Author:
Zhang Yuchong,Qu Hui,Tian Yumeng,Na Fangjian,Yan Jinshan,Wu Ying,Cui Xiaoyu,Li Zhi,Zhao Mingfang
Abstract
Abstract
Objective
To investigate the correlation between CT imaging features and pathological subtypes of pulmonary nodules and construct a prediction model using deep learning.
Methods
We collected information of patients with pulmonary nodules treated by surgery and the reference standard for diagnosis was post-operative pathology. After using elastic distortion for data augmentation, the CT images were divided into a training set, a validation set and a test set in a ratio of 6:2:2. We used PB-LNet to analyze the nodules in pre-operative CT and predict their pathological subtypes. Accuracy was used as the model evaluation index and Class Activation Map was applied to interpreting the results. Comparative experiments with other models were carried out to achieve the best results. Finally, images from the test set without data augmentation were analyzed to judge the clinical utility.
Results
Four hundred seventy-seven patients were included and the nodules were divided into six groups: benign lesions, precursor glandular lesions, minimally invasive adenocarcinoma, invasive adenocarcinoma Grade 1, Grade 2 and Grade 3. The accuracy of the test set was 0.84. Class Activation Map confirmed that PB-LNet classified the nodules mainly based on the lungs in CT images, which is in line with the actual situation in clinical practice. In comparative experiments, PB-LNet obtained the highest accuracy. Finally, 96 images from the test set without data augmentation were analyzed and the accuracy was 0.89.
Conclusions
In classifying CT images of lung nodules into six categories based on pathological subtypes, PB-LNet demonstrates satisfactory accuracy without the need of delineating nodules, while the results are interpretable. A high level of accuracy was also obtained when validating on real data, therefore demonstrates its usefulness in clinical practice.
Funder
the Fundamental Research Funds for the Central Universities
Ningbo Science and Technology Bureau
National Natural Science Foundation of China
Medical and engineering joint fund of Liaoning Province
Natural Science Foundation of Liaoning Province
The Natural Science Foundation of Liaoning Province of China
Science and Technology Plan Project of Shenyang
Social Scientific planning funding
The planned projects of Liaoning provincial central government guiding local science and technology development funding
National Key Research and Development Program of China
Educational funding of Liaoning Province
Publisher
Springer Science and Business Media LLC
Subject
Cancer Research,Genetics,Oncology
Cited by
2 articles.
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