A Comprehensive Framework for Automated Segmentation of Perivascular Spaces in Brain MRI with the nnU-Net
Background: Enlargement of perivascular spaces (PVS) is common in neurodegenerative disorders including cerebral small vessel disease, Alzheimer's disease, and Parkinson's disease. PVS enlargement may indicate impaired clearance pathways and there is a need for reliable PVS detection metho...
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Zusammenfassung: | Background: Enlargement of perivascular spaces (PVS) is common in
neurodegenerative disorders including cerebral small vessel disease,
Alzheimer's disease, and Parkinson's disease. PVS enlargement may indicate
impaired clearance pathways and there is a need for reliable PVS detection
methods which are currently lacking. Aim: To optimise a widely used deep
learning model, the no-new-UNet (nnU-Net), for PVS segmentation. Methods: In 30
healthy participants (mean$\pm$SD age: 50$\pm$18.9 years; 13 females),
T1-weighted MRI images were acquired using three different protocols on three
MRI scanners (3T Siemens Tim Trio, 3T Philips Achieva, and 7T Siemens
Magnetom). PVS were manually segmented across ten axial slices in each
participant. Segmentations were completed using a sparse annotation strategy.
In total, 11 models were compared using various strategies for image handling,
preprocessing and semi-supervised learning with pseudo-labels. Model
performance was evaluated using 5-fold cross validation (5FCV). The main
performance metric was the Dice Similarity Coefficient (DSC). Results: The
voxel-spacing agnostic model (mean$\pm$SD DSC=64.3$\pm$3.3%) outperformed
models which resampled images to a common resolution (DSC=40.5-55%). Model
performance improved substantially following iterative label cleaning
(DSC=85.7$\pm$1.2%). Semi-supervised learning with pseudo-labels (n=12,740)
from 18 additional datasets improved the agreement between raw and predicted
PVS cluster counts (Lin's concordance correlation coefficient=0.89,
95%CI=0.82-0.94). We extended the model to enable PVS segmentation in the
midbrain (DSC=64.3$\pm$6.5%) and hippocampus (DSC=67.8$\pm$5%). Conclusions:
Our deep learning models provide a robust and holistic framework for the
automated quantification of PVS in brain MRI. |
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DOI: | 10.48550/arxiv.2411.19564 |