使用数据科学方法对体质类型特异性个性化草药进行化合物水平的鉴定。
Compound-level identification of sasang constitution type-specific personalized herbal medicine using data science approach.
作者信息
Park Sa-Yoon, Kim Young Woo, Song Yu Rim, Bak Seon Been, Jang Young Pyo, Kim Il-Kon, Kim Ji-Hwan, Kim Chang-Eop
机构信息
Department of Physiology, College of Korean Medicine, Gachon University, Seongnam, 13120, Republic of Korea.
Department of Computer Science and Engineering, Kyungpook National University, Daegu, 41566, Republic of Korea.
出版信息
Heliyon. 2023 Feb 13;9(2):e13692. doi: 10.1016/j.heliyon.2023.e13692. eCollection 2023 Feb.
INTRODUCTION
Sasang Constitutional Medicine (SCM) is a type of traditional Korean medicine where patients are classified as one of four Sasang constitution types (Sasang type) and medications consisting of medicinal herbs are prescribed according to the Sasang type. Despite the importance of personalized medicine, the operation mechanism is largely unknown. To gain a better understanding, we investigated the compound information that composes Sasang type-specific personalized herbal medicines on both multivariate and univariate levels.
METHODS
Five machine learning classifiers including extremely randomized trees (ERT) were trained to investigate whether the Sasang type can be explained by compound information at the multivariate level. Hierarchical clustering was conducted to determine whether compounds are processed distributedly or specifically. Taxonomic and biosynthetic analyses were conducted on these compounds. A univariate level statistical test was conducted to provide more robust Sasang type-specific compound information.
RESULTS
Using the trained ERT classifier, sixty important compounds were extracted. The sixty compounds were clustered into three groups, corresponding to each Sasang type-prominent compounds, suggesting that most compounds have specific preference for the Sasang type. Structural and biosynthetic characteristics of these Sasang type-prominent compounds were determined based on taxonomy and pathway analyses. Fourteen compounds showed statistically significant relevance with the Sasang type. Additionally, we predicted the Sasang type of unknown herbs, which were confirmed by their biological effects in functional assays.
CONCLUSION
This study investigated the personalized herbal medicines of the SCM using compound information. This study provided information on the chemical characteristics of the compounds that are essential for classifying the Sasang type of medicinal herbs, as well as predictions regarding the Sasang type of the commonly used but unidentified medicinal herbs.
引言
四象体质医学是传统韩医学的一种,根据患者的体质将其分为四种四象体质类型之一,并依据四象体质类型开具草药配方。尽管个性化医疗十分重要,但其作用机制仍 largely 未知。为了更好地理解,我们在多变量和单变量层面上研究了构成四象体质特定个性化草药的化合物信息。
方法
训练包括极端随机树(ERT)在内的五种机器学习分类器,以研究在多变量层面上四象体质类型是否可由化合物信息解释。进行层次聚类以确定化合物是分布式处理还是特异性处理。对这些化合物进行分类学和生物合成分析。进行单变量层面的统计检验,以提供更可靠的四象体质特定化合物信息。
结果
使用训练好的ERT分类器,提取了60种重要化合物。这60种化合物被聚类为三组,对应于每种四象体质突出的化合物,表明大多数化合物对四象体质类型有特定偏好。基于分类学和途径分析确定了这些四象体质突出化合物的结构和生物合成特征。14种化合物与四象体质类型具有统计学上的显著相关性。此外,我们预测了未知草药的四象体质类型,并通过功能测定中的生物学效应得到证实。
结论
本研究使用化合物信息研究了四象体质医学的个性化草药。本研究提供了对分类草药四象体质至关重要的化合物的化学特征信息,以及对常用但未鉴定的草药的四象体质类型的预测。
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