Smith Anne C, Frank Loren M, Wirth Sylvia, Yanike Marianna, Hu Dan, Kubota Yasuo, Graybiel Ann M, Suzuki Wendy A, Brown Emery N
Neuroscience Statistics Research Laboratory, Department of Anesthesia and Critical Care, Massachusetts General Hospital, Boston, Massachusetts 02114-2696, USA.
J Neurosci. 2004 Jan 14;24(2):447-61. doi: 10.1523/JNEUROSCI.2908-03.2004.
Understanding how an animal's ability to learn relates to neural activity or is altered by lesions, different attentional states, pharmacological interventions, or genetic manipulations are central questions in neuroscience. Although learning is a dynamic process, current analyses do not use dynamic estimation methods, require many trials across many animals to establish the occurrence of learning, and provide no consensus as how best to identify when learning has occurred. We develop a state-space model paradigm to characterize learning as the probability of a correct response as a function of trial number (learning curve). We compute the learning curve and its confidence intervals using a state-space smoothing algorithm and define the learning trial as the first trial on which there is reasonable certainty (>0.95) that a subject performs better than chance for the balance of the experiment. For a range of simulated learning experiments, the smoothing algorithm estimated learning curves with smaller mean integrated squared error and identified the learning trials with greater reliability than commonly used methods. The smoothing algorithm tracked easily the rapid learning of a monkey during a single session of an association learning experiment and identified learning 2 to 4 d earlier than accepted criteria for a rat in a 47 d procedural learning experiment. Our state-space paradigm estimates learning curves for single animals, gives a precise definition of learning, and suggests a coherent statistical framework for the design and analysis of learning experiments that could reduce the number of animals and trials per animal that these studies require.
了解动物的学习能力如何与神经活动相关,或如何因损伤、不同的注意力状态、药物干预或基因操作而改变,是神经科学的核心问题。尽管学习是一个动态过程,但目前的分析并未使用动态估计方法,需要对许多动物进行多次试验才能确定学习的发生,并且对于如何最好地确定学习何时发生尚无共识。我们开发了一种状态空间模型范式,将学习表征为正确反应概率与试验次数的函数(学习曲线)。我们使用状态空间平滑算法计算学习曲线及其置信区间,并将学习试验定义为在该试验中,有合理的确定性(>0.95)表明受试者在实验剩余部分的表现优于随机水平的第一次试验。对于一系列模拟学习实验,与常用方法相比,平滑算法估计的学习曲线具有更小的平均积分平方误差,并能更可靠地识别学习试验。在关联学习实验的单个会话中,平滑算法轻松追踪了猴子的快速学习,并比在47天程序学习实验中大鼠的公认标准提前2至4天识别出学习。我们的状态空间范式估计单个动物的学习曲线,给出学习的精确定义,并为学习实验的设计和分析提出一个连贯的统计框架,这可以减少这些研究所需的动物数量和每只动物的试验次数。