Department of Epidemiology, Columbia University, New York, NY, USA; Herbert Irving Comprehensive Cancer Center, Columbia University Medical Center, New York, NY, USA.
Department of Epidemiology, Columbia University, New York, NY, USA.
Lancet Oncol. 2019 Apr;20(4):504-517. doi: 10.1016/S1470-2045(18)30902-1. Epub 2019 Feb 21.
Independent validation is essential to justify use of models of breast cancer risk prediction and inform decisions about prevention options and screening. Few independent validations had been done using cohorts for common breast cancer risk prediction models, and those that have been done had small sample sizes and short follow-up periods, and used earlier versions of the prediction tools. We aimed to validate the relative performance of four commonly used models of breast cancer risk and assess the effect of limited data input on each one's performance.
In this validation study, we used the Breast Cancer Prospective Family Study Cohort (ProF-SC), which includes 18 856 women from Australia, Canada, and the USA who did not have breast cancer at recruitment, between March 17, 1992, and June 29, 2011. We selected women from the cohort who were 20-70 years old and had no previous history of bilateral prophylactic mastectomy or ovarian cancer, at least 2 months of follow-up data, and information available about family history of breast cancer. We used this selected cohort to calculate 10-year risk scores and compare four models of breast cancer risk prediction: the Breast and Ovarian Analysis of Disease Incidence and Carrier Estimation Algorithm model (BOADICEA), BRCAPRO, the Breast Cancer Risk Assessment Tool (BCRAT), and the International Breast Cancer Intervention Study model (IBIS). We compared model calibration based on the ratio of the expected number of breast cancer cases to the observed number of breast cancer cases in the cohort, and on the basis of their discriminatory ability to separate those who will and will not have breast cancer diagnosed within 10 years as measured with the concordance statistic (C-statistic). We did subgroup analyses to compare the performance of the models at 10 years in BRCA1 or BRCA2 mutation carriers (ie, BRCA-positive women), tested non-carriers and untested participants (ie, BRCA-negative women), and participants younger than 50 years at recruitment. We also assessed the effect that limited data input (eg, restriction of the amount of family history and non-genetic information included) had on the models' performance.
After median follow-up of 11·1 years (IQR 6·0-14·4), 619 (4%) of 15 732 women selected from the ProF-SC cohort study were prospectively diagnosed with breast cancer after recruitment, of whom 519 (84%) had histologically confirmed disease. BOADICEA and IBIS were well calibrated in the overall validation cohort, whereas BRCAPRO and BCRAT underpredicted risk (ratio of expected cases to observed cases 1·05 [95% CI 0·97-1·14] for BOADICEA, 1·03 [0·96-1·12] for IBIS, 0·59 [0·55-0·64] for BRCAPRO, and 0·79 [0·73-0·85] for BRCAT). The estimated C-statistics for the complete validation cohort were 0·70 (95% CI 0·68-0·72) for BOADICEA, 0·71 (0·69-0·73) for IBIS, 0·68 (0·65-0·70) for BRCAPRO, and 0·60 (0·58-0·62) for BCRAT. In subgroup analyses by BRCA mutation status, the ratio of expected to observed cases for BRCA-negative women was 1·02 (95% CI 0·93-1·12) for BOADICEA, 1·00 (0·92-1·10) for IBIS, 0·53 (0·49-0·58) for BRCAPRO, and 0·97 (0·89-1·06) for BCRAT. For BRCA-positive participants, BOADICEA and IBIS were well calibrated, but BRCAPRO underpredicted risk (ratio of expected to observed cases 1·17 [95% CI 0·99-1·38] for BOADICEA, 1·14 [0·96-1·35] for IBIS, and 0·80 [0·68-0·95] for BRCAPRO). We noted similar patterns of calibration for women younger than 50 years at recruitment. Finally, BOADICEA and IBIS predictive scores were not appreciably affected by limiting input data to family history for first-degree and second-degree relatives.
Our results suggest that models that include multigenerational family history, such as BOADICEA and IBIS, have better ability to predict breast cancer risk, even for women at average or below-average risk of breast cancer. Although BOADICEA and IBIS performed similarly, further improvements in the accuracy of predictions could be possible with hybrid models that incorporate the polygenic risk component of BOADICEA and the non-family-history risk factors included in IBIS.
US National Institutes of Health, National Cancer Institute, Breast Cancer Research Foundation, Australian National Health and Medical Research Council, Victorian Health Promotion Foundation, Victorian Breast Cancer Research Consortium, Cancer Australia, National Breast Cancer Foundation, Queensland Cancer Fund, Cancer Councils of New South Wales, Victoria, Tasmania, and South Australia, and Cancer Foundation of Western Australia.
