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J Neurophysiol (April 1, 2003). 10.1152/jn.00827.2002
Submitted on Submitted 20 September 2002; accepted in final form 16 December
2002
1Department of Computer Science, Graduate School of Science and Technology, Keio University, Yokohama 223-8522; and 2Department of Psychology, Graduate School of Letters, Kyoto University, Kyoto 606-8501, Japan
Takahashi, Susumu,
Yuichiro Anzai, and
Yoshio Sakurai.
Automatic Sorting for Multi-Neuronal Activity Recorded With
Tetrodes in the Presence of Overlapping Spikes. J. Neurophysiol. 89: 2245-2258, 2003. Multi-neuronal
recording is a powerful electrophysiological technique that has
revealed much of what is known about the neuronal interactions in the
brain. However, it is difficult to detect precise spike timings,
especially synchronized simultaneous firings, among closely neighboring
neurons recorded by one common electrode because spike waveforms
overlap on the electrode when two or more neurons fire simultaneously.
In addition, the non-Gaussian variability (nonstationarity) of spike
waveforms, typically seen in the presence of so-called complex spikes,
limits the ability to sort multi-neuronal activities into their
single-neuron components. Because of these problems, the ordinary
spike-sorting techniques often give inaccurate results. Our previous
study has shown that independent component analysis (ICA) can solve
these problems and separate single-neuron components from
multi-neuronal recordings. The ICA has, however, one serious limitation
that the number of separated neurons must be less than the number of
electrodes. The present study combines the ICA and the efficiency of
the ordinary spike-sorting technique (k-means clustering) to solve the
spike-overlapping and the nonstationarity problems with no limitation
on the number of single neurons to be separated. First, multi-neuronal
activities are sorted into an overly large number of clusters by
k-means clustering. Second, the sorted clusters are decomposed by ICA.
Third, the decomposed clusters are progressively aggregated into a
minimal set of putative single neurons based on similarities of basis
vectors estimated by ICA. We applied the present procedure to
multi-neuronal waveforms recorded with tetrodes composed of four
microwires in the prefrontal cortex of awake behaving monkeys. The
results demonstrate that there are functional connections among
neighboring pyramidal neurons, some of which fire in a precise
simultaneous manner and that precisely time-locked monosynaptic
connections are working between neighboring pyramidal neurons and
interneurons. Detection of these phenomena suggests that the present
procedure can sort multi-neuronal activities, which include overlapping
spikes and realistic non-Gaussian variability of spike waveforms, into
their single-neuron components. We processed several types of
synthesized data sets in this procedure and confirmed that the
procedure was highly reliable and stable. The present method provides
insights into the local circuit bases of excitatory and inhibitory
interactions among neighboring neurons.
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