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Random forests based monitoring of human larynx using questionnaire data

机译:基于问卷调查数据的基于随机森林的人喉监测

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摘要

This paper is concerned with soft computing techniques-based noninvasive monitoring of human larynx using subject's questionnaire data. By applying random forests (RF), questionnaire data are categorized into a healthy class and several classes of disorders including: cancerous, noncancerous, diffuse, nodular, paralysis, and an overall pathological class. The most important questionnaire statements are determined using RF variable importance evaluations. To explore data represented by variables used by RF, the t-dis-tributed stochastic neighbor embedding (t-SNE) and the multidimensional scaling (MDS) are applied to the RF data proximity matrix. When testing the developed tools on a set of data collected from 109 subjects, the 100% classification accuracy was obtained on unseen data in binary classification into the healthy and pathological classes. The accuracy of 80.7% was achieved when classifying the data into the healthy, cancerous, noncancerous classes. The t-SNE and MDS mapping techniques applied allow obtaining two-dimensional maps of data and facilitate data exploration aimed at identifying subjects belonging to a "risk group". It is expected that the developed tools will be of great help in preventive health care in laryngology.
机译:本文涉及使用受试者的问卷数据基于软计算技术对人喉进行的非侵入性监测。通过应用随机森林(RF),将问卷数据分为健康类和几类疾病,包括:癌性,非癌性,弥漫性,结节性,麻痹性和整体病理性。最重要的问卷陈述是使用RF变量重要性评估确定的。为了探索由RF使用的变量表示的数据,将t分布随机邻居嵌入(t-SNE)和多维缩放(MDS)应用于RF数据邻近矩阵。在对从109位受试者收集的一组数据上测试开发的工具时,对于未分类的健康分类和病理分类的二元分类数据,分类准确率达到了100%。将数据分类为健康,癌性,非癌性类别时,达到了80.7%的准确性。所应用的t-SNE和MDS映射技术允许获取数据的二维图,并有助于旨在识别属于“风险组”的对象的数据探索。预计开发的工具将对喉科学的预防性保健有很大帮助。

著录项

  • 来源
    《Expert Systems with Application》 |2012年第5期|p.5506-5512|共7页
  • 作者单位

    Department of Electrical & Control Equipment, Kaunas University of Technology Studentu 50, LT-51368, Kaunas, Lithuania;

    Intelligent Systems Laboratory, Halmstad University, Box 823. S 301 18 Halmstad, Sweden,Department of Electrical & Control Equipment, Kaunas University of Technology Studentu 50, LT-51368, Kaunas, Lithuania;

    Department of Electrical & Control Equipment, Kaunas University of Technology Studentu 50, LT-51368, Kaunas, Lithuania;

    Department of Otolaryngology, Kaunas University of Medicine Eiveniu 2, LT-50009, Kaunas, Lithuania;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    random forests; variable importance; variable selection; classifier; data proximity; human larynx;

    机译:随机森林重要性变化变量选择;分类器数据接近度人喉;

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