UMLF-COVID: an unsupervised meta-learning model specifically designed to identify X-ray images of COVID-19 patients.

Rui Miao, Xin Dong, Sheng-Li Xie, Yong Liang, Sio-Long Lo
Author Information
  1. Rui Miao: Institute of Systems Engineering, Macau University of Science and Technology, Avenida Wai Long, Taipa, Macau, China.
  2. Xin Dong: Institute of Systems Engineering, Macau University of Science and Technology, Avenida Wai Long, Taipa, Macau, China.
  3. Sheng-Li Xie: Guangdong-Hong Kong-Macao Joint Laboratory for Smart Discrete Manufacturing, Guangzhou, 510006, China.
  4. Yong Liang: Institute of Systems Engineering, Macau University of Science and Technology, Avenida Wai Long, Taipa, Macau, China.
  5. Sio-Long Lo: Faculty of Information Technology, Macau University of Science and Technology, Avenida Wai Long, Taipa, Macau, China. luoslresearch@gmail.com.

Abstract

BACKGROUND: With the rapid spread of COVID-19 worldwide, quick screening for possible COVID-19 patients has become the focus of international researchers. Recently, many deep learning-based Computed Tomography (CT) image/X-ray image fast screening models for potential COVID-19 patients have been proposed. However, the existing models still have two main problems. First, most of the existing supervised models are based on pre-trained model parameters. The pre-training model needs to be constructed on a dataset with features similar to those in COVID-19 X-ray images, which limits the construction and use of the model. Second, the number of categories based on the X-ray dataset of COVID-19 and other pneumonia patients is usually imbalanced. In addition, the quality is difficult to distinguish, leading to non-ideal results with the existing model in the multi-class classification COVID-19 recognition task. Moreover, no researchers have proposed a COVID-19 X-ray image learning model based on unsupervised meta-learning.
METHODS: This paper first constructed an unsupervised meta-learning model for fast screening of COVID-19 patients (UMLF-COVID). This model does not require a pre-trained model, which solves the limitation problem of model construction, and the proposed unsupervised meta-learning framework solves the problem of sample imbalance and sample quality.
RESULTS: The UMLF-COVID model is tested on two real datasets, each of which builds a three-category and four-category model. And the experimental results show that the accuracy of the UMLF-COVID model is 3-10% higher than that of the existing models.
CONCLUSION: In summary, we believe that the UMLF-COVID model is a good complement to COVID-19 X-ray fast screening models.

Keywords

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Grants

  1. 0056/2020/AFJ/macau science and technology development

MeSH Term

Algorithms
COVID-19
Datasets as Topic
Deep Learning
Humans
Image Processing, Computer-Assisted
SARS-CoV-2
Tomography, X-Ray Computed

Word Cloud

Created with Highcharts 10.0.0modelCOVID-19X-raypatientsmodelsUMLF-COVIDscreeningexistingunsupervisedmeta-learningfastproposedbasedresearchersimagetwopre-trainedconstructeddatasetimagesconstructionqualityresultssolvesproblemsampleBACKGROUND:rapidspreadworldwidequickpossiblebecomefocusinternationalRecentlymanydeeplearning-basedComputedTomographyCTimage/X-raypotentialHoweverstillmainproblemsFirstsupervisedparameterspre-trainingneedsfeaturessimilarlimitsuseSecondnumbercategoriespneumoniausuallyimbalancedadditiondifficultdistinguishleadingnon-idealmulti-classclassificationrecognitiontaskMoreoverlearningMETHODS:paperfirstrequirelimitationframeworkimbalanceRESULTS:testedrealdatasetsbuildsthree-categoryfour-categoryexperimentalshowaccuracy3-10%higherCONCLUSION:summarybelievegoodcomplementUMLF-COVID:specificallydesignedidentifyCNN

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