合成生物神经网络:从当前实施到未来展望

IF 2 4区 生物学 Q2 BIOLOGY Biosystems Pub Date : 2024-02-23 DOI:10.1016/j.biosystems.2024.105164
Ana Halužan Vasle, Miha Moškon
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引用次数: 0

摘要

受人脑生物网络启发的人工神经网络已成为现代计算机科学中改变游戏规则的计算模型。受其广泛应用的启发,合成生物学努力创造其生物对应物,我们称之为合成生物神经网络(SYNBIONNs)。它们在医学、生物传感器、生物技术等领域的应用展现出巨大的潜力和令人兴奋的可能性。迄今为止,许多不同的合成生物网络已被成功构建,但 SYNBIONN 的实现却很少。后者大多基于硅学预训练的神经网络,严重依赖大量的人工输入。在本文中,我们回顾了 SYNBIONN 目前的实现方法和模型。我们简要介绍了在设计和构建感知器和/或多层 SYNBIONNs 方面具有潜力的生物平台。我们探讨了它们未来的可能性,以及成功实现可扩展的、能够在线学习的体内生物神经网络所必须克服的挑战。
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Synthetic biological neural networks: From current implementations to future perspectives

Artificial neural networks, inspired by the biological networks of the human brain, have become game-changing computing models in modern computer science. Inspired by their wide scope of applications, synthetic biology strives to create their biological counterparts, which we denote synthetic biological neural networks (SYNBIONNs). Their use in the fields of medicine, biosensors, biotechnology, and many more shows great potential and presents exciting possibilities. So far, many different synthetic biological networks have been successfully constructed, however, SYNBIONN implementations have been sparse. The latter are mostly based on neural networks pretrained in silico and being heavily dependent on extensive human input. In this paper, we review current implementations and models of SYNBIONNs. We briefly present the biological platforms that show potential for designing and constructing perceptrons and/or multilayer SYNBIONNs. We explore their future possibilities along with the challenges that must be overcome to successfully implement a scalable in vivo biological neural network capable of online learning.

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来源期刊
Biosystems
Biosystems 生物-生物学
CiteScore
3.70
自引率
18.80%
发文量
129
审稿时长
34 days
期刊介绍: BioSystems encourages experimental, computational, and theoretical articles that link biology, evolutionary thinking, and the information processing sciences. The link areas form a circle that encompasses the fundamental nature of biological information processing, computational modeling of complex biological systems, evolutionary models of computation, the application of biological principles to the design of novel computing systems, and the use of biomolecular materials to synthesize artificial systems that capture essential principles of natural biological information processing.
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