Abstract

Adult blood contains a mixture of mature cell types, each with specialized functions. Single hematopoietic stem cells (HSCs) have been functionally shown to generate all mature cell types for the lifetime of the organism. Differentiation of HSCs toward alternative lineages must be balanced at the population level by the fate decisions made by individual cells. Transcription factors play a key role in regulating these decisions and operate within organized regulatory programs that can be modeled as transcriptional regulatory networks. As dysregulation of single HSC fate decisions is linked to fatal malignancies such as leukemia, it is important to understand how these decisions are controlled on a cell-by-cell basis. Here we developed and applied a network inference method, exploiting the ability to infer dynamic information from single-cell snapshot expression data based on expression profiles of 48 genes in 2,167 blood stem and progenitor cells. This approach allowed us to infer transcriptional regulatory network models that recapitulated differentiation of HSCs into progenitor cell types, focusing on trajectories toward megakaryocyte–erythrocyte progenitors and lymphoid-primed multipotent progenitors. By comparing these two models, we identified and subsequently experimentally validated a difference in the regulation of nuclear factor, erythroid 2 (Nfe2) and core-binding factor, runt domain, alpha subunit 2, translocated to, 3 homolog (Cbfa2t3h) by the transcription factor Gata2. Our approach confirms known aspects of hematopoiesis, provides hypotheses about regulation of HSC differentiation, and is widely applicable to other hierarchical biological systems to uncover regulatory relationships.

Highlights

  • Adult blood contains a mixture of mature cell types, each with specialized functions

  • The gene set used included 33 transcription factors known to play a role in hematopoietic stem cells (HSCs) or myeloid differentiation, 12 nontranscription factor genes implicated in hematopoietic stem and progenitor cell (HSPC) biology, and three housekeeping genes

  • We identified potential transcriptional regulatory network models for differentiation from HSCs to megakaryocyte–erythroid progenitors (MEPs) and lymphoid-primed multipotent progenitors (LMPPs), with regulatory rules for each gene given by the highest scoring Boolean functions

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Summary

Introduction

Adult blood contains a mixture of mature cell types, each with specialized functions. We developed and applied a network inference method, exploiting the ability to infer dynamic information from single-cell snapshot expression data based on expression profiles of 48 genes in 2,167 blood stem and progenitor cells. This approach allowed us to infer transcriptional regulatory network models that recapitulated differentiation of HSCs into progenitor cell types, focusing on trajectories toward megakaryocyte– erythrocyte progenitors and lymphoid-primed multipotent progenitors. Hematopoiesis is an extensively studied and well-characterized system [1], and yet it is only with the recent development of high-throughput single-cell technologies that we are understanding how heterogeneity within hematopoietic stem and progenitor cell (HSPC) populations is related to fate choices in the blood [2, 3]. In the developing sea urchin embryo, Peter et al [14] used extensive experimental evidence of transcriptional regulation to create a computational network model that recapitulated known patterning behavior, and was capable of making predictions by simulating perturbations

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