Document detail
ID

oai:arXiv.org:2409.13868

Topic
Electrical Engineering and Systems... Computer Science - Computer Vision... Computer Science - Machine Learnin...
Author
Sui, Mingxiu Hu, Jiacheng Zhou, Tong Liu, Zibo Wen, Likang Du, Junliang
Category

Computer Science

Year

2024

listing date

9/25/2024

Keywords
diagnosis detection computer science squeeze channel lung
Metrics

Abstract

This paper introduces a novel deep-learning method for the automatic detection and segmentation of lung nodules, aimed at advancing the accuracy of early-stage lung cancer diagnosis.

The proposed approach leverages a unique "Channel Squeeze U-Structure" that optimizes feature extraction and information integration across multiple semantic levels of the network.

This architecture includes three key modules: shallow information processing, channel residual structure, and channel squeeze integration.

These modules enhance the model's ability to detect and segment small, imperceptible, or ground-glass nodules, which are critical for early diagnosis.

The method demonstrates superior performance in terms of sensitivity, Dice similarity coefficient, precision, and mean Intersection over Union (IoU).

Extensive experiments were conducted on the Lung Image Database Consortium (LIDC) dataset using five-fold cross-validation, showing excellent stability and robustness.

The results indicate that this approach holds significant potential for improving computer-aided diagnosis systems, providing reliable support for radiologists in clinical practice and aiding in the early detection of lung cancer, especially in resource-limited settings

Sui, Mingxiu,Hu, Jiacheng,Zhou, Tong,Liu, Zibo,Wen, Likang,Du, Junliang, 2024, Deep Learning-Based Channel Squeeze U-Structure for Lung Nodule Detection and Segmentation

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