Department of Radiation Oncology, Graduate School of Biomedical Health Sciences, Hiroshima University, Hiroshima, 734-8551, Japan.
School of Medicine, Hiroshima University, Hiroshima, 734-8551, Japan.
Eur Radiol. 2024 Feb;34(2):1200-1209. doi: 10.1007/s00330-023-10020-8. Epub 2023 Aug 17.
To develop a multi-institutional prediction model to estimate the local response to oesophageal squamous cell carcinoma (ESCC) treated with definitive radiotherapy based on radiomics and dosiomics features.
The local responses were categorised into two groups (incomplete and complete). An external validation model and a hybrid model that the patients from two institutions were mixed randomly were proposed. The ESCC patients at stages I-IV who underwent chemoradiotherapy from 2012 to 2017 and had follow-up duration of more than 5 years were included. The patients who received palliative or pre-operable radiotherapy and had no FDG PET images were excluded. The segmentations included the GTV, CTV, and PTV which are used in treatment planning. In addition, shrinkage, expansion, and shell regions were created. Radiomic and dosiomic features were extracted from CT, FDG PET images, and dose distribution. Machine learning-based prediction models were developed using decision tree, support vector machine, k-nearest neighbour (kNN) algorithm, and neural network (NN) classifiers.
A total of 116 and 26 patients enrolled at Centre 1 and Centre 2, respectively. The external validation model exhibited the highest accuracy with 65.4% for CT-based radiomics, 77.9% for PET-based radiomics, and 72.1% for dosiomics based on the NN classifiers. The hybrid model exhibited the highest accuracy of 84.4% for CT-based radiomics based on the kNN classifier, 86.0% for PET-based radiomics, and 79.0% for dosiomics based on the NN classifiers.
The proposed hybrid model exhibited promising predictive performance for the local response to definitive radiotherapy in ESCC patients.
The prediction of the complete response for oesophageal cancer patients may contribute to improving overall survival. The hybrid model has the potential to improve prediction performance than the external validation model that was conventionally proposed.
• Radiomics and dosiomics used to predict response in patients with oesophageal cancer receiving definitive radiotherapy. • Hybrid model with neural network classifier of PET-based radiomics improved prediction accuracy by 8.1%. • The hybrid model has the potential to improve prediction performance.
基于影像组学和剂量组学特征,开发一种多机构预测模型,以估计接受根治性放疗的食管鳞癌(ESCC)的局部反应。
将局部反应分为两组(不完全和完全)。提出了一种外部验证模型和一种混合模型,即将来自两个机构的患者随机混合。纳入 2012 年至 2017 年间接受放化疗且随访时间超过 5 年的 I-IV 期 ESCC 患者。排除接受姑息性或术前放疗且无 FDG PET 图像的患者。分割包括治疗计划中使用的 GTV、CTV 和 PTV。此外,还创建了收缩、膨胀和壳区。从 CT、FDG PET 图像和剂量分布中提取放射组学和剂量组学特征。使用决策树、支持向量机、k-最近邻(kNN)算法和神经网络(NN)分类器开发基于机器学习的预测模型。
中心 1 和中心 2 分别纳入 116 例和 26 例患者。外部验证模型的 CT 基于放射组学准确率最高,为 65.4%,FDG PET 基于放射组学准确率最高,为 77.9%,NN 分类器基于剂量组学准确率最高,为 72.1%。kNN 分类器的 CT 基于放射组学的混合模型准确率最高,为 84.4%,FDG PET 基于放射组学准确率最高,为 86.0%,NN 分类器基于剂量组学准确率最高,为 79.0%。
所提出的混合模型对 ESCC 患者接受根治性放疗的局部反应具有良好的预测性能。
预测食管癌患者的完全缓解可能有助于提高总生存率。与传统提出的外部验证模型相比,混合模型具有提高预测性能的潜力。
放射组学和剂量组学用于预测接受根治性放疗的食管癌患者的反应。
基于 PET 放射组学的神经网络分类器的混合模型提高了 8.1%的预测准确性。
混合模型具有提高预测性能的潜力。