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乳腺癌的分子自然史:利用转录组学预测乳腺癌的进展和侵袭性。

Molecular natural history of breast cancer: Leveraging transcriptomics to predict breast cancer progression and aggressiveness.

机构信息

Department of Biology and Biological Engineering, Chalmers University of Technology, Gothenburg, Sweden.

Wallenberg Center for Protein Research, Chalmers University of Technology, Gothenburg, Sweden.

出版信息

Cancer Med. 2020 May;9(10):3551-3562. doi: 10.1002/cam4.2996. Epub 2020 Mar 23.

Abstract

BACKGROUND

Characterizing breast cancer progression and aggressiveness relies on categorical descriptions of tumor stage and grade. Interpreting these categorical descriptions is challenging because stage convolutes the size and spread of the tumor and no consensus exists to define high/low grade tumors.

METHODS

We address this challenge of heterogeneity in patient-specific cancer samples by adapting and applying several tools originally created for understanding heterogeneity and phenotype development in single cells (specifically, single-cell topological data analysis and Wanderlust) to create a continuous metric describing breast cancer progression using bulk RNA-seq samples from individual patient tumors. We also created a linear regression-based method to predict tumor aggressiveness in vivo from bulk RNA-seq data.

RESULTS

We found that breast cancer proceeds along three convergent phenotype trajectories: luminal, HER2-enriched, and basal-like. Furthermore, 31 296 genes (for luminal cancers), 17 827 genes (for HER2-enriched), and 18 505 genes (for basal-like) are dynamically differentially expressed during breast cancer progression. Across progression trajectories, our results show that expression of genes related to ADP-ribosylation decreased as tumors progressed (while PARP1 and PARP2 increased or remained stable), suggesting the potential for a differential response to PARP inhibitors based on cancer progression. Additionally, we developed a 132-gene expression regression equation to predict mitotic index and a 23-gene expression regression equation to predict growth rate from a single breast cancer biopsy.

CONCLUSION

Our results suggest that breast cancer dynamically changes during disease progression, and growth rate of the cancer cells is associated with distinct transcriptional profiles.

摘要

背景

描述乳腺癌的进展和侵袭性依赖于肿瘤分期和分级的分类描述。解释这些分类描述具有挑战性,因为分期混淆了肿瘤的大小和扩散程度,并且对于高/低级别肿瘤没有共识的定义。

方法

我们通过适应和应用最初为理解单细胞异质性和表型发育而创建的几种工具(特别是单细胞拓扑数据分析和 Wanderlust)来解决患者特异性癌症样本中的这种异质性挑战,从而创建了一种使用个体患者肿瘤的批量 RNA-seq 样本描述乳腺癌进展的连续度量。我们还创建了一种基于线性回归的方法,从批量 RNA-seq 数据预测肿瘤的体内侵袭性。

结果

我们发现乳腺癌沿着三条趋同的表型轨迹进展:腔型、HER2 富集型和基底样型。此外,在乳腺癌进展过程中,有 31296 个基因(腔型癌)、17827 个基因(HER2 富集型)和 18505 个基因(基底样型)动态差异表达。在整个进展轨迹中,我们的结果表明,与 ADP-核糖基化相关的基因表达随着肿瘤的进展而降低(而 PARP1 和 PARP2 增加或保持稳定),这表明基于癌症进展,PARP 抑制剂可能有不同的反应。此外,我们开发了一个 132 个基因表达回归方程来预测有丝分裂指数,以及一个 23 个基因表达回归方程来预测单个乳腺癌活检的生长速度。

结论

我们的研究结果表明,乳腺癌在疾病进展过程中动态变化,并且癌细胞的生长速度与独特的转录谱相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ca79/7221450/ff3447b5370d/CAM4-9-3551-g001.jpg

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