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3D RNA profiling of the developing head in the catshark S. canicula

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https://www.ncbi.nlm.nih.gov/sra/SRP334650
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We report the adaptation of RNA tomography, a technique allowing spatially resolved, genome-wide expression profiling, to a non-conventional model organism occupying a key phylogenetic position in gnathostomes, the catshark Scyliorhinus canicula. We focused analysis on head explants at an embryonic stage, shortly following neural tube closure and of interest for a number of developmental processes, including early brain patterning, placode specification or the establishment of epithalamic asymmetry. As described in the zebrafish, we have sequenced RNAs extracted from serial sections along transverse, horizontal and sagittal planes, mapped the data onto a gene model reference taking advantage of the high continuity genome recently released in the catshark, and projected read counts onto a digital model of the head obtained by confocal microscopy. This results in the generation of a genome-wide 3D atlas, containing expression data for all protein-coding genes in a digital model of the embryonic head. The digital profiles obtained for candidate forebrain regional markers along antero-posterior, dorso-ventral and left-right axes reproduce those obtained by in situ hybridization, with expected relative organizations. We also use spatial autocorrelation and correlation as measures to analyze these data and show that they provide adequate statistical tools to extract novel expression information from the model. These data and tools allow exhaustive searches of genes exhibiting any predefined expression characteristics, thus providing a reference for comparative analyses across gnathostomes. This methodology appears best suited to species endowed with large embryo sizes and opens novel perspectives to a wide counter-selected on size criterion.
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2022-05-12
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