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Dissecting gene expression heterogeneity: generalized Pearson correlation squares and the K-lines clustering algorithm
Journal of the American Statistical Association ( IF 3.7 ) Pub Date : 2024-04-15 , DOI: 10.1080/01621459.2024.2342639 Jingyi Jessica Li 1 , Heather J. Zhou 1 , Peter J. Bickel 2 , Xin Tong 3
Journal of the American Statistical Association ( IF 3.7 ) Pub Date : 2024-04-15 , DOI: 10.1080/01621459.2024.2342639 Jingyi Jessica Li 1 , Heather J. Zhou 1 , Peter J. Bickel 2 , Xin Tong 3
Affiliation
Motivated by the pressing needs for dissecting heterogeneous relationships in gene expression data, here we generalize the squared Pearson correlation to capture a mixture of linear dependences bet...
中文翻译:
剖析基因表达异质性:广义皮尔逊相关平方和 K 线聚类算法
出于剖析基因表达数据中异质关系的迫切需求,我们在这里推广平方皮尔逊相关性来捕获线性依赖性的混合......
更新日期:2024-04-15
中文翻译:
剖析基因表达异质性:广义皮尔逊相关平方和 K 线聚类算法
出于剖析基因表达数据中异质关系的迫切需求,我们在这里推广平方皮尔逊相关性来捕获线性依赖性的混合......