Literature DB >> 33527172

The effect of analyst training on fecal egg counting variability.

Jennifer L Cain1, Kerri T Peters2, Parul Suri3, Amber Roher2, Matthew H Rutledge4, Martin K Nielsen3.   

Abstract

Fecal egg counts (FECs) are essential for veterinary parasite control programs. Recent advances led to the creation of an automated FEC system that performs with increased precision and reduces the need for training of analysts. However, the variability contributed by analysts has not been quantified for FEC methods, nor has the impact of training on analyst performance been quantified. In this study, three untrained analysts performed FECs on the same slides using the modified McMaster (MM), modified Wisconsin (MW), and the automated system with two different algorithms: particle shape analysis (PSA) and machine learning (ML). Samples were screened and separated into negative (no strongylid eggs seen), 1-200 eggs per gram of feces (EPG), 201-500 EPG, 501-1000 EPG, and 1001+ EPG levels, and ten repeated counts were performed for each level and method. Analysts were then formally trained and repeated the study protocol. Between analyst variability (BV), analyst precision (AP), and the proportion of variance contributed by analysts were calculated. Total BV was significantly lower for MM post-training (p = 0.0105). Additionally, AP variability and analyst variance both tended to decrease for the manual MM and MW methods. Overall, MM had the lowest BV both pre- and post-training, although PSA and ML were minimally affected by analyst training. This research illustrates not only how the automated methods could be useful when formal training is unavailable but also how impactful formal training is for traditional manual FEC methods.

Keywords:  Analyst; Automated; Fecal egg count; Horse; McMaster; Wisconsin

Mesh:

Year:  2021        PMID: 33527172     DOI: 10.1007/s00436-021-07074-2

Source DB:  PubMed          Journal:  Parasitol Res        ISSN: 0932-0113            Impact factor:   2.289


  1 in total

1.  A low-cost, automated parasite diagnostic system via a portable, robotic microscope and deep learning.

Authors:  Yaning Li; Rui Zheng; Yizhen Wu; Kaiqin Chu; Qianming Xu; Mingzhai Sun; Zachary J Smith
Journal:  J Biophotonics       Date:  2019-05-30       Impact factor: 3.207

  1 in total
  1 in total

1.  Comparison of FECPAKG2, a modified Mini-FLOTAC technique and combined sedimentation and flotation for the coproscopic examination of helminth eggs in horses.

Authors:  Heike Boelow; Jürgen Krücken; Eurion Thomas; Greg Mirams; Georg von Samson-Himmelstjerna
Journal:  Parasit Vectors       Date:  2022-05-12       Impact factor: 3.876

  1 in total

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