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A Deep Learning Method for Early Screening of Lung Cancer

机译:一种深层筛查肺癌的深度学习方法

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Lung cancer is the leading cause of cancer-related deaths among men. In this paper, we propose a pulmonary nodule detection method for early screening of lung cancer based on the improved AlexNet model. In order to maintain the same image quality as the existing B/S architecture PACS system, we convert the original CT image into JPEG format image by analyzing the DICOM file firstly. Secondly, in view of the large size and complex background of CT chest images, we design the convolution neural network on basis of AlexNet model and sparse convolution structure. At last we train our models on the software named DIGITS which is provided by NVIDIA. The main contribution of this paper is to apply the convolutional neural network for the early screening of lung cancer and improve the screening accuracy by combining the AlexNet model with the sparse convolution structure. We make a series of experiments on the chest CT images using the proposed method, of which the sensitivity and specificity indicates that the method presented in this paper can effectively improve the accuracy of early screening of lung cancer and it has certain clinical significance at the same time.
机译:肺癌是男性中癌症相关死亡的主要原因。本文提出了一种基于改进的AlexNet模型的肺癌早期筛查肺结核检测方法。为了保持与现有的B / S体系结构PACS系统相同的图像质量,我们首先通过分析DICOM文件将原始CT图像转换为JPEG格式图像。其次,考虑到CT胸部图像的大尺寸和复杂背景,我们根据亚历克网模型和稀疏卷积结构设计卷积神经网络。最后,我们培训我们的模型在NVIDIA提供的名为Digits的软件中。本文的主要贡献是应用卷积神经网络,以便通过将AlexNet模型与稀疏卷积结构相结合来提高肺癌的早期筛选,提高筛选精度。我们使用该方法在胸部CT图像上进行一系列实验,其中敏感性和特异性表明本文呈现的方法可以有效提高肺癌早期筛查的准确性,并且它具有一定的临床意义时间。

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