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BRAND: a platform for closed-loop experiments with deep network models.

Authors :
Ali YH
Bodkin K
Rigotti-Thompson M
Patel K
Card NS
Bhaduri B
Nason-Tomaszewski SR
Mifsud DM
Hou X
Nicolas C
Allcroft S
Hochberg LR
Au Yong N
Stavisky SD
Miller LE
Brandman DM
Pandarinath C
Source :
Journal of neural engineering [J Neural Eng] 2024 Apr 17; Vol. 21 (2). Date of Electronic Publication: 2024 Apr 17.
Publication Year :
2024

Abstract

Objective. Artificial neural networks (ANNs) are state-of-the-art tools for modeling and decoding neural activity, but deploying them in closed-loop experiments with tight timing constraints is challenging due to their limited support in existing real-time frameworks. Researchers need a platform that fully supports high-level languages for running ANNs (e.g. Python and Julia) while maintaining support for languages that are critical for low-latency data acquisition and processing (e.g. C and C++). Approach. To address these needs, we introduce the Backend for Realtime Asynchronous Neural Decoding (BRAND). BRAND comprises Linux processes, termed nodes , which communicate with each other in a graph via streams of data. Its asynchronous design allows for acquisition, control, and analysis to be executed in parallel on streams of data that may operate at different timescales. BRAND uses Redis, an in-memory database, to send data between nodes, which enables fast inter-process communication and supports 54 different programming languages. Thus, developers can easily deploy existing ANN models in BRAND with minimal implementation changes. Main results. In our tests, BRAND achieved <600 microsecond latency between processes when sending large quantities of data (1024 channels of 30 kHz neural data in 1 ms chunks). BRAND runs a brain-computer interface with a recurrent neural network (RNN) decoder with less than 8 ms of latency from neural data input to decoder prediction. In a real-world demonstration of the system, participant T11 in the BrainGate2 clinical trial (ClinicalTrials.gov Identifier: NCT00912041) performed a standard cursor control task, in which 30 kHz signal processing, RNN decoding, task control, and graphics were all executed in BRAND. This system also supports real-time inference with complex latent variable models like Latent Factor Analysis via Dynamical Systems. Significance. By providing a framework that is fast, modular, and language-agnostic, BRAND lowers the barriers to integrating the latest tools in neuroscience and machine learning into closed-loop experiments.<br /> (Creative Commons Attribution license.)

Details

Language :
English
ISSN :
1741-2552
Volume :
21
Issue :
2
Database :
MEDLINE
Journal :
Journal of neural engineering
Publication Type :
Academic Journal
Accession number :
38579696
Full Text :
https://doi.org/10.1088/1741-2552/ad3b3a