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Evaluation of penalty design in penalized maximum-likelihood image reconstruction for lesion detection

机译:惩罚设计在惩罚性最大似然图像重建中的评估

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Detecting cancerous lesions is a major clinical application in emission tomography. In previous work, we have studied penalized maximum-likelihood (PML) image reconstruction for the detection task, where we used a multiview channelized Hotelling observer (mvCHO) to assess the lesion detectability in 3D images. It mimics the condition where a human observer examines three orthogonal views of a 3D image for lesion detection. We proposed a method to design a shift-variant quadratic penalty function to improve the detectability of lesions at unknown locations, and validated it using computer simulations. In this study we evaluated the benefit of the proposed penalty function for lesion detection using real data. A high-count real patient data with no identifiable tumor inside the field of view was used as the background data. A Na-22 point source was scanned in air at variable locations and the point source data were superimposed onto the patient data as artificial lesions after being attenuated by the patient body. Independent Poisson noise was added to the high-count sinograms to generate 200 pairs of lesion-present and lesion-absent data sets, each mimicking a 5-minute scans. Lesion detectability was assessed using a multiview CHO and a human observer two alternative forced choice (2AFC) experiment. The results showed that the optimized penalty can improve lesion detection over the conventional quadratic penalty function.
机译:检测癌性病变是放射断层扫描的主要临床应用。在以前的工作中,我们研究了用于检测任务的惩罚最大似然(PML)图像重建,其中我们使用了多视图通道化的Hotelling观察者(mvCHO)来评估3D图像中的病变检测能力。它模仿了人类观察者检查3D图像的三个正交视图以进行病变检测的情况。我们提出了一种设计移位变量二次罚函数的方法,以提高未知位置处病变的可检测性,并使用计算机仿真对其进行了验证。在这项研究中,我们评估了提出的惩罚函数对使用真实数据进行病灶检测的好处。将在视野内没有可辨认肿瘤的大量真实患者数据用作背景数据。在空气中的不同位置扫描Na-22点源,并将点源数据在被患者身体衰减后作为人工病变叠加到患者数据上。将独立的Poisson噪声添加到高计数正弦图中,以生成200对病变存在和缺失的数据集,每组都模拟5分钟的扫描。使用多视图CHO和人类观察者两个替代性强制选择(2AFC)实验评估了病变的可检测性。结果表明,与传统的二次惩罚函数相比,优化的惩罚可以改善病变检测。

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