Towards Population Scale Testis Volume Segmentation in DIXON MRI
Testis size is known to be one of the main predictors of male fertility, usually assessed in clinical workup via palpation or imaging. Despite its potential, population-level evaluation of testicular volume using imaging remains underexplored. Previous studies, limited by small and biased datasets,...
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Zusammenfassung: | Testis size is known to be one of the main predictors of male fertility,
usually assessed in clinical workup via palpation or imaging. Despite its
potential, population-level evaluation of testicular volume using imaging
remains underexplored. Previous studies, limited by small and biased datasets,
have demonstrated the feasibility of machine learning for testis volume
segmentation. This paper presents an evaluation of segmentation methods for
testicular volume using Magnet Resonance Imaging data from the UKBiobank. The
best model achieves a median dice score of $0.87$, compared to median dice
score of $0.83$ for human interrater reliability on the same dataset, enabling
large-scale annotation on a population scale for the first time. Our overall
aim is to provide a trained model, comparative baseline methods, and annotated
training data to enhance accessibility and reproducibility in testis MRI
segmentation research. |
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DOI: | 10.48550/arxiv.2410.22866 |