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A risk score including body mass index, glycated haemoglobin and triglycerides predicts future glycaemic control in people with type 2 diabetes

机译:具有体重指数,糖化血红蛋白和甘油三酯的风险评分预测2型糖尿病的人们的未来血糖控制

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Aim To identify, predict and validate distinct glycaemic trajectories among patients with newly diagnosed type 2 diabetes treated in primary care, as a first step towards more effective patient‐centred care. Methods We conducted a retrospective study in two cohorts, using routinely collected individual patient data from primary care practices obtained from two large Dutch diabetes patient registries. Participants included adult patients newly diagnosed with type 2 diabetes between January 2006 and December 2014 (development cohort, n ?=?10?528; validation cohort, n ?=?3777). Latent growth mixture modelling identified distinct glycaemic 5‐year trajectories. Machine learning models were built to predict the trajectories using easily obtainable patient characteristics in daily clinical practice. Results Three different glycaemic trajectories were identified: (1) stable, adequate glycaemic control (76.5% of patients); (2) improved glycaemic control (21.3% of patients); and (3) deteriorated glycaemic control (2.2% of patients). Similar trajectories could be discerned in the validation cohort. Body mass index and glycated haemoglobin and triglyceride levels were the most important predictors of trajectory membership. The predictive model, trained on the development cohort, had a receiver‐operating characteristic area under the curve of 0.96 in the validation cohort, indicating excellent accuracy. Conclusions The developed model can effectively explain heterogeneity in future glycaemic response of patients with type 2 diabetes. It can therefore be used in clinical practice as a quick and easy tool to provide tailored diabetes care.
机译:目的旨在识别,预测和验证在初级保健中新诊断的2型糖尿病患者中的不同血糖轨迹,作为更有效的患者中心护理的第一步。方法我们对两位队列进行了回顾性研究,使用了从两种大型荷兰糖尿病患者注册管理机构获得的初级保健实践中常规收集的个体患者数据。参与者包括2006年1月至2014年1月至2014年12月之间新诊断为2型糖尿病的成年患者(开发队列,N?=?10?528;验证队员,N?=?3777)。潜在的生长混合物建模鉴定了明显的血糖5年轨迹。机器学习模型建立在日常临床实践中使用易于获得的患者特征来预测轨迹。结果鉴定了三种不同的血糖轨迹:(1)稳定,足够的血糖控制(76.5%的患者); (2)改善血糖控制(21.3%的患者); (3)恶化的血糖控制(2.2%的患者)。在验证队列中可以辨别类似的轨迹。体重指数和糖化血红蛋白和甘油三酯水平是轨迹成员最重要的预测因子。在开发队列上培训的预测模型在验证队列中的曲线下具有0.96的接收器操作特征区域,表示优异的精度。结论开发模型可以有效解释2型糖尿病患者的未来血糖反应中的异质性。因此,它可以用于临床实践中作为一种快速简便的工具,以提供量身定制的糖尿病护理。

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