Back to Search Start Over

Genetic parameter estimations of new traits of morphological quality on gilthead seabream (Sparus aurata) by using IMAFISH_ML software

Authors :
Jaume Pérez-Sánchez
Juan Manuel Afonso
Concepción Berbel
Hyun Suk Shin
Manuel Manchado
María Jesús Zamorano
Sergi León-Bernabeu
Álvaro Lorenzo-Felipe
Islam Said Elalfy
Eva Armero
Marta Arizcun
Cathaysa García-Pérez
European Maritime and Fisheries Fund
Ministerio de Agricultura, Pesca y Alimentación y Medio Ambiente (España)
Source :
e-IEO. Repositorio Institucional Digital de Acceso Abierto del Instituto Español de Oceanografía, instname, Aquaculture Reports, Vol 21, Iss, Pp 100883-(2021), Digital.CSIC. Repositorio Institucional del CSIC
Publication Year :
2021
Publisher :
Centro Oceanográfico de Murcia, 2021.

Abstract

© 2021 The Authors.<br />In this study, a total of 18 novel productive traits, three related to carcass [cNiT] and fifteen related to morphometric [mNiT]), were measured in gilthead seabream (Sparus aurata) using Non-invasive Technologies (NiT) as implemented in IMAFISH_ML (MatLab script). Their potential to be used in industrial breeding programs were evaluated in 2348 offspring reared under different production systems (estuarine ponds, oceanic cage, inland tank) at harvest. All animals were photographed, and digitally measured and main genetic parameters were estimated. Heritability for growth traits was medium (0.25–0.37) whereas for NiT traits medium-high (0.24–0.61). In general, genetic correlations between mNiT, cNiT and growth and traits were high and positive. Image analysis artifacts such as fin unfold or shades, that may interfere in the precision of some digital measurements, were discarded as a major bias factor since heritability of NiT traits after correcting them were no significantly different from original ones. Indirect selection of growth traits through NiT traits produced a better predicted response than directly measuring Body Weight (13–23%), demonstrating that this methodological approach is highly cost-effective in terms of accuracy and data processing time.<br />This study was funded from the European Maritime and Fisheries Fund (EMFF) by Ministerio de Agricultura y Pesca, Alimentación y Medio Ambiente (MAPAMA), framed in PROGENSA-II III project (Mejora de la Competitividad del Sector de la Dorada a Través de la Selección Genética, programa JACUMAR).

Details

Database :
OpenAIRE
Journal :
e-IEO. Repositorio Institucional Digital de Acceso Abierto del Instituto Español de Oceanografía, instname, Aquaculture Reports, Vol 21, Iss, Pp 100883-(2021), Digital.CSIC. Repositorio Institucional del CSIC
Accession number :
edsair.doi.dedup.....6379b29a98c9b2808a400f045b24216f