Log InRegister
Quick Links : The Mindat ManualThe Rock H. Currier Digital LibraryMindat Newsletter [Free Download]
Home PageAbout MindatThe Mindat ManualHistory of MindatCopyright StatusWho We AreContact UsAdvertise on Mindat
Donate to MindatCorporate SponsorshipSponsor a PageSponsored PagesMindat AdvertisersAdvertise on Mindat
Learning CenterWhat is a mineral?The most common minerals on earthInformation for EducatorsMindat ArticlesThe ElementsThe Rock H. Currier Digital LibraryGeologic Time
Minerals by PropertiesMinerals by ChemistryMineral Visual ExplorerAdvanced Locality SearchRandom MineralRandom LocalitySearch by minIDLocalities Near MeSearch ArticlesSearch GlossaryMore Search Options
Search For:
Mineral Name:
Locality Name:
Keyword(s):
 
The Mindat ManualAdd a New PhotoRate PhotosLocality Edit ReportCoordinate Completion ReportAdd Glossary Item
Mining CompaniesStatisticsUsersMineral MuseumsClubs & OrganizationsMineral Shows & EventsThe Mindat DirectoryDevice SettingsThe Mineral QuizTime Machine
Photo SearchPhoto GalleriesSearch by ColorPhoto Colour ExplorerNew Photos TodayNew Photos YesterdayMembers' Photo GalleriesPast Photo of the Day GalleryPhotography

Valdéz-Vega, Rodolfo Iván; Noboa-Velástegui, Jacqueline; Fletes-Rayas, Ana Lilia; Álvarez, Iñaki; Ramos-Marquez, Martha Eloisa; Ruíz-Quezada, Sandra Luz; Torres-Carrillo, Nora Magdalena; Navarro-Hernández, Rosa Elena (2025) Predicting Metabolic Syndrome Using Supervised Machine Learning: A Multivariate Parameter Approach. International Journal of Molecular Sciences, 26 (20). doi:10.3390/ijms26209897

Advanced
   -   Only viewable:
Reference TypeJournal (article/letter/editorial)
TitlePredicting Metabolic Syndrome Using Supervised Machine Learning: A Multivariate Parameter Approach
JournalInternational Journal of Molecular Sciences
AuthorsValdéz-Vega, Rodolfo IvánAuthor
Noboa-Velástegui, JacquelineAuthor
Fletes-Rayas, Ana LiliaAuthor
Álvarez, IñakiAuthor
Ramos-Marquez, Martha EloisaAuthor
Ruíz-Quezada, Sandra LuzAuthor
Torres-Carrillo, Nora MagdalenaAuthor
Navarro-Hernández, Rosa ElenaAuthor
Year2025 (October 11)Volume26
Issue20
PublisherMDPI AG
DOIdoi:10.3390/ijms26209897Search in ResearchGate
Generate Citation Formats
Mindat Ref. ID19087094Long-form Identifiermindat:1:5:19087094:4
GUID0
Full ReferenceValdéz-Vega, Rodolfo Iván; Noboa-Velástegui, Jacqueline; Fletes-Rayas, Ana Lilia; Álvarez, Iñaki; Ramos-Marquez, Martha Eloisa; Ruíz-Quezada, Sandra Luz; Torres-Carrillo, Nora Magdalena; Navarro-Hernández, Rosa Elena (2025) Predicting Metabolic Syndrome Using Supervised Machine Learning: A Multivariate Parameter Approach. International Journal of Molecular Sciences, 26 (20). doi:10.3390/ijms26209897
Plain TextValdéz-Vega, Rodolfo Iván; Noboa-Velástegui, Jacqueline; Fletes-Rayas, Ana Lilia; Álvarez, Iñaki; Ramos-Marquez, Martha Eloisa; Ruíz-Quezada, Sandra Luz; Torres-Carrillo, Nora Magdalena; Navarro-Hernández, Rosa Elena (2025) Predicting Metabolic Syndrome Using Supervised Machine Learning: A Multivariate Parameter Approach. International Journal of Molecular Sciences, 26 (20). doi:10.3390/ijms26209897
In(2025, October) International Journal of Molecular Sciences Vol. 26 (20). MDPI AG

References Listed

These are the references the publisher has listed as being connected to the article. Please check the article itself for the full list of references which may differ. Not all references are currently linkable within the Digital Library.

