基于马尔可夫链蒙特卡罗的拟人幻影理想观察者计算。

Md Ashequr Rahman, Zitong Yu, Abhinav K Jha
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摘要

在医学成像中,人们普遍认为图像质量应该根据临床任务的表现进行客观评估。为了评估信号检测任务的性能,理想的观察者(IO)是最佳的,但在临床现实设置中计算也是具有挑战性的。基于马尔可夫链蒙特卡罗(MCMC)的策略已经证明了使用预先计算的解剖数据库投影来计算IO的能力。为了评估临床真实情况下的图像质量,应该根据真实的患者分布来测量观察者的表现。这意味着解剖数据库也应该来自于一个现实的人群。在本文中,我们建议推进基于mcmc的方法来实现这些目标。然后,我们使用该方法研究了解剖数据库大小对模拟心肌灌注SPECT图像中检测灌注缺陷任务IO计算的影响。我们的初步结果提供了证据,解剖数据库的大小影响IO的计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Ideal-Observer Computation with anthropomorphic phantoms using Markov chain Monte Carlo.

In medical imaging, it is widely recognized that image quality should be objectively evaluated based on performance in clinical tasks. To evaluate performance in signal-detection tasks, the ideal observer (IO) is optimal but also challenging to compute in clinically realistic settings. Markov Chain Monte Carlo (MCMC)-based strategies have demonstrated the ability to compute the IO using pre-computed projections of an anatomical database. To evaluate image quality in clinically realistic scenarios, the observer performance should be measured for a realistic patient distribution. This implies that the anatomical database should also be derived from a realistic population. In this manuscript, we propose to advance the MCMC-based approach towards achieving these goals. We then use the proposed approach to study the effect of anatomical database size on IO computation for the task of detecting perfusion defects in simulated myocardial perfusion SPECT images. Our preliminary results provide evidence that the size of the anatomical database affects the computation of the IO.

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