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首页> 外文期刊>Amyotrophic Lateral Sclerosis and Frontotemporal Degeneration >Classification of primary progressive aphasia: Do unsupervised data mining methods support a logopenic variant?
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Classification of primary progressive aphasia: Do unsupervised data mining methods support a logopenic variant?

机译:原发性进行性失语症的分类:无监督数据挖掘方法是否支持盲点变异?

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摘要

Our objective was to test whether data mining techniques, through an unsupervised learning approach, support the three-group diagnostic model of primary progressive aphasia (PPA) versus the existence of two main/classic groups. A series of 155 PPA patients observed in a clinical setting and subjected to at least one neuropsychological/language assessment was studied. Several demographic, clinical and neuropsychological attributes, grouped in distinct sets, were introduced in unsupervised learning methods (Expectation Maximization, K-Means, X-Means, Hierarchical Clustering and Consensus Clustering). Results demonstrated that unsupervised learning methods revealed two main groups consistently obtained throughout all the analyses (with different algorithms and different set of attributes). One group included most of the agrammaticon-fluent and some logopenic cases while the other was mainly composed of semantic and logopenic cases. Clustering the patients in a larger number of groups (k > 2) revealed some clusters composed mostly of non-fluent or of semantic cases. However, we could not evidence any group chiefly composed of logopenic cases. In conclusion, unsupervised data mining approaches do not support a clear distinction of logopenic PPA as a separate variant.
机译:我们的目标是测试数据挖掘技术是否通过无监督学习方法支持原发性进行性失语症(PPA)的三组诊断模型,而不支持两个主要/经典组的存在。研究了在临床环境中观察并接受至少一项神经心理/语言评估的一系列155位PPA患者。在无监督的学习方法(期望最大化,K均值,X均值,分层聚类和共识聚类)中引入了按不同集合分组的几种人口统计学,临床和神经心理学属性。结果表明,无监督学习方法揭示了在所有分析中始终获得的两个主要组(具有不同的算法和不同的属性集)。一组包括大部分语法/非流利的情况和一些低俗的情况,而另一组主要由语义和低俗的情况组成。将患者分为多个组(k> 2),发现一些组主要由非流利或语义案例组成。但是,我们无法证明主要由低俗病例组成的任何团体。总而言之,无监督数据挖掘方法不支持将徽标PPA明确区分为单独的变体。

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