Title of article :
Rapid determination of pork sensory quality using Raman spectroscopy
Author/Authors :
Wang، نويسنده , , Qi and Lonergan، نويسنده , , Steven M. and Yu، نويسنده , , Chenxu، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Existing objective methods to predict sensory attributes of pork in general do not yield satisfactory correlation to panel evaluations, and their applications in meat industry are limited. In this study, a Raman spectroscopic method was developed to evaluate and predict tenderness, juiciness and chewiness of fresh, uncooked pork loins from 169 pigs. Partial Least Square Regression models were developed based on Raman spectroscopic characteristics of the pork loins to predict the values of the sensory attributes. Furthermore, binary barcodes were created based on spectroscopic characteristics of the pork loins, and subjected to multivariate statistical discriminant analysis (i.e., Support Vector Machine) to differentiate and classify pork loins into quality grades (“good” and “bad” in terms of tenderness and chewiness). Good agreement (> 83% correct predictions) with sensory panel results was obtained. The method developed in this report has the potential to become a rapid objective assay for tenderness and chewiness of pork products that may find practical applications in pork industry.
Keywords :
Pork tenderness , Raman spectroscopy , partial least square , Support vector machine , Pork chewiness
Journal title :
Meat Science
Journal title :
Meat Science