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首页> 外文期刊>Neuroscience: An International Journal under the Editorial Direction of IBRO >Resting-State Functional Connectivity Underlying Costly Punishment: A Machine-Learning Approach
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Resting-State Functional Connectivity Underlying Costly Punishment: A Machine-Learning Approach

机译:休息状态功能连接潜力惩罚:一种机器学习方法

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摘要

A large number of studies have demonstrated costly punishment to unfair events across human societies. However, individuals exhibit a large heterogeneity in costly punishment decisions, whereas the neuropsychological substrates underlying the heterogeneity remain poorly understood. Here, we addressed this issue by applying a multivariate machine-learning approach to compare topological properties of resting-state brain networks as a potential neuromarker between individuals exhibiting different punishment propensities. A linear support vector machine classifier obtained an accuracy of 74.19% employing the features derived from resting-state brain networks to distinguish two groups of individuals with different punishment tendencies. Importantly, the most discriminative features that contributed to the classification were those regions frequently implicated in costly punishment decisions, including dorsal anterior cingulate cortex (dACC) and putamen (salience network), dorsomedial prefrontal cortex (dmPFC) and temporoparietal junction (mentalizing network), and lateral prefrontal cortex (central-executive network). These networks are previously implicated in encoding norm violation and intentions of others and integrating this information for punishment decisions. Our findings thus demonstrated that resting-state functional connectivity (RSFC) provides a promising neuromarker of social preferences, and bolster the assertion that human costly punishment behaviors emerge from interactions among multiple neural systems.
机译:大量研究已经证明代价高昂的惩罚跨越人类社会不公平事件。然而,个体表现出昂贵的处罚决定一个大的异质性,而异质性背后的神经基板仍然知之甚少。在这里,我们通过应用多变量机器学习的方法来休息状态的大脑网络的拓扑性质显示出不同的惩罚倾向的个体之间的潜在neuromarker比较解决了这个问题。线性支持向量机分类器获得采用来自静息状态脑网络衍生区分两种基团与不同的惩罚倾向的个体的特征74.19%的准确度。重要的是,对分类贡献最大的判别特征是这些地区往往牵涉到昂贵的处罚决定,包括背侧前扣带皮层(DACC)和壳(显着性网络),背内侧前额叶皮层(dmPFC)和颞交界(心理化网络)和横向前额叶皮质(中央执行网络)。这些网络编码规范违反和他人的意图,这些信息处罚决定之前整合牵连。因此,我们的研究结果证实,静息态功能连接(RSFC)提供的社会偏好的承诺neuromarker,并加强人力成本高昂的惩罚行为从多个神经系统之间的交互出现的断言。

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