University of Bonn, Transdisciplinary Research Area "Life and Health", Hertz Chair for Artificial Intelligence and Neuroscience, Bonn, Germany.
Wellcome Centre for Human Neuroimaging, University College London, London, UK.
Behav Res Methods. 2024 Sep;56(6):6119-6129. doi: 10.3758/s13428-024-02341-3. Epub 2024 Feb 29.
Fear conditioning, also termed threat conditioning, is a commonly used learning model with clinical relevance. Quantification of threat conditioning in humans often relies on conditioned autonomic responses such as skin conductance responses (SCR), pupil size responses (PSR), heart period responses (HPR), or respiration amplitude responses (RAR), which are usually analyzed separately. Here, we investigate whether inter-individual variability in differential conditioned responses, averaged across acquisition, exhibits a multi-dimensional structure, and the extent to which their linear combination could enhance the precision of inference on whether threat conditioning has occurred. In a mega-analytic approach, we re-analyze nine data sets including 256 individuals, acquired by the group of the last author, using standard routines in the framework of psychophysiological modeling (PsPM). Our analysis revealed systematic differences in effect size between measures across datasets, but no evidence for a multidimensional structure across various combinations of measures. We derive the statistically optimal weights for combining the four measures and subsets thereof, and we provide out-of-sample performance metrics for these weights, accompanied by bias-corrected confidence intervals. We show that to achieve the same statistical power, combining measures allows for a relevant reduction in sample size, which in a common scenario amounts to roughly 24%. To summarize, we demonstrate a one-dimensional structure of threat conditioning measures, systematic differences in effect size between measures, and provide weights for their optimal linear combination in terms of maximal retrodictive validity.
恐惧条件反射,也称为威胁条件反射,是一种具有临床相关性的常用学习模型。人类威胁条件反射的量化通常依赖于条件自主反应,如皮肤电反应 (SCR)、瞳孔大小反应 (PSR)、心率反应 (HPR) 或呼吸幅度反应 (RAR),这些反应通常分别进行分析。在这里,我们研究了在获得过程中平均的不同条件反应的个体间变异性是否表现出多维结构,以及它们的线性组合在多大程度上可以提高关于威胁条件反射是否发生的推断的精度。在一个 mega 分析方法中,我们使用最后一位作者所在小组的心理生理建模 (PsPM) 框架中的标准例程,重新分析了包括 256 个人的九个数据集。我们的分析揭示了不同数据集之间测量的效应大小存在系统差异,但没有证据表明各种测量组合存在多维结构。我们推导出了组合四个测量及其子集的统计最优权重,并为这些权重提供了样本外性能指标,同时附有偏差校正置信区间。我们表明,为了达到相同的统计功效,组合测量可以大大减少样本量,在常见情况下,大约减少 24%。总之,我们证明了威胁条件反射测量的一维结构、测量之间的效应大小存在系统差异,并提供了最佳线性组合的权重,以获得最大的回溯有效性。