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Bladder cancer treatment response assessment using deep learning in CT with transfer learning

机译:膀胱癌治疗响应评估在CT与转移学习中的深度学习

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We are developing a CAD system for bladder cancer treatment response assessment in CT. We compared the performance of the deep-learning convolution neural network (DL-CNN) using different network sizes, and with and without transfer learning using natural scene images or regions of interest (ROIs) inside and outside the bladder. The DL-CNN was trained to identify responders (TO disease) and non-responders to chemotherapy. ROIs were extracted from segmented lesions in pre- and post-treatment scans of a patient and paired to generate hybrid pre-post-treatment paired ROIs. The 87 lesions from 82 patients generated 104 temporal lesion pairs and 6,700 pre-post-treatment paired ROIs. Two-fold cross-validation and receiver operating characteristic analysis were performed and the area under the curve (AUC) was calculated for the DL-CNN estimates. The AUCs for prediction of TO disease after treatment were 0.77±0.08 and 0.75±0.08, respectively, for the two partitions using DL-CNN without transfer learning and a small network, and were 0.74±0.07 and 0.74±0.08 with a large network. The AUCs were 0.73±0.08 and 0.62±0.08 with transfer learning using a small network pre-trained with bladder ROIs. The AUC values were 0.77±0.08 and 0.73±0.07 using the large network pre-trained with the same bladder ROIs. With transfer learning using the large network pre-trained with the Canadian Institute for Advanced Research (CIFAR-10) data set, the AUCs were 0.72±0.06 and 0.64±0.09, respectively, for the two partitions. None of the differences in the methods reached statistical significance. Our study demonstrated the feasibility of using DL-CNN for the estimation of treatment response in CT. Transfer learning did not improve the treatment response estimation. The DL-CNN performed better when transfer learning with bladder images was used instead of natural scene images.
机译:我们正在开发CT的膀胱癌治疗响应评估的CAD系统。我们将深度学习卷积神经网络(DL-CNN)的性能进行了比较了使用不同的网络尺寸,并且在膀胱内外使用自然场景图像或兴趣区域(rois)和外部的自然场景图像或地区的转移学习。 DL-CNN培训以鉴定患者(对疾病)和非响应者的化疗。在治疗后和治疗后的病变中从患者的扫描中萃取rOI,并配对以产生杂种前治疗后的配对ROI。来自82名患者的87个病变产生104个时间病变对和6,700个后处理前配对ROI。执行双倍交叉验证和接收机操作特征分析,并对DL-CNN估计计算曲线下的面积(AUC)。在治疗后对疾病预测的AUC分别用于使用DL-CNN的两个分区的疾病预测为0.77±0.08和0.75±0.08,而没有转移学习和小型网络,并且具有大型网络的0.74±0.07和0.74±0.08。使用用膀胱ROI预先培训的小网络,AUCS为0.73±0.08和0.62±0.08,随着使用的小型网络进行转移学习。使用具有相同膀胱ROI的大型网络,AUC值为0.77±0.08和0.73±0.07。随着使用大网络预接受加拿大高级研究所(CIFAR-10)数据集的大型网络的转移学习,AUCS分别为两个分区的0.72±0.06和0.64±0.09。这些方法中没有差异达到统计学意义。我们的研究表明,使用DL-CNN用于估计CT中治疗响应的可行性。转移学习没有改善治疗反应估计。使用膀胱图像的转移学习而不是自然场景图像时更好地执行DL-CNN。

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