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首页> 外文期刊>BMC Bioinformatics >Deep learning detection of informative features in tau PET for Alzheimer’s disease classification
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Deep learning detection of informative features in tau PET for Alzheimer’s disease classification

机译:安茨海默氏病分类的TAU PET中信息特征的深度学习检测

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Alzheimer’s disease (AD) is the most common type of dementia, typically characterized by memory loss followed by progressive cognitive decline and functional impairment. Many clinical trials of potential therapies for AD have failed, and there is currently no approved disease-modifying treatment. Biomarkers for early detection and mechanistic understanding of disease course are critical for drug development and clinical trials. Amyloid has been the focus of most biomarker research. Here, we developed a deep learning-based framework to identify informative features for AD classification using tau positron emission tomography (PET) scans. The 3D convolutional neural network (CNN)-based classification model of AD from cognitively normal (CN) yielded an average accuracy of 90.8% based on five-fold cross-validation. The LRP model identified the brain regions in tau PET images that contributed most to the AD classification from CN. The top identified regions included the hippocampus, parahippocampus, thalamus, and fusiform. The layer-wise relevance propagation (LRP) results were consistent with those from the voxel-wise analysis in SPM12, showing significant focal AD associated regional tau deposition in the bilateral temporal lobes including the entorhinal cortex. The AD probability scores calculated by the classifier were correlated with brain tau deposition in the medial temporal lobe in MCI participants (r?=?0.43 for early MCI and r?=?0.49 for late MCI). A deep learning framework combining 3D CNN and LRP algorithms can be used with tau PET images to identify informative features for AD classification and may have application for early detection during prodromal stages of AD.
机译:阿尔茨海默病(AD)是最常见的痴呆症类型,通常以记忆损失为特征,然后进行逐步认知下降和功能损伤。许多对广告潜在疗法的临床试验失败,目前没有批准的疾病改性治疗。用于早期检测和机械理解的生物标志物对疾病课程的理解对药物开发和临床试验至关重要。淀粉样蛋白是大多数生物标志物研究的重点。在这里,我们开发了一种深入的学习框架,以识别使用TAU正电子发射断层扫描(PET)扫描的广告分类的信息特征。基于五倍交叉验证的3D卷积神经网络(CNN)从认知正常(CN)的广告分类模型产生了90.8%的平均精度。 LRP模型确定了TAU PET图像中的大脑区域,为来自CN的广告分类贡献。顶部被识别的区域包括海马,Parahippocampus,丘脑和梭形。层面相关性繁殖(LRP)结果与SPM12中的Voxel-Wise分析中的那些一致,显示在包括Entorlalinal Cortex的双侧颞叶中的显着局灶性AD相关区域Tau沉积。分类器计算的广告概率分数与MCI参与者中介时间叶中的脑TAU沉积相关(R?=Δ0.43,早期MCI和R?= 0.49,后期MCI)。组合3D CNN和LRP算法的深度学习框架可以与TAU PET图像一起使用,以识别广告分类的信息特征,并且可以在广告的前级期间具有早期检测应用。

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