A Machine Learning Approach to Predict Creatine Kinase Test Results

Most of the research done in the literature are based on statistical approaches and used for deriving reference limits based on lab results. As more data are available to the researchers, ML methods are more effectively used by the clinicians and practitioners to reduce cost and provide more accurat...

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Main Authors: Zehra Nur Canbolat, Gökhan Silahtaroğlu, Özge Doğuç, Nevin Yılmaztürk
Format: Article
Language:English
Published: Ital Publication 2020-08-01
Series:Emerging Science Journal
Subjects:
Online Access:https://ijournalse.org/index.php/ESJ/article/view/339
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spelling doaj-7c9c0d5bbbde4694965b6f12cf94233a2020-11-25T04:00:56ZengItal PublicationEmerging Science Journal2610-91822020-08-014428329610.28991/esj-2020-01231137A Machine Learning Approach to Predict Creatine Kinase Test ResultsZehra Nur Canbolat0Gökhan Silahtaroğlu1Özge Doğuç2Nevin Yılmaztürk3Management Information Systems, Istanbul Medipol University, Istanbul,a) Management Information Systems, Istanbul Medipol University, Istanbul, Turkey b) Pusula Enterprise Business Solutions - Research and Development Centre, Istanbul,Management Information Systems, Istanbul Medipol University, Istanbul,Pusula Enterprise Business Solutions - Research and Development Centre, Istanbul,Most of the research done in the literature are based on statistical approaches and used for deriving reference limits based on lab results. As more data are available to the researchers, ML methods are more effectively used by the clinicians and practitioners to reduce cost and provide more accurate diagnoses. This study aims to contribute to the medical laboratory processes by providing an automated method in order to predict the lab results accurately by machine learning from the previous test results. All patient data obtained have been anonymized, and a total of 449,471 test results have been used to build an integrated dataset. A total of 107,646 unique patients’ data has been used. This study aims to predict the value range of the Creatine Kinase tests, which are taken in separate tubes and usually needs more processing time than the other tests do. Using the lab results and the Random Forest Algorithm, this study reports that the outcome of the Creatine Kinase test can be determined with 97% accuracy by using the AST and ALT test values. This is an important achievement for the practitioners and the patients, as this study submits significant reduction in Creating Kinase test evaluation time.https://ijournalse.org/index.php/ESJ/article/view/339laboratory testscreatine kinasedata miningmachine learningdecision tree.
collection DOAJ
language English
format Article
sources DOAJ
author Zehra Nur Canbolat
Gökhan Silahtaroğlu
Özge Doğuç
Nevin Yılmaztürk
spellingShingle Zehra Nur Canbolat
Gökhan Silahtaroğlu
Özge Doğuç
Nevin Yılmaztürk
A Machine Learning Approach to Predict Creatine Kinase Test Results
Emerging Science Journal
laboratory tests
creatine kinase
data mining
machine learning
decision tree.
author_facet Zehra Nur Canbolat
Gökhan Silahtaroğlu
Özge Doğuç
Nevin Yılmaztürk
author_sort Zehra Nur Canbolat
title A Machine Learning Approach to Predict Creatine Kinase Test Results
title_short A Machine Learning Approach to Predict Creatine Kinase Test Results
title_full A Machine Learning Approach to Predict Creatine Kinase Test Results
title_fullStr A Machine Learning Approach to Predict Creatine Kinase Test Results
title_full_unstemmed A Machine Learning Approach to Predict Creatine Kinase Test Results
title_sort machine learning approach to predict creatine kinase test results
publisher Ital Publication
series Emerging Science Journal
issn 2610-9182
publishDate 2020-08-01
description Most of the research done in the literature are based on statistical approaches and used for deriving reference limits based on lab results. As more data are available to the researchers, ML methods are more effectively used by the clinicians and practitioners to reduce cost and provide more accurate diagnoses. This study aims to contribute to the medical laboratory processes by providing an automated method in order to predict the lab results accurately by machine learning from the previous test results. All patient data obtained have been anonymized, and a total of 449,471 test results have been used to build an integrated dataset. A total of 107,646 unique patients’ data has been used. This study aims to predict the value range of the Creatine Kinase tests, which are taken in separate tubes and usually needs more processing time than the other tests do. Using the lab results and the Random Forest Algorithm, this study reports that the outcome of the Creatine Kinase test can be determined with 97% accuracy by using the AST and ALT test values. This is an important achievement for the practitioners and the patients, as this study submits significant reduction in Creating Kinase test evaluation time.
topic laboratory tests
creatine kinase
data mining
machine learning
decision tree.
url https://ijournalse.org/index.php/ESJ/article/view/339
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