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Main Authors: Inglis, Alan, Parnell, Andrew, Subramani, Natarajan, Doohan, Fiona
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.15387
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author Inglis, Alan
Parnell, Andrew
Subramani, Natarajan
Doohan, Fiona
author_facet Inglis, Alan
Parnell, Andrew
Subramani, Natarajan
Doohan, Fiona
contents Mycotoxins, toxic secondary metabolites produced by certain fungi, pose significant threats to global food safety and public health. These compounds can contaminate a variety of crops, leading to economic losses and health risks to both humans and animals. Traditional lab analysis methods for mycotoxin detection can be time-consuming and may not always be suitable for large-scale screenings. However, in recent years, machine learning (ML) methods have gained popularity for use in the detection of mycotoxins and in the food safety industry in general, due to their accurate and timely predictions. We provide a systematic review on some of the recent ML applications for detecting/predicting the presence of mycotoxin on a variety of food ingredients, highlighting their advantages, challenges, and potential for future advancements. We address the need for reproducibility and transparency in ML research through open access to data and code. An observation from our findings is the frequent lack of detailed reporting on hyperparameters in many studies as well as a lack of open source code, which raises concerns about the reproducibility and optimisation of the ML models used. The findings reveal that while the majority of studies predominantly utilised neural networks for mycotoxin detection, there was a notable diversity in the types of neural network architectures employed, with convolutional neural networks being the most popular.
format Preprint
id arxiv_https___arxiv_org_abs_2404_15387
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Machine Learning Applied to the Detection of Mycotoxin in Food: A Review
Inglis, Alan
Parnell, Andrew
Subramani, Natarajan
Doohan, Fiona
Quantitative Methods
Machine Learning
Mycotoxins, toxic secondary metabolites produced by certain fungi, pose significant threats to global food safety and public health. These compounds can contaminate a variety of crops, leading to economic losses and health risks to both humans and animals. Traditional lab analysis methods for mycotoxin detection can be time-consuming and may not always be suitable for large-scale screenings. However, in recent years, machine learning (ML) methods have gained popularity for use in the detection of mycotoxins and in the food safety industry in general, due to their accurate and timely predictions. We provide a systematic review on some of the recent ML applications for detecting/predicting the presence of mycotoxin on a variety of food ingredients, highlighting their advantages, challenges, and potential for future advancements. We address the need for reproducibility and transparency in ML research through open access to data and code. An observation from our findings is the frequent lack of detailed reporting on hyperparameters in many studies as well as a lack of open source code, which raises concerns about the reproducibility and optimisation of the ML models used. The findings reveal that while the majority of studies predominantly utilised neural networks for mycotoxin detection, there was a notable diversity in the types of neural network architectures employed, with convolutional neural networks being the most popular.
title Machine Learning Applied to the Detection of Mycotoxin in Food: A Review
topic Quantitative Methods
Machine Learning
url https://arxiv.org/abs/2404.15387