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Non-Euclidean Analysis of Joint Variations in Multi-Object Shapes

Authors :
Liu, Zhiyuan
Schulz, Jörn
Taheri, Mohsen
Styner, Martin
Damon, James
Pizer, Stephen
Marron, J. S.
Publication Year :
2021

Abstract

This paper considers joint analysis of multiple functionally related structures in classification tasks. In particular, our method developed is driven by how functionally correlated brain structures vary together between autism and control groups. To do so, we devised a method based on a novel combination of (1) non-Euclidean statistics that can faithfully represent non-Euclidean data in Euclidean spaces and (2) a non-parametric integrative analysis method that can decompose multi-block Euclidean data into joint, individual, and residual structures. We find that the resulting joint structure is effective, robust, and interpretable in recognizing the underlying patterns of the joint variation of multi-block non-Euclidean data. We verified the method in classifying the structural shape data collected from cases that developed and did not develop into Autistic Spectrum Disorder (ASD).

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2109.02230
Document Type :
Working Paper