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Decoding Continuous Variables from Neuroimaging Data: Basic and Clinical Applications

机译:从神经影像数据解码连续变量:基础和临床应用

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摘要

The application of statistical machine learning techniques to neuroimaging data has allowed researchers to decode the cognitive and disease states of participants. The majority of studies using these techniques have focused on pattern classification to decode the type of object a participant is viewing, the type of cognitive task a participant is completing, or the disease state of a participant's brain. However, an emerging body of literature is extending these classification studies to the decoding of values of continuous variables (such as age, cognitive characteristics, or neuropsychological state) using high-dimensional regression methods. This review details the methods used in such analyses and describes recent results. We provide specific examples of studies which have used this approach to answer novel questions about age and cognitive and disease states. We conclude that while there is still much to learn about these methods, they provide useful information about the relationship between neural activity and age, cognitive state, and disease state, which could not have been obtained using traditional univariate analytical methods.
机译:统计机器学习技术在神经影像数据中的应用使研究人员能够解码参与者的认知和疾病状态。使用这些技术的大多数研究都集中在模式分类上,以解码参与者正在查看的对象的类型,参与者正在完成的认知任务的类型或参与者的大脑的疾病状态。但是,新兴的文献机构正在将这些分类研究扩展到使用高维回归方法对连续变量(例如年龄,认知特征或神经心理状态)的值进行解码。这篇综述详细介绍了此类分析中使用的方法,并描述了最新结果。我们提供使用这种方法回答有关年龄,认知和疾病状态的新问题的具体研究实例。我们得出的结论是,尽管对这些方法仍有很多要学习的知识,但它们提供了有关神经活动与年龄,认知状态和疾病状态之间关系的有用信息,而传统单变量分析方法无法获得这些信息。

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