利用机器学习和深度学习技术对新冠肺炎检测进行全面综述。

IF 3.1 Q2 MEDICAL INFORMATICS
Sreeparna Das, Ishan Ayus, Deepak Gupta
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引用次数: 0

摘要

目的:冠状病毒首次向人类传播始于中国武汉市,形成了一场名为2019冠状病毒病(新冠肺炎)的大流行,并对整个世界构成了主要威胁。研究人员正试图灌输人工智能(机器学习或深度学习模型),以有效检测新冠肺炎。本研究探索了用于新冠肺炎检测的所有现有机器学习(ML)或深度学习(DL)模型,这可能有助于研究人员向不同方向探索。这篇综述文章的主要目的是向研究专家简要介绍人工智能的应用,帮助他们探索未来的改进范围。方法:研究人员使用各种机器学习、深度学习以及机器和深度学习模型的组合来提取新冠肺炎患者的显著特征并对其各种健康状况进行分类。为此,研究人员使用了不同的图像模式,如CT扫描、X射线等。这项研究从谷歌学者、PubMed、Web of Science等不同的存储库收集了200多篇研究论文。这些研究论文经过了不同级别的审查,最终选出了50篇研究文章。结果:在这些列出的文章中,ML/DL模型在进行新冠肺炎分类时显示出99%及以上的准确率。本研究还介绍了各种研究的各种临床应用。本研究明确了各种机器和深度学习模型在医学诊断和研究领域的重要性。结论:总之,很明显,ML/DL模型近年来取得了重大进展,但仍有一些局限性需要解决。过度拟合就是这样一个限制,它可能导致错误的预测和模型的负担过重。研究界必须继续努力寻找克服这些限制的方法,使机器和深度学习模型更加有效和高效。通过这项正在进行的研究和开发,我们可以期待在未来取得更大的进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A comprehensive review of COVID-19 detection with machine learning and deep learning techniques.

A comprehensive review of COVID-19 detection with machine learning and deep learning techniques.

A comprehensive review of COVID-19 detection with machine learning and deep learning techniques.

Purpose: The first transmission of coronavirus to humans started in Wuhan city of China, took the shape of a pandemic called Corona Virus Disease 2019 (COVID-19), and posed a principal threat to the entire world. The researchers are trying to inculcate artificial intelligence (Machine learning or deep learning models) for the efficient detection of COVID-19. This research explores all the existing machine learning (ML) or deep learning (DL) models, used for COVID-19 detection which may help the researcher to explore in different directions. The main purpose of this review article is to present a compact overview of the application of artificial intelligence to the research experts, helping them to explore the future scopes of improvement.

Methods: The researchers have used various machine learning, deep learning, and a combination of machine and deep learning models for extracting significant features and classifying various health conditions in COVID-19 patients. For this purpose, the researchers have utilized different image modalities such as CT-Scan, X-Ray, etc. This study has collected over 200 research papers from various repositories like Google Scholar, PubMed, Web of Science, etc. These research papers were passed through various levels of scrutiny and finally, 50 research articles were selected.

Results: In those listed articles, the ML / DL models showed an accuracy of 99% and above while performing the classification of COVID-19. This study has also presented various clinical applications of various research. This study specifies the importance of various machine and deep learning models in the field of medical diagnosis and research.

Conclusion: In conclusion, it is evident that ML/DL models have made significant progress in recent years, but there are still limitations that need to be addressed. Overfitting is one such limitation that can lead to incorrect predictions and overburdening of the models. The research community must continue to work towards finding ways to overcome these limitations and make machine and deep learning models even more effective and efficient. Through this ongoing research and development, we can expect even greater advances in the future.

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来源期刊
Health and Technology
Health and Technology MEDICAL INFORMATICS-
CiteScore
7.10
自引率
0.00%
发文量
83
期刊介绍: Health and Technology is the first truly cross-disciplinary journal on issues related to health technologies addressing all professions relating to health, care and health technology.The journal constitutes an information platform connecting medical technology and informatics with the needs of care, health care professionals and patients. Thus, medical physicists and biomedical/clinical engineers are encouraged to write articles not only for their colleagues, but directed to all other groups of readers as well, and vice versa.By its nature, the journal presents and discusses hot subjects including but not limited to patient safety, patient empowerment, disease surveillance and management, e-health and issues concerning data security, privacy, reliability and management, data mining and knowledge exchange as well as health prevention. The journal also addresses the medical, financial, social, educational and safety aspects of health technologies as well as health technology assessment and management, including issues such security, efficacy, cost in comparison to the benefit, as well as social, legal and ethical implications.This journal is a communicative source for the health work force (physicians, nurses, medical physicists, clinical engineers, biomedical engineers, hospital engineers, etc.), the ministries of health, hospital management, self-employed doctors, health care providers and regulatory agencies, the medical technology industry, patients'' associations, universities (biomedical and clinical engineering, medical physics, medical informatics, biology, medicine and public health as well as health economics programs), research institutes and professional, scientific and technical organizations.Health and Technology is jointly published by Springer and the IUPESM (International Union for Physical and Engineering Sciences in Medicine) in cooperation with the World Health Organization.
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