Fan Mingdong, Zhou Zhongxing, Vrieze Thomas, Wang Jia, McCollough Cynthia, Yu Lifeng
Department of Radiology, Mayo Clinic, Rochester, MN, 55901, USA.
Stanford University, Stanford, CA, 94305, USA.
Proc SPIE Int Soc Opt Eng. 2022 Feb-Mar;12031. doi: 10.1117/12.2612414. Epub 2022 Apr 4.
As deep-learning-based denoising and reconstruction methods are gaining more popularity in clinical CT, it is of vital importance that these new algorithms undergo rigorous and objective image quality assessment beyond traditional metrics to ensure diagnostic information is not sacrificed. Channelized Hotelling observer (CHO), which has been shown to be well correlated with human observer performance in many clinical CT tasks, has a great potential to become the method of choice for objective image quality assessment for these non-linear methods. However, practical use of CHO beyond research labs have been quite limited, mostly due to the strict requirement on a large number of repeated scans to ensure sufficient accuracy and precision in CHO computation and the lack of efficient and widely acceptable phantom-based method. In our previous work, we developed an efficient CHO model observer for accurate and precise measurement of low-contrast detectability with only 1-3 repeated scans on the most widely used ACR accreditation phantom. In this work, we applied this optimized CHO model observer to evaluating the low-contrast detectability of a deep learning-based reconstruction (DLIR) equipped on a GE Revolution scanner. The commercially available DLIR reconstruction method showed consistent increase in low-contrast detectability over the FBP and the IR method at routine dose levels, which suggests potential dose reduction to the FBP reconstruction by up to 27.5%.
随着基于深度学习的去噪和重建方法在临床CT中越来越受欢迎,至关重要的是,这些新算法要经过超越传统指标的严格客观图像质量评估,以确保不牺牲诊断信息。通道化霍特林观察者(CHO)在许多临床CT任务中已被证明与人类观察者的表现高度相关,很有可能成为这些非线性方法客观图像质量评估的首选方法。然而,CHO在研究实验室之外的实际应用非常有限,主要是因为在CHO计算中需要大量重复扫描以确保足够的准确性和精密度,并且缺乏高效且广泛接受的基于体模的方法。在我们之前的工作中,我们开发了一种高效的CHO模型观察者,仅在最常用的ACR认证体模上进行1至3次重复扫描,就能准确精确地测量低对比度可探测性。在这项工作中,我们应用这种优化后的CHO模型观察者来评估配备在GE Revolution扫描仪上的基于深度学习的重建(DLIR)的低对比度可探测性。市售的DLIR重建方法在常规剂量水平下,与滤波反投影(FBP)和迭代重建(IR)方法相比,低对比度可探测性持续提高,这表明FBP重建的潜在剂量降低幅度可达27.5%。