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首页> 外文期刊>Progress in Artificial Intelligence >Using the Personalized Advantage Index for Individual Treatment Allocation to Blended Treatment or Treatment as Usual for Depression in Secondary Care
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Using the Personalized Advantage Index for Individual Treatment Allocation to Blended Treatment or Treatment as Usual for Depression in Secondary Care

机译:使用个性化优势指数进行单独治疗分配以与常规照顾次级护理的抑郁症进行混合治疗或治疗

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A variety of effective psychotherapies for depression are available, but patients who suffer from depression vary in their treatment response. Combining face-to-face therapies with internet-based elements in the sense of blended treatment is a new approach to treatment for depression. The goal of this study was to answer the following research questions: (1) What are the most important predictors determining optimal treatment allocation to treatment as usual or blended treatment? and (2) Would model-determined treatment allocation using this predictive information and the personalized advantage index (PAI)-approach result in better treatment outcomes? Bayesian model averaging (BMA) was applied to the data of a randomized controlled trial (RCT) comparing the efficacy of treatment as usual and blended treatment in depressive outpatients. Pre-treatment symptomatology and treatment expectancy predicted outcomes irrespective of treatment condition, whereas different prescriptive predictors were found. A PAI of 2.33 PHQ-9 points was found, meaning that patients who would have received the treatment that is optimal for them would have had a post-treatment PHQ-9 score that is two points lower than if they had received the treatment that is suboptimal for them. For 29% of the sample, the PAI was five or greater, which means that a substantial difference between the two treatments was predicted. The use of the PAI approach for clinical practice must be further confirmed in prospective research; the current study supports the identification of specific interventions favorable for specific patients.
机译:可用的各种有效的抑郁心理治疗,但患有抑郁症的患者在治疗反应中变化。将面对面疗法与基于互联网的元素相结合,在混合治疗意义上是一种抑郁症治疗的新方法。本研究的目标是回答以下研究问题:(1)作为通常或混合治疗的治疗确定最佳治疗分配最重要的预测因子是什么? (2)将使用这种预测信息和个性化优势指数(PAI)进行模拟的治疗分配 - 以更好的治疗结果导致效果?贝叶斯模型平均(BMA)应用于随机对照试验(RCT)的数据,比较治疗的疗效和抑郁门诊分裂剂的混合治疗。预治疗症状和治疗期望预测结果与治疗条件无关,而发现不同的规定预测因子。发现了2.33 PHQ-9点的PAI,这意味着患者将获得最佳对他们的治疗的患者会有一个治疗后的PHQ-9分数,这比他们收到的治疗低两点次优为他们。对于29%的样品,PAI为五或更大,这意味着预测了两种治疗之间的显着差异。在预期研究中必须进一步确认使用PAI方法进行临床实践;目前的研究支持识别特定患者的特定干预措施。

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