Litcius/Paper detail

Data Compression Versus Signal Fidelity Tradeoff in Wired-OR Analog-to-Digital Compressive Arrays for Neural Recording

Pumiao Yan, Arash Akhoundi, Nishal P. Shah, Pulkit Tandon, Dante G. Muratore, E. J. Chichilnisky, Boris Murmann

2023IEEE Transactions on Biomedical Circuits and Systems14 citationsDOIOpen Access PDF

Abstract

Future high-density and high channel count neural interfaces that enable simultaneous recording of tens of thousands of neurons will provide a gateway to study, restore and augment neural functions. However, building such technology within the bit-rate limit and power budget of a fully implantable device is challenging. The wired-OR compressive readout architecture addresses the data deluge challenge of a high channel count neural interface using lossy compression at the analog-to-digital interface. In this article, we assess the suitability of wired-OR for several steps that are important for neuroengineering, including spike detection, spike assignment and waveform estimation. For various wiring configurations of wired-OR and assumptions about the quality of the underlying signal, we characterize the trade-off between compression ratio and task-specific signal fidelity metrics. Using data from 18 large-scale microelectrode array recordings in macaque retina ex vivo, we find that for an event SNR of 7-10, wired-OR correctly detects and assigns at least 80% of the spikes with at least 50× compression. The wired-OR approach also robustly encodes action potential waveform information, enabling downstream processing such as cell-type classification. Finally, we show that by applying an LZ77-based lossless compressor (gzip) to the output of the wired-OR architecture, 1000× compression can be achieved over the baseline recordings.

Topics & Concepts

Computer scienceSpike (software development)Data compressionLossless compressionLossy compressionWaveformElectronic engineeringComputer hardwareArtificial intelligenceTelecommunicationsEngineeringSoftware engineeringRadarNeuroscience and Neural EngineeringAdvanced Memory and Neural ComputingNeural dynamics and brain function