Proceedings of the 18th International Conference on Near Infrared Spectroscopy 2019
DOI: 10.1255/nir2017.039
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Visualizing indirect correlations when predicting fatty acid composition from near infrared spectroscopy measurements

Abstract: In recent years, vibrational spectroscopy has been used to predict detailed sample composition like protein and fatty acid profiles. This study shows that fatty acid predictions from near infrared measurements in food stuffs rely on covariance structures amongst the fatty acids. These covariance structures, in turn, vary with factors like breed, age, feed, season etc. and therefore they are not likely to remain constant. Consequently, the robustness and validity of the developed calibration models will be comp… Show more

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Cited by 3 publications
(2 citation statements)
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“…This ensures the model to, exclusively, fit on the chemical basis related to c 1 and the relationship between c 1 and bold-italicctruê1 would be given by s1Ttrueb̂ (Equation ). For a good and direct model, the ‖‖bold-italicbtruê is scaled so s1Ttrueb̂ is close to 1 5,19 . These observations are also evident from Equations and .…”
Section: Theorymentioning
confidence: 78%
“…This ensures the model to, exclusively, fit on the chemical basis related to c 1 and the relationship between c 1 and bold-italicctruê1 would be given by s1Ttrueb̂ (Equation ). For a good and direct model, the ‖‖bold-italicbtruê is scaled so s1Ttrueb̂ is close to 1 5,19 . These observations are also evident from Equations and .…”
Section: Theorymentioning
confidence: 78%
“…Since moderate positive correlations between protein and hydroxyproline content were seen in both data sets, it was important to assure that the calibrations for collagen did not rely on the total protein content. One way of studying this is by investigating the correlations between the predicted values for protein and hydroxyproline contents, respectively (Eskildsen, Naes, Wold, Afseth, & Engelsen, 2019). Thus, PLSR models for protein were obtained, and the correlation coefficients between predicted protein and predicted hydroxyproline was calculated (r= 0.64 and r= 0.78 for beef and poultry by-products, respectively).…”
Section: Regression Analysismentioning
confidence: 99%