Analysis of cough sound measurements including COVID-19 positive cases: A machine learning characterization

J. J. Valdés, Pengcheng Xi, Madison Cohen-McFarlane, Bruce Wallace, R. Goubran, F. Knoefel
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引用次数: 11

Abstract

Remote monitoring and measurement are valuable tools for medical applications and they are particularly important in the context of pandemic outbreaks, like the current COVID-19. This paper presents an analysis of sound measurements of cough events from the point of view of their predictive content with respect to identification of different types of cough, including positive COVID-19 cases. The data consisted of a collection of audio samples collected from different sources including dry, wet, whooping and COVID-19 coughs. Unsupervised and supervised machine learning techniques were used to reveal the underlying structure of the data, described by dissimilarity spaces constructed from pair-wise dynamic time warping measures derived from the original sound measurements. Intrinsic dimensionality, nonlinear mappings to low-dimensional spaces and visual cluster assessment techniques allowed a representation of the cough types distribution. Supervised classification techniques were used to obtain models identifying cough classes and high performance classifiers were obtained for most of them, including COVID-19. These results are preliminary and there is potential to improve, as they were obtained directly from a small dataset, without signal preprocessing (trimming, filtering, etc.), hyperparameter tuning, ensemble models, and class imbalance handling approaches.
包括COVID-19阳性病例的咳嗽声测量分析:机器学习表征
远程监测和测量是医疗应用的宝贵工具,在当前COVID-19等大流行疫情的背景下尤为重要。本文从咳嗽事件的预测内容的角度分析了咳嗽事件的声音测量,以识别不同类型的咳嗽,包括COVID-19阳性病例。这些数据包括从不同来源收集的音频样本,包括干咳、湿咳、百日咳和COVID-19咳嗽。使用无监督和有监督机器学习技术来揭示数据的底层结构,通过从原始声音测量中衍生的成对动态时间翘曲度量构建的不相似空间来描述。内在维度、低维空间的非线性映射和视觉聚类评估技术允许咳嗽类型分布的表示。使用监督分类技术获得了识别咳嗽类别的模型,并对包括COVID-19在内的大多数咳嗽类别获得了高性能分类器。这些结果是初步的,有改进的潜力,因为它们是直接从一个小数据集获得的,没有信号预处理(修剪、滤波等)、超参数调优、集成模型和类不平衡处理方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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