Weakly-supervised Mamba-Based Mastoidectomy Shape Prediction for Cochlear Implant Surgery Using 3D T-Distribution Loss
Journal:
arXiv
Published Date:
May 23, 2025
Abstract
Cochlear implant surgery is a treatment for individuals with severe hearing
loss. It involves inserting an array of electrodes inside the cochlea to
electrically stimulate the auditory nerve and restore hearing sensation. A
crucial step in this procedure is mastoidectomy, a surgical intervention that
removes part of the mastoid region of the temporal bone, providing a critical
pathway to the cochlea for electrode placement. Accurate prediction of the
mastoidectomy region from preoperative imaging assists presurgical planning,
reduces surgical risks, and improves surgical outcomes. In previous work, a
self-supervised network was introduced to predict the mastoidectomy region
using only preoperative CT scans. While promising, the method suffered from
suboptimal robustness, limiting its practical application. To address this
limitation, we propose a novel weakly-supervised Mamba-based framework to
predict accurate mastoidectomy regions directly from preoperative CT scans. Our
approach utilizes a 3D T-Distribution loss function inspired by the Student-t
distribution, which effectively handles the complex geometric variability
inherent in mastoidectomy shapes. Weak supervision is achieved using the
segmentation results from the prior self-supervised network to eliminate the
need for manual data cleaning or labeling throughout the training process. The
proposed method is extensively evaluated against state-of-the-art approaches,
demonstrating superior performance in predicting accurate and clinically
relevant mastoidectomy regions. Our findings highlight the robustness and
efficiency of the weakly-supervised learning framework with the proposed novel
3D T-Distribution loss.