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基于行为的神经科学建模与计算方法。

Behaviorally based modeling and computational approaches to neuroscience.

作者信息

Reeke G N, Sporns O

机构信息

Neurosciences Institute, New York, NY 10021.

出版信息

Annu Rev Neurosci. 1993;16:597-623. doi: 10.1146/annurev.ne.16.030193.003121.

Abstract

The almost incredible advances that have recently occurred in the power of computers available to scientists in all disciplines have encouraged an explosion of neural network and behavioral models. Some of these have been constrained more by the imagination of the programmer than by rude biological facts. Their relevance for the experimental neuroscientist thus varies from case to case. Some models (e.g. Grillner's model of lamprey swimming movements) are so closely based on known neuroanatomy and neurophysiology that it becomes possible to generate and test precise experimental predictions. Other models (such as MURPHY and NOMAD) use neurobiological principles in their architectures, but do not portray any particular organism. Although it is harder to relate the study of these models of the study of real animals, they fulfill an important explanatory role. They make possible insights into how behavior is controlled by neuronal activity that would be unobtainable in real animals using present methods. Thus, even the excesses of neural modeling have provided a useful impetus to what is undoubtedly a most promising approach to integrating data from the various disciplines concerned with behavior and the mind. The problems have been pointed out by many authors (see citations in our introduction), and a phase of more critical evaluation appears to have begun. We hope that our brief survey of models based on widely different theoretical approaches, but all aimed at explaining behavior, will encourage critical comparisons to be made. As in more mature fields, such as thermodynamics, we can expect that more complete models will force an evaluation of theoretical hypotheses against the entire body of available evidence, rather than just a few pertinent test cases. Such evaluation will make possible a much more rigorous exclusion of invalid or inconsistent theoretical ideas. From such studies, a much smaller, but more robust, set of basic principles can be expected to emerge. From the perspective afforded by our own modeling studies, it appears essential that modeling be informed by a general theory of brain function. In this work, the theory of neuronal group selection provides a useful basis for further work by virtue of its consistency with basic evolutionary and physiological principles and the power of the selection paradigm to shape neural networks in behaviorally adaptive directions.

摘要

近年来,各学科科学家所能使用的计算机性能取得了几乎令人难以置信的进步,这推动了神经网络和行为模型的大量涌现。其中一些模型更多地受到程序员想象力的限制,而非粗糙的生物学事实的限制。因此,它们对实验神经科学家的相关性因情况而异。一些模型(如格里尔纳的七鳃鳗游泳运动模型)紧密基于已知的神经解剖学和神经生理学,以至于能够生成并测试精确的实验预测。其他模型(如墨菲和诺玛德)在其架构中运用神经生物学原理,但并不描绘任何特定的生物体。尽管将这些模型的研究与真实动物的研究联系起来更难,但它们发挥着重要的解释作用。它们使人们有可能洞察神经元活动如何控制行为,而这是使用当前方法在真实动物身上无法获得的。因此,即使是神经建模的过度发展也为无疑是整合与行为和心智相关的各学科数据的最有前途的方法提供了有益的推动。许多作者已经指出了这些问题(见我们引言中的参考文献),一个更具批判性评估的阶段似乎已经开始。我们希望我们基于广泛不同理论方法但都旨在解释行为的模型的简要综述,将鼓励进行批判性比较。正如在热力学等更成熟的领域一样,我们可以预期更完整的模型将促使根据所有可用证据而非仅仅几个相关测试案例来评估理论假设。这样的评估将使更严格地排除无效或不一致的理论观点成为可能。从这些研究中,有望出现一套规模更小但更稳健的基本原则。从我们自己的建模研究提供的视角来看,似乎至关重要的是,建模应以大脑功能的一般理论为依据。在这项工作中,神经元群选择理论凭借其与基本进化和生理原则的一致性以及选择范式在行为适应性方向塑造神经网络的能力,为进一步的工作提供了有用的基础。

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