Guo Wenji, Li James L, McClellan Julian, Ntekim Atara, Ojengbede Oladosu, Ogundiran Temidayo, Odetunde Abayomi, Obafunwa John, Popoola Abiodun, Ndom Paul, Gakwaya Antony, Chatterjee Nilanjan, Sveen Elisabeth, Yoshimatsu Toshio F, Zheng Yonglan, Olopade Olufunmilayo I, Huo Dezheng
Section of Hematology and Oncology, Department of Medicine, The University of Chicago, Chicago, Illinois.
Department of Public Health Sciences, The University of Chicago, Chicago, Illinois.
JAMA Netw Open. 2025 Apr 1;8(4):e255804. doi: 10.1001/jamanetworkopen.2025.5804.
Most breast cancers in Africa are diagnosed at advanced stages. Improved risk prediction tools to optimize screening and earlier diagnosis are urgently needed.
To build a comprehensive breast cancer risk estimation model by integrating a polygenic risk score (PRS), pathogenic variants (PVs) in high- or moderate-penetrance genes, and a questionnaire-based risk calculator.
DESIGN, SETTING, AND PARTICIPANTS: This multicenter case-control study initially enrolled women in Nigeria in 1998 and expanded to Cameroon and Uganda in 2011; enrollment ended in 2018. Women with breast cancer (hereafter cases) were enrolled through hospital oncology units, whereas women without breast cancer (hereafter controls) were recruited from other outpatient clinics and the community. Participants whose genetic data were used in PRS development were excluded from the development of the comprehensive breast cancer risk estimation model. Analyses were performed from September 2023 to January 2025.
Lifetime absolute risk estimation models that integrated a PRS only (previously developed using data from women of African ancestry and European ancestry), PRS plus PVs in high- or moderate-penetrance genes (BRCA1, BRCA2, PALB2, ATM, CHEK2, TP53, BARD1, RAD51C, and RAD51D), epidemiologic risk factors only (ascertained from NBCS questionnaires), and a combined model containing these 3 components.
Lifetime absolute risk of breast cancer was estimated, accounting for an association between family history and genetic factors. Participants' lifetime estimated absolute risk was categorized by the following risk thresholds: lower than 3%, 3%, 5%, and 10% or higher.
A total of 1686 women, of whom 996 were cases (mean [SD] age at enrollment, 49.5 [12.2] years) and 690 were controls (mean [SD] age at enrollment, 41.5 [13.8] years), were included in the main analyses. The age-adjusted area under the receiver operating characteristic curve (AUROC) was 0.579 (95% CI, 0.549-0.610) for the PRS only model and 0.609 (95% CI, 0.579-0.638) for the PRS plus PV model. In the combined model containing both genetic and nongenetic risk factors, age-adjusted AUROC increased to 0.723 (95% CI, 0.698-0.748). Using a threshold of 10% or higher lifetime absolute risk, the combined model classified 12.0% of cases (120) as high risk compared with 3.7% of cases (37) using the epidemiologic factors only model and 5.0% of cases (50) using the PRS plus PV model.
In this case-control study, a breast cancer risk estimation model was developed that combines genetic and nongenetic factors and refines a previous model that includes epidemiologic risk factors. Further development and validation of this model are necessary to advance breast cancer risk assessment in sub-Saharan Africa.
非洲大多数乳腺癌在晚期才被诊断出来。迫切需要改进风险预测工具,以优化筛查和早期诊断。
通过整合多基因风险评分(PRS)、高或中度外显率基因中的致病变异(PVs)以及基于问卷的风险计算器,建立一个全面的乳腺癌风险估计模型。
设计、地点和参与者:这项多中心病例对照研究于1998年最初在尼日利亚招募女性,并于2011年扩展到喀麦隆和乌干达;招募于2018年结束。乳腺癌患者(以下简称病例)通过医院肿瘤科招募,而无乳腺癌的女性(以下简称对照)则从其他门诊诊所和社区招募。其基因数据用于PRS开发的参与者被排除在综合乳腺癌风险估计模型的开发之外。分析于2023年9月至2025年1月进行。
仅整合PRS的终生绝对风险估计模型(先前使用非洲裔和欧洲裔女性的数据开发)、PRS加上高或中度外显率基因(BRCA1、BRCA2、PALB2、ATM、CHEK2、TP53、BARD1、RAD51C和RAD51D)中的PVs、仅流行病学风险因素(从NBCS问卷中确定)以及包含这三个组成部分的组合模型。
估计乳腺癌的终生绝对风险,同时考虑家族史和遗传因素之间的关联。参与者的终生估计绝对风险按以下风险阈值分类:低于3%、3%、5%以及10%或更高。
共有1686名女性纳入主要分析,其中996例为病例(入组时平均[标准差]年龄为49.5[12.2]岁),690例为对照(入组时平均[标准差]年龄为41.5[13.8]岁)。仅PRS模型的年龄调整后受试者工作特征曲线下面积(AUROC)为0.579(95%CI,0.549 - 0.610),PRS加PV模型为0.609(95%CI,0.579 - 0.638)。在包含遗传和非遗传风险因素的组合模型中,年龄调整后的AUROC增至0.723(95%CI,0.698 - 0.748)。使用10%或更高的终生绝对风险阈值,组合模型将12.0%的病例(120例)分类为高风险,而仅使用流行病学因素模型为3.7%的病例(37例),使用PRS加PV模型为5.0%的病例(50例)。
在这项病例对照研究中,开发了一个结合遗传和非遗传因素的乳腺癌风险估计模型,并改进了先前包含流行病学风险因素的模型。为推进撒哈拉以南非洲地区的乳腺癌风险评估,有必要对该模型进行进一步开发和验证。