Automatic Segmentation of the Cisternal Segment of Trigeminal Nerve on MRI Using Deep Learning
Li-Ming Hsu, Shuai Wang, Sheng-Wei Chang, Yu-Li Lee, Jen-Tsung Yang, Ching-Po Lin, Yuan-Hsiung Tsai

TL;DR
This paper introduces a deep learning method to automatically and accurately segment the trigeminal nerve in MRI scans, improving efficiency and reducing variability in diagnosis.
Contribution
The first fully automated deep learning approach for segmenting the trigeminal nerve in anatomical MRI.
Findings
The U-Net model achieved high accuracy comparable to radiologists in segmenting the trigeminal nerve.
The method showed robust performance across different evaluation metrics like Dice and Hausdorff distance.
It has potential to aid in diagnosing and treating trigeminal nerve disorders like trigeminal neuralgia.
Abstract
Purpose: Accurate segmentation of the cisternal segment of the trigeminal nerve plays a critical role in identifying and treating different trigeminal nerve–related disorders, including trigeminal neuralgia (TN). However, the current manual segmentation process is prone to interobserver variability and consumes a significant amount of time. To overcome this challenge, we propose a deep learning–based approach, U-Net, that automatically segments the cisternal segment of the trigeminal nerve. Methods: To evaluate the efficacy of our proposed approach, the U-Net model was trained and validated on healthy control images and tested in on a separate dataset of TN patients. The methods such as Dice, Jaccard, positive predictive value (PPV), sensitivity (SEN), center-of-mass distance (CMD), and Hausdorff distance were used to assess segmentation performance. Results: Our approach achieved…
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Taxonomy
TopicsTrigeminal Neuralgia and Treatments · Medical Imaging and Analysis · Brain Tumor Detection and Classification
