Machine Learning Models for Nocturnal Hypoglycemia Prediction in Hospitalized Patients with Type 1 Diabetes

被引:13
作者
Berikov, Vladimir B. [1 ,2 ]
Kutnenko, Olga A. [2 ]
Semenova, Julia F. [1 ]
Klimontov, Vadim V. [1 ]
机构
[1] Russian Acad Sci, RICEL Branch IC & G SB RAS, Siberian Branch, Lab Endocrinol Res,Inst Clin & Expt Lymphol,Inst, Novosibirsk 630060, Russia
[2] Russian Acad Sci, Sobolev Inst Math, Lab Data Anal, Siberian Branch, Novosibirsk 630090, Russia
基金
俄罗斯科学基金会;
关键词
type; 1; diabetes; hypoglycemia; continuous glucose monitoring; machine learning; random forest; artificial neuron networks; prediction;
D O I
10.3390/jpm12081262
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Nocturnal hypoglycemia (NH) is a dangerous complication of insulin therapy that often goes undetected. In this study, we aimed to generate machine learning (ML)-based models for short-term NH prediction in hospitalized patients with type 1 diabetes (T1D). The models were trained on continuous glucose monitoring (CGM) data obtained from 406 adult patients admitted to a tertiary referral hospital. Eight CGM-derived metrics of glycemic control and glucose variability were included in the models. Combinations of CGM and clinical data (23 parameters) were also assessed. Random Forest (RF), Logistic Linear Regression with Lasso regularization, and Artificial Neuron Networks algorithms were applied. In our models, RF provided the best prediction accuracy with 15 min and 30 min prediction horizons. The addition of clinical parameters slightly improved the prediction accuracy of most models, whereas oversampling and undersampling procedures did not have significant effects. The areas under the curve of the best models based on CGM and clinical data with 15 min and 30 min prediction horizons were 0.97 and 0.942, respectively. Basal insulin dose, diabetes duration, proteinuria, and HbA1c were the most important clinical predictors of NH assessed by RF. In conclusion, ML is a promising approach to personalized prediction of NH in hospitalized patients with T1D.
引用
收藏
页数:11
相关论文
共 34 条
[1]  
Allen Kate V, 2003, Endocr Pract, V9, P530
[2]  
American Diabetes Association Healthy Living, HYP LOW BLOOD GLUC
[3]   Prediction of Nocturnal Hypoglycemia in Adults with Type 1 Diabetes under Multiple Daily Injections Using Continuous Glucose Monitoring and Physical Activity Monitor [J].
Bertachi, Arthur ;
Vinals, Clara ;
Biagi, Lyvia ;
Contreras, Ivan ;
Vehi, Josep ;
Conget, Ignacio ;
Gimenez, Marga .
SENSORS, 2020, 20 (06)
[4]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[5]   Repeated measures random forests (RMRF): Identifying factors associated with nocturnal hypoglycemia [J].
Calhoun, Peter ;
Levine, Richard A. ;
Fan, Juanjuan .
BIOMETRICS, 2021, 77 (01) :343-351
[6]  
Chawla NV, 2010, DATA MINING AND KNOWLEDGE DISCOVERY HANDBOOK, SECOND EDITION, P875, DOI 10.1007/978-0-387-09823-4_45
[7]   A Review of Predictive Low Glucose Suspend and Its Effectiveness in Preventing Nocturnal Hypoglycemia [J].
Chen, Ethan ;
King, Fraya ;
Kohn, Michael A. ;
Spanakis, Elias K. ;
Breton, Marc ;
Klonoff, David C. .
DIABETES TECHNOLOGY & THERAPEUTICS, 2019, 21 (10) :602-609
[8]   REDUCED AWARENESS OF HYPOGLYCEMIA IN ADULTS WITH IDDM - A PROSPECTIVE-STUDY OF HYPOGLYCEMIC FREQUENCY AND ASSOCIATED SYMPTOMS [J].
CLARKE, WL ;
COX, DJ ;
GONDERFREDERICK, LA ;
JULIAN, D ;
SCHLUNDT, D ;
POLONSKY, W .
DIABETES CARE, 1995, 18 (04) :517-522
[9]   International Consensus on Use of Continuous Glucose Monitoring [J].
Danne, Thomas ;
Nimri, Revital ;
Battelino, Tadej ;
Bergenstal, Richard M. ;
Close, Kelly L. ;
DeVries, J. Hans ;
Garg, Satish ;
Heinemann, Lutz ;
Hirsch, Irl ;
Amiel, Stephanie A. ;
Beck, Roy ;
Bosi, Emanuele ;
Buckingham, Bruce ;
Cobelli, Claudio ;
Dassau, Eyal ;
Doyle, Francis J., III ;
Heller, Simon ;
Hovorka, Roman ;
Jia, Weiping ;
Jones, Tim ;
Kordonouri, Olga ;
Kovatchev, Boris ;
Kowalski, Aaron ;
Laffel, Lori ;
Maahs, David ;
Murphy, Helen R. ;
Norgaard, Kirsten ;
Parkin, Christopher G. ;
Renard, Eric ;
Saboo, Banshi ;
Scharf, Mauro ;
Tamborlane, William V. ;
Weinzimer, Stuart A. ;
Phillip, Moshe .
DIABETES CARE, 2017, 40 (12) :1631-1640
[10]   Feature-Based Machine Learning Model for Real-Time Hypoglycemia Prediction [J].
Dave, Darpit ;
DeSalvo, Daniel J. ;
Haridas, Balakrishna ;
McKay, Siripoom ;
Shenoy, Akhil ;
Koh, Chester J. ;
Lawley, Mark ;
Erraguntla, Madhav .
JOURNAL OF DIABETES SCIENCE AND TECHNOLOGY, 2021, 15 (04) :842-855