使用支持物联网的深度学习对COVID-19胸部x射线图像进行肺炎检测的方法、应用和挑战

G. Verma, S. Prakash
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引用次数: 0

摘要

包括人工智能、机器学习、深度学习在内的医疗物联网(IoMT)领域取得了巨大的进步,在医疗行业有着广阔的发展前景。物联网设备,如传感器、执行器和其他设备连接到互联网,进一步收集数据并将其存储到特定位置。为了进一步处理数据,利用了机器学习、深度学习的框架。这些技术有助于清晰地了解患者的健康数据,从而了解患者当前的健康状况。最近发生的新冠肺炎疫情影响了全球数百万人。这种病毒已经夺去了许多人的生命,而且这种病毒的感染率仍在与日俱增。研究人员和医务人员正在探索先进的技术,利用IoMT和深度学习框架利用感染者的医学图像,以便探索根本原因。在这项工作中,利用胸部x射线数据集探索了不同的深度神经网络技术来检测Covid-19感染者。研究人员在从胸部x射线图像中检测Covid-19感染患者方面面临着很多挑战。这篇详尽的文献综述介绍了深度学习架构的不同框架,并对最近的方法、数据集、问题、研究差距等进行了比较研究。此外,本文还讨论了一些基于CNN架构的预训练模型,如Xception、VGG16、VGG19等。
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Methodologies, Applications, and Challenges of Pneumonia Detection of Chest X-Ray images for COVID-19 using IoT-enabled Deep Learning
There is a great advancement in the domain of Internet of medical Things (IoMT) including other domains of artificial intelligence, machine learning, deep learning which has an extensive possibility of exploring healthcare industry. The IoT devices like sensors, actuators and other devices gets connected to the internet and further they collect the data and store it to a specific location. For further processing of the data, the frameworks of machine learning, deep learning are utilized. These techniques help to get the clear insights of the patient’s health data which enables to know the current health status of the patient. Recently, the Covid-19 outbreak has occurred which has influenced millions of people across the globe. This virus has taken life of many people and the infection rate of this virus is still increasing day by day. Researchers and medical staffs are exploring advanced techniques to utilize medical images of the infected person using IoMT and deep learning frameworks so that the root cause can be explored. Different techniques deep neural networks have been explored in this work to detect Covid-19 infected persons which utilizes a chest X-ray dataset. A lot of challenges are there that are being faced by the researchers to detect Covid-19 infected patients from Chest X-ray images. This exhaustive literature review presents different frameworks of deep learning architectures and a comparative study has also been done addressing the recent methodologies, datasets, issues, research gaps and so on. Further, some pre-trained models based on CNN architectures like Xception, VGG16, VGG19 and so on are also discussed.
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