skills/spatial-omics-analysis/SKILL.md
ToolUniverse workflow — Spatial Omics Analysis
npx skillsauth add lamm-mit/scienceclaw spatial-omics-analysisInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Comprehensive biological interpretation of spatial omics data. Transforms spatially variable genes (SVGs), domain annotations, and tissue context into actionable biological insights covering pathway enrichment, cell-cell interactions, druggable targets, immune microenvironment, and multi-modal integration.
KEY PRINCIPLES:
Apply when users:
NOT for (use other skills instead):
tooluniverse-target-researchtooluniverse-variant-interpretationtooluniverse-adverse-event-detectiontooluniverse-multiomic-disease-characterizationtooluniverse-gwas-* skillstooluniverse-systems-biology| Parameter | Required | Description | Example |
|-----------|----------|-------------|---------|
| svgs | Yes | Spatially variable genes (gene symbols) | ['EGFR', 'CDH1', 'VIM', 'MYC', 'CD3E'] |
| tissue_type | Yes | Tissue/organ type | brain, liver, lung, breast, skin |
| technology | No | Spatial omics platform used | 10x Visium, MERFISH, DBiTplus, SLIDE-seq |
| disease_context | No | Disease if applicable | breast cancer, Alzheimer disease, liver cirrhosis |
| spatial_domains | No | Dict mapping domain name to marker genes | {'Tumor core': ['MYC','EGFR'], 'Stroma': ['VIM','COL1A1']} |
| cell_types | No | Cell types identified in deconvolution | ['Epithelial', 'T cell', 'Macrophage', 'Fibroblast'] |
| proteins | No | Proteins detected (if multi-modal) | ['CD3', 'CD8', 'PD-L1', 'Ki67'] |
| metabolites | No | Metabolites detected (if SpatialMETA) | ['glutamine', 'lactate', 'ATP'] |
Data Completeness (0-30 points):
Biological Insight (0-40 points):
Evidence Quality (0-30 points):
| Score | Tier | Interpretation | |-------|------|----------------| | 80-100 | Excellent | Comprehensive spatial characterization, strong biological insights, druggable targets identified | | 60-79 | Good | Good pathway and interaction analysis, some disease/therapeutic context | | 40-59 | Moderate | Basic enrichment complete, limited spatial domain comparison or interaction analysis | | 0-39 | Limited | Minimal data, gene-level annotation only |
| Tier | Symbol | Criteria | Examples | |------|--------|----------|----------| | T1 | [T1] | Direct human evidence, clinical proof | FDA-approved drug for spatial target, validated biomarker | | T2 | [T2] | Experimental evidence | Validated spatial pattern in literature, known ligand-receptor pair | | T3 | [T3] | Computational/database evidence | PPI network prediction, pathway enrichment, expression correlation | | T4 | [T4] | Annotation/prediction only | GO annotation, text-mined association, predicted interaction |
Create this file structure at the start: {tissue}_{disease}_spatial_omics_report.md
# Spatial Multi-Omics Analysis Report: {Tissue Type}
**Report Generated**: {date}
**Technology**: {platform}
**Tissue**: {tissue_type}
**Disease Context**: {disease or "Normal tissue"}
**Total SVGs Analyzed**: {count}
**Spatial Domains**: {count}
**Spatial Omics Integration Score**: (to be calculated)
---
## Executive Summary
(2-3 sentence synthesis of key spatial findings - fill after all phases complete)
---
## 1. Tissue & Disease Context
### Tissue Information
| Property | Value | Source |
|----------|-------|--------|
| Tissue type | | |
| Disease | | |
| Expected cell types | | HPA |
### Disease Identifiers (if applicable)
| System | ID | Source |
|--------|-----|--------|
**Sources**: (tools used)
---
## 2. Spatially Variable Gene Characterization
### 2.1 Gene ID Resolution
| Gene Symbol | Ensembl ID | Entrez ID | UniProt | Function | Source |
|-------------|------------|-----------|---------|----------|--------|
