| Literature DB >> 35683670 |
Filipa Lebre1, Nivedita Chatterjee1, Samantha Costa2, Eli Fernández-de-Gortari1, Carla Lopes1, João Meneses1, Luís Ortiz3, Ana R Ribeiro1, Vânia Vilas-Boas1, Ernesto Alfaro-Moreno1.
Abstract
The use of nanomaterials has been increasing in recent times, and they are widely used in industries such as cosmetics, drugs, food, water treatment, and agriculture. The rapid development of new nanomaterials demands a set of approaches to evaluate the potential toxicity and risks related to them. In this regard, nanosafety has been using and adapting already existing methods (toxicological approach), but the unique characteristics of nanomaterials demand new approaches (nanotoxicology) to fully understand the potential toxicity, immunotoxicity, and (epi)genotoxicity. In addition, new technologies, such as organs-on-chips and sophisticated sensors, are under development and/or adaptation. All the information generated is used to develop new in silico approaches trying to predict the potential effects of newly developed materials. The overall evaluation of nanomaterials from their production to their final disposal chain is completed using the life cycle assessment (LCA), which is becoming an important element of nanosafety considering sustainability and environmental impact. In this review, we give an overview of all these elements of nanosafety.Entities:
Keywords: advanced in vitro models; epigenetics; genotoxicity; immunotoxicity; in silico; life cycle assessment; nanomaterials; nanotoxicology
Year: 2022 PMID: 35683670 PMCID: PMC9181910 DOI: 10.3390/nano12111810
Source DB: PubMed Journal: Nanomaterials (Basel) ISSN: 2079-4991 Impact factor: 5.719
Figure 1General view of possible interactions, routes of exposure, and adverse outcomes that can be triggered by exposure of humans and the environment to nanomaterials.
Main interferences from nanomaterials in some of the most widely used conventional toxicological assays identified so far.
| Conventional Methodology | Observed Interference | Proposed Solution | |
|---|---|---|---|
| Cause | Result/Interpretation | ||
| MTT reduction | NM optical density; NM aggregation in cell medium | Falsely increased viability | Sample centrifugation after cell lysis |
| NM redox activity | Falsely decreased viability | None | |
| ELISA (cytokine release) | Protein adsorption to NMs | Falsely decreased cytokine production | Add serum proteins to NM suspension |
| Comet assay | Interference enzyme activity | Falsely decreased genotoxicity | None |
| ROS quantification (H2DCF-DA) | NM redox activity | Falsely increased ROS levels | None |
| NMs quench fluorescence; NMs scatter emitted fluorescence | Falsely decreased ROS levels | Sample centrifugation after cell lysis | |
NM: nanomaterial; MTT: 3-(4,5-dimethylthiazol-2-yl)-2,5-diphenyltetrazolium bromide; LDH: lactate dehydrogenase; WST: water-soluble tetrazolium salts; ELISA: enzyme-linked immunosorbent assay; ROS: reactive oxygen species; H2DCF-DA: 2′,7′-dichlorodihydrofluorescein diacetate.
Figure 2The main target organs studied in the context of (nano)toxicology. A PubMed search for “particulate matter toxicology” or “nanomaterial toxicology” followed by the organ identified on the X-axis was performed in April 2022. No other filters were applied. Of note, using the words “pulmonary”, “cardiovascular”, and “gastrointestinal” instead of the specific organ yields even higher numbers for the 3 categories, but lung-related toxicology still prevails by far.
Figure 3Predominant mechanisms of nanomaterial-induced toxicity identified so far and their presumed interaction.
Figure 4Exposure to nanomaterials activates the immune surveillance system. Nanomaterials used for industrial and biomedical applications or present in the environment can have a major impact on human, animal, and plant health. If nanoparticles penetrate anatomical barriers, cells of the innate immune system (e.g., macrophages, monocytes), found in circulation or locally in different tissues, recognize them. This may lead to nanoparticle degradation/elimination or modulate the body towards beneficial or detrimental responses. (Servier Medical Art, smart.servier.com).
