Protein Conformational States-A First Principles Bayesian Method.
David M RogersPublished in: Entropy (Basel, Switzerland) (2020)
Automated identification of protein conformational states from simulation of an ensemble of structures is a hard problem because it requires teaching a computer to recognize shapes. We adapt the naïve Bayes classifier from the machine learning community for use on atom-to-atom pairwise contacts. The result is an unsupervised learning algorithm that samples a 'distribution' over potential classification schemes. We apply the classifier to a series of test structures and one real protein, showing that it identifies the conformational transition with >95% accuracy in most cases. A nontrivial feature of our adaptation is a new connection to information entropy that allows us to vary the level of structural detail without spoiling the categorization. This is confirmed by comparing results as the number of atoms and time-samples are varied over 1.5 orders of magnitude. Further, the method's derivation from Bayesian analysis on the set of inter-atomic contacts makes it easy to understand and extend to more complex cases.
Keyphrases
- machine learning
- molecular dynamics
- deep learning
- artificial intelligence
- molecular dynamics simulations
- single molecule
- big data
- protein protein
- high resolution
- convolutional neural network
- binding protein
- mental health
- genome wide
- high throughput
- small molecule
- gene expression
- dna methylation
- risk assessment
- climate change
- neural network
- human health
- medical education