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首页> 外文期刊>IEEE Transactions on Medical Imaging >Numerical Surrogates for Human Observers in Myocardial Motion Evaluation From SPECT Images
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Numerical Surrogates for Human Observers in Myocardial Motion Evaluation From SPECT Images

机译:从SPECT图像评估心肌运动中人类观察者的数值替代

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摘要

In medical imaging, the gold standard for image-quality assessment is a task-based approach in which one evaluates human observer performance for a given diagnostic task (e.g., detection of a myocardial perfusion or motion defect). To facilitate practical task-based image-quality assessment, model observers are needed as approximate surrogates for human observers. In cardiac-gated SPECT imaging, diagnosis relies on evaluation of the myocardial motion as well as perfusion. Model observers for the perfusion-defect detection task have been studied previously, but little effort has been devoted toward development of a model observer for cardiac-motion defect detection. In this work, we describe two model observers for predicting human observer performance in detection of cardiac-motion defects. Both proposed methods rely on motion features extracted using previously reported deformable mesh model for myocardium motion estimation. The first method is based on a Hotelling linear discriminant that is similar in concept to that used commonly for perfusion-defect detection. In the second method, based on relevance vector machines (RVM) for regression, we compute average human observer performance by first directly predicting individual human observer scores, and then using multi reader receiver operating characteristic analysis. Our results suggest that the proposed RVM model observer can predict human observer performance accurately, while the new Hotelling motion-defect detector is somewhat less effective.
机译:在医学成像中,用于图像质量评估的金标准是一种基于任务的方法,其中可以评估人类观察者对给定诊断任务的性能(例如,心肌灌注或运动缺陷的检测)。为了促进基于任务的实用图像质量评估,需要模型观察者作为人类观察者的近似替代物。在心脏门控SPECT成像中,诊断取决于对心肌运动以及灌注的评估。先前已经研究了用于灌注缺陷检测任务的模型观察器,但是很少致力于开发用于心脏运动缺陷检测的模型观察器。在这项工作中,我们描述了两个用于预测人类观察者心脏运动缺陷检测性能的模型观察者。两种提出的方​​法都依赖于使用先前报道的可变形网格模型提取的运动特征来进行心肌运动估计。第一种方法基于霍特林线性判别式,该判别式在概念上与通常用于灌注缺陷检测的相似。在第二种方法中,基于相关矢量机(RVM)进行回归,我们首先通过直接预测单个人类观察者得分,然后使用多阅读器接收器运行特征分析来计算人类观察者平均表现。我们的结果表明,提出的RVM模型观测器可以准确地预测人类观测器的性能,而新的Hotelling运动缺陷检测器的效果则差一些。

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