Modelling and classification of apple textural attributes using sensory, instrumental and compositional analyses

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creativework.keywords - en
apples
creativework.keywords - fr
pommes
dc.contributor.author
Bejaei, Masoumeh
Stanich, Kareen
Cliff, Margaret A.
dc.date.accessioned
2023-05-23T17:00:59Z
dc.date.available
2023-05-23T17:00:59Z
dc.date.issued
2021-02-10
dc.description.abstract - en
Textural characteristics of fruit are important for their quality, storability, and consumer acceptance. While texture can be evaluated instrumentally or sensorially, instrumental measurements are preferred if they can be reliably related to human perception. The objectives of this research were to validate instrumental measurements with sensory determinations, develop a classification scheme to group apples by their textural characteristics, and create models to predict sensory attributes from instrumental and compositional analyses. The textural characteristics (crispness, hardness, juiciness, and skin toughness) of 12 apple cultivars were evaluated on new and established cultivars. Fruit was also evaluated using five instrumental measurements from TA.XTplus Texture Analyzer, and three compositional determinations. The experiment was repeated for analysis and validation purposes. Principal component (PC) analysis revealed that 95.88% of the variation in the instrumental determinations could be explained by two components (PC 1 and PC 2); which were highly correlated with flesh firmness and skin strength, respectively. Four textural groups of apples were identified, and the accuracy of classification was established at 94.44% by using linear discriminant analysis. The predictive models that were developed between the sensory and instrumental-compositional data explained more than 85% of the variation in the data for hardness and crispness, while models for juiciness and skin toughness were more complex. The work should assist industry personnel to reduce time-consuming and costly sensory testing, yet have an appreciation of the textural traits as perceived by the consumer.
dc.identifier.citation
Bejaei, M., Stanich, K., & Cliff, M. A. (2021). Modelling and Classification of Apple Textural Attributes Using Sensory, Instrumental and Compositional Analyses. Foods (Basel, Switzerland), 10(2), 384. https://doi.org/10.3390/foods10020384
dc.identifier.doi
https://doi.org/10.3390/foods10020384
dc.identifier.issn
2304-8158
dc.identifier.uri
https://open-science.canada.ca/handle/123456789/297
dc.language.iso
en
dc.publisher
MDPI
dc.rights - en
Creative Commons Public Domain Dedication (CC0 1.0 Universal)
dc.rights - fr
Creative Commons Transfert dans le Domaine Public (CC0 1.0 universel)
dc.rights.openaccesslevel - en
Gold
dc.rights.openaccesslevel - fr
Or
dc.rights.uri - en
https://creativecommons.org/publicdomain/zero/1.0/
dc.rights.uri - fr
https://creativecommons.org/publicdomain/zero/1.0/deed.fr
dc.subject - en
Agriculture
dc.subject - fr
Agriculture
dc.subject.en - en
Agriculture
dc.subject.fr - fr
Agriculture
dc.title - en
Modelling and classification of apple textural attributes using sensory, instrumental and compositional analyses
dc.type - en
Article
dc.type - fr
Article
local.article.journalissue
2
local.article.journaltitle
Foods
local.article.journalvolume
10
local.pagination
384
local.peerreview - en
Yes
local.peerreview - fr
Oui
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