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A portable and modular meta-predictor for identifying Long Non-coding RNAs (lncRNAs).

Project description

metaLncRNA v1.1.2 🧬🤖

University: UMC Laboratory: LaBiOmicS Bioinformatics

DOI Open Source Open Science Open Data License: MIT JOSS Status CI Status

Python Version Powered by Ollama Ensemble Learning


metaLncRNA is a modular, high-performance Python framework designed to identify Long Non-coding RNAs (lncRNAs) by orchestrating an ensemble of seven diverse computational tools. It resolves the "reproducibility gap" by automating environment management and providing a robust consensus prediction through weighted soft-voting.


📂 Repository Structure

  • src/metalncrna/: Core package logic and adapters.
    • data/: Internal default configurations and pre-packaged models.
    • third_party/: Integrated source code for legacy predictors (LGC, CPPred, CNCI).
  • scripts/: Production Bash utilities for HPC and long-running jobs.
  • tests/: Automated unit and integration test suite.
  • docs/: Technical guides and architecture details.
  • deploy/: Docker and Singularity definitions.
  • INPI_Registration/: Legal software registration assets.

⚙️ Configuration

metaLncRNA follows a robust configuration loading order:

  1. Internal Defaults: Built-in weights and paths in src/metalncrna/data/default_config.yaml.
  2. Local Config: metaLncRNA_config.yaml in your current working directory.
  3. User Home: ~/.metalncrna/config.yaml.
  4. Explicit Path: Provided via the -c or --config flag.

🚀 Key Features

  • Ensemble Prediction: Combines 7 tools (RNAsamba, CPAT, CPC2, PLEK, CNCI, CPPred, LGC).
  • Interactive AI Agent: Integrated local LLM assistant (Llama-3.2 or OpenBioLLM) to interpret results and explain classification decisions.
  • Reproducibility First: Built-in environment isolation via Mamba and Pixi.
  • Scientific Dashboard: Interactive HTML reports with tool congruence matrices.
  • Publication Ready: Formatted according to JOSS standards for scientific software.

📖 Documentation

For detailed instructions, please refer to our Documentation Hub:


🛠️ Quick Start

1. Installation

# Recommended: Install with AI Agent support
pip install "metalncrna[agent]"

# Pull the lightweight default model
ollama pull llama3.2

2. Run Integrated Pipeline

metalncrna predict -i transcripts.fasta -o ./results -p MyAnalysis

3. Ask the AI Agent

# Get a summary of your findings
metalncrna ask "Summarize the analysis results" -r ./results/MyAnalysis/metalncrna_results.tsv

🐳 Deployment

Pre-configured definitions are available for Docker and Singularity/Apptainer in the deploy/ directory.

🤝 Contributing

Contributions are welcome! Please see our CONTRIBUTING.md for details.

📄 License

This project is licensed under the MIT License - see the LICENSE file for details.


Developed by LaBiOmicS - Laboratory of Bioinformatics and Omics Sciences. Institution: Universidade de Mogi das Cruzes (UMC)

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