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Transcriptomes of rice mesophyll, bundle sheath and vein using LCM RNAseq

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NIAID Data Ecosystem2026-03-12 收录
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https://www.ncbi.nlm.nih.gov/bioproject/PRJNA702624
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Leaves comprise multiple cell types but our knowledge of the patterns of gene expression that underpin their functional specialization is fragmentary. Our understanding and ability to undertake rational redesign of these cells is therefore limited. We aimed to identify genes associated with the poorly understood bundle sheath of C3 plants, which represents a key target associated with engineering traits such as C4 photosynthesis into rice. To better understand veins, bundle sheath and mesophyll cells of rice we used laser capture microdissection followed by deep sequencing. Gene expression of the mesophyll is conditioned to allow coenzyme metabolism and solute transport as well as photosynthesis. In contrast, the bundle sheath is specialized in water transport, sulphur assimilation and jasmonic acid biosynthesis. Despite the small chloroplast compartment of bundle sheath cells, substantial photosynthesis gene expression was detected, and gene expression was more similar to mesophyll cells than veins. These patterns of gene expression were not associated with presence/absence of particular transcription factors in each cell type, but rather gradients in expression across the leaf. Comparative analysis with C3 Arabidopsis identified a small gene-set preferentially expressed in bundle sheath cells of both species. This included genes encoding transcription factors from fourteen orthogroups, and proteins allowing water transport, sulphate assimilation and jasmonic acid synthesis. The most parsimonious explanation for our findings is that bundle sheath cells from the last common ancestor of rice and Arabidopsis was specialized in this manner, and since the species diverged these patterns of gene expression have been maintained.
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2021-02-18
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