应用Brock模型和Sybil模型预测持续性肺结节患者的肺癌风险。

IF 4.5 2区 医学 Q1 ONCOLOGY
Cancers Pub Date : 2025-04-29 DOI:10.3390/cancers17091499
Hui Li, Morteza Salehjahromi, Myrna C B Godoy, Kang Qin, Courtney M Plummer, Zheng Zhang, Lingzhi Hong, Simon Heeke, Xiuning Le, Natalie Vokes, Bingnan Zhang, Haniel A Araujo, Mehmet Altan, Carol C Wu, Mara B Antonoff, Edwin J Ostrin, Don L Gibbons, John V Heymach, J Jack Lee, David E Gerber, Jia Wu, Jianjun Zhang
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引用次数: 0

摘要

背景/目的:持续性肺结节发展为肺癌的风险较高。评估他们未来的癌症风险对于成功拦截至关重要。我们在基于医院的队列中评估了两种持久性结节风险预测模型的性能:基于临床和放射学特征的Brock模型和用于肺癌风险预测的新型深度学习模型Sybil模型。方法:持续性肺结节患者(定义为间隔3个月至少两次CT扫描发现结节,无收缩证据)被纳入回顾性(n = 130)和前瞻性(n = 301)队列。我们分析了人口统计学因素、结节特征和Brock评分之间的相关性,并评估了两种模型的性能。我们还建立了机器学习模型来完善我们队列的风险评估。结果:在回顾性队列中,Brock评分从0%到85.82%不等。在前瞻性队列中,301例患者中有62例诊断为肺癌,Brock评分中位数高于未诊断为肺癌的患者(18.65%比4.95%,p < 0.001)。家族史、结节大小≥10mm、部分实性结节类型和细刺与肺癌风险相关。Brock模型的AUC为0.679,Sybil的AUC为0.678。我们测试了五个机器学习模型,逻辑回归模型的AUC最高,为0.729。结论:对于现实世界癌症医院队列中的持续性肺结节患者,Brock和Sybil模型在肺癌风险预测方面都有价值和局限性。优化这一人群的预测模型对于提高早期肺癌的检测和拦截至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lung Cancer Risk Prediction in Patients with Persistent Pulmonary Nodules Using the Brock Model and Sybil Model.

Background/objectives: Persistent pulmonary nodules are at higher risk of developing into lung cancers. Assessing their future cancer risk is essential for successful interception. We evaluated the performance of two risk prediction models for persistent nodules in hospital-based cohorts: the Brock model, based on clinical and radiological characteristics, and the Sybil model, a novel deep learning model for lung cancer risk prediction.

Methods: Patients with persistent pulmonary nodules-defined as nodules detected on at least two computed tomography (CT) scans, three months apart, without evidence of shrinkage-were included in the retrospective (n = 130) and prospective (n = 301) cohorts. We analyzed the correlations between demographic factors, nodule characteristics, and Brock scores and assessed the performance of both models. We also built machine learning models to refine the risk assessment for our cohort.

Results: In the retrospective cohort, Brock scores ranged from 0% to 85.82%. In the prospective cohort, 62 of 301 patients were diagnosed with lung cancer, displaying higher median Brock scores than those without lung cancer diagnosis (18.65% vs. 4.95%, p < 0.001). Family history, nodule size ≥10 mm, part-solid nodule types, and spiculation were associated with the risks of lung cancer. The Brock model had an AUC of 0.679, and Sybil's AUC was 0.678. We tested five machine learning models, and the logistic regression model achieved the highest AUC at 0.729.

Conclusions: For patients with persistent pulmonary nodules in real-world cancer hospital-based cohorts, both the Brock and Sybil models had values and limitations for lung cancer risk prediction. Optimizing predictive models in this population is crucial for improving early lung cancer detection and interception.

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来源期刊
Cancers
Cancers Medicine-Oncology
CiteScore
8.00
自引率
9.60%
发文量
5371
审稿时长
18.07 days
期刊介绍: Cancers (ISSN 2072-6694) is an international, peer-reviewed open access journal on oncology. It publishes reviews, regular research papers and short communications. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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