Literature DB >> 31932807

Prediction of gestational diabetes based on nationwide electronic health records.

Nitzan Shalom Artzi1,2, Smadar Shilo1,2,3, Eran Hadar4,5, Hagai Rossman1,2, Shiri Barbash-Hazan4, Avi Ben-Haroush4,5, Ran D Balicer6,7, Becca Feldman6, Arnon Wiznitzer8,9, Eran Segal10,11.   

Abstract

Gestational diabetes mellitus (GDM) poses increased risk of short- and long-term complications for mother and offspring1-4. GDM is typically diagnosed at 24-28 weeks of gestation, but earlier detection is desirable as this may prevent or considerably reduce the risk of adverse pregnancy outcomes5,6. Here we used a machine-learning approach to predict GDM on retrospective data of 588,622 pregnancies in Israel for which comprehensive electronic health records were available. Our models predict GDM with high accuracy even at pregnancy initiation (area under the receiver operating curve (auROC) = 0.85), substantially outperforming a baseline risk score (auROC = 0.68). We validated our results on both a future validation set and a geographical validation set from the most populated city in Israel, Jerusalem, thereby emulating real-world performance. Interrogating our model, we uncovered previously unreported risk factors, including results of previous pregnancy glucose challenge tests. Finally, we devised a simpler model based on just nine questions that a patient could answer, with only a modest reduction in accuracy (auROC = 0.80). Overall, our models may allow early-stage intervention in high-risk women, as well as a cost-effective screening approach that could avoid the need for glucose tolerance tests by identifying low-risk women. Future prospective studies and studies on additional populations are needed to assess the real-world clinical utility of the model.

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Year:  2020        PMID: 31932807     DOI: 10.1038/s41591-019-0724-8

Source DB:  PubMed          Journal:  Nat Med        ISSN: 1078-8956            Impact factor:   53.440


  2 in total

1.  NIH consensus development conference: diagnosing gestational diabetes mellitus.

Authors:  James P Vandorsten; William C Dodson; Mark A Espeland; William A Grobman; Jeanne Marie Guise; Brian M Mercer; Howard L Minkoff; Brenda Poindexter; Lisa A Prosser; George F Sawaya; James R Scott; Robert M Silver; Lisa Smith; Alyce Thomas; Alan T N Tita
Journal:  NIH Consens State Sci Statements       Date:  2013-03-06

2.  Familial aggregation of type 2 diabetes and chronic hypertension in women with gestational diabetes mellitus.

Authors:  Michelle A Williams; Chunfang Qiu; Jennifer C Dempsey; David A Luthy
Journal:  J Reprod Med       Date:  2003-12       Impact factor: 0.142

  2 in total
  44 in total

1.  Key considerations for the use of artificial intelligence in healthcare and clinical research.

Authors:  Christopher A Lovejoy; Anmol Arora; Varun Buch; Ittai Dayan
Journal:  Future Healthc J       Date:  2022-03

2.  Predicting brain function status changes in critically ill patients via Machine learning.

Authors:  Chao Yan; Cheng Gao; Ziqi Zhang; Wencong Chen; Bradley A Malin; E Wesley Ely; Mayur B Patel; You Chen
Journal:  J Am Med Inform Assoc       Date:  2021-10-12       Impact factor: 7.942

3.  Characterization of Symptoms and Symptom Clusters for Type 2 Diabetes Using a Large Nationwide Electronic Health Record Database.

Authors:  Veronica Brady; Meagan Whisenant; Xueying Wang; Vi K Ly; Gen Zhu; David Aguilar; Hulin Wu
Journal:  Diabetes Spectr       Date:  2022-01-11

4.  Population-centric risk prediction modeling for gestational diabetes mellitus: A machine learning approach.

Authors:  Mukkesh Kumar; Li Chen; Karen Tan; Li Ting Ang; Cindy Ho; Gerard Wong; Shu E Soh; Kok Hian Tan; Jerry Kok Yen Chan; Keith M Godfrey; Shiao-Yng Chan; Mary Foong Fong Chong; John E Connolly; Yap Seng Chong; Johan G Eriksson; Mengling Feng; Neerja Karnani
Journal:  Diabetes Res Clin Pract       Date:  2022-02-04       Impact factor: 8.180

Review 5.  How Machine Learning Will Transform Biomedicine.

Authors:  Jeremy Goecks; Vahid Jalili; Laura M Heiser; Joe W Gray
Journal:  Cell       Date:  2020-04-02       Impact factor: 41.582

6.  Identification of Diagnostic CpG Signatures in Patients with Gestational Diabetes Mellitus via Epigenome-Wide Association Study Integrated with Machine Learning.

Authors:  Yan Liu; Hui Geng; Bide Duan; Xiuzhi Yang; Airong Ma; Xiaoyan Ding
Journal:  Biomed Res Int       Date:  2021-05-19       Impact factor: 3.411

Review 7.  Closed-Loop Neural Prostheses With On-Chip Intelligence: A Review and a Low-Latency Machine Learning Model for Brain State Detection.

Authors:  Bingzhao Zhu; Uisub Shin; Mahsa Shoaran
Journal:  IEEE Trans Biomed Circuits Syst       Date:  2021-12-09       Impact factor: 3.833

8.  Gestational diabetes mellitus in women born small or preterm: Systematic review and meta-analysis.

Authors:  Yasushi Tsujimoto; Yuki Kataoka; Masahiro Banno; Shunsuke Taito; Masayo Kokubo; Yuko Masuzawa; Yoshiko Yamamoto
Journal:  Endocrine       Date:  2021-11-02       Impact factor: 3.633

Review 9.  Data-Driven Modeling of Pregnancy-Related Complications.

Authors:  Camilo Espinosa; Martin Becker; Ivana Marić; Ronald J Wong; Gary M Shaw; Brice Gaudilliere; Nima Aghaeepour; David K Stevenson
Journal:  Trends Mol Med       Date:  2021-02-08       Impact factor: 15.272

10.  Distribution of complete blood count constituents in gestational diabetes mellitus.

Authors:  Yonggang Zhang; Yipeng Zhang; Limin Zhao; Yanyan Shang; Dabao He; Jiying Chen
Journal:  Medicine (Baltimore)       Date:  2021-06-11       Impact factor: 1.889

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