Evaluation and comparison of different breast cancer prognosis scores based on gene expression data.

Avirup Chowdhury, Paul D Pharoah, Oscar M Rueda
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Abstract

Background: Breast cancer is one of the three most common cancers worldwide and is the most common malignancy in women. Treatment approaches for breast cancer are diverse and varied. Clinicians must balance risks and benefits when deciding treatments, and models have been developed to support this decision-making. Genomic risk scores (GRSs) may offer greater clinical value than standard clinicopathological models, but there is limited evidence as to whether these models perform better than the current clinical standard of care.

Methods: PREDICT and GRSs were adapted using data from the original papers. Univariable Cox proportional hazards models were produced with breast cancer-specific survival (BCSS) as the outcome. Independent predictors of BCSS were used to build multivariable models with PREDICT. Signatures which provided independent prognostic information in multivariable models were incorporated into the PREDICT algorithm and assessed for calibration, discrimination and reclassification.

Results: EndoPredict, MammaPrint and Prosigna demonstrated prognostic power independent of PREDICT in multivariable models for ER-positive patients; no score predicted BCSS in ER-negative patients. Incorporating these models into PREDICT had only a modest impact upon calibration (with absolute improvements of 0.2-0.8%), discrimination (with no statistically significant c-index improvements) and reclassification (with 4-10% of patients being reclassified).

Conclusion: Addition of GRSs to PREDICT had limited impact on model fit or treatment received. This analysis does not support widespread adoption of current GRSs based on our implementations of commercial products.

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基于基因表达数据的不同乳腺癌预后评分的评估和比较。
背景:乳腺癌是全球三大常见癌症之一,也是女性最常见的恶性肿瘤。乳腺癌的治疗方法多种多样。临床医生在决定治疗方法时必须权衡风险和收益,目前已开发出一些模型来支持这种决策。与标准的临床病理模型相比,基因组风险评分(GRSs)可能具有更大的临床价值,但关于这些模型是否比目前的临床治疗标准更好的证据还很有限:方法:利用原始论文中的数据对 PREDICT 和 GRSs 进行了改编。以乳腺癌特异性生存率(BCSS)为结果,建立了单变量 Cox 比例危险度模型。BCSS的独立预测因子用于建立PREDICT多变量模型。在多变量模型中提供独立预后信息的特征被纳入 PREDICT 算法,并对校准、区分和再分类进行评估:结果:在ER阳性患者的多变量模型中,EndoPredict、MammaPrint和Prosigna显示出独立于PREDICT的预后能力;没有任何评分能预测ER阴性患者的BCSS。将这些模型纳入 PREDICT 对校准(绝对值提高了 0.2%-0.8%)、区分度(c 指数没有统计学意义上的显著提高)和重新分类(4%-10% 的患者被重新分类)的影响不大:结论:在 PREDICT 中加入 GRS 对模型拟合和治疗效果的影响有限。根据我们对商业产品的实施情况,这项分析并不支持广泛采用当前的 GRS。
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