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Instance-Based Representation Using Multiple Kernel Learning for Predicting Conversion to Alzheimer Disease

机译:基于实例的基于核心学习预测转化对阿尔茨海默病的表现

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The early detection of Alzheimer's disease and quantification of its progression poses multiple difficulties for machine learning algorithms. Two of the most relevant issues are related to missing data and results interpretability. To deal with both issues, we introduce a methodology to predict conversion of mild cognitive impairment patients to Alzheimer's from structural brain MRI volumes. First, we use morphological measures of each brain structure to build an instance-based feature mapping that copes with missed follow-up visits. Then, the extracted multiple feature mappings are combined into a single representation through the convex combination of reproducing kernels. The weighting parameters per structure are tuned based on the maximization of the centered-kernel alignment criterion. We evaluate the proposed methodology on a couple of well-known classification machines employing the ADNI database devoted to assessing the combined prognostic value of several AD biomarkers. The obtained experimental results show that our proposed method of Instance-based representation using multiple kernel learning enables detecting mild cognitive impairment as well as predicting conversion to Alzheimers disease within three years from the initial screening. Besides, the brain structures with larger combination weights are directly related to memory and cognitive functions.
机译:早期检测阿尔茨海默病的疾病和其进展量化对机器学习算法构成了多个困难。其中两个最相关的问题与缺少数据和结果解释性有关。为了处理这两个问题,我们介绍一种方法,以预测来自结构脑MRI卷的阿尔茨海默患者对轻度认知障碍患者的转化。首先,我们使用每个大脑结构的形态测量来构建基于实例的特征映射,该特征映射与错过的后续访问。然后,将提取的多个特征映射通过再现核的凸组合成单个表示。基于居中内核对准标准的最大化来调谐每个结构的加权参数。我们评估了采用拟合致力于评估若干AD生物标志物的组合预后价值的ADNI数据库的若干知名分类机上的提出的方法。所获得的实验结果表明,我们使用多个内核学习的基于实例的代表方法可以检测轻度认知障碍以及从初始筛查的三年内预测对阿尔茨海默病的转化。此外,具有较大组合重量的脑结构与记忆和认知功能直接相关。

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