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A Multi-Task Convolutional Neural Network for Renal Tumor Segmentation and Classification Using Multi-Phasic CT Images

机译:利用多相CT图像进行肾肿瘤分割和分类的多任务卷积神经网络

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Accounting for nearly 2% of all adults, renal cell carcinomas are sensitive to laparoscopic partial nephrectomy (LPN) which needs an accurate diagnosis and localization before operation. Faced with various intensity distribution, erratic location, irregular shape, etc, the image classification and semantic segmentation on CT scans of renal tumor are challenges. This paper presents a multi-task network, segmentation and classification convolutional neural network (SCNet), for preoperative assessment of renal tumor. Via the combination of two tasks, semantic features are fed to the classification network and classification results give segmentation network feedbacks in return. Besides, a 2-step segmentation strategy is conducted to the segmentation module which improves the result by 2.8%. Our experimental results of classification and segmentation achieve 100% accuracy and 0.882 dice coefficient of tumor region respectively, which are better than the results of a single classification network and segmentation network.
机译:肾细胞癌约占所有成年人的2%,对腹腔镜部分肾切除术(LPN)敏感,需要在手术前进行准确的诊断和定位。面对各种强度分布,不稳定的位置,不规则的形状等,肾肿瘤CT扫描的图像分类和语义分割是挑战。本文提出了一个多任务网络,分段和分类卷积神经网络(SCNet),用于肾肿瘤的术前评估。通过两个任务的组合,语义特征被馈送到分类网络,分类结果作为回报给出分割网络的反馈。此外,对分割模块执行了两步分割策略,将结果提高了2.8%。我们的分类和分割实验结果分别达到了100%的准确度和0.882骰子骰子系数,优于单个分类网络和分割网络的结果。

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