NIRS to assess chemical composition of sheep and goat cheese

The present study aimed to evaluate the performances of Fourier transform near-infrared spectroscopy technique to determine the chemical and the fatty acid composition of different types of cheeses. A total of 95 cheeses from sheep and goat raw milk were produced in small local dairies of Siena prov...

Full description

Bibliographic Details
Main Author: Silvia Parrini
Format: Article
Language:English
Published: Slovak University of Agriculture in Nitra 2020-12-01
Series:Acta Fytotechnica et Zootechnica
Subjects:
Online Access:http://acta.fapz.uniag.sk/journal/index.php/on_line/article/download/675/pdf
id doaj-2ba1c1ccd4b9425aa36929c687e16267
record_format Article
spelling doaj-2ba1c1ccd4b9425aa36929c687e162672020-12-15T07:54:09ZengSlovak University of Agriculture in NitraActa Fytotechnica et Zootechnica1336-92452020-12-0123Monothematic issue9710410.15414/afz.2020.23.mi-fpap.97-104NIRS to assess chemical composition of sheep and goat cheeseSilvia ParriniThe present study aimed to evaluate the performances of Fourier transform near-infrared spectroscopy technique to determine the chemical and the fatty acid composition of different types of cheeses. A total of 95 cheeses from sheep and goat raw milk were produced in small local dairies of Siena province (Tuscany). For each cheese, spectrum was collected in intact slices of the sample and fatty acid profile was determined in ground samples. Outliers were identified and different mathematical pre-processing treatments (SNV, MSC, baseline correction and de-trending) were applied when necessary. Considering traditional chemical analysis and raw cheese spectral data, calibration and cross-validation models were carried out using partial least squares regression (PLS). The best results were evaluated in terms of coefficient of determination in calibration and cross-validation (R2cv), and root mean square error in calibration and cross-validation, and residual prediction deviation (RPD). Moisture, protein and ash showed the best R2cv (0.89, 0.74 and 0.72, respectively) and RPD values (3.0, 2.6 and 2.1, respectively). Saturated, monounsaturated and polyunsaturated fatty acids showed R2cv which ranged from 0.75 to 0.67, and RPD <2.0. Intermediate results in terms of R2cv (0.62 as mean) were obtained for medium chain saturated fatty acids (C8:0 to C14:0), whereas for C18 series only oleic acid reached good accuracy of prediction (R2cv >0.70). Obtained results are promising and additional samples could strongly increase the predictive ability for small dairy farms.http://acta.fapz.uniag.sk/journal/index.php/on_line/article/download/675/pdfft-nirscheesefatty acidquality
collection DOAJ
language English
format Article
sources DOAJ
author Silvia Parrini
spellingShingle Silvia Parrini
NIRS to assess chemical composition of sheep and goat cheese
Acta Fytotechnica et Zootechnica
ft-nirs
cheese
fatty acid
quality
author_facet Silvia Parrini
author_sort Silvia Parrini
title NIRS to assess chemical composition of sheep and goat cheese
title_short NIRS to assess chemical composition of sheep and goat cheese
title_full NIRS to assess chemical composition of sheep and goat cheese
title_fullStr NIRS to assess chemical composition of sheep and goat cheese
title_full_unstemmed NIRS to assess chemical composition of sheep and goat cheese
title_sort nirs to assess chemical composition of sheep and goat cheese
publisher Slovak University of Agriculture in Nitra
series Acta Fytotechnica et Zootechnica
issn 1336-9245
publishDate 2020-12-01
description The present study aimed to evaluate the performances of Fourier transform near-infrared spectroscopy technique to determine the chemical and the fatty acid composition of different types of cheeses. A total of 95 cheeses from sheep and goat raw milk were produced in small local dairies of Siena province (Tuscany). For each cheese, spectrum was collected in intact slices of the sample and fatty acid profile was determined in ground samples. Outliers were identified and different mathematical pre-processing treatments (SNV, MSC, baseline correction and de-trending) were applied when necessary. Considering traditional chemical analysis and raw cheese spectral data, calibration and cross-validation models were carried out using partial least squares regression (PLS). The best results were evaluated in terms of coefficient of determination in calibration and cross-validation (R2cv), and root mean square error in calibration and cross-validation, and residual prediction deviation (RPD). Moisture, protein and ash showed the best R2cv (0.89, 0.74 and 0.72, respectively) and RPD values (3.0, 2.6 and 2.1, respectively). Saturated, monounsaturated and polyunsaturated fatty acids showed R2cv which ranged from 0.75 to 0.67, and RPD <2.0. Intermediate results in terms of R2cv (0.62 as mean) were obtained for medium chain saturated fatty acids (C8:0 to C14:0), whereas for C18 series only oleic acid reached good accuracy of prediction (R2cv >0.70). Obtained results are promising and additional samples could strongly increase the predictive ability for small dairy farms.
topic ft-nirs
cheese
fatty acid
quality
url http://acta.fapz.uniag.sk/journal/index.php/on_line/article/download/675/pdf
work_keys_str_mv AT silviaparrini nirstoassesschemicalcompositionofsheepandgoatcheese
_version_ 1724382673469702144