Test-Retest Reliability of Two Computationally-Characterised Affective Bias Tasks.

Computational psychiatry (Cambridge, Mass.) Pub Date : 2024-12-18 eCollection Date: 2024-01-01 DOI:10.5334/cpsy.92
Alexandra C Pike, Katrina H T Tan, Hoda Tromblee, Michelle Wing, Oliver J Robinson
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Abstract

Affective biases are commonly seen in disorders such as depression and anxiety, where individuals may show attention towards and preferential processing of negative or threatening stimuli. Affective biases have been shown to change with effective intervention: randomized controlled trials into these biases and the mechanisms that underpin them may allow greater understanding of how interventions can be improved and their success be maximized. For such trials to be informative, we must have reliable ways of measuring affective bias over time, so we can detect how and whether they are altered by interventions: the test-retest reliability of our measures puts an upper bound on our ability to detect any changes. In this online study we therefore examined the test-retest reliability of two behavioural affective bias tasks (an 'Ambiguous Midpoint' and a 'Go-Nogo' task). 58 individuals recruited from the general population completed the tasks twice, with at least 14 days in between sessions. We analysed the reliability of both summary statistics and parameters from computational models using Pearson's correlations and intra-class correlations. Standard summary statistic measures from these affective bias tasks had reliabilities ranging from 0.18 (poor) to 0.49 (moderate). Parameters from computational modelling of these tasks were in many cases less reliable than summary statistics. However, embedding the covariance between sessions within the generative modelling framework resulted in higher estimates of stability. We conclude that measures from these affective bias tasks are moderately reliable, but further work to improve the reliability of these tasks would improve still further our ability to draw inferences in randomized trials.

两个计算特征的情感偏差任务的重测信度。
情感偏见常见于抑郁症和焦虑症等疾病,在这些疾病中,个体可能会对负面或威胁性刺激表现出关注和优先处理。情感性偏见已被证明会随着有效的干预而改变:针对这些偏见及其支撑机制的随机对照试验可能会让我们更好地了解如何改进干预措施并使其成功最大化。为了使这些试验具有信息量,我们必须有可靠的方法来测量情感偏差随时间的变化,这样我们就可以检测它们是如何以及是否被干预改变的:我们测量的测试-再测试可靠性为我们检测任何变化的能力提供了上限。因此,在这项在线研究中,我们检验了两个行为情感偏差任务(“模糊中点”和“Go-Nogo”任务)的重测信度。从普通人群中招募的58个人完成了两次任务,每次任务之间至少间隔14天。我们使用Pearson相关性和类内相关性分析了汇总统计数据和计算模型参数的可靠性。来自这些情感偏差任务的标准汇总统计量的信度范围从0.18(差)到0.49(中等)。这些任务的计算建模参数在许多情况下不如汇总统计可靠。然而,在生成建模框架内嵌入会话之间的协方差导致更高的稳定性估计。我们的结论是,这些情感偏差任务的测量值是中等可靠的,但进一步提高这些任务的可靠性的工作将进一步提高我们在随机试验中得出推论的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.30
自引率
0.00%
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审稿时长
17 weeks
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