Department of Neurosurgery, West China Hospital, Sichuan University, Chengdu, China.
Department of Radiology, West China Hospital, Sichuan University, Chengdu, China.
Eur Radiol. 2024 Feb;34(2):1190-1199. doi: 10.1007/s00330-023-10078-4. Epub 2023 Aug 24.
Existing brain extraction models should be further optimized to provide more information for oncological analysis. We aimed to develop an nnU-Net-based deep learning model for automated brain extraction on contrast-enhanced T1-weighted (T1CE) images in presence of brain tumors.
This is a multi-center, retrospective study involving 920 patients. A total of 720 cases with four types of intracranial tumors from private institutions were collected and set as the training group and the internal test group. Mann-Whitney U test (U test) was used to investigate if the model performance was associated with pathological types and tumor characteristics. Then, the generalization of model was independently tested on public datasets consisting of 100 glioma and 100 vestibular schwannoma cases.
In the internal test, the model achieved promising performance with median Dice similarity coefficient (DSC) of 0.989 (interquartile range (IQR), 0.988-0.991), and Hausdorff distance (HD) of 6.403 mm (IQR, 5.099-8.426 mm). U test suggested a slightly descending performance in meningioma and vestibular schwannoma group. The results of U test also suggested that there was a significant difference in peritumoral edema group, with median DSC of 0.990 (IQR, 0.989-0.991, p = 0.002), and median HD of 5.916 mm (IQR, 5.000-8.000 mm, p = 0.049). In the external test, our model also showed to be robust performance, with median DSC of 0.991 (IQR, 0.983-0.998) and HD of 8.972 mm (IQR, 6.164-13.710 mm).
For automated processing of MRI neuroimaging data presence of brain tumors, the proposed model can perform brain extraction including important superficial structures for oncological analysis.
The proposed model serves as a radiological tool for image preprocessing in tumor cases, focusing on superficial brain structures, which could streamline the workflow and enhance the efficiency of subsequent radiological assessments.
• The nnU-Net-based model is capable of segmenting significant superficial structures in brain extraction. • The proposed model showed feasible performance, regardless of pathological types or tumor characteristics. • The model showed generalization in the public datasets.
现有的脑提取模型应进一步优化,以提供更多的肿瘤分析信息。我们旨在开发一种基于 nnU-Net 的深度学习模型,用于在存在脑肿瘤的情况下对对比增强 T1 加权(T1CE)图像进行自动脑提取。
这是一项多中心、回顾性研究,涉及 920 名患者。我们从私人机构共收集了 720 例 4 种颅内肿瘤患者的病例,将其作为训练组和内部测试组。采用曼-惠特尼 U 检验(U 检验)来研究模型性能是否与病理类型和肿瘤特征有关。然后,我们在由 100 例胶质瘤和 100 例前庭神经鞘瘤病例组成的公共数据集上对模型进行了独立的泛化测试。
在内部测试中,该模型的平均 Dice 相似系数(DSC)为 0.989(四分位距(IQR),0.988-0.991),Hausdorff 距离(HD)为 6.403 mm(IQR,5.099-8.426 mm),表现出良好的性能。U 检验提示脑膜瘤和前庭神经鞘瘤组的性能略有下降。U 检验的结果还表明,在瘤周水肿组中存在显著差异,平均 DSC 为 0.990(IQR,0.989-0.991,p=0.002),平均 HD 为 5.916 mm(IQR,5.000-8.000 mm,p=0.049)。在外部测试中,我们的模型也表现出了稳健的性能,平均 DSC 为 0.991(IQR,0.983-0.998),HD 为 8.972 mm(IQR,6.164-13.710 mm)。
对于存在脑肿瘤的 MRI 神经影像学数据的自动处理,所提出的模型可以对包括肿瘤分析的重要浅层结构在内的大脑进行提取。
该模型可作为肿瘤病例的放射学工具,用于对大脑浅层结构进行处理,这可能会简化工作流程并提高后续放射学评估的效率。
• nnU-Net 模型能够分割脑提取中的重要浅层结构。
• 所提出的模型表现出了可行的性能,与病理类型或肿瘤特征无关。
• 该模型在公共数据集上具有泛化能力。