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Bioinformatics approach to spatially resolved transcriptomics

机译:生物信息学方法的空间分辨转录组学

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Spatially resolved transcriptomics encompasses a growing number of methods developed to enable gene expression profiling of individual cells within a tissue. Different technologies are available and they vary with respect to: the method used to define regions of interest, the method used to assess gene expression, and resolution. Since techniques based on next-generation sequencing are the most prevalent, and provide single-cell resolution, many bioinformatics tools for spatially resolved data are shared with single-cell RNA-seq. The analysis pipelines diverge at the level of quantification matrix, downstream of which spatial techniques require specific tools to answer key biological questions. Those questions include: (i) cell type classification; (ii) detection of genes with specific spatial distribution; (iii) identification of novel tissue regions based on gene expression patterns; (iv) cell–cell interactions. On the other hand, analysis of spatially resolved data is burdened by several specific challenges. Defining regions of interest, e.g. neoplastic tissue, often calls for manual annotation of images, which then poses a bottleneck in the pipeline. Another specific issue is the third spatial dimension and the need to expand the analysis beyond a single slice. Despite the problems, it can be predicted that the popularity of spatial techniques will keep growing until they replace single-cell assays (which will remain limited to specific cases, like blood). As soon as the computational protocol reach the maturity (e.g. bulk RNA-seq), one can foresee the expansion of spatial techniques beyond basic or translational research, even into routine medical diagnostics.
机译:空间分辨的转录组学包含越来越多的方法来实现组织内单个细胞的基因表达分析。可以使用不同的技术,并且相对于:用于定义感兴趣区域的方法,用于评估基因表达和分辨率的方法。由于基于下一代测序的技术是最普遍的,并且提供了单细胞分辨率,因此与单细胞RNA-seq共享许多用于空间解决数据的生物信息学工具。该分析管道在定量矩阵级别上有所不同,在这些矩阵的下游,空间技术需要特定的工具来回答关键的生物学问题。这些问题包括:(i)单元格类型分类; (ii)检测具有特定空间分布的基因; (iii)基于基因表达模式鉴定新的组织区域; (iv)细胞 - 细胞相互作用。另一方面,对空间解决数据的分析负担了一些特定的挑战。定义感兴趣的地区,例如肿瘤组织通常需要对图像进行手动注释,然后在管道中饰有瓶颈。另一个具体问题是第三个空间维度,需要将分析扩展到单个切片之外。尽管存在问题,但可以预测,空间技术的普及将不断增长,直到它们取代单细胞测定法为止(该分析将限于特定病例,例如血液)。一旦计算协议达到成熟度(例如大量RNA-Seq),就可以预见到基本或转化研究以外的空间技术的扩展,甚至可以扩展到常规的医学诊断中。

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