APS Logo

Stochastic Simulation to Visualize Gene Expression and Error Correction in Living Cells

ORAL

Abstract

Stochastic simulation can make the molecular processes of cellular control more vivid than the traditional differential-equation approach by generating typical system histories, instead of just statistical measures such as the mean and variance of a population. Simple simulations are now easy for students to construct from scratch, that is, without recourse to black-box packages. In some cases, their results can also be compared directly to single-molecule experimental data. After introducing the stochastic simulation algorithm, we give two case studies, involving gene expression and error correction, respectively. For error correction, several proofreading models are compared to find the minimal components necessary for sufficient accuracy in translation. Animations of the stochastic error correction models provide insight into the proofreading mechanisms. [Ref: KYC, DMZ, PCN, "The Biophysicist" in press.]

Presenters

  • Phil Nelson

    Physics and Astronomy, Univ of Pennsylvania, University of Pennsylvania

Authors

  • Kevin Y Chen

    Chemistry, University of Cambridge UK

  • Daniel M Zuckerman

    Biomedical Engineering, Oregon Health & Science Univ.

  • Phil Nelson

    Physics and Astronomy, Univ of Pennsylvania, University of Pennsylvania