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Lung nodule malignancy prediction in chest CT scans based on a CNN model with auxiliary task learning

机译:基于CNN模型与辅助任务学习基于CNN模型的胸部CT扫描中的肺结节恶性预测

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Convolutional neural networks (CNNs) have been increasingly applied to computer-aided diagnosis (CADx) for lung nodule malignancy prediction, which usually is a binary classification task. However, CNNs were often difficult to capture optimal features, thereby affect the classification performance. This study developed a CADx system based on a CNN model (Ⅵ-Net) with auxiliary task learning to predict lung nodule malignancy in chest computed tomography (CT) scans. Our CADx system took CT image cubes containing lung nodules as input and generated one main output and eight auxiliary outputs. The main output predicted lung nodule malignancy: the auxiliary outputs predicted lesion size and some lesion characteristics. The auxiliary tasks offered assistance for predicting the final nodule malignancy. The CNN with auxiliary task learning was trained as a whole by optimizing a global loss function including all tasks. The performance of the developed lung nodule CADx system was verified by use of the Lung Image Database Consortium (LIDC) dataset. The lung nodule malignancy prediction results were quantitatively evaluated by using the area under the ROC curve (AUC). accuracy, sensitivity, and specificity. The evaluation results showed that our CADx system achieved improved performance for lung nodule malignancy prediction. The auxiliary task learning not only helped to predict the lung nodule malignancy, but also contributed to explain the prediction to some extent.
机译:卷积神经网络(CNNS)越来越多地应用于肺结结恶性预测的计算机辅助诊断(CADX),这通常是二进制分类任务。然而,CNN通常难以捕获最佳特征,从而影响分类性能。本研究开发了一种基于CNN模型(ⅵ网)的CNAD系统,具有辅助任务学习,以预测胸部计算机断层扫描(CT)扫描中的肺结节恶性肿瘤。我们的CADX系统将包含肺结核的CT图像立方体作为输入和产生一个主输出和八个辅助输出。主要产出预测肺结节恶性肿瘤:辅助输出预测病变大小和一些病变特征。辅助任务提供了预测最终结节恶性肿瘤的援助。通过优化包括所有任务的全局损失函数,具有辅助任务学习的CNN作为整体培训。通过使用肺部图像数据库联盟(LIDC)数据集验证了发育的肺结节CADX系统的性能。通过使用ROC曲线(AUC)下的区域定量评估肺结节恶性预测结果。准确性,灵敏度和特异性。评价结果表明,我们的CADX系统达到了肺结结恶性预测的改善性能。辅助任务学习不仅有助于预测肺结核恶性肿瘤,而且还有助于在一定程度上解释预测。

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