Population Transformer: Learning Population-level Representations of Neural Activity.

ArXiv Pub Date : 2025-03-28
Geeling Chau, Christopher Wang, Sabera Talukder, Vighnesh Subramaniam, Saraswati Soedarmadji, Yisong Yue, Boris Katz, Andrei Barbu
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Abstract

We present a self-supervised framework that learns population-level codes for arbitrary ensembles of neural recordings at scale. We address key challenges in scaling models with neural time-series data, namely, sparse and variable electrode distribution across subjects and datasets. The Population Transformer (PopT) stacks on top of pretrained temporal embeddings and enhances downstream decoding by enabling learned aggregation of multiple spatially-sparse data channels. The pretrained PopT lowers the amount of data required for downstream decoding experiments, while increasing accuracy, even on held-out subjects and tasks. Compared to end-to-end methods, this approach is computationally lightweight, while achieving similar or better decoding performance. We further show how our framework is generalizable to multiple time-series embeddings and neural data modalities. Beyond decoding, we interpret the pretrained and fine-tuned PopT models to show how they can be used to extract neuroscience insights from large amounts of data. We release our code as well as a pretrained PopT to enable off-the-shelf improvements in multi-channel intracranial data decoding and interpretability. Code is available at https://github.com/czlwang/PopulationTransformer.

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群体转换器:学习颅内活动的群体级表征
我们提出了一种自监督框架,它可以大规模学习颅内神经记录的群体级编码,从而释放表征学习对神经科学记录模式的益处。Population Transformer (PopT) 降低了解码实验所需的数据量,同时提高了准确性,即使是在从未见过的科目和任务上也是如此。我们在开发 PopT 的过程中解决了两个关键难题:稀疏的电极分布和不同患者的电极位置。PopT 堆叠在预训练表征之上,通过对多个空间稀疏数据通道进行学习聚合,增强了下游任务的能力。除解码外,我们还对预训练的 PopT 和微调模型进行了解释,以展示如何利用它提供从海量数据中学到的神经科学见解。我们发布了经过预训练的 PopT,以实现对多通道颅内数据解码和可解释性的现成改进,代码可在 https://github.com/czlwang/PopulationTransformer 上获取。
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