Modeling longitudinal voxelwise feature change in normal aging with spatial-anatomical regularization

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Abstract

Image voxel/vertex-wise feature in the brain is widely used for automatic classification or significant region detection of various dementia syndromes. In these studies, the non-imaging variables, such as age, will affect the results, but may be uninterested to the clinical applications. Imaging data can be considered as a combination of the confound variable (e.g. age) and the variable of clinical interest (e.g. AD diagnosis). However, non-imaging confound variable is not well dealt in each voxel. In this paper, we proposed a spatial-anatomical regularized parametric function fitting approach that explicitly modeling the relationship between the voxelwise feature and the confound variable. By adding the spatial-anatomical regularization, our model not only obtains a better voxelwise feature estimation, but also generates a more interpretable parameter map to help understand the effect of confound variable on imaging features. Besides the commonly used linear model, we also develop a spatial-anatomical regularized voxelwise general logistic model to investigate deeper of the aging process in gray matter and white matter density map.

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Sun, Z., Xu, W., Wang, S., Xu, J., & Qiao, Y. (2018). Modeling longitudinal voxelwise feature change in normal aging with spatial-anatomical regularization. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 11072 LNCS, pp. 403–410). Springer Verlag. https://doi.org/10.1007/978-3-030-00931-1_46

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