Forecasting the onset of depression with limited baseline data only: A comparison of a person-specific and a multilevel modeling based exponentially weighted moving average approach.

IF 3.3 2区 心理学 Q1 PSYCHOLOGY, CLINICAL
Evelien Schat, Francis Tuerlinckx, Marieke J Schreuder, Bart De Ketelaere, Eva Ceulemans
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引用次数: 0

Abstract

The onset of depressive episodes is preceded by changes in mean levels of affective experiences, which can be detected using the exponentially weighted moving average procedure on experience sampling method (ESM) data. Applying the exponentially weighted moving average procedure requires sufficient baseline data from the person under study in healthy times, which is needed to calculate a control limit for monitoring incoming ESM data. It is, however, not trivial to obtain sufficient baseline data from a single person. We therefore investigate whether historical ESM data from healthy individuals can help establish an adequate control limit for the person under study via multilevel modeling. Specifically, we focus on the case in which there is very little baseline data available of the person under study (i.e., up to 7 days). This multilevel approach is compared with the traditional, person-specific approach, where estimates are obtained using the person's available baseline data. Predictive performance in terms of Matthews correlation coefficient did not differ much between the approaches; however, the multilevel approach was more sensitive at detecting mean changes. This implies that for low-cost and nonharmful interventions, the multilevel approach may prove particularly beneficial. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

利用有限的基线数据预测抑郁症的发病:基于指数加权移动平均法的个人特定方法与多层次建模方法的比较。
抑郁症发作之前,情绪体验的平均水平会发生变化,而这种变化可以通过经验采样法(ESM)数据的指数加权移动平均程序检测出来。应用指数加权移动平均法需要被研究者在健康状态下提供足够的基线数据,这就需要计算出一个控制限值,用于监测传入的 ESM 数据。然而,要从一个人身上获得足够的基线数据并非易事。因此,我们研究了健康人的历史 ESM 数据是否有助于通过多层次建模为研究对象建立适当的控制限。具体来说,我们将重点放在研究对象基线数据极少的情况下(即最多 7 天)。我们将这种多层次方法与传统的、针对具体个人的方法进行了比较,后者是通过个人可用的基线数据来获得估计值。就马修斯相关系数而言,两种方法的预测性能差别不大;但是,多层次方法在检测平均变化方面更为灵敏。这意味着,对于低成本和非伤害性的干预措施,多层次方法可能证明特别有益。(PsycInfo Database Record (c) 2024 APA, 版权所有)。
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来源期刊
Psychological Assessment
Psychological Assessment PSYCHOLOGY, CLINICAL-
CiteScore
5.70
自引率
5.60%
发文量
167
期刊介绍: Psychological Assessment is concerned mainly with empirical research on measurement and evaluation relevant to the broad field of clinical psychology. Submissions are welcome in the areas of assessment processes and methods. Included are - clinical judgment and the application of decision-making models - paradigms derived from basic psychological research in cognition, personality–social psychology, and biological psychology - development, validation, and application of assessment instruments, observational methods, and interviews
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