View Item 
        •   Utrecht University Student Theses Repository Home
        • UU Theses Repository
        • Theses
        • View Item
        •   Utrecht University Student Theses Repository Home
        • UU Theses Repository
        • Theses
        • View Item
        JavaScript is disabled for your browser. Some features of this site may not work without it.

        Browse

        All of UU Student Theses RepositoryBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

        Navigating the Complexity of Data Imputation in Spatial Transcriptomics: Strategies, Challenges, and Future Directions

        Thumbnail
        View/Open
        R_W_G_N_vanderMAREL_6216773_WRITING_ASSINGMENT_DE_RIDDER.pdf (2.081Mb)
        Publication date
        2024
        Author
        Marel, Ricfrid van der
        Metadata
        Show full item record
        Summary
        Spatially resolved transcriptomics (SRT) has transformed our understanding of the complex molecular architectures of tissues by measuring gene expression within their spatial context, which is crucial for unraveling cell heterogeneity and intercellular communication within tissues. However, SRT datasets frequently suffer from data sparsity and dropout events that complicate the interpretation of gene expression across tissues. This review explores the current landscape of computational strategies for imputing missing data in SRT, focusing on imputation models that address the challenges inherent to data sparsity and dropout in spatially resolved contexts. We categorize these models into three main approaches: Integration into Shared Latent Space, Alignment-based Imputation, and Reference-free Spatially Informed Imputation Models. Each category utilizes distinct methodologies to infer missing gene expressions. We critically examine the underlying assumptions, advantages, and limitations of these models, assess their performance through recent benchmarking efforts, and provide recommendations for their application in biological research. This review provides an overview of strategies, a qualitative comparison between them, and highlights the need for a robust benchmarking study. Thereby offering a comprehensive outline of the field and providing direction for future efforts, to derive more accurate and biologically meaningful insights from incomplete but spatially contextualized datasets.
        URI
        https://studenttheses.uu.nl/handle/20.500.12932/47995
        Collections
        • Theses
        Utrecht university logo