| Literature DB >> 33160772 |
Yi Ren1, Xingyi Huang2, Joshua H Aheto3, Chengquan Wang4, Bonah Ernest5, Xiaoyu Tian3, Peihuan He3, Xianhui Chang3, Chen Wang6.
Abstract
The maturity level of eggs during pickling is conventionally assessed by choosing few eggs from each curing batch to crack open. Yet, this method is destructive, creates waste and has consequences for financial losses. In this work, the feasibility of integrating electronic nose (EN) with reflectance hyperspectral (RH) and transmittance hyperspectral (TH) data for accurate classification of preserved eggs (PEs) at different maturation periods was investigated. Classifier models based solely on RH and TH with EN achieved a training accuracy (93.33%, 97.78%) and prediction accuracy (88.89%; 93.33%) respectively. The fusion of the three datasets, (EN + RH + TH) as a single classifier model yielded an overall training accuracy of 98.89% and prediction accuracy of 95.56%. Also, 52 volatile compounds were obtained from the PE headspace, of which 32 belonged to seven functional groups. This study demonstrates the ability to integrate EN with RH and TH data to effectively identify PEs during processing.Entities:
Keywords: 1-Hexanol (PubChem CID: 8103); 2-Heptanone (PubChem CID: 8051); 2-Methylpyrazine (PubChem CID: 7976); Data fusion; Dimethyl trisulfide (PubChem CID: 19310); Ethyl propionate (PubChem CID: 7749); Furfural (PubChem CID: 7362); Heptanal (PubChem CID: 8130); Hyperspectral imaging; Isobutyraldehyde (PubChem CID: 6561); Maturity discrimination; Nondestructive detection; Pentanal (PubChem CID: 8063); Preserved eggs; Styrene (PubChem CID: 7501); Volatile organic compounds
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Year: 2020 PMID: 33160772 DOI: 10.1016/j.foodchem.2020.128515
Source DB: PubMed Journal: Food Chem ISSN: 0308-8146 Impact factor: 7.514