独立验证对于证明乳腺癌风险预测模型的使用合理性以及为预防选择和筛查提供决策依据至关重要。使用常见乳腺癌风险预测模型的队列进行的独立验证很少,而且已有的研究样本量较小,随访时间短,并且使用了预测工具的早期版本。我们旨在验证四种常用乳腺癌风险模型的相对性能,并评估每个模型的性能受数据输入限制的影响。
在这项验证研究中,我们使用了乳腺癌前瞻性家庭研究队列(ProF-SC),该队列包括来自澳大利亚、加拿大和美国的 18856 名女性,在招募时没有乳腺癌,招募时间为 1992 年 3 月 17 日至 2011 年 6 月 29 日。我们从队列中选择了年龄在 20-70 岁之间、没有双侧预防性乳房切除术或卵巢癌病史、至少有 2 个月随访数据且有家族乳腺癌病史信息的女性。我们使用该选定队列计算了 10 年风险评分,并比较了四种乳腺癌风险预测模型:乳腺癌和卵巢疾病发生率和携带者估计算法模型(BOADICEA)、BRCAPRO、乳腺癌风险评估工具(BCRAT)和国际乳腺癌干预研究模型(IBIS)。我们基于队列中预期乳腺癌病例数与观察到的乳腺癌病例数的比例以及基于一致性统计量(C 统计量)来区分将在 10 年内诊断为乳腺癌和不会被诊断为乳腺癌的人的能力来比较模型的校准情况。我们进行了亚组分析,比较了 10 年时 BRCA1 或 BRCA2 突变携带者(即 BRCA 阳性女性)、非携带者和未检测参与者(即 BRCA 阴性女性)以及招募时年龄小于 50 岁的参与者中模型的性能。我们还评估了数据输入限制(例如,限制家族史和非遗传信息的数量)对模型性能的影响。
在中位随访 11.1 年(IQR 6.0-14.4)后,从 ProF-SC 队列研究中选择的 15732 名女性中有 619 名(4%)在招募后被前瞻性诊断为乳腺癌,其中 519 名(84%)有组织学证实的疾病。BOADICEA 和 IBIS 在整个验证队列中校准良好,而 BRCAPRO 和 BCRAT 风险预测偏低(预期病例与观察病例的比值为 1.05 [95%CI 0.97-1.14] 用于 BOADICEA,1.03 [0.96-1.12] 用于 IBIS,0.59 [0.55-0.64] 用于 BRCAPRO,0.79 [0.73-0.85] 用于 BCRAT)。完整验证队列的估计 C 统计量分别为 0.70(95%CI 0.68-0.72)用于 BOADICEA,0.71(95%CI 0.69-0.73)用于 IBIS,0.68(0.65-0.70)用于 BRCAPRO,和 0.60(0.58-0.62)用于 BCRAT。在按 BRCA 突变状态进行的亚组分析中,BRCA 阴性女性的预期病例与观察病例的比值为 1.02(95%CI 0.93-1.12)用于 BOADICEA,1.00(0.92-1.10)用于 IBIS,0.53(0.49-0.58)用于 BRCAPRO,和 0.97(0.89-1.06)用于 BCRAT。对于 BRCA 阳性参与者,BOADICEA 和 IBIS 校准良好,但 BRCAPRO 风险预测偏低(预期病例与观察病例的比值为 1.17 [95%CI 0.99-1.38] 用于 BOADICEA,1.14 [0.96-1.35] 用于 IBIS,和 0.80 [0.68-0.95] 用于 BRCAPRO)。我们观察到,对于招募时年龄小于 50 岁的女性,也存在类似的校准模式。最后,BOADICEA 和 IBIS 预测评分受限于对一级和二级亲属的家族史数据输入,没有明显影响。
我们的研究结果表明,包括多代家族史的模型,如 BOADICEA 和 IBIS,具有更好的预测乳腺癌风险的能力,即使是在乳腺癌平均或低于平均风险的女性中也是如此。虽然 BOADICEA 和 IBIS 的表现相似,但通过将 BOADICEA 的多基因风险成分和 IBIS 中包含的非家族史风险因素相结合,可以进一步提高预测的准确性。
美国国立卫生研究院、美国国家癌症研究所、乳腺癌研究基金会、澳大利亚国家卫生和医学研究理事会、维多利亚州健康促进基金会、维多利亚州乳腺癌研究联盟、癌症协会、国家乳腺癌基金会、昆士兰州癌症基金、新南威尔士州、维多利亚州、塔斯马尼亚州和南澳大利亚癌症理事会,以及西澳大利亚癌症基金会。