Application of zNose™ for classification of enzymatically-macerated and steamed pumpkin using principal component analysis

High resolution olfactory images, called VaporPrintsTM, derived from the frequency of a surface acoustic wave (SAW) detector, are particularly useful to human because of their ability to recognize and differentiate visual images. In this study, the VaporPrintTM of fresh pumpkin (Cucurbita moscha...

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Main Authors: Shavakhi, Forough, Boo, Huey Chern, Osman, Azizah, Mohd Ghazali, Hasanah
Format: Article
Language:English
English
Published: Faculty of Food Science and Technology, Universiti Putra Malaysia 2011
Online Access:http://psasir.upm.edu.my/id/eprint/24037/1/24037.pdf
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author Shavakhi, Forough
Boo, Huey Chern
Osman, Azizah
Mohd Ghazali, Hasanah
author_facet Shavakhi, Forough
Boo, Huey Chern
Osman, Azizah
Mohd Ghazali, Hasanah
author_sort Shavakhi, Forough
collection UPM
description High resolution olfactory images, called VaporPrintsTM, derived from the frequency of a surface acoustic wave (SAW) detector, are particularly useful to human because of their ability to recognize and differentiate visual images. In this study, the VaporPrintTM of fresh pumpkin (Cucurbita moschata) and different products of the pumpkin including steamed pumpkin and also pumpkin purees as affected by different enzymes (Pectinex® Ultra SP-L and Celluclast®; Novozyme, Denmark) were determined using an ultra-fast GC (zNoseTM) based on a SAW sensor. The zNose™ fingerprints served as a potential tool for qualitative and discriminative distinction of aroma between the different pumpkin products. Principal component analysis (PCA) was used to analyse the data. Based on the results, samples were categorized into three different groups. According to the score plot of PC 2 (second component) versus PC 1 (first component), aromas of enzymatically macerated pumpkin were close together. The PC 1 and PC 2 factors resulted in the model that describe the 82.9% of the total variance and seemed sufficient to define a good model.
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spelling upm.eprints-240372015-06-03T04:02:45Z http://psasir.upm.edu.my/id/eprint/24037/ Application of zNose™ for classification of enzymatically-macerated and steamed pumpkin using principal component analysis Shavakhi, Forough Boo, Huey Chern Osman, Azizah Mohd Ghazali, Hasanah High resolution olfactory images, called VaporPrintsTM, derived from the frequency of a surface acoustic wave (SAW) detector, are particularly useful to human because of their ability to recognize and differentiate visual images. In this study, the VaporPrintTM of fresh pumpkin (Cucurbita moschata) and different products of the pumpkin including steamed pumpkin and also pumpkin purees as affected by different enzymes (Pectinex® Ultra SP-L and Celluclast®; Novozyme, Denmark) were determined using an ultra-fast GC (zNoseTM) based on a SAW sensor. The zNose™ fingerprints served as a potential tool for qualitative and discriminative distinction of aroma between the different pumpkin products. Principal component analysis (PCA) was used to analyse the data. Based on the results, samples were categorized into three different groups. According to the score plot of PC 2 (second component) versus PC 1 (first component), aromas of enzymatically macerated pumpkin were close together. The PC 1 and PC 2 factors resulted in the model that describe the 82.9% of the total variance and seemed sufficient to define a good model. Faculty of Food Science and Technology, Universiti Putra Malaysia 2011 Article PeerReviewed application/pdf en http://psasir.upm.edu.my/id/eprint/24037/1/24037.pdf Shavakhi, Forough and Boo, Huey Chern and Osman, Azizah and Mohd Ghazali, Hasanah (2011) Application of zNose™ for classification of enzymatically-macerated and steamed pumpkin using principal component analysis. International Food Research Journal, 18 (1). pp. 311-318. ISSN 1985-4668; ESSN: 2231-7546 http://www.ifrj.upm.edu.my/volume-18-2011.html English
spellingShingle Shavakhi, Forough
Boo, Huey Chern
Osman, Azizah
Mohd Ghazali, Hasanah
Application of zNose™ for classification of enzymatically-macerated and steamed pumpkin using principal component analysis
title Application of zNose™ for classification of enzymatically-macerated and steamed pumpkin using principal component analysis
title_full Application of zNose™ for classification of enzymatically-macerated and steamed pumpkin using principal component analysis
title_fullStr Application of zNose™ for classification of enzymatically-macerated and steamed pumpkin using principal component analysis
title_full_unstemmed Application of zNose™ for classification of enzymatically-macerated and steamed pumpkin using principal component analysis
title_short Application of zNose™ for classification of enzymatically-macerated and steamed pumpkin using principal component analysis
title_sort application of znose™ for classification of enzymatically macerated and steamed pumpkin using principal component analysis
url http://psasir.upm.edu.my/id/eprint/24037/1/24037.pdf
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