预测COVID-19进展过程中呼吸道症状的普适计算模型和可穿戴设备

Jagadeesan Dhanapal, Badrinath Narayanamurthy, Vijayakumar Shanmugam, A. Gangadharan, Magesh S.
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引用次数: 5

摘要

目的为COVID-19进展过程中呼吸道症状的预测提供模型,保持社交距离、勤洗手、在公共场所佩戴口罩是预防疾病进一步传播的一些潜在措施。尽管各国政府采取了种种努力和影响,但在世界主要城市,这种流行病仍未得到控制。本文提出的技术介绍了一种非侵入性的主要筛选呼吸器官的重要症状和变化。新型冠状病毒或Covid-19已成为全球许多国家社会和经济增长的严重威胁。过去两个月的进展速度明显加快。该病以严重的呼吸道疾病、发烧和咳嗽为特征,一直威胁着人类社会的生命。早期发现和预后对于隔离疾病的潜在传播者和控制进展速度是绝对必要的。最近的研究强调了感染患者呼吸特征的变化。Covid-19患者的呼吸模式可与正常感冒/流感患者的呼吸模式区分开来。呼吸急促是被确定为新冠肺炎特征的生命体征之一。拟议的呼吸数据采集将从面部识别、使用红外传感器和机器学习方法开始,对呼吸模式进行分类,最终将其缩小为Covid-19的症状。原创性/价值在进行的实验中,所提出的系统产生的结果具有94%的准确性,精密度,召回率和f1测量平均值。这种方法也被证明是基于症状进行大规模监测和分类的有效解决方案。
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Pervasive computational model and wearable devices for prediction of respiratory symptoms in progression of COVID-19
PurposeThe purpose of this paper is to provide a model for prediction of respiratory symptoms in the progression of COVID-19, social distancing, frequent hand washes, wearing of face mask in public are some of the potential measures of preventing the disease from further spreading. In spite of the effects and efforts taken by governments, the pandemic is still uncontrolled in major cities of the world. The proposed technique in this paper introduces a non-intrusive and major screening of vital symptoms and changes in the respiratory organs.Design/methodology/approachThe novel coronavirus or Covid-19 has become a serious threat to social and economic growth of many nations worldwide. The pace of progression was significantly higher in the past two months. Identified by severe respiratory illness, fever and coughs, the disease has been threatening the lives of human society. Early detection and prognosis is absolutely necessary to isolate the potential spreaders of the disease and to control the rate of progression.FindingsRecent studies have highlighted the changes observed in breathing characteristics of infected patients. Respiratory pattern of Covid-19 patients can be differentiated from the respiratory pattern of normal cold/flu affected patients. Tachypnoea is one among the vital signs identified to be distinguishing feature of Covid-19. The proposed respiratory data capture will commence with facial recognition, use of infrared sensors and machine-learning approaches to classify the respiratory patterns, which finally narrows down as a symptom of Covid-19.Originality/valueProposed system produced outcome of 94% accuracy, precision, recall and a F1-measure as an average in the conducted experiments. This method also proves to be a fruitful solution for large-scale monitoring and categorisation of people based on the symptoms.
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