通过临床深度学习放射组学模型预测晚期食管癌放疗/化疗患者的食管瘘:预测放疗/化疗患者的食管瘘。

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING BMC Medical Imaging Pub Date : 2024-11-18 DOI:10.1186/s12880-024-01473-4
Yuxin Zhang, Xu Cheng, Xianli Luo, Ruixia Sun, Xiang Huang, Lingling Liu, Min Zhu, Xueling Li
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引用次数: 0

摘要

背景:食管瘘(EF)是一种罕见且可能致命的并发症,利用预测模型可以更好地管理食管癌的个性化治疗方案。我们旨在开发一种临床深度学习放射组学模型,以有效预测 EF 的发生:研究涉及接受放疗或化放疗的食管癌患者。研究对象为接受放疗或化疗的食管癌患者,使用动脉相位增强 CT 图像提取手工和深度学习放射组学特征。结合临床信息,采用三步特征选择法(统计检验、最小绝对收缩和选择操作符以及递归特征消除)在训练队列中识别出五个特征集,用于构建随机森林 EF 预测模型。在回顾性和前瞻性测试队列中对模型性能进行了比较和验证:从 2018 年 4 月至 2022 年 6 月,回顾性收集了 175 名患者(其中 122 名在训练队列中,53 名在测试队列中)。在 2022 年 6 月至 2023 年 12 月期间,又有 27 名患者被纳入前瞻性测试队列。在训练队列中进行筛选后,使用五个特征集构建模型:临床、手工制作放射组学、深度学习放射组学、临床-手工制作放射组学和临床-深度学习放射组学。临床-深度学习放射学模型表现优异,在训练队列中的 AUC 为 0.89(95% 置信区间:0.83-0.95),在测试队列中的 AUC 为 0.81(0.65-0.94),在前瞻性测试队列中的 AUC 为 0.85(0.71-0.97)。布赖尔分数和校准曲线分析验证了该模型的预测能力:结论:临床深度学习放射学模型能有效预测接受放疗或化疗的晚期食管癌患者的EF。
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Prediction of esophageal fistula in radiotherapy/chemoradiotherapy for patients with advanced esophageal cancer by a clinical-deep learning radiomics model : Prediction of esophageal fistula in radiotherapy/chemoradiotherapy patients.

Background: Esophageal fistula (EF), a rare and potentially fatal complication, can be better managed with predictive models for personalized treatment plans in esophageal cancers. We aim to develop a clinical-deep learning radiomics model for effectively predicting the occurrence of EF.

Methods: The study involved esophageal cancer patients undergoing radiotherapy or chemoradiotherapy. Arterial phase enhanced CT images were used to extract handcrafted and deep learning radiomic features. Along with clinical information, a 3-step feature selection method (statistical tests, Least Absolute Shrinkage and Selection Operator, and Recursive Feature Elimination) was used to identify five feature sets in training cohort for constructing random forest EF prediction models. Model performance was compared and validated in both retrospective and prospective test cohorts.

Results: One hundred seventy five patients (122 in training and 53 in test cohort)were retrospectively collected from April 2018 to June 2022. An additional 27 patients were enrolled as a prospective test cohort from June 2022 to December 2023. Post-selection in the training cohort, five feature sets were used for model construction: clinical, handcrafted radiomic, deep learning radiomic, clinical-handcrafted radiomic, and clinical-deep learning radiomic. The clinical-deep learning radiomic model excelled with AUC of 0.89 (95% Confidence Interval: 0.83-0.95) in the training cohort, 0.81 (0.65-0.94) in the test cohort, and 0.85 (0.71-0.97) in the prospective test cohort. Brier-score and calibration curve analyses validated its predictive ability.

Conclusions: The clinical-deep learning radiomic model can effectively predict EF in patients with advanced esophageal cancer undergoing radiotherapy or chemoradiotherapy.

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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
期刊最新文献
Prediction of esophageal fistula in radiotherapy/chemoradiotherapy for patients with advanced esophageal cancer by a clinical-deep learning radiomics model : Prediction of esophageal fistula in radiotherapy/chemoradiotherapy patients. Prior information guided deep-learning model for tumor bed segmentation in breast cancer radiotherapy. The predictive value of nomogram for adnexal cystic-solid masses based on O-RADS US, clinical and laboratory indicators. The study on ultrasound image classification using a dual-branch model based on Resnet50 guided by U-net segmentation results. Diagnostic performance of adult-based thyroid imaging reporting and data systems in pediatric thyroid carcinoma: a retrospective study.
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