MVPA to enhance the study of rare cognitive events: An investigation of experimental PTSD

K. Niehaus, I. A. Clark, C. Bourne, C. Mackay, E. Holmes, Stephen M. Smith, M. Woolrich, E. Duff
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引用次数: 10

Abstract

Many cognitive processes are challenging to study due to their scarce occurrence. Here we demonstrate how pattern recognition and brain imaging can enhance the study of such processes by providing fast, sensitive, and non-intrusive detection of these events. This can enable efficient experimental and clinical intervention. We focus on the study of traumatic events producing flashbacks associated with post-traumatic stress disorder (PTSD), using an experimental analogue of trauma (a traumatic film). These events are rare and challenging to reliably elicit in experimental settings. We show that a classifier can be built to predict, based upon brain response, which stimuli are likely to induce these rare flashbacks at the point of exposure. An ability to predict these stimuli makes possible the trialing of context-specific preventative clinical interventions. We present results from two independent datasets, outlining key analytic challenges.
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MVPA加强罕见认知事件的研究:实验性PTSD的研究
许多认知过程由于很少发生而具有挑战性。在这里,我们展示了模式识别和脑成像如何通过提供这些事件的快速、敏感和非侵入性检测来加强对这些过程的研究。这可以实现有效的实验和临床干预。我们重点研究创伤事件产生与创伤后应激障碍(PTSD)相关的闪回,使用创伤的实验模拟(创伤电影)。这些事件是罕见的,并且很难在实验环境中可靠地引出。我们展示了可以建立一个分类器来预测,基于大脑的反应,哪些刺激可能会在暴露点引起这些罕见的闪回。预测这些刺激的能力使得针对具体情况的预防性临床干预试验成为可能。我们展示了来自两个独立数据集的结果,概述了关键的分析挑战。
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