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Modeling Cognitive Trends in Preclinical Alzheimer's Disease (AD) via Distributions over Permutations

机译:通过排列分布模拟临床前阿尔茨海默氏病(AD)的认知趋势

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This paper presents an algorithm to identify subsets of subjects who share similarities in the context of imaging and clinical measurements within a cohort of cognitively healthy individuals at risk for Alzheimer's disease (AD). In particular, we wish to evaluate how patterns in the subjects' cognitive scores or PIB-PET image measurements are associated with a clinical assessment of risk of developing AD, image based measures, and future cognitive decline. The challenge here is that all the participants are asymptomatic, our predictors are noisy and heterogeneous, and the disease specific signal, when present, is weak. As a result, off-the-shelf methods do not work well. We develop a model that uses a probability distribution over the set of permutations to represent the data; this yields a distance measure robust to these issues. We then show that our algorithm produces consistent and meaningful groupings of subjects based on their cognitive scores and that it provides a novel and interesting representation of measurements from PIB-PET images.
机译:本文提出了一种算法,可以识别在具有阿尔茨海默氏病(AD)风险的认知健康个体队列中,在影像学和临床测量方面具有相似性的受试者子集。特别是,我们希望评估受试者的认知评分或PIB-PET图像测量中的模式如何与发生AD风险,基于图像的测量以及未来认知下降的临床评估相关联。这里的挑战在于,所有参与者均无症状,我们的预测因子嘈杂且异质,并且特定疾病的信号(如果存在)是微弱的。结果,现成的方法不能很好地工作。我们开发了一个模型,该模型使用排列集上的概率分布来表示数据。这产生了针对这些问题的稳健的距离度量。然后,我们证明了我们的算法会根据受试者的认知得分对受试者进行一致且有意义的分组,并且该算法可提供新颖有趣的PIB-PET图像测量结果表示。

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