Machine Learning Allowed Interpreting Toxicity of a Fe-Doped CuO NM Library Large Data Set─An Environmental In Vivo Case Study.

IF 8.3 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
ACS Applied Materials & Interfaces Pub Date : 2024-08-14 Epub Date: 2024-08-01 DOI:10.1021/acsami.4c07153
Janeck J Scott-Fordsmand, Susana I L Gomes, Suman Pokhrel, Lutz Mädler, Matteo Fasano, Pietro Asinari, Kaido Tämm, Jaak Jänes, Mónica J B Amorim
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Abstract

The wide variation of nanomaterial (NM) characters (size, shape, and properties) and the related impacts on living organisms make it virtually impossible to assess their safety; the need for modeling has been urged for long. We here investigate the custom-designed 1-10% Fe-doped CuO NM library. Effects were assessed using the soil ecotoxicology model Enchytraeus crypticus (Oligochaeta) in the standard 21 days plus its extension (49 days). Results showed that 10%Fe-CuO was the most toxic (21 days reproduction EC50 = 650 mg NM/kg soil) and Fe3O4 NM was the least toxic (no effects up to 3200 mg NM/kg soil). All other NMs caused similar effects to E. crypticus (21 days reproduction EC50 ranging from 875 to 1923 mg NM/kg soil, with overlapping confidence intervals). Aiming to identify the key NM characteristics responsible for the toxicity, machine learning (ML) modeling was used to analyze the large data set [9 NMs, 68 descriptors, 6 concentrations, 2 exposure times (21 and 49 days), 2 endpoints (survival and reproduction)]. ML allowed us to separate experimental related parameters (e.g., zeta potential) from particle-specific descriptors (e.g., force vectors) for the best identification of important descriptors. We observed that concentration-dependent descriptors (environmental parameters, e.g., zeta potential) were the most important under standard test duration (21 day) but not for longer exposure (closer representation of real-world conditions). In the longer exposure (49 days), the particle-specific descriptors were more important than the concentration-dependent parameters. The longer-term exposure showed that the steepness of the concentration-response decreased with an increased Fe content in the NMs. Longer-term exposure should be a requirement in the hazard assessment of NMs in addition to the standard in OECD guidelines for chemicals. The progress toward ML analysis is desirable given its need for such large data sets and significant power to link NM descriptors to effects in animals. This is beyond the current univariate and concentration-response modeling analysis.

Abstract Image

通过机器学习解读掺铁氧化铜 NM 库大型数据集的毒性--一项环境体内案例研究。
纳米材料(NM)的特性(尺寸、形状和性质)差异很大,对生物体的影响也不尽相同,因此几乎不可能对其安全性进行评估。我们在此研究了定制设计的 1-10% 掺铁氧化铜纳米材料库。我们使用土壤生态毒理学模型隐翅虫(寡毛目)在标准的 21 天和延长期(49 天)内对其影响进行了评估。结果表明,10%Fe-CuO 的毒性最大(21 天繁殖 EC50 = 650 毫克 NM/kg 土壤),Fe3O4 NM 的毒性最小(3200 毫克 NM/kg 土壤无影响)。所有其他氯化萘都对隐翅虫造成了类似的影响(21 天繁殖 EC50 值为 875 至 1923 毫克氯化萘/千克土壤,置信区间重叠)。为了确定造成毒性的关键 NM 特性,我们使用机器学习(ML)建模来分析庞大的数据集[9 种 NM、68 个描述符、6 种浓度、2 种暴露时间(21 天和 49 天)、2 种终点(存活和繁殖)]。ML 使我们能够将与实验相关的参数(如 zeta 电位)与特定于颗粒的描述符(如力向量)分开,从而最好地识别重要的描述符。我们观察到,在标准测试时间(21 天)内,与浓度相关的描述符(环境参数,如 zeta 电位)最为重要,但在更长的暴露时间(更接近真实世界的条件)内,这些描述符并不重要。在较长的暴露期(49 天)中,颗粒特异性描述指标比浓度相关参数更重要。较长时间的暴露表明,随着钕磁铁中铁含量的增加,浓度反应的陡度也会降低。除了经合组织(OECD)化学品准则中的标准之外,长期暴露也应成为非金属危害评估的一项要求。鉴于需要如此庞大的数据集以及将非甲烷描述符与动物体内效应联系起来的强大能力,在多变量分析方面取得的进展是可取的。这超出了目前的单变量和浓度反应模型分析的范围。
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来源期刊
ACS Applied Materials & Interfaces
ACS Applied Materials & Interfaces 工程技术-材料科学:综合
CiteScore
16.00
自引率
6.30%
发文量
4978
审稿时长
1.8 months
期刊介绍: ACS Applied Materials & Interfaces is a leading interdisciplinary journal that brings together chemists, engineers, physicists, and biologists to explore the development and utilization of newly-discovered materials and interfacial processes for specific applications. Our journal has experienced remarkable growth since its establishment in 2009, both in terms of the number of articles published and the impact of the research showcased. We are proud to foster a truly global community, with the majority of published articles originating from outside the United States, reflecting the rapid growth of applied research worldwide.
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