1. Towards automatical tumor segmentation in radiomics: a comparative analysis of various methods and radiologists for both region extraction and downstream diagnosis
- Author
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Ying Yu, Gang-Feng Li, Wei-Xiong Tan, Xiao-Yan Qu, Tao Zhang, Xing-Yi Hou, Yuan-Bo Zhu, Zhi-Ying Ma, Lu Yang, Ya Gao, Mei Yu, Cui Yue, Zhen Zhou, Yang Yang, Lin-Feng Yan, and Guang-Bin Cui
- Subjects
Tumor segmentation ,Radiomics ,Extraction ,Diagnosis ,Lung nodule ,Medical technology ,R855-855.5 - Abstract
Abstract Objective By discussing the difference, stability and classification ability of tumor contour extracted by artificial intelligence and doctors, can a more stable method of tumor contour extraction be obtained? Methods We propose a novel framework for the automatic segmentation of lung tumor contours and the differential diagnosis of downstream tasks. This framework integrates four key modules: tumor segmentation, extraction of radiomic features, feature selection, and the development of diagnostic models for clinical applications. Using this framework, we conducted a study involving a cohort of 1,429 patients suspected of lung cancer. Four automatic segmentation methods (RNN, UNET, WFCM, and SNAKE) were evaluated against manual segmentation performed by three radiologists with varying levels of expertise. We further studied the consistency of radiomic features extracted from these methods and evaluates their diagnostic performance across three downstream tasks: benign vs. malignant classification, lung adenocarcinoma infiltration, and lung nodule density classification. Results The Dice coefficient of RNN is the highest among the four automatic segmentation methods (0.803 > 0.751, 0.576, 0.560), and all P
- Published
- 2025
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