Open Access Article
Korinna
Altmann
*a,
Raquel
Portela
*b,
Francesco
Barbero
c,
Esther
Breuninger
d,
Laura Maria Azzurra
Camassa
e,
Tanja Cirkovic
Velickovic
f,
Costas
Charitidis
g,
Anna
Costa
h,
Marta
Fadda
i,
Petra
Fengler
a,
Ivana
Fenoglio
c,
Andrea M.
Giovannozzi
i,
Øyvind Pernell
Haugen
e,
Panagiotis
Kainourgios
g,
Frank
von der Kammer
d,
Markus J.
Kirchner
jk,
Madeleine
Lomax-Vogt
d,
Tamara
Lujic
f,
Frank
Milczewski
a,
Mhamad Aly
Moussawi
l,
Simona
Ortelli
h,
Tatjana N.
Parac-Vogt
l,
Annegret
Potthoff
m,
Julian J.
Jimenez Reinosa
n,
Sophie
Röschter
m,
Alessio
Sacco
i,
Lukas
Wimmer
o,
Ilaria
Zanoni
h and
Lea Ann
Dailey
o
aBundesanstalt für Materialforschung und -prüfung (BAM), Unter den Eichen 87, 12205 Berlin, Germany. E-mail: korinna.altmann@bam.de
bInstituto de Catalisis y Petroleoquimica (ICP), Materials Science Institute of Madrid (CSIC), –C/Marie Curie 2, Madrid, 28049, Spain. E-mail: raquel.portela@csic.es
cDepartment of Chemistry, University of Torino (UNITO), Torino, Italy
dDepartment of Environmental Geosciences (EDGE), University of Vienna, Josef-Holaubek-Platz 2, 1090 Vienna, Austria
eNorwegian Institute of Occupational Health (STAMI), 0363 Oslo, Norway
fUniversity of Belgrade Faculty of Chemistry (UBFC), Belgrade, Serbia
gNational and Technical University of Athens (NTUA), Athens, Greece
hNational Research Council of Italy - Institute of Science, Technology and Sustainability for Ceramics (CNR-ISSMC), Via Granarolo 64, 48018 Faenza, Italy, Via Granarolo 64, 48018 Faenza (RA), Italy
iQuantum Metrology and Nano Technologies Division, Istituto Nazionale di Ricerca Metrologica (INRiM), Strada delle Cacce 91, 10135, Torino, Italy
jUniversity of Bayreuth, Animal Ecology I, Bayreuth Center of Ecology and Environmental Research (BayCEER), Universitätsstr. 30, 95447 Bayreuth, Germany
kDepartment of Chemical and Product Safety, German Federal Institute for Risk Assessment (BfR), Max-Dohrn-Str. 8-10, 10589 Berlin, Germany
lDepartment of Chemistry, KU Leuven, Celestijnenlaan 200F, 3001 Leuven, Belgium
mFraunhofer Institute for Ceramic Technologies and Systems (IKTS), Dresden, Germany
nMaterials Science Institute of Madrid (CSIC), Instituto de Ceramica y Vidrio (ICV), C/Kelsen, Madrid, 28049, Spain
oDepartment of Pharmaceutical Sciences, University of Vienna, Josef-Holaubek-Platz 2, 1090 Vienna, Austria. E-mail: leaann.dailey@univie.ac.at
First published on 14th October 2025
Understanding the potential human health risks associated with micro- and nanoplastic exposure is currently a priority research area. Nanoplastic toxicity studies are complicated by the lack of available, well-characterized test and reference materials. Further, many nanoplastic test materials are inherently more polydisperse and heterogenous in shape compared to polystyrene beads, making accurate and representative size distribution measurements particularly challenging. The aim of this study was to conduct an inter-laboratory comparison of dynamic light scattering measurements, the most commonly used particle sizing method for nanomaterials. Using a published standard operating procedure, size measurements in water and a standardized cell culture medium (CCM) were generated for spherical, carboxy-functionalized polystyrene nanoparticles (PS-COOH; 50 nm; benchmark material), and for increasingly complex in-house produced spherical poly(ethylene terephthalate) (nanoPET) and irregular-shaped polypropylene (nanoPP) test materials. The weighted mean of hydrodynamic diameters of PS-COOH dispersed in water (55 ± 5 nm) showed moderate variation between labs (coefficient of variation, CV = 8.2%) and were similar to literature reports. Measurements of nanoPET (82 ± 6 nm) and nanoPP (182 ± 12 nm) in water exhibited similar CV values (nanoPET: 7.3% and nanoPP; 6.8%). Dispersion of PS-COOH and nanoPET in CCM increased the CV to 15.1 and 14.2%, respectively, which is lower than literature reports (CV = 30%). We conclude with a series of practical recommendations for robust size measurements of nanoplastics in both water and complex media highlighting that strict adherence to a standard operating procedure is required to prevent particle agglomeration in CCM.