### 2.2 Tissue Expression Patterns
| Gene | Tissue Expression | Specificity | Source |
|------|-------------------|-------------|--------|
### 2.3 Subcellular Localization
| Gene | Location | Confidence | Source |
|------|----------|------------|--------|
### 2.4 Disease Associations
| Gene | Disease | Score | Evidence | Source |
|------|---------|-------|----------|--------|
**Sources**: (tools used)
---
## 3. Pathway Enrichment Analysis
### 3.1 STRING Functional Enrichment
| Category | Term | Description | P-value | FDR | Genes | Source |
|----------|------|-------------|---------|-----|-------|--------|
### 3.2 Reactome Pathway Analysis
| Pathway ID | Name | P-value | FDR | Genes Found | Total Genes | Source |
|------------|------|---------|-----|-------------|-------------|--------|
### 3.3 GO Biological Processes
| GO Term | Description | P-value | FDR | Genes | Source |
|---------|-------------|---------|-----|-------|--------|
### 3.4 GO Molecular Functions
| GO Term | Description | P-value | FDR | Genes | Source |
|---------|-------------|---------|-----|-------|--------|
### 3.5 GO Cellular Components
| GO Term | Description | P-value | FDR | Genes | Source |
|---------|-------------|---------|-----|-------|--------|
### Pathway Summary
- Top enriched pathways:
- Key biological processes:
- Spatial pathway implications:
**Sources**: (tools used)
---
## 4. Spatial Domain Characterization
### Domain: {domain_name}
#### Marker Genes
| Gene | Function | Pathways | Source |
|------|----------|----------|--------|
#### Enriched Pathways (domain-specific)
| Pathway | P-value | FDR | Genes | Source |
|---------|---------|-----|-------|--------|
#### Cell Type Signature
| Cell Type | Marker Genes Present | Confidence |
|-----------|---------------------|------------|
#### Biological Interpretation
(Narrative interpretation of this domain)
(Repeat for each domain)
### 4.N Domain Comparison
| Feature | Domain 1 | Domain 2 | Domain 3 |
|---------|----------|----------|----------|
| Top pathway | | | |
| Cell types | | | |
| Disease relevance | | | |
**Sources**: (tools used)
---
## 5. Cell-Cell Interaction Inference
### 5.1 Protein-Protein Interactions (STRING)
| Protein A | Protein B | Score | Type | Source |
|-----------|-----------|-------|------|--------|
### 5.2 Ligand-Receptor Pairs
| Ligand | Receptor | Domain (Ligand) | Domain (Receptor) | Evidence | Source |
|--------|----------|-----------------|-------------------|----------|--------|
### 5.3 Signaling Pathways
| Pathway | Components in Data | Spatial Distribution | Source |
|---------|--------------------|---------------------|--------|
### 5.4 Interaction Network Summary
- Key interaction hubs:
- Cross-domain interactions:
- Predicted cell-cell communication axes:
**Sources**: (tools used)
---
## 6. Disease & Therapeutic Context
### 6.1 Disease Gene Overlap
| Gene | Disease Association Score | Evidence Type | Source |
|------|--------------------------|---------------|--------|
### 6.2 Druggable Targets in Spatial Domains
| Gene | Domain | Tractability | Modality | Approved Drugs | Source |
|------|--------|-------------|----------|----------------|--------|
### 6.3 Drug Mechanisms Relevant to Spatial Targets
| Drug | Target | Mechanism | Phase | Source |
|------|--------|-----------|-------|--------|
### 6.4 Clinical Trials
| NCT ID | Title | Target Gene | Phase | Status | Source |
|--------|-------|-------------|-------|--------|--------|
### Therapeutic Summary
- Druggable genes in disease regions:
- Approved therapies:
- Pipeline drugs:
- Novel opportunities:
**Sources**: (tools used)
---
## 7. Multi-Modal Integration
### 7.1 Protein-RNA Concordance (if protein data available)
| Gene/Protein | RNA Pattern | Protein Pattern | Concordance | Source |
|-------------|-------------|-----------------|-------------|--------|
