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It's a package for evaluation of predicted poses, right?

Project description

I have a structure prediction model and now I want to know how well it performs in reproducing the reference structures. But there are so many possible metrics, some for monomers, some for complexes! Is there a package that handles this for me?


Try

pepp'r

It’s a package for evaluation of predicted poses, right?


Yes, indeed! It allows you to compute a variety of metrics on your structure predictions for assessing their quality. It supports

  • all CASP/CAPRI metrics and more

  • small molecules to huge protein complexes

  • easy extension with custom metrics

  • a command line interface and a Python API

Installation

peppr is available via PyPI:

$ pip install peppr

Usage example

Using the CLI, you can either compute a single metric for a system…

$ peppr run dockq reference.cif poses.cif

… or run an entire prediction model evaluation on many systems.

# Select the metrics you want to compute (here: RMSD and lDDT)
$ peppr create peppr.pkl monomer-rmsd monomer-lddt

# Run the evaluation on predicted poses and their corresponding references
$ peppr evaluate-batch peppr.pkl "systems/*/reference.cif" "systems/*/poses"

# Select the aggregation method over poses (here: Top-3 and Oracle) and report the results
$ peppr tabulate peppr.pkl table.csv top3 oracle

Available metrics

  • RMSD

  • TM-score

  • lDDT

  • lDDT-PLI

  • fnat

  • iRMSD

  • LRMSD

  • DockQ

… and more!

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