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基于单样本聚类的胸部X光图像COVID-19检测方法

One-shot Cluster-Based Approach for the Detection of COVID-19 from Chest X-ray Images.

作者信息

Aradhya V N Manjunath, Mahmud Mufti, Guru D S, Agarwal Basant, Kaiser M Shamim

机构信息

Department of Computer Applications, JSS Science & Technology University, Mysuru, 570006 India.

Department of Computer Science, Nottingham Trent University, Clifton, Nottingham NG11 8NS UK.

出版信息

Cognit Comput. 2021;13(4):873-881. doi: 10.1007/s12559-020-09774-w. Epub 2021 Mar 2.

Abstract

Coronavirus disease (COVID-19) has infected over more than 28.3 million people around the globe and killed 913K people worldwide as on 11 September 2020. With this pandemic, to combat the spreading of COVID-19, effective testing methodologies and immediate medical treatments are much required. Chest X-rays are the widely available modalities for immediate diagnosis of COVID-19. Hence, automation of detection of COVID-19 from chest X-ray images using machine learning approaches is of greater demand. A model for detecting COVID-19 from chest X-ray images is proposed in this paper. A novel concept of cluster-based one-shot learning is introduced in this work. The introduced concept has an advantage of learning from a few samples against learning from many samples in case of deep leaning architectures. The proposed model is a multi-class classification model as it classifies images of four classes, viz., pneumonia bacterial, pneumonia virus, normal, and COVID-19. The proposed model is based on ensemble of Generalized Regression Neural Network (GRNN) and Probabilistic Neural Network (PNN) classifiers at decision level. The effectiveness of the proposed model has been demonstrated through extensive experimentation on a publicly available dataset consisting of 306 images. The proposed cluster-based one-shot learning has been found to be more effective on GRNN and PNN ensembled model to distinguish COVID-19 images from that of the other three classes. It has also been experimentally observed that the model has a superior performance over contemporary deep learning architectures. The concept of one-shot cluster-based learning is being first of its kind in literature, expected to open up several new dimensions in the field of machine learning which require further researching for various applications.

摘要

截至2020年9月11日,冠状病毒病(COVID-19)已感染全球超过2830万人,并导致全球91.3万人死亡。面对这场大流行,为了抗击COVID-19的传播,急需有效的检测方法和即时医疗救治。胸部X光片是用于COVID-19即时诊断的广泛可用的检查方式。因此,使用机器学习方法从胸部X光图像中自动检测COVID-19的需求很大。本文提出了一种从胸部X光图像中检测COVID-19的模型。这项工作引入了一种基于聚类的一次性学习的新概念。与深度学习架构中从大量样本学习的情况相比,引入的概念具有从少量样本学习的优势。所提出的模型是一个多类分类模型,因为它对四类图像进行分类,即细菌性肺炎、病毒性肺炎、正常和COVID-19。所提出的模型基于决策层的广义回归神经网络(GRNN)和概率神经网络(PNN)分类器的集成。通过对一个包含306张图像的公开可用数据集进行广泛实验,证明了所提出模型的有效性。已发现所提出的基于聚类的一次性学习在GRNN和PNN集成模型上更有效地将COVID-19图像与其他三类图像区分开来。实验还观察到,该模型比当代深度学习架构具有更优的性能。基于聚类的一次性学习概念在文献中尚属首次,有望在机器学习领域开辟几个新的维度,这需要针对各种应用进行进一步研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24d5/7921614/9d3bdb781dcf/12559_2020_9774_Fig1_HTML.jpg

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