Bayesian decoding and its application in reading out spatial memory from neural ensembles.

IF 3.8
Ning Wang, Xinyi Deng, Nan Zhu, Xueling Wang, Yimeng Wang, Biao Sun, Chenguang Zheng
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引用次数: 0

Abstract

Spatial memory serves as a foundation to establish cognitive map, supporting navigation and decision-making processes across species. Essential brain regions such as the hippocampus and entorhinal cortex enable these functions through spatially tuned neurons, particularly place cells, which encode an animal's precise location. The continuous spatial trajectories are then able to be represented by temporally sequential firing of these cells at neural ensemble level. Bayesian frameworks are powerful tools for reconstructing such "mind travel". In this article, we focus on the principles and advances of Bayesian decoding methods for extracting spatial memory information from neural ensembles. First, we review non-recursive approaches and recursive point process filters, paying special attention to clusterless decoding strategies. We also discuss emerging approaches such as neural manifolds within Bayesian estimation. Next, we discuss the advanced application of Bayesian decoding in understanding the neuronal coding mechanisms of memory consolidation and planning, and in supporting computational model establishment and closed-loop manipulation. Finally, we discuss the limitations and challenges of recent approaches, highlighting the promising strategies that could raise the decoding efficiency and adapt the growing scale of neural data. We believe that the developing of Bayesian decoding approach would significantly benefit for techniques and applications of memory-related brain machine interface.

贝叶斯解码及其在神经系统空间记忆读出中的应用。
空间记忆是建立认知地图的基础,支持跨物种的导航和决策过程。诸如海马体和内嗅皮层之类的重要大脑区域通过空间调谐神经元,特别是位置细胞来实现这些功能,位置细胞编码动物的精确位置。连续的空间轨迹可以用这些细胞在神经集合水平上的时序放电来表示。贝叶斯框架是重建这种“心灵旅行”的强大工具。在本文中,我们重点介绍了贝叶斯解码方法从神经系统中提取空间记忆信息的原理和进展。首先,我们回顾了非递归方法和递归点处理滤波器,特别关注了无聚类解码策略。我们还讨论了新兴的方法,如贝叶斯估计中的神经流形。接下来,我们讨论了贝叶斯解码在理解记忆巩固和规划的神经元编码机制以及支持计算模型建立和闭环操作方面的高级应用。最后,我们讨论了最近方法的局限性和挑战,强调了有前途的策略,可以提高解码效率和适应不断增长的神经数据规模。我们相信贝叶斯解码方法的发展将对记忆相关的脑机接口技术和应用产生重大的促进作用。
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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