数量结构-活动关系
计算机科学
纳米材料
比例(比率)
纳米技术
生化工程
材料科学
工程类
机器学习
物理
量子力学
作者
Ewelina Wyrzykowska,Alicja Mikołajczyk,Iseult Lynch,Nina Jeliazkova,Nikolay Kochev,Haralambos Sarimveis,Philip Doganis,Pantelis Karatzas,Antreas Afantitis,Georgia Melagraki,Angela Serra,Dario Greco,Julia Subbotina,Vladimir Lobaskin,Miguel Á. Bañares,Eugenia Valsami‐Jones,Karolina Jagiełło,Tomasz Puzyn
标识
DOI:10.1038/s41565-022-01173-6
摘要
Engineered nanomaterials (ENMs) enable new and enhanced products and devices in which matter can be controlled at a near-atomic scale (in the range of 1 to 100 nm). However, the unique nanoscale properties that make ENMs attractive may result in as yet poorly known risks to human health and the environment. Thus, new ENMs should be designed in line with the idea of safe-and-sustainable-by-design (SSbD). The biological activity of ENMs is closely related to their physicochemical characteristics, changes in these characteristics may therefore cause changes in the ENMs activity. In this sense, a set of physicochemical characteristics (for example, chemical composition, crystal structure, size, shape, surface structure) creates a unique 'representation' of a given ENM. The usability of these characteristics or nanomaterial descriptors (nanodescriptors) in nanoinformatics methods such as quantitative structure-activity/property relationship (QSAR/QSPR) models, provides exciting opportunities to optimize ENMs at the design stage by improving their functionality and minimizing unforeseen health/environmental hazards. A computational screening of possible versions of novel ENMs would return optimal nanostructures and manage ('design out') hazardous features at the earliest possible manufacturing step. Safe adoption of ENMs on a vast scale will depend on the successful integration of the entire bulk of nanodescriptors extracted experimentally with data from theoretical and computational models. This Review discusses directions for developing appropriate nanomaterial representations and related nanodescriptors to enhance the reliability of computational modelling utilized in designing safer and more sustainable ENMs.
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