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Regularization design in penalized maximum-likelihood imagereconstruction for lesion detection in 3D PET

机译:惩罚最大似然图像的正则化设计重建以在3D PET中进行病变检测

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摘要

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 and proposed a method to design a shift-invariant quadratic penalty function to maximize detectability of a lesion at a known location in a two dimensional (2D) image. Here we extend the regularization design to maximize detectability of lesions at unknown locations in fully 3D PET. We used a multiview channelized Hotelling observer (mvCHO) to assess the lesion detectability in 3D images to mimic the condition where a human observer examines three orthogonal views of a 3D image for lesion detection. We derived simplified theoretical expressions that allow fast prediction of the detectability of a 3D lesion. The theoretical results were used to design the regularization in PML reconstruction to improve lesion detectability. We conducted computer-based Monte Carlo simulations to compare the optimized penalty with the conventional penalty for detecting lesions of various sizes. Only true coincidence events were simulated. Lesion detectability was also assessed by two human observers, whose performances agree well with that of the mvCHO. Both the numerical observer and human observer results showeda statistically significant improvement in lesion detection by using theproposed penalty function compared to using the conventional penaltyfunction.
机译:检测癌性病变是放射断层扫描的主要临床应用。在先前的工作中,我们研究了用于检测任务的惩罚最大似然(PML)图像重建,并提出了一种设计不变位移二次罚函数的方法,以最大化二维(2D)已知位置处病变的可检测性。图片。在这里,我们扩展了正则化设计,以最大限度地提高全3D PET中未知位置处病变的可检测性。我们使用多视图通道化的Hotelling观察者(mvCHO)来评估3D图像中的病变可检测性,以模仿人类观察者检查3D图像的三个正交视图以进行病变检测的情况。我们导出了简化的理论表达式,可以快速预测3D病变的可检测性。理论结果用于设计PML重建中的正则化,以提高病变的可检测性。我们进行了基于计算机的蒙特卡洛模拟,以比较优化惩罚与常规惩罚以检测各种大小的病变。仅模拟了真正的巧合事件。两名人类观察者还评估了病变的可检测性,他们的表现与mvCHO的表现十分吻合。数值观察者和人类观察者的结果都表明通过使用与使用常规惩罚相比拟议的惩罚函数功能。

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