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An Ensemble Learning Approach Based on Diffusion Tensor Imaging Measures for Alzheimer’s Disease Classification

机译:基于扩散张量成像措施的阿尔茨海默病分类的集合学习方法

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摘要

Recent advances in neuroimaging techniques, such as diffusion tensor imaging (DTI), represent a crucial resource for structural brain analysis and allow the identification of alterations related to severe neurodegenerative disorders, such as Alzheimer’s disease (AD). At the same time, machine-learning-based computational tools for early diagnosis and decision support systems are adopted to uncover hidden patterns in data for phenotype stratification and to identify pathological scenarios. In this landscape, ensemble learning approaches, conceived to simulate human behavior in making decisions, are suitable methods in healthcare prediction tasks, generally improving classification performances. In this work, we propose a novel technique for the automatic discrimination between healthy controls and AD patients, using DTI measures as predicting features and a soft-voting ensemble approach for the classification. We show that this approach, efficiently combining single classifiers trained on specific groups of features, is able to improve classification performances with respect to the comprehensive approach of the concatenation of global features (with an increase of up to 9% on average) and the use of individual groups of features (with a notable enhancement in sensitivity of up to 11%). Ultimately, the feature selection phase in similar classification tasks can take advantage of this kind of strategy, allowing one to exploit the information content of data and at the same time reducing the dimensionality of the feature space, and in turn the computational effort.
机译:神经影像技术的最新进展,例如扩散张量成像(DTI),代表了结构脑分析的关键资源,并允许鉴定与严重神经变性疾病相关的改变,例如阿尔茨海默病(AD)。与此同时,采用基于机器学习的早期诊断计算工具,用于发现表型分层数据中的隐藏模式,并识别病理情况。在这种景观中,集成学习方法,构思在做出决策时,是在做出决策中的合适方法,通常改善分类性能。在这项工作中,我们提出了一种新颖的技术,用于健康对照和AD患者之间的自动歧视,使用DTI措施作为预测特征和分类的软票集合方法。我们表明这种方法,有效地组合在特定的特征组上培训的单一分类器,能够改善关于全局特征串联的综合方法的分类性能(平均达到高达9%)和使用单个特征组(具有显着的增强敏感度高达11%)。最终,在类似分类任务中的特征选择阶段可以利用这种策略,允许一个人利用数据的信息内容,同时减少特征空间的维度,并且反过来计算工作。

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