arboreto
Arboreto is a library that identifies transcription factor-target gene regulatory relationships from gene expression data using scalable algorithms like GRNBoost2 and GENIE3. Use it when analyzing bulk RNA-seq or single-cell RNA-seq datasets to map gene regulatory networks, with support for distributed computing on multi-node clusters for large-scale transcriptomics analyses.
git clone --depth 1 https://github.com/Microck/ordinary-claude-skills /tmp/arboreto && cp -r /tmp/arboreto/skills_all/claude-scientific-skills/scientific-skills/arboreto ~/.claude/skills/arboretoSKILL.md
# Arboreto
## Overview
Arboreto is a computational library for inferring gene regulatory networks (GRNs) from gene expression data using parallelized algorithms that scale from single machines to multi-node clusters.
**Core capability**: Identify which transcription factors (TFs) regulate which target genes based on expression patterns across observations (cells, samples, conditions).
## Quick Start
Install arboreto:
```bash
uv pip install arboreto
```
Basic GRN inference:
```python
import pandas as pd
from arboreto.algo import grnboost2
if __name__ == '__main__':
# Load expression data (genes as columns)
expression_matrix = pd.read_csv('expression_data.tsv', sep='\t')
# Infer regulatory network
network = grnboost2(expression_data=expression_matrix)
# Save results (TF, target, importance)
network.to_csv('network.tsv', sep='\t', index=False, header=False)
```
**Critical**: Always use `if __name__ == '__main__':` guard because Dask spawns new processes.
## Core Capabilities
### 1. Basic GRN Inference
For standard GRN inference workflows including:
- Input data preparation (Pandas DataFrame or NumPy array)
- Running inference with GRNBoost2 or GENIE3
- Filtering by transcription factors
- Output format and interpretation
**See**: `references/basic_inference.md`
**Use the ready-to-run script**: `scripts/basic_grn_inference.py` for standard inference tasks:
```bash
python scripts/basic_grn_inference.py expression_data.tsv output_network.tsv --tf-file tfs.txt --seed 777
```
### 2. Algorithm Selection
Arboreto provides two algorithms:
**GRNBoost2 (Recommended)**:
- Fast gradient boosting-based inference
- Optimized for large datasets (10k+ observations)
- Default choice for most analyses
**GENIE3**:
- Random Forest-based inference
- Original multiple regression approach
- Use for comparison or validation
Quick comparison:
```python
from arboreto.algo import grnboost2, genie3
# Fast, recommended
network_grnboost = grnboost2(expression_data=matrix)
# Classic algorithm
network_genie3 = genie3(expression_data=matrix)
```
**For detailed algorithm comparison, parameters, and selection guidance**: `references/algorithms.md`
### 3. Distributed Computing
Scale inference from local multi-core to cluster environments:
**Local (default)** - Uses all available cores automatically:
```python
network = grnboost2(expression_data=matrix)
```
**Custom local client** - Control resources:
```python
from distributed import LocalCluster, Client
local_cluster = LocalCluster(n_workers=10, memory_limit='8GB')
client = Client(local_cluster)
network = grnboost2(expression_data=matrix, client_or_address=client)
client.close()
local_cluster.close()
```
**Cluster computing** - Connect to remote Dask scheduler:
```python
from distributed import Client
client = Client('tcp://scheduler:8786')
network = grnboost2(expression_data=matrix, client_or_address=client)
```
**For cluster setup, performance optimization, and large-scale workflows**: `references/distributed_computing.md`
## Installation
```bash
uv pip install arboreto
```
**Dependencies**: scipy, scikit-learn, numpy, pandas, dask, distributed
## Common Use Cases
### Single-Cell RNA-seq Analysis
```python
import pandas as pd
from arboreto.algo import grnboost2
if __name__ == '__main__':
# Load single-cell expression matrix (cells x genes)
sc_data = pd.read_csv('scrna_counts.tsv', sep='\t')
# Infer cell-type-specific regulatory network
network = grnboost2(expression_data=sc_data, seed=42)
# Filter high-confidence links
high_confidence = network[network['importance'] > 0.5]
high_confidence.to_csv('grn_high_confidence.tsv', sep='\t', index=False)
```
### Bulk RNA-seq with TF Filtering
```python
from arboreto.utils import load_tf_names
from arboreto.algo import grnboost2
