生物计算:基于吸引子的形式主义的局限性和对瞬态的需求

Daniel Koch, Akhilesh Nandan, Gayathri Ramesan, Aneta Koseska
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引用次数: 0

摘要

从单细胞到高等脊椎动物,生命系统都会通过细胞表面受体或感觉器官等感知源源不断的非稳态输入信息。它们利用复杂的分子或神经元网络将这些时变的、多感官的、通常是嘈杂的信息与记忆整合在一起,从而产生了超越简单刺激-反应关联的各种反应,包括回避行为、生命学习或社会交往。从广义上讲,这些过程可以理解为一种生物计算。以生物计算的一般特征为基础,例如计算的实时响应性或鲁棒性和灵活性,我们强调了当前基于吸引子的框架在理解生物系统计算方面的局限性。我们认为,基于远离吸引子的瞬态动力学的框架更适合描述神经元和信号网络进行的计算。我们特别讨论了在临界状态下出现的来自幽灵状态的准稳定瞬态动力学如何具有发展计算综合框架的潜力,它可以帮助我们理解生命系统是如何积极处理信息并从不断变化的环境中学习的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biological computations: limitations of attractor-based formalisms and the need for transients
Living systems, from single cells to higher vertebrates, receive a continuous stream of non-stationary inputs that they sense, e.g., via cell surface receptors or sensory organs. Integrating these time-varying, multi-sensory, and often noisy information with memory using complex molecular or neuronal networks, they generate a variety of responses beyond simple stimulus-response association, including avoidance behavior, life-long-learning or social interactions. In a broad sense, these processes can be understood as a type of biological computation. Taking as a basis generic features of biological computations, such as real-time responsiveness or robustness and flexibility of the computation, we highlight the limitations of the current attractor-based framework for understanding computations in biological systems. We argue that frameworks based on transient dynamics away from attractors are better suited for the description of computations performed by neuronal and signaling networks. In particular, we discuss how quasi-stable transient dynamics from ghost states that emerge at criticality have a promising potential for developing an integrated framework of computations, that can help us understand how living system actively process information and learn from their continuously changing environment.
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