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CT-based radiomics-deep learning model predicts occult lymph node metastasis in early-stage lung adenocarcinoma patients:A multicenter study 被引量:1
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作者 Xiaoyan Yin Yao Lu +6 位作者 yongbin cui Zichun Zhou Junxu Wen Zhaoqin Huang Yuanyuan Yan Jinming Yu Xiangjiao Meng 《Chinese Journal of Cancer Research》 2025年第1期12-27,共16页
Objective:The neglect of occult lymph nodes metastasis(OLNM)is one of the pivotal causes of early non-small cell lung cancer(NSCLC)recurrence after local treatments such as stereotactic body radiotherapy(SBRT)or surge... Objective:The neglect of occult lymph nodes metastasis(OLNM)is one of the pivotal causes of early non-small cell lung cancer(NSCLC)recurrence after local treatments such as stereotactic body radiotherapy(SBRT)or surgery.This study aimed to develop and validate a computed tomography(CT)-based radiomics and deep learning(DL)fusion model for predicting non-invasive OLNM.Methods:Patients with radiologically node-negative lung adenocarcinoma from two centers were retrospectively analyzed.We developed clinical,radiomics,and radiomics-clinical models using logistic regression.A DL model was established using a three-dimensional squeeze-and-excitation residual network-34(3D SE-ResNet34)and a fusion model was created by integrating seleted clinical,radiomics features and DL features.Model performance was assessed using the area under the curve(AUC)of the receiver operating characteristic(ROC)curve,calibration curves,and decision curve analysis(DCA).Five predictive models were compared;SHapley Additive exPlanations(SHAP)and Gradient-weighted Class Activation Mapping(Grad-CAM)were employed for visualization and interpretation.Results:Overall,358 patients were included:186 in the training cohort,48 in the internal validation cohort,and 124 in the external testing cohort.The DL fusion model incorporating 3D SE-Resnet34 achieved the highest AUC of 0.947 in the training dataset,with strong performance in internal and external cohorts(AUCs of 0.903 and 0.907,respectively),outperforming single-modal DL models,clinical models,radiomics models,and radiomicsclinical combined models(DeLong test:P<0.05).DCA confirmed its clinical utility,and calibration curves demonstrated excellent agreement between predicted and observed OLNM probabilities.Features interpretation highlighted the importance of textural characteristics and the surrounding tumor regions in stratifying OLNM risk.Conclusions:The DL fusion model reliably and accurately predicts OLNM in early-stage lung adenocarcinoma,offering a non-invasive tool to refine staging and guide personalized treatment decisions.These results may aid clinicians in optimizing surgical and radiotherapy strategies. 展开更多
关键词 Radiomics lung adenocarcinoma occult lymph node metastasis deep learning
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放射治疗质控原理:前瞻性思考 被引量:1
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作者 李振江 崔永斌 尹勇 《科学通报》 北大核心 2025年第33期5587-5594,共8页
当前,放射治疗质量控制的核心目标正从传统的误差控制逐步迈向以疗效为导向的智能决策.本文从技术演进的角度重新审视质控体系的本质与未来发展方向.从图像引导、剂量验证及标准化协议(如AAPM TG-142)的传统质控展开,进一步论述了以人... 当前,放射治疗质量控制的核心目标正从传统的误差控制逐步迈向以疗效为导向的智能决策.本文从技术演进的角度重新审视质控体系的本质与未来发展方向.从图像引导、剂量验证及标准化协议(如AAPM TG-142)的传统质控展开,进一步论述了以人工智能、实时影像引导放疗、区块链等多学科为基础的现代质控方向. 展开更多
关键词 前瞻性思考 误差控制 放射治疗 质量控制
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