| Literature DB >> 33099624 |
Wilson Barragán-Hernández1, Liliana Mahecha-Ledesma2, William Burgos-Paz3, Martha Olivera-Angel4, Joaquín Angulo-Arizala2.
Abstract
This study aimed to predict fat and fatty acids (FA) contents in beef using near-infrared spectroscopy and prediction models based on partial least squares (PLS) and support vector machine regression in radial kernel (R-SVR). Fat and FA were assessed in 200 longissimus thoracis samples, and spectra were collected in reflectance mode from ground meat. The analyses were performed for PLS and R-SVR with and without wavelength selection based on genetic algorithms (GAs). The GA application improved the error prediction by 15% and 68% for PLS and R-SVR, respectively. Models based on GA plus R-SMV showed a prediction ability for fat and FA with an average coefficient of determination of 0.92 and ratio performance deviation of 4.8.Entities:
Keywords: genetic algorithms; meat; partial least squares; reflectance; spectroscopy; support vector machine
Year: 2020 PMID: 33099624 PMCID: PMC7751167 DOI: 10.1093/jas/skaa342
Source DB: PubMed Journal: J Anim Sci ISSN: 0021-8812 Impact factor: 3.159