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Discrimination of Benign and Malignant Pulmonary Tumors in Computed Tomography: Effective Priori Information of Fast Learning Network Architecture

机译:计算机断层扫描中良性和恶性肺肿瘤的区别:快速学习网络体系结构的有效先验信息

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This study explores the influence of prior information for deep learning networks to discriminate the benign andmalignant of pulmonary tumors in computed tomography. In this study, because the number of nodule samples is sparse,this study proposes the concept of Multiple-Window to provide prior knowledge for Convolutional neural network(CNN). In the Multiple-Window CNN, we use the 5 windows including lung window, abdomen window, bone window,and chest window to generate the nodule sample. The sparse number of nodule samples, through the characteristics ofthe CT image dynamic range, make more prior information in a limited amount of data. The results show that theincrease of suitably prior information (window channel) be included, CNN performance has improved. When the input isoriginal dicom image, the accuracy of CNN is 0.82, sensitivity is 0.82, and specificity is 0.82. When the input is 4 kindschannel of window type, the accuracy is 0.9, sensitivity is 0.84, and specificity is 0.96.
机译:这项研究探索了先验信息对深度学习网络区分良性和良性的影响。 电脑断层扫描显示肺部恶性肿瘤。在这项研究中,由于结节样本数量稀少, 这项研究提出了多窗口的概念,以为卷积神经网络提供先验知识 (CNN)。在多窗口CNN中,我们使用5个窗口,包括肺部窗口,腹部窗口,骨骼窗口, 和胸窗产生结节样本。结节样本的稀疏性,通过特征 CT图像的动态范围,可以在有限的数据量中获得更多的先验信息。结果表明 通过增加适当的先验信息(窗口通​​道),CNN的性能得到了改善。当输入为 原始dicom图像,CNN的精度为0.82,灵敏度为0.82,特异性为0.82。当输入为4种时 窗口类型的通道,精度为0.9,灵敏度为0.84,特异性为0.96。

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