机器学习应用于药用植物多源数据的最新趋势。
Recent trends of machine learning applied to multi-source data of medicinal plants.
作者信息
Zhang Yanying, Wang Yuanzhong
机构信息
Medicinal Plants Research Institute, Yunnan Academy of Agricultural Sciences, Kunming, 650200, China.
College of Traditional Chinese Medicine, Yunnan University of Chinese Medicine, Kunming, 650500, China.
出版信息
J Pharm Anal. 2023 Dec;13(12):1388-1407. doi: 10.1016/j.jpha.2023.07.012. Epub 2023 Jul 25.
In traditional medicine and ethnomedicine, medicinal plants have long been recognized as the basis for materials in therapeutic applications worldwide. In particular, the remarkable curative effect of traditional Chinese medicine during corona virus disease 2019 (COVID-19) pandemic has attracted extensive attention globally. Medicinal plants have, therefore, become increasingly popular among the public. However, with increasing demand for and profit with medicinal plants, commercial fraudulent events such as adulteration or counterfeits sometimes occur, which poses a serious threat to the clinical outcomes and interests of consumers. With rapid advances in artificial intelligence, machine learning can be used to mine information on various medicinal plants to establish an ideal resource database. We herein present a review that mainly introduces common machine learning algorithms and discusses their application in multi-source data analysis of medicinal plants. The combination of machine learning algorithms and multi-source data analysis facilitates a comprehensive analysis and aids in the effective evaluation of the quality of medicinal plants. The findings of this review provide new possibilities for promoting the development and utilization of medicinal plants.
在传统医学和民族医学中,药用植物长期以来一直被视为全球治疗应用中药物材料的基础。特别是,在2019年冠状病毒病(COVID-19)大流行期间,中药显著的治疗效果引起了全球广泛关注。因此,药用植物在公众中越来越受欢迎。然而,随着对药用植物需求和利润的增加,有时会发生掺假或假冒等商业欺诈事件,这对临床疗效和消费者利益构成了严重威胁。随着人工智能的快速发展,机器学习可用于挖掘各种药用植物的信息,以建立理想的资源数据库。我们在此发表一篇综述,主要介绍常见的机器学习算法,并讨论它们在药用植物多源数据分析中的应用。机器学习算法与多源数据分析的结合有助于进行全面分析,并有助于有效评估药用植物的质量。本综述的结果为促进药用植物的开发利用提供了新的可能性。