Tseng Hsin-Wu, Fan Jiahua, Kupinski Matthew A
The University of Arizona, College of Optical Sciences, Tucson, Arizona 85721, United States; CT Engineering, GE Healthcare, Waukesha, Wisconsin 53188, United States.
CT Engineering , GE Healthcare, Waukesha, Wisconsin 53188, United States.
J Med Imaging (Bellingham). 2016 Jul;3(3):035503. doi: 10.1117/1.JMI.3.3.035503. Epub 2016 Jul 28.
The use of a channelization mechanism on model observers not only makes mimicking human visual behavior possible, but also reduces the amount of image data needed to estimate the model observer parameters. The channelized Hotelling observer (CHO) and channelized scanning linear observer (CSLO) have recently been used to assess CT image quality for detection tasks and combined detection/estimation tasks, respectively. Although the use of channels substantially reduces the amount of data required to compute image quality, the number of scans required for CT imaging is still not practical for routine use. It is our desire to further reduce the number of scans required to make CHO or CSLO an image quality tool for routine and frequent system validations and evaluations. This work explores different data-reduction schemes and designs an approach that requires only a few CT scans. Three different kinds of approaches are included in this study: a conventional CHO/CSLO technique with a large sample size, a conventional CHO/CSLO technique with fewer samples, and an approach that we will show requires fewer samples to mimic conventional performance with a large sample size. The mean value and standard deviation of areas under ROC/EROC curve were estimated using the well-validated shuffle approach. The results indicate that an 80% data reduction can be achieved without loss of accuracy. This substantial data reduction is a step toward a practical tool for routine-task-based QA/QC CT system assessment.
在模型观察者上使用通道化机制不仅使模仿人类视觉行为成为可能,还减少了估计模型观察者参数所需的图像数据量。通道化霍特林观察者(CHO)和通道化扫描线性观察者(CSLO)最近分别被用于评估CT图像在检测任务以及联合检测/估计任务中的质量。尽管通道的使用大幅减少了计算图像质量所需的数据量,但CT成像所需的扫描次数对于常规使用来说仍然不切实际。我们希望进一步减少扫描次数,使CHO或CSLO成为用于常规和频繁系统验证与评估的图像质量工具。这项工作探索了不同的数据缩减方案,并设计了一种仅需少量CT扫描的方法。本研究包括三种不同的方法:具有大样本量的传统CHO/CSLO技术、样本量较少的传统CHO/CSLO技术,以及一种我们将展示的用较少样本就能模仿大样本量传统性能的方法。使用经过充分验证的洗牌方法估计ROC/EROC曲线下面积的平均值和标准差。结果表明,可以在不损失准确性的情况下实现80%的数据缩减。这种大幅的数据缩减是迈向基于常规任务的QA/QC CT系统评估实用工具的一步。