基于多视图学习的肌电图模板分类

A. Hazarika, M. Bhuyan, M. Barthakur, L. Dutta
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引用次数: 4

摘要

目的:研究了一种利用子空间模型对肌电模板进行分类的多视图学习模型(MVL)。方法:为了对类信息进行综合表示,对预定义的类通过公式追求生成多视图模式,然后通过关联度量来估计低维嵌入。将具有统计显著p值的lde融合并馈送到集成学习模型中。结果:该模型已在基准肌电数据集上得到验证。实验结果和随后与最新技术在准确性、敏感性和特异性方面的比较表明了所提出的MVL的有效性。结论:该算法对病理模板和正常模板进行了有效的分类。因此,它有望减轻临床医生对大量数据的负担,并加快大规模诊断研究。此外,它确保适合家庭护理健康监测便携式设备。意义:MVL自动识别肌电图模板,显著降低了维数和复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-view learning for classification of EMG template
Goal: The paper addresses a multi-view learning model (MVL) making use of subspace model for classification of Electromyography (EMG) templates. Method: For comprehensive representation of class information multi-view patterns are generated for predefined classes by dint of formulation pursuit, followed by correlation measures to estimate low dimensional embeddings (LDEs). The LDEs with statistical significant p-values are fused and fed to ensemble learning models. Results: The models have been demonstrated with benchmark EMG data sets. Experimental aftermaths and subsequent comparison with stateof-the-arts in terms of accuracy, sensitivity and specificity manifest the efficacy of proposed MVL. Conclusion: The algorithm effectively classifies both pathological and normal templates with learned patterns. Thus, it promises to alleviate the onus of clinician of large volume data and also expedite the large scale diagnosis research. Further, it ensures the suitable adaption to home-care health monitoring portable devices. Significance: The MVL automatically identifies EMG templates with significant reduction of dimensionality and complexity.
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