Cargando…

Broiler welfare trade-off: A semi-quantitative welfare assessment for optimised welfare improvement based on an expert survey

In order to support decision making on how to most effectively improve broiler welfare an innovative expert survey was conducted based on principles derived from semantic modelling. Twenty-seven experts, mainly broiler welfare scientists (n = 20; and 7 veterinarians), responded (response rate 38%) b...

Descripción completa

Detalles Bibliográficos
Autores principales: Bracke, Marc B. M., Koene, Paul, Estevez, Inma, Butterworth, Andy, de Jong, Ingrid C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6772121/
https://www.ncbi.nlm.nih.gov/pubmed/31574105
http://dx.doi.org/10.1371/journal.pone.0222955
_version_ 1783455840942948352
author Bracke, Marc B. M.
Koene, Paul
Estevez, Inma
Butterworth, Andy
de Jong, Ingrid C.
author_facet Bracke, Marc B. M.
Koene, Paul
Estevez, Inma
Butterworth, Andy
de Jong, Ingrid C.
author_sort Bracke, Marc B. M.
collection PubMed
description In order to support decision making on how to most effectively improve broiler welfare an innovative expert survey was conducted based on principles derived from semantic modelling. Twenty-seven experts, mainly broiler welfare scientists (n = 20; and 7 veterinarians), responded (response rate 38%) by giving welfare scores (GWS, scale 0–10) to 14 benchmarking housing systems (HSs), and explaining these overall scores by selecting, weighing and scoring main welfare parameters, including both input and output measures. Data exploration followed by REML (Linear Mixed Model) and ALM (Automatic Linear Modelling) analyses revealed 6 clusters of HSs, sorted from high to low welfare, i.e. mean GWS (with superscripts indicating significant differences): 1. (semi-natural backyard) Flock (8.8(a)); 2. Nature (7.7(ab)), Label Rouge II (7.4(ab)), Free range EU (7.2(ab)), Better Life (7.2(ab)); 3. Organic EU (7.0(bc)), Freedom Food (6.2(bc)); 4. Organic US (5.8(bcd)), Concepts NL (5.6(abcdef)), GAP 2 (4.9(bcd)); 5. Conventional EU (3.7(de)), Conventional US (2.9(ef)), Modern cage (2.9(abcdef)); 6. Battery cage (1.3(f)). Mean weighting factors (WF, scale 0–10) of frequently (n> = 15) scored parameters were: Lameness (8.8), Health status (8.6), Litter (8.3), Density (8.2), Air quality (8.1), Breed (8.0), Enrichment (7.0) and Outdoor (6.6). These did not differ significantly, and did not have much added value in explaining GWS. Effects of Role (Scientist/Vet), Gender (M/F) and Region (EU/non-EU) did not significantly affect GWS or WF, except that women provided higher WF than men (7.2 vs 6.4, p<0.001). The contribution of welfare components to overall welfare has been quantified in two ways: a) using the beta-coefficients of statistical regression (ALM) analyses, and b) using a semantic-modelling type (weighted average) calculation of overall scores (CalcWS) from parameter level scores (PLS) and WF. GWS and CalcWS were highly correlated (R = ~0.85). CalcWS identified Lameness, Health status, Density, Breed, Air quality and Litter as main parameters contributing to welfare. ALM showed that the main parameters which significantly explained the variance in GWS based on all PLS, were the output parameter Health status (with a beta-coefficient of 0.38), and the input parameters (stocking) Density (0.42), Litter (0.14) and Enrichment (0.27). The beta-coefficients indicated how much GWS would improve from 1 unit improvement in PLS for each parameter, thus the potential impact on GWS ranged from 1.4 welfare points for Litter to 4.2 points for Density. When all parameters were included, 81% of the variance in GWS was explained (77% for inputs alone; 39% for outputs alone). From this, it appears that experts use both input and output parameters to explain overall welfare, and that both are important. The major conventional systems and modern cages for broilers received low welfare scores (2.9–3.7), well below scores that may be considered acceptable (5.5). Also, several alternatives like GAP 2 (4.9), Concepts NL (5.6), Organic US (5.8) and Freedom Food (6.2) are unacceptable, or at risk of being unacceptable due to individual variation between experts and farms. Thus, this expert survey provides a preliminary semi-quantified decision-support tool to help determine how to most effectively improve broiler welfare in a wide range of HSs.
format Online
Article
Text
id pubmed-6772121
