We report a free-energy-based algorithm to estimate the step size of processive molecular motors from noisy, experimental time position traces. In our approach, the problem of estimating step sizes reduces to the evaluation of the free energy of directed lattice polymers in a random potential. The present approach is Bayesian in spirit as we do not aim to determine the most likely underlying time trace but rather to determine the step size and stepping frequency that are most likely to yield the observed data. We test this method on synthetic data for the simple case of noisy traces with fixed underlying step size and Poissonian stepping statistics. We find that the present scheme can work at signal-to-noise levels that are about 40% worse ...
Hidden Markov models (HMMs) provide an excellent analysis of recordings with very poor signal/noise ...
Molecular motors are responsible of transporting a wide variety of cargos in the cytoplasm. Current ...
Hidden Markov models (HMMs) provide an excellent analysis of recordings with very poor signal/noise ...
AbstractProcessive molecular motors, such as kinesin, myosin, or dynein, convert chemical energy int...
AbstractMany biological machines function in discrete steps, and detection of such steps can provide...
Nature has evolved many molecular machines such as kinesin, myosin, and the rotary flagellar motor p...
AbstractUnbiased interpretation of noisy single molecular motor recordings remains a challenging tas...
We report statistical time-series analysis tools providing improvements in the rapid, precision extr...
Molecular motors convert chemical or electrical energy into mechanical displacement, either linear o...
Unbiased interpretation of noisy single molecular motor recordings remains a challenging task To add...
AbstractWe report statistical time-series analysis tools providing improvements in the rapid, precis...
AbstractMolecular motors, such as kinesin, myosin, or dynein, convert chemical energy into mechanica...
AbstractIn vitro, single-molecule motility assays allow for the direct characterization of molecular...
Nature has evolved many molecular machines such as kinesin, myosin, and the rotary flagellar motor p...
ABSTRACT The statistics of steps and dwell times in reversible molecular motors differ from those of...
Hidden Markov models (HMMs) provide an excellent analysis of recordings with very poor signal/noise ...
Molecular motors are responsible of transporting a wide variety of cargos in the cytoplasm. Current ...
Hidden Markov models (HMMs) provide an excellent analysis of recordings with very poor signal/noise ...
AbstractProcessive molecular motors, such as kinesin, myosin, or dynein, convert chemical energy int...
AbstractMany biological machines function in discrete steps, and detection of such steps can provide...
Nature has evolved many molecular machines such as kinesin, myosin, and the rotary flagellar motor p...
AbstractUnbiased interpretation of noisy single molecular motor recordings remains a challenging tas...
We report statistical time-series analysis tools providing improvements in the rapid, precision extr...
Molecular motors convert chemical or electrical energy into mechanical displacement, either linear o...
Unbiased interpretation of noisy single molecular motor recordings remains a challenging task To add...
AbstractWe report statistical time-series analysis tools providing improvements in the rapid, precis...
AbstractMolecular motors, such as kinesin, myosin, or dynein, convert chemical energy into mechanica...
AbstractIn vitro, single-molecule motility assays allow for the direct characterization of molecular...
Nature has evolved many molecular machines such as kinesin, myosin, and the rotary flagellar motor p...
ABSTRACT The statistics of steps and dwell times in reversible molecular motors differ from those of...
Hidden Markov models (HMMs) provide an excellent analysis of recordings with very poor signal/noise ...
Molecular motors are responsible of transporting a wide variety of cargos in the cytoplasm. Current ...
Hidden Markov models (HMMs) provide an excellent analysis of recordings with very poor signal/noise ...