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首页> 外文期刊>Cortex: A Journal Devoted to the Study of the Nervous System and Behavior >Pattern classification differentiates decision of intertemporal choices using multi-voxel pattern analysis
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Pattern classification differentiates decision of intertemporal choices using multi-voxel pattern analysis

机译:模式分类使用多体素图案分析来区分跨期选择的决策

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摘要

In daily life, individuals frequently make trade-offs between the small-but-immediate benefits and large-but-delayed profits. This type of decision is known as intertemporal choice. Previous studies have uncovered the neurobiological mechanism of the inter temporal choice, but it still remains unclear how the patterns of brain activity predict the decisions of intertemporal choices. To fill this gap, we used functional magnetic resonance imaging (fMRI), in conjunction with the machine learning technique of multi-voxel pattern analysis (MVPA), to ascertain the predictive capability of the neuronal pattern for classifying individuals' intertemporal decisions across two independent samples. To further probe how this neuronal pattern worked in predicting individual intertemporal decision, we drew on the Power Atlas to examine the accuracies of classification within each regional mask as well. Classification findings showed that the pattern of neuronal activity over the whole-brain can correctly classify the accuracies of individual decisions up to 84.3%. Encouragingly, further analysis shows that the neuronal information encoded in three brain functional networks can predict individuals' decisions with significant discriminative power in cross-samples, namely the valuation network (e.g., striatum), the cognitive control network (e.g., dorsolateral prefrontal cortex) and the episodic prospection network (e.g., amygdala, parahippocampus gyms, insula). Collectively, these findings advance our comprehension of the neuronal mechanism of human intertemporal decisions, and substantially reshape our understanding for this cardinal behaviour from behavioural-brain scheme to brain-behavioural configuration. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在日常生活中,个人经常在小小无于的福利和大而延迟的利润之间进行权衡。这种决定被称为跨期选择。以前的研究发现了颞型选择的神经生物学机制,但仍然尚不清楚脑活动模式如何预测跨期选择的决定。为了填补这种差距,我们使用功能磁共振成像(FMRI),与多体素图案分析(MVPA)的机器学习技术结合,以确定神经元模式的预测能力,用于对两个独立的两个独立的跨期决定进行分类样品。进一步探讨这种神经元模式如何在预测各个跨期决定时,我们吸引了电力地图集,以检查每个区域面罩内的分类的准确性。分类结果表明,全部大脑中的神经元活动模式可以正确地分类个别决策的准确性高达84.3%。令人鼓舞,进一步的分析表明,在三个脑功能网络中编码的神经元信息可以预测具有在跨样品中具有显着辨别力的个体的决定,即估值网络(例如,纹状体),认知控制网络(例如,背侧前额外切片)和剧目的博览网络(例如,Amygdala,Parahippocampus健身房,Insula)。集体,这些发现推动了我们对人类跨期决策的神经元机制的理解,并大大重塑了从行为 - 大脑方案到脑行为配置的基本行为的理解。 (c)2018年elestvier有限公司保留所有权利。

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