Identifying temporal and spatial patterns of variation from multimodal data using MEFISTO.
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IF: 47.990
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Cited by: 47
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Abstract

Factor analysis is a widely used method for dimensionality reduction in genome biology, with applications from personalized health to single-cell biology. Existing factor analysis models assume independence of the observed samples, an assumption that fails in spatio-temporal profiling studies. Here we present MEFISTO, a flexible and versatile toolbox for modeling high-dimensional data when spatial or temporal dependencies between the samples are known. MEFISTO maintains the established benefits of factor analysis for multimodal data, but enables the performance of spatio-temporally informed dimensionality reduction, interpolation, and separation of smooth from non-smooth patterns of variation. Moreover, MEFISTO can integrate multiple related datasets by simultaneously identifying and aligning the underlying patterns of variation in a data-driven manner. To illustrate MEFISTO, we apply the model to different datasets with spatial or temporal resolution, including an evolutionary atlas of organ development, a longitudinal microbiome study, a single-cell multi-omics atlas of mouse gastrulation and spatially resolved transcriptomics.

Keywords

Spatial Temporal Transcriptomics
Seurat
Spatial Transcriptomics

MeSH terms

Animals
Computational Biology
Databases, Factual
Evolution, Molecular
Gastrointestinal Microbiome
Gene Expression Regulation, Developmental
Humans
Infant
Longitudinal Studies
Single-Cell Analysis
Software
Spatio-Temporal Analysis

Authors

Velten, Britta
Braunger, Jana M
Argelaguet, Ricard
Arnol, Damien
Wirbel, Jakob
Bredikhin, Danila
Zeller, Georg
Stegle, Oliver

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