An Asynchronous Delta Modulator for Spike Encoding in Event-Driven Brain-Machine Interface
Pith reviewed 2026-05-10 16:49 UTC · model grok-4.3
The pith
An asynchronous delta modulator converts analog neural signals into ON and OFF spikes using 60.73 nJ per spike in 65nm CMOS.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
The asynchronous delta modulator converts analog signals into discrete, asynchronous ON and OFF spikes, effectively compressing continuous biopotentials into spike trains compatible with spiking neural networks. Its asynchronous operation enables seamless integration with neuromorphic architectures for real-time decoding in closed-loop brain-machine interfaces. Fabricated in 65nm CMOS, the circuit consumes 60.73 nJ/spike with an F1-score of 80% compared to its behavioral model and occupies a compact area of 73.45 μm × 73.64 μm.
What carries the argument
The asynchronous delta modulator, a circuit that detects changes in analog input beyond a threshold to produce discrete ON and OFF spikes, carrying the argument by turning continuous signals into event-driven spike trains.
If this is right
- The spike trains compress neural data for more efficient transmission and processing in neural interfaces.
- Energy use of 60.73 nJ per spike supports extended battery life in implantable brain-machine interface devices.
- Direct compatibility with spiking neural networks allows the encoded signals to be used without intermediate conversion steps.
- The compact pixel size of 73.45 by 73.64 micrometers enables high-density arrays for multi-channel neural recording.
Where Pith is reading between the lines
- If the spikes integrate directly with SNNs, overall system power could drop by eliminating continuous analog-to-digital sampling.
- Testing the modulator outputs with actual in-vivo neural recordings in a full closed-loop setup would provide concrete evidence of real-time decoding performance.
- The asynchronous design may reduce feedback latency in brain-machine interface applications compared to clocked sampling methods.
Load-bearing premise
The ON and OFF spikes will enable seamless integration with neuromorphic architectures for real-time decoding in closed-loop brain-machine interfaces without further validation shown in the results.
What would settle it
Feeding the modulator's spike trains into an SNN decoder and measuring decoding accuracy below the reported 80% F1-score on the original biopotential signals would falsify the claim of effective compatibility.
Figures
read the original abstract
This paper presents the design and implementation of an asynchronous delta modulator as a spike encoder for event-driven neural recording in a 65nm CMOS process. The proposed neuromorphic front-end converts analog signals into discrete, asynchronous ON and OFF spikes, effectively compressing continuous biopotentials into spike trains compatible with spiking neural networks (SNNs). Its asynchronous operation enables seamless integration with neuromorphic architectures for real-time decoding in closed-loop brain-machine interfaces (BMIs). Measurement results from silicon demonstrate an energy consumption of 60.73 nJ/spike, an F1-score of 80% compared to a behavioral model of the asynchronous delta modulator, and a compact pixel area of 73.45 um $\times$ 73.64 um.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. This paper presents the design and silicon implementation of an asynchronous delta modulator in a 65 nm CMOS process for spike encoding of analog biopotentials in event-driven brain-machine interfaces. The neuromorphic front-end generates asynchronous ON and OFF spikes, with reported silicon measurements of 60.73 nJ/spike energy consumption, 80% F1-score against a behavioral model, and a compact area of 73.45 μm × 73.64 μm.
Significance. Should the silicon characterization prove robust, the work offers a low-energy, area-efficient spike encoder that compresses continuous signals into event-based representations suitable for spiking neural networks. This could support power-constrained neuromorphic BMIs. The provision of physical measurements from a fabricated 65 nm CMOS chip is a strength, supplying concrete data rather than simulations alone. However, the absence of any end-to-end results with SNN decoders limits evaluation of the practical impact on real-time closed-loop applications.
major comments (2)
- [Abstract] Abstract: The key performance metrics (60.73 nJ/spike energy and 80% F1-score) are stated without information on test conditions, sample size, error bars, or comparisons to baselines or prior encoders; this leaves the support for the silicon results incomplete.
- [Abstract] Abstract: The claim that asynchronous operation 'enables seamless integration with neuromorphic architectures for real-time decoding in closed-loop brain-machine interfaces' is not supported by experimental evidence; the manuscript provides only standalone modulator characterization with no SNN decoding, latency, or closed-loop BMI task results.
