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. 2023;31(S1):477-486.
doi: 10.3233/THC-236041.

Construction of U-Net++ pulmonary nodule intelligent analysis model based on feature weighted aggregation

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Construction of U-Net++ pulmonary nodule intelligent analysis model based on feature weighted aggregation

Dewu Yang et al. Technol Health Care. 2023.

Abstract

Background: Lung cancer is a malignant tumor originating from the bronchial mucosa or glands of the lung. Early lung cancer patients often have no obvious symptoms, but early detection and treatment have an important clinical significance for prognostic effect. Computed tomography (CT) is one of the important means in the diagnosis of lung cancer. In order to better solve the problem of diagnosis efficiency, and reduce the rate of misdiagnosis and missed diagnosis, computer aided diagnosis are employed in the accurate localization and segmentation of pulmonary nodules through imaging diagnostics, image processing technology, and other clinical means.

Objective: This present study was envisaged to establish an intelligent segmentation model of pulmonary nodules to improve the accuracy of early screening for lung cancer patients.

Methods: Compared with the traditional segmentation model of fully convolutional neural network, the U-Net++ algorithm based on feature-weighted integration (WI-U-Net++) effectively utilized the feature weight information, adopted the adaptive weighted method for weighted integration, and performed an intelligent segmentation of the anatomical structure and image details, which was applied in the auxiliary diagnosis of pulmonary nodules in CT images. Standard chest X-ray phantom was selected as CT scanning objects, and 30 spherical and irregular simulated nodules were built into them, respectively. CT images were collected by setting different tube voltage and noise index, and randomly included into the training set, validation set and test set at a ratio of 8:1:1.

Results: The experimental results showed that the segmentation accuracy of WI-U-Net++ algorithm for spheroid nodules and irregular nodules was 98.75% and 83.47%, respectively, which was better than that of U-Net and U-Net++ algorithm. In the auxiliary diagnosis, the recall rate of the WI-U-Net++ algorithm for spheroid nodules and irregular nodules was 93.47% and 84.52%, respectively. The accuracy of the benign or malignant identification was 80.27%, and the AUC was 0.9342.

Conclusion: U-Net++ algorithm based on feature-weighted integration could improve the segmentation effect of pulmonary nodules. Especially in the case of irregular nodules with malignant signs, the accuracy of clinical diagnosis was significantly improved, and the level of differential diagnosis between benign and malignant was improved.

Keywords: Weighted integration; differential diagnosis; image segmentation; pulmonary nodules.

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Conflict of interest statement

None to report.

Figures

Figure 1.
Figure 1.
Algorithm flow of intelligent analysis model of pulmonary nodules.
Figure 2.
Figure 2.
Kirsch operator edge enhancement processing model.
Figure 3.
Figure 3.
U-Net++ segmentation model based on feature weighted integration.
Figure 4.
Figure 4.
AI recognition of pulmonary nodules in different types of CT images.
Figure 5.
Figure 5.
Segmentation effect of different algorithms on pulmonary nodules.

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