Environmental significanceNanoplastic test materials with increased complexity regarding shape, surface chemistry and polydispersity are developed to mimic environmental nanoplastics. These materials are used to study eco-corona formation, biodistribution, and toxicity. Particle size is a key parameter and dynamic light scattering (DLS) is widely used for size analysis. Nanoplastic complexity is challenging for DLS, which calculates size based on the assumption of monodisperse, spherical particles. To evaluate how nanoplastic complexity influences DLS measurements, an inter-laboratory comparison was performed. Nanosized PET (spherical, polydisperse) and nanosized PP (irregular, polydisperse) showed a similar variability for measurements in water and cell culture medium compared to spherical monodisperse polystyrene beads. We conclude that nanoplastic complexity does not increase DLS variability if validated protocols are used. |
A second challenge is that model nanoplastics are required for different intended uses, the two most common being: 1) for the calibration of analytical instruments and 2) for testing the behavior and effects of nanoplastics in both an environmental and physiological context.11,12 While ideally the nanoplastics themselves should be identical in all applications, the nanoplastic products developed, which includes the choice of packaging (single unit or multi-unit containers), the concentrations provided, the presence of stabilizing additives, as well as the scope of testing and certification, will be very different depending on application. For example, a nanoplastic product developed as a standard for instrument calibration is typically provided at a concentration optimized for the instrument calibration process. Multiple handling steps, such as dilutions, are avoided to reduce sources of error. Additives, such as suspension stabilizers or preservatives, are acceptable if they do not influence the measurement. These products must also be rigorously tested for homogeneity and stability with respect to a specific property, in order to achieve reference material status (Table 1).11,13–15 In contrast, nanoplastic products used for toxicology studies or to assess environmental disposition are ideally provided in concentrated form to allow for dosing flexibility. This necessitates additional handling steps, such as dilutions. Additives are frequently undesired, as they can cause artefacts in different assays. The suite of characterization methods required for these applications are typically quite different to those required for reference materials, often including detailed characterization of surface chemistry, product sterility, and/or endotoxin content.11,12 Based on these distinctions, such nanoplastic products are mainly categorized as research grade test materials (Table 1).
| Category | Definition |
|---|---|
| Research grade test material | Exploratory materials developed for current research needs, which are subject to continuous stability measurements. The extent of characterization depends on the needs of the user community and is therefore not standardized |
| Reference material | A material, homogeneous and stable with respect to one or more specified property values, which has been established to be for its intended use in a measurement process |
| Certified reference material | A material characterized by a metrologically valid procedure for one or more specified properties, accompanied by a reference material certificate that provides the value of the specified property, its associated uncertainty, and a statement of metrological traceability |
| NIST standard reference material® | A certified reference material issued by NIST that also meets additional NIST-specific certification criteria and is issued with a certificate or certificate of analysis that reports the results of its characterizations and provides information regarding the appropriate use(s) of the material |
Since new nanoplastic materials are becoming increasingly available to the research community for a variety of applications,6,8,10,12,17–19 questions have been raised as to the accuracy and reproducibility of size measurements using dynamic light scattering (DLS) for these more irregular, polydisperse materials.20 To evaluate the precision and accuracy of DLS measurements on such nanoplastic dispersions, an inter-laboratory comparison (ILC) focused on nanoplastics was conducted. Two types of nanoplastic product formats were examined. The first was a research grade test material comprised of nanosized polyethylene terephthalate (nanoPET), which was provided in concentrated form requiring multiple dilution steps. Since the nanoPET product was designed for use in in vitro toxicity assays, an understanding of colloidal behavior and size stability in cell culture medium (CCM) was also investigated.9,21–24 The second product comprised a nanosized poly propylene (nanoPP) dispersion. This product was designed for instrument calibration, in particular for size measurements using DLS, with the aim of applying for reference material status following completion of homogeneity and stability testing.
Several key reports on the evaluation of DLS measurements for nanoplastics (in particular polystyrene) in both simple and complex media have been published.21,25–27 Notably, Langevin et al. (2018) conducted an ILC investigating the accuracy and reproducibility of nanoparticle size measurements in biological media for two commonly used particle sizing methods, i.e. DLS and differential centrifugal sedimentation.26 They recruited 40 labs to participate, although not all labs provided data in all rounds. They measured three types of well-characterized materials: 1) near-spherical silica nanoparticles (reported diameters: 19 nm and 100 nm), 2) spherical, carboxy-modified polystyrene nanoparticles (PS-COOH; reported diameter: 50 nm) and 3) spherical, amine-modified polystyrene nanoparticles (reported diameter: 50 nm). All materials were measured first in water, then in CCM.
