Treffer: Partial Domain Adaptation for Stable Neural Decoding in Disentangled Latent Subspaces.

Title:
Partial Domain Adaptation for Stable Neural Decoding in Disentangled Latent Subspaces.
Authors:
Source:
IEEE transactions on bio-medical engineering [IEEE Trans Biomed Eng] 2026 Jan; Vol. 73 (1), pp. 78-89.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: Institute Of Electrical And Electronics Engineers Country of Publication: United States NLM ID: 0012737 Publication Model: Print Cited Medium: Internet ISSN: 1558-2531 (Electronic) Linking ISSN: 00189294 NLM ISO Abbreviation: IEEE Trans Biomed Eng Subsets: MEDLINE
Imprint Name(s):
Publication: New York, NY : Institute Of Electrical And Electronics Engineers
Original Publication: New York, IEEE Professional Technical Group on Bio-Medical Engineering.
Entry Date(s):
Date Created: 20250616 Date Completed: 20251229 Latest Revision: 20251230
Update Code:
20251230
DOI:
10.1109/TBME.2025.3577222
PMID:
40522806
Database:
MEDLINE

Weitere Informationen

Objective: Brain-Computer Interfaces (BCI) have demonstrated significant potential in neural rehabilitation. However, the variability of non-stationary neural signals often leads to instabilities of behavioral decoding, posing critical obstacles to chronic applications. Domain adaptation technique offers a promising solution by obtaining the invariant neural representation against non-stationary signals through distribution alignment. Here, we demonstrate domain adaptation that directly applied to neural data may lead to unstable performance, mostly due to the common presence of task-irrelevant components within neural signals. To address this, we aim to identify task-relevant components to achieve more stable neural alignment.
Methods: In this work, we propose a novel partial domain adaptation (PDA) framework that performs neural alignment within the task-relevant latent subspace. With pre-aligned short-time windows as input, the proposed latent space is constructed based on a causal dynamical system, enabling more flexible neural decoding. Within this latent space, task-relevant dynamical features are disentangled from task-irrelevant components through VAE-based representation learning and adversarial alignment. The aligned task-relevant features are then employed for neural decoding across domains.
Results: Using Lyapunov theory, we analytically validated the improved stability of late our neural representations through alignment. Experiments with various neural datasets verified that PDA significantly enhanced the cross-session decoding performance.
Conclusion: PDA successfully achieved stable neural representations across different experimental days, enabling reliable long-term decoding.
Significance: Our approach provides a novel aspect for addressing the challenge of chronic reliability in real-world BCI deployments.