Department of Etiology and Carcinogenesis, National Cancer Center/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
Biomedical Pioneering Innovation Center (BIOPIC), School of Life Sciences, Peking University (PKU), Beijing, China.
Cancer Res. 2022 Jul 18;82(14):2520-2537. doi: 10.1158/0008-5472.CAN-22-0668.
Evidence points toward the differentiation state of cells as a marker of cancer risk and progression. Measuring the differentiation state of single cells in a preneoplastic population could thus enable novel strategies for early detection and risk prediction. Recent maps of somatic mutagenesis in normal tissues from young healthy individuals have revealed cancer driver mutations, indicating that these do not correlate well with differentiation state and that other molecular events also contribute to cancer development. We hypothesized that the differentiation state of single cells can be measured by estimating the regulatory activity of the transcription factors (TF) that control differentiation within that cell lineage. To this end, we present a novel computational method called CancerStemID that estimates a stemness index of cells from single-cell RNA sequencing data. CancerStemID is validated in two human esophageal squamous cell carcinoma (ESCC) cohorts, demonstrating how it can identify undifferentiated preneoplastic cells whose transcriptomic state is overrepresented in invasive cancer. Spatial transcriptomics and whole-genome bisulfite sequencing demonstrated that differentiation activity of tissue-specific TFs was decreased in cancer cells compared with the basal cell-of-origin layer and established that differentiation state correlated with differential DNA methylation at the promoters of these TFs, independently of underlying NOTCH1 and TP53 mutations. The findings were replicated in a mouse model of ESCC development, and the broad applicability of CancerStemID to other cancer-types was demonstrated. In summary, these data support an epigenetic stem-cell model of oncogenesis and highlight a novel computational strategy to identify stem-like preneoplastic cells that undergo positive selection.
This study develops a computational strategy to dissect the heterogeneity of differentiation states within a preneoplastic cell population, allowing identification of stem-like cells that may drive cancer progression.
有证据表明细胞的分化状态是癌症风险和进展的标志物。因此,测量癌前人群中单细胞的分化状态可以为早期检测和风险预测提供新策略。最近对来自年轻健康个体的正常组织中的体细胞突变进行的图谱绘制揭示了癌症驱动突变,这表明这些突变与分化状态相关性不大,其他分子事件也有助于癌症的发展。我们假设可以通过估计控制该细胞谱系分化的转录因子(TF)的调节活性来测量单细胞的分化状态。为此,我们提出了一种称为 CancerStemID 的新计算方法,该方法可以从单细胞 RNA 测序数据中估计细胞的干性指数。CancerStemID 在两个人类食管鳞状细胞癌(ESCC)队列中得到验证,证明了它如何识别未分化的癌前细胞,其转录组状态在侵袭性癌症中过度表达。空间转录组学和全基因组亚硫酸氢盐测序表明,与基底细胞起源层相比,组织特异性 TF 的分化活性在癌细胞中降低,并确定分化状态与这些 TF 的启动子处的差异 DNA 甲基化相关,与 NOTCH1 和 TP53 突变无关。这些发现在 ESCC 发展的小鼠模型中得到了复制,并且证明了 CancerStemID 对其他癌症类型的广泛适用性。总之,这些数据支持了癌症发生的表观遗传干细胞模型,并强调了一种识别经历正选择的类干细胞癌前细胞的新型计算策略。
本研究开发了一种计算策略来剖析癌前细胞群体中分化状态的异质性,从而能够识别可能驱动癌症进展的类干细胞细胞。