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Channelized Hotelling observers for the assessment of volumetric imaging data sets

机译:通道化的Hotelling观察员,用于评估体积成像数据集

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摘要

Current clinical practice is rapidly moving in the direction of volumetric imaging. For two-dimensional (2D) images, task-based medical image quality is often assessed using numerical model observers. For three-dimensional (3D) images, however, these models have been little explored so far. In this work, first, two novel designs of a multislice channelized Hotelling observer (CHO) are proposed for the task of detecting 3D signals in 3D images. The novel designs are then compared and evaluated in a simulation study with five different CHO designs: a single-slice model, three multislice models, and a volumetric model. Four different random background statistics are considered, both Gaussian (noncorrelated and correlated Gaussian noise) and non-Gaussian (lumpy and clustered lumpy backgrounds). Overall, the results show that the volumetric model outperforms the others, while the disparity between the models decreases for greater complexity of the detection task. Among the multi-slice models, the second proposed CHO could most closely approach the volumetric model, whereas the first new CHO seems to be least affected by the number of training samples.
机译:当前的临床实践正朝着体积成像的方向快速发展。对于二维(2D)图像,通常使用数值模型观察器评估基于任务的医学图像质量。但是,对于三维(3D)图像,这些模型迄今很少探索。在这项工作中,首先,为检测3D图像中的3D信号,提出了两种多层通道化的Hotelling观测器(CHO)的新颖设计。然后在模拟研究中使用五种不同的CHO设计对新颖设计进行比较和评估:单切片模型,三个多层模型和体积模型。考虑了四种不同的随机背景统计数据,即高斯噪声(不相关和相关的高斯噪声)和非高斯噪声(块状和群集块状背景)。总体而言,结果表明,体积模型的性能优于其他模型,而模型之间的差异则随着检测任务的复杂性的降低而减小。在多层模型中,第二个建议的CHO可以最接近体积模型,而第一个新的CHO似乎受训练样本数量的影响最小。

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