Literature DB >> 8960211

Digital image analysis and identification of eggs from bovine parasitic nematodes.

C Sommer1.   

Abstract

Computer-assisted microscopy and multivariate statistics were used to establish and evaluate a procedure for identification of bovine strongylid eggs. Ostertagia ostertagi, Cooperia oncophora, Haemonchus placei, Trichostrongylus axei, and Oesophagostomum radiatum eggs were obtained from faeces voided by monospecifically infected calves. Images of single eggs (400 x magnification) were recorded by a CCD camera fitted onto a microscope and digitized on a PC. After separation of eggs from the image background, the pixel (picture element) positions of the egg outline were analysed by algorithms to describe size and shape. A stepwise discriminant analysis was subsequently used to select and rank descriptive features of 4207 eggs according to discriminatory power. Classification criteria were developed by linear discrimination analysis on the basis of selected features, and the criteria evaluated by cross-validation. A maximum average percentage of correct classification of 85.8% resulted when nineteen features were employed in a linear classification criterion. The percentages correct classification for each species were: O. ostertagi 76.3%, C. oncophora 90.8%, O. radiatum 87.8%, H. placei 90.1%, and T. axei 83.8%. Classification based on the five most important features gave an overall correct classification of 81.5%. Images of "unknown' eggs could be identified automatically by the classification criteria after procedural steps performed by PC were linked in a batch program.

Entities:  

Mesh:

Year:  1996        PMID: 8960211     DOI: 10.1017/s0022149x00015303

Source DB:  PubMed          Journal:  J Helminthol        ISSN: 0022-149X            Impact factor:   2.170


  5 in total

1.  A robust and automatic method for human parasite egg recognition in microscopic images.

Authors:  Zhixun Li; Huiling Gong; Wei Zhang; Lian Chen; Juncai Tao; Langui Song; Zhongdao Wu
Journal:  Parasitol Res       Date:  2015-07-23       Impact factor: 2.289

2.  Mathematical algorithm for the automatic recognition of intestinal parasites.

Authors:  Alicia Alva; Carla Cangalaya; Miguel Quiliano; Casey Krebs; Robert H Gilman; Patricia Sheen; Mirko Zimic
Journal:  PLoS One       Date:  2017-04-14       Impact factor: 3.240

3.  Automatic recognition of parasitic products in stool examination using object detection approach.

Authors:  Kaung Myat Naing; Siridech Boonsang; Santhad Chuwongin; Veerayuth Kittichai; Teerawat Tongloy; Samrerng Prommongkol; Paron Dekumyoy; Dorn Watthanakulpanich
Journal:  PeerJ Comput Sci       Date:  2022-08-17

Review 4.  Next-generation molecular-diagnostic tools for gastrointestinal nematodes of livestock, with an emphasis on small ruminants: a turning point?

Authors:  Florian Roeber; Aaron R Jex; Robin B Gasser
Journal:  Adv Parasitol       Date:  2013       Impact factor: 3.870

Review 5.  Advances in the diagnosis of key gastrointestinal nematode infections of livestock, with an emphasis on small ruminants.

Authors:  Florian Roeber; Aaron R Jex; Robin B Gasser
Journal:  Biotechnol Adv       Date:  2013-01-30       Impact factor: 14.227

  5 in total

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