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Automated threshold selection on whole-body 18F-FDG PET/CT for assessing tumor metabolic response

机译:全身18F-FDG PET / CT的自动阈值选择,用于评估肿瘤代谢反应

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PET/CT is widely used in oncology. Yet the identification of lesions, as described by the PET response criteria in solid tumors (PERCIST), still relies on manual identification of a voluine of interest (VOI), typically in the liver, for determining the optimal threshold. The process requires expert knowledge and is prone to errors and inter-observer variability. A fully automated procedure for the application of the PERCIST criteria for whole-body images is proposed. The method relies on automated localization of the liver on whole-body CT using a dense V-net trained on large field-of-view images. Inside the liver, a spherical VOI is determined which exhibits the lowest product of the coefficients of variation (defined as the standard deviation over the mean) in PET and CT. The liver segmentation achieved a median dice score of 0.87 ± 0.12 in 10-fold cross-validation, which proved to be sufficient for reliable identification of a VOI. The full pipeline was evaluated on an external PET/CT dataset of 18 patients. To assess reproducibility, geometric and intensity variations were applied, simulating potential image differences when scanning the same person under different conditions. The variability of the resulting threshold was evaluated and compared to the manual approach performed by three observers. The proposed method exhibited superior reproducibility with a mean threshold of 4.01 ± 0.02 SUV_(bw), compared to 4.11 ± 0.16 SUV_(bw) for the manual method. The automated procedure renders the analysis of large amounts of PET/CT data feasible or could be used to detect anomalies in the manual approach.
机译:PET / CT在肿瘤学中被广泛使用。然而,如实体瘤中的PET反应标准(PERCIST)所描述的,病变的识别仍依赖于通常在肝脏中的目标体积(VOI)的人工识别,以确定最佳阈值。该过程需要专业知识,并且容易出错和观察者之间的差异。提出了一种适用于全身图像的PERCIST标准的全自动程序。该方法依靠使用在大视野图像上训练的密集V型网络在全身CT上自动定位肝脏。在肝脏内部,确定了球形VOI,该球形VOI在PET和CT中表现出变异系数的最低乘积(定义为相对于平均值的标准偏差)。在10倍交叉验证中,肝分割的中位骰子得分为0.87±0.12,这被证明足以可靠地识别VOI。在18位患者的外部PET / CT数据集上评估了完整的流程。为了评估可重复性,应用了几何和强度变化,以模拟在不同条件下扫描同一个人时潜在的图像差异。评估了所得阈值的变异性,并将其与三名观察员执行的手动方法进行了比较。与手动方法的平均阈值为4.11±0.16 SUV_(bw)相比,所提出的方法具有更高的重现性,平均阈值为4.01±0.02 SUV_(bw)。自动化程序使对大量PET / CT数据的分析变得可行,或可用于以手动方式检测异常。

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