1. Deep learning-based automatic delineation of the hippocampus by MRI: geometric and dosimetric evaluation
- Author
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Kaicheng Pan, Lei Zhao, Song Gu, Yi Tang, Jiahao Wang, Wen Yu, Lucheng Zhu, Qi Feng, Ruipeng Su, Zhiyong Xu, Xiadong Li, Zhongxiang Ding, Xiaolong Fu, Shenglin Ma, Jun Yan, Shigong Kang, Tao Zhou, and Bing Xia
- Subjects
Hippocampus ,MRI ,Artificial intelligence ,Medical physics. Medical radiology. Nuclear medicine ,R895-920 ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 - Abstract
Abstract Background Whole brain radiotherapy (WBRT) can impair patients’ cognitive function. Hippocampal avoidance during WBRT can potentially prevent this side effect. However, manually delineating the target area is time-consuming and difficult. Here, we proposed a credible approach of automatic hippocampal delineation based on convolutional neural networks. Methods Referring to the hippocampus contouring atlas proposed by RTOG 0933, we manually delineated (MD) the hippocampus on the MRI data sets (3-dimensional T1-weighted with slice thickness of 1 mm, n = 175), which were used to construct a three-dimensional convolutional neural network aiming for the hippocampus automatic delineation (AD). The performance of this AD tool was tested on three cohorts: (a) 3D T1 MRI with 1-mm slice thickness (n = 30); (b) non-3D T1-weighted MRI with 3-mm slice thickness (n = 19); (c) non-3D T1-weighted MRI with 1-mm slice thickness (n = 11). All MRIs confirmed with normal hippocampus has not been violated by any disease. Virtual radiation plans were created for AD and MD hippocampi in cohort c to evaluate the clinical feasibility of the artificial intelligence approach. Statistical analyses were performed using SPSS version 23. P
- Published
- 2021
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