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FIRMNESS EVALUATION OF SWEET CHERRIES BY A TRAINED AND CONSUMER SENSORY PANEL
Author(s) -
ROSS CAROLYN F.,
CHAUVIN MAITE A.,
WHITING MATTHEW
Publication year - 2009
Publication title -
journal of texture studies
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.593
H-Index - 54
eISSN - 1745-4603
pISSN - 0022-4901
DOI - 10.1111/j.1745-4603.2009.00197.x
Subject(s) - mathematics , cultivar , sensory analysis , horticulture , sensory system , food science , statistics , chemistry , biology , neuroscience
The objective of this study was to examine cherry firmness and the ability of a trained and consumer panel to differentiate between cherries of different firmness values. For the trained panel ( n = 12) and consumer panel ( n = 100) evaluations, two late‐maturing, commercially important cherry cultivars were evaluated, “Selah” and “Skeena.” For trained panel evaluations, the analytical firmness value of each cherry was determined, although for the consumer panel, cherries were characterized into different firmness categories (low, intermediate and high), after which, a series of paired comparisons were made. “Selah” was the less‐firm cultivar by approximately 20 g/mm and consumers could distinguish the more‐firm cherry in all comparisons ( P < 0.05). For “Skeena,” consumers could only distinguish soft versus firm. Trained panelists were able to distinguish between cherries of a minimum analytical firmness value of ∼40 g/mm. A model was developed to predict sensory firmness from analytical determinations of firmness ( r = 0.63).PRACTICAL APPLICATIONS Developing prediction models to estimate sensory response from analytical data will benefit the fruit industry by potentially allowing the use of analytical measurements as a proxy for sensory evaluation. In addition, understanding the importance of firmness on cherry acceptance and knowing the specific firmness values at which individuals can perceive a difference in sensory firmness is useful for cherry growers to produce a cherry with acceptable texture.