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Metric learning-based graph-partitioned trajectory inference from single-cell data

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MARGARET is a Metric learning-based graph-partitioned trajectory inference method for single-cell sequencing data.

Overview


MARGARET is a Trajectory Inference (TI) method that utilizes a deep unsupervised metric learning-based approach for inferring the cellular embeddings and employs a novel measure of connectivity between cell clusters and a graph-partitioning approach to reconstruct complex trajectory topologies. MARGARET also utilizes the inferred trajectory for determining terminal states and inferring cell-fate plasticity using a scalable absorbing Markov Chain model.

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Metric learning-based graph-partitioned trajectory inference from single-cell data

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