Department of Information, The Sixth Affiliated Hospital, Sun Yat-Sen University, Guangzhou, China.
School of Biomedical Engineering, Southern Medical University, Guangzhou, China.
Cancer Imaging. 2023 Oct 27;23(1):105. doi: 10.1186/s40644-023-00615-1.
The anatomical infiltrated brain area and the boundaries of gliomas have a significant impact on clinical decision making and available treatment options. Identifying glioma-infiltrated brain areas and delineating the tumor manually is a laborious and time-intensive process. Previous deep learning-based studies have mainly been focused on automatic tumor segmentation or predicting genetic/histological features. However, few studies have specifically addressed the identification of infiltrated brain areas. To bridge this gap, we aim to develop a model that can simultaneously identify infiltrated brain areas and perform accurate segmentation of gliomas.
We have developed a transformer-based multi-task deep learning model that can perform two tasks simultaneously: identifying infiltrated brain areas segmentation of gliomas. The multi-task model leverages shaped location and boundary information to enhance the performance of both tasks. Our retrospective study involved 354 glioma patients (grades II-IV) with single or multiple brain area infiltrations, which were divided into training (N = 270), validation (N = 30), and independent test (N = 54) sets. We evaluated the predictive performance using the area under the receiver operating characteristic curve (AUC) and Dice scores.
Our multi-task model achieved impressive results in the independent test set, with an AUC of 94.95% (95% CI, 91.78-97.58), a sensitivity of 87.67%, a specificity of 87.31%, and accuracy of 87.41%. Specifically, for grade II-IV glioma, the model achieved AUCs of 95.25% (95% CI, 91.09-98.23, 84.38% sensitivity, 89.04% specificity, 87.62% accuracy), 98.26% (95% CI, 95.22-100, 93.75% sensitivity, 98.15% specificity, 97.14% accuracy), and 93.83% (95%CI, 86.57-99.12, 92.00% sensitivity, 85.71% specificity, 87.37% accuracy) respectively for the identification of infiltrated brain areas. Moreover, our model achieved a mean Dice score of 87.60% for the whole tumor segmentation.
Experimental results show that our multi-task model achieved superior performance and outperformed the state-of-the-art methods. The impressive performance demonstrates the potential of our work as an innovative solution for identifying tumor-infiltrated brain areas and suggests that it can be a practical tool for supporting clinical decision making.
解剖学浸润脑区和胶质瘤边界对临床决策和现有治疗方案有重大影响。确定胶质瘤浸润脑区并手动勾画肿瘤是一项费力且耗时的过程。之前基于深度学习的研究主要集中在自动肿瘤分割或预测遗传/组织学特征上。然而,很少有研究专门针对浸润脑区的识别。为了弥补这一空白,我们旨在开发一种能够同时识别浸润脑区并准确分割脑胶质瘤的模型。
我们开发了一种基于转换器的多任务深度学习模型,可以同时执行两项任务:识别浸润脑区和分割胶质瘤。多任务模型利用形状位置和边界信息来提高这两个任务的性能。我们的回顾性研究纳入了 354 名(2 级-IV 级)单或多脑区浸润的脑胶质瘤患者,分为训练(N=270)、验证(N=30)和独立测试(N=54)集。我们使用受试者工作特征曲线下面积(AUC)和 Dice 评分来评估预测性能。
我们的多任务模型在独立测试集中取得了令人印象深刻的结果,AUC 为 94.95%(95%置信区间,91.78-97.58),敏感性为 87.67%,特异性为 87.31%,准确率为 87.41%。具体来说,对于 2 级-IV 级胶质瘤,该模型的 AUC 为 95.25%(95%置信区间,91.09-98.23,84.38%的敏感性,89.04%的特异性,87.62%的准确性),98.26%(95%置信区间,95.22-100,93.75%的敏感性,98.15%的特异性,97.14%的准确性),93.83%(95%置信区间,86.57-99.12,92.00%的敏感性,85.71%的特异性,87.37%的准确性),分别用于识别浸润脑区。此外,我们的模型在全肿瘤分割中获得了 87.60%的平均 Dice 评分。
实验结果表明,我们的多任务模型表现出色,优于最先进的方法。出色的性能证明了我们的工作作为一种创新的识别肿瘤浸润脑区的解决方案的潜力,并表明它可以成为支持临床决策的实用工具。