Current testing strategies for nanomaterial-induced genotoxicity assessment.
| Genotoxicity Marker | Assays | References |
|---|---|---|
| Gene mutation | Bacterial reverse mutation (Ames test) | OECD TG 471 |
| In vitro mammalian mutagenicity assay: mouse lymphoma (L5178Y) TK+/-assay | OECD TG 490 | |
| In vitro mammalian mutagenicity assay: HPRT assay | OECD TG 476 | |
| In vivo gene mutation assay (transgenic rodent somatic and germ cell gene mutation) | OECD TG 488 | |
| Chromosomal damage assays | In vitro chromosomal aberration assay | OECD TG 473 |
| In vitro MN assay | OECD TG 487 | |
| In vivo (mammalian bone marrow) chromosomal aberration test | OECD TG 475 | |
| In vivo MN assay (mammalian erythrocyte MN) | OECD TG 474 | |
| DNA damage (strand-break and DNA adduct) | In vitro comet assay | JaCVAM |
| In vivo (mammalian alkaline) comet assay | OECD TG 489 | |
| DNA damage (DNA adduct) | HPLC/MS; ELISA | [ |
| DNA damage response and repair | The γH2AX and 53BP1 foci count assay | [ |
| Multiplex array for DNA repair activity | [ | |
| FM-HCR assay | [ |
OECD TG: Organisation for Economic Co-operation and Development Test Guidelines; HPRT: hypoxanthine-guanine phosphoribosyltransferase; MN: micronucleus; JaCVAM: Japanese Center for the Validation of Alternative Methods; EURL-ECVAM: European Union Reference Laboratory for Alternatives to Animal Testing; ICCVAM: Interagency Coordinating Committee on the Validation of Alternative Methods; HPLC/MS: high-performance liquid chromatography–mass spectrometry; ELISA: enzyme-linked immunosorbent assay; FM-HCR: fluorescence multiplex−host-cell reactivation.
Figure 5Nanomaterial-induced genotoxicity in various model systems (the figure is generated with the numbers of published papers appearing in PubMed database with specific keyword search; epidemiology mainly represents “occupational exposure”-related studies; ecotoxicology model species include mainly fish species, drosophila, bivalve mollusks, C. elegans, white worms, yeast, etc.).
Common methodologies for epigenetic endpoints applied for nanomaterial studies.
| Epigenetic Endpoints | Specific Epigenetic Markers | Analytical Methods | References |
|---|---|---|---|
| DNA methylation | Global DNA methylation screening (5mc, 5hmC, 6mA, etc.) | HPLC/MS, ELISA, methylation-sensitive comet assay, pyrosequencing (repetitive sequences LINE-1 or Alu) | [ |
| Gene-specific promoter methylation | Methylation-specific PCR | [ | |
| Differentially methylated regions (whole-genome sequencing) | MPS, DNA methylation-specific microarrays, MeDIP followed by sequencing | [ | |
| Histone modification | Whole genome (specific histone marker) | ChIP with DNA microarray, ChIP-Seq, ChIP-Chip | [ |
| Gene-specific histone (specific) modification | ChIP-qPCR | [ | |
| Global histone modification markers | HPLC/MS, ELISA, immunostaining, immunoblotting | [ | |
| Noncoding RNAs | Whole genome | RNA-seq, microarray | [ |
| Gene-specific | qPCR | [ |
DNA: deoxyribonucleic acid; HPLC/MS: high-performance liquid chromatography–mass spectrometry; ELISA: enzyme-linked immunosorbent assay; 5mC: 5-methylcytosine; 5hmC: 5-hydroxymethyl cytosine; 6mA: 6-adenine methylation; PCR: polymerase chain reaction; MPS: massively parallel DNA sequencing; MeDIP: methylated DNA immunoprecipitation; ChIP: chromatin immunoprecipitation (ChIP); qPCR: quantitative PCR; RNA: ribonucleic acid.
