创新统计工具用于本概念证明研究,以改善磨损预测。使用生态瞬间评估评估了在治疗前两周的生态瞬时评估进行了生态瞬间评估进行心理或焦虑症的心理治疗患者(3,248次)。使用多级矢量自动增加模型来计算动态症状网络。进气变量和网络参数(中心度测量)用作使用机器学习算法辍学的预测器。对于患者之间的网络在完整者和辍学之间有显着不同。在进气变量中,初始损伤和性别预测辍学解释了6%的方差。网络分析确定了四个额外的预测因子:兴奋的预期力量,经历社会支持的强度,感觉紧张之间的性能和活跃的engrence。具有两种摄入和四个网络变量的最终模型在辍学方面解释了32%的差异,并正确确定了58名患者中的47名。调查结果表明,患者的动态网络结构可以改善辍学的预测。当在常规护理中实施时,这种预测模型可以识别患者的损失,并告知个性化的治疗建议。

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