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BRCA1-specific machine learning model predicts variant pathogenicity with high accuracy

Identification of novel BRCA1 variants outpaces their clinical annotation which highlights the importance of developing accurate computational methods for risk assessment. Therefore our aim was to develop a BRCA1-specific machine learning model to predict the pathogenicity of all types of BRCA1 vari...

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Autores principales: Khandakji, Mohannad, Habish, Hind Hassan Ahmed, Abdulla, Nawal Bakheet Salem, Kusasi, Sitti Apsa Albani, Abdou, Nema Mahmoud Ghobashy, Al-Mulla, Hajer Mahmoud M. A., Al Sulaiman, Reem Jawad A. A., Bu Jassoum, Salha M., Mifsud, Borbala
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Physiological Society 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10393322/
https://www.ncbi.nlm.nih.gov/pubmed/37335020
http://dx.doi.org/10.1152/physiolgenomics.00033.2023
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author Khandakji, Mohannad
Habish, Hind Hassan Ahmed
Abdulla, Nawal Bakheet Salem
Kusasi, Sitti Apsa Albani
Abdou, Nema Mahmoud Ghobashy
Al-Mulla, Hajer Mahmoud M. A.
Al Sulaiman, Reem Jawad A. A.
Bu Jassoum, Salha M.
Mifsud, Borbala
author_facet Khandakji, Mohannad
Habish, Hind Hassan Ahmed
Abdulla, Nawal Bakheet Salem
Kusasi, Sitti Apsa Albani
Abdou, Nema Mahmoud Ghobashy
Al-Mulla, Hajer Mahmoud M. A.
Al Sulaiman, Reem Jawad A. A.
Bu Jassoum, Salha M.
Mifsud, Borbala
author_sort Khandakji, Mohannad
collection PubMed
description Identification of novel BRCA1 variants outpaces their clinical annotation which highlights the importance of developing accurate computational methods for risk assessment. Therefore our aim was to develop a BRCA1-specific machine learning model to predict the pathogenicity of all types of BRCA1 variants and to apply this model and our previous BRCA2-specific model to assess BRCA variants of uncertain significance (VUS) among Qatari patients with breast cancer. We developed an XGBoost model that utilizes variant information such as position frequency and consequence as well as prediction scores from numerous in silico tools. We trained and tested the model with BRCA1 variants that were reviewed and classified by the Evidence-Based Network for the Interpretation of Germline Mutant Alleles (ENIGMA) consortium. In addition we tested the model’s performance on an independent set of missense variants of uncertain significance with experimentally determined functional scores. The model performed excellently in predicting the pathogenicity of ENIGMA-classified variants (accuracy: 99.9%) and in predicting the functional consequence of the independent set of missense variants (accuracy: 93.4%). Moreover it predicted 2 115 potentially pathogenic variants among the 31 058 unreviewed BRCA1 variants in the BRCA exchange database. Using two BRCA-specific models we did not identify any pathogenic BRCA1 variants among those found in patients in Qatar but predicted four potentially pathogenic BRCA2 variants, which could be prioritized for functional validation.
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spelling pubmed-103933222023-08-02 BRCA1-specific machine learning model predicts variant pathogenicity with high accuracy Khandakji, Mohannad Habish, Hind Hassan Ahmed Abdulla, Nawal Bakheet Salem Kusasi, Sitti Apsa Albani Abdou, Nema Mahmoud Ghobashy Al-Mulla, Hajer Mahmoud M. A. Al Sulaiman, Reem Jawad A. A. Bu Jassoum, Salha M. Mifsud, Borbala Physiol Genomics Research Article Identification of novel BRCA1 variants outpaces their clinical annotation which highlights the importance of developing accurate computational methods for risk assessment. Therefore our aim was to develop a BRCA1-specific machine learning model to predict the pathogenicity of all types of BRCA1 variants and to apply this model and our previous BRCA2-specific model to assess BRCA variants of uncertain significance (VUS) among Qatari patients with breast cancer. We developed an XGBoost model that utilizes variant information such as position frequency and consequence as well as prediction scores from numerous in silico tools. We trained and tested the model with BRCA1 variants that were reviewed and classified by the Evidence-Based Network for the Interpretation of Germline Mutant Alleles (ENIGMA) consortium. In addition we tested the model’s performance on an independent set of missense variants of uncertain significance with experimentally determined functional scores. The model performed excellently in predicting the pathogenicity of ENIGMA-classified variants (accuracy: 99.9%) and in predicting the functional consequence of the independent set of missense variants (accuracy: 93.4%). Moreover it predicted 2 115 potentially pathogenic variants among the 31 058 unreviewed BRCA1 variants in the BRCA exchange database. Using two BRCA-specific models we did not identify any pathogenic BRCA1 variants among those found in patients in Qatar but predicted four potentially pathogenic BRCA2 variants, which could be prioritized for functional validation. American Physiological Society 2023-08-01 2023-06-19 /pmc/articles/PMC10393322/ /pubmed/37335020 http://dx.doi.org/10.1152/physiolgenomics.00033.2023 Text en Copyright © 2023 The Authors. https://creativecommons.org/licenses/by/4.0/Licensed under Creative Commons Attribution CC-BY 4.0 (https://creativecommons.org/licenses/by/4.0/) . Published by the American Physiological Society.
spellingShingle Research Article
Khandakji, Mohannad
Habish, Hind Hassan Ahmed
Abdulla, Nawal Bakheet Salem
Kusasi, Sitti Apsa Albani
Abdou, Nema Mahmoud Ghobashy
Al-Mulla, Hajer Mahmoud M. A.
Al Sulaiman, Reem Jawad A. A.
Bu Jassoum, Salha M.
Mifsud, Borbala
BRCA1-specific machine learning model predicts variant pathogenicity with high accuracy
title BRCA1-specific machine learning model predicts variant pathogenicity with high accuracy
title_full BRCA1-specific machine learning model predicts variant pathogenicity with high accuracy
title_fullStr BRCA1-specific machine learning model predicts variant pathogenicity with high accuracy
title_full_unstemmed BRCA1-specific machine learning model predicts variant pathogenicity with high accuracy
title_short BRCA1-specific machine learning model predicts variant pathogenicity with high accuracy
title_sort brca1-specific machine learning model predicts variant pathogenicity with high accuracy
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10393322/
https://www.ncbi.nlm.nih.gov/pubmed/37335020
http://dx.doi.org/10.1152/physiolgenomics.00033.2023
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