Molecular Characterization and Landscape of Breast cancer Models from a multi-omics Perspective.

IF 3 4区 医学 Q2 ENDOCRINOLOGY & METABOLISM Journal of Mammary Gland Biology and Neoplasia Pub Date : 2023-06-03 DOI:10.1007/s10911-023-09540-2
Mylena M O Ortiz, Eran R Andrechek
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引用次数: 1

Abstract

Breast cancer is well-known to be a highly heterogenous disease. This facet of cancer makes finding a research model that mirrors the disparate intrinsic features challenging. With advances in multi-omics technologies, establishing parallels between the various models and human tumors is increasingly intricate. Here we review the various model systems and their relation to primary breast tumors using available omics data platforms. Among the research models reviewed here, breast cancer cell lines have the least resemblance to human tumors since they have accumulated many mutations and copy number alterations during their long use. Moreover, individual proteomic and metabolomic profiles do not overlap with the molecular landscape of breast cancer. Interestingly, omics analysis revealed that the initial subtype classification of some breast cancer cell lines was inappropriate. In cell lines the major subtypes are all well represented and share some features with primary tumors. In contrast, patient-derived xenografts (PDX) and patient-derived organoids (PDO) are superior in mirroring human breast cancers at many levels, making them suitable models for drug screening and molecular analysis. While patient derived organoids are spread across luminal, basal- and normal-like subtypes, the PDX samples were initially largely basal but other subtypes have been increasingly described. Murine models offer heterogenous tumor landscapes, inter and intra-model heterogeneity, and give rise to tumors of different phenotypes and histology. Murine models have a reduced mutational burden compared to human breast cancer but share some transcriptomic resemblance, and representation of many breast cancer subtypes can be found among the variety subtypes. To date, while mammospheres and three- dimensional cultures lack comprehensive omics data, these are excellent models for the study of stem cells, cell fate decision and differentiation, and have also been used for drug screening. Therefore, this review explores the molecular landscapes and characterization of breast cancer research models by comparing recent published multi-omics data and analysis.

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多组学视角下乳腺癌模型的分子表征与景观。
众所周知,乳腺癌是一种高度异质性的疾病。癌症的这一方面使得寻找一个反映不同内在特征的研究模型变得具有挑战性。随着多组学技术的进步,在各种模型和人类肿瘤之间建立相似之处变得越来越复杂。在这里,我们回顾了各种模型系统及其与原发性乳腺肿瘤的关系,使用现有的组学数据平台。在这里回顾的研究模型中,乳腺癌细胞系与人类肿瘤最不相似,因为它们在长期使用过程中积累了许多突变和拷贝数改变。此外,个体蛋白质组学和代谢组学图谱与乳腺癌的分子图谱并不重叠。有趣的是,组学分析显示,一些乳腺癌细胞系的初始亚型分类是不合适的。在细胞系中,主要亚型都有很好的表现,并且与原发肿瘤有一些共同的特征。相比之下,患者来源的异种移植物(PDX)和患者来源的类器官(PDO)在许多层面上都具有反映人类乳腺癌的优势,使它们成为药物筛选和分子分析的合适模型。虽然患者来源的类器官分布在管腔型、基底型和正常样亚型中,但PDX样本最初主要是基底型,但其他亚型已被越来越多地描述。小鼠模型提供了异质的肿瘤景观,模型间和模型内的异质性,并产生不同表型和组织学的肿瘤。与人类乳腺癌相比,小鼠模型具有较低的突变负担,但具有一定的转录组相似性,并且在各种亚型中可以发现许多乳腺癌亚型的代表性。迄今为止,虽然乳腺球体和三维培养缺乏全面的组学数据,但它们是研究干细胞、细胞命运决定和分化的优秀模型,也被用于药物筛选。因此,本文通过比较最近发表的多组学数据和分析,探讨了乳腺癌研究模型的分子景观和特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Mammary Gland Biology and Neoplasia
Journal of Mammary Gland Biology and Neoplasia 医学-内分泌学与代谢
CiteScore
5.30
自引率
4.00%
发文量
22
期刊介绍: Journal of Mammary Gland Biology and Neoplasia is the leading Journal in the field of mammary gland biology that provides researchers within and outside the field of mammary gland biology with an integrated source of information pertaining to the development, function, and pathology of the mammary gland and its function. Commencing in 2015, the Journal will begin receiving and publishing a combination of reviews and original, peer-reviewed research. The Journal covers all topics related to the field of mammary gland biology, including mammary development, breast cancer biology, lactation, and milk composition and quality. The environmental, endocrine, nutritional, and molecular factors regulating these processes is covered, including from a comparative biology perspective.
期刊最新文献
Immune Cell Contribution to Mammary Gland Development. Perimenopausal and Menopausal Mammary Glands In A 4-Vinylcyclohexene Diepoxide Mouse Model. State of the Art Modelling of the Breast Cancer Metastatic Microenvironment: Where Are We? Transcriptomic Analysis of Pubertal and Adult Virgin Mouse Mammary Epithelial and Stromal Cell Populations. Rat Models of Hormone Receptor-Positive Breast Cancer.
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