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解析关键的纳米-生物界面描述符以预测纳米颗粒诱导的肺纤维化。

Deciphering key nano-bio interface descriptors to predict nanoparticle-induced lung fibrosis.

作者信息

Cao Jiayu, Yang Yuhui, Liu Xi, Huang Yang, Xie Qianqian, Kadushkin Aliaksei, Nedelko Mikhail, Wu Di, Aquilina Noel J, Li Xuehua, Cai Xiaoming, Li Ruibin

机构信息

School of Public Health, Suzhou Medical School, Soochow University, Suzhou, Jiangsu, 215123, China.

State Key Laboratory of Radiation Medicine and Protection, School of Radiation Medicine and Protection, Suzhou Medical School, Soochow University, Suzhou, Jiangsu, 215123, China.

出版信息

Part Fibre Toxicol. 2025 Jan 14;22(1):1. doi: 10.1186/s12989-024-00616-3.

Abstract

BACKGROUND

The advancement of nanotechnology underscores the imperative need for establishing in silico predictive models to assess safety, particularly in the context of chronic respiratory afflictions such as lung fibrosis, a pathogenic transformation that is irreversible. While the compilation of predictive descriptors is pivotal for in silico model development, key features specifically tailored for predicting lung fibrosis remain elusive. This study aimed to uncover the essential predictive descriptors governing nanoparticle-induced pulmonary fibrosis.

METHODS

We conducted a comprehensive analysis of the trajectory of metal oxide nanoparticles (MeONPs) within pulmonary systems. Two biological media (simulated lung fluid and phagolysosomal simulated fluid) and two cell lines (macrophages and epithelial cells) were meticulously chosen to scrutinize MeONP behaviors. Their interactions with MeONPs, also referred to as nano-bio interactions, can lead to alterations in the properties of the MeONPs as well as specific cellular responses. Physicochemical properties of MeONPs were assessed in biological media. The impact of MeONPs on cell membranes, lysosomes, mitochondria, and cytoplasmic components was evaluated using fluorescent probes, colorimetric enzyme substrates, and ELISA. The fibrogenic potential of MeONPs in mouse lungs was assessed by examining collagen deposition and growth factor release. Random forest classification was employed for analyzing in chemico, in vitro and in vivo data to identify predictive descriptors.

RESULTS

The nano-bio interactions induced diverse changes in the 4 characteristics of MeONPs and had variable effects on the 14 cellular functions, which were quantitatively evaluated in chemico and in vitro. Among these 18 quantitative features, seven features were found to play key roles in predicting the pro-fibrogenic potential of MeONPs. Notably, IL-1β was identified as the most important feature, contributing 27.8% to the model's prediction. Mitochondrial activity (specifically NADH levels) in macrophages followed closely with a contribution of 17.6%. The remaining five key features include TGF-β1 release and NADH levels in epithelial cells, dissolution in lysosomal simulated fluids, zeta potential, and the hydrodynamic size of MeONPs.

CONCLUSIONS

The pro-fibrogenic potential of MeONPs can be predicted by combination of key features at nano-bio interfaces, simulating their behavior and interactions within the lung environment. Among the 18 quantitative features, a combination of seven in chemico and in vitro descriptors could be leveraged to predict lung fibrosis in animals. Our findings offer crucial insights for developing in silico predictive models for nano-induced pulmonary fibrosis.

摘要

背景

纳米技术的进步凸显了建立计算机预测模型以评估安全性的迫切需求,特别是在诸如肺纤维化这种不可逆的致病性转变的慢性呼吸道疾病背景下。虽然预测描述符的汇编对于计算机模型开发至关重要,但专门为预测肺纤维化量身定制的关键特征仍然难以捉摸。本研究旨在揭示纳米颗粒诱导肺纤维化的基本预测描述符。

方法

我们对金属氧化物纳米颗粒(MeONPs)在肺部系统中的轨迹进行了全面分析。精心选择了两种生物介质(模拟肺液和吞噬溶酶体模拟液)和两种细胞系(巨噬细胞和上皮细胞)来仔细研究MeONP的行为。它们与MeONPs的相互作用,也称为纳米-生物相互作用,可导致MeONPs性质的改变以及特定的细胞反应。在生物介质中评估MeONPs的物理化学性质。使用荧光探针、比色酶底物和酶联免疫吸附测定法评估MeONPs对细胞膜、溶酶体、线粒体和细胞质成分的影响。通过检查胶原蛋白沉积和生长因子释放来评估MeONPs在小鼠肺部的促纤维化潜力。采用随机森林分类法分析化学、体外和体内数据以识别预测描述符。

结果

纳米-生物相互作用在MeONPs的4个特征中引起了多种变化,并对14种细胞功能产生了不同影响,这些在化学和体外进行了定量评估。在这18个定量特征中,发现有7个特征在预测MeONPs的促纤维化潜力中起关键作用。值得注意的是,白细胞介素-1β被确定为最重要的特征,对模型预测的贡献为27.8%。巨噬细胞中的线粒体活性(特别是烟酰胺腺嘌呤二核苷酸水平)紧随其后,贡献为17.6%。其余5个关键特征包括上皮细胞中转化生长因子-β1的释放和烟酰胺腺嘌呤二核苷酸水平、在吞噬溶酶体模拟液中的溶解、zeta电位以及MeONPs的流体动力学尺寸。

结论

通过纳米-生物界面关键特征的组合,可以预测MeONPs的促纤维化潜力,模拟它们在肺环境中的行为和相互作用。在这18个定量特征中,可以利用化学和体外描述符中的7个组合来预测动物的肺纤维化。我们的研究结果为开发纳米诱导肺纤维化的计算机预测模型提供了关键见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/abd0/11731361/478287c4a1fd/12989_2024_616_Fig1_HTML.jpg

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