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基于 Q 标志物的中药精准疗效测定策略:以黄芪为例的抗癌疗效。

A precise efficacy determination strategy of traditional Chinese herbs based on Q-markers: Anticancer efficacy of Astragali radix as a case.

机构信息

Key Laboratory of TCM-information Engineer of State Administration of TCM, School of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing 102488, China.

Key Laboratory of TCM-information Engineer of State Administration of TCM, School of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing 102488, China.

出版信息

Phytomedicine. 2022 Jul 20;102:154155. doi: 10.1016/j.phymed.2022.154155. Epub 2022 May 10.

Abstract

BACKGROUND

As a "multi-components and multi-efficacy" complex system, traditional Chinese herbs are universally distributed and applied in treating clinical diseases. However, the efficacy deviation and ambiguous clinical location are affected by different effects and content of components caused by uncertain factors in the production process. It further restricts resource allocation and clinical medication and hinders modernization and globalization. In this study, a precise efficacy determination strategy was innovatively proposed, aiming to quantitatively predict the efficacy of herbs and obtain precise medicinal materials. Quality-markers (Q-markers) characterizing the efficacy are conducive to achieving precise efficacy determination.

PURPOSE

With the anticancer efficacy of Astragali radix (AR) as a case, the present study was designed to establish a methodology for precise efficacy determination based on Q-markers characterizing specific efficacy.

METHODS

Guided by the basic principles of Q-markers, the potential Q-markers characterizing the anticancer efficacy of AR were screened through molecular simulation and network pharmacology. The activity of Q-markers was evaluated on MDA-MB-231 cells, and the content of Q-markers was determined by HPLC. A quantitative efficacy prediction model of the relationship between the influencing factors and anticancer efficacy was further constructed through the effect-constituents index (ECI) and machine learning and verified by biotechnology, which can be directly applied to predict the efficacy in numerous samples.

RESULTS

Astragaloside I, astragaloside II, and astragaloside III inhibited the proliferation of MDA-MB-231 cells and were successfully quantified in AR samples, reflecting the effectiveness and measurability of Q-markers. Gradient Boost Regression showed the best performance in the quantitative efficacy prediction model with EV= 0.815, R= 0.802. The results of precise efficacy determination indicated that 1-2-3 (Wuzhai, Shanxi, two years, C segment) sample performed best in 54 batches of AR samples with biased anticancer efficacy. Furthermore, AR samples with higher ECI had higher anticancer efficacy and vice versa.

CONCLUSION

The precise efficacy determination strategy established in the present study is reliable and proved in the AR case, which is expected to support resource allocation optimization, efficacy stability improvement, and precise clinical medication achievement.

摘要

背景

作为一个“多成分、多功效”的复杂系统,中药在治疗临床疾病方面普遍分布和应用。然而,由于生产过程中不确定因素导致的成分功效偏差和临床定位不明确,进一步限制了资源配置和临床用药,阻碍了现代化和全球化。本研究创新性地提出了一种精确功效测定策略,旨在定量预测草药的功效,获得精确的药材。质量标志物(Q-标志物)是药效的特征,有利于实现精确功效测定。

目的

以黄芪(AR)的抗癌功效为例,本研究旨在建立一种基于特征特定功效的 Q-标志物的精确功效测定方法。

方法

在 Q-标志物基本原理的指导下,通过分子模拟和网络药理学筛选出特征 AR 抗癌功效的潜在 Q-标志物。在 MDA-MB-231 细胞上评价 Q-标志物的活性,并通过 HPLC 测定 Q-标志物的含量。通过效应-成分指数(ECI)和机器学习进一步构建影响因素与抗癌功效关系的定量功效预测模型,并通过生物技术进行验证,可直接应用于预测大量样本的功效。

结果

黄芪甲苷 I、黄芪甲苷 II 和黄芪甲苷 III 抑制 MDA-MB-231 细胞增殖,并成功定量检测到 AR 样品中,反映了 Q-标志物的有效性和可测性。梯度提升回归在定量功效预测模型中表现出最好的性能,EV=0.815,R=0.802。精确功效测定结果表明,在 54 批具有偏抗癌功效的 AR 样品中,1-2-3(山西武寨,两年,C 段)样品表现最佳。此外,ECI 较高的 AR 样品具有较高的抗癌功效,反之亦然。

结论

本研究建立的精确功效测定策略在 AR 案例中是可靠的,并得到了验证,有望支持资源配置优化、功效稳定性提高和精确临床用药的实现。

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