基于人工智能的环境污染物敏感检测微流控平台:最新进展与展望

IF 11.1 2区 化学 Q1 CHEMISTRY, ANALYTICAL Trends in Environmental Analytical Chemistry Pub Date : 2022-06-01 DOI:10.1016/j.teac.2022.e00160
Niki Pouyanfar , Samaneh Zare Harofte , Maha Soltani , Saeed Siavashy , Elham Asadian , Fatemeh Ghorbani-Bidkorbeh , Rüstem Keçili , Chaudhery Mustansar Hussain
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引用次数: 15

摘要

环境污染及其对人类和动物健康的严重影响促使各国政府实施严格的政策,尽量减少损害。实施这些政策的第一步是找到可靠的方法来检测各种媒介中的污染,包括水、食物、土壤和空气。在这方面,提出了各种方法,如分光光度法、色谱法和电化学技术。为了克服传统分析方法的局限性,在过去的几年里,微流控装置已经成为一种能够产生高含量信息的敏感技术。污染物样品通过微流控通道提供了探测器检测后整个环境的基本细节。同时,人工智能是识别、分类、表征甚至预测微流控系统数据的理想手段。集成机器学习和人工智能的微流控装置的发展为下一代监测系统的发展提供了前景。两种系统的结合确保了时间效率的设置和简单的操作。本文综述了微流控芯片与人工智能技术结合的最新进展,以发展更方便的污染监测系统。
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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Artificial intelligence-based microfluidic platforms for the sensitive detection of environmental pollutants: Recent advances and prospects

Environmental pollution and its drastic effects on human and animal health have urged governments to implement strict policies to minimize damage. The first step in applying such policies is to find reliable methods to detect pollution in various media, including water, food, soil, and air. In this regard, various approaches such as spectrophotometric, chromatographic, and electrochemical techniques have been proposed. To overcome the limitations associated with conventional analytical methods, microfluidic devices have emerged as sensitive technologies capable of generating high content information during the past few years. The passage of contaminant samples through the microfluidic channels provides essential details about the whole environment after detection by the detector. In the meantime, artificial intelligence is an ideal means to identify, classify, characterize, and even predict the data obtained from microfluidic systems. The development of microfluidic devices with integrated machine learning and artificial intelligence is promising for the development of next-generation monitoring systems. Combination of the two systems ensures time efficient setups with easy operation. This review article is dedicated to the recent developments in microfluidic chips coupled with artificial intelligence technology for the evolution of more convenient pollution monitoring systems.

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来源期刊
Trends in Environmental Analytical Chemistry
Trends in Environmental Analytical Chemistry Chemistry-Analytical Chemistry
CiteScore
21.20
自引率
2.70%
发文量
34
审稿时长
44 days
期刊介绍: Trends in Environmental Analytical Chemistry is an authoritative journal that focuses on the dynamic field of environmental analytical chemistry. It aims to deliver concise yet insightful overviews of the latest advancements in this field. By acquiring high-quality chemical data and effectively interpreting it, we can deepen our understanding of the environment. TrEAC is committed to keeping up with the fast-paced nature of environmental analytical chemistry by providing timely coverage of innovative analytical methods used in studying environmentally relevant substances and addressing related issues.
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