Accesso libero

Application of machine learning algorithm for predicting gestational diabetes mellitus in early pregnancy

INFORMAZIONI SU QUESTO ARTICOLO

Cita

Obstetrics Subgroup, Chinese Society of Obstetrics and Gynecology, Chinese Medical Association, Group of Pregnancy with Diabetes Mellitus, Chinese Society of Perinatal Medicine, Chinese Medical Association. Diagnosis and therapy guideline of pregnancy with diabetes mellitus. Chin J Obstet Gynecol. 2014;49:561–569 (in Chinese). Obstetrics Subgroup, Chinese Society of Obstetrics and Gynecology, Chinese Medical Association, Group of Pregnancy with Diabetes Mellitus, Chinese Society of Perinatal Medicine, Chinese Medical Association Diagnosis and therapy guideline of pregnancy with diabetes mellitus Chin J Obstet Gynecol 2014 49 561 569 (in Chinese). Search in Google Scholar

Moon JH, Kwak SH, Jang HC. Prevention of type 2 diabetes mellitus in women with previous gestational diabetes mellitus. Korean J Intern Med. 2017;32:26–41. MoonJH KwakSH JangHC Prevention of type 2 diabetes mellitus in women with previous gestational diabetes mellitus Korean J Intern Med 2017 32 26 41 10.3904/kjim.2016.203521473228049284 Search in Google Scholar

Avagliano L, Massa V, Terraneo L, et al. Gestational diabetes affects fetal autophagy. Placenta. 2017;55:90–93. AvaglianoL MassaV TerraneoL Gestational diabetes affects fetal autophagy Placenta 2017 55 90 93 10.1016/j.placenta.2017.05.00228623978 Search in Google Scholar

Eades CE, Cameron DM, Evans JMM. Prevalence of gestational diabetes mellitus in Europe: A meta-analysis. Diabetes Res Clin Pract. 2017;129:173–181. EadesCE CameronDM EvansJMM Prevalence of gestational diabetes mellitus in Europe: A meta-analysis Diabetes Res Clin Pract 2017 129 173 181 10.1016/j.diabres.2017.03.03028531829 Search in Google Scholar

Wu JF, Wu SQ, Liu Z, Xu H, Zhang L. Influence of new diagnostic criteria for gestational diabetes mellitus on the outcome of perinatal infants. J Pub Health Prev Med. 2015;26:121–124 (in Chinese). WuJF WuSQ LiuZ XuH ZhangL Influence of new diagnostic criteria for gestational diabetes mellitus on the outcome of perinatal infants J Pub Health Prev Med 2015 26 121 124 (in Chinese). Search in Google Scholar

Farrar D, Simmonds M, Griffin S, et al. The identification and treatment of women with hyperglycaemia in pregnancy: an analysis of individual participant data, systematic reviews, meta-analyses and an economic evaluation. Health Technol Assess. 2016;20:1–348. FarrarD SimmondsM GriffinS The identification and treatment of women with hyperglycaemia in pregnancy: an analysis of individual participant data, systematic reviews, meta-analyses and an economic evaluation Health Technol Assess 2016 20 1 348 10.3310/hta20860516528227917777 Search in Google Scholar

Wilson ML. Prediabetes: beyond the Borderline. Nurs Clin North Am. 2017;52:665–677. WilsonML Prediabetes: beyond the Borderline Nurs Clin North Am 2017 52 665 677 10.1016/j.cnur.2017.07.01129080583 Search in Google Scholar

Zand A, Ibrahim K, Patham B. Prediabetes: Why should we care?. Methodist Debakey Cardiovasc J. 2018;14:289–297. ZandA IbrahimK PathamB Prediabetes: Why should we care? Methodist Debakey Cardiovasc J 2018 14 289 297 10.14797/mdcj-14-4-289636962630788015 Search in Google Scholar

Booth GL, Luo J, Park AL, et al. Influence of environmental temperature on risk of gestational diabetes. CMAJ. 2017;189:E682–E689. BoothGL LuoJ ParkAL Influence of environmental temperature on risk of gestational diabetes CMAJ 2017 189 E682 E689 10.1503/cmaj.160839543386928507087 Search in Google Scholar

Xu X, Zhu XW, Jiang YM, et al. Study on the incidence and risk factors of gestational diabetes in 2748 hospitalized pregnant women. Acta Universitatis Medicinalis Nanjing (Natural Science). 2015;35:695–698 (in Chinese). XuX ZhuXW JiangYM Study on the incidence and risk factors of gestational diabetes in 2748 hospitalized pregnant women Acta Universitatis Medicinalis Nanjing (Natural Science) 2015 35 695 698 (in Chinese). Search in Google Scholar

