Samei Ehsan, Richards Taylor, Segars William P, Daubert Melissa A, Ivanov Alex, Rubin Geoffrey D, Douglas Pamela S, Hoffmann Udo
Carl E Ravin Advanced Imaging Labs, Department of Radiology, Durham, North Carolina, United States.
Duke University Medical Center, Department of Medicine, Durham, North Carolina, United States.
J Med Imaging (Bellingham). 2021 Jan;8(1):013501. doi: 10.1117/1.JMI.8.1.013501. Epub 2021 Jan 9.
Quantifying stenosis in cardiac computed tomography angiography (CTA) images remains a difficult task, as image noise and cardiac motion can degrade image quality and distort underlying anatomic information. The purpose of this study was to develop a computational framework to objectively assess the precision of quantifying coronary stenosis in cardiac CTA. The framework used models of coronary vessels and plaques, asymmetric motion point spread functions, CT image blur (task-based modulation transfer functions) and noise (noise-power spectrums), and an automated maximum-likelihood estimator implemented as a matched template squared-difference operator. These factors were integrated into an estimability index ( ) as a task-based measure of image quality in cardiac CTA. The index was applied to assess how well it can to predict the quality of 132 clinical cases selected from the Prospective Multicenter Imaging Study for Evaluation of Chest Pain trial. The cases were divided into two cohorts, high quality and low quality, based on clinical scores and the concordance of clinical evaluations of cases by experienced cardiac imagers. The framework was also used to ascertain protocol factors for CTA Biomarker initiative of the Quantitative Imaging Biomarker Alliance (QIBA). The index categorized the patient datasets with an area under the curve of 0.985, an accuracy of 0.977, and an optimal threshold of 25.58 corresponding to a stenosis estimation precision (standard deviation) of 3.91%. Data resampling and training-test validation methods demonstrated stable classifier thresholds and receiver operating curve performance. The framework was successfully applicable to the QIBA objective. A computational framework to objectively quantify stenosis estimation task performance was successfully implemented and was reflective of clinical results in the context of a prominent clinical trial with diverse sites, readers, scanners, acquisition protocols, and patients. It also demonstrated the potential for prospective optimization of imaging protocols toward targeted precision and measurement consistency in cardiac CT images.
在心脏计算机断层扫描血管造影(CTA)图像中对狭窄进行量化仍然是一项艰巨的任务,因为图像噪声和心脏运动可能会降低图像质量并扭曲潜在的解剖信息。本研究的目的是开发一个计算框架,以客观评估心脏CTA中冠状动脉狭窄量化的精度。该框架使用了冠状动脉和斑块模型、非对称运动点扩散函数、CT图像模糊(基于任务的调制传递函数)和噪声(噪声功率谱),以及作为匹配模板平方差算子实现的自动最大似然估计器。这些因素被整合到一个可估计性指数( )中,作为心脏CTA中基于任务的图像质量度量。该指数被应用于评估其预测从胸痛评估前瞻性多中心成像研究试验中选取的132例临床病例质量的能力。根据临床评分以及经验丰富的心脏成像专家对病例临床评估的一致性,将这些病例分为高质量和低质量两个队列。该框架还用于确定定量成像生物标志物联盟(QIBA)的CTA生物标志物计划的方案因素。该指数对患者数据集进行分类,曲线下面积为0.985,准确率为0.977,最佳 阈值为25.58,对应狭窄估计精度(标准差)为3.91%。数据重采样和训练-测试验证方法证明了分类器阈值和接收器操作曲线性能的稳定性。该框架成功适用于QIBA目标。一个用于客观量化狭窄估计任务性能的计算框架已成功实现,并在一个涉及不同地点、读者、扫描仪、采集方案和患者的重要临床试验背景下反映了临床结果。它还展示了前瞻性优化成像方案以实现心脏CT图像中目标精度和测量一致性的潜力。