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

Author:

Hu Sile12,Zhang Qiaosheng3,Wang Jing34,Chen Zhe24ORCID

Affiliation:

1. Department of Instrument Science and Technology, Zhejiang University, Hangzhou, Zhejiang, People’s Republic of China

2. Department of Psychiatry, New York University School of Medicine, New York, New York

3. Department of Anesthesiology, Perioperative Care, and Pain Medicine, New York University School of Medicine, New York, New York

4. Department of Neuroscience and Physiology, New York University School of Medicine, New York, New York

Abstract

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. NEW & NOTEWORTHY Sequential change-point detection is an important problem in closed-loop neuroscience experiments. This study proposes novel sequential Monte Carlo methods to quickly detect the onset and offset of a stochastic jump process that drives the population spike activity. This new approach is robust with respect to spike sorting noise and varying levels of signal-to-noise ratio. The GPU implementation of the computational algorithm allows for parallel processing in real time.

Funder

National Science Foundation (NSF)

HHS | NIH | National Institute of Neurological Disorders and Stroke (NINDS)

HHS | NIH | National Institute of General Medical Sciences (NIGMS)

Publisher

American Physiological Society

Subject

Physiology,General Neuroscience

Reference75 articles.

1. Andersen MR, Winther O, Hansen LK. Bayesian Inference for Structured Spike and Slab Priors, Advances in Neural Information Processing Systems. New York: Curran, 2014, p. 1745–1753.

2. Particle Markov chain Monte Carlo methods

3. Robust spectrotemporal decomposition by iteratively reweighted least squares

4. Dynamic Analyses of Information Encoding in Neural Ensembles

5. Recursive Bayesian Decoding of Motor Cortical Signals by Particle Filtering

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