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首页> 外文期刊>Expert Systems with Application >Analysis of multimodal physiological signals within and between individuals to predict psychological challenge vs. threat
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Analysis of multimodal physiological signals within and between individuals to predict psychological challenge vs. threat

机译:对个体内部和个体之间的多模式生理信号进行分析以预测心理挑战与威胁

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Challenge and threat characterize distinct patterns of physiological response to a motivated performance task where the response patterns vary as a function of an individual's evaluation of task demands relative to his/her available resources to cope with the demands. Challenge and threat responses during motivated performance have been used to understand psychological, behavioral, and biological phenomena across many motivated performance domains. In this study, we aimed to investigate individual and group-level variations in physiological responding across a series of motivated performance tasks that vary in difficulty. The proposed approach is motivated by documented individual differences in physiological responses observed in motivated performance tasks, such that we first focus on individual differences in physiological responses rather than group-level comparisons. Then, through our analysis of individuals we identify sub-groups (i.e., clusters) of individuals that share common physiological patterns across tasks of varying difficulty and we perform across-subject analysis within each cluster. This is distinct from existing studies which typically do not examine individual vs. subgroup-specific patterns of physiological activity. Such an approach enables us to identify patterns in physiological responses that can be used to predict self-reported judgments of challenge vs. threat with higher accuracy in each subgroup compared to an analysis that includes the entire sample population as a single group. Specifically, three hypotheses were tested: (H1) individuals will have different sets of physiological patterns (features) across tasks of varying difficulty; (H2) there will be subgroups of individuals who share common salient physiological features across the subgroup clusters that differentiate their physiological responding across tasks of varying difficulty; and (H3) the accuracy of predicting self-reported judgments of challenge vs. threat across individuals will be higher within each subgroup with shared salient physiological features than across all subgroups or the entire sample with all computed features. To test these hypotheses, we developed an integrated analytic framework for multimodal physiological data analysis. We employed data from an existing experiment in which participants completed three mental arithmetic tasks of increasing difficulty during which different modalities of physiological data were collected. Analyses revealed three subgroups of participants who shared common features that best differentiated their within-individual physiological response patterns across tasks. Support vector machine (SVM) classifiers were trained using both shared features within each group and all computed features to predict challenge vs. threat states. Results showed that, the within-group classification model using group common features achieved higher self-report prediction accuracy compared to an alternative model trained on data from all participants without feature selection. (C) 2019 Elsevier Ltd. All rights reserved.
机译:挑战和威胁表征了对主动执行任务的生理反应的不同模式,其中响应模式根据个人对任务需求的评估相对于他/她可用资源的能力而变化,以应对需求。激励表现期间的挑战和威胁反应已用于了解许多激励表现域中的心理,行为和生物学现象。在这项研究中,我们旨在调查在一系列动机性表现任务(难度各不相同)中生理和心理反应的个体和群体水平变化。提出的方法是通过记录在有动机的执行任务中观察到的生理反应中的个体差异来激发的,因此,我们首先关注生理反应中的个体差异,而不是小组水平的比较。然后,通过对个体的分析,我们确定了在不同难度的任务之间具有相同生理模式的个体子群(即群),并在每个群内进行了跨主题分析。这与现有研究不同,现有研究通常不检查个体或亚组特定的生理活动模式。这种方法使我们能够识别生理反应中的模式,与将整个样本群体作为一个整体进行分析相比,该模式可用于预测每个子组中自我报告的挑战与威胁判断。具体来说,测试了三个假设:(H1)个体在不同难度的任务中将具有不同的生理模式(特征)集; (H2)将有个体子群,这些个体在子群群中具有共同的显着生理特征,从而在不同难度的任务之间区分其生理反应; (H3)在具有共同的显着生理特征的每个子组中,对个体进行自我报告的关于挑战与威胁的判断的预测准确性将高于所有子组或具有所有计算出的特征的整个样本。为了检验这些假设,我们开发了用于多模式生理数据分析的集成分析框架。我们采用了来自现有实验的数据,在该实验中,参与者完成了三种难度越来越大的心理算术任务,在此期间收集了不同形式的生理数据。分析揭示了三个参加者小组,他们具有共同的特征,这些共同的特征可以最好地区分他们在各个任务中的个体内部生理反应模式。支持向量机(SVM)分类器使用每个组内的共享特征和所有计算出的特征进行训练,以预测挑战与威胁状态。结果表明,与基于所有参与者的未经特征选择的数据训练的替代模型相比,使用组共同特征的组内分类模型实现了更高的自我报告预测准确性。 (C)2019 Elsevier Ltd.保留所有权利。

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