Tzanis Eleftherios, Damilakis John
Department of Medical Physics, School of Medicine, University of Crete, Heraklion, Greece.
Eur Radiol. 2025 Feb;35(2):919-928. doi: 10.1007/s00330-024-11002-0. Epub 2024 Aug 13.
To develop a machine learning-based pipeline for multi-organ/tissue personalized radiation dosimetry in CT.
For the study, 95 chest CT scans and 85 abdominal CT scans were collected retrospectively. For each CT scan, a personalized Monte Carlo (MC) simulation was carried out. The produced 3D dose distributions and the respective CT examinations were utilized for the development of organ/tissue-specific dose prediction deep neural networks (DNNs). A pipeline that integrates a robust open-source organ segmentation tool with the dose prediction DNNs was developed for the automatic estimation of radiation doses for 30 organs/tissues including sub-volumes of the heart and lungs. The accuracy and time efficiency of the presented methodology was assessed. Statistical analysis (t-tests) was conducted to determine if the differences between the ground truth organ/tissue radiation dose estimates and the respective dose predictions were significant.
The lowest median percentage differences between MC-derived organ/tissue doses and DNN dose predictions were observed for the lung vessels (4.3%), small bowel (4.7%), pulmonary artery (4.7%), and colon (5.2%), while the highest differences were observed for the right lung's upper lobe (13.3%), spleen (13.1%), pancreas (12.1%), and stomach (11.6%). Statistical analysis showed that the differences were not significant (p-value > 0.18). Furthermore, the mean inference time, regarding the validation cohort, of the developed methodology was 77.0 ± 11.0 s.
The proposed workflow enables fast and accurate organ/tissue radiation dose estimations. The developed algorithms and dose prediction DNNs are publicly available ( https://github.com/eltzanis/multi-structure-CT-dosimetry ).
The accuracy and time efficiency of the developed pipeline compose a useful tool for personalized dosimetry in CT. By adopting the proposed workflow, institutions can utilize an automated pipeline for patient-specific dosimetry in CT.
Personalized dosimetry is ideal, but is time-consuming. The proposed pipeline composes a tool for facilitating patient-specific CT dosimetry in routine clinical practice. The developed workflow integrates a robust open-source segmentation tool with organ/tissue-specific dose prediction neural networks.
开发一种基于机器学习的CT多器官/组织个性化辐射剂量测定流程。
本研究回顾性收集了95例胸部CT扫描和85例腹部CT扫描。对每例CT扫描进行个性化蒙特卡罗(MC)模拟。生成的三维剂量分布和相应的CT检查用于开发器官/组织特异性剂量预测深度神经网络(DNN)。开发了一种将强大的开源器官分割工具与剂量预测DNN集成的流程,用于自动估计30个器官/组织(包括心脏和肺部子体积)的辐射剂量。评估了所提出方法的准确性和时间效率。进行统计分析(t检验)以确定真实器官/组织辐射剂量估计值与相应剂量预测值之间的差异是否显著。
在肺血管(4.3%)、小肠(4.7%)、肺动脉(4.7%)和结肠(5.2%)中观察到MC衍生的器官/组织剂量与DNN剂量预测之间的最低中位数百分比差异,而在右肺上叶(13.3%)、脾脏(13.1%)、胰腺(12.1%)和胃(11.6%)中观察到最高差异。统计分析表明差异不显著(p值>0.18)。此外,所开发方法针对验证队列的平均推理时间为77.0±11.0秒。
所提出的工作流程能够快速准确地估计器官/组织辐射剂量。所开发的算法和剂量预测DNN可公开获取(https://github.com/eltzanis/multi-structure-CT-dosimetry)。
所开发流程的准确性和时间效率构成了CT个性化剂量测定的有用工具。通过采用所提出的工作流程,医疗机构可以在CT中使用自动化流程进行患者特异性剂量测定。
个性化剂量测定是理想的,但耗时。所提出的流程构成了在常规临床实践中促进患者特异性CT剂量测定的工具。所开发的工作流程将强大的开源分割工具与器官/组织特异性剂量预测神经网络集成在一起。