Abstract
This study reports on morphological variability of
Eimeria species, which may be given either by drawings or as
quantitative data. The drawings may be used to facilitate
identification by eye of ‘unknown’ Eimeria specimens,
whereas quantitative data may serve as a reference set for
identification by multivariate statistical techniques. The morphology of
810 Eimeria specimens was defined in binary (b/w)
digital images by pixels of their oocyst outline. A Fourier transform
of pixel positions yielded size and shape features. To classify
coccidia, the quantitative data were employed in an
agglomerative clustering by average linkage algorithm with equal
weight assigned to size and shape. An inverse Fourier
transform served to reconstruct oocyst outlines, i.e. outlines
of average shape and size, from mean values of features in
resulting clusters. Clusters were subsequently identified based on
their average morphology by comparison with drawings
of species in an earlier taxonomical work. Five hundred oocyst
outlines were simulated for each cluster representing a
species, and shape/size variability was presented in contour
diagrams. Differences in species shapes, and correspondence
in length and width, were seen after reconstruction by inverse
Fourier transform and comparison with earlier studies.
Publisher
Cambridge University Press (CUP)
Subject
Infectious Diseases,Animal Science and Zoology,Parasitology
Cited by
20 articles.
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