4.6 Article

Prediction of metabolic and pre-metabolic syndromes using machine learning models with anthropometric, lifestyle, and biochemical factors from a middle-aged population in Korea

Related references

Note: Only part of the references are listed.
Article Integrative & Complementary Medicine

Metabolic Syndrome Prediction Models Using Machine Learning and Sasang Constitution Type

Ji-Eun Park et al.

Summary: Machine learning-derived models may be useful for predicting MetS, with the naive-Bayes method showing the highest sensitivity. The incorporation of Sasang constitution type can improve the sensitivity of all machine learning methods, except for the K-nearest neighbor method.

EVIDENCE-BASED COMPLEMENTARY AND ALTERNATIVE MEDICINE (2021)

Review Cardiac & Cardiovascular Systems

Early identification of metabolic syndrome risk: A review of reviews and proposal for defining pre-metabolic syndrome status

Eva Gesteiro et al.

Summary: Research suggests that serum uric acid, muscle strength, NAFLD, high serum triglycerides, and waist circumference play crucial roles in early identification of metabolic syndrome. However, indicators related to inflammatory/proinflammatory status show limited evidence. The concept of defining metabolic risk as PreMetSyn is proposed, emphasizing the importance of early interventions.

NUTRITION METABOLISM AND CARDIOVASCULAR DISEASES (2021)

Article Computer Science, Information Systems

Improving the Prediction of Heart Failure Patients' Survival Using SMOTE and Effective Data Mining Techniques

Abid Ishaq et al.

Summary: The study analyzed heart failure patient survival data, applied multiple classification models for prediction, and ultimately achieved the best accuracy with Extra Tree Classifier in data processing and training stages.

IEEE ACCESS (2021)

Letter Medicine, General & Internal

Trends in the Prevalence of Metabolic Syndrome in the United States, 2011-2016

Grishma Hirode et al.

JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION (2020)

Article Endocrinology & Metabolism

Prediction of metabolic syndrome based on sleep and work-related risk factors using an artificial neural network

Meysam Eyvazlou et al.

BMC ENDOCRINE DISORDERS (2020)

Article Computer Science, Information Systems

Metabolic Syndrome and Development of Diabetes Mellitus: Predictive Modeling Based on Machine Learning Techniques

Sajida Perveen et al.

IEEE ACCESS (2019)

Review Peripheral Vascular Disease

The Global Epidemic of the Metabolic Syndrome

Mohammad G. Saklayen

CURRENT HYPERTENSION REPORTS (2018)

Review Endocrinology & Metabolism

Prevalence of metabolic syndrome in Middle-East countries: Meta-analysis of cross-sectional studies

Alireza Ansarimoghaddam et al.

DIABETES & METABOLIC SYNDROME-CLINICAL RESEARCH & REVIEWS (2018)

Article Public, Environmental & Occupational Health

Metabolic Syndrome Prevalence by Race/Ethnicity and Sex in the United States, National Health and Nutrition Examination Survey, 1988-2012

Justin Xavier Moore et al.

PREVENTING CHRONIC DISEASE (2017)

Article Multidisciplinary Sciences

Can machine-learning improve cardiovascular risk prediction using routine clinical data?

Stephen F. Weng et al.

PLOS ONE (2017)

Article Integrative & Complementary Medicine

Sasang constitutional types for the risk prediction of metabolic syndrome: a 14-year longitudinal prospective cohort study

Sunghee Lee et al.

BMC COMPLEMENTARY AND ALTERNATIVE MEDICINE (2017)

Article Cardiac & Cardiovascular Systems

Lifestyle Changes in Young Adulthood and Middle Age and Risk of Cardiovascular Disease and All-Cause Mortality: The Doetinchem Cohort Study

Gerben Hulsegge et al.

JOURNAL OF THE AMERICAN HEART ASSOCIATION (2016)

Article Health Care Sciences & Services

The Impact of Oversampling with SMOTE on the Performance of 3 Classifiers in Prediction of Type 2 Diabetes

Azra Ramezankhani et al.

MEDICAL DECISION MAKING (2016)

Article

Predicting Metabolic Syndrome Using the Random Forest Method

Apilak Worachartcheewan et al.

TheScientificWorldJOURNAL (2015)

Article

Predicting Metabolic Syndrome Using the Random Forest Method

Apilak Worachartcheewan et al.

Scientific World Journal (2015)

Article Endocrinology & Metabolism

Supplementary use of HbA1c as hyperglycemic criterion to detect metabolic syndrome

Parco M. Siu et al.

DIABETOLOGY & METABOLIC SYNDROME (2014)

Article Cardiac & Cardiovascular Systems

Metabolic syndrome in the prediction of cardiovascular events: the potential additive role of hsCRP and adiponectin

Merja Santaniemi et al.

EUROPEAN JOURNAL OF PREVENTIVE CARDIOLOGY (2014)

Article Endocrinology & Metabolism

Metabolic Syndrome and Risk of Cancer A systematic review and meta-analysis

Katherine Esposito et al.

DIABETES CARE (2012)

Article Clinical Neurology

The reliability and validity of the Korean version of the Pittsburgh Sleep Quality Index

Seung Il Sohn et al.

SLEEP AND BREATHING (2012)

Article Clinical Neurology

Self-reported sleep quality is associated with the metabolic syndrome

J. Richard Jennings et al.

SLEEP (2007)

Review Public, Environmental & Occupational Health

Development of the World Health Organization Global Physical Activity Questionnaire (GPAQ)

Timothy Armstrong et al.

JOURNAL OF PUBLIC HEALTH-HEIDELBERG (2006)

Article Integrative & Complementary Medicine

An alternative way to individualized medicine:: Psychological and physical traits of Sasang typology

H Chae et al.

JOURNAL OF ALTERNATIVE AND COMPLEMENTARY MEDICINE (2003)

Article Medicine, General & Internal

The metabolic syndrome and total and cardiovascular disease mortality in middle-aged men

HM Lakka et al.

JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION (2002)