Kotzabasaki Marianna I, Sotiropoulos Iason, Sarimveis Haralambos
School of Chemical Engineering, National Technical University of Athens 9 Heroon Polytechneiou Street, Zografou Campus 15780 Athens Greece
RSC Adv. 2020 Feb 3;10(9):5385-5391. doi: 10.1039/c9ra09475j. eCollection 2020 Jan 29.
The use of approaches for the prediction of biomedical properties of nano-biomaterials (NBMs) can play a significant role in guiding and reducing wetlab experiments. Computational methods, such as data mining and machine learning techniques, can increase the efficiency and reduce the time and cost required for hazard and risk assesment and for designing new safer NBMs. A major obstacle in developing accurate and well-validated models such as Nano Quantitative Structure-Activity Relationships (Nano-QSARs) is that although the volume of data published in the literature is increasing, the data are fragmented in many different publications and are not sufficiently curated for modelling purposes. Moreover, NBMs exhibit high complexity and heterogeneity in their structures, making data collection and curation and QSAR model development more challenging compared to traditional small molecules. The aim of this study was to construct and fully validate a Nano-QSAR model for the prediction of toxicological properties of superparamagnetic iron oxide nanoparticles (SPIONs), focusing on their application as Magnetic Resonance Imaging (MRI) contrast agents for non-invasive stem cell labelling and tracking. To achieve this goal, we first performed an extensive search through the literature for collecting and curating relevant data and we developed a dataset containing both physicochemical and toxicological properties of SPIONs. The data were analysed next, using Automated machine learning (Auto-ML) approaches for optimising the development and validation of nanotoxicity classification QSAR models of SPIONs. Further analysis of relative attribute importances revealed that physicochemical properties such as the size and the magnetic core are the dominant attributes correlated to the toxicity of SPIONs. Our results suggest that as more systematic information from NBM experimental tests becomes available, computational tools could play an important role in supporting the safety-by-design (SbD) concept in regenerative medicine and disease therapeutics.
利用方法预测纳米生物材料(NBMs)的生物医学特性,在指导和减少湿实验室实验方面可发挥重要作用。计算方法,如数据挖掘和机器学习技术,可以提高效率,减少危害和风险评估以及设计新型更安全NBMs所需的时间和成本。开发准确且经过充分验证的模型,如纳米定量构效关系(Nano-QSARs)的一个主要障碍是,尽管文献中发表的数据量在增加,但数据分散在许多不同的出版物中,并且没有为建模目的进行充分整理。此外,NBMs在结构上表现出高度的复杂性和异质性,与传统小分子相比,使得数据收集、整理以及QSAR模型开发更具挑战性。本研究的目的是构建并全面验证一个用于预测超顺磁性氧化铁纳米颗粒(SPIONs)毒理学特性的Nano-QSAR模型,重点关注其作为磁共振成像(MRI)造影剂用于非侵入性干细胞标记和追踪的应用。为实现这一目标,我们首先通过文献进行广泛搜索以收集和整理相关数据,并开发了一个包含SPIONs物理化学和毒理学特性的数据集。接下来对数据进行分析,使用自动机器学习(Auto-ML)方法优化SPIONs纳米毒性分类QSAR模型的开发和验证。对相对属性重要性的进一步分析表明,诸如尺寸和磁芯等物理化学特性是与SPIONs毒性相关的主要属性。我们的结果表明,随着来自NBM实验测试的更系统信息变得可用,计算工具在支持再生医学和疾病治疗中的设计安全(SbD)概念方面可以发挥重要作用。