可用于评估预测蛋白质结构的质量,支持单个或多个 PDB 格式模型。通过将原子信息转化为含侧链信息的碳α原子表示,利用 LSTM 网络对每个氨基酸进行时序处理并预测质量。【此简介由AI生成】
AngularQA
AngularQA is a single-model quality assessment tool to evaluate quality of predicted protein structures. It is built on a new representation that converts raw atom information into a series of carbon-alpha (Cα) atoms with side-chain information, defined by their dihedral angles and bond lengths to the prior residue. An LSTM network is used to predict the quality by treating each amino acid as a time-step and consider the final value returned by the LSTM cells.
Citation
Conover, Matthew, Max Staples, Dong Si, Miao Sun, and Renzhi Cao. "AngularQA: protein model quality assessment with LSTM networks." Computational and Mathematical Biophysics 7, no. 1 (2019): 1-9.
Test Environment
Ubuntu, Centos
Requirements
(1). Python3.5
(2). TensorFlow
sudo pip install tensorflow
GPU is NOT needed.
(3) Install Keras:
sudo pip install keras
(4) Install the h5py library:
sudo pip install h5py
As reference, here is the environment I have used for those packages: python==3.5.6 h5py==2.9.0 Keras==2.3.1 Keras-Applications==1.0.8 Keras-Preprocessing==1.1.0 numpy==1.16.2 tensorflow==1.13.0rc1 tensorflow-estimator==1.13.0rc0 tensorflow-gpu==1.2.1
Run software
You could provide one PDB format model or a folder with several PDB format models for this software. Here are examples to test:
#cd script
#python3 AngularQA.py ../test/T0759.pdb ../test/Prediction_singleModel
#python3 AngularQA.py ../test/Models ../test/Prediction_ModelPool
You should be able to find a file named AngularPrediction.txt in the output folder.
Developed by Matthew Conover and Prof. Renzhi Cao at Pacific Lutheran University:
Please contact Renzhi Cao for any questions: caora@plu.edu (PI)