基于深度学习的框架,从胸部x光片确定COVID-19感染程度。

Q4 Medicine
Georgian medical news Pub Date : 2024-10-01
S Kummari, A Zope, P Juyal, P Sharma, S Das, S Varghese
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引用次数: 0

摘要

冠状病毒病-19 (COVID-19)流行,全球正在遭受一场规模空前的医疗灾难。随着冠状病毒的传播,科学家们担心提供或帮助提供挽救生命和结束疫情的补救措施。例如,人工智能(AI)已经发生了变化,以应对流行病带来的困难。我们提供了一种深度学习方法,用于从胸部x射线中定位和提取COVID-19属性。对分层多层ResNet50 (HMResNet50)进行调整,以获得更好的COVID-19数据,并收集来自众多公共来源的典型胸部x线图像来构建该数据集。我们采用信息增强方法,如随机旋转与10 - 10度倾斜,随机噪声和水平翻转生成大量的胸部x线图像。研究结果令人鼓舞:建议的模型正确识别COVID-19胸部x射线或标准,Resnet50的准确率为99.10%,分层多层Resnet50的准确率为97.20%。结果表明,本文提出的新冠肺炎识别方法简单、高效、有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DEEP LEARNING-BASED FRAMEWORK TO DETERMINE THE DEGREE OF COVID-19 INFECTIONS FROM CHEST X-RAY.

The corona virus disease-19 (COVID-19) epidemic, the whole globe is suffering from a medical condition catastrophe that is unprecedented in scale. As the coronavirus spreads, scientists are worried about offering or helping in the supply of remedies to preserve lives and end the epidemic. Artificial intelligence (AI), for example, has occurred altered to deal with the difficulties raised by pandemics. We provide an in-depth learning approach for locating and extracting attributes of COVID-19 from Chest X-rays. Hierarchical multilevel ResNet50 (HMResNet50) was adjusted to better COVID-19 data, which was collected to build this dataset with images of a typical chest X-ray from numerous public sources. We employed information enhancement methods such as randomized rotations with a ten-ten-degree slant, random noise, and horizontal flips to generate numerous images of chest X-ray. Outcome of the research is encouraging: the suggested models correctly identified COVID-19 chest X-rays or standard with an accuracy of 99.10 % for Resnet50 and 97.20 % for hierarchal Multilevel Resnet50. The findings suggest that the proposed is effective, with high performance and simple COVID-19 recognition methods.

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来源期刊
Georgian medical news
Georgian medical news Medicine-Medicine (all)
CiteScore
0.60
自引率
0.00%
发文量
207
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