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整合生物标志物分析预测 2 型糖尿病患者对二甲双胍的应答。

Integrated biomarker profiling for predicting the response of type 2 diabetes to metformin.

机构信息

Beijing Institute of Clinical Pharmacy, Beijing Friendship Hospital, Capital Medical University, Beijing, China.

出版信息

Diabetes Obes Metab. 2024 Aug;26(8):3439-3447. doi: 10.1111/dom.15689. Epub 2024 Jun 3.

Abstract

AIM

To explore biomarkers that can predict the response of type 2 diabetes (T2D) patients to metformin at an early stage to provide better treatment for T2D.

METHODS

T2D patients with (responders) or without response (non-responders) to metformin were recruited, and their serum samples were used for metabolomic analysis to identify candidate biomarkers. Moreover, the efficacy of metformin was verified by insulin-resistant mice, and the candidate biomarkers were verified to determine the biomarkers. Five different machine learning methods were used to construct the integrated biomarker profiling (IBP) with the biomarkers to predict the response of T2D patients to metformin.

RESULTS

A total of 73 responders and 63 non-responders were recruited, and 88 differential metabolites were identified in the serum samples. After being verified in mice, 19 of the 88 were considered as candidate biomarkers. Next, after metformin regulation, nine candidate biomarkers were confirmed as the biomarkers. After comparing five machine learning models, the nine biomarkers were constructed into the IBP for predicting the response of T2D patients to metformin based on the Naïve Bayes classifier, which was verified with an accuracy of 89.70%.

CONCLUSIONS

The IBP composed of nine biomarkers can be used to predict the response of T2D patients to metformin, enabling clinicians to start a combined medication strategy as soon as possible if T2D patients do not respond to metformin.

摘要

目的

探索能够在早期预测 2 型糖尿病(T2D)患者对二甲双胍反应的生物标志物,为 T2D 提供更好的治疗方法。

方法

招募对二甲双胍有反应(应答者)或无反应(无应答者)的 T2D 患者,并用其血清样本进行代谢组学分析以鉴定候选生物标志物。此外,通过胰岛素抵抗小鼠验证二甲双胍的疗效,并验证候选生物标志物以确定生物标志物。使用五种不同的机器学习方法,构建包含生物标志物的综合生物标志物分析(IBP),以预测 T2D 患者对二甲双胍的反应。

结果

共招募了 73 名应答者和 63 名无应答者,在血清样本中鉴定出 88 个差异代谢物。在小鼠中验证后,认为 88 个中有 19 个是候选生物标志物。接下来,在二甲双胍调节后,有 9 个候选生物标志物被确认为生物标志物。在比较了五种机器学习模型后,基于朴素贝叶斯分类器,将这 9 个生物标志物构建成用于预测 T2D 患者对二甲双胍反应的 IBP,其验证准确率为 89.70%。

结论

由 9 个生物标志物组成的 IBP 可用于预测 T2D 患者对二甲双胍的反应,如果 T2D 患者对二甲双胍无反应,临床医生可以尽快开始联合用药策略。

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