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npx versuz@latest install freedomintelligence-openclaw-medical-skills-skills-medea-therapeutic-discoverygit clone https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills.gitcp OpenClaw-Medical-Skills/SKILL.MD ~/.claude/skills/freedomintelligence-openclaw-medical-skills-skills-medea-therapeutic-discovery/SKILL.md--- name: medea-therapeutic-discovery description: An AI agent for therapeutic discovery that executes transparent, multi-step omics analyses including research planning, code execution, and literature reasoning. license: MIT metadata: author: Artificial Intelligence Group (Adapted from openscientist.ai) version: "1.0.0" compatibility: - system: Python 3.10+ allowed-tools: - run_shell_command - read_file - web_fetch --- # Medea Therapeutic Discovery Agent Medea is a multi-stage AI agent designed for therapeutic discovery, modeled after 2026 state-of-the-art open source architectures. It executes transparent, multi-step omics analyses. ## When to Use This Skill * "Run multi-omics therapeutic discovery pipeline" * "Analyze omics data for novel drug targets using Medea" * "Perform literature reasoning and consensus reconciliation for target X" ## Core Capabilities 1. **Research Planning**: Formulates step-by-step omics analysis plans. 2. **Code Execution**: Generates and executes Python/R scripts for data processing. 3. **Literature Reasoning**: Retrieves and synthesizes current literature. 4. **Consensus Stage**: Reconciles experimental evidence with literature to propose high-confidence targets. ## Workflow 1. **Step 1**: Initialize Medea agent with target disease or omics dataset. 2. **Step 2**: Execute the multi-stage pipeline across planning, coding, literature review, and consensus validation. ## Example Usage **User**: "Run Medea analysis on the provided breast cancer multi-omics dataset." **Agent Action**: ```bash python3 -m medea.agent --dataset breast_cancer_omics.h5ad --mode full_discovery ```