Skip to main content

Evaluate AlphaFold-predicted protein complexes using confidence metrics and interface biophysics.

Project description

AlphaJudge: I am the score!

AlphaJudge evaluates AlphaFold-predicted protein complexes by merging AI-derived confidences (ipTM, pTM, iptm+ptm/confidence_score, pLDDT, PAE) with fast, self-contained interface biophysics (contacts, H-bonds, salt bridges, buried area, solvation proxy, shape complementarity) into a tidy CSV for downstream analysis.

AlphaJudge icon

license: MIT python platform


What it does

AlphaJudge parses AF2 and AF3 outputs and summarizes per-model / per-interface metrics:

category metrics (examples) notes
AlphaFold internal ipTM, pTM, iptm+ptm/confidence_score, avg interface PAE, avg interface pLDDT unified for AF2/AF3
physical & geometric buried area, contact pairs, H-bonds, salt bridges, interface composition, shape complementarity self-contained
derived scores pDockQ, pDockQ2, mpDockQ, ipSAE, LIS, interface score implemented here

Use cases: rank poses, sanity-check AF confidences, or export features for ML.


Pipeline overview

AlphaFold models (AF2 or AF3)  →  AlphaJudge  →  interfaces.csv
  • Detects AF2 vs AF3 automatically from the run directory
  • Loads structure and confidences, computes interface descriptors
  • Writes interfaces.csv into the same directory

Installation

Create conda/mamba env, then install from pypi:

pip install alphajudge

If you are a developer, install from github:

git clone https://github.com/KosinskiLab/AlphaJudge.git
cd AlphaJudge
mamba env create -f environment.yaml
mamba activate alphajudge

Then, pip install in the existing environment

pip install .

or pip editable install in existing environment

pip install -e .

Requirements: Python ≥3.10; runtime deps are biopython, numpy, scipy, matplotlib (installed automatically with pip install .). Test extras (pytest, pytest-cov, pytest-xdist, pytest-timeout) are available via pip install -e ".[test]".


CLI usage

The package exposes an alphajudge entry point.

# Basic synopsis
alphajudge PATH [PATH ...] \
  --models_to_analyse {best,all} \
  --contact_thresh 8.0 \
  --pae_filter 100.0 \
  --ipsae_pae_cutoff 10.0 \
  [-r|--recursive] \
  [-o|--summary SUMMARY.csv] \
  [--cores]
  • PATH: One or more run directories or roots to search
  • --contact_thresh: Contact cutoff in Å (default: 8.0)
  • --pae_filter: Skip interfaces with avg interface PAE above this (default: 100.0)
  • --ipsae_pae_cutoff: PAE cutoff used by ipSAE (default: 10.0)
  • --models_to_analyse: best or all (default: best)
  • -r / --recursive: Recursively discover runs under each PATH
  • -o / --summary: Write an aggregated CSV across all processed runs
  • --cores: Number of processes to use across run directories (0 = all available cores)

Outputs:

  • Always writes interfaces.csv inside each processed run directory.
  • For each processed model, also writes a PAE heatmap PNG pae_<model>.png next to interfaces.csv.
  • If --summary is provided, also writes a union-header CSV at the given path containing rows from all runs.

Examples

# Single AF2 run (directory contains ranking_debug.json, pae_*.json, and model files)
alphajudge test_data/af2/pos_dimers/Q13148+Q92900

# Single AF3 run (directory contains ranking_scores.csv, per-model summary/confidence files, and model files)
alphajudge test_data/af3/pos_dimers/Q13148+Q92900 --models_to_analyse all

# Aggregate multiple runs into one summary
alphajudge test_data/af2/pos_dimers/Q13148+Q92900 \
           test_data/af3/pos_dimers/Q13148+Q92900 \
           -o interfaces_summary.csv

# Recursively discover runs under roots and write a combined summary
alphajudge test_data/af2/pos_dimers test_data/af3/pos_dimers -r -o interfaces_summary.csv

Programmatic use

Minimal example:

from pathlib import Path
from alphajudge.parsers import pick_parser
from alphajudge.runner import process, process_many

run_dir = Path("test_data/af2/pos_dimers/Q13148+Q92900")
parser = pick_parser(run_dir)
print("Detected parser:", parser.name)  # "af2" or "af3"
process(str(run_dir), contact_thresh=8.0, pae_filter=100.0, models_to_analyse="best")
print("Wrote:", run_dir / "interfaces.csv")

