Machine Learning-Derived Prenatal Predictive Risk Model to Guide Intervention and Prevent the Progression of Gestational Diabetes Mellitus to Type 2 Diabetes: Prediction Model Development Study.

Q2 Medicine JMIR Diabetes Pub Date : 2022-07-05 DOI:10.2196/32366
Mukkesh Kumar, Li Ting Ang, Cindy Ho, Shu E Soh, Kok Hian Tan, Jerry Kok Yen Chan, Keith M Godfrey, Shiao-Yng Chan, Yap Seng Chong, Johan G Eriksson, Mengling Feng, Neerja Karnani
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Abstract

Background: The increasing prevalence of gestational diabetes mellitus (GDM) is concerning as women with GDM are at high risk of type 2 diabetes (T2D) later in life. The magnitude of this risk highlights the importance of early intervention to prevent the progression of GDM to T2D. Rates of postpartum screening are suboptimal, often as low as 13% in Asian countries. The lack of preventive care through structured postpartum screening in several health care systems and low public awareness are key barriers to postpartum diabetes screening.

Objective: In this study, we developed a machine learning model for early prediction of postpartum T2D following routine antenatal GDM screening. The early prediction of postpartum T2D during prenatal care would enable the implementation of effective strategies for diabetes prevention interventions. To our best knowledge, this is the first study that uses machine learning for postpartum T2D risk assessment in antenatal populations of Asian origin.

Methods: Prospective multiethnic data (Chinese, Malay, and Indian ethnicities) from 561 pregnancies in Singapore's most deeply phenotyped mother-offspring cohort study-Growing Up in Singapore Towards healthy Outcomes-were used for predictive modeling. The feature variables included were demographics, medical or obstetric history, physical measures, lifestyle information, and GDM diagnosis. Shapley values were combined with CatBoost tree ensembles to perform feature selection. Our game theoretical approach for predictive analytics enables population subtyping and pattern discovery for data-driven precision care. The predictive models were trained using 4 machine learning algorithms: logistic regression, support vector machine, CatBoost gradient boosting, and artificial neural network. We used 5-fold stratified cross-validation to preserve the same proportion of T2D cases in each fold. Grid search pipelines were built to evaluate the best performing hyperparameters.

Results: A high performance prediction model for postpartum T2D comprising of 2 midgestation features-midpregnancy BMI after gestational weight gain and diagnosis of GDM-was developed (BMI_GDM CatBoost model: AUC=0.86, 95% CI 0.72-0.99). Prepregnancy BMI alone was inadequate in predicting postpartum T2D risk (ppBMI CatBoost model: AUC=0.62, 95% CI 0.39-0.86). A 2-hour postprandial glucose test (BMI_2hour CatBoost model: AUC=0.86, 95% CI 0.76-0.96) showed a stronger postpartum T2D risk prediction effect compared to fasting glucose test (BMI_Fasting CatBoost model: AUC=0.76, 95% CI 0.61-0.91). The BMI_GDM model was also robust when using a modified 2-point International Association of the Diabetes and Pregnancy Study Groups (IADPSG) 2018 criteria for GDM diagnosis (BMI_GDM2 CatBoost model: AUC=0.84, 95% CI 0.72-0.97). Total gestational weight gain was inversely associated with postpartum T2D outcome, independent of prepregnancy BMI and diagnosis of GDM (P=.02; OR 0.88, 95% CI 0.79-0.98).

Conclusions: Midgestation weight gain effects, combined with the metabolic derangements underlying GDM during pregnancy, signal future T2D risk in Singaporean women. Further studies will be required to examine the influence of metabolic adaptations in pregnancy on postpartum maternal metabolic health outcomes. The state-of-the-art machine learning model can be leveraged as a rapid risk stratification tool during prenatal care.

Trial registration: ClinicalTrials.gov NCT01174875; https://clinicaltrials.gov/ct2/show/NCT01174875.

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机器学习推导的产前预测风险模型用于指导干预和预防妊娠糖尿病发展为 2 型糖尿病:预测模型开发研究。
背景:妊娠期糖尿病(GDM)发病率的不断上升令人担忧,因为患有 GDM 的妇女日后罹患 2 型糖尿病(T2D)的风险很高。这种风险的严重性突出了早期干预以防止 GDM 发展为 T2D 的重要性。产后筛查率并不理想,在亚洲国家通常低至 13%。在一些医疗保健系统中,缺乏通过有组织的产后筛查进行的预防性护理,以及公众意识薄弱是产后糖尿病筛查的主要障碍:在这项研究中,我们开发了一种机器学习模型,用于在常规产前 GDM 筛查后早期预测产后 T2D。在产前护理期间及早预测产后 T2D 将有助于实施有效的糖尿病预防干预策略。据我们所知,这是第一项在亚裔产前人群中使用机器学习进行产后 T2D 风险评估的研究:方法:在新加坡最深入的表型母子队列研究--"在新加坡成长,迈向健康结果 "中,来自 561 名孕妇的前瞻性多种族数据(华裔、马来裔和印度裔)被用于预测建模。特征变量包括人口统计学、病史或产科史、体格测量、生活方式信息和 GDM 诊断。Shapley 值与 CatBoost 树组合在一起进行特征选择。我们的博弈论预测分析方法可对人群进行细分并发现模式,从而实现数据驱动的精准医疗。预测模型采用 4 种机器学习算法进行训练:逻辑回归、支持向量机、CatBoost 梯度提升和人工神经网络。我们使用了 5 倍分层交叉验证,以保持每倍中 T2D 病例的比例相同。我们建立了网格搜索管道来评估性能最佳的超参数:建立了一个高性能的产后 T2D 预测模型,该模型包含两个妊娠中期特征--妊娠期体重增加后的妊娠中期体重指数和 GDM 诊断--(BMI_GDM CatBoost 模型:AUC=0.86,95% CI 0.72-0.99)。仅凭孕前体重指数不足以预测产后 T2D 风险(ppBMI CatBoost 模型:AUC=0.62,95% CI 0.39-0.86)。与空腹血糖测试(BMI_Fasting CatBoost 模型:AUC=0.76,95% CI 0.61-0.91)相比,餐后 2 小时血糖测试(BMI_2 小时 CatBoost 模型:AUC=0.86,95% CI 0.76-0.96)显示出更强的产后 T2D 风险预测效果。当使用国际糖尿病和妊娠研究小组协会(IADPSG)2018 年修订的 2 点 GDM 诊断标准时,BMI_GDM 模型也是稳健的(BMI_GDM2 CatBoost 模型:AUC=0.84,95% CI 0.72-0.97)。妊娠总增重与产后 T2D 结果呈反比,与孕前 BMI 和 GDM 诊断无关(P=.02;OR 0.88,95% CI 0.79-0.98):结论:妊娠中期体重增加的影响,加上孕期 GDM 潜在的代谢紊乱,预示着新加坡妇女未来患 T2D 的风险。还需要进一步的研究来探讨孕期代谢适应对产后孕产妇代谢健康结果的影响。先进的机器学习模型可作为产前护理中的快速风险分层工具:ClinicalTrials.gov NCT01174875; https://clinicaltrials.gov/ct2/show/NCT01174875.
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来源期刊
JMIR Diabetes
JMIR Diabetes Computer Science-Computer Science Applications
CiteScore
4.00
自引率
0.00%
发文量
35
审稿时长
16 weeks
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