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Lung Lesion Detection in FDG-PET/CT with Gaussian Process Regression

机译:高斯工艺回归的FDG-PET / CT中的肺病灶检测

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In this study, we propose a novel method of lung lesion detection in FDG-PET/CT volumes without labeling lesions. In our method, the probability distribution over normal standardized uptake values (SUVs) is estimated from the features extracted from the corresponding volume of interest (VOI) in the CT volume, which include gradient-based and texture-based features. To estimate the distribution, we use Gaussian process regression with an automatic relevance determination kernel, which provides the relevance of feature values to estimation. Our model was trained using FDG-PET/CT volumes of 121 normal cases. In the lesion detection phase, the actual SUV is judged as normal or abnormal by comparison with the estimated SUV distribution. According to the validation using 28 FDG-PET/CT volumes with 34 lung lesions, the sensitivity of the proposed method at 5.0 false positives per case was 81.9%.
机译:在这项研究中,我们提出了一种在FDG-PET / CT体积中的肺病灶检测方法,无标记病变。在我们的方法中,从CT卷中的相应兴趣(VOI)中提取的特征估计正常标准化摄取值(SUV)的概率分布,其包括基于梯度和基于纹理的特征。为了估算分发,我们使用具有自动相关性确定内核的高斯进程回归,该内核提供了特征值与估计的相关性。我们的模型采用了121个正常情况的FDG-PET / CT卷培训。在病变检测阶段,通过与估计的SUV分布进行比较,实际SUV被判断为正常或异常。根据使用34肺病灶的28个FDG-PET / CT体积的验证,所提出的方法在5.0个误报时的敏感性为81.9%。

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