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New Approach for Risk Estimation Algorithms of BRCA1/2 Negativeness Detection with Modelling Supervised Machine Learning Techniques

BRCA1/2 gene testing is a difficult, expensive, and time-consuming test which requires excessive work load. The identification of the BRCA1/2 gene mutations is significantly important in the selection of treatment and the risk of secondary cancer. We aimed to develop an algorithm considering all the...

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Autores principales: Yazici, Hulya, Odemis, Demet Akdeniz, Aksu, Dogukan, Erdogan, Ozge Sukruoglu, Tuncer, Seref Bugra, Avsar, Mukaddes, Kilic, Seda, Turkcan, Gozde Kuru, Celik, Betul, Aydin, Muhammed Ali
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7787793/
https://www.ncbi.nlm.nih.gov/pubmed/33488844
http://dx.doi.org/10.1155/2020/8594090
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author Yazici, Hulya
Odemis, Demet Akdeniz
Aksu, Dogukan
Erdogan, Ozge Sukruoglu
Tuncer, Seref Bugra
Avsar, Mukaddes
Kilic, Seda
Turkcan, Gozde Kuru
Celik, Betul
Aydin, Muhammed Ali
author_facet Yazici, Hulya
Odemis, Demet Akdeniz
Aksu, Dogukan
Erdogan, Ozge Sukruoglu
Tuncer, Seref Bugra
Avsar, Mukaddes
Kilic, Seda
Turkcan, Gozde Kuru
Celik, Betul
Aydin, Muhammed Ali
author_sort Yazici, Hulya
collection PubMed
description BRCA1/2 gene testing is a difficult, expensive, and time-consuming test which requires excessive work load. The identification of the BRCA1/2 gene mutations is significantly important in the selection of treatment and the risk of secondary cancer. We aimed to develop an algorithm considering all the clinical, demographic, and genetic features of patients for identifying the BRCA1/2 negativity in the present study. An experimental dataset was created with the collection of the all clinical, demographic, and genetic features of breast cancer patients for 20 years. This dataset consisted of 125 features of 2070 high-risk breast cancer patients. All data were numeralized and normalized for detection of the BRCA1/2 negativity in the machine learning algorithm. The performance of the algorithm was identified by studying the machine learning model with the test data. k nearest neighbours (KNN) and decision tree (DT) accuracy rates of 9 features involving Dataset 2 were found to be the most effective. The removal of the unnecessary data in the dataset by reducing the number of features was shown to increase the accuracy rate of algorithm compared with the DT. BRCA1/2 negativity was identified without performing the BRCA1/2 gene test with 92.88% accuracy within minutes in high-risk breast cancer patients with this algorithm, and the test associated result waiting stress, time, and money loss were prevented. That algorithm is suggested be useful in fast performing of the treatment plans of patients and accurately in addition to speeding up the clinical practice.
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spelling pubmed-77877932021-01-22 New Approach for Risk Estimation Algorithms of BRCA1/2 Negativeness Detection with Modelling Supervised Machine Learning Techniques Yazici, Hulya Odemis, Demet Akdeniz Aksu, Dogukan Erdogan, Ozge Sukruoglu Tuncer, Seref Bugra Avsar, Mukaddes Kilic, Seda Turkcan, Gozde Kuru Celik, Betul Aydin, Muhammed Ali Dis Markers Research Article BRCA1/2 gene testing is a difficult, expensive, and time-consuming test which requires excessive work load. The identification of the BRCA1/2 gene mutations is significantly important in the selection of treatment and the risk of secondary cancer. We aimed to develop an algorithm considering all the clinical, demographic, and genetic features of patients for identifying the BRCA1/2 negativity in the present study. An experimental dataset was created with the collection of the all clinical, demographic, and genetic features of breast cancer patients for 20 years. This dataset consisted of 125 features of 2070 high-risk breast cancer patients. All data were numeralized and normalized for detection of the BRCA1/2 negativity in the machine learning algorithm. The performance of the algorithm was identified by studying the machine learning model with the test data. k nearest neighbours (KNN) and decision tree (DT) accuracy rates of 9 features involving Dataset 2 were found to be the most effective. The removal of the unnecessary data in the dataset by reducing the number of features was shown to increase the accuracy rate of algorithm compared with the DT. BRCA1/2 negativity was identified without performing the BRCA1/2 gene test with 92.88% accuracy within minutes in high-risk breast cancer patients with this algorithm, and the test associated result waiting stress, time, and money loss were prevented. That algorithm is suggested be useful in fast performing of the treatment plans of patients and accurately in addition to speeding up the clinical practice. Hindawi 2020-12-09 /pmc/articles/PMC7787793/ /pubmed/33488844 http://dx.doi.org/10.1155/2020/8594090 Text en Copyright © 2020 Hulya Yazici et al. https://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Yazici, Hulya
Odemis, Demet Akdeniz
Aksu, Dogukan
Erdogan, Ozge Sukruoglu
Tuncer, Seref Bugra
Avsar, Mukaddes
Kilic, Seda
Turkcan, Gozde Kuru
Celik, Betul
Aydin, Muhammed Ali
New Approach for Risk Estimation Algorithms of BRCA1/2 Negativeness Detection with Modelling Supervised Machine Learning Techniques
title New Approach for Risk Estimation Algorithms of BRCA1/2 Negativeness Detection with Modelling Supervised Machine Learning Techniques
title_full New Approach for Risk Estimation Algorithms of BRCA1/2 Negativeness Detection with Modelling Supervised Machine Learning Techniques
title_fullStr New Approach for Risk Estimation Algorithms of BRCA1/2 Negativeness Detection with Modelling Supervised Machine Learning Techniques
title_full_unstemmed New Approach for Risk Estimation Algorithms of BRCA1/2 Negativeness Detection with Modelling Supervised Machine Learning Techniques
title_short New Approach for Risk Estimation Algorithms of BRCA1/2 Negativeness Detection with Modelling Supervised Machine Learning Techniques
title_sort new approach for risk estimation algorithms of brca1/2 negativeness detection with modelling supervised machine learning techniques
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7787793/
https://www.ncbi.nlm.nih.gov/pubmed/33488844
http://dx.doi.org/10.1155/2020/8594090
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