4.7 Article

Pulmonary nodules detection assistant platform: An effective computer aided system for early pulmonary nodules detection in physical examination

期刊

出版社

ELSEVIER IRELAND LTD
DOI: 10.1016/j.cmpb.2022.106680

关键词

Early pulmonary nodules detection; Deep learning; Computer aided detection system; Classification of pulmonary nodules; Low-Dose computer tomography (LDCT)

资金

  1. National Natural Science Foundation of China (NSFC) [41776204]
  2. Fundamental Research Funds for the Central Universities
  3. Beijing Natural Science Foundation [4202025]
  4. Beijing Municipal Education Commission Project [KM201911232003]

向作者/读者索取更多资源

In this study, a Pulmonary Nodules Detection Assistant Platform was designed for early detection and classification of lung nodules based on physical examination LDCT images. The system utilizes various computer aided diagnosis methods to detect and classify nodules of different sizes, achieving automatic and efficient detection.
Background and Objective: Early detection of the pulmonary nodule from physical examination low-dose computer tomography (LDCT) images is an effective measure to reduce the mortality rate of lung cancer. Although there are many computer aided diagnosis (CAD) methods used for detecting pulmonary nodules, there are few CAD systems for small pulmonary nodule detection with a large amount of physical examination LDCT images. Methods: In this work, we designed a CAD system called Pulmonary Nodules Detection Assistant Platform for early pulmonary nodules detection and classification based on the physical examination LDCT images. Based on the preprocessed physical examination CT images, the three-dimensional (3D) CNN-based model is presented to detect candidate pulmonary nodules and output detection results with quantitative parameters, the 3D ResNet is used to classify the detected nodules into intrapulmonary nodules and pleural nodules to reduce the physician workloads, and the Fully Connected Neural Network (FCNN) is used to classify ground-glass opacity (GGO) nodules and non-GGO nodules to help doctor pay more attention to those suspected early lung cancer nodules. Results: Experiments are performed on our 10 0 0 samples of physical examinations (LNPE10 0 0) with an average diameter of 5.3 mm and LUNA16 dataset with an average diameter of 8.31 mm, which show that the designed CAD system is automatic and efficient for detecting smaller and larger nodules from different datasets, especially for the detection of smaller nodules with diameter between 3 mm and 6 mm in physical examinations. The accuracy of pulmonary nodule detection reaches 0.879 with an average of 1 false positive per CT in LNPE10 0 0 dataset, which is comparable to the experienced physicians. The classification accuracy reaches 0.911 between intrapulmonary and pleural nodules, and 0.950 between GGO and non-GGO nodules, respectively. Conclusion: Experimental results show that the proposed pulmonary nodule detection model is robust for different datasets, which can successfully detect smaller and larger nodules in CT images obtained by physical examination. The interactive platform of the designed CAD system has been on trial in a hospital by combining with manual reading, which helps doctors analyze clinical data dynamically and improves the nodule detection efficiency in physical examination applications.(c) 2022 Elsevier B.V. All rights reserved.

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