SciELO - Scientific Electronic Library Online

 
vol.30 issue3Ultrasonographic tools used in the evaluation of the canine spleen: A reviewMagnetized drinking water improves productivity and blood parameters in geese author indexsubject indexarticles search
Home Pagealphabetic serial listing  

Services on Demand

Journal

Article

Indicators

Related links

  • On index processCited by Google
  • Have no similar articlesSimilars in SciELO
  • On index processSimilars in Google

Share


Revista Colombiana de Ciencias Pecuarias

Print version ISSN 0120-0690

Abstract

ZABORSKI*, Daniel; PROSKURA, Witold S  and  GRZESIAK, Wilhelm. Comparison between data mining methods to assess calving difficulty in cattle. Rev Colom Cienc Pecua [online]. 2017, vol.30, n.3, pp.196-208. ISSN 0120-0690.  https://doi.org/10.17533/udea.rccp.v30n3a03.

Background:

Dystocia in cattle results in adverse consequences (increased calf morbidity and mortality, decreased fertility, and milk production, lower cow survival and reduced welfare) leading to considerable economic losses.

Objective:

To classify calvings in dairy cattle according to their difficulty using selected data mining methods (classification and regression trees (CART), chi-square automatic interaction detection trees (CHAID) and quick, unbiased, efficient, statistical trees (QUEST)), and to identify the most significant factors affecting calving difficulty. The results of data mining methods were compared with those of a more traditional generalized linear model (GLM).

Methods:

A total of 1,342 calving records of Polish Holstein- Friesian black-and-white heifers from four farms were used. Calving difficulty was divided into three categories (easy, moderate and difficult).

Results:

The percentages of calvings correctly classified by CART, CHAID, QUEST, and GLM were as follows: 35.14, 18.92, 19.82, and 43.24% (easy), 68.70, 73.91, 81.74, and 41.74%

(moderate), and 77.27, 85.45, 73.64, and 81.82% (difficult), respectively. The most important factors affecting calving difficulty were bull’s rank (based on the mean calving difficulty score of its daughters), calving age, farm category (based on its mean milk yield) and calving season.

Conclusion:

All classification models were satisfactory and could predict the class of calving difficulty.

Keywords : classification; dairy heifers; decision support systems; dystocia; electronic learning.

        · abstract in Spanish | Portuguese     · text in English     · English ( pdf )