Teschendorff Andrew E, Wang Ning
CAS Key Laboratory of Computational Biology, CAS-MPG Partner Institute for Computational Biology, Shanghai Institute of Nutrition and Health, Shanghai Institutes for Biological Sciences, University of Chinese Academy of Sciences, Chinese Academy of Sciences, 320 Yue Yang Road, Shanghai, 200031 China.
UCL Cancer Institute, Paul O'Gorman Building, University College London, 72 Huntley Street, London, WC1E 6BT UK.
NPJ Genom Med. 2020 Oct 7;5:43. doi: 10.1038/s41525-020-00151-y. eCollection 2020.
Tissue-specific transcription factors are frequently inactivated in cancer. To fully dissect the heterogeneity of such tumor suppressor events requires single-cell resolution, yet this is challenging because of the high dropout rate. Here we propose a simple yet effective computational strategy called SCIRA to infer regulatory activity of tissue-specific transcription factors at single-cell resolution and use this tool to identify tumor suppressor events in single-cell RNA-Seq cancer studies. We demonstrate that tissue-specific transcription factors are preferentially inactivated in the corresponding cancer cells, suggesting that these are driver events. For many known or suspected tumor suppressors, SCIRA predicts inactivation in single cancer cells where differential expression does not, indicating that SCIRA improves the sensitivity to detect changes in regulatory activity. We identify NKX2-1 and TBX4 inactivation as early tumor suppressor events in normal non-ciliated lung epithelial cells from smokers. In summary, SCIRA can help chart the heterogeneity of tumor suppressor events at single-cell resolution.
组织特异性转录因子在癌症中常常失活。要全面剖析此类肿瘤抑制事件的异质性需要单细胞分辨率,但由于高缺失率,这具有挑战性。在此,我们提出一种简单而有效的计算策略,称为SCIRA,以在单细胞分辨率下推断组织特异性转录因子的调控活性,并使用该工具在单细胞RNA测序癌症研究中识别肿瘤抑制事件。我们证明,组织特异性转录因子在相应癌细胞中优先失活,表明这些是驱动事件。对于许多已知或疑似的肿瘤抑制因子,SCIRA能在差异表达无法预测的单个癌细胞中预测其失活,这表明SCIRA提高了检测调控活性变化的灵敏度。我们确定NKX2-1和TBX4失活是吸烟者正常非纤毛肺上皮细胞中的早期肿瘤抑制事件。总之,SCIRA有助于在单细胞分辨率下描绘肿瘤抑制事件的异质性。