Abbey Craig K, Lago Miguel A, Eckstein Miguel P
University of California Santa Barbara, Department of Psychological and Brain Sciences, Santa Barbara, United States.
J Med Imaging (Bellingham). 2021 Jul;8(4):041206. doi: 10.1117/1.JMI.8.4.041206. Epub 2021 Mar 18.
Three-dimensional "volumetric" imaging methods are now a common component of medical imaging across many imaging modalities. Relatively little is known about how human observers localize targets masked by noise and clutter as they scroll through a 3D image and how it compares to a similar task confined to a single 2D slice. Gaussian random textures were used to represent noisy volumetric medical images. Subjects were able to freely inspect the images, including scrolling through 3D images as part of their search process. A total of eight experimental conditions were evaluated (2D versus 3D images, large versus small targets, power-law versus white noise). We analyze performance in these experiments using task efficiency and the classification image technique. In 3D tasks, median response times were roughly nine times longer than 2D, with larger relative differences for incorrect trials. The efficiency data show a dissociation in which subjects perform with higher statistical efficiency in 2D tasks for large targets and higher efficiency in 3D tasks with small targets. The classification images suggest that a critical mechanism behind this dissociation is an inability to integrate across multiple slices to form a 3D localization response. The central slices of 3D classification images are remarkably similar to the corresponding 2D classification images. 2D and 3D tasks show similar weighting patterns between 2D images and the central slice of 3D images. There is relatively little weighting across slices in the 3D tasks, leading to lower task efficiency with respect to the ideal observer.
三维“容积”成像方法如今已成为多种成像模态下医学成像的常见组成部分。对于人类观察者在浏览三维图像时如何定位被噪声和杂波掩盖的目标,以及这与局限于单个二维切片的类似任务相比情况如何,我们了解得相对较少。高斯随机纹理被用于表示有噪声的容积式医学图像。受试者能够自由检查图像,包括在搜索过程中浏览三维图像。总共评估了八种实验条件(二维图像与三维图像、大目标与小目标、幂律噪声与白噪声)。我们使用任务效率和分类图像技术来分析这些实验中的表现。在三维任务中,平均反应时间大约比二维任务长九倍,对于错误试验,相对差异更大。效率数据显示出一种分离现象,即对于大目标,受试者在二维任务中的统计效率更高,而对于小目标,在三维任务中的效率更高。分类图像表明,这种分离背后的一个关键机制是无法跨多个切片进行整合以形成三维定位反应。三维分类图像的中心切片与相应的二维分类图像非常相似。二维和三维任务在二维图像与三维图像的中心切片之间显示出相似的加权模式。在三维任务中,各切片之间的加权相对较少,相对于理想观察者而言,导致任务效率较低。