Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6664614 | Journal of Food Engineering | 2018 | 10 Pages |
Abstract
This study investigates the use of fractal algorithms to analyse MRI of meat products, specifically loin, in order to determine sensory parameters of loin. For that, the capability of different fractal algorithms was evaluated (Classical Fractal Algorithm, CFA; Fractal Texture Algorithm, FTA and One Point Fractal Texture Algorithm, OPFTA). Moreover, the influence of the acquisition sequence of MRI (Gradient echo, GE; Spin Echo, SE and Turbo 3D, T3D) and the predictive technique of data mining (Isotonic regression, IR and Multiple Linear regression, MLR) on the accuracy of the prediction was analysed. Results on this study firstly demonstrate the capability of fractal algorithms to analyse MRI from meat product. Different combinations of the analysed techniques can be applied for predicting most sensory attributes of loins adequately (Râ¯>â¯0.5). However, the combination of SE, OPFTA and MLR offered the most appropriate results. Thus, it could be proposed as an alternative to the traditional food technology methods.
Keywords
CFAMRI analysisT3DKDDFTAUniFOVEFIENTCOREMPIDMROIMLRPCAS/NEntropySpin echoMRIInertiaconEfficiencyMAEEmphasisPrincipal component analysisMagnetic resonance imagingcontrastData miningineIsotonic regressionMultiple linear regressionecho timeRepetition timeSignal to noiseSensory traitsCorrelation coefficientFractalsRadiofrequencyregion of interesthomMean Absolute ErrorField of viewCorrelationhomogeneityPredictionknowledge discovery in databasesGradient echoMeatUniformity
Related Topics
Physical Sciences and Engineering
Chemical Engineering
Chemical Engineering (General)
Authors
Daniel Caballero, Teresa Antequera, Andrés Caro, José Manuel Amigo, Bjarne K. ErsbÃll, Anders B. Dahl, Trinidad Pérez-Palacios,