...
首页> 外文期刊>Journal of Neurophysiology >Real-time particle filtering and smoothing algorithms for detecting abrupt changes in neural ensemble spike activity
【24h】

Real-time particle filtering and smoothing algorithms for detecting abrupt changes in neural ensemble spike activity

机译:用于检测神经系列尖峰活动的突然变化的实时粒子滤波和平滑算法

获取原文
获取原文并翻译 | 示例
           

摘要

Sequential change-point detection from time series data is a common problem in many neuroscience applications, such as seizure detection, anomaly detection, and pain detection. In our previous work (Chen Z, Zhang Q, Tong AP, Manders TR, Wang J. J Neural Eng 14: 036023, 2017), we developed a latent state-space model, known as the Poisson linear dynamical system, for detecting abrupt changes in neuronal ensemble spike activity. In online brain-machine interface (BMI) applications, a recursive filtering algorithm is used to track the changes in the latent variable. However, previous methods have been restricted to Gaussian dynamical noise and have used Gaussian approximation for the Poisson likelihood. To improve the detection speed, we introduce non-Gaussian dynamical noise for modeling a stochastic jump process in the latent state space. To efficiently estimate the state posterior that accommodates non-Gaussian noise and non-Gaussian likelihood, we propose particle filtering and smoothing algorithms for the change-point detection problem. To speed up the computation, we implement the proposed particle filtering algorithms using advanced graphics processing unit computing technology. We validate our algorithms, using both computer simulations and experimental data for acute pain detection. Finally, we discuss several important practical issues in the context of real-time closed-loop BMI applications.
机译:时间序列数据的顺序变化点检测是许多神经科学应用中的常见问题,例如癫痫发作检测,异常检测和疼痛检测。在我们以前的工作中(陈Z,张Q,Tong AP,王国TR,王J.J.J Neural Eng 14:036023,2017),我们开发了一种潜在的状态空间模型,称为泊松线性动力系统,用于检测突然神经元集合穗活性的变化。在在线脑机接口(BMI)应用中,递归过滤算法用于跟踪潜在变量的变化。然而,先前的方法仅限于高斯动态噪声,并利用了泊松可能性的高斯近似。为了提高检测速度,我们引入了用于在潜在状态空间中建模随机跳跃过程的非高斯动态噪声。为了有效地估计容纳非高斯噪声和非高斯可能性的状态后,我们提出了用于改变点检测问题的粒子滤波和平滑算法。为了加快计算,我们使用高级图形处理单元计算技术实现所提出的粒子滤波算法。我们使用计算机仿真和急性疼痛检测的实验数据验证我们的算法。最后,我们在实时闭环BMI应用程序的上下文中讨论了几个重要的实际问题。

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