Apply machine learning to predict cardiovascular risk in rural clinics from Mexico / Misael Zambrano-de la Torre ... [et al.]
Approximately 41 million people in the world die each year from cardiovascular diseases. In Mexico, it is one of the main causes of death per year. This problem is even more critical in rural areas of Mexico. Due to the limited number of specialized medical equipment available in these clinics. The...
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my.uitm.ir.562282022-12-05T00:08:52Z https://ir.uitm.edu.my/id/eprint/56228/ Apply machine learning to predict cardiovascular risk in rural clinics from Mexico / Misael Zambrano-de la Torre ... [et al.] Misael Zambrano-de la, Torre Maximiliano, Guzmán-Fernández Claudia, Sifuentes-Gallardo Hamurabi, Gamboa-Rosales Huizilopoztli, Luna-García Ernesto, Sandoval-García Ramiro, Esquivel-Felix Héctor, Durán-Muñoz Medical technology Computer applications to medicine. Medical informatics Approximately 41 million people in the world die each year from cardiovascular diseases. In Mexico, it is one of the main causes of death per year. This problem is even more critical in rural areas of Mexico. Due to the limited number of specialized medical equipment available in these clinics. Therefore, the objective of this work is to propose a new stage in the methodology used in machine learning for the classification of cardiovascular risk in rural clinics in Mexico. The importance of this work is being able to classify patients based only on non-invasive attributes, avoiding the use of specialized clinical equipment. For this purpose, the Heart Disease Data Set repository is used to implement the new stage. The methodology to be implemented consists of 6 stages. The performance of the three algorithms is compared in terms of four parameters. The results obtained show that only 4 attributes are required for classification with an 80% acceptance rate. 2021 Conference or Workshop Item PeerReviewed text en https://ir.uitm.edu.my/id/eprint/56228/1/56228.pdf Apply machine learning to predict cardiovascular risk in rural clinics from Mexico / Misael Zambrano-de la Torre ... [et al.]. (2021) In: e-Proceedings of the 5th International Conference on Computing, Mathematics and Statistics (iCMS 2021), 4-5 August 2021. |
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Medical technology Computer applications to medicine. Medical informatics Misael Zambrano-de la, Torre Maximiliano, Guzmán-Fernández Claudia, Sifuentes-Gallardo Hamurabi, Gamboa-Rosales Huizilopoztli, Luna-García Ernesto, Sandoval-García Ramiro, Esquivel-Felix Héctor, Durán-Muñoz Apply machine learning to predict cardiovascular risk in rural clinics from Mexico / Misael Zambrano-de la Torre ... [et al.] |
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Approximately 41 million people in the world die each year from cardiovascular diseases. In Mexico, it is one of the main causes of death per year. This problem is even more critical in rural areas of Mexico. Due to the limited number of specialized medical equipment available in these
clinics. Therefore, the objective of this work is to propose a new stage in the methodology used in machine learning for the classification of cardiovascular risk in rural clinics in Mexico. The importance of this work is being able to classify patients based only on non-invasive attributes,
avoiding the use of specialized clinical equipment. For this purpose, the Heart Disease Data Set repository is used to implement the new stage. The methodology to be implemented consists of 6 stages. The performance of the three algorithms is compared in terms of four parameters. The results
obtained show that only 4 attributes are required for classification with an 80% acceptance rate. |
format |
Conference or Workshop Item |
author |
Misael Zambrano-de la, Torre Maximiliano, Guzmán-Fernández Claudia, Sifuentes-Gallardo Hamurabi, Gamboa-Rosales Huizilopoztli, Luna-García Ernesto, Sandoval-García Ramiro, Esquivel-Felix Héctor, Durán-Muñoz |
author_facet |
Misael Zambrano-de la, Torre Maximiliano, Guzmán-Fernández Claudia, Sifuentes-Gallardo Hamurabi, Gamboa-Rosales Huizilopoztli, Luna-García Ernesto, Sandoval-García Ramiro, Esquivel-Felix Héctor, Durán-Muñoz |
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Misael Zambrano-de la, Torre |
title |
Apply machine learning to predict cardiovascular risk in rural clinics from Mexico / Misael Zambrano-de la Torre ... [et al.] |
title_short |
Apply machine learning to predict cardiovascular risk in rural clinics from Mexico / Misael Zambrano-de la Torre ... [et al.] |
title_full |
Apply machine learning to predict cardiovascular risk in rural clinics from Mexico / Misael Zambrano-de la Torre ... [et al.] |
title_fullStr |
Apply machine learning to predict cardiovascular risk in rural clinics from Mexico / Misael Zambrano-de la Torre ... [et al.] |
title_full_unstemmed |
Apply machine learning to predict cardiovascular risk in rural clinics from Mexico / Misael Zambrano-de la Torre ... [et al.] |
title_sort |
apply machine learning to predict cardiovascular risk in rural clinics from mexico / misael zambrano-de la torre ... [et al.] |
publishDate |
2021 |
url |
https://ir.uitm.edu.my/id/eprint/56228/1/56228.pdf https://ir.uitm.edu.my/id/eprint/56228/ |
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1751539854254014464 |
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13.211869 |