Comparison of AI software tools for automated detection, quantification and categorization of pulmonary nodules in the HANSE LCS trial

威尔科克森符号秩检验 肺癌 肺癌筛查 医学 结核(地质) 卡帕 放射科 分类 软件 全国肺筛查试验 计算机科学 核医学 人工智能 医学物理学 病理 数学 内科学 曼惠特尼U检验 生物 程序设计语言 古生物学 几何学
作者
Rimma Kondrashova,Filip Klimeš,Till Frederik Kaireit,Katharina May,Jörg Barkhausen,Susanne Stiebeler,Jonathan I. Sperl,Sabine Dettmer,Frank Wacker,Jens Vogel‐Claussen
出处
期刊:Scientific Reports [Nature Portfolio]
卷期号:14 (1) 被引量:2
标识
DOI:10.1038/s41598-024-78568-z
摘要

Abstract Participant management in a lung cancer screening (LCS) depends on the assigned Lung Imaging Reporting and Data System (Lung-RADS) category, which is based on reliable detection and measurement of pulmonary nodules. The aim of this study was to compare the agreement of two AI-based software tools for detection, quantification and categorization of pulmonary nodules in an LCS program in Northern Germany (HANSE-trial). 946 low-dose baseline CT-examinations were analyzed by two AI software tools regarding lung nodule detection, quantification and categorization and compared to the final radiologist read. The relationship between detected nodule volumes by both software tools was assessed by Pearson correlation ( r ) and tested for significance using Wilcoxon signed-rank test. The consistency of Lung-RADS classifications between Software tool 1 (S1, Aview v2.5, Coreline Soft, Seoul, Korea) and Software tool 2 (S2, Prototype ‘’ChestCTExplore’’, software version ToDo, Siemens Healthineers, Forchheim, Germany) was evaluated by Cohen’s kappa ( κ ) and percentual agreement ( PA ).The derived volumes of true positive nodules were strongly correlated ( r > 0.95), the volume derived by S2 was significantly higher than by S1 ( P < 0.0001, mean difference: 6mm 3 ). Moderate PA (62%) between S1 and S2 was found in the assignment of Lung-RADS classification ( κ = 0.45). The PA of Lung-RADS classification to final read was 75% and 55% for S1 and S2, but the incorporation of S1 into the initial nodule detection and segmentation must be considered here. Significant nodule volume differences between AI software tools lead to different Lung-RADS scores in 38% of cases, which may result in altered participant management. Therefore, high performance and agreement of accredited AI software tools are necessary for a future national LCS program.
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