前向纠错生物传感器:建模、算法和制造

Yang Liu, E. Alocilja, S. Chakrabartty
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引用次数: 3

摘要

微纳米生物传感器制造的进步使大量的生物识别元件集成在一个单一的封装。因此,可以同时进行数亿次检测,并有助于在给定样品中快速检测多种病原体。然而,如何利用多病原体检测的高维特性来提高典型生物传感器系统的检测可靠性是一个悬而未决的问题。我们在过去几年的研究已经解决了这个问题,在本文中我们简要地总结了我们的方法。我们的基本原理是基于前向纠错(FEC)生物传感器,其中冗余模式被合成编码在生物传感器上。然后,解码算法利用这种冗余来补偿由于实验变化引起的系统误差和由于随机生物分子相互作用引起的随机误差。本研究的关键里程碑是:(a)用于构建FEC生物传感器的生物分子电路元件的制造和建模;(b)开发用于快速评估编码/解码算法的模拟环境;(c)开发利用不同生物分子电路元件之间非线性相互作用的ldquoco-detectionrdquo协议。作为概念验证,我们的研究和实验结果基于电导侧流免疫传感器,该传感器使用抗原-抗体相互作用与聚苯胺传感器结合来检测给定样品中病原体的存在或不存在。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forward error correcting biosensors: Modeling, algorithms and fabrication
Advances in micro-nano-biosensor fabrication are enabling the integration of a large number of biological recognition elements within a single package. As a result, hundreds to millions of tests can be performed simultaneously and can facilitate rapid detection of multiple pathogens in a given sample. However, it is an open question as to how to exploit the high-dimensional nature of the multi-pathogen testing for improving the detection reliability of typical biosensor systems. Our research over the past few years has addressed this question and in this paper we briefly summarize our approach. Our underlying principle is based on a forward error correcting (FEC) biosensor where redundant patterns are synthetically encoded on the biosensor. A decoding algorithm then exploits this redundancy to compensate for systematic errors due to experimental variations and for random errors due to stochastic biomolecular interactions. The key milestones in this research are : (a) fabrication and modeling of biomolecular circuit elements used for constructing the FEC biosensor; (b) development of a simulation environment for rapid evaluation of encoding/decoding algorithms and (c) development of a ldquoco-detectionrdquo protocol that exploits non-linear interaction between different biomolecular circuit elements. As a proof-of-concept our study and experimental results have been based on a conductimetric lateral flow immunosensor that uses antigen-antibody interaction in conjunction with a polyaniline transducer to detect the presence or absence of pathogens in a given sample.
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