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SPECS: a non-parametric method to identify tissue-specific molecular features for unbalanced sample groups

机译:规格:非参数化方法,用于识别不平衡样本组的组织特异性分子特征

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To understand biology and differences among various tissues or cell types, one typically searches for molecular features that display characteristic abundance patterns. Several specificity metrics have been introduced to identify tissue-specific molecular features, but these either require an equal number of replicates per tissue or they can’t handle replicates at all. We describe a non-parametric specificity score that is compatible with unequal sample group sizes. To demonstrate its usefulness, the specificity score was calculated on all GTEx samples, detecting known and novel tissue-specific genes. A webtool was developed to browse these results for genes or tissues of interest. An example python implementation of SPECS is available at https://github.com/celineeveraert/SPECS. The precalculated SPECS results on the GTEx data are available through a user-friendly browser at specs.cmgg.be. SPECS is a non-parametric method that identifies known and novel specific-expressed genes. In addition, SPECS could be adopted for other features and applications.
机译:为了了解各种组织或细胞类型之间的生物学和差异,通常搜索显示特征丰度模式的分子特征。已经引入了几种特异性指标以鉴定组织特异性分子特征,但是这些要么需要每个组织的相等数量的重复,或者它们根本无法处理重复。我们描述了与不等样本组大小兼容的非参数特异性分数。为了证明其有用性,在所有GTEX样品上计算特异性评分,检测已知和新的组织特异性基因。开发了一种WebTool以浏览这些结果的这些结果。一个示例Python Specs的实现可在https://github.com/celineeveraert/specs上获得。预先计算的规格通过Specs.cmgg.be的用户友好的浏览器可获得GTEX数据。 Spec是一种非参数方法,其识别已知的已知和新的特异性基因。此外,还可以采用规范进行其他功能和应用。

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