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基于主成分分析的增量极限学习机(PCA-IELM)在基于胸部 X 光图像的 COVID-19 患者诊断中的应用。

PCA-Based Incremental Extreme Learning Machine (PCA-IELM) for COVID-19 Patient Diagnosis Using Chest X-Ray Images.

机构信息

Koneru Lakshmaiah Education Foundation, Vaddeswaram, India.

Vellore Institute of Technology, Vellore, India.

出版信息

Comput Intell Neurosci. 2022 Jul 4;2022:9107430. doi: 10.1155/2022/9107430. eCollection 2022.

DOI:10.1155/2022/9107430
PMID:35800685
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9253873/
Abstract

Novel coronavirus 2019 has created a pandemic and was first reported in December 2019. It has had very adverse consequences on people's daily life, healthcare, and the world's economy as well. According to the World Health Organization's most recent statistics, COVID-19 has become a worldwide pandemic, and the number of infected persons and fatalities growing at an alarming rate. It is highly required to have an effective system to early detect the COVID-19 patients to curb the further spreading of the virus from the affected person. Therefore, to early identify positive cases in patients and to support radiologists in the automatic diagnosis of COVID-19 from X-ray images, a novel method PCA-IELM is proposed based on principal component analysis (PCA) and incremental extreme learning machine. The suggested method's key addition is that it considers the benefits of PCA and the incremental extreme learning machine. Further, our strategy PCA-IELM reduces the input dimension by extracting the most important information from an image. Consequently, the technique can effectively increase the COVID-19 patient prediction performance. In addition to these, PCA-IELM has a faster training speed than a multi-layer neural network. The proposed approach was tested on a COVID-19 patient's chest X-ray image dataset. The experimental results indicate that the proposed approach PCA-IELM outperforms PCA-SVM and PCA-ELM in terms of accuracy (98.11%), precision (96.11%), recall (97.50%), F1-score (98.50%), etc., and training speed.

摘要

新型冠状病毒 2019 引发了一场大流行,并于 2019 年 12 月首次报告。它对人们的日常生活、医疗保健和世界经济都产生了非常不利的影响。根据世界卫生组织的最新统计数据,COVID-19 已成为全球性大流行,感染人数和死亡人数呈惊人速度增长。非常需要有一个有效的系统来早期发现 COVID-19 患者,以遏制病毒从受感染者进一步传播。因此,为了早期识别患者中的阳性病例,并为放射科医生提供从 X 射线图像中自动诊断 COVID-19 的支持,提出了一种基于主成分分析(PCA)和增量极端学习机的新型 PCA-IELM 方法。所提出方法的主要特点是考虑了 PCA 和增量极端学习机的优势。此外,我们的策略 PCA-IELM 通过从图像中提取最重要的信息来降低输入维度。因此,该技术可以有效地提高 COVID-19 患者的预测性能。除此之外,PCA-IELM 比多层神经网络具有更快的训练速度。所提出的方法在 COVID-19 患者的胸部 X 射线图像数据集上进行了测试。实验结果表明,所提出的方法 PCA-IELM 在准确性(98.11%)、精度(96.11%)、召回率(97.50%)、F1 分数(98.50%)等方面以及训练速度均优于 PCA-SVM 和 PCA-ELM。

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