Prediction of impacts on liver enzymes from the exposure of low-dose medical radiations through artificial intelligence algorithms

Detalhes bibliográficos
Autor(a) principal: Shahid,Saman
Data de Publicação: 2021
Outros Autores: Masood,Khalid, Khan,Abdul Waheed
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Revista da Associação Médica Brasileira (Online)
Texto Completo: http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0104-42302021000300248
Resumo: SUMMARY OBJECTIVES: This study aimed to develop artificial intelligence and machine learning-based models to predict alterations in liver enzymes from the exposure of low annual average effective doses in radiology and nuclear medicine personnel of Institute of Nuclear Medicine and Oncology Hospital. METHODS: Ninety workers from the Radiology and Nuclear Medicine departments were included. A high-capacity thermoluminescent was used for annual average effective radiation dose measurements. The liver function tests were conducted for all subjects and controls. Three supervised learning models (multilayer precentron; logistic regression; and random forest) were applied and cross-validated to predict any alteration in liver enzymes. The t-test was applied to see if subjects and controls were significantly different in liver function tests. RESULTS: The annual average effective doses were in the range of 0.07–1.15 mSv. Alanine transaminase was 50% high and aspartate transaminase was 20% high in radiation workers. There existed a significant difference (p=0.0008) in Alanine-aminotransferase between radiation-exposed and radiation-unexposed workers. Random forest model achieved 90–96.6% accuracies in Alanine-aminotransferase and Aspartate-aminotransferase predictions. The second best classifier model was the Multilayer perceptron (65.5–80% accuracies). CONCLUSION: As there is a need of regular monitoring of hepatic function in radiation-exposed people, our artificial intelligence-based predicting model random forest is proved accurate in prediagnosing alterations in liver enzymes.
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spelling Prediction of impacts on liver enzymes from the exposure of low-dose medical radiations through artificial intelligence algorithmsAspartate aminotransferaseAlkaline phosphataseBilirubinAlanine aminotransferaseRadiation dosagesArtificial intelligenceMachine learningSUMMARY OBJECTIVES: This study aimed to develop artificial intelligence and machine learning-based models to predict alterations in liver enzymes from the exposure of low annual average effective doses in radiology and nuclear medicine personnel of Institute of Nuclear Medicine and Oncology Hospital. METHODS: Ninety workers from the Radiology and Nuclear Medicine departments were included. A high-capacity thermoluminescent was used for annual average effective radiation dose measurements. The liver function tests were conducted for all subjects and controls. Three supervised learning models (multilayer precentron; logistic regression; and random forest) were applied and cross-validated to predict any alteration in liver enzymes. The t-test was applied to see if subjects and controls were significantly different in liver function tests. RESULTS: The annual average effective doses were in the range of 0.07–1.15 mSv. Alanine transaminase was 50% high and aspartate transaminase was 20% high in radiation workers. There existed a significant difference (p=0.0008) in Alanine-aminotransferase between radiation-exposed and radiation-unexposed workers. Random forest model achieved 90–96.6% accuracies in Alanine-aminotransferase and Aspartate-aminotransferase predictions. The second best classifier model was the Multilayer perceptron (65.5–80% accuracies). CONCLUSION: As there is a need of regular monitoring of hepatic function in radiation-exposed people, our artificial intelligence-based predicting model random forest is proved accurate in prediagnosing alterations in liver enzymes.Associação Médica Brasileira2021-02-01info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersiontext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S0104-42302021000300248Revista da Associação Médica Brasileira v.67 n.2 2021reponame:Revista da Associação Médica Brasileira (Online)instname:Associação Médica Brasileira (AMB)instacron:AMB10.1590/1806-9282.67.02.20200653info:eu-repo/semantics/openAccessShahid,SamanMasood,KhalidKhan,Abdul Waheedeng2021-08-12T00:00:00Zoai:scielo:S0104-42302021000300248Revistahttps://ramb.amb.org.br/ultimas-edicoes/#https://old.scielo.br/oai/scielo-oai.php||ramb@amb.org.br1806-92820104-4230opendoar:2021-08-12T00:00Revista da Associação Médica Brasileira (Online) - Associação Médica Brasileira (AMB)false
dc.title.none.fl_str_mv Prediction of impacts on liver enzymes from the exposure of low-dose medical radiations through artificial intelligence algorithms
title Prediction of impacts on liver enzymes from the exposure of low-dose medical radiations through artificial intelligence algorithms
spellingShingle Prediction of impacts on liver enzymes from the exposure of low-dose medical radiations through artificial intelligence algorithms
Shahid,Saman
Aspartate aminotransferase
Alkaline phosphatase
Bilirubin
Alanine aminotransferase
Radiation dosages
Artificial intelligence
Machine learning
title_short Prediction of impacts on liver enzymes from the exposure of low-dose medical radiations through artificial intelligence algorithms
title_full Prediction of impacts on liver enzymes from the exposure of low-dose medical radiations through artificial intelligence algorithms
title_fullStr Prediction of impacts on liver enzymes from the exposure of low-dose medical radiations through artificial intelligence algorithms
title_full_unstemmed Prediction of impacts on liver enzymes from the exposure of low-dose medical radiations through artificial intelligence algorithms
title_sort Prediction of impacts on liver enzymes from the exposure of low-dose medical radiations through artificial intelligence algorithms
author Shahid,Saman
author_facet Shahid,Saman
Masood,Khalid
Khan,Abdul Waheed
author_role author
author2 Masood,Khalid
Khan,Abdul Waheed
author2_role author
author
dc.contributor.author.fl_str_mv Shahid,Saman
Masood,Khalid
Khan,Abdul Waheed
dc.subject.por.fl_str_mv Aspartate aminotransferase
Alkaline phosphatase
Bilirubin
Alanine aminotransferase
Radiation dosages
Artificial intelligence
Machine learning
topic Aspartate aminotransferase
Alkaline phosphatase
Bilirubin
Alanine aminotransferase
Radiation dosages
Artificial intelligence
Machine learning
description SUMMARY OBJECTIVES: This study aimed to develop artificial intelligence and machine learning-based models to predict alterations in liver enzymes from the exposure of low annual average effective doses in radiology and nuclear medicine personnel of Institute of Nuclear Medicine and Oncology Hospital. METHODS: Ninety workers from the Radiology and Nuclear Medicine departments were included. A high-capacity thermoluminescent was used for annual average effective radiation dose measurements. The liver function tests were conducted for all subjects and controls. Three supervised learning models (multilayer precentron; logistic regression; and random forest) were applied and cross-validated to predict any alteration in liver enzymes. The t-test was applied to see if subjects and controls were significantly different in liver function tests. RESULTS: The annual average effective doses were in the range of 0.07–1.15 mSv. Alanine transaminase was 50% high and aspartate transaminase was 20% high in radiation workers. There existed a significant difference (p=0.0008) in Alanine-aminotransferase between radiation-exposed and radiation-unexposed workers. Random forest model achieved 90–96.6% accuracies in Alanine-aminotransferase and Aspartate-aminotransferase predictions. The second best classifier model was the Multilayer perceptron (65.5–80% accuracies). CONCLUSION: As there is a need of regular monitoring of hepatic function in radiation-exposed people, our artificial intelligence-based predicting model random forest is proved accurate in prediagnosing alterations in liver enzymes.
publishDate 2021
dc.date.none.fl_str_mv 2021-02-01
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publisher.none.fl_str_mv Associação Médica Brasileira
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