Title :
Factor Graph-Based Biomolecular Circuit Analysis for Designing Forward Error Correcting Biosensors
Author :
Yang Liu ; Chakrabartty, S.
Author_Institution :
Dept. of Electr. & Comput. Eng., Michigan State Univ., East Lansing, MI
fDate :
6/1/2009 12:00:00 AM
Abstract :
We previously reported the fabrication and the verification of novel biomolecular transistors where electrical conductivity of a ldquopolyaniline nanowiresrdquo channel is controlled by antigen-antibody interactions. In this paper, we present a simulation framework for analyzing the reliability of biosensor circuits constructed by using these biomolecular transistors. At the core of the proposed framework is a library of electrical circuit models that capture the stochastic interaction between biomolecules and their variability to environmental conditions and experimental protocols. Reliability analysis is then performed by exploiting probabilistic dependencies between multiple circuit elements by using a factor graph-based decoding technique. The proposed computational approach facilitates rapid evaluation of forward error correction (FEC) strategies for biosensors without resorting to painstaking and time-consuming experimental procedures. The analysis presented in this paper shows that an asymmetric FEC biosensor code outperforms a repetition FEC biosensor code which has been proposed for microarray technology. In addition, we also show that the proposed analysis leads to a novel ldquoco-detectionrdquo protocol that could be used for reliable detection of trace quantities of pathogens.
Keywords :
biomolecular electronics; biosensors; circuit reliability; error correction codes; molecular biophysics; nanowires; network analysis; polymers; transistor circuits; antigen-antibody interactions; biomolecular transistors; electrical circuit models; electrical conductivity; factor graph-based biomolecular circuit analysis; factor graph-based decoding technique; forward error correcting biosensors; microarray technology; polyaniline nanowires; reliability analysis; stochastic interaction; Analytical models; Biosensors; Circuit analysis; Circuit simulation; Conductivity; Error correction; Fabrication; Forward error correction; Libraries; Protocols; Biomolecular circuits; biosensors; computer-aided design (CAD); factor graph; forward error correction co-detection; polyaniline; reliability;
Journal_Title :
Biomedical Circuits and Systems, IEEE Transactions on
DOI :
10.1109/TBCAS.2009.2014247