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Convolutional Neural Network-Based Decision Support System for Bladder Cancer Staging in CT Urography: Decision Threshold Estimation and Validation

机译:基于卷积神经网络的膀胱泌尿系统膀胱癌分期决策支持系统:决策阈值估计和验证

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Stage T2 is the clinical threshold to administer neoadjuvant chemotherapy for bladder cancer. In this study a deep learning convolutional neural network (DL-CNN) was trained to aid clinicians in staging of bladder cancer in CT Urography (CTU). The DL-CNN utilized two datasets for training and testing. The primary training dataset included 84 bladder cancers from CTU scans of 76 clinically staged patients, 43 cancers were below stage T2, and 41 were stage T2 or above. The second dataset served as an independent test set containing 90 bladder cancers from CTU scans of 86 clinically staged patients, all bladder cancers were staged as T2 or above. Regions of interest (ROIs) were extracted from the lesions as input to the DL-CNN. The model structure and hyper-parameters were determined and asserted using the training dataset of 84 lesions split into two balanced partitions. Based on the lesion-based T2 likelihood score obtained by averaging the scores of all ROIs extracted from a given lesion, the decision threshold providing the highest classification accuracy was determined from the leave-one-out validation. The DL-CNN with the fixed decision threshold was then applied to the test ROIs. The classification accuracy for the independent test set of 90 cancers was 0.91. This performance is slightly higher than our previous radiomics approach based on SVM and BPNN models, which achieved 0.88 and 0.90 accuracy on the same test set, respectively, but the difference was not statistically significant. The results show the promise of using a DL-CNN in bladder cancer stage assessment.
机译:T2期是对膀胱癌进行新辅助化疗的临床阈值。在这项研究中,对深度学习卷积神经网络(DL-CNN)进行了培训,以帮助临床医生在CT尿路造影(CTU)中进行膀胱癌分期。 DL-CNN利用两个数据集进行训练和测试。主要训练数据集包括来自76位临床分期患者的CTU扫描的84例膀胱癌,其中43例处于T2期以下,而41例处于T2期或以上。第二个数据集作为一个独立的测试集,包含来自86位临床分期患者的CTU扫描的90例膀胱癌,所有膀胱癌的分期均为T2或更高。从病变中提取感兴趣区域(ROI)作为DL-CNN的输入。使用将84个病变分为两个平衡分区的训练数据集确定并声明模型结构和超参数。基于通过平均从给定病变中提取的所有ROI的分数而获得的基于病变的T2可能性分数,从留一法验证中确定提供最高分类准确性的决策阈值。然后将具有固定决策阈值的DL-CNN应用于测试ROI。 90个癌症的独立测试集的分类准确性为0.91。该性能略高于我们以前基于SVM和BPNN模型的放射线学方法,后者在同一测试集上分别达到0.88和0.90的准确度,但差异无统计学意义。结果表明在膀胱癌分期评估中使用DL-CNN的希望。

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