Not Yet Imported: Cells - journal-article : 10.3390/cells13050380

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.3389/fendo.2015.00055

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1038/s41580-023-00680-1

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1055/a-1263-0898

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1016/j.cell.2023.01.035

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Guan (2024) Crit. Care Interpretable machine learning model for new-onset atrial fibrillation prediction in critically ill patients: A multi-center study 28, 349
Not Yet Imported: - journal-article : 10.1371/journal.pone.0286635

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.3390/computation11090170

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Li, Z., Wu, W., and Kang, H. (2024). Machine Learning-Driven Metabolic Syndrome Prediction: An International Cohort Validation Study. Healthcare, 12.
Anwar (2025) J. Endocrinol. Investig. Artificial intelligence in the management of metabolic disorders: A comprehensive review 48, 1525
Choubey (2024) Egypt. J. Intern. Med. From prevention to management: Exploring AI’s role in metabolic syndrome management: A comprehensive review 36, 106
Liu (2025) Diabetes Metab. Res. Rev. Integrating Artificial Intelligence in the Diagnosis and Management of Metabolic Syndrome: A Comprehensive Review 41, e70039
Hossain, M.F., Hossain, S., Akter, M.N., Nahar, A., Liu, B., and Faruque, M.O. (2024). Metabolic syndrome predictive modelling in Bangladesh applying machine learning approach. PLoS ONE, 19.
Shin, D. (2024). Prediction of metabolic syndrome using machine learning approaches based on genetic and nutritional factors: A 14-year prospective-based cohort study. BMC Med. Genom., 17.
Goldman, O., Ben-Assuli, O., Ababa, S., Rogowski, O., and Berliner, S. (2025). Predicting metabolic syndrome: Machine learning techniques for improved preventive medicine. Health Inform. J., 31.
Not Yet Imported: Evidence-Based Complementary and Alternative Medicine - journal-article : 10.1155/2021/8315047

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1186/1472-6947-13-30

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1186/s12859-015-0610-4

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: Electronics - journal-article : 10.3390/electronics11060857

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1002/oby.20408

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Zhang (2024) JAMA Netw. Open Body Roundness Index and All-Cause Mortality Among US Adults 7, e2415051
Not Yet Imported: - journal-article : 10.1186/s12872-021-01905-x

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1111/obr.13023

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: Adipocyte - journal-article : 10.1080/21623945.2021.1893452

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Hajhamidiasl (2022) Nutr. Hosp. Predicting metabolic syndrome by visceral adiposity index, body roundness index, dysfunctional adiposity index, lipid accumulation product index, and body shape index in adults 39, 794
Keyif, B., and Yavuzcan, A. (2025). Visceral and Dysfunctional Adiposity Indices as Predictors of Insulin Resistance and Metabolic Syndrome in Women with Polycystic Ovary Syndrome: A Cross-Sectional Study. Medicina, 61.
Shim (2005) Diabetes Metab. J. The Relationship between Metabolic Syndrome and Small Dense Low Density Lipoprotein-Cholesterol 29, 548
Not Yet Imported: - journal-article : 10.2147/DMSO.S450783

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: Nutrition & Metabolism - journal-article : 10.1186/s12986-019-0334-y

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: Arteriosclerosis, Thrombosis, and Vascular Biology - journal-article : 10.1161/01.ATV.0000099786.99623.EF

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1186/1475-2840-13-103

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1080/21623945.2017.1402151

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Abdalla (2024) Ther. Adv. Endocrinol. Metab. Therapeutic potential of adiponectin in prediabetes: Strategies, challenges, and future directions 18, 15
Sekgala, M.D., Sewpaul, R., Kengne, A.P., Mchiza, Z., and Peer, N. (2024). Clinical utility of novel anthropometric indices in identifying type 2 diabetes mellitus among South African adult females. BMC Public Health, 24.
Not Yet Imported: - journal-article : 10.1016/j.beem.2013.06.008

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.3389/fendo.2019.00842

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Byeon (2024) ICIC Express Lett. Explainable AI using dart booster and lime algorithms for metabolic syndrome prediction in Korean adults 15, 1125
Not Yet Imported: - journal-article : 10.1186/s12902-022-01121-4

