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Can technical characteristics predict clinical performance in PET/CT imaging? A correlation study for thyroid cancer diagnosis

机译:技术特征可以预测PET / CT成像中的临床表现吗?甲状腺癌诊断的相关研究

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The purpose of this study was to determine whether image characteristics could be used to predict the outcome of ROC studies in PET/CT imaging. Patients suspected for recurrent thyroid cancer underwent a standard whole body (WB) examination and an additional high-resolution head-and-neck (HN) F18-FDG PET/CT scan. The value of the latter was determined with an ROC study, the results of which showed that the WB+HN combination was better than WB alone for thyroid cancer detection and diagnosis. Following the ROC experiment, the WB and HN images of confirmed benign or malignant thyroid disease were analyzed and first and second order textural features were determined. Features included minimum, mean, and maximum intensity, as well as contrast in regions of interest encircling the thyroid lesions. Lesion size and standard uptake values (SUV) were also determined. Bivariate analysis was applied to determine relationships between WB and HN features and between observer ROC responses and the various feature values. The two sets showed significant associations in the values of SUV, contrast, and lesion size. They were completely different when the intensities were considered; no relationship was found between the WB minimum, maximum, and mean ROI values and their HN counterparts. SUV and contrast were the strongest predictors of ROC performance on PET/CT examinations of thyroid cancer. The high resolution HN images seem to enhance these relationships but without a single dramatic effect as was projected from the ROC results. A combination of features from both WB and HN datasets may possibly be a more robust predictor of ROC performance.
机译:本研究的目的是确定图像特征是否可用于预测PET / CT成像中ROC研究的结果。涉嫌复发性甲状腺癌的患者经历了标准的全身(WB)检查和额外的高分辨率头部和颈部(HN)F18-FDG PET / CT扫描。用ROC研究确定后者的值,结果表明,WB + HN组合单独优于WB,仅用于甲状腺癌检测和诊断。在ROC实验之后,分析了确认的良性或恶性甲状腺疾病的WB和HN图像,并确定了第一和二阶纹理特征。功能包括最小,平均值和最大强度,以及环绕甲状腺病变的感兴趣区域的对比。还确定了病变尺寸和标准摄取值(SUV)。应用了生物分析以确定WB和HN特征之间的关系以及观察者ROC响应与各种特征值之间的关系。这两组在SUV,对比度和病变大小的值中显示出显着的关联。当考虑强度时,它们完全不同;在WB最小,最大值和均值的ROI值及其HN对应物之间没有发现任何关系。 SUV和对比度是甲状腺癌的PET / CT检查中ROC性能最强的预测因子。高分辨率HN图像似乎增强了这些关系,但没有从Roc结果预测的单一戏剧效果。来自WB和HN数据集的特征的组合可能是ROC性能的更强大的预测因子。

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