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A High-Fidelity Cell Lineage Tracing Method for Obtaining Systematic Spatiotemporal Gene Expression Patterns in Caenorhabditis elegans

机译:一种高保真细胞谱系追踪方法,用于获取秀丽隐杆线虫的系统时空基因表达模式

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Advances in microscopy and fluorescent reporters have allowed us to detect the onset of gene expression on a cell-by-cell basis in a systematic fashion. This information, however, is often encoded in large repositories of images, and developing ways to extract this spatiotemporal expression data is a difficult problem that often uses complex domain-specific methods for each individual data set. We present a more unified approach that incorporates general previous information into a hierarchical probabilistic model to extract spatiotemporal gene expression from 4D confocal microscopy images of developing Caenorhabditis elegans embryos. This approach reduces the overall error rate of our automated lineage tracing pipeline by 3.8-fold, allowing us to routinely follow the C. elegans lineage to later stages of development, where individual neuronal subspecification becomes apparent. Unlike previous methods that often use custom approaches that are organism specific, our method uses generalized linear models and extensions of standard reversible jump Markov chain Monte Carlo methods that can be readily extended to other organisms for a variety of biological inference problems relating to cell fate specification. This modeling approach is flexible and provides tractable avenues for incorporating additional previous information into the model for similar difficult high-fidelity/low error tolerance image analysis problems for systematically applied genomic experiments.
机译:显微镜技术和荧光报告基因的发展使我们能够以系统的方式逐个细胞地检测基因表达的开始。但是,此信息通常在较大的图像存储库中进行编码,因此开发提取此时空表达数据的方法是一个难题,通常对每个单独的数据集使用复杂的领域特定方法。我们提出了一种更加统一的方法,该方法将一般的先前信息纳入了一个分层的概率模型,以从发育秀丽线虫的4D共聚焦显微镜图像中提取时空基因表达。这种方法将我们的自动谱系追踪流水线的总体错误率降低了3.8倍,使我们能够按照线虫线虫常规进行后续的发育阶段,在此阶段中,各个神经元的亚规格变得明显。与以前的方法通常使用特定于生物体的自定义方法不同,我们的方法使用广义线性模型和标准可逆跳跃马尔可夫链蒙特卡罗方法的扩展,这些方法可以很容易地扩展到其他生物,以解决与细胞命运规格相关的各种生物学推断问题。这种建模方法是灵活的,并且为将额外的先前信息合并到模型中提供了可解决的途径,以解决系统应用的基因组实验中类似的困难的高保真/低容错图像分析问题。

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