detalle del documento
IDENTIFICACIÓN

oai:HAL:anses-04040543v1

Tema
dust assessment dust sheet test laying hens validation [SDV]Life Sciences [q-bio]
Autor
Mousqué, Solène Mocz, Frédérique Riber, Anja
Langue
en
Editor

HAL CCSD;MDPI

Categoría

ciencias: ciencias de la vida

Año

2023

fecha de cotización

8/12/2023

Palabras clave
0 layer veterinary sheet 2–3 test assessment levels dust
Métrico

Resumen

International audience; The dust level is included in the animal welfare legislation of the European Union, implying assessment of dust levels during veterinary welfare inspections.

This study aimed to develop a valid and feasible method for measuring dust levels in poultry barns.

Dust levels were assessed in 11 layer barns using six methods: light scattering measurement, the dust sheet test with durations of 1 h and 2–3 h, respectively, visibility assessment, deposition assessment, and a tape test.

As a reference, gravimetric measurements were obtained – a method known to be accurate but unsuitable for veterinary inspection.

The dust sheet test 2–3 h showed the highest correlation with the reference method with the data points scattered closely around the regression line and the slope being highly significant (p = 0.00003).

In addition, the dust sheet test 2–3 h had the highest adjusted R2 (0.9192) and the lowest RMSE (0.3553), indicating a high capability of predicting the true concentration value of dust in layer barns.

Thus, the dust sheet test with a test duration of 2–3 h is a valid method for assessing dust levels.

A major challenge is the test duration as 2–3 h is longer than most veterinary inspections.

Nevertheless, results showed that potentially, with some modifications to the scoring scale, the dust sheet test may be reduced to 1 h without losing validity.

Mousqué, Solène,Mocz, Frédérique,Riber, Anja, 2023, Validation of Methods for Assessment of Dust Levels in Layer Barns, HAL CCSD;MDPI

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