Zhu Xiaodong, Fowler Michael J, Wells Quinn S, Stafford John M, Gannon Maureen
Department of Veterans Affairs, Tennessee Valley Health Authority, Nashville, TN, USA.
Department of Medicine, Vanderbilt University Medical Center, Nashville, TN, USA.
BMC Endocr Disord. 2024 Dec 18;24(1):269. doi: 10.1186/s12902-024-01798-9.
Medications targeting the glucagon-like peptide-1 (GLP-1) pathway are an important therapeutic class currently used for the treatment of Type 2 diabetes (T2D). However, there is not enough known about which subgroups of patients would receive the most benefit from these medications.
The goal of this study was to develop a predictive model for patient responsiveness to medications, here collectively called GLP-1 M, that include GLP-1 receptor agonists and dipeptidyl peptidase-4 (DPP4) inhibitors (that normally degrade endogenously-produced GLP-1). Such a model could guide clinicians to consider certain patient characteristics when prescribing second line medications for T2D.
We analyzed de-identified electronic health records of 7856 subjects with T2D treated with GLP-1 M drugs at Vanderbilt University Medical Center from 2003-2019. Using common clinical features (including commonly ordered lab tests, demographic information, other T2D medications, and diabetes-associated complications), we compared four different models: logistic regression, LightGBM, artificial neural network (ANN), and support vector classifier (SVC).
Our analysis revealed that the traditional logistic regression model outperforms the other machine learning models, with an area under the Receiver Operating Characteristic curve (auROC) of 0.77.Our model showed that higher pre-treatment HbA1C is a dominant feature for predicting better response to GLP-1 M, while features such as use of thiazolidinediones or sulfonylureas is correlated with poorer response to GLP-1 M, as assessed by lowering of hemoglobin A1C (HbA1C), a standard marker of glycated hemoglobin used for assessing glycemic control in individuals with diabetes. Among female subjects under 40 taking GLP-1 M, the simultaneous use of non-steroidal anti-inflammatory drugs (NSAIDs) was associated with a greater reduction in HbA1C (0.82 ± 1.72% vs 0.28 ± 1.70%, p = 0.008).
These findings indicate a thorough analysis of real-world electronic health records could reveal new information to improve treatment decisions for the treatment of T2D. The predictive model developed in this study highlights the importance of considering individual patient characteristics and medication interactions when prescribing GLP-1 M drugs.
靶向胰高血糖素样肽-1(GLP-1)途径的药物是目前用于治疗2型糖尿病(T2D)的一类重要治疗药物。然而,对于哪些亚组患者能从这些药物中获益最多,我们了解得还不够。
本研究的目的是开发一种预测模型,用于预测患者对统称为GLP-1 M的药物(包括GLP-1受体激动剂和二肽基肽酶-4(DPP4)抑制剂,后者通常会降解内源性产生的GLP-1)的反应。这样的模型可以指导临床医生在为T2D患者开二线药物时考虑某些患者特征。
我们分析了范德比尔特大学医学中心2003年至2019年期间7856例接受GLP-1 M药物治疗的T2D患者的去识别电子健康记录。利用常见的临床特征(包括常用的实验室检查、人口统计学信息、其他T2D药物以及糖尿病相关并发症),我们比较了四种不同的模型:逻辑回归、LightGBM、人工神经网络(ANN)和支持向量分类器(SVC)。
我们的分析表明,传统的逻辑回归模型优于其他机器学习模型,受试者工作特征曲线下面积(auROC)为0.77。我们的模型显示,较高的治疗前糖化血红蛋白(HbA1C)是预测对GLP-1 M反应更好的主要特征,而噻唑烷二酮类或磺脲类药物的使用等特征与对GLP-1 M的反应较差相关,这是通过降低血红蛋白A1C(HbA1C)来评估的,HbA1C是用于评估糖尿病患者血糖控制的糖化血红蛋白的标准标志物。在40岁以下服用GLP-1 M的女性受试者中,同时使用非甾体抗炎药(NSAIDs)与HbA1C的更大降低相关(0.82±1.72%对0.28±1.70%,p = 0.008)。
这些发现表明,对真实世界电子健康记录的全面分析可以揭示新信息,以改善T2D的治疗决策。本研究中开发的预测模型强调了在开GLP-1 M药物时考虑个体患者特征和药物相互作用的重要性。