Predictive Modeling of Hypoglycemia Risk with Basal Insulin Use in Type 2 Diabetes: Use of Machine Learning in the LIGHTNING Study

被引:7
作者
Bosnyak, Zsolt [1 ]
Zhou, Fang Liz [2 ]
Jimenez, Javier [2 ]
Berria, Rachele [2 ]
机构
[1] Sanofi, Paris, France
[2] Sanofi, Bridgewater, NJ USA
关键词
Hypoglycemia; Insulin degludec; Insulin detemir; Insulin glargine 100U; ml; Insulin glargine 300U; Machine learning; Predictive modeling; Type; 2; diabetes; REAL-WORLD EVIDENCE; BOOTSTRAP; RATES;
D O I
10.1007/s13300-019-0567-9
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
IntroductionHypoglycemia 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.Aims and methodsThe 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.ConclusionIt 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.FundingSanofi.
引用
收藏
页码:605 / 615
页数:11
相关论文
共 23 条
  • [1] Glucose concentrations of less than 3.0 mmol/l (54 mg/dl) should be reported in clinical trials: a joint position statement of the American Diabetes Association and the Europian Association for the Study of Diabetes
    Amiel, Stephanie A.
    Aschner, Pablo
    Childs, Belinda
    Cryer, Philip E.
    de Galan, Bastiaan E.
    Heller, Simon R.
    Frier, Brian M.
    Gonder-Frederick, Linda
    Jones, Timothy
    Khunti, Kamlesh
    Leiter, Lawrence A.
    McCrimmon, Rory J.
    Luo, Yingying
    Seaquist, Elizabeth R.
    Vigersky, Robert
    Zoungas, Sophia
    [J]. DIABETOLOGIA, 2017, 60 (01) : 3 - 6
  • [2] [Anonymous], MACH LEARN MACH LEARN
  • [3] Unintended Consequences of Machine Learning in Medicine
    Cabitza, Federico
    Rasoini, Raffaele
    Gensini, Gian Franco
    [J]. JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2017, 318 (06): : 517 - 518
  • [4] Cryer Philip E, 2008, Endocr Pract, V14, P750
  • [5] DiCiccio TJ, 1996, STAT SCI, V11, P189
  • [6] EFRON B, 1981, BIOMETRIKA, V68, P589, DOI 10.1093/biomet/68.3.589
  • [7] Estimation and Accuracy After Model Selection
    Efron, Bradley
    [J]. JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2014, 109 (507) : 991 - 1007
  • [8] Hypoglycemia Event Rates: A Comparison Between Real-World Data and Randomized Controlled Trial Populations in Insulin-Treated Diabetes
    Elliott, Lisa
    Fidler, Carrie
    Ditchfield, Andrea
    Stissing, Trine
    [J]. DIABETES THERAPY, 2016, 7 (01) : 45 - 60
  • [9] Embrechts MJ., 2013, ADV INTELLIGENT SIGN, V410, DOI [DOI 10.1007/978-3-642-28696-4_8, 10.1007/978-3-642-28696-4_8]
  • [10] Validation of ICD-9-CM coding algorithm for improved identification of hypoglycemia visits
    Ginde A.A.
    Blanc P.G.
    Lieberman R.M.
    Camargo Jr. C.A.
    [J]. BMC Endocrine Disorders, 8 (1)