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Graph of Hippocampal Subfields Grading for Alzheimer's Disease Prediction

机译:预测阿尔茨海默氏病的海马亚区图

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Numerous methods have been proposed to capture early hippocampus alterations caused by Alzheimer's disease. Among them, patch-based grading approach showed its capability to capture subtle structural alterations. This framework applied on hippocampus obtains state-of-the-art results for AD detection but is limited for its prediction compared to the same approaches based on whole-brain analysis. We assume that this limitation could come from the fact that hippocam-pus is a complex structure divided into different subfields. Indeed, it has been shown that AD does not equally impact hippocampal subfields. In this work, we propose a graph-based representation of the hippocampal subfields alterations based on patch-based grading feature. The strength of this approach comes from better modeling of the inter-related alterations through the different hippocampal subfields. Thus, we show that our novel method obtains similar results than state-of-the-art approaches based on whole-brain analysis with improving by 4 percent points of accuracy patch-based grading methods based on hippocampus.
机译:已经提出了许多方法来捕获由阿尔茨海默氏病引起的早期海马体改变。其中,基于补丁的分级方法显示了捕获细微结构变化的能力。应用于海马的该框架获得了AD检测的最新结果,但与基于全脑分析的相同方法相比,其预测受到限制。我们认为这种局限性可能源于以下事实:hippocam-pus是一个分为不同子域的复杂结构。确实,已经表明AD不会同样地影响海马亚区。在这项工作中,我们提出了基于图块的分级功能基于海图子域变化的基于图的表示形式。这种方法的优势来自于通过不同的海马亚区对相互关联的变化进行更好的建模。因此,我们表明,与基于全脑分析的最新方法相比,我们的新方法获得了相似的结果,并且将基于海马的基于补丁的准确分级方法提高了4个百分点。

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