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Classification of Parkinsonian Syndromes from FDG-PET Brain Data Using Decision Trees with SSM/PCA Features

机译:使用具有SSM / PCA功能的决策树从FDG-PET脑数据中分类帕金森综合症

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摘要

Medical imaging techniques like fluorodeoxyglucose positron emission tomography (FDG-PET) have been used to aid in the differential diagnosis of neurodegenerative brain diseases. In this study, the objective is to classify FDG-PET brain scans of subjects with Parkinsonian syndromes (Parkinson's disease, multiple system atrophy, and progressive supranuclear palsy) compared to healthy controls. The scaled subprofile model/principal component analysis (SSM/PCA) method was applied to FDG-PET brain image data to obtain covariance patterns and corresponding subject scores. The latter were used as features for supervised classification by the C4.5 decision tree method. Leave-one-out cross validation was applied to determine classifier performance. We carried out a comparison with other types of classifiers. The big advantage of decision tree classification is that the results are easy to understand by humans. A visual representation of decision trees strongly supports the interpretation process, which is very important in the context of medical diagnosis. Further improvements are suggested based on enlarging the number of the training data, enhancing the decision tree method by bagging, and adding additional features based on (f)MRI data.
机译:诸如氟脱氧葡萄糖正电子发射断层扫描(FDG-PET)之类的医学成像技术已被用于辅助诊断神经变性脑疾病。在这项研究中,目的是与健康对照组相比,对患有帕金森综合症(帕金森氏病,多系统萎缩和进行性核上性麻痹)的受试者的FDG-PET脑扫描进行分类。将缩放的子轮廓模型/主成分分析(SSM / PCA)方法应用于FDG-PET脑图像数据,以获得协方差模式和相应的受试者评分。后者用作C4.5决策树方法的监督分类功能。留一法交叉验证用于确定分类器性能。我们与其他类型的分类器进行了比较。决策树分类的最大优点是结果易于人类理解。决策树的可视化表示强烈支持解释过程,这在医学诊断中非常重要。在增加训练数据的数量,通过装袋增强决策树方法以及基于(f)MRI数据添加其他功能的基础上,提出了进一步的改进建议。

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