TY - JOUR
T1 - Single-Cell Computational Strategies for Lineage Reconstruction in Tissue Systems
AU - Herring, Charles A.
AU - Chen, Bob
AU - McKinley, Eliot T.
AU - Lau, Ken S.
PY - 2018
Y1 - 2018
N2 - Function at the organ level manifests itself from a heterogeneous collection of cell types. Cellular heterogeneity emerges from developmental processes by which multipotent progenitor cells make fate decisions and transition to specific cell types through intermediate cell states. Although genetic experimental strategies such as lineage tracing have provided insights into cell lineages, recent developments in single-cell technologies have greatly increased our ability to interrogate distinct cell types, as well as transitional cell states in tissue systems. From single-cell data that describe these intermediate cell states, computational tools have been developed to reconstruct cell-state transition trajectories that model cell developmental processes. These algorithms, although powerful, are still in their infancy, and attention must be paid to their strengths and weaknesses when they are used. Here, we review some of these tools, also referred to as pseudotemporal ordering algorithms, and their associated assumptions and caveats. We hope to provide a rational and generalizable workflow for single-cell trajectory analysis that is intuitive for experimental biologists.
AB - Function at the organ level manifests itself from a heterogeneous collection of cell types. Cellular heterogeneity emerges from developmental processes by which multipotent progenitor cells make fate decisions and transition to specific cell types through intermediate cell states. Although genetic experimental strategies such as lineage tracing have provided insights into cell lineages, recent developments in single-cell technologies have greatly increased our ability to interrogate distinct cell types, as well as transitional cell states in tissue systems. From single-cell data that describe these intermediate cell states, computational tools have been developed to reconstruct cell-state transition trajectories that model cell developmental processes. These algorithms, although powerful, are still in their infancy, and attention must be paid to their strengths and weaknesses when they are used. Here, we review some of these tools, also referred to as pseudotemporal ordering algorithms, and their associated assumptions and caveats. We hope to provide a rational and generalizable workflow for single-cell trajectory analysis that is intuitive for experimental biologists.
KW - Cell State Transition
KW - Differentiation
KW - Pseudotime
KW - Single-Cell Analysis
KW - Stem Cells
KW - Trajectory
UR - http://www.scopus.com/inward/record.url?scp=85044777176&partnerID=8YFLogxK
U2 - 10.1016/j.jcmgh.2018.01.023
DO - 10.1016/j.jcmgh.2018.01.023
M3 - Review article
AN - SCOPUS:85044777176
VL - 5
SP - 539
EP - 548
JO - CMGH
JF - CMGH
IS - 4
ER -