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趋化受体配体的逻辑回归为细菌对其识别提供线索。

Logistic Regression of Ligands of Chemotaxis Receptors Offers Clues about Their Recognition by Bacteria.

作者信息

Sagawa Takashi, Mashiko Ryota, Yokota Yusuke, Naruse Yasushi, Okada Masato, Kojima Hiroaki

机构信息

National Institute of Information and Communications Technology (NICT), Advanced ICT Research Institute, Kobe, Japan.

Department of Bioengineering, Nagaoka University of Technology, Nagaoka, Japan.

出版信息

Front Bioeng Biotechnol. 2018 Jan 22;5:88. doi: 10.3389/fbioe.2017.00088. eCollection 2017.

Abstract

Because of relative simplicity of signal transduction pathway, bacterial chemotaxis sensory systems have been expected to be applied to biosensor. Tar and Tsr receptors mediate chemotaxis of and have been studied extensively as models of chemoreception by bacterial two-transmembrane receptors. Such studies are typically conducted using two canonical ligands: l-aspartate for Tar and l-serine for Tsr. However, Tar and Tsr also recognize various analogs of aspartate and serine; it remains unknown whether the mechanism by which the canonical ligands are recognized is also common to the analogs. Moreover, in terms of engineering, it is important to know a single species of receptor can recognize various ligands to utilize bacterial receptor as the sensor for wide range of substances. To answer these questions, we tried to extract the features that are common to the recognition of the different analogs by constructing classification models based on machine-learning. We computed 20 physicochemical parameters for each of 38 well-known attractants that act as chemoreception ligands, and 15 known non-attractants. The classification models were generated by utilizing one or more of the seven physicochemical properties as descriptors. From the classification models, we identified the most effective physicochemical parameter for classification: the minimum electron potential. This descriptor that occurred repeatedly in classification models with the highest accuracies, This descriptor used alone could accurately classify 42/53 of compounds. Among the 11 misclassified compounds, eight contained two carboxyl groups, which is analogous to the structure of characteristic of aspartate analog. When considered separately, 16 of the 17 aspartate analogs could be classified accurately based on the distance between their two carboxyl groups. As shown in these results, we succeed to predict the ligands for bacterial chemoreceptors using only a few descriptors; single descriptor for single receptor. This result might be due to the relatively simple topology of bacterial two-transmembrane receptors compared to the G-protein-coupled receptors of seven-transmembrane receptors. Moreover, this distance between carboxyl groups correlated with the receptor binding affinity of the aspartate analogs. In view of this correlation, we propose a common mechanism underlying ligand recognition by Tar of compounds with two carboxyl groups.

摘要

由于信号转导途径相对简单,细菌趋化性传感系统有望应用于生物传感器。Tar和Tsr受体介导趋化作用,并作为细菌双跨膜受体化学感受的模型被广泛研究。此类研究通常使用两种典型配体进行:Tar的L-天冬氨酸和Tsr的L-丝氨酸。然而,Tar和Tsr也能识别天冬氨酸和丝氨酸的各种类似物;尚不清楚识别典型配体的机制是否也适用于这些类似物。此外,在工程方面,了解单一物种的受体是否能识别多种配体对于将细菌受体用作多种物质的传感器很重要。为了回答这些问题,我们试图通过构建基于机器学习的分类模型来提取不同类似物识别的共同特征。我们为38种用作化学感受配体的著名引诱剂和15种已知的非引诱剂计算了20种物理化学参数。分类模型是通过使用七种物理化学性质中的一种或多种作为描述符生成的。从分类模型中,我们确定了分类最有效的物理化学参数:最小电子势。这个描述符在准确率最高的分类模型中反复出现,单独使用这个描述符可以准确地对53种化合物中的42种进行分类。在11种误分类的化合物中,有8种含有两个羧基,这类似于天冬氨酸类似物的特征结构。单独考虑时,17种天冬氨酸类似物中的16种可以根据其两个羧基之间的距离准确分类。如这些结果所示,我们仅使用几个描述符就成功预测了细菌化学感受器的配体;单个受体使用单个描述符。这一结果可能是由于与七跨膜的G蛋白偶联受体相比,细菌双跨膜受体的拓扑结构相对简单。此外,羧基之间的距离与天冬氨酸类似物的受体结合亲和力相关。鉴于这种相关性,我们提出了Tar识别具有两个羧基的化合物的配体的共同机制。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/eaee/5786873/88cde5267361/fbioe-05-00088-g001.jpg

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