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Integration of a Cross-Ancestry Polygenic Model With Clinical Risk Factors Improves Breast Cancer Risk Stratification

To develop and validate a cross-ancestry integrated risk score (caIRS) that combines a cross-ancestry polygenic risk score (caPRS) with a clinical estimator for breast cancer (BC) risk. We hypothesized that the caIRS is a better predictor of BC risk than clinical risk factors across diverse ancestry...

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Autores principales: Tshiaba, Placede T., Ratman, Dariusz K., Sun, Jiayi M., Tunstall, Tate S., Levy, Brynn, Shah, Premal S., Weitzel, Jeffrey N., Rabinowitz, Matthew, Kumar, Akash, Im, Kate M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer Health 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10309538/
https://www.ncbi.nlm.nih.gov/pubmed/36809055
http://dx.doi.org/10.1200/PO.22.00447
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author Tshiaba, Placede T.
Ratman, Dariusz K.
Sun, Jiayi M.
Tunstall, Tate S.
Levy, Brynn
Shah, Premal S.
Weitzel, Jeffrey N.
Rabinowitz, Matthew
Kumar, Akash
Im, Kate M.
author_facet Tshiaba, Placede T.
Ratman, Dariusz K.
Sun, Jiayi M.
Tunstall, Tate S.
Levy, Brynn
Shah, Premal S.
Weitzel, Jeffrey N.
Rabinowitz, Matthew
Kumar, Akash
Im, Kate M.
author_sort Tshiaba, Placede T.
collection PubMed
description To develop and validate a cross-ancestry integrated risk score (caIRS) that combines a cross-ancestry polygenic risk score (caPRS) with a clinical estimator for breast cancer (BC) risk. We hypothesized that the caIRS is a better predictor of BC risk than clinical risk factors across diverse ancestry groups. METHODS: We used diverse retrospective cohort data with longitudinal follow-up to develop a caPRS and integrate it with the Tyrer-Cuzick (T-C) clinical model. We tested the association between the caIRS and BC risk in two validation cohorts including > 130,000 women. We compared model discrimination for 5-year and remaining lifetime BC risk between the caIRS and T-C and assessed how the caIRS would affect screening in the clinic. RESULTS: The caIRS outperformed T-C alone for all populations tested in both validation cohorts and contributed significantly to risk prediction beyond T-C. The area under the receiver operating characteristic curve improved from 0.57 to 0.65, and the odds ratio per standard deviation increased from 1.35 (95% CI, 1.27 to 1.43) to 1.79 (95% CI, 1.70 to 1.88) in validation cohort 1 with similar improvements observed in validation cohort 2. We observed the largest gain in positive predictive value using the caIRS in Black/African American women across both validation cohorts, with an approximately two-fold increase and an equivalent negative predictive value as the T-C. In a multivariate, age-adjusted logistic regression model including both caIRS and T-C, caIRS remained significant, indicating that caIRS provides information over T-C alone. CONCLUSION: Adding a caPRS to the T-C model improves BC risk stratification for women of multiple ancestries, which could have implications for screening recommendations and prevention.
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spelling pubmed-103095382023-06-30 Integration of a Cross-Ancestry Polygenic Model With Clinical Risk Factors Improves Breast Cancer Risk Stratification Tshiaba, Placede T. Ratman, Dariusz K. Sun, Jiayi M. Tunstall, Tate S. Levy, Brynn Shah, Premal S. Weitzel, Jeffrey N. Rabinowitz, Matthew Kumar, Akash Im, Kate M. JCO Precis Oncol ORIGINAL REPORTS To develop and validate a cross-ancestry integrated risk score (caIRS) that combines a cross-ancestry polygenic risk score (caPRS) with a clinical estimator for breast cancer (BC) risk. We hypothesized that the caIRS is a better predictor of BC risk than clinical risk factors across diverse ancestry groups. METHODS: We used diverse retrospective cohort data with longitudinal follow-up to develop a caPRS and integrate it with the Tyrer-Cuzick (T-C) clinical model. We tested the association between the caIRS and BC risk in two validation cohorts including > 130,000 women. We compared model discrimination for 5-year and remaining lifetime BC risk between the caIRS and T-C and assessed how the caIRS would affect screening in the clinic. RESULTS: The caIRS outperformed T-C alone for all populations tested in both validation cohorts and contributed significantly to risk prediction beyond T-C. The area under the receiver operating characteristic curve improved from 0.57 to 0.65, and the odds ratio per standard deviation increased from 1.35 (95% CI, 1.27 to 1.43) to 1.79 (95% CI, 1.70 to 1.88) in validation cohort 1 with similar improvements observed in validation cohort 2. We observed the largest gain in positive predictive value using the caIRS in Black/African American women across both validation cohorts, with an approximately two-fold increase and an equivalent negative predictive value as the T-C. In a multivariate, age-adjusted logistic regression model including both caIRS and T-C, caIRS remained significant, indicating that caIRS provides information over T-C alone. CONCLUSION: Adding a caPRS to the T-C model improves BC risk stratification for women of multiple ancestries, which could have implications for screening recommendations and prevention. Wolters Kluwer Health 2023-02-21 /pmc/articles/PMC10309538/ /pubmed/36809055 http://dx.doi.org/10.1200/PO.22.00447 Text en © 2023 by American Society of Clinical Oncology https://creativecommons.org/licenses/by-nc-nd/4.0/Creative Commons Attribution Non-Commercial No Derivatives 4.0 License: http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/)
spellingShingle ORIGINAL REPORTS
Tshiaba, Placede T.
Ratman, Dariusz K.
Sun, Jiayi M.
Tunstall, Tate S.
Levy, Brynn
Shah, Premal S.
Weitzel, Jeffrey N.
Rabinowitz, Matthew
Kumar, Akash
Im, Kate M.
Integration of a Cross-Ancestry Polygenic Model With Clinical Risk Factors Improves Breast Cancer Risk Stratification
title Integration of a Cross-Ancestry Polygenic Model With Clinical Risk Factors Improves Breast Cancer Risk Stratification
title_full Integration of a Cross-Ancestry Polygenic Model With Clinical Risk Factors Improves Breast Cancer Risk Stratification
title_fullStr Integration of a Cross-Ancestry Polygenic Model With Clinical Risk Factors Improves Breast Cancer Risk Stratification
title_full_unstemmed Integration of a Cross-Ancestry Polygenic Model With Clinical Risk Factors Improves Breast Cancer Risk Stratification
title_short Integration of a Cross-Ancestry Polygenic Model With Clinical Risk Factors Improves Breast Cancer Risk Stratification
title_sort integration of a cross-ancestry polygenic model with clinical risk factors improves breast cancer risk stratification
topic ORIGINAL REPORTS
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10309538/
https://www.ncbi.nlm.nih.gov/pubmed/36809055
http://dx.doi.org/10.1200/PO.22.00447
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