Revealing gene regulation-based neural network computing in bacteria.

IF 2.4 Q3 BIOPHYSICS Biophysical reports Pub Date : 2023-08-04 eCollection Date: 2023-09-13 DOI:10.1016/j.bpr.2023.100118
Samitha S Somathilaka, Sasitharan Balasubramaniam, Daniel P Martins, Xu Li
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Abstract

Bacteria are known to interpret a range of external molecular signals that are crucial for sensing environmental conditions and adapting their behaviors accordingly. These external signals are processed through a multitude of signaling transduction networks that include the gene regulatory network (GRN). From close observation, the GRN resembles and exhibits structural and functional properties that are similar to artificial neural networks. An in-depth analysis of gene expression dynamics further provides a new viewpoint of characterizing the inherited computing properties underlying the GRN of bacteria despite being non-neuronal organisms. In this study, we introduce a model to quantify the gene-to-gene interaction dynamics that can be embedded in the GRN as weights, converting a GRN to gene regulatory neural network (GRNN). Focusing on Pseudomonas aeruginosa, we extracted the GRNN associated with a well-known virulence factor, pyocyanin production, using an introduced weight extraction technique based on transcriptomic data and proving its computing accuracy using wet-lab experimental data. As part of our analysis, we evaluated the structural changes in the GRNN based on mutagenesis to determine its varying computing behavior. Furthermore, we model the ecosystem-wide cell-cell communications to analyze its impact on computing based on environmental as well as population signals, where we determine the impact on the computing reliability. Subsequently, we establish that the individual GRNNs can be clustered to collectively form computing units with similar behaviors to single-layer perceptrons with varying sigmoidal activation functions spatio-temporally within an ecosystem. We believe that this will lay the groundwork toward molecular machine learning systems that can see artificial intelligence move toward non-silicon devices, or living artificial intelligence, as well as giving us new insights into bacterial natural computing.

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揭示细菌中基于基因调控的神经网络计算
众所周知,细菌能够解读一系列外部分子信号,这些信号对于感知环境条件并相应调整其行为至关重要。这些外部信号通过包括基因调控网络(GRN)在内的多种信号转导网络进行处理。仔细观察,基因调控网络的结构和功能与人工神经网络相似。对基因表达动态的深入分析进一步提供了一个新的视角,以描述细菌 GRN 的遗传计算特性,尽管它是非神经元生物。在本研究中,我们引入了一个模型来量化基因与基因之间的相互作用动态,并将其作为权重嵌入到 GRN 中,从而将 GRN 转换为基因调控神经网络(GRNN)。我们以铜绿假单胞菌为研究对象,利用一种基于转录组数据的权重提取技术,提取了与一种著名毒力因子--焦花青素产生相关的基因调控神经网络,并利用湿实验室实验数据证明了该技术的计算精度。作为分析的一部分,我们评估了基于诱变的 GRNN 结构变化,以确定其不同的计算行为。此外,我们还对整个生态系统的细胞间通信进行建模,分析其对基于环境和种群信号的计算的影响,从而确定其对计算可靠性的影响。随后,我们确定单个 GRNNs 可以集群,共同形成计算单元,其行为类似于生态系统中具有不同时空西格玛激活函数的单层感知器。我们相信,这将为分子机器学习系统奠定基础,使人工智能向非硅设备或活的人工智能发展,并为我们提供细菌自然计算的新见解。
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来源期刊
Biophysical reports
Biophysical reports Biophysics
CiteScore
2.40
自引率
0.00%
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0
审稿时长
75 days
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