Artificial Intelligence to Assist Clinical Diagnosis in Medicine
Medicine is one of the elds of knowledge that would most bene t from a closer interaction with Computer studies and Mathematics by optimizing complex, imperfect processes such as differential diagnosis; this is the domain of Machine Learning, a branch of Arti cial Intelligence that builds and studie...
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Colegio Mexicano de Inmunología Clínica y Alergia, A.C.
2014-03-01
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doaj-38faefe84b92423caa6793db807a61d22020-11-24T23:14:52ZspaColegio Mexicano de Inmunología Clínica y Alergia, A.C.Revista Alergia México0002-51512448-91902014-03-0161211012010.29262/ram.v61i2.3342Artificial Intelligence to Assist Clinical Diagnosis in MedicineSaúl Oswaldo Lugo-Reyes0Guadalupe Maldonado-Colín1Chiharu Murata2Secretaría de Salud, Instituto Nacional de Pediatría, Unidad de Investigación en Inmunodeficiencias, Ciudad de MéxicoSecretaría de Salud, Instituto Nacional de Pediatría, Ciudad de MéxicoSecretaría de Salud, Instituto Nacional de Pediatría, Departamento de Metodología de la Investigación, Ciudad de MéxicoMedicine is one of the elds of knowledge that would most bene t from a closer interaction with Computer studies and Mathematics by optimizing complex, imperfect processes such as differential diagnosis; this is the domain of Machine Learning, a branch of Arti cial Intelligence that builds and studies systems capable of learning from a set of training data, in order to optimize classi cation and prediction processes. In Mexico during the last few years, progress has been made on the implementation of electronic clinical records, so that the National Institutes of Health already have accumulated a wealth of stored data. For those data to become knowledge, they need to be processed and analyzed through complex statistical methods, as it is already being done in other countries, employing: case-based reasoning, artificial neural networks, Bayesian classi ers, multivariate logistic regression, or support vector machines, among other methodologies; to assist the clinical diagnosis of acute appendicitis, breast cancer and chronic liver disease, among a wide array of maladies. In this review we sift through concepts, antecedents, current examples and methodologies of machine learning-assisted clinical diagnosis.http://revistaalergia.mx/ojs/index.php/ram/article/view/33inteligencia artificialdiagnóstico clínicoaprendizaje automáticodiagnóstico diferencialminería de datosregresión logísticaapoyo en decisión clínica |
collection |
DOAJ |
language |
Spanish |
format |
Article |
sources |
DOAJ |
author |
Saúl Oswaldo Lugo-Reyes Guadalupe Maldonado-Colín Chiharu Murata |
spellingShingle |
Saúl Oswaldo Lugo-Reyes Guadalupe Maldonado-Colín Chiharu Murata Artificial Intelligence to Assist Clinical Diagnosis in Medicine Revista Alergia México inteligencia artificial diagnóstico clínico aprendizaje automático diagnóstico diferencial minería de datos regresión logística apoyo en decisión clínica |
author_facet |
Saúl Oswaldo Lugo-Reyes Guadalupe Maldonado-Colín Chiharu Murata |
author_sort |
Saúl Oswaldo Lugo-Reyes |
title |
Artificial Intelligence to Assist Clinical Diagnosis in Medicine |
title_short |
Artificial Intelligence to Assist Clinical Diagnosis in Medicine |
title_full |
Artificial Intelligence to Assist Clinical Diagnosis in Medicine |
title_fullStr |
Artificial Intelligence to Assist Clinical Diagnosis in Medicine |
title_full_unstemmed |
Artificial Intelligence to Assist Clinical Diagnosis in Medicine |
title_sort |
artificial intelligence to assist clinical diagnosis in medicine |
publisher |
Colegio Mexicano de Inmunología Clínica y Alergia, A.C. |
series |
Revista Alergia México |
issn |
0002-5151 2448-9190 |
publishDate |
2014-03-01 |
description |
Medicine is one of the elds of knowledge that would most bene t from a closer interaction with Computer studies and Mathematics by optimizing complex, imperfect processes such as differential diagnosis; this is the domain of Machine Learning, a branch of Arti cial Intelligence that builds and studies systems capable of learning from a set of training data, in order to optimize classi cation and prediction processes. In Mexico during the last few years, progress has been made on the implementation of electronic clinical records, so that the National Institutes of Health already have accumulated a wealth of stored data. For those data to become knowledge, they need to be processed and analyzed through complex statistical methods, as it is already being done in other countries, employing: case-based reasoning, artificial neural networks, Bayesian classi ers, multivariate logistic regression, or support vector machines, among other methodologies; to assist the clinical diagnosis of acute appendicitis, breast cancer and chronic liver disease, among a wide array of maladies. In this review we sift through concepts, antecedents, current examples and methodologies of machine learning-assisted clinical diagnosis. |
topic |
inteligencia artificial diagnóstico clínico aprendizaje automático diagnóstico diferencial minería de datos regresión logística apoyo en decisión clínica |
url |
http://revistaalergia.mx/ojs/index.php/ram/article/view/33 |
work_keys_str_mv |
AT sauloswaldolugoreyes artificialintelligencetoassistclinicaldiagnosisinmedicine AT guadalupemaldonadocolin artificialintelligencetoassistclinicaldiagnosisinmedicine AT chiharumurata artificialintelligencetoassistclinicaldiagnosisinmedicine |
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