Machine learning-enhanced electrochemical sensors for food safety: Applications and perspectives

被引:2
作者
Pervaiz, Wajeeha [1 ]
Afzal, Muhammad Hussnain [3 ]
Feng, Niu [1 ]
Peng, Xuewen [1 ]
Chen, Yiping [1 ,2 ]
机构
[1] Huazhong Agr Univ, Coll Food Sci & Technol, 1 Shizishan St, Wuhan, Hubei, Peoples R China
[2] Dalian Polytech Univ, Acad Food Interdisciplinary Sci, Sch Food Sci & Technol, Dalian 116034, Liaoning, Peoples R China
[3] Huazhong Univ Sci & Technol, Hubei Engn Res Ctr Biomat & Med Protect Mat, Sch Chem & Chem Engn & Serv Failure, Sch Chem & Chem Engn,Key Lab Mat Chem Energy Conve, 1037 Luoyu Rd, Wuhan, Peoples R China
基金
中国国家自然科学基金;
关键词
Electrochemical sensors; Machine learning; Food contaminants; Food safety monitoring; Real-time monitoring; ARTIFICIAL-INTELLIGENCE; NETWORK;
D O I
10.1016/j.tifs.2025.104872
中图分类号
TS2 [食品工业];
学科分类号
0832 ;
摘要
Background: Food safety is a critical global concern that directly impacts human health and well-being. Electrochemical sensors have garnered considerable interest for detecting contaminants in food due to their sensitivity and selectivity; however, issues such as sensor instability and electrode fouling limit their effectiveness. The integration of machine learning (ML) into electrochemical sensing offers a transformative approach, enhancing sensor performance, stability, and data processing capabilities while enabling real-time monitoring. Scope and approach: This review succinctly explores the use of ML-enhanced electrochemical sensors specifically for food safety applications. Initially, various ML algorithms applicable to electrochemical sensor technology for food safety monitoring are discussed. The review then highlights the application of ML-enhanced sensors in detecting food-related contaminants, such as pesticides, pharmaceutical residues, heavy metals, microorganisms, artificial dyes, and phenolic compounds. Finally, it addresses the challenges and future prospects in advancing electrochemical sensors for food safety, emphasizing the potential of appropriate ML algorithms to improve insitu food safety monitoring. Key findings and conclusions: The integration of ML with electrochemical sensors improves their sensitivity, selectivity, and stability, addressing issues like electrode fouling. ML algorithms such as support vector machines, artificial neural networks, and random forests effectively detect food contaminants like pesticides, heavy metals, and microorganisms. ML also enables real-time data processing for quick, accurate detection of trace-level contaminants. However, challenges remain in sensor calibration, data reliability, and the need for highquality training datasets. Future research should focus on enhancing sensor robustness, refining ML models for improved accuracy, and advancing the commercialization of ML-enhanced sensors for food safety monitoring.
引用
收藏
页数:17
相关论文
共 111 条
[31]   Demand forecasting with color parameter in retail apparel industry using artificial neural networks (ANN) and support vector machines (SVM) methods [J].
Guven, Ilker ;
Simsir, Fuat .
COMPUTERS & INDUSTRIAL ENGINEERING, 2020, 147
[32]  
Han J., 2022, Data mining: concepts and techniques
[33]   Progress of machine learning-based biosensors for the monitoring of food safety: A review [J].
Hassan, Md Mehedi ;
Xu, Yi ;
Sayada, Jannatul ;
Zareef, Muhammad ;
Shoaib, Muhammad ;
Chen, Xiaomei ;
Li, Huanhuan ;
Chen, Quansheng .
BIOSENSORS & BIOELECTRONICS, 2025, 267
[34]   Recent advancements of optical, electrochemical, and photoelectrochemical transducer-based microfluidic devices for pesticide and mycotoxins in food and water [J].
Hassan, Md Mehedi ;
Yi, Xu ;
Zareef, Muhammad ;
Li, Huanhuan ;
Chen, Quansheng .
TRENDS IN FOOD SCIENCE & TECHNOLOGY, 2023, 142
[35]   Enhanced electrochemical oxidation and machine learning-assisted sensing of tetrabromobisphenol A using activated carbon facilitated CoWO4 heterostructures [J].
Jawaid, Sana ;
Sharma, Bharat Prasad ;
Tumrani, Sadam Hussain ;
Abbas, Zaheer ;
Soomro, Razium Ali ;
Karakus, Selcan ;
Kucukdeniz, Tarik ;
Nafady, Ayman .
MATERIALS SCIENCE AND ENGINEERING B-ADVANCED FUNCTIONAL SOLID-STATE MATERIALS, 2024, 308
[36]   Machine learning: Trends, perspectives, and prospects [J].
Jordan, M. I. ;
Mitchell, T. M. .
SCIENCE, 2015, 349 (6245) :255-260
[37]   Mycotoxins detection in food using advanced, sensitive and robust electrochemical platform of sensors: A review [J].
Jubeen, Farhat ;
Batool, Alina ;
Naz, Iram ;
Sehar, Saira ;
Sadia, Haleema ;
Hayat, Akhtar ;
Kazi, Mohsin .
SENSORS AND ACTUATORS A-PHYSICAL, 2024, 367
[38]   Machine learning enabled onsite electrochemical detection of lidocaine using a microneedle array integrated screen printed electrode [J].
Kadian, Sachin ;
Sahoo, Siba Sundar ;
Kumari, Pratima ;
Narayan, Roger J. .
ELECTROCHIMICA ACTA, 2024, 475
[39]   Machine Learning Assisted Metal Oxide-Bismuth Oxy Halide Nanocomposite for Electrochemical Sensing of Heavy Metals in Aqueous Media [J].
Kailasam, Vijayalakshmi ;
Sankararajan, Radha ;
Kailasam, Muthumeenakshi ;
Suseela, Sreeja Balakrishnapillai .
CRYSTAL RESEARCH AND TECHNOLOGY, 2024, 59 (05)
[40]  
Karhunen J., 2015, Advances in Independent Component Analysis and Learning Machines, P125, DOI [10.1016/B978-0-12-802806-3.00007-5, DOI 10.1016/B978-0-12-802806-3.00007-5]