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Correlation between model observer and human observer performance in CT imaging when lesion location is uncertain

机译:当病变位置不确定时CT成像中模型观察者与人类观察者表现之间的相关性

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摘要

>Purpose: The purpose of this study was to investigate the correlation between model observer and human observer performance in CT imaging for the task of lesion detection and localization when the lesion location is uncertain.>Methods: Two cylindrical rods (3-mm and 5-mm diameters) were placed in a 35 × 26 cm torso-shaped water phantom to simulate lesions with −15 HU contrast at 120 kV. The phantom was scanned 100 times on a 128-slice CT scanner at each of four dose levels (CTDIvol = 5.7, 11.4, 17.1, and 22.8 mGy). Regions of interest (ROIs) around each lesion were extracted to generate images with signal-present, with each ROI containing 128 × 128 pixels. Corresponding ROIs of signal-absent images were generated from images without lesion mimicking rods. The location of the lesion (rod) in each ROI was randomly distributed by moving the ROIs around each lesion. Human observer studies were performed by having three trained observers identify the presence or absence of lesions, indicating the lesion location in each image and scoring confidence for the detection task on a 6-point scale. The same image data were analyzed using a channelized Hotelling model observer (CHO) with Gabor channels. Internal noise was added to the decision variables for the model observer study. Area under the curve (AUC) of ROC and localization ROC (LROC) curves were calculated using a nonparametric approach. The Spearman's rank order correlation between the average performance of the human observers and the model observer performance was calculated for the AUC of both ROC and LROC curves for both the 3- and 5-mm diameter lesions.>Results: In both ROC and LROC analyses, AUC values for the model observer agreed well with the average values across the three human observers. The Spearman's rank order correlation values for both ROC and LROC analyses for both the 3- and 5-mm diameter lesions were all 1.0, indicating perfect rank ordering agreement of the figures of merit (AUC) between the average performance of the human observers and the model observer performance.>Conclusions: In CT imaging of different sizes of low-contrast lesions (−15 HU), the performance of CHO with Gabor channels was highly correlated with human observer performance for the detection and localization tasks with uncertain lesion location in CT imaging at four clinically relevant dose levels. This suggests the ability of Gabor CHO model observers to meaningfully assess CT image quality for the purpose of optimizing scan protocols and radiation dose levels in detection and localization tasks for low-contrast lesions.
机译:>目的:本研究的目的是研究在不确定的病变位置时CT成像中模型观察者与人类观察者表现之间的相关性,以进行病变检测和定位。>方法:< / strong>将两根圆柱棒(直径分别为3毫米和5毫米)放在35×26厘米的躯干形人体模型中,以模拟在120 kV时具有-15 HU对比度的病变。在128层CT扫描仪上以四个剂量水平(CTDIvol = 5.7、11.4、17.1和22.8 mGy)中的每一个对幻像进行了100次扫描。提取每个病变周围的感兴趣区域(ROI),以生成具有信号存在的图像,每个ROI包含128×128像素。从没有病灶模拟棒的图像中生成相应的无信号图像的ROI。通过在每个病变周围移动ROI,可以随机分布每个ROI中病变(棒)的位置。通过让三名训练有素的观察者识别病变的存在或不存在来进行人类观察者研究,从而指出每幅图像中的病变位置并以6分制对评分任务的可信度进行评分。使用具有Gabor通道的通道化Hotelling模型观察器(CHO)分析相同的图像数据。内部噪声已添加到模型观察者研究的决策变量中。使用非参数方法计算ROC曲线下的面积(AUC)和局部ROC(LROC)曲线。对于直径为3毫米和5毫米的病变,计算了ROC和LROC曲线的AUC,得出了人类观察者的平均表现与模型观察者表现之间的Spearman等级顺序相关性。>结果:在ROC和LROC分析中,模型观察者的AUC值与三个人类观察者的平均值非常吻合。对于3毫米和5毫米直径病灶,ROC和LROC分析的Spearman等级顺序相关值均为1.0,这表明人类观察者的平均表现与平均观察者的平均品质因数(AUC)完全一致。模型观察者的表现。>结论:在不同尺寸的低对比度病变(−15 HU)的CT成像中,具有Gabor通道的CHO的表现与人类观察者在检测和定位任务方面的表现高度相关在四个临床相关剂量水平的CT成像中病灶位置不确定。这表明Gabor CHO模型观察者能够有效评估CT图像质量,从而在低对比度病变的检测和定位任务中优化扫描协议和辐射剂量水平。

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