Nenadic Zoran, Burdick Joel W
Division of Engineering and Applied Science, California Institute of Technology, Pasadena, CA 91125, USA.
IEEE Trans Biomed Eng. 2006 May;53(5):941-55. doi: 10.1109/TBME.2005.863930.
This paper develops a control algorithm that can autonomously position an electrode so as to find and then maintain an optimal extracellular recording position. The algorithm was developed and tested in a two-neuron computational model representative of the cells found in cerebral cortex. The algorithm is based on a stochastic optimization of a suitably defined signal quality metric and is shown capable of finding the optimal recording position along representative sampling directions, as well as maintaining the optimal signal quality in the face of modeled tissue movements. The application of the algorithm to acute neurophysiological recording experiments and its potential implications to chronic recording electrode arrays are discussed.
本文开发了一种控制算法,该算法可以自动定位电极,以便找到并维持最佳的细胞外记录位置。该算法是在一个双神经元计算模型中开发和测试的,该模型代表了在大脑皮层中发现的细胞。该算法基于对适当定义的信号质量指标的随机优化,并且能够沿着代表性采样方向找到最佳记录位置,同时在面对模拟的组织运动时维持最佳信号质量。文中还讨论了该算法在急性神经生理学记录实验中的应用及其对慢性记录电极阵列的潜在影响。