Deep multimodal saliency parcellation of cerebellar pathways: linking microstructure and individual function through explainable multitask learning
Ari Tchetchenian, Leo Zekelman, Yuqian Chen, Jarrett Rushmore, Fan, Zhang, Edward H. Yeterian, Nikos Makris, Yogesh Rathi, Erik Meijering, Yang, Song, Lauren J. O'Donnell

TL;DR
This paper introduces DeepMSP, a deep learning method that integrates microstructure, connectivity, and functional performance data to improve cerebellar pathway parcellation, revealing distinct structure-function relationships.
Contribution
It presents a novel multimodal, multitask deep learning approach for cerebellar pathway parcellation that considers both structural features and individual functional performance.
Findings
Identified multiple cerebellar pathway parcels with unique structure-function saliency patterns.
Demonstrated stability of parcellation results across training folds.
Showed feasibility of linking microstructure and function through explainable deep learning.
Abstract
Parcellation of human cerebellar pathways is essential for advancing our understanding of the human brain. Existing diffusion MRI tractography parcellation methods have been successful in defining major cerebellar fibre tracts, while relying solely on fibre tract structure. However, each fibre tract may relay information related to multiple cognitive and motor functions of the cerebellum. Hence, it may be beneficial for parcellation to consider the potential importance of the fibre tracts for individual motor and cognitive functional performance measures. In this work, we propose a multimodal data-driven method for cerebellar pathway parcellation, which incorporates both measures of microstructure and connectivity, and measures of individual functional performance. Our method involves first training a multitask deep network to predict various cognitive and motor measures from a set of…
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Taxonomy
TopicsVisual Attention and Saliency Detection · Neural Networks and Applications
MethodsSparse Evolutionary Training · Diffusion
