PREDICTION OF THE FEEDING VALUE OF GRASS SILAGES BY CHEMICAL-PARAMETERS, IN-VITRO DIGESTIBILITY AND NEAR-INFRARED REFLECTANCE SPECTROSCOPY

Citation
Jl. Deboever et al., PREDICTION OF THE FEEDING VALUE OF GRASS SILAGES BY CHEMICAL-PARAMETERS, IN-VITRO DIGESTIBILITY AND NEAR-INFRARED REFLECTANCE SPECTROSCOPY, Animal feed science and technology, 60(1-2), 1996, pp. 103-115
Citations number
29
Categorie Soggetti
Agriculture Dairy & AnumalScience
ISSN journal
03778401
Volume
60
Issue
1-2
Year of publication
1996
Pages
103 - 115
Database
ISI
SICI code
0377-8401(1996)60:1-2<103:POTFVO>2.0.ZU;2-I
Abstract
Sixty-four grass silages with known in vivo organic matter digestibili ty (VOMD) were used to compare the potential of chemical parameters (d ry matter (DM), crude protein (CP), crude fibre (CF), crude fat, ash, neutral detergent fibre (NDF), acid detergent fibre (ADF), acid deterg ent lignin (ADL), water-soluble carbohydrates (WSC)), in vitro digesti bility (with rumen fluid (RFOMD) or commercial cellulases (COMD)) and near-infrared reflectance spectroscopy (NIRS, 1100-2500 nm) in predict ing VOMD and calculated metabolizable energy (ME) and net energy for l actation (NEL). Further, the possibilities of NIRS to predict chemical composition and calculated protein values (digestible protein in the intestine and degraded protein balance) were investigated. NIRS equati ons, developed by partial least-squares analysis, were tested on a sec ond set of 36 grass silages with digestibility and energy values based on COMD. VOMD showed the highest correlation with NIRS-predicted VOMD (r = 0.89), followed by COMD (0.83), RFOMD (0.81) and ADL (-0.73). Co mbining RFOMD with DM and CP could explain 78% of the variance in VOMD , whereas COMD in combination with CP, CF and DM accounted for 84% of the variance. Best multiple linear regressions based on RFOMD or COMD had residual standard deviations of 0.32 MJ kg(-1) DM for ME and 0.23 MJ kg(-1) DM for NEL. About the same accuracy for the prediction of th e energy value could be reached with NIRS-predicted VOMD and determine d ash content. The potential of NIRS to predict the chemical compositi on of grass silages was highest for CP, followed by WSC, moisture, CF, ash, NDF, ADF and ADL. NIRS also seems to have prospects for protein evaluation.