对抗非可识别性来推断运动皮层输入会产生相似的初始和纠正运动编码。

Peter J Malonis, Ankit Vishnubhotla, Nicholas G Hatsopoulos, Jason N MacLean, Matthew T Kaufman
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引用次数: 0

摘要

初级运动皮层(M1)在自主运动中起着核心作用,但它如何整合感觉驱动的纠正指令尚不清楚。我们分析了猕猴M1在连续手臂运动任务中记录的种群活动,目标更新需要在线调整运动计划。利用动态系统的潜在因素分析(LFADS),我们将神经活动分为两个部分:内在动力和影响这些动力的推断外部输入。推断输入时间更强烈地锁定于目标外观而不是运动开始,这表明可变的反应时间反映了输入和持续动态之间的相互作用。推断输入对初始和纠正运动都进行了类似的调整,这表明视觉指示和纠正运动之间的共享输入编码以前被M1动力学所掩盖。由于输入推理可能会受到不可识别性的挑战,其中不同的模型无法区分地拟合数据,因此我们使用具有不同超参数的模型集合来诊断输入是可识别的还是不可识别的。在猴子的数据中,集合产生了一致的相似结果,这表明输入可以被有意义地推断出来,它们的编码不仅仅是模型偏差的结果。这些结果突出了不可识别性的挑战,以及模型集成识别持续动态输入的潜力,至少在某些情况下是这样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combatting nonidentifiability to infer motor cortex inputs yields similar encoding of initial and corrective movements.

Primary motor cortex (M1) plays a central role in voluntary movement, but how it integrates sensory-driven corrective instructions is unclear. We analyzed population activity recorded from M1 of macaques during a sequential arm movement task with target updates requiring online adjustments to the motor plan. Using Latent Factor Analysis via Dynamical Systems (LFADS), we separated neural activity into two components: intrinsic dynamics and inferred external inputs influencing those dynamics. Inferred input timing was more strongly locked to target appearance than to movement onset, suggesting that variable reaction times reflect interactions between inputs and ongoing dynamics. Inferred inputs were tuned similarly for both initial and corrective movements, suggesting a shared input encoding across visually-instructed and corrective movements that was previously obscured by M1 dynamics. Because input inference can suffer from the challenge of nonidentifiability, where different models fit the data indistinguishably, we used ensembles of models with varied hyperparameters to diagnose when inputs are identifiable or nonidentifiable. In the monkey data, ensembles produced consistently similar results, suggesting that inputs could be meaningfully inferred and that their encoding was not simply a result of model bias. These results highlight the challenges of nonidentifiability and the potential of model ensembles to identify inputs in ongoing dynamics, at least in some cases.

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