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首页> 外文期刊>Journal of Cognitive Neuroscience >On the Role of Situational Stressors in the Disruption of Global Neural Network Stability during Problem Solving
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On the Role of Situational Stressors in the Disruption of Global Neural Network Stability during Problem Solving

机译:在解决问题过程中情境压力因素在破坏全局神经网络稳定性中的作用

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摘要

When individuals are placed in stressful situations, they are likely to exhibit deficits in cognitive capacity over and above situational demands. Despite this, individuals may still persevere and ultimately succeed in these situations. Little is known, however, about neural network properties that instantiate success or failure in both neutral and stressful situations, particularly with respect to regions integral for problem-solving processes that are necessary for optimal performance on more complex tasks. In this study, we outline how hidden Markov modeling based on multivoxel pattern analysis can be used to quantify unique brain states underlying complex network interactions that yield either successful or unsuccessful problem solving in more neutral or stressful situations. We provide evidence that brain network stability and states underlying synchronous interactions in regions integral for problem-solving processes are key predictors of whether individuals succeed or fail in stressful situations. Findings also suggested that individuals utilize discriminate neural patterns in successfully solving problems in stressful or neutral situations. Findings overall highlight how hidden Markov modeling can provide myriad possibilities for quantifying and better understanding the role of global network interactions in the problem-solving process and how the said interactions predict success or failure in different contexts.
机译:当个人处于压力状态时,他们可能会表现出超出情境需求的认知能力不足。尽管如此,在这些情况下,个人仍然可以坚持并最终取得成功。然而,关于在中性和紧张状态下实例化成功或失败的神经网络特性知之甚少,特别是对于解决问题的过程中不可或缺的区域,这对于在更复杂的任务上实现最佳性能是必不可少的。在这项研究中,我们概述了如何使用基于多体素模式分析的隐马尔可夫建模来量化潜在的复杂网络交互作用下的独特大脑状态,从而在更中性或压力较大的情况下解决问题的成功或失败。我们提供的证据表明,大脑网络的稳定性和解决问题过程中不可或缺的区域中潜在的同步交互状态是个人在压力情况下成败的关键指标。研究结果还表明,在成功解决压力大或中立的情况下,个人可以利用区分的神经模式来成功解决问题。总体发现突出了隐马尔可夫建模如何为量化和更好地理解问题解决过程中的全局网络交互作用提供了无数的可能性,以及所述交互如何预测在不同情况下的成功或失败。

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