主动电感觉的端到端模型。

IF 8.1 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Current Biology Pub Date : 2025-05-19 Epub Date: 2025-04-23 DOI:10.1016/j.cub.2025.03.074
Denis Turcu, Abigail N Zadina, L F Abbott, Nathaniel B Sawtell
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引用次数: 0

摘要

弱电鱼通过感知自身产生的电场中的扭曲来定位和识别物体。例如,鱼可以确定物体的电阻和电容,即使被感知的场畸变很小,并且高度依赖于物体的距离和大小。人们对这些卓越行为能力背后的神经计算知之甚少。我们测量了电感受器传入的反应,并构建了一个基于过滤器的模型来准确地解释它们。我们还建立了由鱼产生的电场的模型,以及这些电场中由于不同位置的不同电阻和电容的物体而产生的扭曲。将这些模型结合起来,为生成模拟鱼类与各种物体相互作用的大型人工数据集提供了一种准确有效的方法。使用这些集合,我们训练了一个人工神经网络(ANN),代表电感受器下游的大脑区域,以提取物体的3D位置、大小和电特性。在实验测试的行为任务中,模型的表现与真鱼相当。如果人工神经网络分两个阶段运行,性能将得到最大化:首先估计物体的距离和大小,然后使用这些信息提取电学属性。这些结果突出了端到端建模在电感觉研究中的潜力,并提出了一种可以通过实验测试的电感觉处理中的特定形式的模块化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An end-to-end model of active electrosensation.

Weakly electric fish localize and identify objects by sensing distortions in a self-generated electric field. Fish can determine the resistance and capacitance of an object, for example, even though the field distortions being sensed are small and highly dependent on object distance and size. The neural computations underlying these remarkable behavioral capacities are poorly understood. We measured responses of electroreceptor afferents and constructed a filter-based model that accurately accounts for them. We also built models of the electric fields generated by the fish and of the distortions in these fields due to objects of different resistances and capacitances at different locations. Combining these models provides an accurate and efficient method for generating large artificial datasets simulating fish interacting with a wide variety of objects. Using these sets, we trained an artificial neural network (ANN), representing brain areas downstream of the electroreceptors, to extract the 3D location, size, and electrical properties of objects. Model performance is comparable to that of real fish in experimentally tested behavioral tasks. Performance is maximized if the ANN operates in two stages: first estimating object distance and size and then using this information to extract electrical properties. These results highlight the potential of end-to-end modeling for studies of electrosensation and suggest a specific form of modularity in electrosensory processing that can be tested experimentally.

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来源期刊
Current Biology
Current Biology 生物-生化与分子生物学
CiteScore
11.80
自引率
2.20%
发文量
869
审稿时长
46 days
期刊介绍: Current Biology is a comprehensive journal that showcases original research in various disciplines of biology. It provides a platform for scientists to disseminate their groundbreaking findings and promotes interdisciplinary communication. The journal publishes articles of general interest, encompassing diverse fields of biology. Moreover, it offers accessible editorial pieces that are specifically designed to enlighten non-specialist readers.
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