Figure 6The nanomaterial-induced alterations in different epigenetic biomarkers based on various model systems (the figure is generated with the numbers of published papers appearing in the PubMed database with a specific keyword search; epidemiology mainly represents “occupational exposure”-related studies; in ecotoxicology, model species include mainly zebrafish, yeast, and C. elegans).
Single- and multiple-organ-on-chip models employed in nanomaterial safety assessment.
| Advanced Cell Models | Cell Types | Nanomaterial Exposure Conditions | Sensorization | Toxicological | Key Biological Outcomes |
|---|---|---|---|---|---|
| Heart microphysiological system | NRVMs | TiO2 NPs at 10 and 100 μg·mL−1 and Ag NPs at 50 μg·mL−1 | Electrical sensors | LDH assay, MTT assay | The high-dose exposure of TiO2 NPs (100 μg·mL−1) demonstrated impaired contractile function and damaged tissue structure after 48 h of exposure. Ag NP exposure caused cytotoxicity [ |
| Blood–brain barrier on a chip | HAs and HUVECs | INPM exposure at 0, 5, 10, 20, and 40 μg·mL−1 | - | ROS detection assay, CCK8 assay | The INPM could potentially activate several inflammatory pathways that directly damage brain structures and further lead to neurological diseases [ |
| Liver on a chip | PRHs | 10 nm Fe3O4 NPs | - | - | Perfusion of Fe3O4 NPs results in the reduction in albumin and urea production, indicating potential liver injury [ |
| Lung on a chip | HPAEpiC, HUVECs, and THP-1 | PM2.5 exposure at 200 and 400 μg·mL−1 | - | Immunofluorescence staining assay, FITC-dextran permeability assay, ELISA | A low concentration of PM2.5 causes limited cytotoxicity, but a higher concentration of PM2.5 (>200 μg·mL−1) could significantly increase the ROS generation, apoptosis, and inflammation responses of epithelial cells and endothelial cells on the barrier and attachments of monocytes to the vessels [ |
| BEAS-2B and HUVECs | CSE at 10, 20, and 50 μg·mL−1 | - | RT-PCR, ELISA, Western blotting | Lung on a chip enables the study of nanoparticle adsorption during various breathing frequencies, puff profiles of smoking, breath-holding patterns during inhalation and exhalation, and particle deposition in the lungs and the respiratory tract [ | |
| Placenta barrier on a chip | BeWo | 20 nm SiO2 and TiO2 NPs, and 80 nm ZnO NPs for 24 h | Membrane-bound impedance sensor array | ROS detection assay | SiO2 and TiO2 NPs induced no loss in barrier integrity. In contrast, ZnO NPs displayed severe acute cytotoxicity already after 4 h [ |
| BeWo and HUVECs | TiO2 NPs exposure at 50 and 200 μg·mL−1 | - | Immunofluorescence staining assay, ROS detection assay | Gradually increased cell death with increasing concentrations of NPs, thereby potentially leading to placental membrane rupture [ | |
| Gut/liver on a chip | Caco-2, HT29-MTX + HepG2, C3A | 50 nm carboxylated PS NPs | - | AST assay | Gut/liver chip model demonstrates compounding effects of interorgan crosstalk between gut and the liver in facilitating NP toxicity [ |
| Lung/liver/kidney on a chip | A549 + HepG2 + TH-1 | Ag, Au-PEG, TiO2, and SiO2-FITC NPs | TEER measurements | Live/dead assay | The interconnection of the different modules aims at the simulation of whole-body exposure and response. SiO2-FITC NPs showed a cytotoxic effect on TH-1 after 12 h, which could be due to the interaction of NPs with cancerous cells releasing a substance that may have induced a cytotoxic effect [ |
