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基于人体代谢物信息的天然产物治疗效果的系统鉴定方法。

A systematic approach to identify therapeutic effects of natural products based on human metabolite information.

机构信息

Bio-Synergy Research Center, Daejeon, 34141, South Korea.

Department of Bio and Brain Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon, 34141, South Korea.

出版信息

BMC Bioinformatics. 2018 Jun 13;19(Suppl 8):205. doi: 10.1186/s12859-018-2196-0.

Abstract

BACKGROUND

Natural products have been widely investigated in the drug development field. Their traditional use cases as medicinal agents and their resemblance of our endogenous compounds show the possibility of new drug development. Many researchers have focused on identifying therapeutic effects of natural products, yet the resemblance of natural products and human metabolites has been rarely touched.

METHODS

We propose a novel method which predicts therapeutic effects of natural products based on their similarity with human metabolites. In this study, we compare the structure, target and phenotype similarities between natural products and human metabolites to capture molecular and phenotypic properties of both compounds. With the generated similarity features, we train support vector machine model to identify similar natural product and human metabolite pairs. The known functions of human metabolites are then mapped to the paired natural products to predict their therapeutic effects.

RESULTS

With our selected three feature sets, structure, target and phenotype similarities, our trained model successfully paired similar natural products and human metabolites. When applied to the natural product derived drugs, we could successfully identify their indications with high specificity and sensitivity. We further validated the found therapeutic effects of natural products with the literature evidence.

CONCLUSIONS

These results suggest that our model can match natural products to similar human metabolites and provide possible therapeutic effects of natural products. By utilizing the similar human metabolite information, we expect to find new indications of natural products which could not be covered by previous in silico methods.

摘要

背景

天然产物在药物开发领域得到了广泛的研究。它们作为药物的传统用途及其与我们内源性化合物的相似性表明了开发新药的可能性。许多研究人员专注于识别天然产物的治疗效果,但天然产物与人体代谢物的相似性很少被涉及。

方法

我们提出了一种新的方法,基于天然产物与人体代谢物的相似性来预测其治疗效果。在这项研究中,我们比较了天然产物和人体代谢物的结构、靶点和表型相似性,以捕捉这两种化合物的分子和表型特性。利用生成的相似性特征,我们训练支持向量机模型来识别相似的天然产物和人体代谢物对。然后将人体代谢物的已知功能映射到配对的天然产物上,以预测其治疗效果。

结果

通过我们选择的三个特征集——结构、靶点和表型相似性,我们训练的模型成功地将相似的天然产物和人体代谢物配对。当应用于天然产物衍生药物时,我们能够以较高的特异性和灵敏度成功识别其适应证。我们进一步用文献证据验证了天然产物的治疗效果。

结论

这些结果表明,我们的模型可以将天然产物与相似的人体代谢物相匹配,并提供天然产物的可能治疗效果。通过利用相似的人体代谢物信息,我们期望找到天然产物的新适应证,而这些适应证以前的计算方法无法涵盖。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/91f7/5998763/ecb08e30fbbc/12859_2018_2196_Fig1_HTML.jpg

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