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Main Authors: Saranathan, Manojkumar, Cogliandro, Giuseppina, Hicks, Thomas, Patterson, Dianne, Vachha, Behroze, Cacciola, Alberto
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.21955
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author Saranathan, Manojkumar
Cogliandro, Giuseppina
Hicks, Thomas
Patterson, Dianne
Vachha, Behroze
Cacciola, Alberto
author_facet Saranathan, Manojkumar
Cogliandro, Giuseppina
Hicks, Thomas
Patterson, Dianne
Vachha, Behroze
Cacciola, Alberto
contents Motivation: Lack of tools for comprehensive and complete segmentation of deep grey nuclei using a single software for reproducibility and repeatability Goal(s): A fast accurate and robust method for segmentation of deep grey nuclei (thalamic nuclei, basal ganglia, claustrum, red nucleus) from structural T1 MRI data at conventional field strengths Approach: We leverage the improved contrast of white-matter-nulled imaging by using the recently proposed Histogram-based Polynomial Synthesis (HIPS) to synthesize WMn-like images from standard T1 and then use a multi-atlas segmentation with joint label fusion to segment deep grey nuclei. Results: The method worked robustly on all field strengths (1.5/3/7) and Dice coefficients of 0.7 or more were achieved for all structures compared against manual segmentation ground truth. Impact: This method facilitates careful investigation of the role of deep grey nuclei by enabling the use of conventional T1 data from large public databases, which has not been possible, hitherto, due to lack of robust reproducible segmentation tools.
format Preprint
id arxiv_https___arxiv_org_abs_2503_21955
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Comprehensive segmentation of deep grey nuclei from structural MRI data
Saranathan, Manojkumar
Cogliandro, Giuseppina
Hicks, Thomas
Patterson, Dianne
Vachha, Behroze
Cacciola, Alberto
Image and Video Processing
Computer Vision and Pattern Recognition
Motivation: Lack of tools for comprehensive and complete segmentation of deep grey nuclei using a single software for reproducibility and repeatability Goal(s): A fast accurate and robust method for segmentation of deep grey nuclei (thalamic nuclei, basal ganglia, claustrum, red nucleus) from structural T1 MRI data at conventional field strengths Approach: We leverage the improved contrast of white-matter-nulled imaging by using the recently proposed Histogram-based Polynomial Synthesis (HIPS) to synthesize WMn-like images from standard T1 and then use a multi-atlas segmentation with joint label fusion to segment deep grey nuclei. Results: The method worked robustly on all field strengths (1.5/3/7) and Dice coefficients of 0.7 or more were achieved for all structures compared against manual segmentation ground truth. Impact: This method facilitates careful investigation of the role of deep grey nuclei by enabling the use of conventional T1 data from large public databases, which has not been possible, hitherto, due to lack of robust reproducible segmentation tools.
title Comprehensive segmentation of deep grey nuclei from structural MRI data
topic Image and Video Processing
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.21955