| Literature DB >> 26069453 |
Bryan Harper1, Dennis Thomas2, Satish Chikkagoudar2, Nathan Baker2, Kaizhi Tang3, Alejandro Heredia-Langner2, Roberto Lins4, Stacey Harper1.
Abstract
The integration of rapid assays, large datasets, informatics, and modeling can overcome current barriers in understanding nanomaterial structure-toxicity relationships by providing a weight-of-the-evidence mechanism to generate hazard rankings for nanomaterials. Here, we present the use of a rapid, low-cost assay to perform screening-level toxicity evaluations of nanomaterials in vivo. Calculated EZ Metric scores, a combined measure of morbidity and mortality in developing embryonic zebrafish, were established at realistic exposure levels and used to develop a hazard ranking of diverse nanomaterial toxicity. Hazard ranking and clustering analysis of 68 diverse nanomaterials revealed distinct patterns of toxicity related to both the core composition and outermost surface chemistry of nanomaterials. The resulting clusters guided the development of a surface chemistry-based model of gold nanoparticle toxicity. Our findings suggest that risk assessments based on the size and core composition of nanomaterials alone may be wholly inappropriate, especially when considering complex engineered nanomaterials. Research should continue to focus on methodologies for determining nanomaterial hazard based on multiple sub-lethal responses following realistic, low-dose exposures, thus increasing the availability of quantitative measures of nanomaterial hazard to support the development of nanoparticle structure-activity relationships.Entities:
Keywords: Informatics; Nanoparticle; Surface chemistry; Toxicity; Zebrafish
Year: 2015 PMID: 26069453 PMCID: PMC4454819 DOI: 10.1007/s11051-015-3051-0
Source DB: PubMed Journal: J Nanopart Res ISSN: 1388-0764 Impact factor: 2.253
Fig. 1Overview of morphological endpoints assessed during the EZ Metric assay including a image of control zebrafish embryo at 24 h post fertilization (hpf), b image of zebrafish embryo exhibiting delayed developmental progression, c image of wavy notochord malformation in 24-hpf zebrafish embryo, d image of control zebrafish at 120 hpf, e image of snout and jaw malformations observed in 120-hpf zebrafish, and f image of brain and heart malformations (pericardial edema) in 120-hpf zebrafish
Ranking of endpoints assessed in zebrafish embryos and their associated weighting used for calculation of the overall EZ Metric score
| EZ Metric Endpoint | Weighting factor |
|---|---|
| 24 hpf mortality | 1.0 |
| 120 hpf mortality | 0.95 |
| Heart malformation | 0.12 |
| Brain malformation | 0.12 |
| Yolk sac edema | 0.1 |
| Notochord malformation | 0.08 |
| Curved axis | 0.08 |
| Trunk malformation | 0.06 |
| Delayed developmental progression | 0.06 |
| Occluded circulation | 0.04 |
| Eye malformation | 0.04 |
| Jaw malformation | 0.04 |
| Lack of spontaneous movement | 0.04 |
| Somite malformation | 0.02 |
| Motility | 0.02 |
| Lack of touch response | 0.02 |
| Snout malformation | 0.02 |
| Otic malformation | 0.02 |
| Caudal/pectoral fin malformation | 0.02 |
| Atypical pigmentation | 0.02 |
| Atypical swim bladder inflation | 0.02 |
EZ Metric data are made publically available through the Nanomaterial-Biological Interactions knowledgebase at http://nbi.oregonstate.edu
Values for the molecular descriptor variables for each surface modification used in model development
| Variable, units | MEE | MEEE | TMAT | MES |
|---|---|---|---|---|
| SASA, Å2 | 344.15 | 438.46 | 286.83 | 314.97 |
