Adaptive Neural Systems Lab, Department of Biomedical Engineering, Florida International University Miami, FL, USA.
Center for Adaptive Neural Systems, School of Biological and Health Systems Engineering, Arizona State University Tempe, AZ, USA.
Front Neurosci. 2014 Nov 14;8:371. doi: 10.3389/fnins.2014.00371. eCollection 2014.
Decoding motor intent from recorded neural signals is essential for the development of effective neural-controlled prostheses. To facilitate the development of online decoding algorithms we have developed a software platform to simulate neural motor signals recorded with peripheral nerve electrodes, such as longitudinal intrafascicular electrodes (LIFEs). The simulator uses stored motor intent signals to drive a pool of simulated motoneurons with various spike shapes, recruitment characteristics, and firing frequencies. Each electrode records a weighted sum of a subset of simulated motoneuron activity patterns. As designed, the simulator facilitates development of a suite of test scenarios that would not be possible with actual data sets because, unlike with actual recordings, in the simulator the individual contributions to the simulated composite recordings are known and can be methodically varied across a set of simulation runs. In this manner, the simulation tool is suitable for iterative development of real-time decoding algorithms prior to definitive evaluation in amputee subjects with implanted electrodes. The simulation tool was used to produce data sets that demonstrate its ability to capture some features of neural recordings that pose challenges for decoding algorithms.
从记录的神经信号中解码运动意图对于开发有效的神经控制假肢至关重要。为了促进在线解码算法的开发,我们开发了一个软件平台来模拟使用周围神经电极(如纵向神经内电极(LIFE))记录的神经运动信号。该模拟器使用存储的运动意图信号来驱动一组具有各种尖峰形状、募集特征和发射频率的模拟运动神经元。每个电极记录模拟运动神经元活动模式子集的加权和。正如设计的那样,模拟器便于开发一系列测试场景,这些场景在实际数据集上是不可能实现的,因为与实际记录不同,在模拟器中,模拟复合记录的各个贡献是已知的,可以在一组模拟运行中系统地改变。通过这种方式,该模拟工具适合在有植入电极的截肢患者中进行实时解码算法的迭代开发,然后再进行明确评估。该模拟工具用于生成数据集,展示其捕获神经记录中一些对解码算法构成挑战的特征的能力。