首页> 外文会议>Conference on Chemical and Biological Sensing V; 20040412-20040413; Orlando,FL; US >Agent Identification and Differentiation Via Abstract Second Messenger Modeling
【24h】

Agent Identification and Differentiation Via Abstract Second Messenger Modeling

机译:通过抽象的第二信使建模对智能体进行识别和区分

获取原文
获取原文并翻译 | 示例

摘要

Biosensors could consist of hybrids such as a biological nerve cell grown on a suitable silicon substrate. We will assume a hybrid system consisting of a dendritic tree for input, a cell sorna and an axon for output transmission. Such a system is almost achievable with current technology. We will discuss how to model the action potential of the nerve cell in such a hybrid system so that we can efficiently recognize toxins introduced on the input side (the dendritic subsystem) from changes we observe on the output side. We first discuss an an abstract model of how a given toxin would influence the structure of the action potential of a biological nerve cell. It is known that the action potential of such a cell is influenced at several times scales: (1) milliseconds: changes in ion flux due to alterations in standard Hodgkin - Huxley voltage activated gates and (2) tens to hundreds of milliseconds: changes in the the structure of ligand operated gates due to the creation of new proteins via requests to the nerve cell's nuclear material (genome). The classical Hodgkin - Huxley model consists of a number of nonlinear gating coefficients that give rise in even a simple model to 38 independently modifiable parameters. We discuss how the influences of type one and two can be modeled using a alterations to these parameters and show that a given toxin can be associated with a toxin signature corresponding to perturbations from the standard values of these coefficients. Finally, we show how these ideas can be used to determine low dimensional feature vectors for recognition purposes. We also discuss how a low dimensional biological feature vector could be used to obtain similar results.
机译:生物传感器可以由杂种组成,例如在合适的硅基板上生长的生物神经细胞。我们将假设一个混合系统,该系统由用于输入的树状树,用于细胞传输的树突和轴突组成。用当前技术几乎可以实现这样的系统。我们将讨论如何在这种混合系统中对神经细胞的动作电位进行建模,以便我们可以根据在输出侧观察到的变化有效地识别输入侧(树突状子系统)引入的毒素。我们首先讨论一个给定毒素如何影响生物神经细胞动作电位结构的抽象模型。众所周知,这种电池的动作电位会受到几倍的影响:(1)毫秒:由于标准霍奇金-赫x黎电压激活门的变化而引起的离子通量变化;以及(2)数十至数百毫秒:由于通过向神经细胞核材料(基因组)的请求产生了新蛋白质,配体操纵的门的结构得以实现。经典的Hodgkin-Huxley模型由许多非线性门控系数组成,即使在一个简单的模型中,该系数也会增加到38个可独立修改的参数。我们讨论了如何使用对这些参数的更改来模拟第一类型和第二类型的影响,并显示给定的毒素可以与对应于这些系数标准值扰动的毒素特征相关联。最后,我们展示了如何将这些想法用于确定低维特征向量以进行识别。我们还将讨论如何使用低维生物学特征矢量来获得相似的结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号