### 7.2 Subcellular Context
| Gene | mRNA Location (spatial) | Protein Location (HPA) | Concordance | Source |
|------|------------------------|----------------------|-------------|--------|
### 7.3 Metabolic Context (if metabolomics available)
| Gene | Metabolic Pathway | Metabolites Detected | Spatial Pattern | Source |
|------|-------------------|---------------------|-----------------|--------|
**Sources**: (tools used)
---
## 8. Immune Microenvironment (if relevant)
### 8.1 Immune Cell Markers
| Cell Type | Marker Genes | Spatial Domain | Source |
|-----------|-------------|----------------|--------|
### 8.2 Immune Checkpoint Expression
| Checkpoint | Gene | Expression Pattern | Source |
|------------|------|--------------------|--------|
### 8.3 Tumor-Immune Interface (if cancer)
| Feature | Finding | Evidence | Source |
|---------|---------|----------|--------|
### Immune Summary
- Immune infiltration pattern:
- Key immune checkpoints:
- Immunotherapy implications:
**Sources**: (tools used)
---
## 9. Literature & Validation Context
### 9.1 Literature Evidence
| PMID | Title | Relevance | Year | Source |
|------|-------|-----------|------|--------|
### 9.2 Known Spatial Patterns
(Known tissue architecture/zonation from literature)
### 9.3 Validation Recommendations
| Priority | Gene/Target | Method | Rationale |
|----------|-------------|--------|-----------|
| High | | IHC / smFISH | |
| Medium | | IF / ISH | |
**Sources**: (tools used)
---
## Spatial Omics Integration Score
| Component | Points | Max | Details |
|-----------|--------|-----|---------|
| SVGs provided | | 5 | |
| Disease context | | 5 | |
| Spatial domains | | 5 | |
| Cell types | | 5 | |
| Multi-modal data | | 5 | |
| Literature context | | 5 | |
| Pathway enrichment | | 10 | |
| Cell-cell interactions | | 10 | |
| Disease mechanism | | 10 | |
| Druggable targets | | 10 | |
| Cross-database validation | | 10 | |
| Clinical validation | | 10 | |
| Literature support | | 10 | |
| **TOTAL** | | **100** | |
**Score**: XX/100 - [Tier]
---
## Completeness Checklist
- [ ] Gene ID resolution complete
- [ ] Tissue expression patterns analyzed (HPA)
- [ ] Subcellular localization checked (HPA)
- [ ] Pathway enrichment complete (STRING + Reactome)
- [ ] GO enrichment complete (BP + MF + CC)
- [ ] Spatial domains characterized individually
- [ ] Domain comparison performed
- [ ] Protein-protein interactions analyzed (STRING)
- [ ] Ligand-receptor pairs identified
- [ ] Disease associations checked (OpenTargets)
- [ ] Druggable targets identified (OpenTargets tractability)
- [ ] Drug mechanisms reviewed
- [ ] Multi-modal integration performed (if data available)
- [ ] Immune microenvironment characterized (if relevant)
- [ ] Literature search completed
- [ ] Validation recommendations provided
- [ ] Spatial Omics Integration Score calculated
- [ ] Executive summary written
- [ ] All sections have source citations
---
## References
### Data Sources Used
| # | Tool | Parameters | Section | Items Retrieved |
|---|------|------------|---------|-----------------|
### Database Versions
- OpenTargets: (current)
- STRING: v12.0
- Reactome: (current)
- HPA: (current)
- GTEx: v10
Objective: Parse user input, resolve tissue/disease identifiers, establish analysis context.
OpenTargets_get_disease_id_description_by_name (if disease context provided):
diseaseName (string) - Disease name{data: {search: {hits: [{id, name, description}]}}}OpenTargets_get_disease_description_by_efoId:
efoId (string) - Disease ID (e.g., MONDO_0007254){data: {disease: {id, name, description, dbXRefs}}}HPA_search_genes_by_query (tissue cell type context):
query (string) - Search termObjective: Resolve gene identifiers, annotate functions, tissue specificity, and subcellular localization.
