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隐马尔可夫模型比基于 PSTH 的方法更能预测未来的选择。

Hidden Markov Models Predict the Future Choice Better Than a PSTH-Based Method.

机构信息

Department of Physiology and Pharmacology, Sapienza University of Rome, Rome 00185, Italy, and Instituto de Neurociencias de Alicante, Consejo Superior de Investigaciones Científicas-Universidad Miguel Hernández de Elche, Sant Joan d'Alacant, Alicante 03550, Spain

Department of Physiology and Pharmacology, Sapienza University of Rome, Rome 00185, Italy

出版信息

Neural Comput. 2019 Sep;31(9):1874-1890. doi: 10.1162/neco_a_01216. Epub 2019 Jul 23.

Abstract

Beyond average firing rate, other measurable signals of neuronal activity are fundamental to an understanding of behavior. Recently, hidden Markov models (HMMs) have been applied to neural recordings and have described how neuronal ensembles process information by going through sequences of different states. Such collective dynamics are impossible to capture by just looking at the average firing rate. To estimate how well HMMs can decode information contained in single trials, we compared HMMs with a recently developed classification method based on the peristimulus time histogram (PSTH). The accuracy of the two methods was tested by using the activity of prefrontal neurons recorded while two monkeys were engaged in a strategy task. In this task, the monkeys had to select one of three spatial targets based on an instruction cue and on their previous choice. We show that by using the single trial's neural activity in a period preceding action execution, both models were able to classify the monkeys' choice with an accuracy higher than by chance. Moreover, the HMM was significantly more accurate than the PSTH-based method, even in cases in which the HMM performance was low, although always above chance. Furthermore, the accuracy of both methods was related to the number of neurons exhibiting spatial selectivity within an experimental session. Overall, our study shows that neural activity is better described when not only the mean activity of individual neurons is considered and that therefore, the study of other signals rather than only the average firing rate is fundamental to an understanding of the dynamics of neuronal ensembles.

摘要

除了平均发放率之外,神经元活动的其他可测量信号对于理解行为也是至关重要的。最近,隐马尔可夫模型(HMMs)已经被应用于神经记录,并描述了神经元集合如何通过经历不同状态的序列来处理信息。这种集体动力学是仅仅通过观察平均发放率无法捕捉到的。为了估计 HMM 可以在多大程度上解码单个试验中包含的信息,我们将 HMM 与最近基于脉冲时间直方图(PSTH)开发的分类方法进行了比较。通过使用两只猴子在进行策略任务时记录的前额叶神经元的活动,测试了这两种方法的准确性。在这个任务中,猴子必须根据指令线索和之前的选择从三个空间目标中选择一个。我们表明,通过在动作执行前的单个试验的神经活动,这两种模型都能够以高于随机的准确性对猴子的选择进行分类。此外,即使在 HMM 性能较低的情况下,HMM 也明显比基于 PSTH 的方法更准确,尽管总是高于随机水平。此外,这两种方法的准确性都与在实验过程中表现出空间选择性的神经元数量有关。总的来说,我们的研究表明,当不仅考虑单个神经元的平均活动时,神经活动可以得到更好的描述,因此,研究其他信号而不仅仅是平均发放率对于理解神经元集合的动力学是至关重要的。

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