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Joint stage recognition and anatomical annotation of drosophila gene expression patterns

机译:果蝇基因表达模式的联合阶段识别和解剖注释

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摘要

>Motivation: Staining the mRNA of a gene via in situ hybridization (ISH) during the development of a Drosophila melanogaster embryo delivers the detailed spatio-temporal patterns of the gene expression. Many related biological problems such as the detection of co-expressed genes, co-regulated genes and transcription factor binding motifs rely heavily on the analysis of these image patterns. To provide the text-based pattern searching for facilitating related biological studies, the images in the Berkeley Drosophila Genome Project (BDGP) study are annotated with developmental stage term and anatomical ontology terms manually by domain experts. Due to the rapid increase in the number of such images and the inevitable bias annotations by human curators, it is necessary to develop an automatic method to recognize the developmental stage and annotate anatomical terms.>Results: In this article, we propose a novel computational model for jointly stage classification and anatomical terms annotation of Drosophila gene expression patterns. We propose a novel Tri-Relational Graph (TG) model that comprises the data graph, anatomical term graph, developmental stage term graph, and connect them by two additional graphs induced from stage or annotation label assignments. Upon the TG model, we introduce a Preferential Random Walk (PRW) method to jointly recognize developmental stage and annotate anatomical terms by utilizing the interrelations between two tasks. The experimental results on two refined BDGP datasets demonstrate that our joint learning method can achieve superior prediction results on both tasks than the state-of-the-art methods.>Availability: >Contact:
机译:>动机:在果蝇果蝇胚胎发育过程中通过原位杂交(ISH)对基因的mRNA进行染色可提供该基因表达的详细时空模式。许多相关的生物学问题,例如共表达基因,共调控基因和转录因子结合基序的检测,在很大程度上取决于对这些图像模式的分析。为了提供基于文本的模式搜索以促进相关的生物学研究,领域专家手动为Berkeley果蝇基因组计划(BDGP)研究中的图像标注了发育阶段术语和解剖本体术语。由于此类图像数量的迅速增加以及人类策展人不可避免的偏见注释,因此有必要开发一种自动方法来识别发育阶段并注释解剖术语。>结果: ,我们提出了一种新的计算模型,用于果蝇基因表达模式的联合阶段分类和解剖学术语注释。我们提出了一种新颖的三关系图(TG)模型,该模型包括数据图,解剖学术语图,发育阶段术语图,并通过从阶段或注释标签分配中导出的两个附加图将它们连接起来。在TG模型的基础上,我们引入了优先随机行走(PRW)方法,以利用两个任务之间的相互关系共同识别发育阶段并注释解剖术语。在两个精炼的BDGP数据集上的实验结果表明,我们的联合学习方法在两个任务上均能比最新方法获得更好的预测结果。>可用性: >联系方式:

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