Staaf Johan, Häkkinen Jari, Hegardt Cecilia, Saal Lao H, Kimbung Siker, Hedenfalk Ingrid, Lien Tonje, Sørlie Therese, Naume Bjørn, Russnes Hege, Marcone Rachel, Ayyanan Ayyakkannu, Brisken Cathrin, Malterling Rebecka R, Asking Bengt, Olofsson Helena, Lindman Henrik, Bendahl Pär-Ola, Ehinger Anna, Larsson Christer, Loman Niklas, Rydén Lisa, Malmberg Martin, Borg Åke, Vallon-Christersson Johan
Division of Oncology, Department of Clinical Sciences Lund, Lund University, Medicon Village, SE 22381, Lund, Sweden.
Department of Cancer Genetics, Institute for Cancer Research, Oslo University Hospital, POB 4953 Nydalen N-0424, Oslo, Norway.
NPJ Breast Cancer. 2022 Aug 16;8(1):94. doi: 10.1038/s41523-022-00465-3.
Multigene assays for molecular subtypes and biomarkers can aid management of early invasive breast cancer. Using RNA-sequencing we aimed to develop single-sample predictor (SSP) models for clinical markers, subtypes, and risk of recurrence (ROR). A cohort of 7743 patients was divided into training and test set. We trained SSPs for subtypes and ROR assigned by nearest-centroid (NC) methods and SSPs for biomarkers from histopathology. Classifications were compared with Prosigna in two external cohorts (ABiM, n = 100 and OSLO2-EMIT0, n = 103). Prognostic value was assessed using distant recurrence-free interval. Agreement between SSP and NC for PAM50 (five subtypes) was high (85%, Kappa = 0.78) for Subtype (four subtypes) very high (90%, Kappa = 0.84) and for ROR risk category high (84%, Kappa = 0.75, weighted Kappa = 0.90). Prognostic value was assessed as equivalent and clinically relevant. Agreement with histopathology was very high or high for receptor status, while moderate for Ki67 status and poor for Nottingham histological grade. SSP and Prosigna concordance was high for subtype (OSLO-EMIT0 83%, Kappa = 0.73 and ABiM 80%, Kappa = 0.72) and moderate and high for ROR risk category (68 and 84%, Kappa = 0.50 and 0.70, weighted Kappa = 0.70 and 0.78). Pooled concordance for emulated treatment recommendation dichotomized for chemotherapy was high (85%, Kappa = 0.66). Retrospective evaluation suggested that SSP application could change chemotherapy recommendations for up to 17% of postmenopausal ER+/HER2-/N0 patients with balanced escalation and de-escalation. Results suggest that NC and SSP models are interchangeable on a group-level and nearly so on a patient level and that SSP models can be derived to closely match clinical tests.
用于分子亚型和生物标志物的多基因检测有助于早期浸润性乳腺癌的管理。我们利用RNA测序旨在开发用于临床标志物、亚型和复发风险(ROR)的单样本预测器(SSP)模型。将7743名患者的队列分为训练集和测试集。我们训练了通过最近质心(NC)方法分配的亚型和ROR的SSP,以及来自组织病理学的生物标志物的SSP。在两个外部队列(ABiM,n = 100和OSLO2 - EMIT0,n = 103)中,将分类结果与Prosigna进行比较。使用远处无复发生存期评估预后价值。SSP与NC在PAM50(五种亚型)的亚型(四种亚型)一致性很高(85%,Kappa = 0.78),在ROR风险类别方面很高(84%,Kappa = 0.75,加权Kappa = 0.90)。预后价值评估为等效且具有临床相关性。与组织病理学在受体状态方面的一致性非常高或高,而在Ki67状态方面为中等,在诺丁汉组织学分级方面较差。SSP与Prosigna在亚型方面的一致性很高(OSLO - EMIT0为83%,Kappa = 0.73;ABiM为80%,Kappa = 0.72),在ROR风险类别方面为中等和高(分别为68%和84%,Kappa = 0.50和0.70,加权Kappa = 0.70和0.78)。模拟化疗二分法治疗建议的合并一致性很高(85%,Kappa = 0.66)。回顾性评估表明,SSP的应用可能会改变高达17%的绝经后ER + / HER2 - / N0平衡升级和降级患者的化疗建议。结果表明,NC和SSP模型在组水平上可互换,在患者水平上几乎如此,并且可以推导SSP模型以紧密匹配临床试验。