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Shearlet based Stacked Convolutional Network for Multiclass Diagnosis of Alzheimer’s Disease using the Florbetapir PET Amyloid Imaging Data

机译:基于Shearlet的堆叠式卷积网络,使用Florbetapir PET淀粉样蛋白成像数据对阿尔茨海默氏病进行多类诊断

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Although there is no cure for Alzheimer's disease (AD), an accurate early diagnosis is essential for health and social care, and will be of great significance when the course of the disease could be reversed through treatment options. Florbetapir positron emission tomography (18F-AV-45 PET) is proven to be the most powerful imaging technique to investigate the deposition of amyloid plaques, one of the potential hallmarks of AD, signifying the onset of AD before it changes the brains structure. In this paper, we propose a novel classification algorithm to discriminate the patients having AD, early mild cognitive impairment (MCI), late MCI, and normal control in 18F-AV-45 PET using shearlet based deep convolutional neural network (CNN). It is known that the conventional CNNs involve convolution and pooling layers, which in fact produce the smoothed representation of data, and this results in losing detailed information. In view of this fact, the conventional CNN is integrated with shearlet transform incorporating the multiresolution details of the data. Once the model is pretrained to transform the input data into a better stacked representation, the resulting final layer is passed to softmax classifier, which returns the probabilities of each class. Through experimental results, it is shown that the performance of the proposed classification framework is superior to that of the traditional CNN in Alzheimer's disease neuroimaging initiative (ADNI) database in terms of classification accuracy. As a result, it has the potential to distinguish the different stages of AD progression with less clinical prior information.
机译:尽管无法治愈阿尔茨海默氏病(AD),但准确的早期诊断对于健康和社会护理至关重要,并且在通过治疗选择可以逆转疾病进程时将具有重要意义。 Florbetapir正电子发射断层扫描( 18 F-AV-45 PET)被证明是研究淀粉样斑块沉积的最强大的成像技术,淀粉样斑块是AD的潜在特征之一,预示着AD在改变大脑结构之前就已经发作。在本文中,我们提出了一种新颖的分类算法来区分患有AD,早期轻度认知障碍(MCI),晚期MCI和正常对照的患者。 18 F-AV-45 PET使用基于剪切波的深度卷积神经网络(CNN)。众所周知,传统的CNN涉及卷积和池化层,实际上它们会产生平滑的数据表示形式,从而导致丢失详细信息。鉴于此事实,传统的CNN与包含数据多分辨率细节的小波变换集成在一起。一旦对模型进行了预训练以将输入数据转换为更好的堆叠表示形式,则将最终层传递到softmax分类器,该分类器返回每个类的概率。通过实验结果表明,在分类准确度方面,所提出的分类框架在阿尔茨海默氏病神经影像学主动性(ADNI)数据库中的性能优于传统CNN。结果,它有可能以较少的临床先验信息来区分AD进展的不同阶段。

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