Comparison of machine learning and conventional logistic regression-based prediction models for gestational diabetes in an ethnically diverse population; the Monash GDM Machine learning model

被引:27
作者
Belsti, Yitayeh [1 ,5 ]
Moran, Lisa [1 ]
Du, Lan [4 ]
Mousa, Aya [1 ]
De Silva, Kushan [3 ]
Enticott, Joanne [1 ]
Teede, Helena [1 ,2 ]
机构
[1] Monash Univ, Fac Med Nursing & Hlth Sci, Monash Ctr Hlth Res & Implementat MCHRI, Melbourne, Australia
[2] Monash Hlth, Melbourne, Australia
[3] Umea Univ, Fac Med, Dept Radiat Sci, Oncol, Sweden
[4] Monash Univ, Fac Informat Technol, Melbourne, Australia
[5] Univ Gondar, Coll Med & Hlth Sci, Gondar, Ethiopia
基金
英国医学研究理事会;
关键词
Machine learning; Predictive model; Prognosis; Gestational diabetes mellitus; DIAGNOSIS; RISK; RECOMMENDATIONS; ASSOCIATION; PREVALENCE; MANAGEMENT; PREGNANCY; HEALTH;
D O I
10.1016/j.ijmedinf.2023.105228
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Background: Early identification of pregnant women at high risk of developing gestational diabetes (GDM) is desirable as effective lifestyle interventions are available to prevent GDM and to reduce associated adverse outcomes. Personalised probability of developing GDM during pregnancy can be determined using a risk prediction model. These models extend from traditional statistics to machine learning methods; however, accuracy remains sub-optimal. Objective: We aimed to compare multiple machine learning algorithms to develop GDM risk prediction models, then to determine the optimal model for predicting GDM.Methods: A supervised machine learning predictive analysis was performed on data from routine antenatal care at a large health service network from January 2016 to June 2021. Predictor set 1 were sourced from the existing, internationally validated Monash GDM model: GDM history, body mass index, ethnicity, age, family history of diabetes, and past poor obstetric history. New models with different predictors were developed, considering statistical principles with inclusion of more robust continuous and derivative variables. A randomly selected 80% dataset was used for model development, with 20% for validation. Performance measures, including calibration and discrimination metrics, were assessed. Decision curve analysis was performed.Results: Upon internal validation, the machine learning and logistic regression model's area under the curve (AUC) ranged from 71% to 93% across the different algorithms, with the best being the CatBoost Classifier (CBC). Based on the default cut-off point of 0.32, the performance of CBC on predictor set 4 was: Accuracy (85%), Precision (90%), Recall (78%), F1-score (84%), Sensitivity (81%), Specificity (90%), positive predictive value (92%), negative predictive value (78%), and Brier Score (0.39).Conclusions: In this study, machine learning approaches achieved the best predictive performance over traditional statistical methods, increasing from 75 to 93%. The CatBoost classifier method achieved the best with the model including continuous variables.
引用
收藏
页数:12
相关论文
共 53 条
[1]  
adips.org, ADIPS GDM Guidelines V18.11.2014_000
[3]  
[Anonymous], 2019, Gestational Diabetes | Basics | Diabetes | CDC
[4]  
[Anonymous], 2022, CULTURAL DIVERSITY A
[5]  
Australian standard classification of cultural and ethnic groups (ASCCEG), 2019, Australian Bureau of Statistics
[6]  
Awad M., 2015, Efficient Learning Machines, V2, P67, DOI [DOI 10.1007/978-1-4302-5990-9_1, 10.1007/978-1-4302-5990-94]
[7]   Prevalence of gestational diabetes and associated maternal and neonatal complications in a fast-developing community: global comparisons [J].
Bener, Abdulbari ;
Saleh, Najah M. ;
Al-Hamaq, Abdulla .
INTERNATIONAL JOURNAL OF WOMENS HEALTH, 2011, 3 :367-373
[8]   Estimating the risk of gestational diabetes mellitus based on the 2013 WHO criteria: a prediction model based on clinical and biochemical variables in early pregnancy [J].
Benhalima, Katrien ;
Van Crombrugge, Paul ;
Moysonl, Carolien ;
Verhaeghe, Johan ;
Vandeginste, Sofie ;
Verlaenen, Hilde ;
Vercammens, Chris ;
Maes, Toon ;
Dufraimont, Els ;
De Block, Christophe ;
Jacquemyn, Yves ;
Mekahli, Farah ;
De Clipper, Katrien ;
AnnickVan Den Bruel ;
Loccufier, Anne ;
Laenen, Annouschka ;
Minschartl, Caro ;
Devlieger, Roland ;
Mathieu, Chantal .
ACTA DIABETOLOGICA, 2020, 57 (06) :661-671
[9]   What is Machine Learning? A Primer for the Epidemiologist [J].
Bi, Qifang ;
Goodman, Katherine E. ;
Kaminsky, Joshua ;
Lessler, Justin .
AMERICAN JOURNAL OF EPIDEMIOLOGY, 2019, 188 (12) :2222-2239
[10]   SMOTE: Synthetic minority over-sampling technique [J].
Chawla, Nitesh V. ;
Bowyer, Kevin W. ;
Hall, Lawrence O. ;
Kegelmeyer, W. Philip .
2002, American Association for Artificial Intelligence (16)