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使用平面组学特征改进头颈部容积调强弧形治疗计划的患者特异性质量保证的预测和分类。

Improvement Using Planomics Features on Prediction and Classification of Patient-Specific Quality Assurance Using Head and Neck Volumetric Modulated Arc Therapy Plan.

作者信息

Li Bing, Chen Junying, Guo Wei, Mao Ronghu, Zheng Xiaoli, Cheng Xiuyan, Cui Tiantian, Lou Zhaoyang, Wang Ting, Li Dingjie, Tao Hongyan, Lei Hongchang, Ge Hong

机构信息

Department of Radiation Oncology, Affiliated Cancer Hospital of Zhengzhou University, Henan Cancer Hospital, Zhengzhou, China.

State Key Laboratory of Oncology in South China, Collaborative Innovation Center for Cancer Medicine, Sun Yat-sen University Cancer Center, Guangzhou, China.

出版信息

Front Neurosci. 2021 Oct 1;15:744296. doi: 10.3389/fnins.2021.744296. eCollection 2021.

Abstract

This study aimed to evaluate the utility of a new plan feature (planomics feature) for predicting the results of patient-specific quality assurance using the head and neck (H&N) volumetric modulated arc therapy (VMAT) plan. One hundred and thirty-one H&N VMAT plans in our institution from 2019 to 2021 were retrospectively collected. Dosimetric verification for all plans was carried out using the portal dosimetry system integrated into the Eclipse treatment planning system based on the electronic portal imaging devices. Gamma passing rates (GPR) were analyzed using three gamma indices of 3%/3 mm, 3%/2 mm, and 2%/2 mm with a 10% dose threshold. Forty-eight conventional features affecting the dose delivery accuracy were used in the study, and 2,476 planomics features were extracted based on the radiotherapy plan file. Three prediction and classification models using conventional features (CF), planomics features (PF), and hybrid features (HF) combining two sets of features were constructed by the gradient boosting regressor (GBR) and Ridge classifier for each GPR of 3%/3 mm, 3%/2 mm, and 2%/2 mm, respectively. The absolute prediction error (APE) and the area under the curve (AUC) were adopted for assessing the performance of prediction and classification models. In the GPR prediction, the average APE of the models using CF, PF, and HF was 1.3 ± 1.2%/3.6 ± 3.0%, 1.7 ± 1.5%/3.8 ± 3.5%, and 1.1 ± 1.0%/4.1 ± 3.1% for 2%/2 mm; 0.7 ± 0.6%/2.0 ± 2.0%, 1.0±1.1%/2.2 ± 1.8%, and 0.6 ± 0.6%/2.2 ± 1.9% for 3%/2 mm; and 0.4 ± 0.3%/1.2 ± 1.2%, 0.4±0.5%/1.3 ± 1.0%, and 0.3±0.3%/1.2 ± 1.1% for 3%/3 mm, respectively. In the regression prediction, three models give a similar modeling performance for predicting the GPR. The classification results were 0.67 ± 0.03/0.66 ± 0.07, 0.77 ± 0.03/0.73 ± 0.06, and 0.78 ± 0.02/0.75 ± 0.04 for 3%/3 mm, respectively. For 3%/2 mm, the AUCs of the training and testing cohorts were 0.64 ± 0.03/0.62 ± 0.07, 0.70 ± 0.03/0.67 ± 0.06, and 0.75 ± 0.03/0.71 ± 0.07, respectively, and for 2%/2 mm, the average AUCs of the training and testing cohorts were 0.72 ± 0.03/0.72 ± 0.06, 0.78 ± 0.04/0.73 ± 0.07, and 0.81 ± 0.03/0.75 ± 0.06, respectively. In the classification, the PF model has a better classification performance than the CF model. Moreover, the HF model provides the best result among the three classifications models. The planomics features can be used for predicting and classifying the GPR results and for improving the model performance after combining the conventional features for the GPR classification.

摘要

本研究旨在评估一种新的计划特征(计划组学特征)在预测头颈部(H&N)容积调强弧形放疗(VMAT)计划的患者特异性质量保证结果方面的效用。回顾性收集了2019年至2021年我院131例H&N VMAT计划。使用集成到基于电子门静脉成像设备的Eclipse治疗计划系统中的门静脉剂量测定系统对所有计划进行剂量验证。使用3%/3 mm、3%/2 mm和2%/2 mm这三个伽马指数以及10%的剂量阈值分析伽马通过率(GPR)。本研究使用了48个影响剂量传递准确性的传统特征,并基于放疗计划文件提取了2476个计划组学特征。分别针对3%/3 mm、3%/2 mm和2%/2 mm的每个GPR,通过梯度提升回归器(GBR)和岭分类器构建了三个使用传统特征(CF)、计划组学特征(PF)以及结合两组特征的混合特征(HF)的预测和分类模型。采用绝对预测误差(APE)和曲线下面积(AUC)来评估预测和分类模型的性能。在GPR预测中,对于2%/2 mm,使用CF、PF和HF的模型的平均APE分别为1.3±1.2%/3.6±3.0%、1.7±1.5%/3.8±3.5%和1.1±1.0%/4.1±3.1%;对于3%/2 mm,分别为0.7±0.6%/2.0±2.0%、1.0±1.1%/2.2±1.8%和0.6±0.6%/2.2±1.9%;对于3%/3 mm,分别为0.4±0.3%/1.2±1.2%、0.4±0.5%/1.3±1.0%和0.3±0.3%/1.2±1.1%。在回归预测中,三个模型在预测GPR方面具有相似建模性能。对于3%/3 mm,分类结果分别为0.67±0.03/0.66±0.07、0.77±0.03/0.73±0.06和0.78±0.02/0.75±0.04。对于3%/2 mm,训练和测试队列的AUC分别为0.64±0.03/0.62±0.07、0.70±0.03/0.67±0.06和0.75±0.03/0.71±0.07,对于2%/2 mm,训练和测试队列的平均AUC分别为0.72±0.03/0.72±0.06、0.78±0.04/0.73±0.07和0.81±0.03/0.75±0.06。在分类中,PF模型比CF模型具有更好的分类性能。此外,HF模型在三个分类模型中提供了最佳结果。计划组学特征可用于预测和分类GPR结果,并在结合传统特征进行GPR分类后提高模型性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/91b6/8517188/b268eb6aa7d2/fnins-15-744296-g001.jpg

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