MultiMAP: dimensionality reduction and integration of multimodal data

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作者
Mika Sarkin Jain
Krzysztof Polanski
Cecilia Dominguez Conde
Xi Chen
Jongeun Park
Lira Mamanova
Andrew Knights
Rachel A. Botting
Emily Stephenson
Muzlifah Haniffa
Austen Lamacraft
Mirjana Efremova
Sarah A. Teichmann
机构
[1] University of Cambridge,Theory of Condensed Matter, Dept Physics, Cavendish Laboratory
[2] Wellcome Sanger Institute,Biosciences Institute
[3] Wellcome Genome Campus,Barts Cancer Institute
[4] Southern University of Science and Technology,undefined
[5] KAIST,undefined
[6] Newcastle University,undefined
[7] Queen Mary University of London,undefined
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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.
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