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一种用于临床乳腺癌风险评估的简化模型保持了预测能力,并通过纳入多基因风险评分进一步得到改善。

A streamlined model for use in clinical breast cancer risk assessment maintains predictive power and is further improved with inclusion of a polygenic risk score.

机构信息

Genetic Technologies / Phenogen Sciences, Fitzroy, Australia.

Centre for Epidemiology and Biostatistics, The University of Melbourne, Parkville, VIC, Australia.

出版信息

PLoS One. 2021 Jan 22;16(1):e0245375. doi: 10.1371/journal.pone.0245375. eCollection 2021.

Abstract

Five-year absolute breast cancer risk prediction models are required to comply with national guidelines regarding risk reduction regimens. Models including the Gail model are under-utilized in the general population for various reasons, including difficulty in accurately completing some clinical fields. The purpose of this study was to determine if a streamlined risk model could be designed without substantial loss in performance. Only the clinical risk factors that were easily answered by women will be retained and combined with an objective validated polygenic risk score (PRS) to ultimately improve overall compliance with professional recommendations. We first undertook a review of a series of 2,339 Caucasian, African American and Hispanic women from the USA who underwent clinical testing. We first used deidentified test request forms to identify the clinical risk factors that were best answered by women in a clinical setting and then compared the 5-year risks for the full model and the streamlined model in this clinical series. We used OPERA analysis on previously published case-control data from 11,924 Gail model samples to determine clinical risk factors to include in a streamlined model: first degree family history and age that could then be combined with the PRS. Next, to ensure that the addition of PRS to the streamlined model was indeed beneficial, we compared risk stratification using the Streamlined model with and without PRS for the existing case-control datasets comprising 1,313 cases and 10,611 controls of African-American (n = 7421), Caucasian (n = 1155) and Hispanic (n = 3348) women, using the area under the curve to determine model performance. The improvement in risk discrimination from adding the PRS risk score to the Streamlined model was 52%, 46% and 62% for African-American, Caucasian and Hispanic women, respectively, based on changes in log OPERA. There was no statistically significant difference in mean risk scores between the Gail model plus risk PRS compared to the Streamlined model plus PRS. This study demonstrates that validated PRS can be used to streamline a clinical test for primary care practice without diminishing test performance. Importantly, by eliminating risk factors that women find hard to recall or that require obtaining medical records, this model may facilitate increased clinical adoption of 5-year risk breast cancer risk prediction test in keeping with national standards and guidelines for breast cancer risk reduction.

摘要

五年绝对乳腺癌风险预测模型需要符合国家关于降低风险方案的指南。由于各种原因,包括某些临床领域难以准确填写,Gail 模型等模型在普通人群中的使用率较低,包括准确性难以保证。本研究旨在确定是否可以设计一个不会显著降低性能的简化风险模型。仅保留女性容易回答的临床风险因素,并结合客观验证的多基因风险评分(PRS),最终提高整体符合专业建议的水平。

我们首先对来自美国的 2339 名白种人、非裔美国人和西班牙裔女性的一系列临床检测结果进行了回顾。我们首先使用去识别的检测申请表来确定女性在临床环境中最容易回答的临床风险因素,然后比较该临床系列中完整模型和简化模型的 5 年风险。我们使用之前发表的 11924 个 Gail 模型样本的病例对照数据的 OPERA 分析来确定简化模型中应包含的临床风险因素:一级亲属病史和年龄,然后可以将其与 PRS 结合。接下来,为了确保将 PRS 添加到简化模型中确实有益,我们比较了使用简化模型与不使用 PRS 的风险分层,对于包含 1313 例病例和 10611 例对照的现有病例对照数据集,使用曲线下面积来确定模型性能。基于对数 OPERA 的变化,添加 PRS 风险评分可将简化模型的风险区分度提高 52%、46%和 62%,分别用于非裔美国人、白种人和西班牙裔妇女。与 Gail 模型加风险 PRS 相比,简化模型加 PRS 的平均风险评分没有统计学差异。

本研究表明,经过验证的 PRS 可用于简化临床检测,以用于初级保健实践,而不会降低检测性能。重要的是,通过消除女性难以回忆或需要获取医疗记录的风险因素,该模型可能会促进 5 年乳腺癌风险预测测试在符合国家乳腺癌风险降低标准和指南方面的临床应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a2c1/7822550/cd04c1c1267d/pone.0245375.g001.jpg

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