用于食源性病原体检测的机器学习比色传感器。

Q1 Agricultural and Biological Sciences Advances in Food and Nutrition Research Pub Date : 2024-01-01 Epub Date: 2024-06-29 DOI:10.1016/bs.afnr.2024.06.004
Emma G Holliday, Boce Zhang
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引用次数: 0

摘要

在过去的十年中,比色传感器取得了各种进步,提高了其在食品和农业领域的应用潜力。其中,感知食源性病原体的应用日益受到关注。食品工业中的传感有其独特的考虑因素,包括食品样品的破坏、复杂食品基质中的特异性以及高灵敏度要求。将纳米技术、微流体技术和智能手机应用程序开发等新技术融入比色传感方法中,可以提高传感器的性能。尽管如此,将传感器与现有食品安全基础设施集成仍然存在挑战。最近,越来越多先进的机器学习技术被用于促进无损、多重检测,以便将传感器与食品工业进行可行的整合。机器学习能够从高度复杂的数据中进行分析和预测,因此在对食源性病原体进行先进而实用的比色传感方面具有潜力。本文总结了机器学习支持的食源性病原体比色传感的最新进展和障碍。这些进展凸显了跨学科尖端技术在提供更安全、更高效食品系统方面的潜力。
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Machine learning-enabled colorimetric sensors for foodborne pathogen detection.

In the past decade, there have been various advancements to colorimetric sensors to improve their potential applications in food and agriculture. One application of growing interest is sensing foodborne pathogens. There are unique considerations for sensing in the food industry, including food sample destruction, specificity amidst a complex food matrix, and high sensitivity requirements. Incorporating novel technology, such as nanotechnology, microfluidics, and smartphone app development, into colorimetric sensing methodology can enhance sensor performance. Nonetheless, there remain challenges to integrating sensors with existing food safety infrastructure. Recently, increasingly advanced machine learning techniques have been employed to facilitate nondestructive, multiplex detection for feasible assimilation of sensors into the food industry. With its ability to analyze and make predictions from highly complex data, machine learning holds potential for advanced yet practical colorimetric sensing of foodborne pathogens. This article summarizes recent developments and hurdles of machine learning-enabled colorimetric foodborne pathogen sensing. These advancements underscore the potential of interdisciplinary, cutting-edge technology in providing safer and more efficient food systems.

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来源期刊
Advances in Food and Nutrition Research
Advances in Food and Nutrition Research Agricultural and Biological Sciences-Food Science
CiteScore
8.50
自引率
0.00%
发文量
50
期刊最新文献
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