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Application of multiblock modelling to identify key drivers for antimicrobial use in pig production in four European countries

Published online by Cambridge University Press:  18 April 2018

L. Collineau*
Affiliation:
SAFOSO AG, Liebefeld, Switzerland BIOEPAR, INRA, Oniris, Nantes, France
S. Bougeard
Affiliation:
Anses – French Agency for Food, Environmental and Occupational Health and Safety, Ploufragan, France
A. Backhans
Affiliation:
Department of Clinical Sciences, Swedish University of Agricultural Sciences, Uppsala, Sweden
J. Dewulf
Affiliation:
Veterinary Epidemiology Unit, Department of Reproduction, Obstetrics and Herd Health, Faculty of Veterinary Medicine, Ghent University, Merelbeke, Belgium
U. Emanuelson
Affiliation:
Department of Clinical Sciences, Swedish University of Agricultural Sciences, Uppsala, Sweden
E. Grosse Beilage
Affiliation:
Field Station for Epidemiology, University of Veterinary Medicine Hannover, Bakum, Germany
A. Lehébel
Affiliation:
BIOEPAR, INRA, Oniris, Nantes, France
S. Lösken
Affiliation:
Field Station for Epidemiology, University of Veterinary Medicine Hannover, Bakum, Germany
M. Postma
Affiliation:
Veterinary Epidemiology Unit, Department of Reproduction, Obstetrics and Herd Health, Faculty of Veterinary Medicine, Ghent University, Merelbeke, Belgium
M. Sjölund
Affiliation:
Department of Clinical Sciences, Swedish University of Agricultural Sciences, Uppsala, Sweden Department of Animal Health and Antimicrobial Strategies, National Veterinary Institute, Uppsala, Sweden
K. D. C. Stärk
Affiliation:
SAFOSO AG, Liebefeld, Switzerland
V. H. M. Visschers
Affiliation:
University of Applied Sciences and Arts Northwestern Switzerland, School of Applied Psychology, Olten, Switzerland
C. Belloc
Affiliation:
BIOEPAR, INRA, Oniris, Nantes, France
*
Author for correspondence: L. Collineau, E-mail: lucie.collineau@canada.ca
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Abstract

Antimicrobial use in pig farming is influenced by a range of risk factors, including herd characteristics, biosecurity level, farm performance, occurrence of clinical signs and vaccination scheme, as well as farmers’ attitudes and habits towards antimicrobial use. So far, the effect of these risk factors has been explored separately. Using an innovative method called multiblock partial least-squares regression, this study aimed to investigate, in a sample of 207 farrow-to-finish farms from Belgium, France, Germany and Sweden, the relative importance of the six above mentioned categories or ‘blocks’ of risk factors for antimicrobial use in pig production. Four country separate models were developed; they showed that all six blocks provided useful contribution to explaining antimicrobial use in at least one country. The occurrence of clinical signs, especially of respiratory and nervous diseases in fatteners, was one of the largest contributing blocks in all four countries, whereas the effect of the other blocks differed between countries. In terms of risk management, it suggests that a holistic and country-specific mitigation strategy is likely to be more effective. However, further research is needed to validate our findings in larger and more representative samples, as well as in other countries.

Information

Type
Original Paper
Copyright
Copyright © Cambridge University Press 2018 
Figure 0

Fig. 1. Conceptual scheme of the relationships between explanatory blocks (X1, …, X6) and the response block Y.

Figure 1

Table 1. Definition and distribution of the variables included in the mbPLS regression

Figure 2

Fig. 2. Graphical representation of the BlockImp index of the explanatory blocks. Multiblock partial least-squares (mbPLS) regression of farm antimicrobial usage (Y) explained by six blocks of variables: herd characteristics (X1), herd biosecurity scores (X2), occurrence of clinical signs (X3), vaccination scheme (X4), farmer's attitudes and habits (X5) and farm technical performances (X6). BlockImp index represents the relative contribution of each explanatory block to the explanation of antimicrobial usage (block Y) and satisfies the condition ∑kBlockImpk = 100% for K = 1 to 6. Bars represent the 90% tolerance interval around the BlockImp index estimate. Blocks where BlockImp = 0 are those for which no variable was kept in the block after the variable selection procedure. BlockImp indexes with different superscripts significantly differ based on post-hoc pairwise comparison with Bonferroni correction (P < 0.05).

Figure 3

Table 2. Variable importance index of the reduced country-specific mbPLS regressions and sign of the association between explanatory variable and antimicrobial usage (block Y)

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