人类乳腺癌和模型系统的单细胞转录图谱

IF 7.9 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Julia E. Altman, Amy L. Olex, Emily K. Zboril, Carson J. Walker, David C. Boyd, Rachel K. Myrick, Nicole S. Hairr, Jennifer E. Koblinski, Madhavi Puchalapalli, Bin Hu, Mikhail G. Dozmorov, X. Steven Chen, Yunshun Chen, Charles M. Perou, Brian D. Lehmann, Jane E. Visvader, J. Chuck Harrell
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引用次数: 0

摘要

背景 乳腺癌的转录结构复杂,需要进一步了解细胞的多样性,才能确定有效的治疗方法。以单细胞分辨率研究乳腺癌亚型间的遗传变异有可能加深我们对癌症进展的了解。 方法 在本研究中,我们合并了来自患者肿瘤和匹配的淋巴转移灶、乳房缩小术、乳腺癌患者异种移植(PDX)、PDX-derived organoids(PDXOs)和细胞系的单细胞 RNA 测序数据,形成了一个包含 117 个样本、506719 个细胞的多样化数据集。这些样本包括激素受体阳性(HR+)、人表皮生长因子受体 2 阳性(HER2+)和三阴性乳腺癌(TNBC)亚型,包括同源模型对。在此,我们描述了模型和患者样本之间的相似性和区别,并根据亚型比例探讨了药物疗效。 结果 与 TNBC 细胞系相比,PDX 模型在肿瘤异质性和细胞周期特征方面更接近患者样本。根据 SCSubtype 和 TNBC 型细胞分型预测因子的定义,获得性耐药性与 TNBC PDX 肿瘤中基底样细胞比例的增加有关。所有患者样本都包含多种亚型;与原发肿瘤相比,HR+淋巴结转移瘤的HER2富集细胞比例较低。与PDX肿瘤相比,PDXOs在代谢相关转录本方面表现出差异。细胞毒性药物对 PDX 细胞的相关分析表明,疗效取决于亚型比例。 结论 我们提供了大量的多模型数据集、动态的细胞样本注释方法,以及对人类乳腺癌系统内模型的全面分析。通过阐明模型的局限性、亚型特异性见解和新的靶向途径,这种分析和参考将有助于临床前研究和治疗开发中的知情决策。 要点 患者衍生异种移植模型与细胞系相比,在肿瘤异质性和细胞周期特征方面更接近患者样本。 三维类器官模型与体内模型相比,在代谢特征方面存在差异。 这是一个宝贵的多模型参考数据集,有助于阐明模型差异和新的靶向途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Single-cell transcriptional atlas of human breast cancers and model systems

Single-cell transcriptional atlas of human breast cancers and model systems

Background

Breast cancer's complex transcriptional landscape requires an improved understanding of cellular diversity to identify effective treatments. The study of genetic variations among breast cancer subtypes at single-cell resolution has potential to deepen our insights into cancer progression.

Methods

In this study, we amalgamate single-cell RNA sequencing data from patient tumours and matched lymph metastasis, reduction mammoplasties, breast cancer patient-derived xenografts (PDXs), PDX-derived organoids (PDXOs), and cell lines resulting in a diverse dataset of 117 samples with 506 719 total cells. These samples encompass hormone receptor positive (HR+), human epidermal growth factor receptor 2 positive (HER2+), and triple-negative breast cancer (TNBC) subtypes, including isogenic model pairs. Herein, we delineated similarities and distinctions across models and patient samples and explore therapeutic drug efficacy based on subtype proportions.

Results

PDX models more closely resemble patient samples in terms of tumour heterogeneity and cell cycle characteristics when compared with TNBC cell lines. Acquired drug resistance was associated with an increase in basal-like cell proportions within TNBC PDX tumours as defined with SCSubtype and TNBCtype cell typing predictors. All patient samples contained a mixture of subtypes; compared to primary tumours HR+ lymph node metastases had lower proportions of HER2-Enriched cells. PDXOs exhibited differences in metabolic-related transcripts compared to PDX tumours. Correlative analyses of cytotoxic drugs on PDX cells identified therapeutic efficacy was based on subtype proportion.

Conclusions

We present a substantial multimodel dataset, a dynamic approach to cell-wise sample annotation, and a comprehensive interrogation of models within systems of human breast cancer. This analysis and reference will facilitate informed decision-making in preclinical research and therapeutic development through its elucidation of model limitations, subtype-specific insights and novel targetable pathways.

Key points

  • Patient-derived xenografts models more closely resemble patient samples in tumour heterogeneity and cell cycle characteristics when compared with cell lines.
  • 3D organoid models exhibit differences in metabolic profiles compared to their in vivo counterparts.
  • A valuable multimodel reference dataset that can be useful in elucidating model differences and novel targetable pathways.
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来源期刊
CiteScore
15.90
自引率
1.90%
发文量
450
审稿时长
4 weeks
期刊介绍: Clinical and Translational Medicine (CTM) is an international, peer-reviewed, open-access journal dedicated to accelerating the translation of preclinical research into clinical applications and fostering communication between basic and clinical scientists. It highlights the clinical potential and application of various fields including biotechnologies, biomaterials, bioengineering, biomarkers, molecular medicine, omics science, bioinformatics, immunology, molecular imaging, drug discovery, regulation, and health policy. With a focus on the bench-to-bedside approach, CTM prioritizes studies and clinical observations that generate hypotheses relevant to patients and diseases, guiding investigations in cellular and molecular medicine. The journal encourages submissions from clinicians, researchers, policymakers, and industry professionals.
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