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Generalized and scalable trajectory inference in single-cell omics data with VIA.

Shobana V StassenGwinky G K YipKenneth Kin-Yip WongJoshua Wing-Kei HoKevin K Tsia
Published in: Nature communications (2021)
Inferring cellular trajectories using a variety of omic data is a critical task in single-cell data science. However, accurate prediction of cell fates, and thereby biologically meaningful discovery, is challenged by the sheer size of single-cell data, the diversity of omic data types, and the complexity of their topologies. We present VIA, a scalable trajectory inference algorithm that overcomes these limitations by using lazy-teleporting random walks to accurately reconstruct complex cellular trajectories beyond tree-like pathways (e.g., cyclic or disconnected structures). We show that VIA robustly and efficiently unravels the fine-grained sub-trajectories in a 1.3-million-cell transcriptomic mouse atlas without losing the global connectivity at such a high cell count. We further apply VIA to discovering elusive lineages and less populous cell fates missed by other methods across a variety of data types, including single-cell proteomic, epigenomic, multi-omics datasets, and a new in-house single-cell morphological dataset.
Keyphrases
  • single cell
  • rna seq
  • high throughput
  • electronic health record
  • big data
  • depressive symptoms
  • public health
  • data analysis
  • multiple sclerosis
  • deep learning
  • molecular dynamics
  • stem cells
  • bone marrow
  • neural network