Simulated Author's Rebuttal
We thank the referee for the constructive feedback and for recognizing the value of the silicon measurements. We address the two major comments on the abstract below. We will revise the manuscript to improve clarity and qualify claims where appropriate.
read point-by-point responses
-
Referee: [Abstract] Abstract: The key performance metrics (60.73 nJ/spike energy and 80% F1-score) are stated without information on test conditions, sample size, error bars, or comparisons to baselines or prior encoders; this leaves the support for the silicon results incomplete.
Authors: We agree the abstract would benefit from added context. Space constraints limit detail, but test conditions (synthetic biopotentials and recorded neural signals), measurement repetitions across dies, and comparisons to prior encoders appear in Sections IV and V. The F1-score specifically validates silicon against the behavioral model. We will revise the abstract to note 'measured in 65 nm CMOS with biopotential inputs' for better support. revision: yes
-
Referee: [Abstract] Abstract: The claim that asynchronous operation 'enables seamless integration with neuromorphic architectures for real-time decoding in closed-loop brain-machine interfaces' is not supported by experimental evidence; the manuscript provides only standalone modulator characterization with no SNN decoding, latency, or closed-loop BMI task results.
Authors: The work centers on the front-end encoder characterization; no SNN decoding or closed-loop results are included. The abstract statement describes the design intent and spike-format compatibility with neuromorphic systems, as outlined in the introduction. We will revise the abstract to qualify the language (e.g., 'designed to enable' or 'supports potential integration') to match the presented scope. revision: yes
- We do not have experimental SNN decoding, latency, or closed-loop BMI results, as these were outside the scope of the current study focused on the modulator front-end.
Circularity Check
No circularity: hardware measurements with no derivation chain
full rationale
The paper is an engineering implementation report on a fabricated 65 nm CMOS asynchronous delta modulator. It states design goals (analog-to-spike conversion for SNN compatibility) and reports direct silicon measurements (60.73 nJ/spike, 80 % F1-score vs. its own behavioral model, pixel area). No equations, parameter fits, predictions, or mathematical derivations appear in the abstract or description. The F1-score is a straightforward validation metric between fabricated hardware and a separate behavioral simulation of the same circuit; it does not constitute a fitted input renamed as a prediction. No self-citations, uniqueness theorems, or ansatzes are invoked. The integration claim is a design assertion supported by the measured spike output, not a derived result that reduces to the paper's own inputs.
Axiom & Free-Parameter Ledger
axioms (2)
- domain assumption Delta modulation principles convert continuous signals to discrete events based on threshold crossings
- domain assumption Asynchronous ON/OFF spikes are compatible with spiking neural networks for BMI decoding
Reference graph
Works this paper leans on
-
[1]
Flexible high- density microelectrode arrays for closed-loop brain–machine interfaces: a review,
X. Liu, Y . Gong, Z. Jiang, T. Stevens, and W. Li, “Flexible high- density microelectrode arrays for closed-loop brain–machine interfaces: a review,”Frontiers in Neuroscience, vol. 18, p. 1348434, 2024
work page 2024
-
[2]
How advances in neural recording affect data analysis,
