开发和应用虚拟成像试验框架,对 CT 中的肺气肿进行纵向量化。

Saman Sotoudeh-Paima, Fong Chi Ho, Mobina Ghojogh Nejad, Amar Kavuri, Bryan O'Sullivan-Murphy, David A Lynch, W Paul Segars, Ehsan Samei, Ehsan Abadi
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引用次数: 0

摘要

肺气肿是一种渐进性肺部疾病,需要准确的评估才能进行最佳治疗。由于扫描仪和患者的属性会随着时间的推移而发生变化,从而对 CT 导出的定量指标产生负面影响,因此使用定量 CT 来完成这项任务尤其具有挑战性。由于缺乏临床数据的基本真相,最大限度地减少这种变化的努力受到了限制,因此必须依赖临床替代物,而临床替代物与基于 CT 的研究结果可能不是一一对应的。本研究旨在开发第一套多时间点肺气肿人体模型,以便在获得基本事实的情况下对疾病进展进行纵向评估。共有 14 名虚拟受试者在三个时间点上进行了建模。每个人体模型都使用经过验证的成像模拟器(DukeSim)进行虚拟成像,模拟能量集成 CT 扫描仪。模型在两种剂量水平下进行扫描,并使用两种重建核、切片厚度和像素大小进行重建。开发的纵向模型被进一步用于展示算法测试和开发的实用性。对之前开发的两种图像处理算法(CT-HARMONICA、EmphysemaSeg)进行了评估。结果表明,这两种算法都能有效提高纵向量化的准确度和精确度,0-5 年的准确度和精确度分别从 6.1±6.3% 和 1.6±2.2% 降至 1.1±1.1% 和 1.6±2.2%。对 EmphysemaSeg 的进一步调查发现,基线肺气肿严重程度(定义为第 0 年时肺气肿>5%)导致其性能下降。这一发现凸显了虚拟成像试验在提高算法可解释性方面的价值。总之,所开发的纵向人体模型能够对用于肺部量化的图像处理算法进行基于地面实况的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development and Application of a Virtual Imaging Trial Framework for Longitudinal Quantification of Emphysema in CT.

Pulmonary emphysema is a progressive lung disease that requires accurate evaluation for optimal management. This task, possible using quantitative CT, is particularly challenging as scanner and patient attributes change over time, negatively impacting the CT-derived quantitative measures. Efforts to minimize such variations have been limited by the absence of ground truth in clinical data, thus necessitating reliance on clinical surrogates, which may not have one-to-one correspondence to CT-based findings. This study aimed to develop the first suite of human models with emphysema at multiple time points, enabling longitudinal assessment of disease progression with access to ground truth. A total of 14 virtual subjects were modeled across three time points. Each human model was virtually imaged using a validated imaging simulator (DukeSim), modeling an energy-integrating CT scanner. The models were scanned at two dose levels and reconstructed with two reconstruction kernels, slice thicknesses, and pixel sizes. The developed longitudinal models were further utilized to demonstrate utility in algorithm testing and development. Two previously developed image processing algorithms (CT-HARMONICA, EmphysemaSeg) were evaluated. The results demonstrated the efficacy of both algorithms in improving the accuracy and precision of longitudinal quantifications, from 6.1±6.3% to 1.1±1.1% and 1.6±2.2% across years 0-5. Further investigation in EmphysemaSeg identified that baseline emphysema severity, defined as >5% emphysema at year 0, contributed to its reduced performance. This finding highlights the value of virtual imaging trials in enhancing the explainability of algorithms. Overall, the developed longitudinal human models enabled ground-truth based assessment of image processing algorithms for lung quantifications.

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