Machine Learning Based Analysis of FDG-PET Image Data for the Diagnosis of Neurodegenerative Diseases

Rick van Veen, L. Martinez, R. V. Kogan, S. Meles, D. Mudali, J. Roerdink, F. Massa, M. Grazzini, J. Obeso, M. Rodriguez-Oroz, K. Leenders, R. Renken, G. D. Vries, Michael Biehl
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引用次数: 11

Abstract

Alzheimer's disease (AD) and Parkinson's disease (PD) are two common, progressive neurodegenerative brain disorders. Their diagnosis is very challenging at an early disease stage, if based on clinical symptoms only. Brain imaging techniques such as [18F]-fluoro-deoxyglucose positron emission tomography (FDG-PET) can provide important additional information with respect to changes in the cerebral glucose metabolism. In this study, we use machine learning techniques to perform an automated classification of FDG-PET data. The approach is based on the extraction of features by applying the scaled subprofile model with principal component analysis (SSM/PCA) in order to extract characteristics patterns of glucose metabolism. These features are then used for discriminating healthy controls, PD and AD patients by means of two machine learning frameworks: Generalized Matrix Learning Vector Quantization (GMLVQ) with local and global relevance matrices, and Support Vector Machines (SVMs) with a linear kernel. Datasets from different neuroimaging centers are considered. Results obtained for the individual centers, show that reliable classification is possible. We demonstrate, however, that cross-center classification can be problematic due to potential center-specific characteristics of the available FDG-PET data.
基于机器学习的FDG-PET图像数据分析用于神经退行性疾病的诊断
阿尔茨海默病(AD)和帕金森病(PD)是两种常见的进行性神经退行性脑疾病。如果仅仅基于临床症状,在疾病早期诊断是非常具有挑战性的。脑成像技术,如[18F]-氟脱氧葡萄糖正电子发射断层扫描(FDG-PET)可以提供关于脑葡萄糖代谢变化的重要附加信息。在这项研究中,我们使用机器学习技术对FDG-PET数据进行自动分类。该方法基于基于主成分分析(SSM/PCA)的比例子剖面模型提取特征,以提取葡萄糖代谢特征模式。然后使用这些特征通过两种机器学习框架来区分健康对照,PD和AD患者:具有局部和全局相关矩阵的广义矩阵学习向量量化(GMLVQ)和具有线性核的支持向量机(svm)。考虑来自不同神经成像中心的数据集。个别中心的结果表明,可靠的分类是可能的。然而,我们证明,由于现有FDG-PET数据的潜在中心特异性特征,跨中心分类可能存在问题。
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