Laboratory of Biotechnology of Bioactive Molecules and Cellular Pathophysiology, Microbiology and Biochemistry Department, Batna 2 UniversityBatna, Algeria
This work is licensed under the Creative Commons Attribution 4.0 International License.
WHO. Diabetes [Internet]. 2021 [cited 2021 Oct 30]. Available from: https://www.who.int/news-room/fact-sheets/detail/diabetesSearch in Google Scholar
Kautzky-Willer A, Harreiter J, Winhofer-Stöckl Y, Bancher-Todesca D, Berger A, Repa A, et al. Gestational diabetes mellitus (Update 2019). Wiener Klinische Wochenschrift. 2019;131:91–102.Search in Google Scholar
Kotzaeridi G, Blätter J, Eppel D, Rosicky I, Falcone V, Adamczyk G, et al. Recurrence of Gestational Diabetes Mellitus : To Assess Glucose Metabolism and Clinical Risk Factors at the Beginning of a Subsequent Pregnancy. Journal of Clinical Medicine. 2021;10(7494):1–10.Search in Google Scholar
Schwartz N, Nachum Z, Green MS. Risk factors of gestational diabetes mellitus recurrence: a meta-analysis. Endocrine. 2016;53(3):662–71.Search in Google Scholar
Utz B, Kolsteren P, De Brouwere V. Screening for gestational diabetes mellitus: Are guidelines from high-income settings applicable to poorer countries? Clinical Diabetes. 2015;33(3):152–8.Search in Google Scholar
McIntyre HD, Catalano P, Zhang C, Desoye G, Mathiesen ER, Damm P. Gestational diabetes mellitus. Nature Reviews Disease Primers. 2019;5(1).Search in Google Scholar
Levy A, Wiznitzer A, Holcberg G, Mazor M, Sheiner E. Family history of diabetes mellitus as an independent risk factor for macrosomia and cesarean delivery. Journal of Maternal-Fetal and Neonatal Medicine. 2010;23(2):148–52.Search in Google Scholar
Mercaldo F, Nardone V, Santone A. Diabetes mellitus affected patients classification and diagnosis through machine learning techniques. Procedia Computer Science. 2017;112:2519–28.Search in Google Scholar
Bagley SC, White H, Golomb BA. Logistic regression in the medical literature: Standards for use and reporting, with particular attention to one medical domain. Journal of Clinical Epidemiology. 2001;54(10):979–85.Search in Google Scholar
El Sanharawi M, Naudet F. Understanding logistic regression. Journal Francais d’Ophtalmologie. 2013;36(8):710–5.Search in Google Scholar
Hosmer DW, Lemeshow S, Sturdivant RX. Applied Logistic Regression: Third Edition. Applied Logistic Regression: Third Edition. 2013. 1–510 p.Search in Google Scholar
Saberioon M, Císař P, Labbé L, Souček P, Pelissier P, Kerneis T. Comparative performance analysis of support vector machine, random forest, logistic regression and k-nearest neighbours in rainbow trout (oncorhynchus mykiss) classification using image-based features. Sensors (Switzerland). 2018;18(4):1–15.Search in Google Scholar
Gholipour K, Asghari-Jafarabadi M, Iezadi S, Jannati A, Keshavarz S. Modelling the prevalence of diabetes mellitus risk factors based on artificial neural network and multiple regression. Eastern Mediterranean health journal = La revue de sante de la Mediterranee orientale = al-Majallah al-sihhiyah li-sharq al-mutawassit. 2018;24(8):770–7.Search in Google Scholar
Chatterjee S, Goyal D, Prakash A, Sharma J. Exploring healthcare/health-product ecommerce satisfaction: A text mining and machine learning application. Journal of Business Research. 2021;131(October):815–25.Search in Google Scholar
Hui EGM. Learn R for Applied Statistics. Learn R for Applied Statistics. 2019.Search in Google Scholar
Contreras I, Vehi J. Artificial intelligence for diabetes management and decision support: Literature review. Journal of Medical Internet Research. 2018;20(5):1–21.Search in Google Scholar
Vapnik VN. Pattern Recognition-Statistical Learning Theory. Canada: Wiley; 1998. 1–760 p.Search in Google Scholar
Zermane H, Kasmi R. Intelligent industrial process control based on fuzzy logic and machine learning. International Journal of Fuzzy System Applications. 2020;9(1):92–111.Search in Google Scholar
Hsu CW, Lin CJ. A comparison of methods for multiclass support vector machines. IEEE Transactions on Neural Networks. 2002;13(2):415–25.Search in Google Scholar
Kale R, Shitole S. Analysis of Crop disease detection with SVM, KNN and Random forest classification. Information Technology in Industry. 2021;9(1):364–72.Search in Google Scholar
Rahab H, Zitouni A, Djoudi M. SIAAC: Sentiment Polarity Identification on Arabic Algerian Newspaper Comments. Advances in Intelligent Systems and Computing. 2018;662:139–49.Search in Google Scholar
Houfani D, Slatnia S, Kazar O, Zerhouni N, Saouli H RI. Breast cancer classification using machine learning techniques: a comparative study. Medical Technologies Journal. 2020;4(2):535–44.Search in Google Scholar
Elaziz MA, Hosny KM, Salah A, Darwish MM, Lu S, Sahlol AT. New machine learning method for image-based diagnosis of COVID-19. PLoS ONE. 2020;15(6):1–18.Search in Google Scholar
Ko BC, Kim SH, Nam JY. X-ray image classification using random forests with local wavelet-based CS-local binary patterns. Journal of Digital Imaging. 2011;24(6):1141–51.Search in Google Scholar
