逐步贝叶斯机器学习发现神经管发育过程中的新型基因调控网络组件

Chen Xing, Yuichi Sakumura, Toshiya Kokaji, Katsuyuki Kunida, Noriaki Sasai
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引用次数: 0

摘要

基于机器学习的数据处理技术的最新进展促进了基因调控相互作用的推断以及从多维基因表达数据中识别关键基因。在本研究中,我们采用逐步贝叶斯框架发现了一种参与特定神经和神经元细胞分化的新型调控成分。我们用不同浓度和时间点的Sonic Hedgehog(Shh)处理幼稚神经前体细胞,生成了全面的全基因组测序数据,捕获了分化过程中的动态基因表达谱。根据基因的表达谱将其分为 224 个子集,并推断这些子集之间的关系。为了准确预测子集之间的基因调控,使用已知网络作为核心模型,并逐步测试待添加的子集。通过这种方法,我们在基因调控网络(GRN)中发现了一种参与神经管形态形成的新成分,并对其进行了实验验证。我们的研究凸显了在神经发育过程中推断基因调控网络的硅学建模的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stepwise Bayesian Machine Learning Uncovers a Novel Gene Regulatory Network Component in Neural Tube Development
Recent advancements in machine learning-based data processing techniques have facilitated the inference of gene regulatory interactions and the identification of key genes from multidimensional gene expression data. In this study, we applied a stepwise Bayesian framework to uncover a novel regulatory component involved in differentiation of specific neural and neuronal cells. We treated naive neural precursor cells with Sonic Hedgehog (Shh) at various concentrations and time points, generating comprehensive whole-genome sequencing data that captured dynamic gene expression profiles during differentiation. The genes were categorized into 224 subsets based on their expression profiles, and the relationships between these subsets were extrapolated. To accurately predict gene regulation among subsets, known networks were used as a core model and subsets to be added were tested stepwise. This approach led to the identification of a novel component involved in neural tube patterning within gene regulatory networks (GRNs), which was experimentally validated. Our study highlights the effectiveness of in silico modeling for extrapolating GRNs during neural development.
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