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首页> 外文期刊>IEEE Transactions on Medical Imaging >Personalized Models for Injected Activity Levels in SPECT Myocardial Perfusion Imaging
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Personalized Models for Injected Activity Levels in SPECT Myocardial Perfusion Imaging

机译:SPECT心肌灌注成像中注入活动水平的个性化模型

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We propose a patient-specific ("personalized") approach for tailoring the injected activities to individual patients in order to achieve dose reduction in SPECT-myocardial perfusion imaging (MPI). First, we develop a strategy to determine the minimum dose levels required for each patient in a large set of clinical acquisitions (857 subjects) such that the reconstructed images are sufficiently similar to that obtained at conventional clinical dose. We then apply machine learning models to predict the required dose levels on an individual basis based on a set of patient attributes which include body measurements and various clinical variables. We demonstrate the personalized dose models for two commonly used reconstruction methods in clinical SPECT-MPI: 1) conventional filtered backprojection (FBP) with post-filtering and 2) ordered-subsets expectation-maximization (OS-EM) with corrections for attenuation, scatter and resolution, and evaluate their performance in perfusion-defect detection by using the clinical Quantitative Perfusion SPECT software package. The results indicate that the achieved dose reduction can vary greatly among individuals from their conventional clinical dose and that the personalized dose models can achieve further reduction on average compared with a global (non-patient specific) dose reduction approach. In particular, the average personalized dose level can be reduced to 58% and 54% of the full clinical dose, respectively, for FBP and OS-EM reconstruction, while without deteriorating the accuracy in perfusion-defect detection. Furthermore, with the average personalized dose further reduced to only 16% of full dose, OS-EM can still achieve a detection accuracy level comparable to that of FBP with full dose.
机译:我们提出了一种针对患者的特定于患者的(“个性化”)方法,以针对各个患者调整注射活动,以实现SPECT心肌灌注成像(MPI)剂量的减少。首先,我们制定一种策略,以确定在大量临床采集(857名受试者)中每位患者所需的最低剂量水平,以使重建图像与常规临床剂量下获得的图像足够相似。然后,我们基于一组患者属性(包括身体测量值和各种临床变量),应用机器学习模型来预测所需的剂量水平。我们展示了临床SPECT-MPI中两种常用重建方法的个性化剂量模型:1)具有后置滤波的常规滤波反投影(FBP)和2)修正了衰减,散射的有序子集期望最大化(OS-EM)和分辨率,并使用临床定量灌注SPECT软件包评估其在灌注缺陷检测中的性能。结果表明,与总体(非患者特定)剂量降低方法相比,个体之间实现的剂量降低与常规临床剂量之间可能存在很大差异,个性化剂量模型平均可以实现进一步降低。特别是,对于FBP和OS-EM重建,平均个性化剂量水平可以分别降低到全部临床剂量的58%和54%,而不会降低灌注缺陷检测的准确性。此外,随着平均个性化剂量进一步降低到全剂量的16%,OS-EM仍可以达到与全剂量FBP相当的检测精度水平。

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