RT Journal Article SR Electronic T1 xCell: Digitally portraying the tissue cellular heterogeneity landscape JF bioRxiv FD Cold Spring Harbor Laboratory SP 114165 DO 10.1101/114165 A1 Dvir Aran A1 Zicheng Hu A1 Atul J. Butte YR 2017 UL http://biorxiv.org/content/early/2017/06/15/114165.abstract AB Tissues are complex milieu consisting of numerous cell-types. Numerous recent methods attempt to enumerate cell subsets from transcriptomes. However, available method used limited source for training and displayed only partial portrayal of the full cellular landscape. Here we present xCell, a novel gene-signature based method for inferring 64 immune and stroma cell-types. We harmonized 1,822 pure human cell-types transcriptomes from various sources, employed curve fitting approach for linear comparison of cell-types, and introduced a novel spillover compensation technique for separating between cell-types. Using extensive in silico analyses and comparison to cytometry immunophenotyping we show that xCell outperforms other methods: http://xCell.ucsf.edu/.