生物计算:心脏和捕蝇器

IF 1.8 4区 生物学 Q3 BIOPHYSICS Journal of Biological Physics Pub Date : 2022-01-28 DOI:10.1007/s10867-021-09590-9
Kay L. Kirkpatrick
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引用次数: 2

摘要

最初的计算机是人们使用算法来得到数学结果,比如火箭轨迹。在数字计算机发明之后,人们通过与计算机和现在的人工神经网络的类比来广泛理解大脑,它们有优点也有缺点。我们定义并研究了一种更适合生物系统的新型计算,称为生物计算,一种机械物理计算的自然适应。神经系统当然是生物计算机,我们关注的是生物计算的一些边缘案例,比如心脏和捕蝇器。心脏的计算能力大约相当于一个鼻涕虫,而且它的大部分计算都发生在它的4万个神经元之外。捕蝇器的计算能力相当于龙虾的神经节。这篇文章通过阐述经典可计算性理论可能忽略生物学复杂性的方式,推进了神经科学领域的基本辩论。通过这种计算的重构,我们为解决人类和机器学习之间的脱节铺平了道路。
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Biological computation: hearts and flytraps

The original computers were people using algorithms to get mathematical results such as rocket trajectories. After the invention of the digital computer, brains have been widely understood through analogies with computers and now artificial neural networks, which have strengths and drawbacks. We define and examine a new kind of computation better adapted to biological systems, called biological computation, a natural adaptation of mechanistic physical computation. Nervous systems are of course biological computers, and we focus on some edge cases of biological computing, hearts and flytraps. The heart has about the computing power of a slug, and much of its computing happens outside of its forty thousand neurons. The flytrap has about the computing power of a lobster ganglion. This account advances fundamental debates in neuroscience by illustrating ways that classical computability theory can miss complexities of biology. By this reframing of computation, we make way for resolving the disconnect between human and machine learning.

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来源期刊
Journal of Biological Physics
Journal of Biological Physics 生物-生物物理
CiteScore
3.00
自引率
5.60%
发文量
20
审稿时长
>12 weeks
期刊介绍: Many physicists are turning their attention to domains that were not traditionally part of physics and are applying the sophisticated tools of theoretical, computational and experimental physics to investigate biological processes, systems and materials. The Journal of Biological Physics provides a medium where this growing community of scientists can publish its results and discuss its aims and methods. It welcomes papers which use the tools of physics in an innovative way to study biological problems, as well as research aimed at providing a better understanding of the physical principles underlying biological processes.
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