DDEvENet: Evidence-based ensemble learning for uncertainty-aware brain parcellation using diffusion MRI.

in Computerized medical imaging and graphics : the official journal of the Computerized Medical Imaging Society by Chenjun Li, Dian Yang, Shun Yao, Shuyue Wang, Ye Wu, Le Zhang, Qiannuo Li, Kang Ik Kevin Cho, Johanna Seitz-Holland, Lipeng Ning, Jon Haitz Legarreta, Yogesh Rathi, Carl-Fredrik Westin, Lauren J O'Donnell, Nir A Sochen, Ofer Pasternak, Fan Zhang

TLDR

  • The study develops a novel Evidential Ensemble Neural Network (DDEvENet) for anatomical brain parcellation, achieving accurate parcellation and uncertainty estimates across multiple datasets.

Abstract

In this study, we developed an Evidential Ensemble Neural Network based on Deep learning and Diffusion MRI, namely DDEvENet, for anatomical brain parcellation. The key innovation of DDEvENet is the design of an evidential deep learning framework to quantify predictive uncertainty at each voxel during a single inference. To do so, we design an evidence-based ensemble learning framework for uncertainty-aware parcellation to leverage the multiple dMRI parameters derived from diffusion MRI. Using DDEvENet, we obtained accurate parcellation and uncertainty estimates across different datasets from healthy and clinical populations and with different imaging acquisitions. The overall network includes five parallel subnetworks, where each is dedicated to learning the FreeSurfer parcellation for a certain diffusion MRI parameter. An evidence-based ensemble methodology is then proposed to fuse the individual outputs. We perform experimental evaluations on large-scale datasets from multiple imaging sources, including high-quality diffusion MRI 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). Compared to several state-of-the-art methods, our experimental results demonstrate highly improved parcellation accuracy across the multiple testing datasets despite the differences in dMRI acquisition protocols and health conditions. Furthermore, thanks to the uncertainty estimation, our DDEvENet approach demonstrates a good ability to detect abnormal brain regions in patients with lesions that are consistent with expert-drawn results, enhancing the interpretability and reliability of the segmentation results.

Overview

  • The study aims to develop an Evidential Ensemble Neural Network (DDEvENet) for anatomical brain parcellation using Deep Learning and Diffusion MRI.
  • The innovation lies in the design of an evidential deep learning framework to quantify predictive uncertainty at each voxel during a single inference.
  • The study focuses on obtaining accurate parcellation and uncertainty estimates across different datasets from healthy and clinical populations and with different imaging acquisitions.

Comparative Analysis & Findings

  • The experimental results demonstrate highly improved parcellation accuracy across multiple testing datasets, despite differences in dMRI acquisition protocols and health conditions.
  • The results are compared to several state-of-the-art methods, showing DDEvENet's advantages in terms of parcellation accuracy.
  • The study demonstrates a good ability to detect abnormal brain regions in patients with lesions, consistent with expert-drawn results.

Implications and Future Directions

  • The study's findings have implications for improving the interpretability and reliability of brain parcellation results in clinical practice.
  • Future research directions could include exploring the application of DDEvENet to other neuroimaging modalities and extending the framework to other anatomical regions.
  • The study's uncertainty estimation capabilities could be further developed to provide more accurate and reliable parcellation results.