I. H. Stevenson and K. P. Kording, “How advances in neural recording affect data analysis,”Nature neuroscience, vol. 14, no. 2, pp. 139–142, Feb. 2011. [Online]. Available: https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3410539/
work page 2011
-
[3]
A Survey of Neural Front End Amplifiers and Their Requirements toward Practical Neural Interfaces,
E. Bharucha, H. Sepehrian, and B. Gosselin, “A Survey of Neural Front End Amplifiers and Their Requirements toward Practical Neural Interfaces,”Journal of Low Power Electronics and Applications, vol. 4, no. 4, pp. 268–291, 2014
work page 2014
-
[4]
B. H. Abdelgaliel, M. Exalto, Y .-H. Ou-Yang, and D. G. Muratore, “A 2 × 2 Neural Amplifier Macro-Pixel with Shared DC Servo Loop for High- Density Brain-Computer Interfaces,” in2024 IEEE Biomedical Circuits and Systems Conference (BioCAS), Oct. 2024, pp. 1–5, iSSN: 2766- 4465
work page 2024
-
[5]
A Compact, Low-Noise, Chopped Front-End for Peripheral Nerve Recording in 180 nm CMOS,
J. Liu and R. M. Walker, “A Compact, Low-Noise, Chopped Front-End for Peripheral Nerve Recording in 180 nm CMOS,” in2018 IEEE Biomedical Circuits and Systems Conference (BioCAS), Oct. 2018, pp. 1–4, iSSN: 2163-4025. [Online]. Available: https://ieeexplore.ieee.org/document/8584716/
-
[6]
A high-performance neural prosthesis enabled by control algorithm design,
V . Gilja, P. Nuyujukian, C. A. Chestek, J. P. Cunningham, B. M. Yu, J. M. Fan, M. M. Churchland, M. T. Kaufman, J. C. Kao, S. I. Ryu, and K. V . Shenoy, “A high-performance neural prosthesis enabled by control algorithm design,”Nature Neuroscience, vol. 15, no. 12, pp. 1752–1757, Dec. 2012. [Online]. Available: https://www.nature.com/articles/nn.3265
work page 2012
-
[7]
B. P. Christie, D. M. Tat, Z. T. Irwin, V . Gilja, P. Nuyujukian, J. D. Foster, S. I. Ryu, K. V . Shenoy, D. E. Thompson, and C. A. Chestek, “Comparison of spike sorting and thresholding of voltage waveforms for intracortical brain-machine interface performance,”Journal of Neural Engineering, vol. 12, no. 1, p. 016009, Feb. 2015
work page 2015
-
[8]
Decoding grasp and speech signals from the cortical grasp circuit in a tetraplegic human,
S. K. W ANDELT, S. KELLIS, D. A. BJ ˚ANES, K. PEJSA, B. LEE, C. LIU, and R. A. ANDERSEN, “Decoding grasp and speech signals from the cortical grasp circuit in a tetraplegic human,”Neuron, vol. 110, no. 11, pp. 1777–1787.e3, Jun. 2022. [Online]. Available: https://pmc.ncbi.nlm.nih.gov/articles/PMC9186423/
work page 2022
-
[9]
Spike sorting algorithms and their efficient hardware im- plementation: a comprehensive survey,
T. Zhang, M. Rahimi Azghadi, C. Lammie, A. Amirsoleimani, and R. Genov, “Spike sorting algorithms and their efficient hardware im- plementation: a comprehensive survey,”Journal of Neural Engineering, vol. 20, no. 2, p. 021001, Apr. 2023
work page 2023
-
[10]
Y . Han, Y . Pan, X. Jiang, C. Sestito, S. Agwa, T. Prodromakis, and S. Wang, “L-Sort: On-chip Spike Sorting with Efficient Median-of-Median Detection and Localization-based Clustering,” Jan. 2025, arXiv:2501.17885 [eess]. [Online]. Available: http://arxiv.org/abs/2501.17885
-
[11]
Validation of adaptive threshold spike detector for neural recording,
P. Watkins, G. Santhanam, K. Shenoy, and R. Harrison, “Validation of adaptive threshold spike detector for neural recording,” inThe 26th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, vol. 2, 2004, pp. 4079–4082
work page 2004
-
[12]
Adaptive threshold neural spike detector using stationary wavelet transform in cmos,
Y . Yang, C. S. Boling, A. M. Kamboh, and A. J. Mason, “Adaptive threshold neural spike detector using stationary wavelet transform in cmos,”IEEE Transactions on Neural Systems and Rehabilitation Engi- neering, vol. 23, no. 6, pp. 946–955, 2015
work page 2015
-
[13]
A 128×128 120 db 15µs latency asynchronous temporal contrast vision sensor,
