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一种新的三阴性乳腺癌分子分类方法揭示了具有良好预后的 luminal 免疫阳性亚组。

A novel approach to triple-negative breast cancer molecular classification reveals a luminal immune-positive subgroup with good prognoses.

机构信息

Molecular Oncology & Pathology Lab, INGEMM, La Paz University Hospital Health Research Institute-IdiPAZ, Madrid, Spain.

R&D department, Biomedica Molecular Medicine SL, Madrid, Spain.

出版信息

Sci Rep. 2019 Feb 7;9(1):1538. doi: 10.1038/s41598-018-38364-y.

Abstract

Triple-negative breast cancer is a heterogeneous disease characterized by a lack of hormonal receptors and HER2 overexpression. It is the only breast cancer subgroup that does not benefit from targeted therapies, and its prognosis is poor. Several studies have developed specific molecular classifications for triple-negative breast cancer. However, these molecular subtypes have had little impact in the clinical setting. Gene expression data and clinical information from 494 triple-negative breast tumors were obtained from public databases. First, a probabilistic graphical model approach to associate gene expression profiles was performed. Then, sparse k-means was used to establish a new molecular classification. Results were then verified in a second database including 153 triple-negative breast tumors treated with neoadjuvant chemotherapy. Clinical and gene expression data from 494 triple-negative breast tumors were analyzed. Tumors in the dataset were divided into four subgroups (luminal-androgen receptor expressing, basal, claudin-low and claudin-high), using the cancer stem cell hypothesis as reference. These four subgroups were defined and characterized through hierarchical clustering and probabilistic graphical models and compared with previously defined classifications. In addition, two subgroups related to immune activity were defined. This immune activity showed prognostic value in the whole cohort and in the luminal subgroup. The claudin-high subgroup showed poor response to neoadjuvant chemotherapy. Through a novel analytical approach we proved that there are at least two independent sources of biological information: cellular and immune. Thus, we developed two different and overlapping triple-negative breast cancer classifications and showed that the luminal immune-positive subgroup had better prognoses than the luminal immune-negative. Finally, this work paves the way for using the defined classifications as predictive features in the neoadjuvant scenario.

摘要

三阴性乳腺癌是一种具有异质性的疾病,其特征是缺乏激素受体和 HER2 过表达。它是唯一一种不能从靶向治疗中获益的乳腺癌亚组,其预后较差。已经有几项研究针对三阴性乳腺癌开发了特定的分子分类。然而,这些分子亚型在临床实践中影响甚微。从公共数据库中获得了来自 494 例三阴性乳腺癌的基因表达数据和临床信息。首先,使用概率图形模型方法对基因表达谱进行关联。然后,使用稀疏 k-均值方法建立新的分子分类。在包含 153 例接受新辅助化疗的三阴性乳腺癌的第二个数据库中验证结果。分析了来自 494 例三阴性乳腺癌的临床和基因表达数据。使用癌症干细胞假说作为参考,将数据集内的肿瘤分为四个亚组(亮氨酸和雄激素受体表达、基底、 Claudin-low 和 Claudin-high)。通过层次聚类和概率图形模型定义和描述了这四个亚组,并与以前定义的分类进行了比较。此外,还定义了两个与免疫活性相关的亚组。这种免疫活性在整个队列和亮氨酸亚组中均具有预后价值。 Claudin-high 亚组对新辅助化疗反应较差。通过一种新的分析方法,我们证明至少有两种独立的生物学信息来源:细胞和免疫。因此,我们开发了两种不同且重叠的三阴性乳腺癌分类,并表明亮氨酸免疫阳性亚组的预后优于亮氨酸免疫阴性亚组。最后,这项工作为在新辅助场景中使用定义的分类作为预测特征铺平了道路。

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