Using near infrared spectroscopy to predict metabolizable energy of corn for pigs

ABSTRACT: The chemical composition of corn is variable and the knowledge of its chemical and energetic composition is required for an accurate formulation of the diet. This study aimed to determine the chemical composition, that is, dry matter (DM), mineral matter (MM), neutral detergent fiber (NDF)...

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Main Authors: Silvia Letícia Ferreira, Ricardo Souza Vasconcellos, Robson Marcelo Rossi, Vinicius Ricardo Cambito de Paula, Marcelise Regina Fachinello, Laura Marcela Díaz Huepa, Paulo Cesar Pozza
Format: Article
Language:English
Published: Universidade de São Paulo
Series:Scientia Agricola
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162018000600486&lng=en&tlng=en
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spelling doaj-59adc26775144bbc8fd8688f2ac79a6c2020-11-24T22:09:22ZengUniversidade de São PauloScientia Agricola1678-992X75648649310.1590/1678-992x-2016-0509S0103-90162018000600486Using near infrared spectroscopy to predict metabolizable energy of corn for pigsSilvia Letícia FerreiraRicardo Souza VasconcellosRobson Marcelo RossiVinicius Ricardo Cambito de PaulaMarcelise Regina FachinelloLaura Marcela Díaz HuepaPaulo Cesar PozzaABSTRACT: The chemical composition of corn is variable and the knowledge of its chemical and energetic composition is required for an accurate formulation of the diet. This study aimed to determine the chemical composition, that is, dry matter (DM), mineral matter (MM), neutral detergent fiber (NDF), acid detergent fiber (ADF), ether extract (EE), crude protein (CP), gross energy (GE) and energetic values of different varieties (batches) of corn and validate mathematical models to predict the metabolizable energy values (ME) of corn for pigs using near infrared spectroscopy (NIRS). Corn samples were scanned in the spectrum range between 1,100 and 2,500 nm, the model parameters were estimated by the modified partial least squares (MPLS) method. Ten prediction equations were inserted into the NIRS and used to estimate the ME values. The first degree linear regression models of the estimated ME values in function of the observed ME values were adjusted. The existence of a linear ratio was evaluated by detecting the significance to posterior estimates of the straight line parameters. The values of digestible energy and ME ranged from 3,400 to 3,752 and 3,244 to 3,611 kcal kg−1, respectively. The prediction equations, ME1 = 4334 – 8.1MM + 4.1EE – 3.7NDF; ME2 = 4,194 – 9.2MM + 1.0CP + 4.1EE – 3.5NDF; and ME7 = 16.13 – 9.5NDF + 16EE + (23CP × NDF) – (138MM × NDF) were the most adequate to predict the ME values of corn by using NIRS.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162018000600486&lng=en&tlng=enchemical compositionprediction equationsvalidationswine
collection DOAJ
language English
format Article
sources DOAJ
author Silvia Letícia Ferreira
Ricardo Souza Vasconcellos
Robson Marcelo Rossi
Vinicius Ricardo Cambito de Paula
Marcelise Regina Fachinello
Laura Marcela Díaz Huepa
Paulo Cesar Pozza
spellingShingle Silvia Letícia Ferreira
Ricardo Souza Vasconcellos
Robson Marcelo Rossi
Vinicius Ricardo Cambito de Paula
Marcelise Regina Fachinello
Laura Marcela Díaz Huepa
Paulo Cesar Pozza
Using near infrared spectroscopy to predict metabolizable energy of corn for pigs
Scientia Agricola
chemical composition
prediction equations
validation
swine
author_facet Silvia Letícia Ferreira
Ricardo Souza Vasconcellos
Robson Marcelo Rossi
Vinicius Ricardo Cambito de Paula
Marcelise Regina Fachinello
Laura Marcela Díaz Huepa
Paulo Cesar Pozza
author_sort Silvia Letícia Ferreira
title Using near infrared spectroscopy to predict metabolizable energy of corn for pigs
title_short Using near infrared spectroscopy to predict metabolizable energy of corn for pigs
title_full Using near infrared spectroscopy to predict metabolizable energy of corn for pigs
title_fullStr Using near infrared spectroscopy to predict metabolizable energy of corn for pigs
title_full_unstemmed Using near infrared spectroscopy to predict metabolizable energy of corn for pigs
title_sort using near infrared spectroscopy to predict metabolizable energy of corn for pigs
publisher Universidade de São Paulo
series Scientia Agricola
issn 1678-992X
description ABSTRACT: The chemical composition of corn is variable and the knowledge of its chemical and energetic composition is required for an accurate formulation of the diet. This study aimed to determine the chemical composition, that is, dry matter (DM), mineral matter (MM), neutral detergent fiber (NDF), acid detergent fiber (ADF), ether extract (EE), crude protein (CP), gross energy (GE) and energetic values of different varieties (batches) of corn and validate mathematical models to predict the metabolizable energy values (ME) of corn for pigs using near infrared spectroscopy (NIRS). Corn samples were scanned in the spectrum range between 1,100 and 2,500 nm, the model parameters were estimated by the modified partial least squares (MPLS) method. Ten prediction equations were inserted into the NIRS and used to estimate the ME values. The first degree linear regression models of the estimated ME values in function of the observed ME values were adjusted. The existence of a linear ratio was evaluated by detecting the significance to posterior estimates of the straight line parameters. The values of digestible energy and ME ranged from 3,400 to 3,752 and 3,244 to 3,611 kcal kg−1, respectively. The prediction equations, ME1 = 4334 – 8.1MM + 4.1EE – 3.7NDF; ME2 = 4,194 – 9.2MM + 1.0CP + 4.1EE – 3.5NDF; and ME7 = 16.13 – 9.5NDF + 16EE + (23CP × NDF) – (138MM × NDF) were the most adequate to predict the ME values of corn by using NIRS.
topic chemical composition
prediction equations
validation
swine
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162018000600486&lng=en&tlng=en
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