Toward an Expert Level of Lung Cancer Detection and Classification Using a Deep Convolutional Neural Network

Chao Zhang(Guangdong Academy of Medical Sciences), Xing Sun(Tencent (China)), Kang Dang(Tencent (China)), Ke Li(Tencent (China)), Xiaowei Guo(Tencent (China)), Chang Jia(Tencent (China)), Zongqiao Yu(Tencent (China)), Feiyue Huang(Tencent (China)), Yunsheng Wu(Tencent (China)), Yunsheng Wu(Tencent (China)), Zhu Liang(Tencent (China)), Zaiyi Liu(Guangdong Academy of Medical Sciences), Xue-gong Zhang(Guangdong Academy of Medical Sciences), Xinglin Gao(Sun Yat-sen University), Shaohong Huang(Sun Yat-sen University), Jie Qin(Sun Yat-sen University), Weineng Feng(First People's Hospital of Foshan), Tao Zhou(First People's Hospital of Foshan), Yanbin Zhang(Guangzhou Chest Hospital), Wei-jun Fang(First Hospital of China Medical University), Mingfang Zhao(First Hospital of China Medical University), Xue‐Ning Yang(Guangdong Academy of Medical Sciences), Qing Zhou(Guangdong Academy of Medical Sciences), Yi‐Long Wu(Tencent (China)), Yi‐Long Wu(Tencent (China)), Wen‐Zhao Zhong(Guangdong Academy of Medical Sciences)
The Oncologist
April 17, 2019
Cited by 164Open Access
Full Text

Abstract

BACKGROUND: Computed tomography (CT) is essential for pulmonary nodule detection in diagnosing lung cancer. As deep learning algorithms have recently been regarded as a promising technique in medical fields, we attempt to integrate a well-trained deep learning algorithm to detect and classify pulmonary nodules derived from clinical CT images. MATERIALS AND METHODS: Open-source data sets and multicenter data sets have been used in this study. A three-dimensional convolutional neural network (CNN) was designed to detect pulmonary nodules and classify them into malignant or benign diseases based on pathologically and laboratory proven results. RESULTS: The sensitivity and specificity of this well-trained model were found to be 84.4% (95% confidence interval [CI], 80.5%-88.3%) and 83.0% (95% CI, 79.5%-86.5%), respectively. Subgroup analysis of smaller nodules (<10 mm) have demonstrated remarkable sensitivity and specificity, similar to that of larger nodules (10-30 mm). Additional model validation was implemented by comparing manual assessments done by different ranks of doctors with those performed by three-dimensional CNN. The results show that the performance of the CNN model was superior to manual assessment. CONCLUSION: Under the companion diagnostics, the three-dimensional CNN with a deep learning algorithm may assist radiologists in the future by providing accurate and timely information for diagnosing pulmonary nodules in regular clinical practices. IMPLICATIONS FOR PRACTICE: The three-dimensional convolutional neural network described in this article demonstrated both high sensitivity and high specificity in classifying pulmonary nodules regardless of diameters as well as superiority compared with manual assessment. Although it still warrants further improvement and validation in larger screening cohorts, its clinical application could definitely facilitate and assist doctors in clinical practice.


Related Papers

No related papers found

Powered by citation graph analysis