Advancements in Predictive Microbiology: Integrating New Technologies for Efficient Food Safety Models

IF 2.8 Q3 MICROBIOLOGY
Oluseyi Rotimi Taiwo, H. Onyeaka, Elijah K. Oladipo, Julius Kola Oloke, Deborah C. Chukwugozie
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引用次数: 0

Abstract

Predictive microbiology is a rapidly evolving field that has gained significant interest over the years due to its diverse application in food safety. Predictive models are widely used in food microbiology to estimate the growth of microorganisms in food products. These models represent the dynamic interactions between intrinsic and extrinsic food factors as mathematical equations and then apply these data to predict shelf life, spoilage, and microbial risk assessment. Due to their ability to predict the microbial risk, these tools are also integrated into hazard analysis critical control point (HACCP) protocols. However, like most new technologies, several limitations have been linked to their use. Predictive models have been found incapable of modeling the intricate microbial interactions in food colonized by different bacteria populations under dynamic environmental conditions. To address this issue, researchers are integrating several new technologies into predictive models to improve efficiency and accuracy. Increasingly, newer technologies such as whole genome sequencing (WGS), metagenomics, artificial intelligence, and machine learning are being rapidly adopted into newer-generation models. This has facilitated the development of devices based on robotics, the Internet of Things, and time-temperature indicators that are being incorporated into food processing both domestically and industrially globally. This study reviewed current research on predictive models, limitations, challenges, and newer technologies being integrated into developing more efficient models. Machine learning algorithms commonly employed in predictive modeling are discussed with emphasis on their application in research and industry and their advantages over traditional models.
预测微生物学的进展:整合新技术,建立高效食品安全模型
预测微生物学是一个发展迅速的领域,由于其在食品安全方面的广泛应用,多年来一直备受关注。预测模型在食品微生物学中被广泛用于估算食品中微生物的生长情况。这些模型将食品内在因素和外在因素之间的动态相互作用表示为数学公式,然后应用这些数据来预测保质期、变质和微生物风险评估。由于能够预测微生物风险,这些工具也被纳入了危害分析关键控制点(HACCP)协议。然而,与大多数新技术一样,这些工具的使用也存在一些局限性。人们发现,预测模型无法模拟动态环境条件下不同细菌种群在食品中错综复杂的微生物相互作用。为了解决这个问题,研究人员正在将一些新技术整合到预测模型中,以提高效率和准确性。全基因组测序 (WGS)、元基因组学、人工智能和机器学习等新技术正被迅速应用到新一代模型中。这促进了基于机器人技术、物联网和时间温度指示器的设备的发展,这些设备正被纳入国内和全球的食品加工工业中。本研究回顾了当前有关预测模型的研究、局限性、挑战以及正在整合到开发更高效模型中的更新技术。本研究还讨论了预测模型中常用的机器学习算法,重点是这些算法在研究和工业中的应用以及与传统模型相比的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.90
自引率
0.00%
发文量
57
审稿时长
13 weeks
期刊介绍: International Journal of Microbiology is a peer-reviewed, Open Access journal that publishes original research articles, review articles, and clinical studies on microorganisms and their interaction with hosts and the environment. The journal covers all microbes, including bacteria, fungi, viruses, archaea, and protozoa. Basic science will be considered, as well as medical and applied research.
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