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首页> 外文期刊>Journal of affective disorders >Predicting relapse in major depressive disorder using patient-reported outcomes of depressive symptom severity, functioning, and quality of life in the individual burden of illness index for depression (IBI-D)
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Predicting relapse in major depressive disorder using patient-reported outcomes of depressive symptom severity, functioning, and quality of life in the individual burden of illness index for depression (IBI-D)

机译:使用患者报告的抑郁症状严重程度,功能和生活质量在个体抑郁症负担指数中的预测结果,预测重度抑郁症的复发(IBI-D)

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摘要

Background: Patients with Major Depressive Disorder (MDD) often experience unexpected relapses, despite achieving remission. This study examines the utility of a single multidimensional measure that captures variance in patient-reported Depressive Symptom Severity, Functioning, and Quality of Life (QOL), in predicting MDD relapse. Methods: Complete data from remitted patients at the completion of 12 weeks of citalopram in the STAR D study were used to calculate the Individual Burden of Illness index for Depression (IBI-D), and predict subsequent relapse at six (n = 956), nine (n = 778), and twelve months (n =479) using generalized linear models. Results: Depressive Symptom Severity, Functioning, and QOL were all predictors of subsequent relapse. Using Akaike information criteria (AIC), the IBI-D provided a good model for relapse even when Depressive Symptom Severity, Functioning, and QOL were combined in a single model. Specifically, an increase of one in the IBI-D increased the odds ratio of relapse by 2.5 at 6 months (/3=0921 - 0194, z=476, p <2 x 10-6), by 284 at 9 months (/3=1045 - 022, z=474, p <2.2 x 10-6), and by 4.1 at 12 months (/3=141 - 029, z=479, p < 1.7 x 10-6). Limitations: Self-report poses a risk to measurement precision. Using highly valid and reliable measures could mitigate this risk. The IBI-D requires time and effort for filling out the scales and index calculation. Technological solutions could help ease these burdens. The sample suffered from attrition. Separate analysis of dropouts would be helpful. Conclusions: Incorporating patient-reported outcomes of Functioning and QOL in addition to Depressive Symptom Severity in the IBI-D is useful in assessing the full burden of illness and in adequately predicting relapse, in MDD.
机译:背景:重度抑郁症(MDD)患者尽管获得了缓解,但经常会出现意料之外的复发。这项研究检查了一个单一的多维测量方法的效用,该方法可捕获患者报告的抑郁症状的严重程度,功能和生活质量(QOL)的差异,以预测MDD复发。方法:在STAR D研究中,在西酞普兰完成12周时从缓解的患者中获得的完整数据用于计算抑郁症的个人疾病负担指数(IBI-D),并预测随后的六点复发(n = 956),使用广义线性模型,则为9个(n = 778)和12个月(n = 479)。结果:抑郁症状的严重程度,功能和生活质量都是随后复发的预测因素。使用Akaike信息标准(AIC),即使将抑郁症状的严重程度,功能和QOL合并在一个模型中,IBI-D也提供了一个良好的复发模型。具体来说,IBI-D的增加1会使复发的比值比在6个月时增加2.5(/ 3 = 0921-0194,z = 476,p <2 x 10-6),在9个月时增加284(/ 3 = 1045-022,z = 474,p <2.2 x 10-6),并在12个月时乘以4.1(/ 3 = 141-029,z = 479,p <1.7 x 10-6)。局限性:自我报告会影响测量精度。使用高度有效和可靠的措施可以减轻这种风险。 IBI-D需要时间和精力来填写量表和指数计算。技术解决方案可以帮助减轻这些负担。样品磨损。辍学的单独分析将很有帮助。结论:在IBI-D中,将患者报告的功能和QOL的结果与抑郁症状的严重程度相结合,有助于评估MDD的全部疾病负担并充分预测复发。

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