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Antimicrobial class specificity prediction

Prediction of antimicrobial class specificity using simple machine learning methods applied to an antimicrobial knowledge graph. The knowledge graph is built on ChEMBL, Co-ADD and SPARK. Endpoints are broad terms such as activity against gram-positive or gram-negative bacteria. The best model according to the authors is a Random Forest with MHFP6 fingerprints.

Identifiers

  • EOS model ID: eos74km
  • Slug: antimicrobial-kg-ml

Characteristics

  • Input: Compound
  • Input Shape: Single
  • Task: Classification
  • Output: Probability
  • Output Type: Float
  • Output Shape: List
  • Interpretation: Class probabilities for each antimicrobial class

References

Ersilia model URLs

Citation

If you use this model, please cite the original authors of the model and the Ersilia Model Hub.

License

This package is licensed under a GPL-3.0 license. The model contained within this package is licensed under a MIT license.

Notice: Ersilia grants access to these models 'as is' provided by the original authors, please refer to the original code repository and/or publication if you use the model in your research.

About Us

The Ersilia Open Source Initiative is a Non Profit Organization (1192266) with the mission is to equip labs, universities and clinics in LMIC with AI/ML tools for infectious disease research.

Help us achieve our mission!