论文标题
阿尔茨海默氏病和额颞痴呆的可解释的差异诊断
Interpretable differential diagnosis for Alzheimer's disease and Frontotemporal dementia
论文作者
论文摘要
阿尔茨海默氏病和额颞痴呆症是两种主要痴呆症。它们的准确诊断和分化对于确定特定干预和治疗至关重要。但是,由于临床症状的类似模式,在疾病的早期,这两种痴呆症的鉴别诊断仍然很困难。因此,多种类型痴呆的自动分类具有重要的临床价值。到目前为止,尚未积极探索这一挑战。最近在医学图像领域进行深度学习的发展已经证明了各种分类任务的高性能。在本文中,我们建议利用两种类型的生物标志物:结构分级和结构萎缩。为此,我们首先建议训练大型3D U-NET的合奏,以局部区分健康与痴呆症解剖模式。这些模型的结果是一个可解释的3D分级图,能够指示异常的大脑区域。该地图也可以在各种分类任务中使用图形卷积神经网络利用。最后,我们建议将基于深度的分级和基于萎缩的分类结合起来,以改善痴呆症类型的歧视。与最先进的疾病检测任务和鉴别诊断任务相比,提出的框架表现出竞争性能。
Alzheimer's disease and Frontotemporal dementia are two major types of dementia. Their accurate diagnosis and differentiation is crucial for determining specific intervention and treatment. However, differential diagnosis of these two types of dementia remains difficult at the early stage of disease due to similar patterns of clinical symptoms. Therefore, the automatic classification of multiple types of dementia has an important clinical value. So far, this challenge has not been actively explored. Recent development of deep learning in the field of medical image has demonstrated high performance for various classification tasks. In this paper, we propose to take advantage of two types of biomarkers: structure grading and structure atrophy. To this end, we propose first to train a large ensemble of 3D U-Nets to locally discriminate healthy versus dementia anatomical patterns. The result of these models is an interpretable 3D grading map capable of indicating abnormal brain regions. This map can also be exploited in various classification tasks using graph convolutional neural network. Finally, we propose to combine deep grading and atrophy-based classifications to improve dementia type discrimination. The proposed framework showed competitive performance compared to state-of-the-art methods for different tasks of disease detection and differential diagnosis.