In the first ILC round, each laboratory used their in-house established procedures. Following this, a harmonized standard operating procedure (SOP) was developed by four expert laboratories and tested for robustness by eleven independent users in a second round (published in full in the SI). A bespoke SOP was developed for measurements in CCM and was tested by eight participating laboratories. The authors concluded that well-established and fit-for-purpose SOPs are indispensable for obtaining reliable and comparable particle size data, especially when measuring in complex media. Importantly, the SOPs must be optimized with respect to the intended measurement system (e.g. particle size technique, type of dispersant) and must be sufficiently detailed to avoid ambiguity.
In subsequent studies, Takahashi et al. (2019) and Coones et al. (2025) addressed the question of how to relate particle sizes measured using a fixed-angle DLS instrument with those measured using a multi-angle DLS.25,27 The focus of these more technical studies was to establish the functional dependence of the measured particle size on the scattering angle and particle concentration. However, since the aims and scope of the Langevin et al. (2018) study more closely matched the interests of the nanoplastic research community, we chose to adopt their study design and use their SOPs for the current study.
To enable direct comparison of our results to published data, we chose to include the same spherical, monodisperse PS-COOH nanoparticles (nominal 50 nm diameter) as a benchmark material. Additionally, we evaluated two nanoplastic test materials (Fig. 1) produced by projects of the CUSP cluster funded by the Horizon2020 program of the European Commission (https://cusp-research.eu/) and the Metrology Partnership project 21GRD07 PlasticTrace (https://plastictrace.eu/). NanoPET test materials were produced via a bottom-up anti-solvent precipitation method with a final concentration of ∼6 mg mL−1. The preparation via precipitation yielded particles with a spherical morphology, moderate polydispersity and an electronegative surface charge with a zeta potential of −42 ± 2 mV (pH 4.75; MilliQ water, conductivity: 0.009 ± 0.0005 mS cm−1). NanoPP reference materials were prepared via a top-down approach using milling in chilled acetone to produce submicron-sized fragments at a more dilute concentration (0.04 mg mL−1). Since nanoPP materials were produced via mechanical breakdown,6 the particles exhibited an irregular morphology (Fig. 1). In MilliQ water (pH 4.75; conductivity: 0.009 ± 0.0005 mS cm−1), the nanoPP also displayed an electronegative surface charge with a zeta potential of −43 ± 2 mV.
![]() | ||
| Fig. 1 Description and representative scanning electron micrograph (SEM) images of the three test materials used in the study: PS-COOH, nanoPET and nanoPP. Note: The image of the polystyrene beads is a representative image from the manufacturer website28 and is not provided at scale. | ||
Since PS-COOH and nanoPET test materials were designed for multiple applications and therefore provided as highly concentrated suspensions, both systems had to be diluted prior to DLS measurement to a concentration of 0.1 mg mL−1. NanoPP test materials, in contrast, were designed to be used as reference materials for instrument calibration purposes only. As stated above, it is advantageous in such applications to provide the material in a ready-to-use form which negates the need for additional handling steps. Thus, the nanoPP provided in this study had a low concentration of 0.04 mg mL−1 in water. Since it was not possible to dilute this material with CCM and remain in a measurable concentration range, nanoPP was only tested in water during this study.
Firstly, we hypothesized that increased nanoplastic material complexity, especially regarding shape and polydispersity, would result in higher measurement variability when measuring in water. Secondly, it is known that dilution into complex media with high ionic strength, such as serum-supplemented CCM, may influence the particle size distribution determined by DLS9 and increase variability. Therefore, a second aim of this study was to establish simple quality criteria for DLS measurements of more complex nanoplastic samples, which can be easily adopted and understood by user groups without expert-level knowledge of DLS. Since particle size and size distribution are crucial parameters in toxicity studies, this ILC provides recommendations to harmonize size characterization measurements across the nanoplastic research community.
000 rpm. The suspension was then filtered using a folded filter to remove the larger aggregates. Acetone in the filtrate was evaporated until ca. 10% of the liquid remained, then MilliQ water (250 mL) was added to the mixture, the remaining acetone was removed with a rotary evaporator and the suspension filtered using a folded filter. The nanoPP is provided as a MilliQ water suspension without any further stabilizing additives and a concentration of 0.04 mg mL−1.
