A machine learning framework for the prediction of antibacterial capacity of silver nanoparticles

Priya Mary, A Mujeeb
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引用次数: 0

Abstract

The biocompatibility property has made silver nanoparticles powerful candidates for various nanomedical applications. Research interest in silver nanoparticles as a viable alternative to antibiotics is gaining more attention due to their enhanced antimicrobial activity, better antibacterial activity and low cytotoxicity. Machine Learning (ML) has become a state-of-the-art analytic and modelling tool in recent times, due to its prediction capabilities and increased accuracy of the results. In this work, we present machine-learning techniques to predict the antibacterial capacity of silver nanoparticles and extended the work on antifungal studies. In the first phase, we reviewed 50 articles and collected data points for training the model, which consists of features such as core size, shape of the nanoparticle, dosage, bacteria/fungi species and zone of inhibition (ZOI). Then, we trained the data using eight different machine-learning regression algorithms and validated the models' performance using four metrics such as RMSE, MSE, MAE and R2. Furthermore, the importance of features used in the prediction models has been evaluated. The feature importance revealed that the core size of silver nanoparticles is the prominent feature in the prediction of the antibacterial capacity. The optimum model for the prediction of antibacterial and antifungal activity has been identified. Finally, the model’s validation has also been demonstrated. This work enables researchers to utilize Machine Learning which in turn can address the challenges of time consumption, and cost in laboratory experiments while minimising the reliance on trial and error.
预测银纳米粒子抗菌能力的机器学习框架
银纳米粒子的生物相容性使其成为各种纳米医学应用的有力候选材料。由于银纳米粒子具有更强的抗菌活性、更好的抗菌效果和较低的细胞毒性,其作为抗生素的可行替代品的研究兴趣正日益受到关注。近年来,机器学习(ML)因其预测能力和更高的结果准确性,已成为最先进的分析和建模工具。在这项工作中,我们提出了机器学习技术来预测银纳米粒子的抗菌能力,并扩展了抗真菌研究工作。在第一阶段,我们查阅了 50 篇文章,收集了用于训练模型的数据点,这些数据点包括核心大小、纳米粒子形状、剂量、细菌/真菌种类和抑菌区(ZOI)等特征。然后,我们使用八种不同的机器学习回归算法对数据进行了训练,并使用 RMSE、MSE、MAE 和 R2 等四个指标验证了模型的性能。此外,还评估了预测模型中使用的特征的重要性。特征重要性表明,银纳米粒子的核心尺寸是预测抗菌能力的主要特征。此外,还确定了预测抗菌和抗真菌活性的最佳模型。最后,还对模型进行了验证。这项工作使研究人员能够利用机器学习,进而解决实验室实验中的时间消耗和成本挑战,同时最大限度地减少对试验和错误的依赖。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
6.40
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