步伐
纳米毒理学
透视图(图形)
人类健康
风险分析(工程)
计算机科学
纳米技术
医学
环境卫生
人工智能
纳米颗粒
大地测量学
材料科学
地理
作者
Yunchi Zhou,Ying Wang,Willie J.G.M. Peijnenburg,Martina G. Vijver,Surendra Balraadjsing,Zhaomin Dong,Xiaoli Zhao,Kmy Leung,Holly M. Mortensen,Zhenyu Wang,Iseult Lynch,Antreas Afantitis,Yunsong Mu,Fengchang Wu,Wenhong Fan
标识
DOI:10.1021/acs.est.4c03328
摘要
The massive production and application of nanomaterials (NMs) have raised concerns about the potential adverse effects of NMs on human health and the environment. Evaluating the adverse effects of NMs by laboratory methods is expensive, time-consuming, and often fails to keep pace with the invention of new materials. Therefore, in silico methods that utilize machine learning techniques to predict the toxicity potentials of NMs are a promising alternative approach if regulatory confidence in them can be enhanced. Previous reviews and regulatory OECD guidance documents have discussed in detail how to build an in silico predictive model for NMs. Nevertheless, there is still room for improvement in addressing the ways to enhance the model representativeness and performance from different angles, such as data set curation, descriptor selection, task type (classification/regression), algorithm choice, and model evaluation (internal and external validation, applicability domain, and mechanistic interpretation, which is key to ensuring stakeholder confidence). This review explores how to build better predictive models; the current state of the art is analyzed via a statistical evaluation of literature, while the challenges faced and future perspectives are summarized. Moreover, a recommended workflow and best practices are provided to help in developing more predictive, reliable, and interpretable models that can assist risk assessment as well as safe-by-design development of NMs.
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