Yu Yueting, Cao Xin, Li Chenxi, Zhou Mingyue, Liu Tianyu, Liu Jiang, Zhang Lu
School of Pharmaceutical Sciences and Institute of Materia Medica, Xinjiang University, Urumqi 830017, China.
Key Laboratory of Xinjiang Phytomedicine Resources for Ministry of Education, School of Pharmacy, Shihezi University, Shihezi 832000, China.
Biosensors (Basel). 2025 Aug 20;15(8):548. doi: 10.3390/bios15080548.
Volatile organic compounds (VOCs) present in human exhaled breath have emerged as promising biomarkers for non-invasive disease diagnosis. However, traditional VOC detection technology that relies on large instruments is not widely used due to high costs and cumbersome testing processes. Machine learning-assisted gas sensor arrays offer a compelling alternative by enabling the accurate identification of complex VOC mixtures through collaborative multi-sensor detection and advanced algorithmic analysis. This work systematically reviews the advanced applications of machine learning-assisted gas sensor arrays in medical diagnosis. The types and principles of sensors commonly employed for disease diagnosis are summarized, such as electrochemical, optical, and semiconductor sensors. Machine learning methods that can be used to improve the recognition ability of sensor arrays are systematically listed, including support vector machines (SVM), random forests (RF), artificial neural networks (ANN), and principal component analysis (PCA). In addition, the research progress of sensor arrays combined with specific algorithms in the diagnosis of respiratory, metabolism and nutrition, hepatobiliary, gastrointestinal, and nervous system diseases is also discussed. Finally, we highlight current challenges associated with machine learning-assisted gas sensors and propose feasible directions for future improvement.
人体呼出气体中存在的挥发性有机化合物(VOCs)已成为非侵入性疾病诊断中颇具前景的生物标志物。然而,传统的依赖大型仪器的VOC检测技术由于成本高昂且测试过程繁琐而未得到广泛应用。机器学习辅助气体传感器阵列通过协作多传感器检测和先进的算法分析,能够准确识别复杂的VOC混合物,提供了一种引人注目的替代方案。这项工作系统地综述了机器学习辅助气体传感器阵列在医学诊断中的先进应用。总结了疾病诊断中常用传感器的类型和原理,如电化学、光学和半导体传感器。系统列出了可用于提高传感器阵列识别能力的机器学习方法,包括支持向量机(SVM)、随机森林(RF)、人工神经网络(ANN)和主成分分析(PCA)。此外,还讨论了传感器阵列结合特定算法在呼吸、代谢与营养、肝胆、胃肠和神经系统疾病诊断中的研究进展。最后,我们强调了机器学习辅助气体传感器目前面临的挑战,并提出了未来改进的可行方向。