Guide to reproducing OmicVerse trajectory workflows spanning PAGA, Palantir, VIA, velocity coupling, and fate scoring notebooks.
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name: single-trajectory-analysis title: Single-trajectory analysis description: Guide to reproducing OmicVerse trajectory workflows spanning PAGA, Palantir, VIA, velocity coupling, and fate scoring notebooks.
Single-trajectory analysis skill
Overview
This skill describes how to reproduce and extend the single-trajectory analysis workflow in omicverse, combining graph-based trajectory inference, RNA velocity coupling, and downstream fate scoring notebooks.
Trajectory setup
- PAGA (Partition-based graph abstraction)
- Build a neighborhood graph (
pp.neighbors) on the preprocessed AnnData object. - Use
tl.pagato compute cluster connectivity andtl.draw_graphortl.umapwithinit_pos='paga'for embedding. - Interpret edge weights to prioritize branch resolution and seed paths.
- Build a neighborhood graph (
- Palantir
- Run
Palantiron diffusion components, seeding with manually selected start cells (e.g., naïve T cells). - Extract pseudotime, branch probabilities, and differentiation potential for subsequent overlays.
- Run
- VIA
- Execute
via.VIAon the kNN graph to identify lineage progression with automatic root selection or user-defined roots. - Export terminal states and pseudotime for cross-validation against PAGA and Palantir results.
- Execute
Velocity coupling (VIA + scVelo)
- Use
scv.pp.filter_and_normalize,scv.pp.moments, andscv.tl.velocityto generate velocity layers. - Provide VIA with
adata.layers['velocity']to refine lineage directionality (via.VIA(..., velocity_weight=...)). - Compare VIA pseudotime with scVelo latent time (
scv.tl.latent_time) to validate directionality and root selection.
Downstream fate scoring notebooks
t_cellfate*.ipynb: Map lineage probabilities onto T-cell subsets, quantify fate bias, and visualize heatmaps.t_metacells.ipynb: Aggregate metacell trajectories for robustness checks and meta-state differential expression.t_cytotrace.ipynb: Integrate CytoTRACE differentiation potential with velocity-informed lineages for maturation scoring.
Required preprocessing
- Quality control: remove low-quality cells/genes, apply doublet filtering.
- Normalization & log transformation (
sc.pp.normalize_total,sc.pp.log1p). - Highly variable gene selection tailored to immune datasets (
sc.pp.highly_variable_genes). - Batch correction if necessary (e.g.,
scvi-tools,bbknn). - Compute PCA, neighbor graph, and embedding (UMAP/FA) used by all trajectory methods.
- For velocity: compute moments on the same neighbor graph before running VIA coupling.
Parameter tuning
- Neighbor graph
n_neighborsandn_pcsshould be harmonized across PAGA, VIA, and Palantir to maintain consistency. - In VIA, adjust
knn,too_big_factor, androot_userfor datasets with uneven sampling. - Palantir requires careful start cell selection; use marker genes and velocity arrows to confirm.
- For PAGA, tweak
thresholdto control edge sparsity; ensure connected components reflect biological branches. - Velocity estimation: compare
mode='stochastic'vsmode='dynamical'in scVelo; recalibrate if terminal states disagree with VIA.
Visualization and export
- Overlay PAGA edges on UMAP (
scv.pl.paga) and annotate branch labels. - Plot Palantir pseudotime and branch probabilities on embeddings.
- Visualize VIA trajectories using
via.plot_fatesandvia.plot_scatter. - Export pseudotime tables and fate probabilities to CSV for downstream notebooks.
- Save high-resolution figures (PNG/SVG) and notebook artifacts for reproducibility.
- Update notebooks with consistent color schemes and metadata columns before sharing.
Troubleshooting tips
- Missing velocity layers: re-run
scv.pp.momentsandscv.tl.velocityensuringadata.layers['spliced']/['unspliced']exist; verify loom/H5AD import preserved layers. - Disconnected PAGA graph: inspect neighbor graph or adjust
n_neighbors; confirm batch correction didn’t fragment the manifold. - Palantir convergence issues: reduce diffusion components or reinitialize start cells; ensure no NaN values in data matrix.
- VIA terminal states unstable: increase iterations (
cluster_graph_pruning_iter), or provide manual terminal state hints based on marker expression. - Notebook kernel memory errors: downsample cells or precompute summaries (metacells) before rerunning.
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