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对乳腺癌近端和远端切除的形态学正常组织中四种亚型的特征分析。

Characterization of four subtypes in morphologically normal tissue excised proximal and distal to breast cancer.

作者信息

Gadaleta Emanuela, Fourgoux Pauline, Pirró Stefano, Thorn Graeme J, Nelan Rachel, Ironside Alastair, Rajeeve Vinothini, Cutillas Pedro R, Lobley Anna E, Wang Jun, Gea Esteban, Ross-Adams Helen, Bessant Conrad, Lemoine Nicholas R, Jones Louise J, Chelala Claude

机构信息

Centre for Cancer Biomarkers and Biotherapeutics, Barts Cancer Institute, Queen Mary University of London, London, EC1M 6BQ UK.

Centre for Computational Biology, Life Sciences Initiative, Queen Mary University of London, London, EC1M 6BQ UK.

出版信息

NPJ Breast Cancer. 2020 Aug 21;6:38. doi: 10.1038/s41523-020-00182-9. eCollection 2020.

Abstract

Widespread mammographic screening programs and improved self-monitoring allow for breast cancer to be detected earlier than ever before. Breast-conserving surgery is a successful treatment for select women. However, up to 40% of women develop local recurrence after surgery despite apparently tumor-free margins. This suggests that morphologically normal breast may harbor early alterations that contribute to increased risk of cancer recurrence. We conducted a comprehensive transcriptomic and proteomic analysis to characterize 57 fresh-frozen tissues from breast cancers and matched histologically normal tissues resected proximal to (<2 cm) and distant from (5-10 cm) the primary tumor, using tissues from cosmetic reduction mammoplasties as baseline. Four distinct transcriptomic subtypes are identified within matched normal tissues: metabolic; immune; matrisome/epithelial-mesenchymal transition, and non-coding enriched. Key components of the subtypes are supported by proteomic and tissue composition analyses. We find that the metabolic subtype is associated with poor prognosis ( < 0.001, HR6.1). Examination of genes representing the metabolic signature identifies several genes able to prognosticate outcome from histologically normal tissues. A subset of these have been reported for their predictive ability in cancer but, to the best of our knowledge, these have not been reported altered in matched normal tissues. This study takes an important first step toward characterizing matched normal tissues resected at pre-defined margins from the primary tumor. Unlocking the predictive potential of unexcised tissue could prove key to driving the realization of personalized medicine for breast cancer patients, allowing for more biologically-driven analyses of tissue margins than morphology alone.

摘要

广泛的乳房X线筛查计划和改进的自我监测使得乳腺癌能够比以往更早被发现。保乳手术对部分女性来说是一种成功的治疗方法。然而,尽管手术切缘看似无肿瘤,但仍有高达40%的女性在术后出现局部复发。这表明形态学上正常的乳腺可能存在早期改变,这些改变会增加癌症复发的风险。我们进行了一项全面的转录组学和蛋白质组学分析,以对57份来自乳腺癌的新鲜冷冻组织以及与原发肿瘤近端(<2厘米)和远端(5 - 10厘米)切除的组织学正常组织进行特征分析,以整形缩乳术的组织作为基线。在匹配的正常组织中识别出四种不同的转录组亚型:代谢型、免疫型、基质体/上皮 - 间质转化型和非编码富集型。蛋白质组学和组织组成分析支持了这些亚型的关键成分。我们发现代谢型亚型与预后不良相关(<0.001,HR6.1)。对代表代谢特征的基因进行检查,发现有几个基因能够预测组织学正常组织的预后。其中一部分基因已报道其在癌症中的预测能力,但据我们所知,尚未报道它们在匹配的正常组织中发生改变。这项研究朝着对从原发肿瘤按预定义切缘切除的匹配正常组织进行特征分析迈出了重要的第一步。释放未切除组织的预测潜力可能是推动实现乳腺癌患者个性化医疗的关键,从而能够对组织切缘进行比单纯形态学更具生物学驱动性的分析。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3cc6/7442642/4f8a2d2689bb/41523_2020_182_Fig1_HTML.jpg

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