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2025-01-12-machnio25a.md

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title openreview software abstract layout series publisher issn id month tex_title firstpage lastpage page order cycles bibtex_author author date address container-title volume genre issued pdf extras
Deep Learning for Localization of White Matter Lesions in Neurological Diseases
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White Matter (WM) lesions, commonly observed as hyperintensities on FLAIR MRIs or hypointensities on T1-weighted images, are associated with neurological diseases. The spatial distribution of these lesions is linked to an increased risk of developing neurological conditions, emphasizing the need for location-based analyses. Traditional manual identification and localization of WM lesions are labor-intensive and time-consuming, highlighting the need for automated solutions. In this study, we propose novel deep learning-based methods for automated WM lesion segmentation and localization. Our approach utilizes state-of-the-art models to concurrently segment WM lesions and anatomical WM regions, providing detailed insights into their distribution within the brain’s anatomical structure. By applying k-means clustering to the regional WM lesion load, distinct subject groups are identified to be associated with various neurological conditions, validating the method’s alignment with established clinical findings. The robustness and adaptability of our method across different scanner types and imaging protocols make it a valuable tool for research and clinical practice, offering potential improvements in diagnostic efficiency and patient care.
inproceedings
Proceedings of Machine Learning Research
PMLR
2640-3498
machnio25a
0
Deep Learning for Localization of White Matter Lesions in Neurological Diseases
155
167
155-167
155
false
Machnio, Julia and Nielsen, Mads and Ghazi, Mostafa Mehdipour
given family
Julia
Machnio
given family
Mads
Nielsen
given family
Mostafa Mehdipour
Ghazi
2025-01-12
Proceedings of the 6th Northern Lights Deep Learning Conference (NLDL)
265
inproceedings
date-parts
2025
1
12