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Inferring similarity between time-series microarrays: A content-based approach

机译:推断时间序列微阵列之间的相似性:基于内容的方法

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Public repositories for gene expression studies have been growing rapidly in the last decade. Retrieval of gene expression experiments based on textual descriptions does not provide sufficient data for biologists and clinicians. Content-based search has recently become more desirable in retrieving similar experiments. Current methods for content-based retrieval cannot address the problem of profiling the gene behaviors in multiple measurement points, i.e. in time course. This study, to the best of our knowledge, is the first attempt to build a fingerprint for each gene by considering all time points to infer its time-course profile to represent the experiment content in an information retrieval framework. An empirical study is performed on a large dataset of Arabidopsis microarrays from Gene Expression Omnibus (GEO). Experimental results show that relevant experiments are retrieved based on content similarity.
机译:基因表达研究的公共储存库在过去十年中一直在迅速增长。基于文本描述的基因表达实验检索不提供生物学家和临床医生的足够数据。基于内容的搜索最近在检索类似的实验方面变得更加可取。基于内容的检索的当前方法无法解决多个测量点中分析基因行为的问题,即在时间课程中。本研究据我们所知,首次考虑所有时间点来推断其时序配置文件来代表信息检索框架中的实验内容来第一次尝试为每个基因构建指纹。在来自基因表达综合(Geo)的拟南芥微阵列的大型数据集上进行实证研究。实验结果表明,基于内容相似度检索相关实验。

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