Emmanuel Kokori, Gbolahan Olatunji, Nicholas Aderinto, Ifeanyichukwu Muogbo, Ikponmwosa Jude Ogieuhi, David Isarinade, Bonaventure Ukoaka, Ayodeji Akinmeji, Irene Ajayi, Ezenwoba Chidiogo, Owolabi Samuel, Habeebat Nurudeen-Busari, Abdulbasit Opeyemi Muili, David B Olawade
{"title":"机器学习算法在检测妊娠糖尿病中的作用;现有证据综述。","authors":"Emmanuel Kokori, Gbolahan Olatunji, Nicholas Aderinto, Ifeanyichukwu Muogbo, Ikponmwosa Jude Ogieuhi, David Isarinade, Bonaventure Ukoaka, Ayodeji Akinmeji, Irene Ajayi, Ezenwoba Chidiogo, Owolabi Samuel, Habeebat Nurudeen-Busari, Abdulbasit Opeyemi Muili, David B Olawade","doi":"10.1186/s40842-024-00176-7","DOIUrl":null,"url":null,"abstract":"<p><p>Gestational Diabetes Mellitus (GDM) poses significant health risks to mothers and infants. Early prediction and effective management are crucial to improving outcomes. Machine learning techniques have emerged as powerful tools for GDM prediction. This review compiles and analyses the available studies to highlight key findings and trends in the application of machine learning for GDM prediction. A comprehensive search of relevant studies published between 2000 and September 2023 was conducted. Fourteen studies were selected based on their focus on machine learning for GDM prediction. These studies were subjected to rigorous analysis to identify common themes and trends. The review revealed several key themes. Models capable of predicting GDM risk during the early stages of pregnancy were identified from the studies reviewed. Several studies underscored the necessity of tailoring predictive models to specific populations and demographic groups. These findings highlighted the limitations of uniform guidelines for diverse populations. Moreover, studies emphasised the value of integrating clinical data into GDM prediction models. This integration improved the treatment and care delivery for individuals diagnosed with GDM. While different machine learning models showed promise, selecting and weighing variables remains complex. The reviewed studies offer valuable insights into the complexities and potential solutions in GDM prediction using machine learning. The pursuit of accurate, early prediction models, the consideration of diverse populations, clinical data, and emerging data sources underscore the commitment of researchers to improve healthcare outcomes for pregnant individuals at risk of GDM.</p>","PeriodicalId":56339,"journal":{"name":"Clinical Diabetes and Endocrinology","volume":"10 1","pages":"18"},"PeriodicalIF":0.0000,"publicationDate":"2024-06-25","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11197257/pdf/","citationCount":"0","resultStr":"{\"title\":\"The role of machine learning algorithms in detection of gestational diabetes; a narrative review of current evidence.\",\"authors\":\"Emmanuel Kokori, Gbolahan Olatunji, Nicholas Aderinto, Ifeanyichukwu Muogbo, Ikponmwosa Jude Ogieuhi, David Isarinade, Bonaventure Ukoaka, Ayodeji Akinmeji, Irene Ajayi, Ezenwoba Chidiogo, Owolabi Samuel, Habeebat Nurudeen-Busari, Abdulbasit Opeyemi Muili, David B Olawade\",\"doi\":\"10.1186/s40842-024-00176-7\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>Gestational Diabetes Mellitus (GDM) poses significant health risks to mothers and infants. 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Moreover, studies emphasised the value of integrating clinical data into GDM prediction models. This integration improved the treatment and care delivery for individuals diagnosed with GDM. While different machine learning models showed promise, selecting and weighing variables remains complex. The reviewed studies offer valuable insights into the complexities and potential solutions in GDM prediction using machine learning. 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The role of machine learning algorithms in detection of gestational diabetes; a narrative review of current evidence.
Gestational Diabetes Mellitus (GDM) poses significant health risks to mothers and infants. Early prediction and effective management are crucial to improving outcomes. Machine learning techniques have emerged as powerful tools for GDM prediction. This review compiles and analyses the available studies to highlight key findings and trends in the application of machine learning for GDM prediction. A comprehensive search of relevant studies published between 2000 and September 2023 was conducted. Fourteen studies were selected based on their focus on machine learning for GDM prediction. These studies were subjected to rigorous analysis to identify common themes and trends. The review revealed several key themes. Models capable of predicting GDM risk during the early stages of pregnancy were identified from the studies reviewed. Several studies underscored the necessity of tailoring predictive models to specific populations and demographic groups. These findings highlighted the limitations of uniform guidelines for diverse populations. Moreover, studies emphasised the value of integrating clinical data into GDM prediction models. This integration improved the treatment and care delivery for individuals diagnosed with GDM. While different machine learning models showed promise, selecting and weighing variables remains complex. The reviewed studies offer valuable insights into the complexities and potential solutions in GDM prediction using machine learning. The pursuit of accurate, early prediction models, the consideration of diverse populations, clinical data, and emerging data sources underscore the commitment of researchers to improve healthcare outcomes for pregnant individuals at risk of GDM.
期刊介绍:
Clinical Diabetes and Endocrinology is an open access journal publishing within the field of diabetes and endocrine disease. The journal aims to provide a widely available resource for people working within the field of diabetes and endocrinology, in order to improve the care of people affected by these conditions. The audience includes, but is not limited to, physicians, researchers, nurses, nutritionists, pharmacists, podiatrists, psychologists, epidemiologists, exercise physiologists and health care researchers. Research articles include patient-based research (clinical trials, clinical studies, and others), translational research (translation of basic science to clinical practice, translation of clinical practice to policy and others), as well as epidemiology and health care research. Clinical articles include case reports, case seminars, consensus statements, clinical practice guidelines and evidence-based medicine. Only articles considered to contribute new knowledge to the field will be considered for publication.