Identification of Spatially Variable Genes with Weighted Leverage Scores
Author
Wei, RanIssue Date
2023Keywords
Gene ExpressionSpatial Transcriptomics
Spatially Variable Genes
Transcriptomics
Weighted Leverage Scores
Advisor
Liu, Yiwen
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The University of Arizona.Rights
Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction, presentation (such as public display or performance) of protected items is prohibited except with permission of the author.Abstract
Spatially variable (SV) gene detection plays a crucial role in analyzing spatial transcriptomicsdata for dissecting complex tissue microenvironments. Recently, a novel weighted leverage score (WLS) variable screening method was proposed to efficiently identify important features. Herein, this research introduced a new approach applying the WLS method together with a clustering algorithm, such as BayesSpace, to effectively identify SV genes. Through rigorous testing on simulated and rea-world datasets against established methods, the combination of the WLS method and BayesSpace consistently demonstrated superior accuracy in SV gene detection. As a robust, efficient, and flexible tool, the WLS method can be used to significantly improves the results in studying complex relationships between molecular cell functions and tissue phenotypes in spatial transcriptomics analysis.Type
Electronic Thesistext
Degree Name
M.S.Degree Level
mastersDegree Program
Graduate CollegeBiostatistics