ArXiv TLDR

VeloTree: Inferring single-cell trajectories from RNA velocity fields with varifold distances

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2604.02380

Elodie Maignant, Tim Conrad, Christoph von Tycowicz

q-bio.GNmath.MGstat.ME

TLDR

VeloTree infers single-cell differentiation trees from RNA velocity fields using a novel varifold distance-based dissimilarity measure.

Key contributions

  • VeloTree infers single-cell differentiation trees from RNA velocity fields.
  • Utilizes a novel cell dissimilarity measure based on squared varifold distances between integral curves.
  • Demonstrates the varifold distance as a robust estimate of path distance on differentiation trees.
  • Validated with high accuracy on both simulated and real single-cell datasets.

Why it matters

Trajectory inference is crucial for understanding cell dynamics. VeloTree offers a robust, distance-based method to reconstruct differentiation trees from RNA velocity data, improving accuracy in single-cell transcriptomics analysis.

Original Abstract

Trajectory inference is a critical problem in single-cell transcriptomics, which aims to reconstruct the dynamic process underlying a population of cells from sequencing data. Of particular interest is the reconstruction of differentiation trees. One way of doing this is by estimating the path distance between nodes -- labeled by cells -- based on cell similarities observed in the sequencing data. Recent sequencing techniques make it possible to measure two types of data: gene expression levels, and RNA velocity, a vector that quantifies variation in gene expression. The sequencing data then consist in a discrete vector field in dimension the number of genes of interest. In this article, we present a novel method for inferring differentiation trees from RNA velocity fields using a distance-based approach. In particular, we introduce a cell dissimilarity measure defined as the squared varifold distance between the integral curves of the RNA velocity field, which we show is a robust estimate of the path distance on the target differentiation tree. Upstream of the dissimilarity measure calculation, we also implement comprehensive routines for the preprocessing and integration of the RNA velocity field. Finally, we illustrate the ability of our method to recover differentiation trees with high accuracy on several simulated and real datasets, and compare these results with the state of the art.

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