P. Lichtsteiner, C. Posch, and T. Delbruck, “A 128×128 120 db 15µs latency asynchronous temporal contrast vision sensor,”IEEE Journal of Solid-State Circuits, vol. 43, no. 2, pp. 566–576, 2008
work page 2008
-
[14]
A spiking neural network with continuous local learning for robust online brain machine interface,
E. A. Taeckens and S. Shah, “A spiking neural network with continuous local learning for robust online brain machine interface,”Journal of Neural Engineering, vol. 20, no. 6, p. 066042, Jan. 2024
work page 2024
-
[15]
J. Dethier, P. Nuyujukian, S. I. Ryu, K. V . Shenoy, and K. Boahen, “Design and validation of a real-time spiking-neural-network decoder for brain–machine interfaces,”Journal of Neural Engineering, vol. 10, no. 3, p. 036008, Apr. 2013. [Online]. Available: https://doi.org/10.1088/1741- 2560/10/3/036008
-
[16]
Architectural Exploration of Hybrid Neural Decoders for Neuromorphic Implantable BMI,
V . Mohan, B. Zhou, Z. Wang, A. Bharath, E. Drakakis, and A. Basu, “Architectural Exploration of Hybrid Neural Decoders for Neuromorphic Implantable BMI,” in2025 IEEE International Symposium on Circuits and Systems (ISCAS), May 2025, pp. 1–5. [Online]. Available: https://ieeexplore.ieee.org/abstract/document/11043277
-
[17]
Nonhuman primate reaching with multichannel sensorimotor cortex electrophysiology,
J. E. O’Doherty, M. M. B. Cardoso, J. G. Makin, and P. N. Sabes, “Nonhuman primate reaching with multichannel sensorimotor cortex electrophysiology,” May 2017. [Online]. Available: https://doi.org/10.5281/zenodo.788569
-
[18]
M. Rizk and P. D. Wolf, “Optimizing the Automatic Selection of Spike Detection Thresholds Using a Multiple of the Noise Level,”Medical & biological engineering & computing, vol. 47, no. 9, pp. 955–966, Sep. 2009
work page 2009
-
[19]
M. Sharifshazileh, K. Burelo, J. Sarnthein, and G. Indiveri, “An elec- tronic neuromorphic system for real-time detection of high frequency os- cillations (HFO) in intracranial EEG,”Nature Communications, vol. 12, p. 3095, May 2021
work page 2021
-
[20]
A 0.11–0.38 pj/cycle differential ring oscillator in 65 nm cmos for robust neurocomputing,
X. Zhang, J. Acharya, and A. Basu, “A 0.11–0.38 pj/cycle differential ring oscillator in 65 nm cmos for robust neurocomputing,”IEEE Transactions on Circuits and Systems I: Regular Papers, vol. 68, no. 2, pp. 617–630, 2021
work page 2021
-
[21]
A 10-bit charge-redistribution adc consum- ing 1.9µw at 1 ms/s,
M. van Elzakker, E. van Tuijl, P. Geraedts, D. Schinkel, E. A. M. Klumperink, and B. Nauta, “A 10-bit charge-redistribution adc consum- ing 1.9µw at 1 ms/s,”IEEE Journal of Solid-State Circuits, vol. 45, no. 5, pp. 1007–1015, 2010
work page 2010
-
[22]
An Energy-Efficient Hybrid SAR-VCO\Delta \Sigma Capacitance-to-Digital Converter in 40-nm CMOS,
A. Sanyal and N. Sun, “An Energy-Efficient Hybrid SAR-VCO\Delta \Sigma Capacitance-to-Digital Converter in 40-nm CMOS,”IEEE Jour- nal of Solid-State Circuits, vol. 52, no. 7, pp. 1966–1976, Jul. 2017
work page 1966
-
[23]
Wireless neural recording with single low-power integrated circuit,
R. R. Harrison, R. J. Kier, C. A. Chestek, V . Gilja, P. Nuyujukian, S. Ryu, B. Greger, F. Solzbacher, and K. V . Shenoy, “Wireless neural recording with single low-power integrated circuit,”IEEE Transactions on Neural Systems and Rehabilitation Engineering, vol. 17, no. 4, pp. 322–329, 2009
work page 2009
-
[24]
Neuromorphic noise shaping in coupled neuron populations,
J. Marienborg, T. Lande, and M. Hovin, “Neuromorphic noise shaping in coupled neuron populations,” in2002 IEEE International Symposium on Circuits and Systems. Proceedings (Cat. No.02CH37353), vol. 5, 2002, pp. V–V
work page 2002
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.