From experimental, structural probability distributions to the theoretical causality analysis of molecular changes

Authors

  • Paweł Daniluk
  • Maciej Dziubiński
  • Bogdan Lesyng
  • Marta Hallay-Suszek
  • Franciszek Rakowski
  • Łukasz Walewski

Keywords:

causality analysis, signal analysis, local descriptors, alignment, MVAR, Directed Transfer Function, molecular dynamics, porphycene, HIV-1 protease, molecular function, molecular evolution

Abstract

A brief overview of causality analysis (CA) methods applied to MD simulations data for model biomolec ular systems is presented. A CausalMD application for postprocessing of MD data was designed and implemented. MD simulations of two model systems, porphycene (ab initio MD) and HIV-1 protease (coarse-grained MD) were carried out and analyzed. Granger's causality methodology based on a Multivariate Autoregressive (MVAR) formalism, followed by the Directed Transfer Function (DTF) analysis was applied. A novel approach based on the descriptors of local structure was also presented and preliminary results were reported. Casuality analyses are required for a better understanding of biomolecular functioning mechanisms. In particular, such analyses can link physics-based structural dynamics with functions inferred from molecular evolution processes. Current limitations and future developments of the presented methodologies are indicated.

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Published

2017-01-25

Issue

pp. 257-276

Section

Articles

How to Cite

Daniluk, P., Dziubiński, M., Lesyng, B., Hallay-Suszek, M., Rakowski, F., & Walewski, Łukasz. (2017). From experimental, structural probability distributions to the theoretical causality analysis of molecular changes. Computer Assisted Methods in Engineering and Science, 19(3), 257-276. https://cames3.ippt.pan.pl/index.php/cames/article/view/93