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Activity Number: 308 - Statistical Methods for Studying Spatial Transcriptomics, Tissue Heterogeneity, and Pleiotropy
Type: Topic-Contributed
Date/Time: Wednesday, August 11, 2021 : 3:30 PM to 5:20 PM
Sponsor: Section on Statistics in Genomics and Genetics
Abstract #317127
Title: Nonparametric Modeling Enables Scalable and Robust Detection of Spatial Expression Patterns for Large Spatial Transcriptomic Studies
Author(s): Xiang Zhou*
Companies: University of Michigan
Keywords: Spatial transcriptomics; non-parametric; SPARK; spatial expression; computation; SPARK-X
Abstract:

Spatial transcriptomic studies are becoming increasingly common and increasingly large, posing important statistical and computational challenges for many analytic tasks. Here, we present SPARK-X, a non-parametric modeling framework for rapid and effective identification of genes with spatial expression patterns in large spatial transcriptomic studies. SPARK-X not only produces effective type I error control and high power but also brings orders of magnitude computational savings. We applied SPARK-X to analyze three large spatial transcriptomic data, one of which is only analyzable by SPARK-X. In these data, SPARK-X identified many spatially expressed genes not identifiable by existing approaches, revealing new biological insights.


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