The paper presents EVENet, an Evidence-based Ensemble Neural Network for brain parcellation and uncertainty estimation using diffusion MRI (dMRI) data. The key innovation of EVENet is the design of an evidential deep learning framework to quantify predictive uncertainty at each voxel during a single inference.
The overall network includes five parallel subnetworks, where each is dedicated to learning the FreeSurfer parcellation for a certain dMRI parameter (e.g., fractional anisotropy, mean diffusivity). An evidence-based ensemble methodology is then proposed to fuse the individual outputs.
The authors perform experimental evaluations on large-scale datasets from multiple imaging sources, including high-quality dMRI data from healthy adults and clinically diffusion MRI data from participants with various brain diseases (schizophrenia, bipolar disorder, attention-deficit/hyperactivity disorder, Parkinson's disease, cerebral small vessel disease, and neurosurgical patients with brain tumors).
The results demonstrate that EVENet achieves highly improved parcellation accuracy across the multiple testing datasets despite differences in dMRI acquisition protocols and health conditions. Furthermore, the uncertainty estimation enables EVENet to detect abnormal brain regions in patients with lesions, enhancing the interpretability and reliability of the segmentation results.
The authors also conduct an ablation study to assess the effectiveness of different ensemble criteria within the parcellation framework, and compare EVENet to several state-of-the-art dMRI parcellation methods. The results show that EVENet consistently outperforms the other methods in terms of Dice score, recall, and intersection over union.
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by Chenjun Li, ... في arxiv.org 09-12-2024
https://arxiv.org/pdf/2409.07020.pdfاستفسارات أعمق