A data-driven framework for mapping domains of human neurobiology

被引:0
|
作者
Elizabeth Beam
Christopher Potts
Russell A. Poldrack
Amit Etkin
机构
[1] Stanford University,Wu Tsai Neurosciences Institute
[2] Stanford University,Department of Psychology
[3] Stanford University,Department of Psychiatry and Behavioral Sciences
[4] Stanford University,Department of Linguistics
[5] Alto Neuroscience,undefined
[6] Inc.,undefined
来源
Nature Neuroscience | 2021年 / 24卷
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摘要
Functional neuroimaging has been a mainstay of human neuroscience for the past 25 years. Interpretation of functional magnetic resonance imaging (fMRI) data has often occurred within knowledge frameworks crafted by experts, which have the potential to amplify biases that limit the replicability of findings. Here, we use a computational approach to derive a data-driven framework for neurobiological domains that synthesizes the texts and data of nearly 20,000 human neuroimaging articles. Across multiple levels of domain specificity, the structure–function links within domains better replicate in held-out articles than those mapped from dominant frameworks in neuroscience and psychiatry. We further show that the data-driven framework partitions the literature into modular subfields, for which domains serve as generalizable prototypes of structure–function patterns in single articles. The approach to computational ontology we present here is the most comprehensive characterization of human brain circuits quantifiable with fMRI and may be extended to synthesize other scientific literatures.
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页码:1733 / 1744
页数:11
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