Wan Xin-Hao, Tao Qing, Wang Zi-Qian, Yang Dong-Yin, Zhong Zhi-Jian, Luo Xiao-Rong, Yang Ming, Wang Xue-Cheng, Wu Zhen-Feng
Key Laboratory of Modern Preparation of TCM,Ministry of Education,Jiangxi University of Chinese Medicine Nanchang 330004, China.
Jiangxi University of Chinese Medicine Nanchang 330004, China.
Zhongguo Zhong Yao Za Zhi. 2024 Dec;49(24):6541-6548. doi: 10.19540/j.cnki.cjcmm.20240903.301.
In recent years, with the increasing societal focus on drug quality and safety, quality issues have become a major challenge faced by the pharmaceutical industry, directly impacting consumer health and market trust. By combining multispectral imaging technology with machine learning, it is possible to achieve rapid, non-destructive, and precise detection of traditional Chinese medicine(TCM) preparations, thereby revolutionizing traditional detection methods and developing more convenient and automated solutions. This paper provides a comprehensive review of the current applications of rapid, non-destructive detection techniques based on machine learning algorithms in the field of TCM preparations. It analyzed the principles and advantages of commonly used rapid, non-destructive detection techniques, offering a reference for the application and promotion of these technologies in TCM preparation detection. Additionally, this paper explored various data preprocessing techniques, operational processes, and machine learning algorithms to enhance data utilization efficiency. Finally, it focused on the challenges of applying machine learning in TCM preparation detection and offered corresponding recommendations, providing guidance for the future integration of machine learning with rapid, non-destructive detection techniques in practical production.
近年来,随着社会对药品质量和安全的关注度不断提高,质量问题已成为制药行业面临的重大挑战,直接影响消费者健康和市场信任。通过将多光谱成像技术与机器学习相结合,可以实现对中药制剂的快速、无损和精确检测,从而彻底改变传统检测方法,开发出更便捷、自动化的解决方案。本文全面综述了基于机器学习算法的快速无损检测技术在中药制剂领域的当前应用。分析了常用快速无损检测技术的原理和优势,为这些技术在中药制剂检测中的应用和推广提供参考。此外,本文还探讨了各种数据预处理技术、操作流程和机器学习算法,以提高数据利用效率。最后,聚焦机器学习在中药制剂检测应用中的挑战并给出相应建议,为未来机器学习与快速无损检测技术在实际生产中的融合提供指导。