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Artificial intelligence-driven electrochemical immunosensing biochips in multi-component detection.

Authors :
Zhao, Yuliang
Wang, Xiaoai
Sun, Tingting
Shan, Peng
Zhan, Zhikun
Zhao, Zhongpeng
Jiang, Yongqiang
Qu, Mingyue
Lv, Qingyu
Wang, Ying
Liu, Peng
Chen, Shaolong
Source :
Biomicrofluidics; Jul2023, Vol. 17 Issue 4, p1-14, 14p
Publication Year :
2023

Abstract

Electrochemical Immunosensing (EI) combines electrochemical analysis and immunology principles and is characterized by its simplicity, rapid detection, high sensitivity, and specificity. EI has become an important approach in various fields, such as clinical diagnosis, disease prevention and treatment, environmental monitoring, and food safety. However, EI multi-component detection still faces two major bottlenecks: first, the lack of cost-effective and portable detection platforms; second, the difficulty in eliminating batch differences and accurately decoupling signals from multiple analytes. With the gradual maturation of biochip technology, high-throughput analysis and portable detection utilizing the advantages of miniaturized chips, high sensitivity, and low cost have become possible. Meanwhile, Artificial Intelligence (AI) enables accurate decoupling of signals and enhances the sensitivity and specificity of multi-component detection. We believe that by evaluating and analyzing the characteristics, benefits, and linkages of EI, biochip, and AI technologies, we may considerably accelerate the development of EI multi-component detection. Therefore, we propose three specific prospects: first, AI can enhance and optimize the performance of the EI biochips, addressing the issue of multi-component detection for portable platforms. Second, the AI-enhanced EI biochips can be widely applied in home care, medical healthcare, and other areas. Third, the cross-fusion and innovation of EI, biochip, and AI technologies will effectively solve key bottlenecks in biochip detection, promoting interdisciplinary development. However, challenges may arise from AI algorithms that are difficult to explain and limited data access. Nevertheless, we believe that with technological advances and further research, there will be more methods and technologies to overcome these challenges. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
19321058
Volume :
17
Issue :
4
Database :
Complementary Index
Journal :
Biomicrofluidics
Publication Type :
Academic Journal
Accession number :
171343558
Full Text :
https://doi.org/10.1063/5.0160808