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Early Diagnosis of Alzheimer's Disease by Ensemble Deep Learning Using FDG-PET

机译:使用FDG-PET集成深度学习对阿尔茨海默氏病进行早期诊断

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Early diagnosis of Alzheimer's disease (AD) is critical in preventing from irreversible damages to brain cognitive functions. Most computer-aided approaches consist of extraction of image features to describe the pathological changes and construction of a classifier for dementia identification. Deep learning technique provides a unified framework for simultaneous representation learning and feature classification, and thus avoids the troublesome hand-crafted feature extraction and feature engineering. In this paper, we propose an ensemble of AlexNets (EnAlexNets) algorithm for early diagnosis of AD using positron emission tomography (PET). We first use the automated anatomical labeling (AAL) cortical parcellation map to detect 62 brain anatomical volumes, then extract image patches in each kind of volumes to fine-tune a pre-trained AlexNet, and finally use the ensemble of those well-performed AlexNets as the classifier. We have evaluated this algorithm against seven existing algorithms on an ADNI dataset. Our results indicate that the proposed EnAlexNets algorithm outperforms those seven algorithms in differentiating AD cases from normal controls.
机译:阿尔茨海默氏病(AD)的早期诊断对于防止对大脑认知功能的不可逆损害至关重要。大多数计算机辅助方法包括提取图像特征以描述病理变化和构造用于痴呆症识别的分类器。深度学习技术为同时表示学习和特征分类提供了统一的框架,从而避免了繁琐的手工特征提取和特征工程。在本文中,我们提出了一套AlexNets(EnAlexNets)算法,用于使用正电子发射断层扫描(PET)进行AD的早期诊断。我们首先使用自动解剖标记(AAL)皮质细胞分裂图来检测62个脑部解剖体积,然后提取每种体积中的图像补丁以微调预先训练的AlexNet,最后使用那些性能良好的AlexNets的集合作为分类器。我们已针对ADNI数据集上的七个现有算法评估了该算法。我们的结果表明,在区分AD病例与正常对照方面,建议的EnAlexNets算法优于这七个算法。

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