Automated estimation of individualized organ-specific dose and noise from clinical CT scans.

IF 3.4 3区 医学 Q2 ENGINEERING, BIOMEDICAL Physics in medicine and biology Pub Date : 2025-01-29 DOI:10.1088/1361-6560/ada67f
Sen Wang, Maria Jose Medrano, Abdullah Al Zubaer Imran, Wonkyeong Lee, Jennie Jiayi Cao, Grant M Stevens, Justin Ruey Tse, Adam S Wang
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Abstract

Objective. Radiation dose and diagnostic image quality are opposing constraints in x-ray computed tomography (CT). Conventional methods do not fully account for organ-level radiation dose and noise when considering radiation risk and clinical task. In this work, we develop a pipeline to generate individualized organ-specific dose and noise at desired dose levels from clinical CT scans.Approach. To estimate organ-specific dose and noise, we compute dose maps, noise maps at desired dose levels and organ segmentations. In our pipeline, dose maps are generated using Monte Carlo simulation. The noise map is obtained by scaling the inserted noise in synthetic low-dose emulation in order to avoid anatomical structures, where the scaling coefficients are empirically calibrated. Organ segmentations are generated by a deep learning-based method (TotalSegmentator). The proposed noise model is evaluated on a clinical dataset of 12 CT scans, a phantom dataset of 3 uniform phantom scans, and a cross-site dataset of 26 scans. The accuracy of deep learning-based segmentations for organ-level dose and noise estimates was tested using a dataset of 41 cases with expert segmentations of six organs: lungs, liver, kidneys, bladder, spleen, and pancreas.Main results. The empirical noise model performs well, with an average RMSE approximately 1.5 HU and an average relative RMSE approximately 5% across different dose levels. The segmentation from TotalSegmentator yielded a mean Dice score of 0.8597 across the six organs (max = 0.9315 in liver, min = 0.6855 in pancreas). The resulting error in organ-level dose and noise estimation was less than 2% for most organs.Significance. The proposed pipeline can output individualized organ-specific dose and noise estimates accurately for personalized protocol evaluation and optimization. It is fully automated and can be scalable to large clinical datasets. This pipeline can be used to optimize image quality for specific organs and thus clinical tasks, without adversely affecting overall radiation dose.

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临床CT扫描个体化器官特异性剂量和噪声的自动估计。
目标。在x射线计算机断层扫描(CT)中,辐射剂量和诊断图像质量是相对的制约因素。在考虑辐射风险和临床任务时,传统方法不能充分考虑器官水平的辐射剂量和噪声。在这项工作中,我们开发了一种管道,从临床CT扫描产生个性化的器官特异性剂量和所需剂量水平的噪声。为了估计器官特异性剂量和噪声,我们计算了剂量图、期望剂量水平下的噪声图和器官分割。在我们的管道中,剂量图是使用蒙特卡罗模拟生成的。噪声图是通过对合成低剂量仿真中插入的噪声进行缩放来获得的,避免了对解剖结构的缩放系数进行经验校准。器官分割是由基于深度学习的方法(TotalSegmentator)生成的。在12个CT扫描的临床数据集、3个均匀扫描的幻影数据集和26个扫描的跨站点数据集上对所提出的噪声模型进行了评估。使用41个病例的数据集测试了基于深度学习的器官水平剂量和噪声估计分割的准确性,这些数据集对六个器官进行了专家分割:肺、肝、肾、膀胱、脾和胰腺。主要的结果。经验噪声模型表现良好,在不同剂量水平上的平均RMSE约为1.5 HU,平均相对RMSE约为5%。来自TotalSegmentator的分割在六个器官中产生的平均Dice得分为0.8597(肝脏中max = 0.9315,胰腺中min = 0.6855)。结果在大多数器官的器官水平剂量和噪声估计误差小于2%。所提出的管道可以准确地输出个性化器官特异性剂量和噪声估计,用于个性化方案评估和优化。它是完全自动化的,可以扩展到大型临床数据集。该管道可用于优化特定器官和临床任务的图像质量,而不会对总体辐射剂量产生不利影响。
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来源期刊
Physics in medicine and biology
Physics in medicine and biology 医学-工程:生物医学
CiteScore
6.50
自引率
14.30%
发文量
409
审稿时长
2 months
期刊介绍: The development and application of theoretical, computational and experimental physics to medicine, physiology and biology. Topics covered are: therapy physics (including ionizing and non-ionizing radiation); biomedical imaging (e.g. x-ray, magnetic resonance, ultrasound, optical and nuclear imaging); image-guided interventions; image reconstruction and analysis (including kinetic modelling); artificial intelligence in biomedical physics and analysis; nanoparticles in imaging and therapy; radiobiology; radiation protection and patient dose monitoring; radiation dosimetry
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