False discovery rate control in magnetic resonance imaging studies via Markov random fields
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Nguyen, Hien D
McLachlan, Geoffrey J
Cherbuin, Nicolas
Janke, Andrew L
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Institute of Electrical and Electronics Engineers
Abstract
Magnetic resonance imaging (MRI) is widely used to study population effects of factors on brain morphometry. Inference from such studies often require the simultaneous testing of millions of statistical hypotheses. Such scale of inference is
known to lead to large numbers of false positive results. Control of the false discovery rate (FDR) is commonly employed to
mitigate against such outcomes. However, current methodologies in FDR control only account for the marginal significance of
hypotheses, and are not able to explicitly account for spatial relationships, such as those between MRI voxels. In this article,
we present novel methods that incorporate spatial dependencies into the process of controlling FDR through the use of Markov
random fields. Our method is able to automatically estimate the relationships between spatially dependent hypotheses by means of maximum pseudo-likelihood estimation and the pseudo-likelihood
information criterion. We show that our methods have desirable statistical properties with regards to FDR control and are able to outperform noncontexual methods in simulations of dependent hypothesis scenarios. Our method is applied to investigate the effects of aging on brain morphometry using data from the PATH
study. Evidence of whole brain and component level effects that correspond to similar findings in the literature is found in our
investigation.
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IEEE Transactions on Medical Imaging PP. 99 (2014): 1-15