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Development of a machine learning model for systematics of Aspergillus section Nigri using synchrotron radiation-based fourier transform infrared spectroscopy
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Metadata
Document Title
Development of a machine learning model for systematics of Aspergillus section Nigri using synchrotron radiation-based fourier transform infrared spectroscopy
Author
Nuankaew S. Boonyuen N. Thumanu K. Pornputtapong N.
Affiliations
Department of Biochemistry and Microbiology Faculty of Pharmaceutical Sciences Chulalongkorn University Bangkok 10330 Thailand; National Center for Genetic Engineering and Biotechnology (BIOTEC) National Science and Technology Development Agency (NSTDA) Pathum Thani12120 Thailand; Synchrotron Light Research Institute (SLRI) Nakhon Ratchasima 30000 Thailand; Center of Excellence in DNA Barcoding of Thai Medicinal Plants Chulalongkorn University Bangkok 10330 Thailand
Type
Article
Source Title
Heliyon
ISSN
24058440
Year
2024
Volume
10
Issue
5
Open Access
All Open Access Gold
Publisher
Elsevier Ltd
DOI
10.1016/j.heliyon.2024.e26812
Abstract
Aspergillus section Nigri (black aspergilli) fungi are economically important food spoilage agents. Some species in this section also produce harmful mycotoxins in food. However it is remarkably difficult to identify this fungal group at the species level using morphological and chemical characteristics. The molecular approach for classification is preferable; however it is time-consuming making it inappropriate for rapid testing of large numbers of samples. To address this we explored synchrotron radiation-based Fourier transform infrared microspectroscopy (SR-FTIR) as a rapid method for obtaining data suitable for species classification. SR-FTIR data were obtained from the mycelia/conidia of 22 black aspergilli species. The Convolutional Neural Network (CNN) approach a supervised deep learning algorithm was used with SR-FTIR data to classify black aspergilli at the species level. A subset of the data was used to train the CNN model and the model classification performance was evaluated using the validation data subsets. The model demonstrated a 95.97% accuracy in species classification on the testing (blind) data subset. The technique presented herein could be an alternative method for identifying problematic black aspergilli in the food industry. ? 2024 The Authors
Industrial Classification
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License
CC BY
Rights
Authors
Publication Source
Scopus