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Publication details

Document type
Conference papers

Document subtype
Full paper

Title
Classification Methods Applied To The Diagnosis Of Pediatric Patients With Familial Hypercholesterolemia: Comparison Of Simon Broome Criteria With Logistic Regression And Modified Decision Tree Models

Participants in the publication
J. Albuquerque (Author)
A.C. Alves (Author)
M. Bourbon (Author)
Antunes, M. (Author)
Dep. Estatística e Investigação Operacional
CEAUL - Centro de Estatística e Aplicações

Date of Publication
2019-08-05

Event
Atherosclerosis

Publication Identifiers
ISSN - 0021-9150

Publisher
Elsevier BV

Volume
287

Document Identifiers
DOI - https://doi.org/10.1016/j.atherosclerosis.2019.06.657

Rankings
SCIMAGO Q1 (2018) - 1.748 - Cardiology and Cardiovascular Medicine
SCIMAGO Q1 (2018) - 1.748 - Cardiology and Cardiovascular Medicine
Web Of Science Q2 (2018) - 4.255 - CARDIAC & CARDIOVASCULAR SYSTEMS - SCIE


Export

APA
J. Albuquerque, A.C. Alves, M. Bourbon, Antunes, M., (2019). Classification Methods Applied To The Diagnosis Of Pediatric Patients With Familial Hypercholesterolemia: Comparison Of Simon Broome Criteria With Logistic Regression And Modified Decision Tree Models. Atherosclerosis, -

IEEE
J. Albuquerque, A.C. Alves, M. Bourbon, Antunes, M., "Classification Methods Applied To The Diagnosis Of Pediatric Patients With Familial Hypercholesterolemia: Comparison Of Simon Broome Criteria With Logistic Regression And Modified Decision Tree Models" in Atherosclerosis, , 2019, pp. -, doi: 10.1016/j.atherosclerosis.2019.06.657

BIBTEX
@InProceedings{39915, author = {J. Albuquerque and A.C. Alves and M. Bourbon and Antunes, M.}, title = {Classification Methods Applied To The Diagnosis Of Pediatric Patients With Familial Hypercholesterolemia: Comparison Of Simon Broome Criteria With Logistic Regression And Modified Decision Tree Models}, booktitle = {Atherosclerosis}, year = 2019, pages = {-}, address = {}, publisher = {Elsevier BV} }