Cell Type Hierarchy Reconstruction via Reconciliation of Multi-resolution Cluster Tree

Minshi Peng(Carnegie Mellon University), Brie Wamsley(University of California, Los Angeles), Andrew Elkins(University of California, Los Angeles), Daniel Geschwind(University of California, Los Angeles), Yuting Wei(Carnegie Mellon University), Kathryn Roeder(Carnegie Mellon University)
bioRxiv (Cold Spring Harbor Laboratory)
February 8, 2021
Cited by 7Open Access
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Abstract

Abstract A wealth of clustering algorithms are available for Single-cell RNA sequencing (scRNA-seq), but it remains challenging to compare and characterize the features across different scales of resolution. To resolve this challenge Multi-resolution Reconciled Tree (MRtree), builds a hierarchical tree structure based on multi-resolution partitions that is highly flexible and can be coupled with most scRNA-seq clustering algorithms. MRtree out-performs bottom-up or divisive hierarchical clustering approaches because it inherits the robustness and versatility of a flat clustering approach, while maintaining the hierarchical structure of cells. Application to fetal brain cells yields insight into subtypes of cells that can be reliably estimated.


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