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Breast cancer molecular profiling with single sample predictors: a retrospective analysis.

机译:带有单个样本预测因子的乳腺癌分子谱分析:回顾性分析。

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BACKGROUND: Microarray expression profiling classifies breast cancer into five molecular subtypes: luminal A, luminal B, basal-like, HER2, and normal breast-like. Three microarray-based single sample predictors (SSPs) have been used to define molecular classification of individual samples. We aimed to establish agreement between these SSPs for identification of breast cancer molecular subtypes. METHODS: Previously described microarray-based SSPs were applied to one in-house (n=53) and three publicly available (n=779) breast cancer datasets. Agreement was analysed between SSPs for the whole classification system and for the five molecular subtypes individually in each cohort. FINDINGS: Fair-to-substantial agreement between every pair of SSPs in each cohort was recorded (kappa=0.238-0.740). Of the five molecular subtypes, only basal-like cancers consistently showed almost-perfect agreement (kappa>0.812). The proportion of cases classified as basal-like in each cohort was consistent irrespective of the SSP used; however, the proportion of each remaining molecular subtype varied substantially. Assignment of individual cases to luminal A, luminal B, HER2, and normal breast-like subtypes was dependent on the SSP used. The significance of associations with outcome of each molecular subtype, other than basal-like and luminal A, varied depending on SSP used. However, different SSPs produced broadly similar survival curves. INTERPRETATION: Although every SSP identifies molecular subtypes with similar survival, they do not reliably assign the same patients to the same molecular subtypes. For molecular subtype classification to be incorporated into routine clinical practice and treatment decision making, stringent standardisation of methodologies and definitions for identification of breast cancer molecular subtypes is needed. FUNDING: Breakthrough Breast Cancer, Cancer Research UK.
机译:背景:微阵列表达谱将乳腺癌分为五种分子亚型:腔A,腔B,基底样,HER2和正常乳样。三种基于微阵列的单一样本预测因子(SSP)已用于定义单个样本的分子分类。我们旨在在这些SSP之间建立共识,以鉴定乳腺癌分子亚型。方法:将先前描述的基于微阵列的SSP应用于一个内部(n = 53)和三个公开可用(n = 779)乳腺癌数据集。对整个分类系统的SSP和每个队列中五个分子亚型的SSP之间的一致性进行了分析。结果:记录了每个队列中每对SSP之间的公平到实质性协议(kappa = 0.238-0.740)。在这五个分子亚型中,仅基底样癌始终显示出几乎完美的一致性(κ> 0.812)。不论使用的是SSP,在每个队列中被分类为基底样的病例比例都是一致的。然而,每种剩余分子亚型的比例却大不相同。将个别病例分配给腔A,腔B,HER2和正常的乳腺样亚型取决于所用的SSP。与每种分子亚型(基底样和管腔A除外)的结局相关的重要性取决于所用的SSP。但是,不同的SSP产生的生存曲线大致相似。解释:尽管每个SSP都可以识别出具有相似生存期的分子亚型,但他们不能可靠地将相同患者分配给相同的分子亚型。为了将分子亚型分类纳入常规临床实践和治疗决策中,需要严格的方法学和定义标准,以鉴定乳腺癌分子亚型。资助:突破性乳腺癌,英国癌症研究。

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