Sahu L, Satyakala R, Rani R. Comparison of the American Diabetes Association and World Health Organization criteria for gestational diabetes mellitus and the outcomes of pregnancy. Obstet Med. 2009;2:149–153. SahuL SatyakalaR RaniR Comparison of the American Diabetes Association and World Health Organization criteria for gestational diabetes mellitus and the outcomes of pregnancy Obstet Med 2009 2 149 153 10.1258/om.2009.080049498966027579060 Search in Google Scholar

National Collaborating Centre for Women's and Children's Health. Diabetes in pregnancy: management of diabetes and its complications from preconception to the postnatal period. https://www.nice.org.uk/guidance/ng3. Accessed September7, 2019. National Collaborating Centre for Women's and Children's Health Diabetes in pregnancy: management of diabetes and its complications from preconception to the postnatal period https://www.nice.org.uk/guidance/ng3. Accessed September7, 2019. Search in Google Scholar

Esmaily H, Tayefi M, Doosti H, et al. A comparison between decision tree and random forest in determining the risk factors associated with type 2 diabetes. J Res Health Sci. 2018;18:e00412. EsmailyH TayefiM DoostiH A comparison between decision tree and random forest in determining the risk factors associated with type 2 diabetes J Res Health Sci 2018 18 e00412 Search in Google Scholar

DuBrava S, Mardekian J, Sadosky A, et al. Using random forest models to identify correlates of a diabetic peripheral neuropathy diagnosis from Electronic Health Record Data. Pain Med. 2017;18:107–115. DuBravaS MardekianJ SadoskyA Using random forest models to identify correlates of a diabetic peripheral neuropathy diagnosis from Electronic Health Record Data Pain Med 2017 18 107 115 10.1093/pm/pnw09627252307 Search in Google Scholar

Ting DSW, Cheung CY, Lim G, et al. Development and validation of a deep learning system for diabetic retinopathy and related eye diseases using retinal images from multiethnic populations with diabetes. JAMA. 2017;318:2211–2223. TingDSW CheungCY LimG Development and validation of a deep learning system for diabetic retinopathy and related eye diseases using retinal images from multiethnic populations with diabetes JAMA 2017 318 2211 2223 10.1001/jama.2017.18152582073929234807 Search in Google Scholar

Wu BH, Huang HY, Yao Q, Deng R, Li H, Liang T. The Application of Big Data and Artificial Intelligence Methods in Prediction of GDM. Chin J Health Inf Manag. 2017;14:832–837 (in Chinese). WuBH HuangHY YaoQ DengR LiH LiangT The Application of Big Data and Artificial Intelligence Methods in Prediction of GDM Chin J Health Inf Manag 2017 14 832 837 (in Chinese). Search in Google Scholar

McGowan CA, Curran S, McAuliffe FM. Relative validity of a food frequency questionnaire to assess nutrient intake in pregnant women. J Hum Nutr Diet. 2014;27 Suppl 2:167–174. McGowanCA CurranS McAuliffeFM Relative validity of a food frequency questionnaire to assess nutrient intake in pregnant women J Hum Nutr Diet 2014 27 Suppl 2 167 174 10.1111/jhn.1212023627971 Search in Google Scholar

Li Q. Effects of cognitive viewpoint, dietary habits and physical activity on blood glucose in pregnant women in Guangdong: Southern Medical University; 2013 (in Chinese). LiQ Effects of cognitive viewpoint, dietary habits and physical activity on blood glucose in pregnant women in Guangdong: Southern Medical University 2013 (in Chinese). Search in Google Scholar

Ogawa K, Jwa SC, Kobayashi M, Morisaki N, Sago H, Fujiwara T. Validation of a food frequency questionnaire for Japanese pregnant women with and without nausea and vomiting in early pregnancy. J Epidemiol. 2017;27:201–208. OgawaK JwaSC KobayashiM MorisakiN SagoH FujiwaraT Validation of a food frequency questionnaire for Japanese pregnant women with and without nausea and vomiting in early pregnancy J Epidemiol 2017 27 201 208 10.1016/j.je.2016.06.004539422528223084 Search in Google Scholar

Rigatti SJ. Random forest. J InsurMed (New York, NY). 2017;47:31–39. RigattiSJ Random forest J InsurMed (New York, NY) 2017 47 31 39 10.17849/insm-47-01-31-39.128836909 Search in Google Scholar

Feng R, Shao H, Zhu H, Xie J. Meta analysis of risk factors for gestational diabetes mellitus. Matern Child Health Care China. 2014;29:2824–2827. FengR ShaoH ZhuH XieJ Meta analysis of risk factors for gestational diabetes mellitus Matern Child Health Care China 2014 29 2824 2827 Search in Google Scholar

Sorbye LM, Skjaerven R, Klungsoyr K, Morken NH. Gestational diabetes mellitus and interpregnancy weight change: a population-based cohort study. PLoS Med. 2017;14:e1002367. SorbyeLM SkjaervenR KlungsoyrK MorkenNH Gestational diabetes mellitus and interpregnancy weight change: a population-based cohort study PLoS Med 2017 14 e1002367 10.1371/journal.pmed.1002367553863328763446 Search in Google Scholar

