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Tempora: Cell trajectory inference using time-series single-cell RNA sequencing data

Thinh Ngoc Tran, Gary D. Bader

2020PLoS Computational Biology92 citationsDOIOpen Access PDF

Abstract

Single-cell RNA sequencing (scRNA-seq) can map cell types, states and transitions during dynamic biological processes such as tissue development and regeneration. Many trajectory inference methods have been developed to order cells by their progression through a dynamic process. However, when time series data is available, most of these methods do not consider the available time information when ordering cells and are instead designed to work only on a single scRNA-seq data snapshot. We present Tempora, a novel cell trajectory inference method that orders cells using time information from time-series scRNA-seq data. In performance comparison tests, Tempora inferred known developmental lineages from three diverse tissue development time series data sets, beating state of the art methods in accuracy and speed. Tempora works at the level of cell clusters (types) and uses biological pathway information to help identify cell type relationships. This approach increases gene expression signal from single cells, processing speed, and interpretability of the inferred trajectory. Our results demonstrate the utility of a combination of time and pathway information to supervise trajectory inference for scRNA-seq based analysis.

Topics & Concepts

InferenceInterpretabilityTrajectoryComputer scienceTime seriesSnapshot (computer storage)Single-cell analysisAlgorithmComputational biologyArtificial intelligenceData miningBiologyMachine learningCellGeneticsOperating systemAstronomyPhysicsSingle-cell and spatial transcriptomicsCancer-related molecular mechanisms researchDomain Adaptation and Few-Shot Learning