University of Gdansk, Faculty of Chemistry, Laboratory of Environmental Chemometrics, Gdansk, Poland.
Nanoscale. 2017 Jun 22;9(24):8435-8448. doi: 10.1039/c7nr02211e.
Over the past decade, computational nanotoxicology, in particular Quantitative Structure-Activity Relationship models (Nano-QSAR) that help in assessing the biological effects of nanomaterials, have received much attention. In effect, a solid basis for uncovering the relationships between the structure and property/activity of nanoparticles has been created. Nonetheless, six years after the first pioneering computational studies focusing on the investigation of nanotoxicity were commenced, these computational methods still suffer from many limitations. These are mainly related to the paucity of widely available, systematically varied, libraries of experimental data necessary for the development and validation of such models. This results in the still-low acceptance of these methods as valuable research tools for nanosafety and raises the query as to whether these methods could gain wide acceptance of regulatory bodies as alternatives for traditional in vitro methods. This study aimed to give an answer to the following question: How to remedy the paucity of experimental nanotoxicity data and thereby, overcome key roadblock that hinders the development of approaches for data-driven modeling of nanoparticle properties and toxicities? Here, a simple and transparent read-across algorithm for a pre-screening hazard assessment of nanomaterials that provides reasonably accurate results by making the best use of existing limited set of observations will be introduced.
在过去的十年中,计算纳米毒理学,特别是有助于评估纳米材料生物效应的定量构效关系模型(Nano-QSAR),受到了广泛关注。实际上,已经为揭示纳米颗粒的结构与性能/活性之间的关系奠定了坚实的基础。尽管如此,自从六年前首次开展专注于纳米毒性研究的开创性计算研究以来,这些计算方法仍然存在许多局限性。这些问题主要与缺乏广泛可用、系统变化的实验数据库有关,这些数据库对于这些模型的开发和验证是必要的。这导致这些方法作为纳米安全性有价值的研究工具的接受程度仍然较低,并引发了一个问题,即这些方法是否可以被监管机构广泛接受,作为传统体外方法的替代方法。本研究旨在回答以下问题:如何弥补实验性纳米毒性数据的不足,从而克服阻碍基于数据的纳米颗粒特性和毒性建模方法发展的关键障碍?在这里,将引入一种简单透明的读交叉算法,用于纳米材料的预筛选危害评估,该算法通过充分利用现有有限的观察结果,提供相当准确的结果。