基于pH测量和机器学习纳米qspr模型的金属氧化物纳米粒子zeta电位快速逼近技术

IF 5.1 3区 材料科学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Nanoscale Pub Date : 2025-08-26 DOI:10.1039/D4NR05367B
Natalia Bulawska, Michał Kalapus, Anita Sosnowska and Tomasz Puzyn
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引用次数: 0

摘要

采用一种系统的方法来评估与工程纳米材料(enm)在环境中的沉积和分散相关的风险是至关重要的。适当设计的风险管理系统对保护人类健康和生命至关重要。由于目前可用的纳米材料的形状、尺寸和类型各异,因此全面表征enm的性质是一项具有挑战性的工作。机器学习(ML)方法的应用代表了一种潜在的解决方案,可以帮助实现这一过程。从环境的角度来看,enm最关键的特征之一是ζ电位。我们的研究结果导致了预测模型的发展,利用实验确定的pH值和纳米结构的简单描述符,可以估计纳米meox的ζ。我们使用集成纳米qspr(定量结构-性质关系)模型的代数方法来预测最佳方法,以获得最佳可能的解释,避免丢失重要信息,并为五种选定的MeOx (Al2O3, CeO2, Fe2O3, MnO2, ZnO)产生稳健的共识模型。建立的模型具有较高的预测能力(QF1-3 > 0.897)和拟合优度(R2 = 0.912)。我们设计的模型的一个独特属性是它能够通过利用环境变量(pH)与易于计算的结构描述符一起快速近似ζ。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A rapid technique for approximating the zeta potential of metal oxide nanoparticles based on pH measurement and machine learning nano-QSPR models

A rapid technique for approximating the zeta potential of metal oxide nanoparticles based on pH measurement and machine learning nano-QSPR models

It is essential to adopt a systematic approach for assessing the risk associated with the deposition and dispersion of engineered nanomaterials (ENMs) in the environment. An adequately designed risk management system is crucial to protect human health and life. The comprehensive characterization of the properties of ENMs is a challenging undertaking due to the various shapes, sizes, and types of nanomaterials currently available. The application of machine learning (ML) methods represents a potential solution that can assist in this process. From the environmental perspective, one of the most critical characteristics of ENMs is zeta potential (ζ). Our research findings have led to the development of a predictive model that enables the estimation of ζ for nano-MeOx, utilising experimentally determined pH values and simple descriptors of the nano-structure. We have projected the optimal methodology using an algebraic approach of integrating nano-QSPR (Quantitative Structure–Property Relationship) models to obtain the best possible explanation, avoid losing important information, and produce a robust consensus model for five selected MeOx (Al2O3, CeO2, Fe2O3, MnO2, ZnO). The developed model demonstrates a high predictive ability (QF1–3 > 0.897) and goodness-of-fit (R2 = 0.912). A distinctive attribute of the model we have devised is its capacity to rapidly approximate ζ through the utilization of an environmental variable (pH) in conjunction with readily calculable structural descriptors.

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来源期刊
Nanoscale
Nanoscale CHEMISTRY, MULTIDISCIPLINARY-NANOSCIENCE & NANOTECHNOLOGY
CiteScore
12.10
自引率
3.00%
发文量
1628
审稿时长
1.6 months
期刊介绍: Nanoscale is a high-impact international journal, publishing high-quality research across nanoscience and nanotechnology. Nanoscale publishes a full mix of research articles on experimental and theoretical work, including reviews, communications, and full papers.Highly interdisciplinary, this journal appeals to scientists, researchers and professionals interested in nanoscience and nanotechnology, quantum materials and quantum technology, including the areas of physics, chemistry, biology, medicine, materials, energy/environment, information technology, detection science, healthcare and drug discovery, and electronics.
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