Department of Biomedical Informatics, Harvard Medical School, Boston, Massachusetts 02115, USA.
Samsung Genome Institute, Samsung Medical Center/Sungkyunkwan University School of Medicine, Seoul, 06351, Korea.
Genome Res. 2018 Aug;28(8):1217-1227. doi: 10.1101/gr.228080.117. Epub 2018 Jun 13.
Characterization of intratumoral heterogeneity is critical to cancer therapy, as the presence of phenotypically diverse cell populations commonly fuels relapse and resistance to treatment. Although genetic variation is a well-studied source of intratumoral heterogeneity, the functional impact of most genetic alterations remains unclear. Even less understood is the relative importance of other factors influencing heterogeneity, such as epigenetic state or tumor microenvironment. To investigate the relationship between genetic and transcriptional heterogeneity in a context of cancer progression, we devised a computational approach called HoneyBADGER to identify copy number variation and loss of heterozygosity in individual cells from single-cell RNA-sequencing data. By integrating allele and normalized expression information, HoneyBADGER is able to identify and infer the presence of subclone-specific alterations in individual cells and reconstruct the underlying subclonal architecture. By examining several tumor types, we show that HoneyBADGER is effective at identifying deletions, amplifications, and copy-neutral loss-of-heterozygosity events and is capable of robustly identifying subclonal focal alterations as small as 10 megabases. We further apply HoneyBADGER to analyze single cells from a progressive multiple myeloma patient to identify major genetic subclones that exhibit distinct transcriptional signatures relevant to cancer progression. Other prominent transcriptional subpopulations within these tumors did not line up with the genetic subclonal structure and were likely driven by alternative, nonclonal mechanisms. These results highlight the need for integrative analysis to understand the molecular and phenotypic heterogeneity in cancer.
肿瘤内异质性的特征对于癌症治疗至关重要,因为表型多样化的细胞群体的存在通常会引发复发和对治疗的耐药性。尽管遗传变异是肿瘤内异质性的一个研究充分的来源,但大多数遗传改变的功能影响仍不清楚。更不为人知的是影响异质性的其他因素(如表观遗传状态或肿瘤微环境)的相对重要性。为了在癌症进展的背景下研究遗传和转录异质性之间的关系,我们设计了一种名为 HoneyBADGER 的计算方法,用于从单细胞 RNA 测序数据中识别单个细胞中的拷贝数变异和杂合性丢失。通过整合等位基因和归一化表达信息,HoneyBADGER 能够识别和推断单个细胞中亚克隆特异性改变的存在,并重建潜在的亚克隆结构。通过检查几种肿瘤类型,我们表明 HoneyBADGER 能够有效地识别缺失、扩增和拷贝中性杂合性丢失事件,并且能够稳健地识别小至 10 兆碱基的亚克隆焦点改变。我们进一步将 HoneyBADGER 应用于分析进行性多发性骨髓瘤患者的单细胞,以鉴定主要的遗传亚克隆,这些亚克隆表现出与癌症进展相关的独特转录特征。这些肿瘤中的其他突出转录亚群与遗传亚克隆结构不一致,可能是由替代的、非克隆机制驱动的。这些结果强调了需要进行综合分析以了解癌症中的分子和表型异质性。