Title :
Modeling the Biological Nanopore Instrument for Biomolecular State Estimation
Author :
Garalde, Daniel R. ; O´Donnell, Christopher R. ; Maitra, Raj D. ; Wiberg, Donald M. ; Gang Wang ; Dunbar, W.B.
Author_Institution :
Oxford Nanopore Technol. Ltd., Oxford, UK
Abstract :
The nanopore is a powerful tool for probing biomolecular interactions at the single-molecule level, and shows great promise commercially as a next-generation deoxyribonucleic acid (DNA) sequencing technology. Coupling active voltage control with the nanopore has expanded its capabilities, for example, by allowing precise manipulation of DNA-enzyme complexes at millisecond timescales. However, any change in voltage excites capacitance in the system and results in masking the molecule´s contribution to the measured current. To improve active control capabilities, a method is needed for continuous monitoring of the molecule´s contribution to the current during voltage-varying experiments. The method must be able to separate the capacitive effects from the channel conductance, which is the parameter that can be used to infer the state of the molecule in the pore. The contributions of this paper are: 1) to develop a dynamic model of the nanopore instrument which includes capacitance and conductance parameters and 2) to develop model-based algorithms for estimating the conductance parameter during voltage varying experiments. First, grey- and black-box state-space models are estimated and compared using nanopore experimental data and system identification tools. Next, a validated grey-box model is used to derive two methods for estimating the channel conductance under voltage-varying conditions: one based on least-squares, and one based on the extended Kalman filter. In simulations and experiments, the Kalman filter outperforms the simpler least-squares method.
Keywords :
DNA; Kalman filters; bioelectric phenomena; biological techniques; capacitance; least squares approximations; molecular biophysics; molecular configurations; nanobiotechnology; DNA sequencing technology; DNA-enzyme complexes; Kalman filter; biological nanopore instrument; biomolecular interactions; biomolecular state estimation; black-box state-space models; capacitance; channel conductance parameters; dynamic model; grey-box state-space model; least-squares method; molecule contribution; next-generation deoxyribonucleic acid sequencing technology; single-molecule level; Current measurement; DNA; Kalman filters; Mathematical model; Nanobioscience; Voltage measurement; Active control; biomolecular control; deoxyribonucleic acid sensing; estimation; nanopore; single-molecule measurement; systems identification;
Journal_Title :
Control Systems Technology, IEEE Transactions on
DOI :
10.1109/TCST.2012.2224349