Bosnyak Zsolt, Zhou Fang Liz, Jimenez Javier, Berria Rachele
Sanofi, Paris, France.
Sanofi, Bridgewater, NJ, USA.
Diabetes Ther. 2019 Apr;10(2):605-615. doi: 10.1007/s13300-019-0567-9. Epub 2019 Feb 14.
Hypoglycemia remains a global burden and a limiting factor in the glycemic management of people with diabetes using basal insulins or oral antihyperglycemic drugs. Hypoglycemia data gleaned from randomized controlled trials (RCTs) have limited generalizability, as the strict RCT methodology and inclusion criteria do not fully reflect the real-world clinical picture. Therefore, real-world evidence, gathered from sources including electronic health records (EHR), is increasingly recognized as an important adjunct to RCTs.
The LIGHTNING study applied advanced analytical methods, including machine learning (ML), to EHR data. The study aimed to predict hypoglycemic event rates in patients with type 2 diabetes (T2DM) receiving different basal insulin treatments to identify potential subgroups of patients who are at lower risk of hypoglycemia when treated with one basal insulin compared with another and to predict hypoglycemia-related cost savings in these subgroups. Here we provide an overview of the objectives, study design and methods, and validation approaches used in the LIGHTNING study.
It is hoped that results of the LIGHTNING study will help facilitate real-world clinical decision-making in addition to providing a clinically relevant predictive model of hypoglycemia risk.
Sanofi.
低血糖仍然是一个全球性负担,并且是使用基础胰岛素或口服降糖药的糖尿病患者血糖管理中的一个限制因素。从随机对照试验(RCT)中收集的低血糖数据的普遍性有限,因为严格的RCT方法和纳入标准不能完全反映真实世界的临床情况。因此,从包括电子健康记录(EHR)在内的来源收集的真实世界证据越来越被认为是RCT的重要补充。
LIGHTNING研究将包括机器学习(ML)在内的先进分析方法应用于EHR数据。该研究旨在预测接受不同基础胰岛素治疗的2型糖尿病(T2DM)患者的低血糖事件发生率,以确定与接受另一种基础胰岛素治疗相比,接受一种基础胰岛素治疗时低血糖风险较低的潜在患者亚组,并预测这些亚组中与低血糖相关的成本节约。在此,我们概述了LIGHTNING研究中使用的目标、研究设计与方法以及验证方法。
希望LIGHTNING研究的结果除了提供一个具有临床相关性的低血糖风险预测模型外,还将有助于促进真实世界的临床决策。
赛诺菲。