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DS6 UNet3D Wodeform

Developed by soumickmj
A deep learning model based on U-Net multi-scale supervision for automatic segmentation of small vessels in 7 Tesla three-dimensional time-of-flight magnetic resonance angiography data.
Downloads 18
Release Time : 9/1/2024

Model Overview

This model focuses on the segmentation of small cerebral vessels, suitable for 7T time-of-flight MRA data, enhancing small vessel detection performance through semi-supervised learning and deformation-aware techniques.

Model Features

Small Vessel Segmentation Optimization
Achieves high-precision segmentation of cerebral microvessels that are difficult to detect with traditional methods through deep learning.
Deformation-aware Learning
Employs self-supervised deformation-aware techniques to enhance the model's equivariance to elastic deformations, significantly improving generalization performance.
Multi-scale Supervision
Utilizes a U-Net-based multi-scale supervision architecture to effectively capture vascular features at different scales.
Few-shot Learning
Achieves efficient training on a semi-automatically segmented dataset with only 11 samples (including noise).

Model Capabilities

3D medical image segmentation
Small vessel detection
Magnetic resonance angiography analysis

Use Cases

Medical Imaging Analysis
Cerebral Small Vessel Disease Research
Used for early detection and research of cerebral small vessel diseases such as CSVD.
Test set Dice score reached 80.44±0.83
Neurodegenerative Disease Correlation Analysis
Assists in studying the correlation between small vessel diseases and conditions like Alzheimer's disease.
18.98% improvement compared to manual segmentation
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