Qiushi Academy for Advanced Studies, Zhejiang University, Hangzhou, China.
Nanhu Brain-Computer Interface Institute, Hangzhou, China.
Elife. 2024 Aug 9;12:RP87881. doi: 10.7554/eLife.87881.
In motor cortex, behaviorally relevant neural responses are entangled with irrelevant signals, which complicates the study of encoding and decoding mechanisms. It remains unclear whether behaviorally irrelevant signals could conceal some critical truth. One solution is to accurately separate behaviorally relevant and irrelevant signals at both single-neuron and single-trial levels, but this approach remains elusive due to the unknown ground truth of behaviorally relevant signals. Therefore, we propose a framework to define, extract, and validate behaviorally relevant signals. Analyzing separated signals in three monkeys performing different reaching tasks, we found neural responses previously considered to contain little information actually encode rich behavioral information in complex nonlinear ways. These responses are critical for neuronal redundancy and reveal movement behaviors occupy a higher-dimensional neural space than previously expected. Surprisingly, when incorporating often-ignored neural dimensions, behaviorally relevant signals can be decoded linearly with comparable performance to nonlinear decoding, suggesting linear readout may be performed in motor cortex. Our findings prompt that separating behaviorally relevant signals may help uncover more hidden cortical mechanisms.
在运动皮层中,与行为相关的神经反应与不相关的信号交织在一起,这使得编码和解码机制的研究变得复杂。目前尚不清楚不与行为相关的信号是否可能隐藏一些关键的真相。一种解决方案是在单个神经元和单个试验水平上准确地分离与行为相关和不相关的信号,但由于与行为相关的信号的未知真实情况,这种方法仍然难以实现。因此,我们提出了一个定义、提取和验证与行为相关的信号的框架。在三只猴子执行不同的抓握任务时分析分离的信号,我们发现以前被认为包含很少信息的神经反应实际上以复杂的非线性方式编码了丰富的行为信息。这些反应对于神经元冗余至关重要,并揭示了运动行为占据比以前预期更高维的神经空间。令人惊讶的是,当纳入通常被忽略的神经维度时,与行为相关的信号可以用与非线性解码相当的性能进行线性解码,这表明运动皮层中可能进行线性读取。我们的发现促使人们认为,分离与行为相关的信号可能有助于揭示更多隐藏的皮层机制。