PET imaging analysis using a parcelation approach and multiple kernel classification

F. Segovia, C. Phillips
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引用次数: 5

Abstract

Positron Emission Tomography (PET) is a noninvasive medical imaging modality that provides information about physiological processes. Due to its ability to measure the brain metabolism, it is widely used to assist the diagnosis of neurodegenerative disorders such as Alzheimer's disease (AD) of Parkinsonism. In order to avoid the subjectivity inherent to the visual exploration of the images, several computer systems to analyze PET data were developed during the last years. However, dealing with the huge amount of information provided by PET imaging is still a challenge. In this work we present a novel methodology to analyze PET data that improves the automatic differentiation between controls and AD patients. First the images are divided into small regions or parcels, defined either anatomically, geometrically or randomly. Secondly, the accuray of each single region is estimated using a Support Vector Machine (SVM) classifier and a cross-validation approach. Finally, all the regions are assessed together using multiple kernel SVM with a kernel per region. The classifier is built so that the most discriminative regions have more weight in the final decision. This method was evaluated using a PET dataset that contained images from healthy controls and AD patients. The classification results obtained with the proposed approach outperformed two recently reported computer systems based on Principal Component Analysis and Independent Component Analysis.
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PET成像分析使用分割方法和多核分类
正电子发射断层扫描(PET)是一种提供生理过程信息的非侵入性医学成像方式。由于其测量脑代谢的能力,它被广泛用于辅助诊断神经退行性疾病,如阿尔茨海默病(AD)或帕金森病。为了避免图像视觉探索固有的主观性,在过去几年中开发了几种计算机系统来分析PET数据。然而,处理PET成像提供的大量信息仍然是一个挑战。在这项工作中,我们提出了一种新的方法来分析PET数据,以提高对照和AD患者之间的自动区分。首先,图像被分成小的区域或包裹,以解剖学、几何或随机的方式定义。其次,使用支持向量机(SVM)分类器和交叉验证方法估计每个单个区域的精度;最后,使用多核支持向量机对所有区域进行评估,每个区域有一个核。建立分类器,使最具判别性的区域在最终决策中具有更大的权重。使用包含健康对照和AD患者图像的PET数据集对该方法进行了评估。该方法的分类结果优于最近报道的两种基于主成分分析和独立成分分析的计算机系统。
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