Literature DB >> 27025771

Automated parasite faecal egg counting using fluorescence labelling, smartphone image capture and computational image analysis.

Paul Slusarewicz1, Stefanie Pagano2, Christopher Mills2, Gabriel Popa3, K Martin Chow3, Michael Mendenhall3, David W Rodgers3, Martin K Nielsen4.   

Abstract

Intestinal parasites are a concern in veterinary medicine worldwide and for human health in the developing world. Infections are identified by microscopic visualisation of parasite eggs in faeces, which is time-consuming, requires technical expertise and is impractical for use on-site. For these reasons, recommendations for parasite surveillance are not widely adopted and parasite control is based on administration of rote prophylactic treatments with anthelmintic drugs. This approach is known to promote anthelmintic resistance, so there is a pronounced need for a convenient egg counting assay to promote good clinical practice. Using a fluorescent chitin-binding protein, we show that this structural carbohydrate is present and accessible in shells of ova of strongyle, ascarid, trichurid and coccidian parasites. Furthermore, we show that a cellular smartphone can be used as an inexpensive device to image fluorescent eggs and, by harnessing the computational power of the phone, to perform image analysis to count the eggs. Strongyle egg counts generated by the smartphone system had a significant linear correlation with manual McMaster counts (R(2)=0.98), but with a significantly lower coefficient of variation (P=0.0177). Furthermore, the system was capable of differentiating equine strongyle and ascarid eggs similar to the McMaster method, but with significantly lower coefficients of variation (P<0.0001). This demonstrates the feasibility of a simple, automated on-site test to detect and/or enumerate parasite eggs in mammalian faeces without the need for a laboratory microscope, and highlights the potential of smartphones as relatively sophisticated, inexpensive and portable medical diagnostic devices.
Copyright © 2016 Australian Society for Parasitology. Published by Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Ascarid; Chitin; Egg count; Equine; Fluorescence; Image analysis; Smartphone; Strongyle

Mesh:

Substances:

Year:  2016        PMID: 27025771     DOI: 10.1016/j.ijpara.2016.02.004

Source DB:  PubMed          Journal:  Int J Parasitol        ISSN: 0020-7519            Impact factor:   3.981


  13 in total

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6.  Evaluation of the VETSCAN IMAGYST: an in-clinic canine and feline fecal parasite detection system integrated with a deep learning algorithm.

Authors:  Yoko Nagamori; Ruth Hall Sedlak; Andrew DeRosa; Aleah Pullins; Travis Cree; Michael Loenser; Benjamin S Larson; Richard Boyd Smith; Richard Goldstein
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Journal:  PLoS Negl Trop Dis       Date:  2019-08-05

9.  The Kubic FLOTAC microscope (KFM): a new compact digital microscope for helminth egg counts.

Authors:  Giuseppe Cringoli; Alessandra Amadesi; Maria Paola Maurelli; Biase Celano; Gabriele Piantadosi; Antonio Bosco; Lavinia Ciuca; Mario Cesarelli; Paolo Bifulco; Antonio Montresor; Laura Rinaldi
Journal:  Parasitology       Date:  2020-11-20       Impact factor: 3.234

10.  Integrative biology defines novel biomarkers of resistance to strongylid infection in horses.

Authors:  Guillaume Sallé; Cécile Canlet; Jacques Cortet; Christine Koch; Joshua Malsa; Fabrice Reigner; Mickaël Riou; Noémie Perrot; Alexandra Blanchard; Núria Mach
Journal:  Sci Rep       Date:  2021-07-12       Impact factor: 4.379

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