End-To-End Alzheimer's Disease Diagnosis and Biomarker Identification.

Soheil Esmaeilzadeh, Dimitrios Ioannis Belivanis, Kilian M Pohl, Ehsan Adeli
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Abstract

As shown in computer vision, the power of deep learning lies in automatically learning relevant and powerful features for any perdition task, which is made possible through end-to-end architectures. However, deep learning approaches applied for classifying medical images do not adhere to this architecture as they rely on several pre- and post-processing steps. This shortcoming can be explained by the relatively small number of available labeled subjects, the high dimensionality of neuroimaging data, and difficulties in interpreting the results of deep learning methods. In this paper, we propose a simple 3D Convolutional Neural Networks and exploit its model parameters to tailor the end-to-end architecture for the diagnosis of Alzheimer's disease (AD). Our model can diagnose AD with an accuracy of 94.1% on the popular ADNI dataset using only MRI data, which outperforms the previous state-of-the-art. Based on the learned model, we identify the disease biomarkers, the results of which were in accordance with the literature. We further transfer the learned model to diagnose mild cognitive impairment (MCI), the prodromal stage of AD, which yield better results compared to other methods.

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端到端阿尔茨海默病诊断和生物标记物鉴定。
正如计算机视觉所显示的那样,深度学习的威力在于自动学习相关的、强大的特征,并通过端到端架构来实现。然而,应用于医学图像分类的深度学习方法并不遵循这一架构,因为它们依赖于多个前处理和后处理步骤。造成这一缺陷的原因包括:可用的标注受试者数量相对较少、神经成像数据的维度较高,以及难以解释深度学习方法的结果。在本文中,我们提出了一种简单的三维卷积神经网络,并利用其模型参数来定制用于诊断阿尔茨海默病(AD)的端到端架构。在流行的 ADNI 数据集上,我们的模型仅使用核磁共振成像数据就能以 94.1% 的准确率诊断出阿尔茨海默病,优于之前的先进水平。根据学习到的模型,我们确定了疾病生物标志物,其结果与文献相符。我们进一步将学习到的模型用于诊断轻度认知障碍(MCI),即老年痴呆症的前驱阶段,结果优于其他方法。
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Probabilistic 3D Correspondence Prediction from Sparse Unsegmented Images. Class-Balanced Deep Learning with Adaptive Vector Scaling Loss for Dementia Stage Detection. MoViT: Memorizing Vision Transformers for Medical Image Analysis. Robust Unsupervised Super-Resolution of Infant MRI via Dual-Modal Deep Image Prior. IA-GCN: Interpretable Attention based Graph Convolutional Network for Disease Prediction.
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