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-67721212019-10-12 Broiler welfare trade-off: A semi-quantitative welfare assessment for optimised welfare improvement based on an expert survey Bracke, Marc B. M. Koene, Paul Estevez, Inma Butterworth, Andy de Jong, Ingrid C. PLoS One Research Article In order to support decision making on how to most effectively improve broiler welfare an innovative expert survey was conducted based on principles derived from semantic modelling. Twenty-seven experts, mainly broiler welfare scientists (n = 20; and 7 veterinarians), responded (response rate 38%) by giving welfare scores (GWS, scale 0–10) to 14 benchmarking housing systems (HSs), and explaining these overall scores by selecting, weighing and scoring main welfare parameters, including both input and output measures. Data exploration followed by REML (Linear Mixed Model) and ALM (Automatic Linear Modelling) analyses revealed 6 clusters of HSs, sorted from high to low welfare, i.e. mean GWS (with superscripts indicating significant differences): 1. (semi-natural backyard) Flock (8.8(a)); 2. Nature (7.7(ab)), Label Rouge II (7.4(ab)), Free range EU (7.2(ab)), Better Life (7.2(ab)); 3. Organic EU (7.0(bc)), Freedom Food (6.2(bc)); 4. Organic US (5.8(bcd)), Concepts NL (5.6(abcdef)), GAP 2 (4.9(bcd)); 5. Conventional EU (3.7(de)), Conventional US (2.9(ef)), Modern cage (2.9(abcdef)); 6. Battery cage (1.3(f)). Mean weighting factors (WF, scale 0–10) of frequently (n> = 15) scored parameters were: Lameness (8.8), Health status (8.6), Litter (8.3), Density (8.2), Air quality (8.1), Breed (8.0), Enrichment (7.0) and Outdoor (6.6). These did not differ significantly, and did not have much added value in explaining GWS. Effects of Role (Scientist/Vet), Gender (M/F) and Region (EU/non-EU) did not significantly affect GWS or WF, except that women provided higher WF than men (7.2 vs 6.4, p<0.001). The contribution of welfare components to overall welfare has been quantified in two ways: a) using the beta-coefficients of statistical regression (ALM) analyses, and b) using a semantic-modelling type (weighted average) calculation of overall scores (CalcWS) from parameter level scores (PLS) and WF. GWS and CalcWS were highly correlated (R = ~0.85). CalcWS identified Lameness, Health status, Density, Breed, Air quality and Litter as main parameters contributing to welfare. ALM showed that the main parameters which significantly explained the variance in GWS based on all PLS, were the output parameter Health status (with a beta-coefficient of 0.38), and the input parameters (stocking) Density (0.42), Litter (0.14) and Enrichment (0.27). The beta-coefficients indicated how much GWS would improve from 1 unit improvement in PLS for each parameter, thus the potential impact on GWS ranged from 1.4 welfare points for Litter to 4.2 points for Density. When all parameters were included, 81% of the variance in GWS was explained (77% for inputs alone; 39% for outputs alone). From this, it appears that experts use both input and output parameters to explain overall welfare, and that both are important. The major conventional systems and modern cages for broilers received low welfare scores (2.9–3.7), well below scores that may be considered acceptable (5.5). Also, several alternatives like GAP 2 (4.9), Concepts NL (5.6), Organic US (5.8) and Freedom Food (6.2) are unacceptable, or at risk of being unacceptable due to individual variation between experts and farms. Thus, this expert survey provides a preliminary semi-quantified decision-support tool to help determine how to most effectively improve broiler welfare in a wide range of HSs. Public Library of Science 2019-10-01 /pmc/articles/PMC6772121/ /pubmed/31574105 http://dx.doi.org/10.1371/journal.pone.0222955 Text en © 2019 Bracke et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Bracke, Marc B. M.
Koene, Paul
Estevez, Inma
Butterworth, Andy
de Jong, Ingrid C.
Broiler welfare trade-off: A semi-quantitative welfare assessment for optimised welfare improvement based on an expert survey
title Broiler welfare trade-off: A semi-quantitative welfare assessment for optimised welfare improvement based on an expert survey
title_full Broiler welfare trade-off: A semi-quantitative welfare assessment for optimised welfare improvement based on an expert survey
title_fullStr Broiler welfare trade-off: A semi-quantitative welfare assessment for optimised welfare improvement based on an expert survey
title_full_unstemmed Broiler welfare trade-off: A semi-quantitative welfare assessment for optimised welfare improvement based on an expert survey
title_short Broiler welfare trade-off: A semi-quantitative welfare assessment for optimised welfare improvement based on an expert survey
title_sort broiler welfare trade-off: a semi-quantitative welfare assessment for optimised welfare improvement based on an expert survey
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6772121/
https://www.ncbi.nlm.nih.gov/pubmed/31574105
http://dx.doi.org/10.1371/journal.pone.0222955
work_keys_str_mv AT brackemarcbm broilerwelfaretradeoffasemiquantitativewelfareassessmentforoptimisedwelfareimprovementbasedonanexpertsurvey
AT koenepaul broilerwelfaretradeoffasemiquantitativewelfareassessmentforoptimisedwelfareimprovementbasedonanexpertsurvey
AT estevezinma broilerwelfaretradeoffasemiquantitativewelfareassessmentforoptimisedwelfareimprovementbasedonanexpertsurvey
AT butterworthandy broilerwelfaretradeoffasemiquantitativewelfareassessmentforoptimisedwelfareimprovementbasedonanexpertsurvey
AT dejongingridc broilerwelfaretradeoffasemiquantitativewelfareassessmentforoptimisedwelfareimprovementbasedonanexpertsurvey