Dino HI, Abdulrazzaq MB. Facial Expression Classification Based on SVM, KNN and MLP Classifiers. 2019 International Conference on Advanced Science and Engineering, ICOASE 2019. 2019;70–5.Search in Google Scholar
Dietterich TG. Experimental comparison of three methods for constructing ensembles of decision trees: bagging, boosting, and randomization. Machine Learning. 2000;40(2):139–57.Search in Google Scholar
Zermane H, Drardja A. Development of an efficient cement production monitoring system based on the improved random forest algorithm. International Journal of Advanced Manufacturing Technology. 2022;120(3–4):1853–66.Search in Google Scholar
Zermane A, Mohd Tohir MZ, Zermane H, Baharudin MR, Mohamed Yusoff H. Predicting fatal fall from heights accidents using random forest classification machine learning model. Safety Science. 2023;159(November 2022):106023.Search in Google Scholar
Plows JF, Stanley JL, Baker PN, Reynolds CM, Vickers MH. The pathophysiology of gestational diabetes mellitus. International Journal of Molecular Sciences. 2018;19(11):1–21.Search in Google Scholar
Gibney MA, Arce CH, Byron KJ, Hirsch LJ. Skin and subcutaneous adipose layer thickness in adults with diabetes at sites used for insulin injections: Implications for needle length recommendations. Current Medical Research and Opinion. 2010;26(6):1519–30.Search in Google Scholar
Gou BH, Guan HM, Bi YX, Ding BJ. Gestational diabetes: Weight gain during pregnancy and its relationship to pregnancy outcomes. Chinese Medical Journal. 2019;132(2):154–60.Search in Google Scholar
Zheng W, Huang W, Liu C, Yan Q, Zhang L, Tian Z, et al. Weight gain after diagnosis of gestational diabetes mellitus and its association with adverse pregnancy outcomes: a cohort study. BMC Pregnancy and Childbirth. 2021;21(1):1–9.Search in Google Scholar
Heude B, Thiébaugeorges O, Goua V, Forhan A, Kaminski M, Foliguet B, et al. Pre-pregnancy body mass index and weight gain during pregnancy: Relations with gestational diabetes and hypertension, and birth outcomes. Maternal and Child Health Journal. 2012;16(2):355–63.Search in Google Scholar
Ben-David A, Glasser S, Schiff E, Zahav AS, Boyko V, Lerner-Geva L. Pregnancy and Birth Outcomes Among Primiparae at Very Advanced Maternal Age: At What Price? Maternal and Child Health Journal. 2016;20(4):833–42.Search in Google Scholar
Fuchs F, Monet B, Ducruet T, Chaillet N, Audibert F. Effect of maternal age on the risk of preterm birth: A large cohort study. Obstetrical and Gynecological Survey. 2018;13(1):1–10.Search in Google Scholar
Andreasen KR, Andersen ML, Schantz AL. Obesity and pregnancy. Acta Obstet Gynecol Scand. 2004;83(11):1022--1029.Search in Google Scholar
Cedergren MI. Maternal morbid obesity and the risk of adverse pregnancy outcome. Obstetrics and gynecology. 2004;103(2):219–24.Search in Google Scholar
Peters TM, Brazeau AS. Exercise in Pregnant Women with Diabetes. Current Diabetes Reports. 2019;19(9).Search in Google Scholar
Leppänen M, Aittasalo M, Raitanen J, Kinnunen TI, Kujala UM, Luoto R. Physical activity during pregnancy: predictors of change, perceived support and barriers among women at increased risk of gestational diabetes. Maternal and child health journal. 2014;18(9):2158–66.Search in Google Scholar
Yu Y, Arah OA, Liew Z, Cnattingius S, Olsen J, Sørensen HT, et al. Maternal diabetes during pregnancy and early onset of cardiovascular disease in offspring: Population based cohort study with 40 years of follow-up. The BMJ. 2019;367(Cvd):1–4.Search in Google Scholar
Davenport MH, Ruchat SM, Poitras VJ, Jaramillo Garcia A, Gray CE, Barrowman N, et al. Prenatal exercise for the prevention of gestational diabetes mellitus and hypertensive disorders of pregnancy: A systematic review and meta-analysis. British Journal of Sports Medicine. 2018;52(21):1367–75.Search in Google Scholar
Kalla A, Loucif L, Yahia M. Miscarriage Risk Factors for Pregnant Women: A Cohort Study in Eastern Algeria’s Population. The Journal of Obstetrics and Gynecology of India. 2022 Aug;72(Suppl 1):109-120.Search in Google Scholar
Figueroa Gray M, Hsu C, Kiel L, Dublin S. “It’s a Very Big Burden on Me”: Women’s Experiences Using Insulin for Gestational Diabetes. Maternal and Child Health Journal. 2017;21(8):1678–85.Search in Google Scholar
Liu B, Song L, Zhang L, Wang L, Wu M, Xu S, et al. Higher numbers of pregnancies associated with an increased prevalence of gestational diabetes mellitus: Results from the healthy baby cohort study. Journal of Epidemiology. 2020;30(5):208–12.Search in Google Scholar
Yan B, Yu Y, Lin M, Li Z, Wang L, Huang P, et al. High, but stable, trend in the prevalence of gestational diabetes mellitus: A population-based study in Xiamen, China. Journal of Diabetes Investigation. 2019;10(5):1358–64.Search in Google Scholar
Sibai BM, Ross MG. Hypertension in gestational diabetes mellitus: Pathophysiology and long-term consequences. Journal of Maternal-Fetal and Neonatal Medicine. 2010;23(3):229–33.Search in Google Scholar