Liu Jinjin, Chen Xinyu, Diao Qiaoqiao, Tang Zheng, Niu Xiangheng
School of Public Health, Hengyang Medical School, University of South China, Hengyang 421001, China.
The First Affiliated Hospital, Hengyang Medical School, University of South China, Hengyang 421001, China.
Biosensors (Basel). 2025 May 29;15(6):344. doi: 10.3390/bios15060344.
In the past decade, nanozymes have been attracting increasing interest in academia due to their stable performance, low cost, and easy modification. With the catalytic signal amplification feature, nanozymes not only find wide use in traditional "lock-and-key" single-target detection but hold great potential in high-throughput multiobjective analysis via fabricating sensor arrays. In particular, the rise of machine learning in recent years has greatly advanced the design, construction, signal processing, and utilization of sensor arrays. The constructive collaboration of nanozymes, sensor arrays, and machine learning is accelerating the development of biochemical sensors. To highlight the emerging field, in this minireview, we created a concise summary of machine-learning-assisted nanozyme-based sensor arrays. First, the construction of nanozyme-involved sensor arrays is introduced from several aspects, including nanozyme materials and activities, sensing variables, and signal outputs. Then, the roles of machine learning in signal treatment, information extraction, and outcome feedback are emphasized. Afterwards, typical applications of machine-learning-assisted nanozyme-involved sensor arrays in environmental detection, food analysis, and biomedical sensing are discussed. Finally, the promise of machine-learning-assisted nanozyme-based sensor arrays in biochemical sensing is highlighted, and some future trends are also pointed out to attract more interest and effort to promote the emerging field for better practical use.
在过去十年中,纳米酶因其性能稳定、成本低且易于修饰而在学术界引起了越来越多的关注。凭借催化信号放大特性,纳米酶不仅在传统的“锁钥”单目标检测中得到广泛应用,而且在通过构建传感器阵列进行高通量多目标分析方面具有巨大潜力。特别是,近年来机器学习的兴起极大地推动了传感器阵列的设计、构建、信号处理和应用。纳米酶、传感器阵列和机器学习之间的建设性合作正在加速生物化学传感器的发展。为了突出这一新兴领域,在本综述中,我们对基于机器学习辅助的纳米酶传感器阵列进行了简要总结。首先,从纳米酶材料与活性、传感变量和信号输出等几个方面介绍了涉及纳米酶的传感器阵列的构建。然后,强调了机器学习在信号处理、信息提取和结果反馈中的作用。之后,讨论了机器学习辅助的涉及纳米酶的传感器阵列在环境检测、食品分析和生物医学传感中的典型应用。最后,突出了基于机器学习辅助的纳米酶传感器阵列在生物化学传感中的前景,并指出了一些未来趋势,以吸引更多关注和努力来推动这一新兴领域更好地实际应用。