生物
电池类型
胚乳
基因
空间组织
基因调控网络
蜂窝体系结构
胚胎
细胞
基因表达
核心
计算生物学
遗传学
进化生物学
神经科学
计算机科学
参考体系结构
软件体系结构
软件
程序设计语言
作者
Julie Pelletier,Min Chen,Jer-Young Lin,Brandon H. Le,Ryan C. Kirkbride,Jungim Hur,Yangting Wang,Shi‐Chung Chang,Alexander Olson,Lachezar A. Nikolov,Robert B. Goldberg,John J. Harada
标识
DOI:10.1073/pnas.2416987121
摘要
Seeds are complex structures composed of three regions, embryo, endosperm, and seed coat, with each further divided into subregions that consist of tissues, cell layers, and cell types. Although the seed is well characterized anatomically, much less is known about the genetic circuitry that dictates its spatial complexity. To address this issue, we profiled mRNAs from anatomically distinct seed subregions at several developmental stages. Analyses of these profiles showed that all subregions express similar diverse gene numbers and that the small gene numbers expressed subregion specifically provide information about the biological processes that occur in these seed compartments. In parallel, we profiled RNAs in individual nuclei and identified nuclei clusters representing distinct cell identities. Integrating single-nucleus RNA and subregion mRNA transcriptomes allowed most cell identities to be assigned to specific subregions and cell types and/or cell states. The number of cell identities exceeds the number of anatomically distinguishable cell types, emphasizing the spatial complexity of seeds. We defined gene coexpression networks that underlie distinct biological processes during seed development. We showed that network distribution among subregions and cell identities is highly variable. Some networks operate in single subregions and/or cell identities, and many coexpression networks operate in multiple subregions and/or cell identities. We also showed that single subregions and cell identities possess several networks. Together, our studies provide unique insights into the biological processes and genetic circuitry that underlie the spatial landscape of the seed.
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