MyGene_query_genes (gene ID resolution):
query (string) - Gene symbol{hits: [{_id, symbol, name, ensembl: {gene}, entrezgene}]}symbol fieldUniProt_get_function_by_accession (gene function):
accession (string) - UniProt accessionUniProt_get_subcellular_location_by_accession (protein localization):
accession (string)HPA_get_subcellular_location (validated localization):
gene_name (string) - Gene symbol{gene_name, main_locations: [], additional_locations: [], location_summary}HPA_get_rna_expression_by_source (tissue expression):
gene_name (string), source_type (string: 'tissue'), source_name (string){data: {gene_name, source_type, source_name, expression_value, expression_level}}HPA_get_comprehensive_gene_details_by_ensembl_id (full HPA data):
ensembl_id (string), include_isoforms (bool), include_images (bool), include_antibodies (bool), include_expression (bool) - ALL 5 parameters REQUIRED{ensembl_id, gene_name, uniprot_ids, summary, protein_classes, tissue_expression, cell_line_expression, ...}include_expression=True for tissue data; set others to False for faster responseHPA_get_cancer_prognostics_by_gene (cancer prognosis):
ensembl_id (string) - Ensembl gene ID (NOT gene_name){gene_name, prognostic_cancers_count, prognostic_summary: [{cancer_type, prognostic_type, p_value}]}UniProtIDMap_gene_to_uniprot (ID mapping):
gene_name (string), organism (string, default 'human')Objective: Identify biological pathways and functions enriched in SVGs and per-domain gene sets.
STRING_functional_enrichment (primary enrichment):
protein_ids (array of gene symbols), species (int, 9606 for human){status: 'success', data: [{category, term, number_of_genes, number_of_genes_in_background, p_value, fdr, description, inputGenes, preferredNames}]}Process (GO:BP), Function (GO:MF), Component (GO:CC), KEGG, Reactome, COMPARTMENTS, DISEASES, Keyword, PMIDReactomeAnalysis_pathway_enrichment (Reactome-specific):
identifiers (string, space-separated gene symbols, NOT array){data: {token, pathways_found, pathways: [{pathway_id, name, p_value, fdr, entities_found, entities_total}]}}Reactome_map_uniprot_to_pathways (individual gene):
id (string) - UniProt accessionGO_get_annotations_for_gene (individual gene GO):
gene_id (string) - Gene symbol or IDkegg_search_pathway (KEGG pathway search):
query (string) - Pathway name or keywordWikiPathways_search (WikiPathways):
query (string) - Search termObjective: Characterize each spatial domain biologically and compare between domains.
Uses the same tools as Phase 2 (STRING_functional_enrichment, ReactomeAnalysis) applied per-domain, plus:
HPA_get_biological_processes_by_gene (per-gene processes):
gene_name (string)HPA_get_protein_interactions_by_gene (gene interactions):
gene_name (string)When user does not provide cell type annotations, infer from marker genes:
Objective: Predict cell-cell communication from spatial gene expression patterns.
STRING_get_interaction_partners (PPI network):
protein_ids (array), species (int, 9606), limit (int), confidence_score (float, 0.7){status: 'success', data: [{preferredName_A, preferredName_B, score, nscore, fscore, pscore, ascore, escore, dscore, tscore}]}STRING_get_protein_interactions (pairwise interactions):
protein_ids (array), species (int, 9606)intact_search_interactions (IntAct database):
query (string), max (int)Reactome_get_interactor (Reactome interactions):
DGIdb_get_drug_gene_interactions (drug-gene interactions):
genes (array of strings)Known ligand-receptor pairs to check in SVG list:
Objective: Connect spatial findings to disease mechanisms and identify druggable targets.
OpenTargets_get_associated_targets_by_disease_efoId (disease genes):
efoId (string), size (int){data: {disease: {associatedTargets: {count, rows: [{target: {id, approvedSymbol}, score}]}}}}OpenTargets_get_target_tractability_by_ensemblID (druggability):
ensemblId (string)OpenTargets_get_associated_drugs_by_target_ensemblID (drugs for target):
ensemblId (string), size (int)OpenTargets_get_drug_mechanisms_of_action_by_chemblId (drug mechanism):
chemblId (string)OpenTargets_target_disease_evidence (evidence linking target to disease):
ensemblId (string), efoId (string)clinical_trials_search (clinical trials):
action = "search_studies", condition (string), intervention (string), limit (int){total_count, studies: [{nctId, title, status, conditions}]}action MUST be "search_studies"DGIdb_get_gene_druggability (druggability categories):
genes (array of strings){data: {genes: {nodes: [{name, geneCategories: [{name}]}]}}}civic_search_genes (CIViC cancer evidence, if cancer):
Objective: Integrate protein, RNA, and metabolite spatial data when available.
