Gong Hao, Hu Qiyuan, Walther Andrew, Koo Chi Wan, Takahashi Edwin A, Levin David L, Johnson Tucker F, Hora Megan J, Leng Shuai, Fletcher Joel G, McCollough Cynthia H, Yu Lifeng
Mayo Clinic, Department of Radiology, Rochester, Minnesota, United States.
J Med Imaging (Bellingham). 2020 Jul;7(4):042807. doi: 10.1117/1.JMI.7.4.042807. Epub 2020 Jun 30.
Task-based image quality assessment using model observers (MOs) is an effective approach to radiation dose and scanning protocol optimization in computed tomography (CT) imaging, once the correlation between MOs and radiologists can be established in well-defined clinically relevant tasks. Conventional MO studies were typically simplified to detection, classification, or localization tasks using tissue-mimicking phantoms, as traditional MOs cannot be readily used in complex anatomical background. However, anatomical variability can affect human diagnostic performance. To address this challenge, we developed a deep-learning-based MO (DL-MO) for localization tasks and validated in a lung nodule detection task, using previously validated projection-based lesion-/noise-insertion techniques. The DL-MO performance was compared with 4 radiologist readers over 12 experimental conditions, involving varying radiation dose levels, nodule sizes, nodule types, and reconstruction types. Each condition consisted of 100 trials (i.e., 30 images per trial) generated from a patient cohort of 50 cases. DL-MO was trained using small image volume-of-interests extracted across the entire volume of training cases. For each testing trial, the nodule searching of DL-MO was confined to a 3-mm thick volume to improve computational efficiency, and radiologist readers were tasked to review the entire volume. A strong correlation between DL-MO and human readers was observed (Pearson's correlation coefficient: 0.980 with a 95% confidence interval of [0.924, 0.994]). The averaged performance bias between DL-MO and human readers was 0.57%. The experimental results indicated the potential of using the proposed DL-MO for diagnostic image quality assessment in realistic chest CT tasks.
一旦在明确界定的临床相关任务中建立起基于模型的观察者(MO)与放射科医生之间的相关性,基于任务的图像质量评估(使用MO)就是计算机断层扫描(CT)成像中优化辐射剂量和扫描协议的有效方法。传统的MO研究通常简化为使用组织模拟体模的检测、分类或定位任务,因为传统的MO不能轻易用于复杂的解剖背景。然而,解剖学变异性会影响人类的诊断性能。为应对这一挑战,我们开发了一种基于深度学习的MO(DL-MO)用于定位任务,并使用先前经过验证的基于投影的病变/噪声插入技术在肺结节检测任务中进行了验证。在12种实验条件下,将DL-MO的性能与4名放射科医生的表现进行了比较,这些条件包括不同的辐射剂量水平、结节大小、结节类型和重建类型。每种条件由100次试验组成(即每次试验30幅图像),这些试验来自50例患者的队列。DL-MO使用从训练病例的整个体积中提取的小图像感兴趣体积进行训练。对于每次测试试验,DL-MO的结节搜索局限于3毫米厚的体积以提高计算效率,而放射科医生则负责查看整个体积。观察到DL-MO与人类读者之间存在很强的相关性(皮尔逊相关系数:0.980,95%置信区间为[0.924, 0.994])。DL-MO与人类读者之间的平均性能偏差为0.57%。实验结果表明,所提出的DL-MO在实际胸部CT任务中用于诊断图像质量评估的潜力。