# Multiple runs + optional recursion and summary
process_many(
    [str(run_dir), "test_data/af3/pos_dimers/Q13148+Q92900"],
    contact_thresh=8.0,
    pae_filter=100.0,
    models_to_analyse="best",
    recursive=False,
    summary_csv="interfaces_summary.csv",
)

Key outputs per interface include: average_interface_pae, interface_average_plddt, interface_contact_pairs, interface_area, interface_hb, interface_sb, interface_sc, interface_solv_en, interface_ipSAE, interface_LIS, interface_pDockQ2, and per-run pDockQ/mpDockQ.


Expected input layout

AlphaJudge expects standard AlphaFold run outputs.

  • AF2: directory with ranking_debug.json, pae_<model>.json, and model structure files (model.cif or *.pdb/*.cif)
  • AF3: directory with ranking_scores.csv, per-model summary_confidences.json and confidences.json (or top-level ranked_0_summary_confidences.json), and structure files

The tool searches for model.cif inside each model subdirectory first; otherwise it tries to match *<model>*.cif or *<model>*.pdb at the run root.


Output schema (CSV)

AlphaJudge writes interfaces.csv with one row per interface (and includes the selected model). Core fields include:

  • jobs: run directory name
  • model_used: selected model identifier
  • interface: chain-pair label (e.g., A_B)
  • iptm_ptm, iptm, ptm, confidence_score: unified AF confidences
  • pDockQ/mpDockQ: global dockQ-like score (mpDockQ if multimer; pDockQ if dimer)
  • average_interface_pae, interface_average_plddt, interface_num_intf_residues
  • interface_contact_pairs, interface_score, interface_pDockQ2, interface_ipSAE, interface_LIS
  • interface_hb, interface_sb, interface_sc, interface_area, interface_solv_en

Exact header is asserted in tests to be consistent across AF2 and AF3 runs.


Testing

pip install -e ".[test]"
pytest -q

Tests exercise both AF2 and AF3 parsers and validate the CSV fields against bundled fixtures in test_data/. The slow CCP4 SC regression suite is opt-in and can be enabled with ALPHAJUDGE_RUN_SLOW_SC_REFERENCE=1; CI always runs it across Python 3.10–3.13.


Docker

A minimal multi-stage Dockerfile is provided under docker/:

# Build image (runs tests in the build stage)
docker build -t alphajudge -f docker/Dockerfile .

# Inspect CLI inside the runtime image
docker run --rm alphajudge alphajudge --help

Citation and license

Please cite:

AlphaJudge: we will come up with a better name. (xxxx). https://github.com/KosinskiLab/AlphaJudge

License: MIT for this repository. AlphaFold2/AlphaFold3, and other tools remain under their own licenses.


Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

alphajudge-1.0.1.tar.gz (56.8 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

alphajudge-1.0.1-py3-none-any.whl (55.1 kB view details)

Uploaded Python 3

File details

Details for the file alphajudge-1.0.1.tar.gz.

File metadata

  • Download URL: alphajudge-1.0.1.tar.gz
  • Upload date:
  • Size: 56.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.11.0

File hashes

Hashes for alphajudge-1.0.1.tar.gz
Algorithm Hash digest
SHA256 66f3d59f9114eeb8a4fc9ae04e24d38d9b5fcdc60f25fe110ef0e68a7c08eb87
MD5 89a377d2416cd954d081a6a38a7afd1b
BLAKE2b-256 e6fd65889e56d77b66336ced8367004a6817bf4f96dc6d317d0baf7297947560

See more details on using hashes here.

File details

Details for the file alphajudge-1.0.1-py3-none-any.whl.

File metadata

  • Download URL: alphajudge-1.0.1-py3-none-any.whl
  • Upload date:
  • Size: 55.1 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.11.0

File hashes

Hashes for alphajudge-1.0.1-py3-none-any.whl
Algorithm Hash digest
SHA256 19af36267228a2559ba9689cf9ab7f9a166cbc23e8f93038053f4f6fc5ee0765
MD5 7bc70f66814019b6013884e3a7c720b2
BLAKE2b-256 72de44eaae34956288af97c2832df2eba714742fea66fbbca47df6993e41ab71

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page