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Main Authors: Zhou, Yihan, Huang, Haocheng, Yu, Yue, Shang, Jianhui
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.20127
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author Zhou, Yihan
Huang, Haocheng
Yu, Yue
Shang, Jianhui
author_facet Zhou, Yihan
Huang, Haocheng
Yu, Yue
Shang, Jianhui
contents Early detection of lung cancer is crucial for effective treatment and relies on accurate volumetric assessment of pulmonary nodules in CT scans. Traditional methods, such as consolidation-to-tumor ratio (CTR) and spherical approximation, are limited by inconsistent estimates due to variability in nodule shape and density. We propose an advanced framework that combines a multi-scale 3D convolutional neural network (CNN) with subtype-specific bias correction for precise volume estimation. The model was trained and evaluated on a dataset of 364 cases from Shanghai Chest Hospital. Our approach achieved a mean absolute deviation of 8.0 percent compared to manual nonlinear regression, with inference times under 20 seconds per scan. This method outperforms existing deep learning and semi-automated pipelines, which typically have errors of 25 to 30 percent and require over 60 seconds for processing. Our results show a reduction in error by over 17 percentage points and a threefold acceleration in processing speed. These advancements offer a highly accurate, efficient, and scalable tool for clinical lung nodule screening and monitoring, with promising potential for improving early lung cancer detection.
format Preprint
id arxiv_https___arxiv_org_abs_2508_20127
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Machine Learning Approach to Volumetric Computations of Solid Pulmonary Nodules
Zhou, Yihan
Huang, Haocheng
Yu, Yue
Shang, Jianhui
Image and Video Processing
Computer Vision and Pattern Recognition
Early detection of lung cancer is crucial for effective treatment and relies on accurate volumetric assessment of pulmonary nodules in CT scans. Traditional methods, such as consolidation-to-tumor ratio (CTR) and spherical approximation, are limited by inconsistent estimates due to variability in nodule shape and density. We propose an advanced framework that combines a multi-scale 3D convolutional neural network (CNN) with subtype-specific bias correction for precise volume estimation. The model was trained and evaluated on a dataset of 364 cases from Shanghai Chest Hospital. Our approach achieved a mean absolute deviation of 8.0 percent compared to manual nonlinear regression, with inference times under 20 seconds per scan. This method outperforms existing deep learning and semi-automated pipelines, which typically have errors of 25 to 30 percent and require over 60 seconds for processing. Our results show a reduction in error by over 17 percentage points and a threefold acceleration in processing speed. These advancements offer a highly accurate, efficient, and scalable tool for clinical lung nodule screening and monitoring, with promising potential for improving early lung cancer detection.
title A Machine Learning Approach to Volumetric Computations of Solid Pulmonary Nodules
topic Image and Video Processing
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.20127