Detection and Classification of Lung Nodule in Diagnostic CT: A TsDN method based on Improved 3D-Faster R-CNN and Multi-Scale Multi-Crop Convolutional Neural Network

M. B. Zia, Juan Zhao, X. Ning
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引用次数: 2

Abstract

Lung nodule classification has been one of the major problem relevant to Computer-Aided Diagnosis (CAD) system. Lung cancer for both men and women has been one of the leading causes of cancer related death. Deep learning models have produced promising performance in recent years, outperforming traditional methods in different fields. Nowadays, scientists have attempted numerous deep learning approaches to enhance the efficiency of CAD systems via Computed Tomography (CT) in lung cancer screening. In this paper, we presented a completely automatic lung CT system for cancer diagnosis named Two-step Deep Network (TsDN) and it contains two parts detection of nodule and classification. First, Improved 3D-Faster R-CNN with U-net like encoder and decoder is used for detection of nodule and then Multi-scale Multi-crop Convolutional Neural Network (MsMc-CNN) is proposed for the pulmonary nodule classification. The multi scale approach uses filters of various sizes to extract nodule features more efficiently from the local regions, and then multi crop pooling technique involves in extracting the important nodule information that cultivates various regions from convolutional feature map and then add numerous times for the maximum pooling. The proposed TsDN is trained and evaluated on LIDC-IDRI public dataset and achieved a sensitivity of 0.885 and specificity of 0.922 with AUC of 0.946. U-Net-like encoder and decoder framework for the detection of lung nodule. The nodules found are then fed into classification part for the lung nodule classification. We use Multi-scale Multi-crop Convolutional Neural Network (MsMc-CNN) to extract features for classification. To know more efficiently about local structures, the suggested MsMc-CNN uses convolutional multi scale layers to obtain features at various scales, we also demonstrate that with the multi crop pooling approach, the trained deep features were capable of capturing nodule salient details. Finally, our model is fully trained to classify the lung nodule into benign and malignant. The experimental result on LUNA16 and LIDC-IDRI show the enhanced performance of proposed TsDN system.
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基于改进3D-Faster R-CNN和多尺度多作物卷积神经网络的诊断CT肺结节检测与分类TsDN方法
肺结节的分类一直是计算机辅助诊断(CAD)系统的主要问题之一。肺癌对男性和女性来说都是癌症相关死亡的主要原因之一。近年来,深度学习模型在不同领域的表现优于传统方法。如今,科学家们已经尝试了许多深度学习方法来提高计算机断层扫描(CT)在肺癌筛查中的CAD系统的效率。本文提出了一种完全自动化的肺癌CT诊断系统——两步深度网络(two -step Deep Network, TsDN),该系统包含结节检测和分类两部分。首先,采用改进的3D-Faster R-CNN(类似U-net的编码器和解码器)对肺结节进行检测,然后提出多尺度多裁剪卷积神经网络(MsMc-CNN)对肺结节进行分类。多尺度方法使用不同大小的滤波器从局部区域中更有效地提取结节特征,多作物池化技术从卷积特征图中提取培养各个区域的重要结节信息,然后进行多次添加以获得最大池化。本文提出的TsDN在LIDC-IDRI公共数据集上进行了训练和评估,灵敏度为0.885,特异性为0.922,AUC为0.946。用于肺结节检测的u - net类编码器和解码器框架。将发现的结节送入分类部分进行肺结节分类。我们使用多尺度多作物卷积神经网络(MsMc-CNN)提取特征进行分类。为了更有效地了解局部结构,建议的MsMc-CNN使用卷积多尺度层来获取不同尺度的特征,我们还证明了使用多作物池化方法,训练的深度特征能够捕获结节的显著细节。最后,我们的模型经过充分训练,将肺结节分为良性和恶性。在LUNA16和LIDC-IDRI上的实验结果表明,所提出的TsDN系统的性能得到了提高。
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