回顾--机器学习驱动的电化学传感技术进步:地平线扫描

IF 3.1 4区 工程技术 Q2 ELECTROCHEMISTRY Journal of The Electrochemical Society Pub Date : 2024-09-03 DOI:10.1149/1945-7111/ad6b4a
Kaviya Murugan, Karnan Gopalakrishnan, Kogularasu Sakthivel, Sakthinathan Subramanian, I-Cheng Li, Yen-Yi Lee, Te-Wei Chiu, Guo-Ping Chang-Chien
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引用次数: 0

摘要

机器学习(ML)与电化学传感的蓬勃发展预示着分析科学进入了一个变革性的时代,以前所未有的精度和效率推动了化学物质检测和量化的发展。这种融合加速了一系列发现,提高了电化学传感器的灵敏度、选择性和实时理解复杂数据流的能力。从监测健康生物标志物到检测环境污染物和确保工业安全,这些进步在各种应用中都至关重要。然而,这种整合并非没有挑战;它需要驾驭数据使用方面错综复杂的道德考量,确保强有力的数据隐私措施,以及开发兼顾可访问性和安全性的专业软件工具。随着该领域的不断进步,正面应对这些挑战对于充分发挥 ML 增强电化学传感的潜力至关重要。本综述简要探讨了这些方面的问题,重点介绍了重大的技术进步、伦理状况以及开源和专有软件解决方案之间的动态相互作用,同时还展望了这一跨学科事业充满希望的未来发展方向。
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Review—Machine Learning-Driven Advances in Electrochemical Sensing: A Horizon Scan
The burgeoning intersection of machine learning (ML) with electrochemical sensing heralds a transformative era in analytical science, pushing the boundaries of what’s possible in detecting and quantifying chemical substances with unprecedented precision and efficiency. This convergence has accelerated a number of discoveries, improving electrochemical sensors’ sensitivity, selectivity, and ability to comprehend complicated data streams in real-time. Such advancements are crucial across various applications, from monitoring health biomarkers to detecting environmental pollutants and ensuring industrial safety. Yet, this integration is not without its challenges; it necessitates navigating intricate ethical considerations around data use, ensuring robust data privacy measures, and developing specialized software tools that balance accessibility and security. As the field progresses, addressing these challenges head-on is essential for harnessing the full potential of ML-enhanced electrochemical sensing. This review briefly explores these dimensions, spotlighting the significant technological strides, the ethical landscape, and the dynamic interplay between open-source and proprietary software solutions while also casting a forward gaze at the promising future directions of this interdisciplinary venture.
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来源期刊
CiteScore
7.20
自引率
12.80%
发文量
1369
审稿时长
1.5 months
期刊介绍: The Journal of The Electrochemical Society (JES) is the leader in the field of solid-state and electrochemical science and technology. This peer-reviewed journal publishes an average of 450 pages of 70 articles each month. Articles are posted online, with a monthly paper edition following electronic publication. The ECS membership benefits package includes access to the electronic edition of this journal.
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