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基于剂量组学预测肺癌患者放射性肺炎发生的研究
引用本文:闫萌,张臻,于佳琦,王伟,王清鑫,赵路军.基于剂量组学预测肺癌患者放射性肺炎发生的研究[J].中华放射肿瘤学杂志,2021,31(8):698-703.
作者姓名:闫萌  张臻  于佳琦  王伟  王清鑫  赵路军
作者单位:天津医科大学肿瘤医院放射治疗科/国家恶性肿瘤临床医学研究中心/天津市肿瘤防治重点实验室/天津市恶性肿瘤临床医学研究中心,天津 300060;
荷兰马斯特里赫特大学医学中心GROW肿瘤学院放射肿瘤学系,马斯特里赫特 6229ET
基金项目:国家自然科学基金(81872472)
摘    要:目的 探讨剂量组学在预测肺癌根治性放疗患者放射性肺炎发生中的应用潜能。方法 回顾性收集行根治性放疗的314例肺癌患者的临床资料、放疗剂量文件、定位及随访CT图像,根据临床资料及影像学随访资料对放射性肺炎进行分级,提取全肺的剂量组学特征,构建机器学习模型。应用1000次自助抽样法(bootstrap)的最小绝对值收敛和选择算子嵌套逻辑回归(LASSO‐LR)及1000次bootstrap的赤池信息量准则(AIC)向后法筛选与放射性肺炎相关的剂量组学特征,随机按照7∶3划分为训练集及验证集,应用逻辑回归建立预测模型,并应用ROC曲线及校正曲线评价模型的性能。结果 共提取120个剂量组学特征,经LASSO‐LR降维筛选得到12个特征进入“特征池”,再经过AIC向后法筛选,最终筛选出6个剂量组学特征进行模型构建,训练集AUC为0.77(95%CI为0.65~0.87),独立验证集AUC为0.72(95%CI为0.64~0.81)。结论 利用剂量组学建立的预测模型具有预测放射性肺炎发生的潜力,但仍需继续纳入多中心数据及前瞻性数据进一步挖掘剂量组学的应用潜能。

关 键 词:肺肿瘤  剂量组学  放射性肺炎  机器学习  
收稿时间:2021-11-15

Dosiomics‐based prediction of incidence of radiation pneumonitis in lung cancer patients
Yan Meng,Zhang Zhen,Yu Jiaqi,Wang Wei,Wang Qingxin,Zhao Lujun.Dosiomics‐based prediction of incidence of radiation pneumonitis in lung cancer patients[J].Chinese Journal of Radiation Oncology,2021,31(8):698-703.
Authors:Yan Meng  Zhang Zhen  Yu Jiaqi  Wang Wei  Wang Qingxin  Zhao Lujun
Institution:Department of Radiation Oncology, Tianjin Medical University Cancer Institute and Hospital / National Clinical Research Center for Cancer / Key Laboratory of Cancer Prevention and Therapy, Tianjin / Tianjin's Clinical Research Center for Cancer, Tianjin 300060, China;
Department of Radiation Oncology(MAASTRO), GROW School for Oncology and Reproduction, Maastricht University Medical Centre+, Maastricht 6229ET, The Netherlands
Abstract:Objective To explore the potential of dosiomics in predicting the incidence of radiation pneumonitis by extracting dosiomic features of definitive radiotherapy for lung cancer, and building a machine learning model. Methods The clinical data, dose files of radiotherapy, planning CT and follow‐up CT of 314 patients with lung cancer undergoing definitive radiotherapy were collected retrospectively. According to the clinical data and follow‐up CT, the radiation pneumonia was graded, and the dosiomic features of the whole lung were extracted to establish a machine learning model. Dosiomic features associated with radiation pneumonia by LASSO‐LR with 1000 bootstrap and AIC backward method with 1000 bootstraps were selected. Training cohort and validation cohort were randomly divided on the basis of 7:3.Logistic regression was used to establish the prediction model, and ROC curve and calibration curve were adopted to evaluate the performance of the model. Results A total of 120 dosiomic features were extracted. After LASSO‐LR dimensionality reduction, 12 features were selected into the "feature pool".After AIC, 6 dosiomic features were finally selected for model construction. The AUC of training cohort was 0.77(95%CI: 0.65 to 0.87), and the AUC of validation cohort was 0.72 (95%CI: 0.64 to 0.81). Conclusion The dosiomics prediction model has the potential to predict the incidence of radiation pneumonia, but it still needs to include multicenter data and prospective data.
Keywords:Lung neoplasms  Dosiomics  Radiation pneumonitis  Machine learning  
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