Towards a "universal translator" for neural dynamics at single-cell, single-spike resolution.

Yizi Zhang, Yanchen Wang, Donato M Jiménez-Benetó, Zixuan Wang, Mehdi Azabou, Blake Richards, Renee Tung, Olivier Winter, Eva Dyer, Liam Paninski, Cole Hurwitz
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Abstract

Neuroscience research has made immense progress over the last decade, but our understanding of the brain remains fragmented and piecemeal: the dream of probing an arbitrary brain region and automatically reading out the information encoded in its neural activity remains out of reach. In this work, we build towards a first foundation model for neural spiking data that can solve a diverse set of tasks across multiple brain areas. We introduce a novel self-supervised modeling approach for population activity in which the model alternates between masking out and reconstructing neural activity across different time steps, neurons, and brain regions. To evaluate our approach, we design unsupervised and supervised prediction tasks using the International Brain Laboratory repeated site dataset, which is comprised of Neuropixels recordings targeting the same brain locations across 48 animals and experimental sessions. The prediction tasks include single-neuron and region-level activity prediction, forward prediction, and behavior decoding. We demonstrate that our multi-task-masking (MtM) approach significantly improves the performance of current state-of-the-art population models and enables multitask learning. We also show that by training on multiple animals, we can improve the generalization ability of the model to unseen animals, paving the way for a foundation model of the brain at single-cell, single-spike resolution. Project page and code: https://ibl-mtm.github.io/.

迈向单细胞、单尖峰分辨率的神经动力学“通用翻译器”。
神经科学研究在过去十年中取得了巨大的进步,但我们对大脑的理解仍然是支离破碎的:探测任意一个大脑区域并自动读出其神经活动编码信息的梦想仍然遥不可及。在这项工作中,我们建立了神经脉冲数据的第一个基础模型,可以解决跨多个大脑区域的各种任务。我们介绍了一种新的群体活动自监督建模方法,其中模型在不同的时间步长、神经元和大脑区域之间交替掩盖和重建神经活动。为了评估我们的方法,我们使用国际脑实验室重复站点数据集设计了无监督和有监督的预测任务,该数据集由48只动物和实验会话中针对相同大脑位置的神经像素记录组成。预测任务包括单神经元和区域级活动预测、前向预测和行为解码。我们证明了我们的多任务掩蔽(MtM)方法显着提高了当前最先进的人口模型的性能,并实现了多任务学习。我们还表明,通过对多个动物进行训练,我们可以提高模型对未见过的动物的泛化能力,为单细胞、单尖峰分辨率的大脑基础模型铺平道路。项目页面和代码:https://ibl-mtm.github.io/。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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