Find in Library
Search millions of books, articles, and more
Indexed Open Access Databases
Automatic Skull Stripping of Rat and Mouse Brain MRI Data Using U-Net
oleh: Li-Ming Hsu, Li-Ming Hsu, Li-Ming Hsu, Li-Ming Hsu, Shuai Wang, Shuai Wang, Paridhi Ranadive, Woomi Ban, Woomi Ban, Tzu-Hao Harry Chao, Tzu-Hao Harry Chao, Tzu-Hao Harry Chao, Sheng Song, Sheng Song, Sheng Song, Domenic Hayden Cerri, Domenic Hayden Cerri, Domenic Hayden Cerri, Lindsay R. Walton, Lindsay R. Walton, Lindsay R. Walton, Margaret A. Broadwater, Margaret A. Broadwater, Margaret A. Broadwater, Sung-Ho Lee, Sung-Ho Lee, Sung-Ho Lee, Dinggang Shen, Dinggang Shen, Dinggang Shen, Yen-Yu Ian Shih, Yen-Yu Ian Shih, Yen-Yu Ian Shih
| Format: | Article |
|---|---|
| Diterbitkan: | Frontiers Media S.A. 2020-10-01 |
Deskripsi
Accurate removal of magnetic resonance imaging (MRI) signal outside the brain, a.k.a., skull stripping, is a key step in the brain image pre-processing pipelines. In rodents, this is mostly achieved by manually editing a brain mask, which is time-consuming and operator dependent. Automating this step is particularly challenging in rodents as compared to humans, because of differences in brain/scalp tissue geometry, image resolution with respect to brain-scalp distance, and tissue contrast around the skull. In this study, we proposed a deep-learning-based framework, U-Net, to automatically identify the rodent brain boundaries in MR images. The U-Net method is robust against inter-subject variability and eliminates operator dependence. To benchmark the efficiency of this method, we trained and validated our model using both in-house collected and publicly available datasets. In comparison to current state-of-the-art methods, our approach achieved superior averaged Dice similarity coefficient to ground truth T2-weighted rapid acquisition with relaxation enhancement and T2∗-weighted echo planar imaging data in both rats and mice (all p < 0.05), demonstrating robust performance of our approach across various MRI protocols.