| SASA/Polara | 5.04 | 5.66 | 7.39 | 3.02 |
| Refractivity (m3/mol) | 31.78 | 42.82 | 48.38 | 28.01 |
| Band Gap (kcal/mol) | −211.8 | −211.7 | −215.8 | −195.3 |
Polar Surface (Å2) is the surface area formed by all the polar atoms of a molecule, Solvent-Accessible Surface Area (SASA, Å2) is the surface area of a molecule available to a spherical solvent molecule, Molar Refractivity (Refractivity, m3/mol) is a measure of the volume occupied by an atom or functional group, and Band Gap (kcal/mol) is the energy difference between the highest occupied molecular orbital (HOMO) and the lowest occupied molecular orbital (LUMO)
aUnitless quantity
Fig. 2Hazard ranking of nanomaterials based on EC50 dose for EZ Metric score
Median weighted EZ Metric exposure concentrations (EC50) determined in embryonic zebrafish following 5-day exposure to the various types of nanoparticles
| Material | EC50 |
|---|---|
| Gold-TMAT (2 nm)-as synthesized | 0.2 |
| Gold-TMAT (0.8 nm) | 1.3 |
| G3 PAMAM dendrimer—amine | 1.7 |
| Gold-TMAT (2 nm)-pure | 1.9 |
| G5 PAMAM dendrimer—amine | 4.3 |
| Gold—phosphatidylcholine (14 nm) | 6.2 |
| G4 PAMAM dendrimer—amine | 6.2 |
| Silver—citrate (10 nm) | 7.4 |
| Gold-TMAT (2 nm)-ultrapure | 8.1 |
| Gold—phosphatidylcholine (14 nm) | 9.0 |
| Gold—phosphatidylcholine (22 nm) | 11.6 |
| Silver/Gold—phosphate (68 nm) | 12.2 |
| G6 PAMAM dendrimer—amine | 16.5 |
| Gold-TMAT (2 nm)-ultrapure | 16.7 |
| Erbium Oxide (25 nm) | 23.2 |
| Silver/Gold—phosphate (92 nm) | 23.7 |
| Lead Sulfide—monothiol, oxidized (3 nm) | 30.4 |
| Gold—phosphatidylcholine (7 nm) | 38.9 |
| Samarium Oxide (25 nm) | 41.7 |
| Gold-MHA (10 nm) | 48.2 |
| Lead Sulfide—monothiol, unoxidized (3 nm) | 51.9 |
| Gold—phosphatidylcholine (7 nm) | 53.7 |
| Silver/Gold—phosphate (61 nm) | 54.6 |
| Silver/Gold—phosphate (70 nm) | 56.6 |
| Holmium oxide (25 nm) | 61.3 |
| Silver/Gold—phosphate (101 nm) | 99.7 |
| Silver/Gold—phosphate (122 nm) | 103.5 |
| Dysprosium oxide (25 nm) | 158.5 |
Nanoparticles are listed from most to least toxic as is represented in Fig. 2
Fig. 3Dendrogram plot showing the hierarchical clustering of 68 nanoparticle samples based on their weighted EZ Metric scores. Clustering analysis is done using MATLAB. The clustering method uses the Ward linkage rule with Euclidean distance measure. Clusters A (Blue) and B (Red) are the top-level clusters identified in the plot. Insert—Box plots of sumEZ values for clusters A and B. The red-colored solid diamond symbol represents the mean of sumEZ values in each cluster. (Color figure online)
Fig. 4Prediction surface plots of EZ Metric values (z-axes) obtained with the model in Eq. 3 as a function of particle size (x-axes) and concentration (y-axes). Results for gold nanoparticles with a TMAT, b MEE, c MEEE, and d MES surface ligands are shown on the top left, top right, bottom left, and bottom right panels, respectively
Model parameter estimates and their corresponding standard errors and p-values
| Model term | Estimate | Standard error |
|
|---|---|---|---|
| Intercept | 67.2828 | 5.4948 | <0.0001 |
| Log concentration | 0.8128 | 0.0545 | <0.0001 |
| Size | 14.7335 | 1.9790 | <0.0001 |
| SASA/Polara | 4.1535 | 0.2880 | <0.0001 |
| Refractivity, m3/mol | −0.2974 | 0.0367 | <0.0001 |
| Band gap, kcal/mol | 0.3715 | 0.0279 | <0.0001 |
| LogC × (SASA/Polar) | −0.0547 | 0.0070 | <0.0001 |
| Size × Band Gap | 0.0682 | 0.0093 | <0.0001 |
| (Log Conc)2 | −0.0343 | 0.0039 | <0.0001 |
| Size2 | −0.0255 | 0.0092 | 0.0057 |
aUnitless quantity