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Multi-stage classification of Gyrodactylus species using machine learning and feature selection techniques

Ali, Rozniza; Hussain, Amir; Bron, James E.; Shinn, Andrew P.

Authors

Rozniza Ali

James E. Bron

Andrew P. Shinn



Abstract

This study explores the use of multi-stage machine learning based classifiers and feature selection techniques in the classification and identification of fish parasites. Accurate identification of pathogens is a key to their control and as a proof of concept, the monogenean worm genus Gyrodactylus, economically important pathogens of cultured fish species, an ideal test-bed for the selected techniques. Gyrodactylus salaris is a notifiable pathogen of salmonids and a semi-automated / automated method permitting its confident species discrimination from other non-pathogenic species is sought to assist disease diagnostics during periods of a suspected outbreak. This study will assist pathogen management in wild and cultured fish stocks, providing improvements in fish health and welfare and accompanying economic benefits. Multi-stage classification is proposed as a solution to this problem because use of a single classifier is not sufficient to ensure that all the species are accurately classified. The results show that Linear Discriminant Analysis (LDA) with 21 features is the best classifier for performing the initial classification of Gyrodactylus species. This first stage classification which allocates specimens to species-groups is then followed by a second or subsequent round of classification using additional classifiers to allocate species to their true class within the species-groups.

Presentation Conference Type Conference Paper (Published)
Conference Name 2011 11th International Conference on Intelligent Systems Design and Applications
Start Date Nov 22, 2011
End Date Nov 24, 2011
Online Publication Date Jan 3, 2012
Publication Date 2011
Deposit Date Oct 15, 2019
Publisher Institute of Electrical and Electronics Engineers
Pages 457-462
Series ISSN 2164-7151
Book Title 2011 11th International Conference on Intelligent Systems Design and Applications
DOI https://doi.org/10.1109/ISDA.2011.6121698
Keywords Gyrodactylus, machine learning, feature selection, species classification
Public URL http://researchrepository.napier.ac.uk/Output/1793362