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Computer aided staging of lymphoma patients with FDG PET/CT imaging based on textural information

机译:基于纹理信息的FDG PET / CT成像对淋巴瘤患者的计算机辅助分期

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We have designed a computer aided diagnosis (CADx) system to assess the presence of cancer in FDG PET/CT exams of lymphoma patients. Detection performances of the random decision forest (RDF) and support vector machine (SVM) classifiers were assessed based on a feature set including 115 PET and CT first order and textural parameters. An original feature selection method based on combining different filter methods was proposed. The evaluation database consisted of 156 lymphomatous (M for malignant), 158 physiologic (N for normal) and 32 inflammatory (NS for normal suspicious) regions of interest. An optimization study was performed for each classifier separately to select the best combination of parameters considering the two problems of discriminating the {M} and {NS+N} classes and the {M} and {NS} classes. Promising classification performance was achieved by the SVM combined with the 12 most discriminant features with AUC values of 0.97 and 0.91 for the first and second problem respectively.
机译:我们设计了一种计算机辅助诊断(CADx)系统,以评估淋巴瘤患者的FDG PET / CT检查中是否存在癌症。基于包括115个PET和CT一阶和纹理参数的特征集,评估了随机决策森林(RDF)和支持向量机(SVM)分类器的检测性能。提出了一种基于组合不同滤波方法的原始特征选择方法。评估数据库由156个淋巴瘤(M为恶性),158个生理(N为正常)和32个炎性(NS为正常可疑)区域组成。考虑到区分{M}和{NS + N}类以及{M}和{NS}类的两个问题,分别对每个分类器进行了优化研究,以选择参数的最佳组合。通过将SVM与第一个和第二个问题的12个最有区别的特征相结合,AUC值分别为0.97和0.91,可以实现有希望的分类性能。

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