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研究将乳腺X线密度纳入包含基于问卷的风险因素和多基因风险评分的综合乳腺癌风险模型中的附加价值。

Investigating the added value of incorporatingmammographic density to an integrated breastcancer risk model with questionnaire-based riskfactors and polygenic risk score.

作者信息

Mulder Charlotta V, Yang Xin, Jee Yon Ho, Scott Christopher G, Gao Chi, Cao Yu, Hurson Amber N, Eriksson Mikael, Vachon Celine M, Hall Per, Antoniou Antonis C, Kraft Peter, Gierach Gretchen L, Garcia-Closas Montserrat, Choudhury Parichoy Pal

机构信息

National Cancer Institute.

University of Cambridge.

出版信息

Res Sq. 2024 Dec 19:rs.3.rs-5445786. doi: 10.21203/rs.3.rs-5445786/v1.

Abstract

INTRODUCTION

Incorporation of mammographic density to breast cancer risk models could improve risk stratification to tailor screening and prevention strategies according to risk. Robust evaluation of the value of adding mammographic density to models with comprehensive information on questionnaire-based risk factors and polygenic risk score is needed to determine its effectiveness in improving risk stratification of such models.

METHODS

We used the Individualized Coherent Absolute Risk Estimator (iCARE) tool for risk model building and validation to incorporate density to a previously validated literature-based model with questionnaire-based risk factors and a 313-variant polygenic risk score (PRS). The model was evaluated for calibration and discrimination in three prospective cohorts of European-ancestry women (1,468 cases, 19,104 controls): US-based Nurses' Health Study (NHS I and II) and Mayo Mammography Health Study (MMHS); and Sweden-based Karolinska Mammography Project for Risk Prediction of Breast Cancer (KARMA) study. Analyses were done separately for women younger (NHS II, KARMA) and older than 50 years (NHS I, MMHS, KARMA). Improvements in terms of risk stratification and reclassification proportions were assessed among European-ancestry women aged 50-70 years in US and Sweden.

RESULTS

For women younger and older than 50 years, the model with questionnaire-based risk factors, PRS and density was generally well calibrated across risk with some evidence of miscalibration at the extremes of the risk distribution. Incorporation of density led to modest improvements risk discrimination beyond the model with questionnaire-based risk factors and PRS: the area under the curve (AUC) among younger women was 67.0% (95% CI: 63.5-70.6%) vs. 65.6% (95% CI: 61.9-69.3%) for models with and without density; and 66.1% (95% CI 64.4-67.8%) vs. 65.5% (95% CI: 63.8-67.2%) among older women. The model with density identified 18.4% of US women 50-70 years old ≥ 3% 5-year predicted risk (threshold used for recommending risk-reducing medication in the US), with 42.4% of future cases expected to occur in this group. At this threshold, 7.9% of US women were reclassified by adding density to the model, resulting in the identification of 2.8% of additional future cases. The model with density identified 10.3% of Swedish women ≥ 3% 5-year predicted risk, with 29.4% of future cases expected to occur in this group. At this threshold, 5.3% of women were reclassified with the addition of density, leading to the identification of an additional 4.4% of future cases.

CONCLUSION

Integrating density with questionnaire-based risk factors and PRS could potentially identify more women of European-ancestry with elevated risk of breast cancer in the United States and Sweden. Further investigations of the integrated model in non-European ancestry populations are needed prior to considering clinical applications.

摘要

引言

将乳腺钼靶密度纳入乳腺癌风险模型可改善风险分层,以便根据风险制定筛查和预防策略。需要对在基于问卷的风险因素和多基因风险评分等综合信息的模型中加入乳腺钼靶密度的价值进行有力评估,以确定其在改善此类模型风险分层方面的有效性。

方法

我们使用个体化连贯绝对风险估计器(iCARE)工具进行风险模型构建和验证,将密度纳入一个先前基于文献验证的、包含基于问卷的风险因素和313个变异的多基因风险评分(PRS)的模型。在三个欧洲裔女性前瞻性队列(1468例病例,19104例对照)中对该模型进行校准和区分评估:美国的护士健康研究(NHS I和II)以及梅奥乳腺钼靶健康研究(MMHS);以及瑞典的卡罗林斯卡乳腺癌风险预测乳腺钼靶项目(KARMA)研究。分别对年龄小于50岁(NHS II,KARMA)和大于50岁(NHS I,MMHS,KARMA)的女性进行分析。在美国和瑞典50 - 70岁的欧洲裔女性中评估风险分层和重新分类比例方面的改善情况。

结果

对于年龄小于50岁和大于50岁的女性,包含基于问卷的风险因素、PRS和密度的模型在整个风险范围内总体校准良好,但在风险分布的极端情况下有一些校准错误的迹象。加入密度后,与仅包含基于问卷的风险因素和PRS的模型相比,风险区分有适度改善:年龄较小女性中,有密度模型的曲线下面积(AUC)为67.0%(95%CI:63.5 - 70.6%),无密度模型为65.6%(95%CI:61.9 - 69.3%);年龄较大女性中,有密度模型为66.1%(95%CI 64.4 - 67.8%),无密度模型为65.5%(95%CI:63.8 - 67.2%)。有密度模型识别出18.4%的美国50 - 70岁女性五年预测风险≥3%(美国用于推荐降低风险药物的阈值),预计该组未来病例中有42.%;在这个阈值下,通过在模型中加入密度,7.9%的美国女性被重新分类,从而识别出另外2.8%的未来病例。有密度模型识别出10.3%的瑞典女性五年预测风险≥3%,预计该组未来病例中有29.4%。在这个阈值下,5.3%的女性通过加入密度被重新分类,从而识别出另外4.4%的未来病例。

结论

将密度与基于问卷的风险因素和PRS相结合,有可能在美国和瑞典识别出更多欧洲裔乳腺癌风险升高的女性。在考虑临床应用之前,需要对非欧洲裔人群中的综合模型进行进一步研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d9cd/11702789/0813ba70a92b/nihpp-rs5445786v1-f0001.jpg

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