journal article Feb 23, 2017

Building better biomarkers: brain models in translational neuroimaging

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Published
Feb 23, 2017
Vol/Issue
20(3)
Pages
365-377
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Cite This Article
Choong-Wan Woo, Luke J Chang, Martin A Lindquist, et al. (2017). Building better biomarkers: brain models in translational neuroimaging. Nature Neuroscience, 20(3), 365-377. https://doi.org/10.1038/nn.4478
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