Lung CT Screening With 3D Convolutional Neural Network Architectures

T. Lima, D. Ushizima, Antônio Oséas de Carvalho Filho, Flávio H. D. Araújo
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引用次数: 5

Abstract

The standard tests for diagnosis of pulmonary cancer are imaging, sputum cytology and lung biopsy, with chest computed tomography (CT) playing a major role in the early detection of nodules, which increases the patients survival. The challenge is to analyze these images automatically, for example, the nodules density often resembles other pulmonary structures evidenced in CTs. This paper proposes an automated algorithm to classify pulmonary nodules into benign or malignant. Our contribution is to design and test 3D Convolutional Neural Networks using a public CT image collection, optimize the results of the proposed approach considering varying input sizes and numbers of convolutional layers, as well as compare with several previous approaches on CT analysis. Promising results show accuracy of 0.9040, kappa of 0.7624, sensitivity of 0.8630, specificity of 0.9191 and AUC of 0.8911 during malignant nodule detection.
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基于三维卷积神经网络架构的肺部CT筛查
诊断肺癌的标准检查是影像学检查、痰细胞学检查和肺活检,其中胸部计算机断层扫描(CT)在早期发现结节方面发挥了重要作用,提高了患者的生存率。难点在于如何对这些图像进行自动分析,例如,结节密度通常与ct显示的其他肺部结构相似。本文提出了一种肺结节良恶性自动分类算法。我们的贡献是使用公共CT图像集设计和测试3D卷积神经网络,考虑不同的输入大小和卷积层数优化所提出方法的结果,并与之前的几种CT分析方法进行比较。结果显示,该方法检测恶性结节的准确率为0.9040,kappa为0.7624,灵敏度为0.8630,特异性为0.9191,AUC为0.8911。
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