纳米毒理学中机器学习技术的进展与展望:乘着人工智能驱动的浪潮。

IF 2.7 4区 医学 Q1 Pharmacology, Toxicology and Pharmaceutics
Siyuan Chen, Tianshu Wu
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引用次数: 0

摘要

随着纳米粒子的广泛应用,纳米粒子在生态环境中的分布越来越多。这引起了人们对人类健康的关注,并促进了纳米毒理学的发展。传统的毒性评估受高成本和时间消耗的限制,使机器学习(ML)成为一个有吸引力的替代方案。机器学习模型,特别是深度学习(DL)网络,可以通过分析大量数据集来预测NP毒性,与动物实验相比,提供了一种更有效、更合乎道德的方法。本文系统地综述了ML在纳米毒理学中的应用和面临的挑战。讨论了NPs性质在毒性预测中的重要性以及与生物系统动态相互作用建模的困难。还考虑了将ML与其他计算方法集成以改进毒性评估的潜力。尽管取得了进展,但机器学习仍面临着挑战,如有限的训练数据、模型可解释性问题以及纳米材料与生物相互作用的复杂性。克服这些挑战需要增强数据收集、跨学科协作和更直接的ML模型。展望未来,ML与纳米毒理学的结合将彻底改变毒性评估,促进更安全的纳米技术应用的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Progression and prospects of machine learning techniques in nanotoxicology: riding the AI-driven wave.

The widespread application of nanoparticles (NPs) has led to an increasing number of NPs being distributed in the ecological environment. This has raised concerns about human health and promoted the development of nanotoxicology. Traditional toxicity assessments, limited by high costs and time consumption, make machine learning (ML) an attractive alternative. ML models, particularly deep learning (DL) networks, can predict NP toxicity by analyzing extensive datasets, providing a more efficient and ethical method compared to animal testing. This review systematically summarizes the applications and challenges of ML in nanotoxicology. It discusses the importance of NPs properties in toxicity prediction and the difficulties in modeling the dynamic interactions with biological systems. The potential of integrating ML with other computational approaches to improve toxicity assessment is also considered. Despite progress, ML faces challenges such as limited training data, issues with model interpretability, and the complexity of nanomaterial-biological interactions. Overcoming these challenges requires enhanced data collection, interdisciplinary collaboration, and more directed ML models. Looking forward, the integration of ML with nanotoxicology is poised to revolutionize toxicity assessments, facilitating the development of safer nanotechnology applications.

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来源期刊
CiteScore
6.60
自引率
3.10%
发文量
66
审稿时长
6-12 weeks
期刊介绍: Toxicology Mechanisms and Methods is a peer-reviewed journal whose aim is twofold. Firstly, the journal contains original research on subjects dealing with the mechanisms by which foreign chemicals cause toxic tissue injury. Chemical substances of interest include industrial compounds, environmental pollutants, hazardous wastes, drugs, pesticides, and chemical warfare agents. The scope of the journal spans from molecular and cellular mechanisms of action to the consideration of mechanistic evidence in establishing regulatory policy. Secondly, the journal addresses aspects of the development, validation, and application of new and existing laboratory methods, techniques, and equipment.
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