Multi-voxel pattern analysis for developmental cognitive neuroscientists

IF 4.6 2区 医学 Q1 NEUROSCIENCES
João F. Guassi Moreira , Jennifer A. Silvers
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引用次数: 0

Abstract

The current prevailing approaches to analyzing task fMRI data in developmental cognitive neuroscience are brain connectivity and mass univariate task-based analyses, used either in isolation or as part of a broader analytic framework (e.g., BWAS). While these are powerful tools, it is somewhat surprising that multi-voxel pattern analysis (MVPA) is not more common in developmental cognitive neuroscience given its enhanced ability to both probe neural population codes and greater sensitivity relative to the mass univariate approach. Omitting MVPA methods might represent a missed opportunity to leverage a suite of tools that are uniquely poised to reveal mechanisms underlying brain development. The goal of this review is to spur awareness and adoption of MVPA in developmental cognitive neuroscience by providing a practical introduction to foundational MVPA concepts. We begin by defining MVPA and explain why examining multi-voxel patterns of brain activity can aid in understanding the developing human brain. We then survey four different types of MVPA: Decoding, representational similarity analysis (RSA), pattern expression, and voxel-wise encoding models. Each variant of MVPA is presented with a conceptual overview of the method followed by practical considerations and subvariants thereof. We go on to highlight the types of developmental questions that can be answered by MPVA, discuss practical matters in MVPA implementation germane to developmental cognitive neuroscientists, and make recommendations for integrating MVPA with the existing analytic ecosystem in the field.
发展认知神经科学家的多体素模式分析
在发育认知神经科学中,目前分析任务功能磁共振成像数据的流行方法是脑连通性和大规模单变量任务分析,这些分析可以单独使用,也可以作为更广泛的分析框架(例如,BWAS)的一部分。虽然这些都是强大的工具,但令人惊讶的是,多体素模式分析(MVPA)在发育认知神经科学中并不常见,因为它具有探测神经种群密码的增强能力,并且相对于大规模单变量方法具有更高的灵敏度。忽略MVPA方法可能意味着错失了利用一套独特的工具来揭示大脑发育机制的机会。本综述的目的是通过提供基本MVPA概念的实用介绍,促进发展认知神经科学对MVPA的认识和采用。我们从定义MVPA开始,并解释为什么检查大脑活动的多体素模式可以帮助理解发育中的人类大脑。然后,我们调查了四种不同类型的MVPA:解码、表示相似性分析(RSA)、模式表达和体素编码模型。MVPA的每个变体都提出了该方法的概念概述,然后是实际考虑因素及其子变体。我们继续强调MPVA可以回答的发展问题的类型,讨论与发展认知神经科学家相关的MVPA实施中的实际问题,并提出将MVPA与该领域现有的分析生态系统相结合的建议。
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来源期刊
CiteScore
7.60
自引率
10.60%
发文量
124
审稿时长
6-12 weeks
期刊介绍: The journal publishes theoretical and research papers on cognitive brain development, from infancy through childhood and adolescence and into adulthood. It covers neurocognitive development and neurocognitive processing in both typical and atypical development, including social and affective aspects. Appropriate methodologies for the journal include, but are not limited to, functional neuroimaging (fMRI and MEG), electrophysiology (EEG and ERP), NIRS and transcranial magnetic stimulation, as well as other basic neuroscience approaches using cellular and animal models that directly address cognitive brain development, patient studies, case studies, post-mortem studies and pharmacological studies.
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