Theoretical Microscopic Anomalous Titration Curve Shapes (THEMATICS) is a computational method for predicting the biochemically active amino acids in a protein three-dimensional structure.
[4] It is based on computed electrostatic and chemical properties of the individual amino acids in a protein structure.
Specifically it identifies anomalous shapes in the theoretical titration curves of the ionizable amino acids.
Biochemically active amino acids tend to have wide buffer ranges and non-sigmoidal titration patterns.
While the method predicts biochemically active amino acids successfully, it also provides input features to a machine learning predictor, Partial Order Optimum Likelihood (POOL).