首页> 外文期刊>Journal of healthcare informatics research. >Automatic Detection of COVID-19 Based on Short-Duration Acoustic Smartphone Speech Analysis
【24h】

Automatic Detection of COVID-19 Based on Short-Duration Acoustic Smartphone Speech Analysis

机译:基于短期声学智能手机语音分析自动检测COVID-19

获取原文
获取原文并翻译 | 示例
       

摘要

Currently, there is an increasing global need for COVID-19 screening to help reduce the rate of infection and at-risk patient workload at hospitals. Smartphone-based screening for COVID-19 along with other respiratory illnesses offers excellent potential due to its rapid-rollout remote platform, user convenience, symptom tracking, comparatively low cost, and prompt result processing timeframe. In particular, speech-based analysis embedded in smartphone app technology can measure physiological effects relevant to COVID-19 screening that are not yet digitally available at scale in the healthcare field. Using a selection of the Sonde Health COVID-19 2020 dataset, this study examines the speech of COVID-19-negative participants exhibiting mild and moderate COVID-19-like symptoms as well as that of COVID-19-positive participants with mild to moderate symptoms. Our study investigates the classification potential of acoustic features (e.g., glottal, prosodic, spectral) from short-duration speech segments (e.g., held vowel, pataka phrase, nasal phrase) for automatic COVID-19 classification using machine learning. Experimental results indicate that certain feature-task combinations can produce COVID-19 classification accuracy of up to 80% as compared with using the all-acoustic feature baseline (68%). Further, with brute-forced n-best feature selection and speech task fusion, automatic COVID-19 classification accuracy of upwards of 82-86% was achieved, depending on whether the COVID-19-negative participant had mild or moderate COVID-19-like symptom severity.
机译:目前,全球对Covid-19-19筛查的需求越来越多,以帮助降低医院的感染率和处于危险的患者工作量。基于智能手机的COVID-19以及其他呼吸系统疾病的筛查,由于其快速滚动的远程平台,用户便利,症状跟踪,相对较低的成本以及迅速的结果处理时间范围,因此具有出色的潜力。特别是,嵌入在智能手机应用程序技术中的基于语音的分析可以测量与COVID-19筛查相关的生理效果,这些效果尚未在医疗保健领域进行数字化可用。本研究使用SONDE Health Covid-192020数据集的选择,研究了Covid-19-19-Conngative参与者的语音,表现出轻度和中度的Covid-19类症状,以及COVID-19阳性参与者的言语症状。我们的研究研究了使用机器学习使用机器学习的自动covid-19分类,调查了短期语音段(例如,载体元音,帕塔卡词,鼻音短语,鼻音短语,鼻词)的分类潜力(例如,声门,韵律,光谱,光谱)。实验结果表明,与使用全声学特征基线相比,某些特征任务组合可以产生高达80%的CoVID-19分类精度(68%)。此外,通过蛮横的N最佳功能选择和语音任务融合,根据COVID-19-19-Dengative参与者是轻度还是中度的COVID-19--实现了自动COVID-19分类精度为82-86%以上。喜欢症状的严重程度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号