CAS Key Laboratory of Computational Biology, CAS-MPG Partner Institute for Computational Biology, Shanghai Institute for Biological Sciences, 320 Yue Yang Road, Shanghai 200031, China.
Department of Women's Cancer, University College London, 74 Huntley Street, London WC1E 6AU, UK.
Nat Commun. 2017 Jun 1;8:15599. doi: 10.1038/ncomms15599.
The ability to quantify differentiation potential of single cells is a task of critical importance. Here we demonstrate, using over 7,000 single-cell RNA-Seq profiles, that differentiation potency of a single cell can be approximated by computing the signalling promiscuity, or entropy, of a cell's transcriptome in the context of an interaction network, without the need for feature selection. We show that signalling entropy provides a more accurate and robust potency estimate than other entropy-based measures, driven in part by a subtle positive correlation between the transcriptome and connectome. Signalling entropy identifies known cell subpopulations of varying potency and drug resistant cancer stem-cell phenotypes, including those derived from circulating tumour cells. It further reveals that expression heterogeneity within single-cell populations is regulated. In summary, signalling entropy allows in silico estimation of the differentiation potency and plasticity of single cells and bulk samples, providing a means to identify normal and cancer stem-cell phenotypes.
量化单细胞分化潜能的能力是一项至关重要的任务。在这里,我们使用超过 7000 个单细胞 RNA-Seq 图谱证明,通过计算细胞转录组在相互作用网络中的信号混杂度或熵,而无需特征选择,就可以近似单个细胞的分化潜能。我们表明,信号熵比其他基于熵的度量标准提供了更准确和稳健的效力估计,部分原因是转录组和连接组之间存在微妙的正相关。信号熵确定了已知的具有不同潜能的细胞亚群和耐药性癌症干细胞表型,包括来自循环肿瘤细胞的表型。它进一步表明,单细胞群体中的表达异质性受到调控。总之,信号熵允许对单细胞和批量样本的分化潜能和可塑性进行计算机模拟估计,为识别正常和癌症干细胞表型提供了一种手段。