1. MultiMAP: dimensionality reduction and integration of multimodal data.
- Author
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Jain MS, Polanski K, Conde CD, Chen X, Park J, Mamanova L, Knights A, Botting RA, Stephenson E, Haniffa M, Lamacraft A, Efremova M, and Teichmann SA
- Subjects
- Algorithms, Chromatin, Chromosomes, Human, Gene Expression Regulation, Genetic Markers, Genomics, Humans, Software, Transcription Factors, Chromosome Mapping methods, Single-Cell Analysis methods, Transcriptome
- Abstract
Multimodal data is rapidly growing in many fields of science and engineering, including single-cell biology. We introduce MultiMAP, a novel algorithm for dimensionality reduction and integration. MultiMAP can integrate any number of datasets, leverages features not present in all datasets, is not restricted to a linear mapping, allows the user to specify the influence of each dataset, and is extremely scalable to large datasets. We apply MultiMAP to single-cell transcriptomics, chromatin accessibility, methylation, and spatial data and show that it outperforms current approaches. On a new thymus dataset, we use MultiMAP to integrate cells along a temporal trajectory. This enables quantitative comparison of transcription factor expression and binding site accessibility over the course of T cell differentiation, revealing patterns of expression versus binding site opening kinetics., (© 2021. The Author(s).)
- Published
- 2021
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