Mathematics (Mar 2023)

Lung Nodule CT Image Segmentation Model Based on Multiscale Dense Residual Neural Network

  • Xinying Zhang,
  • Shanshan Kong,
  • Yang Han,
  • Baoshan Xie,
  • Chunfeng Liu

DOI
https://doi.org/10.3390/math11061363
Journal volume & issue
Vol. 11, no. 6
p. 1363

Abstract

Read online

To solve the problem of the low segmentation accuracy of lung nodule CT images using U-Net, an improved method for segmentation of lung nodules by U-Net was proposed. Initially, the dense network connection and sawtooth expanded convolution design was added to the feature extraction part, and a local residual design was adopted in the upsampling process. Finally, the effectiveness of the proposed algorithm was evaluated using the LIDC-IDRI lung nodule public dataset. The results showed that the improved algorithm had 7.03%, 14.05%, and 10.43% higher performance than the U-Net segmentation algorithm under the three loss functions of DC, MIOU, and SE, and the accuracy was 2.45% higher compared with that of U-Net. Thus, the proposed method had an effective network structure.

Keywords