HPA_get_subcellular_location (protein localization):
gene_name (string){gene_name, main_locations, additional_locations, location_summary}HPA_get_rna_expression_in_specific_tissues (tissue RNA):
ensembl_id (string), tissue_name (string)Reactome_map_uniprot_to_pathways (metabolic pathways):
id (string) - UniProt accessionkegg_get_pathway_info (KEGG pathway details):
pathway_id (string) - KEGG pathway IDObjective: Characterize immune cell composition and checkpoint expression in spatial context.
Only execute if:
STRING_functional_enrichment (immune pathway enrichment):
OpenTargets_get_target_tractability_by_ensemblID (checkpoint druggability):
iedb_search_epitopes (epitope data):
organism_name (string), source_antigen_name (string){status, data, count}| Cell Type | Key Markers | Extended Markers | |-----------|-------------|-----------------| | CD8+ T cell | CD8A, CD8B | GZMA, GZMB, PRF1, IFNG | | CD4+ T cell | CD4 | IL2, IL4, IL17A, FOXP3 (Treg) | | Regulatory T cell | FOXP3, IL2RA | CTLA4, TIGIT | | B cell | CD19, MS4A1, CD79A | IGHG1, IGHM | | Plasma cell | SDC1 (CD138), XBP1 | IGHG1, MZB1 | | M1 Macrophage | CD68, NOS2, TNF | IL1B, CXCL10 | | M2 Macrophage | CD68, CD163, MRC1 | ARG1, IL10 | | Dendritic cell | ITGAX (CD11c), HLA-DRA | CD80, CD86 | | NK cell | NCAM1 (CD56), NKG7 | GNLY, KLRD1 | | Neutrophil | FCGR3B, CXCR2 | S100A8, S100A9 | | Mast cell | KIT, TPSAB1 | CPA3, HDC |
| Checkpoint | Gene | Ligand | Therapeutic Antibody | |------------|------|--------|---------------------| | PD-1/PD-L1 | PDCD1/CD274 | CD274, PDCD1LG2 | Pembrolizumab, Nivolumab, Atezolizumab | | CTLA-4 | CTLA4 | CD80, CD86 | Ipilimumab | | TIM-3 | HAVCR2 | LGALS9 | Sabatolimab | | LAG-3 | LAG3 | HLA class II | Relatlimab | | TIGIT | TIGIT | PVR, PVRL2 | Tiragolumab | | VISTA | VSIR | PSGL1 | - |
Objective: Provide literature evidence for spatial findings and suggest validation experiments.
PubMed_search_articles (literature search):
query (string), max_results (int)[{pmid, title, authors, journal, pub_date, doi}]openalex_literature_search (broader literature):
query (string), per_page (int)"{tissue} spatial transcriptomics" - e.g., "liver spatial transcriptomics""{disease} spatial omics" - e.g., "breast cancer spatial transcriptomics""{top_gene} {tissue} expression" for key SVGs"{tissue} zonation gene expression""{technology} {tissue}" - e.g., "Visium breast cancer"| Priority | Target | Method | Rationale | Feasibility | |----------|--------|--------|-----------|-------------| | High | Key SVG | smFISH / RNAscope | Validate spatial pattern at single-molecule level | Medium | | High | Druggable target | IHC on serial sections | Confirm protein expression in spatial domain | High | | High | Ligand-receptor pair | Proximity ligation assay (PLA) | Confirm physical interaction at tissue level | Medium | | Medium | Domain markers | Multiplexed IF (CODEX/IBEX) | Validate multiple markers simultaneously | Low-Medium | | Medium | Pathway | Spatial metabolomics (MALDI/DESI) | Confirm metabolic pathway activity | Low | | Low | Novel interaction | Co-culture + conditioned media | Functional validation of predicted interaction | Medium |
| Tool | Parameter | CORRECT | Common MISTAKE | Notes |
|------|-----------|---------|----------------|-------|
| MyGene_query_genes | query | query | q | Filter results by symbol field |
| STRING_functional_enrichment | identifiers | protein_ids (array) | identifiers | Also needs species=9606 |
| STRING_get_interaction_partners | identifiers | protein_ids (array) | identifiers | limit, confidence_score optional |
| ReactomeAnalysis_pathway_enrichment | genes | identifiers (string) | Array | SPACE-SEPARATED string, NOT array |
| HPA_get_subcellular_location | gene | gene_name | ensembl_id | Uses gene symbol |
| HPA_get_cancer_prognostics_by_gene | gene | ensembl_id | gene_name | Uses Ensembl ID, NOT symbol |
| HPA_get_rna_expression_by_source | params | gene_name, source_type, source_name | - | ALL 3 required |