NRVMs: neonatal rat ventricular myocytes; TiO2: titanium dioxide; NPs: nanoparticles; MTT: 3-(4,5-dimethylthiazol-2-yl)-2,5-diphenyltetrazolium bromide; LDH: lactate dehydrogenase; HAs: human astrocytes; HUVECs: human umbilical vein endothelial cells; INPM: indoor nanoscale particulate matter; ROS: reactive oxygen species; PRHs: primary rat hepatocytes; CCK8: cell counting kit 8; Fe3O4: iron oxide; HPAEpiC: human alveolar epithelial cells; THP-1: human acute leukemia monocytic cells; PM2.5: fine inhalable particles, with diameters less than 2.5 µm; FITC: fluorescein-5-isothiocyanate; ELISA: enzyme-linked immunosorbent assay; BEAS-2B: human bronchial epithelial cells; CSE: cigarette smoke extract; RT-PCR: reverse transcription polymerase chain reaction; BeWo: human choriocarcinoma cells; SiO2: silicon dioxide; ZnO: zinc oxide; Caco-2: human colorectal adenocarcinoma cells; HT29-MTX: human colorectal adenocarcinoma cells with epithelial morphology; HepG2: human liver hepatoma cells; C3A: clonal derivative of HepG2; PS: polystyrene; AST: aspartate aminotransferase activity; PEG: polyethylene glycol; A549: adenocarcinoma human alveolar basal epithelial cells; TH-1: Type 1 T helper cells; TEER: transepithelial electrical resistance.
Overview of the most recent nanotoxicology predictive models. A PubMed search for “QSAR and nanoparticles” from 2020 to 2022 was performed in April 2022. No other filters were applied.
| Nanomaterials | Descriptors | Models 1 | Main Goal |
|---|---|---|---|
| FD | 204 molecular descriptors generated from the QSAR analyzing tools of BIOVIA Discovery Studio | LinReg | Predict the physicochemical properties of FDs that promote their cytotoxic effects/anticancer activity [ |
| Metal NPs | 24 physicochemical descriptors and toxicity data | MLR | Predict the toxicity and design the structures of metal NPs with low toxicity [ |
| Metal oxide NPs | 61 periodic table descriptors | MLR | Predict and investigate the essential descriptors responsible for the cytotoxicity of metal oxide NPs on |
| Gold NPs | Structural information (i.e., Dragon descriptors) of the surface ligands | MLR | Predict possible relationships between the oxidative reactivity of gold NPs and their cytotoxicity [ |
| Carbon NPs | Physicochemical descriptors (molecular weight, overall surface area, volume, specific surface area, and sum of degrees) | Orthogonal PLS regression | Predict the interaction between carbon NPs and SARS-CoV-2 RNA fragments [ |
| Amine-containing heterolipid NPs | 116 physicochemical descriptors | PLS regression coupled with stepwise forward algorithm | Predict the pKa of the amine-containing heterolipid NPs [ |
| Metal oxide NPs | Quantum-mechanical computations (such as molecular geometries), physicochemical descriptors (such as zeta-potential in water), and periodic table descriptors (such as electronegativity of each atom) | PLS regression, DecTrees, SVM, and logReg | Predict the inflammatory potential of metal oxide NPs [ |
| Functionalized magneto-fluorescent NPs | Norm index descriptors (describing the structural characteristics of the involved NPs) | RF | Predict the cellular uptake of functionalized magneto-fluorescent NPs to PaCa2 cells. Provide guidance for the design and manufacture of safer nanomaterials [ |
| Metal and metal oxide NPs | Structural information (such as core structure and material type), supported by physicochemical descriptors (such as zeta potential and average agglomerate size in media) | DecTrees, GBR, KNN, LinReg, RF, SVM, and XGBoost | Predict the cytotoxicity of metal and metal oxide NPs in zebrafish embryos [ |
| Virtual carbon NP library | 126 nanodescriptors (such as electronegativity of each atom) | KNN and RF | Predict cytotoxicity and inflammatory responses induced by PM2.5 [ |
| Functionalized magneto-fluorescent NPs | Improved optimal quasi-SMILES-based descriptors | MC | Predict the cellular uptake of functionalized magneto-fluorescent NPs to PaCa2 and HUVEC cell lines [ |
| Gold NPs | Optimal quasi-SMILES-based descriptors | MC | Predict the cellular uptake of gold NPs to A549 cells [ |
