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

机译:机器学习和特征选择技术对陀螺菌种进行多阶段分类

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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.
机译:这项研究探索了基于多阶段机器学习的分类器和特征选择技术在鱼寄生虫分类和识别中的应用。准确识别病原体是控制病原体的关键,并且作为概念证明,单属蠕虫类Gyrodactylus是养殖鱼类的经济重要病原体,是所选技术的理想试验床。假单胞菌是鲑鱼的应报告病原体,并寻求一种半自动化/自动化方法,以使其有信心将其物种与其他非致病性物种区分开来,以在疑似爆发期间协助疾病诊断。这项研究将有助于野生和养殖鱼类种群中的病原体管理,改善鱼类健康和福利并带来经济利益。由于使用单个分类器不足以确保对所有物种进行准确分类,因此提出了多级分类作为解决此问题的方法。结果表明,具有21个特征的线性判别分析(LDA)是对Gyrodactylus物种进行初始分类的最佳分类器。然后,将样本分配到物种组的第一阶段分类,然后进行第二轮或后续轮次分类,使用附加的分类器将物种分配到物种组内的真实类别。

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