Title of article :
Effect-Size Estimation Using Semiparametric Hierarchical Mixture Models in Disease-Association Studies with Neuroimaging Data
Author/Authors :
Emoto, Ryo Department of Biostatistics - Nagoya University Graduate School of Medicine - Nagoya, Japan , Kawaguchi, Atsushi Faculty of Medicine - Saga University - Saga, Japan , Takahashi, Kunihiko Tokyo Medical and Dental University - Tokyo, Japan , Matsui, Shigeyuki Department of Biostatistics - Nagoya University Graduate School of Medicine - Nagoya, Japan
Abstract :
In disease-association studies using neuroimaging data, evaluating the biological or clinical significance of individual associations
requires not only detection of disease-associated areas of the brain but also estimation of the magnitudes of the associations or effect
sizes for individual brain areas. In this paper, we propose a model-based framework for voxel-based inferences under spatial
dependency in neuroimaging data. Specifically, we employ hierarchical mixture models with a hidden Markov random field
structure to incorporate the spatial dependency between voxels. A nonparametric specification is proposed for the effect size
distribution to flexibly estimate the underlying effect size distribution. Simulation experiments demonstrate that compared with
a naive estimation method, the proposed methods can substantially reduce the selection bias in the effect size estimates of the
selected voxels with the greatest observed associations. An application to neuroimaging data from an Alzheimer’s disease study
is provided.
Keywords :
Effect-Size , Semiparametric , Data , Disease-Association
Journal title :
Computational and Mathematical Methods in Medicine