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Spike Sorting • Goal: Extract neural spike trains from MEA electrode data • Method 1: Convolution of template spikes • Method 2: Sort by spikes features

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Page 1: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Spike Sorting

• Goal: Extract neural spike trains from MEA electrode data

• Method 1: Convolution of template spikes

• Method 2: Sort by spikes features

Page 2: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Cluster Cutting

• Advantages: – Better separation– Requires less information

• Disadvantages– Computationally intensive

Page 3: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Remap2pin02 Spikes

Page 4: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Selected Features

1. Max peak height

2. Voltage difference between max and second max

3. Sum of max positive and max negative peaks

4. Time between max positive and max negative peaks

5. Max width of a polarization

Page 5: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Features

1. Max peak height -- Color

2. Voltage difference between max and second max -- Z-axis

3. Sum of max positive and max negative peaks -- Y-axis

4. Time between max positive and max negative peaks -- X-axis

5. Max width of a polarization -- Size

Page 6: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Features Plot

Page 7: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Remap2pin02 Spikes

Page 8: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Training Features Plot

Page 9: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Training Features Plot

Page 10: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Training Features Plot

Page 11: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Future Direction

• Optimal feature choice

• Training algorithm– Bayesian clustering– Nearest neighbor– Support Vector Machine– Neural Network

Page 12: Spike Sorting Goal: Extract neural spike trains from MEA electrode data Method 1: Convolution of template spikes Method 2: Sort by spikes features

Conclusion

• Data suggests we should be able to isolate individual neural firing patterns from MEA data

• Use MEA data to model and study network of neurons in culture