A machine learning model to predict therapeutic inertia in type 2 diabetes using electronic health record data

被引:1
|
作者
Mcdaniel, C. C. [1 ]
Lo-Ciganic, W. -h. [2 ,3 ,4 ,5 ]
Huang, J. [2 ]
Chou, C. [1 ,6 ]
机构
[1] Auburn Univ, Harrison Coll Pharm, Dept Hlth Outcomes Res & Policy, 4306 Walker Bldg, Auburn, AL 36849 USA
[2] Univ Florida, Coll Pharm, Dept Pharmaceut Outcomes & Policy, Gainesville, FL USA
[3] Univ Pittsburgh, Sch Med, Div Gen Internal Med, Pittsburgh, PA USA
[4] Univ Pittsburgh, Ctr Pharmaceut Policy & Prescribing, Pittsburgh, PA USA
[5] Geriatr Res Educ & Clin Ctr, North Florida South Georgia Vet Hlth Syst, Gainesville, FL USA
[6] China Med Univ Hosp, Dept Med Res, Taichung, Taiwan
关键词
Type; 2; diabetes; Machine learning; Prescribing behaviors; Social determinants of health; Therapeutic inertia; Treatment intensification; A1C GOAL ATTAINMENT; CLINICAL INERTIA; TREATMENT INTENSIFICATION; POPULATION; TIME;
D O I
10.1007/s40618-023-02259-1
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Objective To estimate the therapeutic inertia prevalence for patients with type 2 diabetes, develop and validate a machine learning model predicting therapeutic inertia, and determine the added predictive value of area-level social determinants of health (SDOH).Methods This prognostic study with a retrospective cohort design used OneFlorida data (linked electronic health records (EHRs) from 1240 practices/clinics in Florida). The study cohort included adults (aged >= 18) with type 2 diabetes, HbA1C >= 7% (53 mmol/mol), >= one ambulatory visit, and >= one antihyperglycemic medication prescribed (excluded patients prescribed insulin before HbA1C). The outcome was therapeutic inertia, defined as absence of treatment intensification within six months after HbA1C >= 7% (53 mmol/mol). The predictors were patient, provider, and healthcare system factors. Machine learning methods included gradient boosting machines (GBM), random forests (RF), elastic net (EN), and least absolute shrinkage and selection operator (LASSO). The DeLong test compared the discriminative ability (represented by C-statistics) between models.Results The cohort included 31,087 patients with type 2 diabetes (mean age = 58.89 (SD = 13.27) years, 50.50% male, 58.89% White). The therapeutic inertia prevalence was 39.80% among the 68,445 records. GBM outperformed (C-statistic from testing sample = 0.84, 95% CI = 0.83-0.84) RF (C-statistic = 0.80, 95% CI = 0.79-0.80), EN (C-statistic = 0.80, 95% CI = 0.80-0.81), and LASSO (C-statistic = 0.80, 95% CI = 0.80-0.81), p < 0.05. Area-level SDOH significantly increased the discriminative ability versus models without SDOH (C-statistic for GBM = 0.84, 95% CI = 0.84-0.85 vs. 0.84, 95% CI = 0.83-0.84), p < 0.05.Conclusions Using EHRs of patients with type 2 diabetes from a large state, machine learning predicted therapeutic inertia (prevalence = 40%). The model's ability to predict patients at high risk of therapeutic inertia is clinically applicable to diabetes care.
引用
收藏
页码:1419 / 1433
页数:15
相关论文
共 50 条
  • [21] Using electronic health records to develop and validate a machine-learning tool to predict type 2 diabetes outcomes: a study protocol
    Neves, Ana Luisa
    Rodrigues, Pedro Pereira
    Mulla, Abdulrahim
    Glampson, Ben
    Willis, Tony
    Darzi, Ara
    Mayer, Erik
    [J]. BMJ OPEN, 2021, 11 (07):
  • [22] Development and validation of machine learning models to predict MDRO colonization or infection on ICU admission by using electronic health record data
    Li, Yun
    Cao, Yuan
    Wang, Min
    Wang, Lu
    Wu, Yiqi
    Fang, Yuan
    Zhao, Yan
    Fan, Yong
    Liu, Xiaoli
    Liang, Hong
    Yang, Mengmeng
    Yuan, Rui
    Zhou, Feihu
    Zhang, Zhengbo
    Kang, Hongjun
    [J]. ANTIMICROBIAL RESISTANCE AND INFECTION CONTROL, 2024, 13 (01):
  • [23] Use of Machine Learning to Accurately Predict Adverse Events in Patients with Peripheral Artery Disease Using Electronic Health Record Data
    Ross, Elsie G.
    Shah, Nigam
    Leeper, Nicholas
    [J]. VASCULAR MEDICINE, 2016, 21 (03) : 290 - 290
  • [24] Use of Machine Learning to Accurately Predict Adverse Events in Patients With Peripheral Artery Disease Using Electronic Health Record Data
    Ross, Elsie G.
    Leeper, Nicholas
    Shah, Nigam
    [J]. ARTERIOSCLEROSIS THROMBOSIS AND VASCULAR BIOLOGY, 2016, 36
  • [25] Machine learning functional impairment classification with electronic health record data
    Pavon, Juliessa M.
    Previll, Laura
    Woo, Myung
    Henao, Ricardo
    Solomon, Mary
    Rogers, Ursula
    Olson, Andrew
    Fischer, Jonathan
    Leo, Christopher
    Fillenbaum, Gerda
    Hoenig, Helen
    Casarett, David
    [J]. JOURNAL OF THE AMERICAN GERIATRICS SOCIETY, 2023, 71 (09) : 2822 - 2833
  • [26] Development of a Machine Learning Model Using Electronic Health Record Data to Identify Antibiotic Use Among Hospitalized Patients
    Moehring, Rebekah W.
    Phelan, Matthew
    Lofgren, Eric
    Nelson, Alicia
    Dodds Ashley, Elizabeth
    Anderson, Deverick J.
    Goldstein, Benjamin A.
    [J]. JAMA NETWORK OPEN, 2021, 4 (03)
  • [27] DEVELOPMENT OF A PREDICTION MODEL FOR INCIDENT MYOCARDIAL INFARCTION USING MACHINE LEARNING APPLIED TO HARMONIZED ELECTRONIC HEALTH RECORD DATA
    Mandair, Divneet
    Tiwari, Premanand
    Simon, Steven
    Rosenberg, Michael
    [J]. JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 2020, 75 (11) : 194 - 194
  • [28] Predicting Intensive Care Unit Readmission with Machine Learning Using Electronic Health Record Data
    Rojas, J. C.
    Carey, K. A.
    Edelson, D. P.
    Venable, L. R.
    Howell, M. D.
    Churpek, M. M.
    [J]. AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2018, 197
  • [29] Postoperative delirium prediction using machine learning models and preoperative electronic health record data
    Andrew Bishara
    Catherine Chiu
    Elizabeth L. Whitlock
    Vanja C. Douglas
    Sei Lee
    Atul J. Butte
    Jacqueline M. Leung
    Anne L. Donovan
    [J]. BMC Anesthesiology, 22
  • [30] Using Natural Language Processing and Machine Learning to Identify Opioids in Electronic Health Record Data
    McDermott, Sean P.
    Wasan, Ajay D.
    [J]. JOURNAL OF PAIN RESEARCH, 2023, 16 : 2133 - 2140