Deep-learned spike representations and sorting via an ensemble of auto-encoders.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

Spike sorting refers to the technique of detecting signals generated by single neurons from multi-neuron recordings and is a valuable tool for analyzing the relationships between individual neuronal activity patterns and specific behaviors. Since the precision of spike sorting affects all subsequent analyses, sorting accuracy is critical. Many semi-automatic to fully-automatic spike sorting algorithms have been developed. However, due to unsatisfactory classification accuracy, manual sorting is preferred by investigators despite the intensive time and labor costs. Thus, there still is a strong need for fully automatic spike sorting methods with high accuracy. Various machine learning algorithms have been developed for feature extraction but have yet to show sufficient accuracy for spike sorting. Here we describe a deep learning-based method for extracting features from spike signals using an ensemble of auto-encoders, each with a distinct architecture for distinguishing signals at different levels of resolution. By utilizing ensemble of auto-encoder ensemble, where shallow networks better represent overall signal structure and deep networks better represent signal details, extraction of high-dimensional representative features for improved spike sorting performance is achieved. The model was evaluated on publicly available simulated datasets and single-channel and 4-channel tetrode in vivo datasets. Our model not only classified single-channel spikes with varying degrees of feature similarities and signal to noise levels with higher accuracy, but also more precisely determined the number of source neurons compared to other machine learning methods. The model also demonstrated greater overall accuracy for spike sorting 4-channel tetrode recordings compared to single-channel recordings.

Authors

  • Junsik Eom
    School of Electrical and Electronic Engineering, Yonsei University, Seoul 03722, Republic of Korea. Electronic address: junsik424@yonsei.ac.kr.
  • In Yong Park
    School of Electrical and Electronic Engineering, Yonsei University, Seoul 03722, Republic of Korea. Electronic address: inyong@yonsei.ac.kr.
  • Sewon Kim
    School of Electrical and Electronic Engineering, Yonsei University, Seoul 03722, Republic of Korea. Electronic address: sewon.kim@yonsei.ac.kr.
  • Hanbyol Jang
    School of Electrical and Electronic Engineering, Yonsei University, Seoul 03722, Republic of Korea. Electronic address: hanstar4@yonsei.ac.kr.
  • Sanggeon Park
    Department of Medical Science, College of Medicine, Catholic Kwandong University, Gangneung 25601, Republic of Korea; Translational Brain Research Center, Catholic Kwandong University, International St. Mary's Hospital, Incheon 22711, Republic of Korea; Department of Neuroscience, University of Science and Technology, Daejeon, 34113, Republic of Korea; Center for Neuroscience, Korea Institute of Science and Technology, Seoul 02792, Republic of Korea. Electronic address: chalspark.korea@gmail.com.
  • Yeowool Huh
    Department of Medical Science, College of Medicine, Catholic Kwandong University, Gangneung 25601, Republic of Korea; Translational Brain Research Center, Catholic Kwandong University, International St. Mary's Hospital, Incheon 22711, Republic of Korea. Electronic address: huh06@cku.ac.kr.
  • Dosik Hwang
    School of Electrical and Electronic Engineering, Yonsei University, Seoul, Republic of Korea. dosik.hwang@yonsei.ac.kr.