if __name__ == '__main__':
# Load data
expression_data = pd.read_csv('rnaseq_tpm.tsv', sep='\t')
tf_names = load_tf_names('human_tfs.txt')
# Infer with TF restriction
network = grnboost2(
expression_data=expression_data,
tf_names=tf_names,
seed=123
)
network.to_csv('tf_target_network.tsv', sep='\t', index=False)
```
### Comparative Analysis (Multiple Conditions)
```python
from arboreto.algo import grnboost2
if __name__ == '__main__':
# Infer networks for different conditions
conditions = ['control', 'treatment_24h', 'treatment_48h']
for condition in conditions:
data = pd.read_csv(f'{condition}_expression.tsv', sep='\t')
network = grnboost2(expression_data=data, seed=42)
network.to_csv(f'{condition}_network.tsv', sep='\t', index=False)
```
## Output Interpretation
Arboreto returns a DataFrame with regulatory links:
| Column | Description |
|--------|-------------|
| `TF` | Transcription factor (regulator) |
| `target` | Target gene |
| `importance` | Regulatory importance score (higher = stronger) |
**Filtering strategy**:
- Top N links per target gene
- Importance threshold (e.g., > 0.5)
- Statistical significance testing (permutation tests)
## Integration with pySCENIC
Arboreto is a core component of the SCENIC pipeline for single-cell regulatory network analysis:
```python
# Step 1: Use arboreto for GRN inference
from arboreto.algo import grnboost2
network = grnboost2(expression_data=sc_data, tf_names=tf_list)
# Step 2: Use pySCENIC for regulon identification and activity scoring
# (See pySCENIC documentation for downstream analysis)
```
## Reproducibility
Always set a seed for reproducible results:
```python
network = grnboost2(expression_data=matrix, seed=777)
```
Run multiple seeds for robustness analysis:
```python
from distributed import LocalCluster, Client
if __name__ == '__main__':
client = Client(LocalCluster())
seeds = [42, 123, 777]
networks = []
for seed in seeds:
net = grnboost2(expression_data=matrix, client_or_address=client, seed=seed)
networks.append(net)Testing patterns for PHPUnit and Playwright E2E tests. Use when writing tests, debugging test failures, setting up test coverage, or implementing test patterns for ActivityPub features.
Cloud laboratory platform for automated protein testing and validation. Use when designing proteins and needing experimental validation including binding assays, expression testing, thermostability measurements, enzyme activity assays, or protein sequence optimization. Also use for submitting experiments via API, tracking experiment status, downloading results, optimizing protein sequences for better expression using computational tools (NetSolP, SoluProt, SolubleMPNN, ESM), or managing protein design workflows with wet-lab validation.
Add unsigned integer (uint) type support to PyTorch operators by updating AT_DISPATCH macros. Use when adding support for uint16, uint32, uint64 types to operators, kernels, or when user mentions enabling unsigned types, barebones unsigned types, or uint support.
This skill should be used when the user asks to "create an agent", "add an agent", "write a subagent", "agent frontmatter", "when to use description", "agent examples", "agent tools", "agent colors", "autonomous agent", or needs guidance on agent structure, system prompts, triggering conditions, or agent development best practices for Claude Code plugins.
Master advanced AgentDB features including QUIC synchronization, multi-database management, custom distance metrics, hybrid search, and distributed systems integration. Use when building distributed AI systems, multi-agent coordination, or advanced vector search applications.
Create and train AI learning plugins with AgentDB's 9 reinforcement learning algorithms. Includes Decision Transformer, Q-Learning, SARSA, Actor-Critic, and more. Use when building self-learning agents, implementing RL, or optimizing agent behavior through experience.
Implement persistent memory patterns for AI agents using AgentDB. Includes session memory, long-term storage, pattern learning, and context management. Use when building stateful agents, chat systems, or intelligent assistants.
Optimize AgentDB performance with quantization (4-32x memory reduction), HNSW indexing (150x faster search), caching, and batch operations. Use when optimizing memory usage, improving search speed, or scaling to millions of vectors.