Prediction of human leukocyte antigen gene using κ-nearest neighbour classifier based on spectrum kernel

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Author listShoombuatong W., Mekhac P., Waiyamai K., Cheevadhanarak S., Chaijaruwanich J.

Publication year2013

JournalScienceAsia (1513-1874)

Volume number39

Issue number1

Start page42

End page49

Number of pages8

ISSN1513-1874

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-84874884812&doi=10.2306%2fscienceasia1513-1874.2013.39.042&partnerID=40&md5=eb21db3384983290c3b31cd776d174c6

LanguagesEnglish-Great Britain (EN-GB)


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Abstract

Human Leukocyte Antigen (HLA) plays an important role in the control of self-recognition including defence against microorganisms. The efficient performance of classifying HLA genes facilitates the understanding of the HLA and immune systems. Currently, the classification of HLA genes has been developed by using various computational methods based on codon and di-codon usages. Here, we directly classify the HLA genes by using the κ-nearest neighbour (κ-NN) classifier. To develop an efficient κ-NN classifier, we propose the use of a spectrum kernel to investigate HLA genes. Our approach achieves an accuracy as high as 99.4% of the HLA major classes prediction measured by ten-fold cross-validation. Moreover, we give a maximum accuracy of 99.4% in the HLA-I subclasses. These results show that our proposed method is relatively simple and can give higher accuracies than other sophisticated and conventional methods.


Keywords

computational methodgene classificationMachine Learning


Last updated on 2023-02-10 at 07:35