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: BMC Endocrine Disorders - journal-article : 10.1186/1472-6823-13-47

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
de Luis, D., Muñoz, M., Izaola, O., Gomez, J.J.L., Rico, D., and Primo, D. (2025). Body Roundness Index (BRI) Predicts Metabolic Syndrome in Postmenopausal Women with Obesity Better than Insulin Resistance. Diabetology, 6.
Cahyaningsih, I., Rokhman, M.R., Postma, M.J., and van der Schans, J. (2025). Accuracy of the Modified Finnish Diabetes Risk Score (Modified FINDRISC) for detecting metabolic syndrome: Findings from the Indonesian national health survey. PLoS ONE, 20.
Not Yet Imported: - journal-article : 10.1016/S0188-4409(03)00073-0

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Petri (2016) Mediat. Inflamm. Inverse Relationship of the CMKLR1 Relative Expression and Chemerin Serum Levels in Obesity with Dysmetabolic Phenotype and Insulin Resistance 2016, 3085390
Not Yet Imported: - journal-article : 10.1371/journal.pone.0246054

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: Diabetes and Vascular Disease Research - journal-article : 10.1177/1479164118816659

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: Circulation - journal-article : 10.1161/CIRCULATIONAHA.105.589655

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: PLoS ONE - journal-article : 10.1371/journal.pone.0039504

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1038/oby.2012.81

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1016/0895-4356(91)90059-I

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
(2023) Rev. Clínica Med. Fam. Relación predictiva de los índices de adiposidad visceral y adiposidad disfuncional con el riesgo cardiovascular en población laboral 16, 318
Not Yet Imported: - journal-article : 10.2337/dc09-1825

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1161/01.CIR.0000111245.75752.C6

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1242/dmm.001180

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1007/s11906-018-0812-z

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.3390/jsan12050067

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - book : 10.1007/978-1-4614-6849-3

If you would like this item imported into the Digital Library, please contact us quoting Book ID 9781461468486
Not Yet Imported: Current Research in Behavioral Sciences - journal-article : 10.1016/j.crbeha.2021.100053

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - book : 10.1007/978-0-387-98141-3

If you would like this item imported into the Digital Library, please contact us quoting Book ID 9780387981406
Not Yet Imported: Journal of Thoracic Disease - journal-article : 10.21037/jtd.2019.01.25

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1038/s41371-020-0314-8

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: Archives of Medical Science - journal-article : 10.5114/aoms/170960

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.2196/44666

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1177/0272989X06295361

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - journal-article : 10.1186/s41512-019-0064-7

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Not Yet Imported: - proceedings-article : 10.1145/2939672.2939778

If you would like this item imported into the Digital Library, please contact us quoting Journal ID
Valdez Vega, R.I., Noboa Velastegui, J.A., Torres Carrillo, N.M., Fletes Rayas, A.L., Ruiz Quezada, S.L., Ramos Marquez, M.E., Alvarez Perez, I., and Navarra Hernández, R.E. (2025, January 11–14). Parameters to Predicting Metabolic Syndrome by Improves the Performance of the Dysfunctional Adipose Index. Presented at the European Congress of Obesity, Málaga, Spain.


See Also

These are possibly similar items as determined by title/reference text matching only.

 
and/or  
Mindat.org® is an outreach project of the Hudson Institute of Mineralogy, a 501(c)(3) not-for-profit organization. Mindat® and mindat.org® are registered trademarks of the Hudson Institute of Mineralogy.
Copyright © mindat.org and the Hudson Institute of Mineralogy 1993-2026, except where stated. Most political location boundaries are © OpenStreetMap contributors. Mindat.org relies on the contributions of thousands of members and supporters. Founded in 2000 by Jolyon Ralph and Ida Chau.
To cite: Ralph, J., Von Bargen, D., Martynov, P., Zhang, J., Que, X., Prabhu, A., Morrison, S. M., Li, W., Chen, W., & Ma, X. (2025). Mindat.org: The open access mineralogy database to accelerate data-intensive geoscience research. American Mineralogist, 110(6), 833–844. doi:10.2138/am-2024-9486.
Privacy Policy - Terms & Conditions - Contact Us / DMCA issues - Report a bug/vulnerability Current server date and time: June 5, 2026 12:08:10
Go to top of page