Feasibility of AI as first reader in the 4-IN-THE-LUNG-RUN lung cancer screening trial: impact on negative-misclassifications and clinical referral rate

IF 7.6 1区 医学 Q1 ONCOLOGY
Anna N.H. Walstra , Harriet L. Lancaster , Marjolein A. Heuvelmans , Carlijn M. van der Aalst , Juul Hubert , Dana Moldovanu , Sytse F. Oudkerk , Daiwei Han , Jan Willem C. Gratama , Mario Silva , Harry J. de Koning , Matthijs Oudkerk
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引用次数: 0

Abstract

Background

Lung cancer screening (LCS) with low-dose CT (LDCT) reduces lung-cancer-related mortality in high-risk individuals. AI can potentially reduce radiologist workload as first-read-filter by ruling-out negative cases. The feasibility of AI as first reader was evaluated in the European 4-IN-THE-LUNG-RUN (4ITLR) trial, comparing its negative-misclassifications (NMs) to those of radiologists and the impact on referral rates.

Methods

NMs were collected from 3678 baseline LDCTs of the 4ITLR-dataset. LDCTs were read independently by radiologists and dedicated AI software (AVIEW-LCS, v1.1.42.92, Coreline-Soft, Seoul, Korea). A case was designated as NM when nodules > 100 mm3 were present and either radiologist or AI gave a negative-classification (only nodules <100 mm3 or no nodules), with an expert-panel as reference standard. A distinction was made between an indeterminate (100–300mm3), and positive (>300 mm3) classification, warranting referral for clinical-workup. Overall, there were 102 referrals (2.8 %) at baseline.

Results

Of the 3678 baseline scans, 438 NMs (11.9 %) were identified (age individuals: 68 (IQR: 64–73) years, 241 men); 31 (0.8 %) by AI and 407 (11.1 %) by radiologists. Among the 31 AI-NMs, 3 were classified positive and 28 indeterminate. Among the 407 radiologist-NMs, 4 were classified positive, and 403 were indeterminate, of which 8 were classified positive after receiving a three-month follow-up CT. Radiologists, as first reader, would have led to 12/102 (11.8 %) missed referrals, higher than the 3/102 (2.9 %) of AI.

Conclusion

This study showed AI outperforms radiologists with significantly less NMs and therefore shows promise as first reader in a LCS program at baseline, by independently ruling-out negative cases without substantially increasing the risk of missed clinical referrals.
AI作为4-IN-THE-LUNG-RUN肺癌筛查试验第一阅读器的可行性:对阴性误分类和临床转诊率的影响
背景:肺癌筛查(LCS)低剂量CT (LDCT)可降低高危人群肺癌相关死亡率。人工智能可以通过排除阴性病例来减少放射科医生作为第一读过滤器的工作量。在欧洲4-IN-THE-LUNG-RUN (4ITLR)试验中评估了人工智能作为第一阅读器的可行性,将其阴性错误分类(NMs)与放射科医生的分类进行了比较,并对转诊率产生了影响。方法:从4itlr数据集的3678个基线ldct中收集NMs。ldct由放射科医生和专用人工智能软件(AVIEW-LCS, v1.1.42.92, coline - soft, Seoul, Korea)独立读取。当出现结节> 100 mm3,放射科医生或人工智能给出阴性分类(仅结节3或无结节)时,指定为NM,并以专家小组作为参考标准。区分不确定(100-300mm3)和阳性(>300 mm3),需要转诊进行临床检查。总体而言,基线时有102例转诊(2.8 %)。结果:在3678次基线扫描中,确定了438例NMs(11.9 %)(年龄:68 (IQR: 64-73)岁,241例男性);人工智能31例(0.8 %),放射科医生407例(11.1 %)。31例AI-NMs中,3例阳性,28例不确定。407名放射科医生中,4名诊断为阳性,403名不确定,其中8名在随访3个月CT后诊断为阳性。放射科医生,作为第一读者,将导致12/102(11.8 %)错过转诊,高于人工智能的3/102(2.9 %)。结论:该研究表明,人工智能的表现明显优于具有较少NMs的放射科医生,因此在基线时,通过独立排除阴性病例而不会显著增加错过临床转诊的风险,人工智能有望成为LCS项目的第一读者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
European Journal of Cancer
European Journal of Cancer 医学-肿瘤学
CiteScore
11.50
自引率
4.80%
发文量
953
审稿时长
23 days
期刊介绍: The European Journal of Cancer (EJC) serves as a comprehensive platform integrating preclinical, digital, translational, and clinical research across the spectrum of cancer. From epidemiology, carcinogenesis, and biology to groundbreaking innovations in cancer treatment and patient care, the journal covers a wide array of topics. We publish original research, reviews, previews, editorial comments, and correspondence, fostering dialogue and advancement in the fight against cancer. Join us in our mission to drive progress and improve outcomes in cancer research and patient care.
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