Litcius/Paper detail

A framework for on-implant spike sorting based on salient feature selection

MohammadAli Shaeri, Amir M. Sodagar

2020Nature Communications21 citationsDOIOpen Access PDF

Abstract

On-implant spike sorting methods employ static feature extraction/selection techniques to minimize the hardware cost. Here we propose a novel framework for real-time spike sorting based on dynamic selection of features. We select salient features that maximize the geometric-mean of between-class distances as well as the associated homogeneity index effectively to best discriminate spikes for classification. Wave-shape classification is performed based on a multi-label window discrimination approach. An external module calculates the salient features and discrimination windows through optimizing a replica of the on-implant operation, and then configures the on-implant spike sorter for real-time online operation. Hardware implementation of the on-implant online spike sorter for 512 channels of concurrent extra-cellular neural signals is reported, with an average classification accuracy of ~88%. Compared with other similar methods, our method shows reduction in classification error by a factor of ~2, and also reduction in the required memory space by a factor of ~5.

Topics & Concepts

Computer sciencePattern recognition (psychology)SalientArtificial intelligenceSortingSpike (software development)Spike sortingFeature selectionFeature extractionAlgorithmSoftware engineeringAdvanced Memory and Neural ComputingNeural dynamics and brain functionNeuroscience and Neural Engineering