Kim Kyung Hwan, Kim Sung Shin, Kim Sung June
Department of Biomedical Engineering, College of Health Science, Yonsei University, 234 Maeji-ri, 220-710 Heungup-myun, Wonju, Kangwon-do, South Korea.
Med Biol Eng Comput. 2006 Mar;44(1-2):124-30. doi: 10.1007/s11517-005-0009-x.
The successful decoding of kinematic variables from spike trains of motor cortical neurons is essential for cortical neural prosthesis. Spike trains from each single unit must be extracted from extracellular neural signals and, thus, spike detection and sorting procedure is indispensable but the detection and sorting may involve considerable error. Thus, a decoding algorithm should be robust with respect to spike train errors. Here, we show that spike train decoding algorithms employing nonlinear mapping, especially a support vector machine (SVM), may be more advantageous contrary to previous results which showed that an optimal linear filter is sufficient. The advantage became more conspicuous in the case of erroneous spike trains. Using the SVM, satisfactory training of the decoder could be achieved much more easily, compared to the case of using a multilayer perceptron, which has been employed in previous studies. Tests were performed on simulated spike trains from primary motor cortical neurons with a realistic distribution of preferred direction. The results suggest the possibility that a neuroprosthetic device with a low-quality spike sorting preprocessor can be achieved by adopting a spike train decoder that is robust to spike sorting errors.
从运动皮层神经元的尖峰序列中成功解码运动学变量对于皮层神经假体至关重要。必须从细胞外神经信号中提取每个单个单元的尖峰序列,因此,尖峰检测和分类过程是必不可少的,但检测和分类可能会涉及相当大的误差。因此,解码算法应该对尖峰序列误差具有鲁棒性。在这里,我们表明,与先前结果显示最优线性滤波器就足够了相反,采用非线性映射的尖峰序列解码算法,尤其是支持向量机(SVM),可能更具优势。在错误尖峰序列的情况下,这种优势变得更加明显。与先前研究中使用的多层感知器相比,使用支持向量机可以更容易地实现解码器的满意训练。对具有真实偏好方向分布的初级运动皮层神经元的模拟尖峰序列进行了测试。结果表明,通过采用对尖峰分类误差具有鲁棒性的尖峰序列解码器,有可能实现具有低质量尖峰分类预处理器的神经假体装置。