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Novel insights into embryonic stem cell self-renewal revealed through comparative human and mouse systems biology networks

机译:通过比较的人类和小鼠系统生物学网络揭示了对胚胎干细胞自我更新的新颖见解

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Embryonic stem cells (ESCs), characterized by their ability to both self-renew and differentiate into multiple cell lineages, are a powerful model for biomedical research and developmental biology. Human and mouse ESCs share many features, yet have distinctive aspects, including fundamental differences in the signaling pathways and cell cycle controls that support self-renewal. Here, we explore the molecular basis of human ESC self-renewal using Bayesian network machine learning to integrate cell-type-specific, high-throughput data for gene function discovery. We integrated high-throughput ESC data from 83 human studies (a?1.8 million data points collected under 1,100 conditions) and 62 mouse studies (a?2.4 million data points collected under 1,085 conditions) into separate human and mouse predictive networks focused on ESC self-renewal to analyze shared and distinct functional relationships among protein-coding gene orthologs. Computational evaluations show that these networks are highly accurate, literature validation confirms their biological relevance, and reverse transcriptase polymerase chain reaction (RT-PCR) validation supports our predictions. Our results reflect the importance of key regulatory genes known to be strongly associated with self-renewal and pluripotency in both species (e.g., POU5F1, SOX2, and NANOG), identify metabolic differences between species (e.g., threonine metabolism), clarify differences between human and mouse ESC developmental signaling pathways (e.g., leukemia inhibitory factor (LIF)-activated JAK/STAT in mouse; NODAL/ACTIVIN-A-activated fibroblast growth factor in human), and reveal many novel genes and pathways predicted to be functionally associated with self-renewal in each species. These interactive networks are available online at www.StemSight.org for stem cell researchers to develop new hypotheses, discover potential mechanisms involving sparsely annotated genes, and prioritize genes of interest for experimental validation.
机译:胚胎干细胞(ESC)具有自我更新和分化为多种细胞谱系的能力,是生物医学研究和发育生物学的强大模型。人类和小鼠的ESC具有许多功能,但又具有独特的方面,包括信号通路和支持自我更新的细胞周期控制的根本差异。在这里,我们使用贝叶斯网络机器学习探索人类ESC自我更新的分子基础,以整合特定于细胞类型的高通量数据进行基因功能发现。我们将来自83个人体研究(在1,100个条件下收集了180万个数据点)和62个小鼠研究(在1,085个条件下收集了240万个数据点)的高通量ESC数据整合到了专注于ESC自身的人类和小鼠预测网络中更新以分析蛋白质编码基因直向同源物之间共享的和独特的功能关系。计算评估表明,这些网络非常准确,文献验证证实了它们的生物学相关性,逆转录聚合酶链反应(RT-PCR)验证支持了我们的预测。我们的结果反映了已知与两个物种的自我更新和多能性密切相关的关键调控基因的重要性(例如,POU5F1,SOX2和NANOG),确定了物种之间的代谢差异(例如,苏氨酸代谢),阐明了人类之间的差异和小鼠ESC的发育信号通路(例如,小鼠中的白血病抑制因子(LIF)激活的JAK / STAT;人中的NODAL / ACTIVIN-A激活的成纤维细胞生长因子),并揭示了许多新的基因和途径,预计与每个物种的自我更新。这些互动网络可在www.StemSight.org上在线获得,供干细胞研究人员研究新的假设,发现涉及稀疏注释基因的潜在机制,并确定感兴趣的基因的优先级以进行实验验证。

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