Electronic Health Record Driven Prediction for Gestational Diabetes Mellitus in Early Pregnancy

被引:0
|
作者
Hang Qiu
Hai-Yan Yu
Li-Ya Wang
Qiang Yao
Si-Nan Wu
Can Yin
Bo Fu
Xiao-Juan Zhu
Yan-Long Zhang
Yong Xing
Jun Deng
Hao Yang
Shun-Dong Lei
机构
[1] Big Data Research Center,
[2] University of Electronic Science and Technology of China,undefined
[3] School of Computer Science and Engineering,undefined
[4] University of Electronic Science and Technology of China,undefined
[5] School of Economics and Management,undefined
[6] Chongqing University of Posts and Telecommunications,undefined
[7] Chongqing,undefined
[8] Department of Statistics,undefined
[9] The Pennsylvania State University,undefined
[10] Division of Obstetrics,undefined
[11] West China Second University Hospital,undefined
[12] Sichuan University,undefined
[13] Division of Information Management,undefined
[14] West China Second University Hospital,undefined
[15] Sichuan University,undefined
[16] Chengdu Shulianyikang Technology Co.,undefined
[17] Ltd,undefined
[18] School of Computer Science,undefined
[19] Chengdu University of Information Technology,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Gestational diabetes mellitus (GDM) is conventionally confirmed with oral glucose tolerance test (OGTT) in 24 to 28 weeks of gestation, but it is still uncertain whether it can be predicted with secondary use of electronic health records (EHRs) in early pregnancy. To this purpose, the cost-sensitive hybrid model (CSHM) and five conventional machine learning methods are used to construct the predictive models, capturing the future risks of GDM in the temporally aggregated EHRs. The experimental data sources from a nested case-control study cohort, containing 33,935 gestational women in West China Second Hospital. After data cleaning, 4,378 cases and 50 attributes are stored and collected for the data set. Through selecting the most feasible method, the cost parameter of CSHM is adapted to deal with imbalance of the dataset. In the experiment, 3940 samples are used for training and the rest 438 samples for testing. Although the accuracy of positive samples is barely acceptable (62.16%), the results suggest that the vast majority (98.4%) of those predicted positive instances are real positives. To our knowledge, this is the first study to apply machine learning models with EHRs to predict GDM, which will facilitate personalized medicine in maternal health management in the future.
引用
收藏
相关论文
共 50 条
  • [1] Electronic Health Record Driven Prediction for Gestational Diabetes Mellitus in Early Pregnancy
    Qiu, Hang
    Yu, Hai-Yan
    Wang, Li-Ya
    Yao, Qiang
    Wu, Si-Nan
    Yin, Can
    Fu, Bo
    Zhu, Xiao-Juan
    Zhang, Yan-Long
    Xing, Yong
    Deng, Jun
    Yang, Hao
    Lei, Shun-Dong
    [J]. SCIENTIFIC REPORTS, 2017, 7
  • [2] Early Prediction of Gestational Diabetes Mellitus Using Electronic Health Records and Machine Learning
    Germaine, Mark A.
    O'Higgins, Amy C.
    Healy, Graham
    Egan, Brendan
    [J]. DIABETES, 2024, 73
  • [3] A Novel Early Pregnancy Risk Prediction Model for Gestational Diabetes Mellitus
    Sweeting, Arianne N.
    Wong, Jencia
    Appelblom, Heidi
    Ross, Glynis P.
    Kouru, Heikki
    Williams, Paul F.
    Sairanen, Mikko
    Hyett, Jon A.
    [J]. FETAL DIAGNOSIS AND THERAPY, 2019, 45 (02) : 76 - 84
  • [4] Early pregnancy C-reactive protein in the prediction of gestational diabetes mellitus
    Fatema, N.
    Akter, S.
    Jebunnesa, F.
    Akhter, A.
    Sultana, N.
    Wahed, T.
    Helal, R.
    Ali, L.
    [J]. DIABETOLOGIA, 2008, 51 : S459 - S460
  • [5] Maternal serum pentraxin 3 level in early pregnancy for prediction of gestational diabetes mellitus
    Qu, Xiaoxian
    Zhuang, Jingyi
    Xu, Chuanlu
    Ai, Zisheng
    Yuan, Ling
    Tang, Yuping
    Shu, Qun
    Bao, Yirong
    Han, Huan
    Ying, Hao
    [J]. ANNALS OF TRANSLATIONAL MEDICINE, 2019, 7 (23)
  • [6] Treatment of Gestational Diabetes Mellitus Diagnosed Early in Pregnancy
    Simmons, D.
    Immanuel, J.
    Hague, W. M.
    Teede, H.
    Nolan, C. J.
    Peek, M. J.
    Flack, J. R.
    McLean, M.
    Wong, V.
    Hibbert, E.
    Kautzky-Willer, A.
    Harreiter, J.
    Backman, H.
    Gianatti, E.
    Sweeting, A.
    Mohan, V.
    Enticott, J.
    Cheung, N. W.
    [J]. OBSTETRICAL & GYNECOLOGICAL SURVEY, 2023, 78 (11) : 636 - 637
  • [7] Parabens exposure in early pregnancy and gestational diabetes mellitus
    Liu, Wenyu
    Zhou, Yanqiu
    Li, Jiufeng
    Sun, Xiaojie
    Liu, Hongxiu
    Jiang, Yangqian
    Peng, Yang
    Zhao, Hongzhi
    Xia, Wei
    Li, Yuanyuan
    Cai, Zongwei
    Xu, Shunqing
    [J]. ENVIRONMENT INTERNATIONAL, 2019, 126 : 468 - 475
  • [8] Metabolomic Markers in Early Pregnancy for Gestational Diabetes Mellitus
    Chen, Liwei
    [J]. DIABETES, 2022, 71 (08) : 1620 - 1622
  • [9] Gestational diabetes mellitus diagnosed during early pregnancy
    Bartha, JL
    Martinez-Del-Fresno, P
    Comino-Delgado, R
    [J]. AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 2000, 182 (02) : 346 - 350
  • [10] Early Pregnancy Biochemical Predictors of Gestational Diabetes Mellitus
    Powe, Camille E.
    [J]. CURRENT DIABETES REPORTS, 2017, 17 (02)