| Functionalized magneto-fluorescent NPs | Optimal quasi-SMILES-based descriptors | MC | Develop self-consistent predictive models for the cellular uptake of functionalized magneto-fluorescent NPs to PaCa2 cells [ |
| Metal oxide NPs | Optimal quasi-SMILES-based descriptors | MC | Predict the cell viability of different cell lines when exposed to metal oxide NPs [ |
| ZnO NPs | Optimal quasi-SMILES-based descriptors | MC | Predict the toxicity of ZnO NPs in rats via intraperitoneal injections [ |
| Metal oxide NPs | Optimal quasi-SMILES-based descriptors | MC | Predict the cell viability (expressed in %) and cytotoxicity (categorized as true or false) of different cell lines when exposed to 7 types of metal oxide NPs [ |
| Cadmium QDs | Optimal quasi-SMILES-based descriptors | MC | Predict hepatic cell viability when exposed to cadmium QDs [ |
| FDs | Structural information (such as polarizability), optimal quasi-SMILES-based descriptors, and physicochemical properties (obtained from Data Warrior) | MC and CPANN | Predict the binding score activity for 169 FDs related to 5 proteins classified as antidiabetes targets [ |
| Metal-based nanomaterials | Optimal quasi-SMILES-based descriptors | MC | Predict the response of |
FDs: fullerene derivatives; QSAR: quantitative structure–activity relationships; NPs: nanoparticles; MLR: multiple linear regression; GNPs: gold nanoparticles; CNPs: carbon nanoparticles; PLS: partial least squares; SARS-CoV-2: severe acute respiratory syndrome coronavirus 2; SW-PLSR: PLS regression coupled with stepwise; SVM: support vector machine; RF: random forest; PaCa2: pancreatic cancer cells; KNN: k-nearest neighbors; MC: Monte Carlo; HUVEC: human umbilical vein endothelial cell; MO: metal oxide; ZnO: zinc oxide; CPANN: counter-propagation artificial neural network. 1 All models included follow the standardization and validation principles established by the Organisation for Economic Co-operation and Development (OECD) [189].
Figure 7Graphical network of the 19 articles that meet the criteria to be included in Table 1. (a) Network with all the connections between the types of nanomaterials, their relevant structural characteristics (descriptors), and the QSAR models used to predict a defined endpoint. (b) Most relevant connections of metal oxide class. (c) Most relevant connections of optimal quasi-SMILES-based descriptors and the closely related Monte Carlo (MC) algorithm. ANN: artificial neural network; DecTrees: decision trees; GBR: gradient boosting regressor; KNN: k-nearest neighbors; LinReg: linear regression; LogReg: logistic regression; MC: Monte Carlo; MLR: multiple linear regression; PLS: partial least squares; RF: random forest; SVM: support vector machine; XGBoost: extreme gradient boosting.
Figure 8General conceptual framework of LCA representing the four main phases. Phase I: Cradle-to-cradle is one of the system boundaries that could be established in this stage; phase II: during the LCI, for each of the stages of the life cycle, all the inputs (e.g., natural resources) and outputs (e.g., emissions) within the system boundaries are accounted for; phase III in the LCIA, different models are used to translate the quantity of each emission in order to evaluate the potential impacts; phase IV: interpretation of the LCA results. EoL: end-of-life.
Figure 9LCA application in different nanotechnology fields, including the nanomaterials studied. ENMs: engineered nanomaterials; PCP: personal care products; other metals and alloys: some of the most studied were Zn-based and Cu-based; other ENMs: some of the most studied were tungsten-based and zirconia-based.
Figure 10Number of publications related to the LCA in nanotechnology accounting for conventional impacts and also for those impacts linked to the releases of nanomaterials.