Tseng Hsin-Wu, Fan Jiahua, Kupinski Matthew A
University of Arizona, College of Optical Sciences, Tucson, Arizona, United States.
GE Healthcare, CT Systems Engineering, Waukesha, Wisconsin, United States.
J Med Imaging (Bellingham). 2017 Oct;4(4):045503. doi: 10.1117/1.JMI.4.4.045503. Epub 2017 Nov 21.
Maintaining or even improving image quality while lowering patient dose is always the desire in clinical computed tomography (CT) imaging. Iterative reconstruction (IR) algorithms have been designed to allow for a reduced dose while maintaining or even improving an image. However, we have previously shown that the dose-saving capabilities allowed with IR are different for different clinical tasks. The channelized scanning linear observer (CSLO) was applied to study clinical tasks that combine detection and estimation when assessing CT image data. The purpose of this work is to illustrate the importance of task complexity when assessing dose savings and to move toward more realistic tasks when performing these types of studies. Human-observer validation of these methods will take place in a future publication. Low-contrast objects embedded in body-size phantoms were imaged multiple times and reconstructed by filtered back projection (FBP) and an IR algorithm. The task was to detect, localize, and estimate the size and contrast of low-contrast objects in the phantom. Independent signal-present and signal-absent regions of interest cropped from images were channelized by the dense-difference of Gauss channels for CSLO training and testing. Estimation receiver operating characteristic (EROC) curves and the areas under EROC curves (EAUC) were calculated by CSLO as the figure of merit. The one-shot method was used to compute the variance of the EAUC values. Results suggest that the IR algorithm studied in this work could efficiently reduce the dose by [Formula: see text] while maintaining an image quality comparable to conventional FBP reconstruction warranting further investigation using real patient data.
在降低患者辐射剂量的同时保持甚至提高图像质量一直是临床计算机断层扫描(CT)成像的追求。迭代重建(IR)算法的设计初衷是在保持甚至提高图像质量的同时降低辐射剂量。然而,我们之前已经表明,IR算法的剂量节省能力因不同的临床任务而异。在评估CT图像数据时,通道化扫描线性观察者(CSLO)被用于研究结合检测和估计的临床任务。这项工作的目的是说明在评估剂量节省时任务复杂性的重要性,并在进行这类研究时转向更现实的任务。这些方法的人体观察者验证将在未来的出版物中进行。对嵌入人体尺寸模体中的低对比度物体进行多次成像,并通过滤波反投影(FBP)和一种IR算法进行重建。任务是检测、定位并估计模体中低对比度物体的大小和对比度。从图像中裁剪出的独立的有信号和无信号感兴趣区域通过高斯通道的密集差分进行通道化,用于CSLO训练和测试。CSLO计算估计接收器操作特性(EROC)曲线和EROC曲线下面积(EAUC)作为品质因数。采用单次方法计算EAUC值的方差。结果表明,本研究中所研究的IR算法能够有效地将剂量降低[公式:见原文],同时保持与传统FBP重建相当的图像质量,这值得使用真实患者数据进行进一步研究。