Normalised similarity assessment to inform grouping of advanced multi-component nanomaterials by means of an Asymmetric Sigmoid function

IF 4.7 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES NanoImpact Pub Date : 2024-06-18 DOI:10.1016/j.impact.2024.100519
Alex Zabeo , Georgia Tsiliki , Andrea Brunelli , Elena Badetti , José Balbuena , Danail Hristozov
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Abstract

This manuscript presents a procedure for similarity assessment as a basis for grouping of multi component nanomaterials (MCNMs). This methodology is an adaptation of the approach by Zabeo et al. (2022), which includes an impactful change: the calculated similarities are normalised in the [0,1] domain by means of asymmetric Logistic scaling to simplify comparisons among properties' distances. This novel approach allows for grouping of nanomaterials that is not affected by the dataset, so that group membership will not change when new candidates are included in the set of assessed materials. It can be applied to assess groups of MCNMs as well as mixed groups of multi and single component nanomaterials as well as chemicals. To facilitate the application of the proposed methodology, a software script was developed by using the Python programming language, which is currently undergoing migration to a user-friendly web-based tool. The presented approach was tested against a real industrial case study provided by the Andalusian Innovation Centre for Sustainable Solution (CIAC): SiO2-ZnO hybrid nanocomposite used in building coatings, which is designed to facilitate photocatalytic removal of NOx gases from the atmosphere. The results of applying the methodology in the case study demonstrated that ZnO is dissimilar from the other candidates mainly due to its different dissolution profiles.

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利用非对称西格莫函数进行归一化相似性评估,为先进的多组分纳米材料分组提供信息
本手稿介绍了一种作为多成分纳米材料(MCNMs)分组基础的相似性评估程序。该方法是对 Zabeo 等人(2022 年)的方法的改良,其中包括一个有影响的变化:通过非对称 Logistic 缩放,将计算出的相似性归一化为 [0,1] 域,以简化属性间距离的比较。这种新方法可以不受数据集的影响对纳米材料进行分组,因此当新的候选材料被纳入评估材料集时,组内成员不会发生变化。该方法可用于评估 MCNMs 组、多成分和单成分纳米材料混合组以及化学品组。为了便于应用所提出的方法,我们使用 Python 编程语言开发了一个软件脚本,目前正在将其转换为用户友好的网络工具。安达卢西亚可持续解决方案创新中心(CIAC)提供了一个真实的工业案例研究,对所提出的方法进行了测试:二氧化硅-氧化锌(SiO2-ZnO)混合纳米复合材料用于建筑涂料,旨在促进光催化去除大气中的氮氧化物气体。在案例研究中应用该方法的结果表明,氧化锌与其他候选材料不同,主要是因为其溶解情况不同。
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来源期刊
NanoImpact
NanoImpact Social Sciences-Safety Research
CiteScore
11.00
自引率
6.10%
发文量
69
审稿时长
23 days
期刊介绍: NanoImpact is a multidisciplinary journal that focuses on nanosafety research and areas related to the impacts of manufactured nanomaterials on human and environmental systems and the behavior of nanomaterials in these systems.
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