Understanding of a brain spatial map based on threshold-free function dendrogramization
Hyekyoung Lee, Hyejin Kang, Youngmin Huh, Hongyoon Choi, Dong Soo Lee, (for the ADNI)

TL;DR
This paper introduces a threshold-free method for extracting activated brain regions from spatial maps using dendrograms derived from Morse filtration, enhancing interpretability without arbitrary thresholding.
Contribution
The study proposes a novel dendrogram-based approach to visualize and interpret brain spatial maps without thresholding, linking Morse and Rips filtrations for improved analysis.
Findings
Dendrogramization aids understanding of brain maps without thresholding.
Method applied successfully to fMRI and PET data.
Enhances visualization of activation importance ranges.
Abstract
Linear matrix factorizations (LMFs) such as independent component analysis (ICA), principal component analysis (PCA), and their extensions, have been widely used for finding relevant spatial maps in brain imaging data. The last step of an LMF before interpretation is usually to extract the activated brain regions from the map by thresholding. However, it is difficult to determine an appropriate threshold level. Thresholding can remove the underlying properties of spatial maps and their features imposed by the model. In this study, we propose a threshold-free activated region extraction method which involves simplifying a brain spatial map to a dendrogram through Morse filtration. Since a dendrogram is related to the change of clustering structure in Rips filtration, we first show the relationship between the Rips filtration of a graph and the Morse filtration of a function. Then, we…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Neural dynamics and brain function · Topological and Geometric Data Analysis
MethodsPrincipal Components Analysis
