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Practices and Trends of Machine Learning Application in Nanotoxicology

机译:机器学习在纳米毒理学中的应用实践与趋势

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摘要

Machine Learning (ML) techniques have been applied in the field of nanotoxicology with very encouraging results. Adverse effects of nanoforms are affected by multiple features described by theoretical descriptors, nano-specific measured properties, and experimental conditions. ML has been proven very helpful in this field in order to gain an insight into features effecting toxicity, predicting possible adverse effects as part of proactive risk analysis, and informing safe design. At this juncture, it is important to document and categorize the work that has been carried out. This study investigates and bookmarks ML methodologies used to predict nano (eco)-toxicological outcomes in nanotoxicology during the last decade. It provides a review of the sequenced steps involved in implementing an ML model, from data pre-processing, to model implementation, model validation, and applicability domain. The review gathers and presents the step-wise information on techniques and procedures of existing models that can be used readily to assemble new nanotoxicological in silico studies and accelerates the regulation of in silico tools in nanotoxicology. ML applications in nanotoxicology comprise an active and diverse collection of ongoing efforts, although it is still in their early steps toward a scientific accord, subsequent guidelines, and regulation adoption. This study is an important bookend to a decade of ML applications to nanotoxicology and serves as a useful guide to further in silico applications.
机译:机器学习(ML)技术已应用于纳米毒理学领域,并取得了令人鼓舞的结果。纳米形态的不利影响受理论描述符,纳米特定测量特性和实验条件描述的多种特征的影响。事实证明,机器学习在该领域非常有帮助,以便深入了解影响毒性的特征,预测作为主动风险分析一部分的可能的不良反应以及为安全设计提供信息。在这个关头,重要的是记录和分类已经完成的工作。这项研究调查并标记了过去十年中用于预测纳米毒理学中纳米(生态)毒理学结果的ML方法。它回顾了实现ML模型所涉及的顺序步骤,从数据预处理到模型实现,模型验证和适用性域。该评论收集并提出了有关现有模型的技术和程序的逐步信息,这些信息可方便地用于组装新的纳米毒理学计算机模拟研究,并加快对纳米毒理学中的计算机工具的监管。 ML在纳米毒理学中的应用包括不断努力的活跃和多样化的集合,尽管它仍在迈向科学协议,后续指南和法规采用的早期阶段。这项研究是ML在纳米毒理学领域应用十年的重要书摘,并为进一步的计算机应用提供了有用的指南。

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