肺炎和COVID-19胸部x线二元和多分类影像与ML和DL模型的比较分析。

IF 1.6 4区 医学 Q2 MEDICINE, GENERAL & INTERNAL Open Medicine Pub Date : 2025-02-04 eCollection Date: 2025-01-01 DOI:10.1515/med-2024-1110
Madhumita Pal, Ranjan K Mohapatra, Ashish K Sarangi, Alok Ranjan Sahu, Snehasish Mishra, Alok Patel, Sushil Kumar Bhoi, Ashraf Y Elnaggar, Islam H El Azab, Mohammed Alissa, Salah M El-Bahy
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引用次数: 0

摘要

背景:高传染性冠状病毒病2019 (COVID-19)是由第七种冠状病毒——严重急性呼吸综合征冠状病毒2型引起的。这是有记录以来世界范围内持续时间最长的一次大流行。即使在COVID-19出现的第五年,许多国家仍在报告病例。目的:研究各种机器学习(ML)和深度学习(DL)模型在胸部x光片(cxr)中对COVID-19感染、肺炎(病毒性和细菌性)和正常病例肺部图像分类中的性能。方法:采用k近邻和logistic回归作为两种ML模型,Visual Geometry Group-19、Vision transformer和ConvMixer作为三种DL模型进行调查,比较病例检测和分类的简便性。结果:在所研究的模型中,ConvMixer在二分类和多分类的准确率、查全率、精密度、f1评分和曲线下面积方面的结果最好。预训练的ConvMixer模型在分类方面优于其他四种模型。根据性能观察,正常和COVID-19 +肺炎感染肺的准确率为97.1%,正常和COVID-19感染肺的准确率为98%,正常+细菌+病毒感染肺的准确率为82%,正常+肺炎感染肺的准确率为98%。DL模型在二元分类和多类分类方面优于ML模型。在其他CXR图像数据库上对所研究的模型进行了性能测试。结论:该网络能有效地利用CXR图像检测COVID-19和不同类型的肺炎。这将有助于医学科学通过生物成像技术和使用高端生物信息学工具及时准确地诊断病例。
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A comparative analysis of the binary and multiclass classified chest X-ray images of pneumonia and COVID-19 with ML and DL models.

Background: The highly infectious coronavirus disease 2019 (COVID-19) is caused by severe acute respiratory syndrome coronavirus 2, the seventh coronavirus. It is the longest pandemic in recorded history worldwide. Many countries are still reporting COVID-19 cases even in the fifth year of its emergence.

Objective: The performance of various machine learning (ML) and deep learning (DL) models was studied for image-based classification of the lungs infected with COVID-19, pneumonia (viral and bacterial), and normal cases from the chest X-rays (CXRs).

Methods: The K-nearest neighbour and logistics regression as the two ML models, and Visual Geometry Group-19, Vision transformer, and ConvMixer as the three DL models were included in the investigation to compare the brevity of the detection and classification of the cases.

Results: Among the investigated models, ConvMixer returned the best result in terms of accuracy, recall, precision, F1-score and area under the curve for both binary as well as multiclass classification. The pre-trained ConvMixer model outperformed the other four models in classifying. As per the performance observations, there was 97.1% accuracy for normal and COVID-19 + pneumonia-infected lungs, 98% accuracy for normal and COVID-19 infected lungs, 82% accuracy for normal + bacterial + viral infected lungs, and 98% accuracy for normal + pneumonia infected lungs. The DL models performed better than the ML models for binary and multiclass classification. The performance of these studied models was tried on other CXR image databases.

Conclusion: The suggested network effectively detected COVID-19 and different types of pneumonia by using CXR imagery. This could help medical sciences for timely and accurate diagnoses of the cases through bioimaging technology and the use of high-end bioinformatics tools.

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来源期刊
Open Medicine
Open Medicine Medicine-General Medicine
CiteScore
3.00
自引率
0.00%
发文量
153
审稿时长
20 weeks
期刊介绍: Open Medicine is an open access journal that provides users with free, instant, and continued access to all content worldwide. The primary goal of the journal has always been a focus on maintaining the high quality of its published content. Its mission is to facilitate the exchange of ideas between medical science researchers from different countries. Papers connected to all fields of medicine and public health are welcomed. Open Medicine accepts submissions of research articles, reviews, case reports, letters to editor and book reviews.
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