Institut Cochin, CNRSUMR8104, INSERM U1016, OPALE Carnot Institute, The Organization for Partnerships in Leukemia, Université de Paris, Paris, France.
Assistance Publique-Hôpitaux de Paris, Centre - Université de Paris, Service d'Hématologie biologique, Hôpital Cochin, Paris, France.
BMC Biol. 2022 Mar 9;20(1):60. doi: 10.1186/s12915-022-01264-9.
Mature blood cells arise from hematopoietic stem cells in the bone marrow by a process of differentiation along one of several different lineage trajectories. This is often represented as a series of discrete steps of increasing progenitor cell commitment to a given lineage, but as for differentiation in general, whether the process is instructive or stochastic remains controversial. Here, we examine this question by analyzing single-cell transcriptomic data from human bone marrow cells, assessing cell-to-cell variability along the trajectories of hematopoietic differentiation into four different types of mature blood cells. The instructive model predicts that cells will be following the same sequence of instructions and that there will be minimal variability of gene expression between them throughout the process, while the stochastic model predicts a role for cell-to-cell variability when lineage commitments are being made.
Applying Shannon entropy to measure cell-to-cell variability among human hematopoietic bone marrow cells at the same stage of differentiation, we observed a transient peak of gene expression variability occurring at characteristic points in all hematopoietic differentiation pathways. Strikingly, the genes whose cell-to-cell variation of expression fluctuated the most over the course of a given differentiation trajectory are pathway-specific genes, whereas genes which showed the greatest variation of mean expression are common to all pathways. Finally, we showed that the level of cell-to-cell variation is increased in the most immature compartment of hematopoiesis in myelodysplastic syndromes.
These data suggest that human hematopoietic differentiation could be better conceptualized as a dynamical stochastic process with a transient stage of cellular indetermination, and strongly support the stochastic view of differentiation. They also highlight the need to consider the role of stochastic gene expression in complex physiological processes and pathologies such as cancers, paving the way for possible noise-based therapies through epigenetic regulation.
成熟血细胞由骨髓中的造血干细胞通过沿着几个不同谱系轨迹之一的分化过程产生。这通常表示为祖细胞向特定谱系的逐步承诺的离散步骤系列,但与一般分化一样,该过程是指令性的还是随机的仍然存在争议。在这里,我们通过分析来自人类骨髓细胞的单细胞转录组数据来研究这个问题,评估沿着造血分化为四种不同类型成熟血细胞的轨迹的细胞间变异性。指令模型预测细胞将遵循相同的指令序列,并且在整个过程中它们之间的基因表达变异性最小,而随机模型预测在谱系承诺做出时细胞间变异性会起作用。
应用香农熵来衡量人类造血骨髓细胞在分化的同一阶段的细胞间变异性,我们观察到在所有造血分化途径中,特征性的点都出现了基因表达变异性的短暂峰值。引人注目的是,在给定分化轨迹中表达变化波动最大的细胞间基因是途径特异性基因,而表达均值变化最大的基因则是所有途径共有的。最后,我们表明细胞间变异性水平在骨髓增生异常综合征中造血最不成熟的隔室中增加。
这些数据表明,人类造血分化可以更好地被概念化为具有短暂细胞不确定阶段的动态随机过程,并且强烈支持分化的随机观点。它们还突出了需要考虑随机基因表达在复杂生理过程和病理学(如癌症)中的作用,为通过表观遗传调控进行基于噪声的治疗铺平了道路。