Publication detail

Comparing assignment-based approaches to breed identification within a large set of horses

PUTNOVÁ, L. ŠTOHL, R.

Original Title

Comparing assignment-based approaches to breed identification within a large set of horses

Type

journal article in Web of Science

Language

English

Original Abstract

Considering the extensive data sets and statistical techniques, animal breeding embodies a branch of machine learning that has a constantly increasing impact on breeding. In our study, information regarding the potential of machine learning and data mining within a large set of horses and breeds is presented. The individual assignment methods and factors influencing the success rate of the procedure are compared at the Czech population scale. The fixation index values ranged from 0.057 (HMS1) to 0.144 (HTG6), and the overall genetic differentiation amounted to 8.9% among the breeds. The highest genetic divergence (FST = 0.378) was established between the Friesian and Equus przewalskii; the highest degree of gene migration was obtained between the Czech and Bavarian Warmblood (Nm = 14,302); and the overall global heterozygote deficit across the populations was 10.4%. The eight standard methods (Bayesian, frequency, and distance) using GeneClass software and almost all mainstream classification algorithms (Bayes Net, Naive Bayes, IB1, IB5, KStar, JRip, J48, Random Forest, Random Tree, PART, MLP, and SVM) from the WEKA machine learning workbench were compared by utilizing 314,874 real allelic data sets. The Bayesian method (GeneClass, 89.9%) and Bayesian network algorithm (WEKA, 84.8%) outperformed the other techniques. The breed genomic prediction accuracy reached the highest value in the cold-blooded horses. The overall proportion of individuals correctly assigned to a population depended mainly on the breed number and genetic divergence. These statistical tools could be used to assess breed traceability systems, and they exhibit the potential to assist managers in decision-making as regards breeding and registration.

Keywords

Assignment success; Horse breeds; Genetic differentiation; Microsatellite variability; Machine learning

Authors

PUTNOVÁ, L.; ŠTOHL, R.

Released

30. 4. 2019

Publisher

Springer Berlin Heidelberg

Location

Německo

ISBN

1234-1983

Periodical

JOURNAL OF APPLIED GENETICS

Year of study

60

Number

2

State

Republic of Poland

Pages from

187

Pages to

198

Pages count

12

URL

BibTex

@article{BUT156751,
  author="PUTNOVÁ, L. and ŠTOHL, R.",
  title="Comparing assignment-based approaches to breed identification within a large set of horses",
  journal="JOURNAL OF APPLIED GENETICS",
  year="2019",
  volume="60",
  number="2",
  pages="187--198",
  doi="10.1007/s13353-019-00495-x",
  issn="1234-1983",
  url="https://link.springer.com/article/10.1007/s13353-019-00495-x"
}