Moore Simas TA, Waring ME, Callaghan K, et al. Weight gain in early pregnancy and risk of gestational diabetes mellitus among Latinas. Diabetes Metab. 2019;45:26–31. Moore SimasTA WaringME CallaghanK Weight gain in early pregnancy and risk of gestational diabetes mellitus among Latinas Diabetes Metab 2019 45 26 31 10.1016/j.diabet.2017.10.006594318429129541 Search in Google Scholar

Collier A, Abraham EC, Armstrong J, Godwin J, Monteath K, Lindsay R. Reported prevalence of gestational diabetes in Scotland: the relationship with obesity, age, socioeconomic status, smoking and macrosomia, and how many are we missing? J Diabetes Investig. 2017;8:161–167. CollierA AbrahamEC ArmstrongJ GodwinJ MonteathK LindsayR Reported prevalence of gestational diabetes in Scotland: the relationship with obesity, age, socioeconomic status, smoking and macrosomia, and how many are we missing? J Diabetes Investig 2017 8 161 167 10.1111/jdi.12552533433227397133 Search in Google Scholar

Wang S, Yang HX. Analysis of the effect of risk factors at gestational diabetes mellitus. Chin J Obstet Gynecol. 2014;49:321–324 (in Chinese). WangS YangHX Analysis of the effect of risk factors at gestational diabetes mellitus Chin J Obstet Gynecol 2014 49 321 324 (in Chinese). Search in Google Scholar

Zhang X. Analysis of the factors influencing the incidence of gestational diabetes mellitus and adverse pregnancy outcome Qinhuangdao: North China University of Science and Technology; 2016 (in Chinese). ZhangX Analysis of the factors influencing the incidence of gestational diabetes mellitus and adverse pregnancy outcome Qinhuangdao: North China University of Science and Technology 2016 (in Chinese). Search in Google Scholar

Bao W, Tobias DK, Olsen SF, Zhang C. Pre-pregnancy fried food consumption and the risk of gestational diabetes mellitus: a prospective cohort study. Diabetologia. 2014;57:2485–2491. BaoW TobiasDK OlsenSF ZhangC Pre-pregnancy fried food consumption and the risk of gestational diabetes mellitus: a prospective cohort study Diabetologia 2014 57 2485 2491 10.1007/s00125-014-3382-x422153825303998 Search in Google Scholar

Meng LP, Xiao LF, Geng LR, Wang CP. High risk scoring for prediction of gestational diabetes mellitus. J Nurs Sci. 2015;30:7–10 (in Chinese). MengLP XiaoLF GengLR WangCP High risk scoring for prediction of gestational diabetes mellitus J Nurs Sci 2015 30 7 10 (in Chinese). Search in Google Scholar

McIntyre HD, Catalano P, Zhang C, Desoye G, Mathiesen ER, Damn P. Gestational diabetes mellitus. Nat Rev Dis Primers. 2019;5:47. McIntyreHD CatalanoP ZhangC DesoyeG MathiesenER DamnP Gestational diabetes mellitus Nat Rev Dis Primers 2019 5 47 10.1038/s41572-019-0098-831296866 Search in Google Scholar

Han Q, Shao P, Leng J, et al. Interactions between general and central obesity in predicting gestational diabetes mellitus in Chinese pregnant women: a prospective population-based study in Tianjin, China. J Diabetes. 2018;10:59–67. HanQ ShaoP LengJ Interactions between general and central obesity in predicting gestational diabetes mellitus in Chinese pregnant women: a prospective population-based study in Tianjin, China J Diabetes 2018 10 59 67 10.1111/1753-0407.1255828383185 Search in Google Scholar

Bolognani CV, Reis LBSM, de Souza SS, Dias A, Rudge MVC, Calderon IMP. Waist circumference in predicting gestational diabetes mellitus. J Matern Fetal Neonatal Med. 2014;27:943–948. BolognaniCV ReisLBSM de SouzaSS DiasA RudgeMVC CalderonIMP Waist circumference in predicting gestational diabetes mellitus J Matern Fetal Neonatal Med 2014 27 943 948 10.3109/14767058.2013.84708124053462 Search in Google Scholar

ACOG Practice Bulletin No. 190: Gestational Diabetes Mellitus. Obstet Gynecol. 2018;131: e49–e64. ACOG Practice Bulletin No. 190: Gestational Diabetes Mellitus Obstet Gynecol 2018 131 e49 e64 10.1097/AOG.000000000000250129370047 Search in Google Scholar

eISSN:
2544-8994
Lingua:
Inglese
Frequenza di pubblicazione:
4 volte all'anno
Argomenti della rivista:
Medicine, Assistive Professions, Nursing