基于kohonen的拓扑聚类放大器在帕金森病多类分类中的应用

A. Frid, L. Manevitz, Ohad Mosafi
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引用次数: 5

摘要

帕金森病程度分级是一项重要的临床需要。尽管如此,目前的方法需要由训练有素的临床专家进行手动(和主观)评估。最近,机器学习工具已经开发出来,可以以自动和客观的方式直接从语音信号中产生PD存在的分类。然而,这些方法不足以对疾病的程度进行分类。在这项工作中,我们展示了如何在语音信号的标签空间和特征空间上应用和利用拓扑信息来解决这个问题。我们通过执行特征空间的拓扑聚类(使用Kohonen自组织映射算法的一个版本)来解决这个问题,然后在每个聚类上优化单独的多类分类器。使用这些方法,我们可以可靠地训练我们的系统在7度分类(其中随机水平为14%)上将新的语音信号数据分类到70%以上的水平,这接近于在简单的2类分类上可获得的精度。
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Kohonen-Based Topological Clustering as an Amplifier for Multi-Class Classification for Parkinson’s Disease
Classifying the degree of Parkinson’s disease is an important clinical necessity. Nonetheless, current methodology requires manual (and subjective) evaluation by a trained clinical expert. Recently, Machine Learning tools have been developed that can produce a classification of the presence of PD directly from the speech signal in an automated and objective fashion. However, these methods were not sufficient for the classification of the degree of the disease. In this work, we show how to apply and leverage topological information on the both the label space and the feature space of the speech signal in order to solve this problem.We address the problem by performing topological clustering (using a version of the Kohonen Self Organizing Map algorithm) of the feature space and then optimizing separate multi-class classifiers on each cluster.Using these methods, we can reliably train our system to classify new speech signal data to more than the 70% level on a 7 degree classification (where random level is 14%) which is close to the obtainable accuracy on the simple 2 class classification.
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