| HPA_get_rna_expression_in_specific_tissues | gene | ensembl_id | gene_name | Uses Ensembl ID |
| OpenTargets_get_target_tractability_by_ensemblID | target | ensemblId | ensemblID | camelCase |
| OpenTargets_get_associated_drugs_by_target_ensemblID | target | ensemblId, size | - | Both REQUIRED |
| OpenTargets_get_associated_targets_by_disease_efoId | disease | efoId | diseaseId | Returns {data: {disease: {associatedTargets}}} |
| DGIdb_get_gene_druggability | genes | genes (array) | gene_name | Array of strings |
| DGIdb_get_drug_gene_interactions | genes | genes (array) | gene_name | Array of strings |
| clinical_trials_search | action | action='search_studies' | Missing action | action is REQUIRED |
| ensembl_lookup_gene | species | species='homo_sapiens' | No species | REQUIRED parameter |
| GTEx tools | operation | operation (SOAP) | Missing | All GTEx tools need operation parameter |
| HPA_get_comprehensive_gene_details_by_ensembl_id | all params | ALL 5 required: ensembl_id, include_isoforms, include_images, include_antibodies, include_expression | Missing booleans | Set booleans to False except expression |
| GTEx tools | gencode | gencode_id (array) | gene_id | Requires versioned GENCODE ID |
| Tool | Response Format | Key Fields |
|------|----------------|------------|
| STRING_functional_enrichment | {status, data: [{category, term, description, p_value, fdr, inputGenes}]} | Filter by FDR < 0.05 |
| ReactomeAnalysis_pathway_enrichment | {data: {pathways: [{pathway_id, name, p_value, fdr, entities_found, entities_total}]}} | Top 20 returned |
| STRING_get_interaction_partners | {status, data: [{preferredName_A, preferredName_B, score}]} | Score > 0.7 for high confidence |
| MyGene_query_genes | {hits: [{_id, symbol, name, ensembl: {gene}, entrezgene}]} | Filter by exact symbol match |
| HPA_get_subcellular_location | {gene_name, main_locations: [], additional_locations: [], location_summary} | Direct dict response |
| OpenTargets_get_target_tractability_by_ensemblID | {data: {target: {id, tractability: [{label, modality, value}]}}} | Check value=true |
| DGIdb_get_gene_druggability | {data: {genes: {nodes: [{name, geneCategories: [{name}]}]}}} | GraphQL response |
| PubMed_search_articles | Plain list of [{pmid, title, authors, journal, pub_date}] | No data wrapper |
| clinical_trials_search | {total_count, studies: [{nctId, title, status, conditions}]} | total_count can be None |
Input: Visium data from breast cancer with 5 spatial domains (tumor core, tumor margin, stroma, immune infiltrate, normal tissue) and 200 SVGs.
Analysis focus:
Input: MERFISH data from hippocampus with cell-type specific genes and neuronal subtype markers.
Analysis focus:
Input: Spatial transcriptomics of liver with periportal vs pericentral gene gradients.
Analysis focus:
Input: DBiTplus data from melanoma with spatial protein + RNA data showing tumor-immune boundary.
Analysis focus:
Input: Spatial transcriptomics of embryonic tissue with developmental patterning genes.
Analysis focus:
Input: Spatial data from neurodegenerative tissue showing disease gradient from affected to unaffected regions.
Analysis focus:
enrichr_gene_enrichment_analysis returns connectivity graph (107MB), NOT standard enrichment. Use STRING_functional_enrichment insteadoperation parameter; needs versioned GENCODE IDs (e.g., ENSG00000141510.16)gene_name, others use ensembl_id - check parameter referenceMONDO_0007254), not colon{limit} in URL causing 400 errorSpatial Multi-Omics Analysis skill provides:
Outputs: Comprehensive markdown report with Spatial Omics Integration Score (0-100) Best for: Biological interpretation of spatial omics experiments (post-processing after spatial data analysis tools) Uses: 70+ ToolUniverse tools across 9 analysis phases Time: ~10-20 minutes depending on gene list size and analysis scope
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