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A machine learning approach-based array sensor for rapidly predicting the mechanisms of action of antibacterial compounds

机译:一个机器学习的方法阵列传感器快速预测的作用机制抗菌化合物

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摘要

Rapid and accurate identification of the mechanisms of action (MoAs) of antibacterial compounds remains a challenge for the development of antibacterial compounds. Computational inference methods for determining the MoAs of antibacterial compounds have been developed in recent years. In particular, approaches combining machine learning technology enable precisely recognizing the MoA of antibacterial compounds. However, these methods heavily rely on the big data resulting from multiplexed experiments. As such, these approaches tend to produce minimal throughput and are not comprehensive enough to be adapted to widespread industrial applications. Here, we present a machine learning approach based on a customized array sensor for directly identifying the MoAs of antibacterial compounds. The array sensor consists of different two-dimensional nanomaterial fluorescence quenchers with different fluorescence-labeled single-stranded DNAs (ssDNAs). By mapping the subtle difference of the physicochemical properties on the bacterial surface treated with different antibacterial compound stimuli, the array sensor ensures visualizing the recognition process. Moreover, the customized array sensor produces a high volume of the MoA database, overcoming the dependence on big data. We further use the array sensor to build a chemical-response unique “fingerprint” database of MoAs. By combining a neural network-based genetic algorithm (NNGA), we rapidly discriminate the MoAs of four antibiotics with an overall accuracy of 100%. Furthermore, a new screening antibacterial peptide has been discovered and evaluated by our approach for determining the MoA with high accuracy proven by other techniques.
机译:快速、准确的识别(恐鸟)的抗菌作用的机制化合物的发展仍然是一个挑战的抗菌化合物。推理方法确定的恐鸟抗菌化合物已经被开发的最近几年。机器学习技术实现精确认识到农业部的抗菌化合物。然而,这些方法严重依赖大多路复用实验产生的数据。这样,这些方法往往产生最小吞吐量和不够全面适应广泛的工业应用。在这里,我们提出一个机器学习的方法直接基于定制阵列传感器确定抗菌化合物的恐鸟。不同的阵列传感器由二维纳米材料的荧光饮料与不同fluorescence-labeled单链dna (ssDNAs)。物理化学的微妙差异属性在细菌表面处理不同的抗菌化合物刺激,阵列传感器确保可视化识别的过程。产生一个高容量的恐鸟数据库,克服对大数据的依赖。使用阵列传感器构建一个化学反应独特的“指纹”恐鸟的数据库。结合神经网络遗传算法(NNGA),我们迅速的歧视恐鸟四种抗生素的整体精度的100%。抗菌肽已被发现并评估我们的方法来确定恐鸟与其他高精度证明技巧。

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