2019冠状病毒病机器学习与物联网调查

E. Elbasi, Shinu Mathew, A. Topcu, Wiem Abdelbaki
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引用次数: 4

摘要

新冠肺炎疫情影响了全球经济、教育、安全、社会生活和健康等诸多生活领域。在这项工作中,我们调查了机器学习、物联网(IoT)、医学成像和软件应用方面的研究论文,以预防、诊断、减少和管理COVID-19。人工智能是解决从国土安全到生物医学工程等新兴领域问题的重要研究领域。图像处理、数据挖掘、网络、图论、自然语言处理、计算机视觉等人工智能子领域被频繁应用于COVID-19数据。物联网传感器从患者和老年人家中、医院病房或其他地方收集数据,用于早期预测和监测。收集的数据用于机器学习算法,如决策树、naïve贝叶斯分类器、神经网络和k-means算法,用于分类和聚类。计算机断层扫描也常用于确定患者肺部是否存在COVID-19感染或损伤。利用图像分割、目标检测和目标跟踪来提取医学图像的特征。这些调查论文的实验结果表明,这些方法在预测、诊断和管理COVID-19方面是有希望的。
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A Survey on Machine Learning and Internet of Things for COVID-19
COVID-19 has affected many areas of life worldwide, such as the economy, education, security, social life, and health. In this work, we survey research papers on machine learning, the Internet of things (IoT), medical imaging, and software applications to prevent, diagnose, reduce, and manage COVID-19. Artificial intelligence is an important research area to solve problems in emergent domains from homeland security to biomedical engineering. Artificial intelligence subdomains such as image processing, data mining, networks, graph theory, natural language processing, and computer vision are frequently applied for COVID-19 data. IoT sensors collect data from patients and elderly people in their homes, hospital rooms, or elsewhere for early prediction and monitoring. The collected data are used in machine learning algorithms such as decision tree, naïve Bayes classifier, neural network, and k-means algorithms for classification and clustering. Computed tomography is also commonly used to determine the presence of any COVID-19 infection or damage in patients' lungs. Image segmentation, object detection, and object tracking are used to extract features from medical images. Experimental results of these surveyed papers demonstrate that these approaches are promising for predicting, diagnosing, and managing COVID-19.
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