报告题目:Inferring cell dynamics based on single-cell lineage tracing data
报告时间:2024-10-10 10:00-11:00
报 告 人:周达 教授(厦门大学)
报告地点:老外楼应用数学系办公室
Abstract: The emergence of single-cell lineage
tracing technologies has enabled the reconstruction of phylogenetic trees for
thousands of cells, facilitating the application of phylodynamicsinference (PI) at the cellular level. However, the complexity of cell
differentiation presents significant challenges for existing PI frameworks. To
address these challenges, we present scPhyloX,
a novel computational approach that utilizes single-cell phylogenetic trees to
infer dynamics of tissue development and tumor evolution. Simulations
demonstrate that scPhyloXachieves high accuracy, while analyses of real datasets provide new insights
into somatic dynamics, such as stem cell population overshoot during fly organ
development and clonal expansion in human aging and early colorectal
tumorigenesis. Concurrently, single-cell RNA sequencing (scRNA-seq)
is a powerful tool for investigating cellular differentiation; however,
tracking cell fate transitions in disease contexts remains difficult. We
introduce PhyloVelo, a
framework that estimates transcriptomic dynamics using monotonically expressed
genes (MEGs). By integrating scRNA-seq
data with lineage information, PhyloVeloreconstructs a transcriptomic velocity field. Validation studies demonstrate
that PhyloVeloaccurately recovers differentiation trajectories, surpassing traditional RNA
velocity methods, and identifies MEGs with conserved functions in translation
and ribosome biogenesis across various tissues and organisms.