The nanoPP samples were provided as an aqueous dispersion at a concentration of 0.04 mg mL−1 and were therefore measured as received without dilution. Prior to measurement, samples were briefly vortexed for 30 s at full speed and measured immediately (n = 3 separate aliquots with n = 3 technical replicates each).
| Lab | Instrument | Detection angle° | Operator experience (years) |
|---|---|---|---|
| 1 | NanoZS (Malvern Panalytical) | 173° backscatter | 2 |
| 2 | Nano ZSP (Malvern Panalytical) | 173° backscatter | 3 |
| 3 | Zetasizer Pro Blue Light Scattering System (ZSU3200; Malvern Panalytical) | Not provided | 4 |
| 4 | ZetaSizer Ultra (Malvern Panalytical) | 173° backscatter | 7 |
| 5 | NanoZS ZEN 3600 (Malvern Panalytical) | 173° backscatter | 10 |
| 6 | NanoZS (Malvern Panalytical) | 173° backscatter | 2 |
| 7 | NanoZSP (Malvern Panalytical) | 173° backscatter | 10 |
| 8 | NanoZS (Malvern Panalytical) | 173° backscatter | 4 |
| 9 | NanoZS ZEN 3600 (Malvern Panalytical) | 173° backscatter | 2 |
| 10 | NanoZS (Malvern Panalytical) | 173° backscatter | >10 |
| 11 | NanoZS (Malvern Panalytical) | 173° backscatter | >25 |
| 12 | NanoZS (Malvern Panalytical) | 173° backscatter | 12 |
| 13 | NanoZS (Malvern Panalytical) | 173° backscatter | 1 |
| 14 | Litesizer500 (Anton Paar) | 175° backscatter | 1 |
| 15 | Litesizer500 (Anton Paar) | 90° and 175° backscatter | >10 |
| 16 | NanoPlus-3 (Micromeritics) | 160° (automatic) | 1 |
Quartz or high-quality optical glass cuvettes were recommended, but good quality plastic cuvettes were also included in the study parameters. All cuvettes, but in particular the more scratch-prone plastic cuvettes, were routinely inspected prior to use and discarded if surface scratches or defects were visible. Clean cuvettes were pre-rinsed with filtered MilliQ water at least three times prior to sample loading (preferably in a high efficiency particulate air-filtered clean bench if available). The required volume of NP dispersion was filled into the DLS cuvette using the minimum volume necessary to ensure that the liquid level was at least 2 mm above the entrance height of the laser beam. Overfilling was avoided to prevent thermal gradients that adversely impact measurement accuracy. Cuvettes were visually inspected to ensure that air bubbles were not present within the optical window area prior to insertion into the instrument. Measurements were conducted at temperatures close to ambient room temperature, ideally between 23–25 °C. Diluent viscosity values and refractive indices for all materials can be found in Table 3.
| Viscosity (mPa s) | Refractive index | |
|---|---|---|
| a Suitable for wavelengths between 488–750 nm within the temperature range of 20 °C to 25 °C. b Suitable for wavelengths between 400 nm – 2 μm within the temperature range of 20 °C to 25 °C.31 | ||
| Water 23 °C | 0.932 | 1.330a |
| Water 24 °C | 0.910 | |
| Water 25 °C | 0.890 | |
| Cell culture medium | 1.090 | 1.335a |
| PS-COOH | — | 1.590b |
| nanoPP | — | 1.490b |
| nanoPET | — | 1.569b |
The Z-average (Z-Ave) value of the nine DLS measurements is derived from the cumulants approach for calculating the average size of a distribution of particles based on analysis of the linear form of the measured correlogram (scattered light intensity-weighted harmonic mean hydrodynamic diameter). The analysis assumes that the particles belong to a single population which follows a Gaussian distribution. The polydispersity index (PDI) is the relative variance of the hypothetical Gaussian distribution.32–34 Representative examples of particle size distribution curves and fitted correlograms are provided in the (SI) Fig. S1 and S2. No evidence of particle sedimentation or flotation was reported during the time course of all measurements. Files with all raw data are available in Zenodo: https://doi.org/10.5281/zenodo.17105630.
![]() | (1) |
According to ISO/IEC 17043:2010,35 the measurements of ILC contributor laboratories are acceptable if xi ± SDi falls within the range of xw ± 2SDw. Thus, all black lines in figures represent xw while dashed lines represent ± 2SDw and define the consensus interval in which the results are expected to fall assuming a confidence level of 95%.
SEM images of nanoPET and nanoPP (Fig. 1) were used to assess the Feret diameter distributions and particle aspect ratios of the nanoPET and nanoPP samples (Fig. 2). Size distribution data of the PS-COOH samples was provided in the material data sheet of the commercial product. The analysis verifies the hypothesis that particle complexity increases in terms of polydispersity and shape irregularity over the series of nanoplastics tested (complexity: PS-COOH < nanoPET < nanoPP).
![]() | ||
| Fig. 2 SEM-derived particle size distributions were generated from the Feret diameters of the spherical nanoPET particles (B; n = 100) and the minimum and maximum Feret diameters for the irregular nanoPP particles (C; n = 84).30 The PS-COOH distribution (A) was calculated from the reported diameter and CV% provided by the manufacturer. | ||
| Water | CCM | |||||
|---|---|---|---|---|---|---|
| Current studyb | Langevin et al. ILC #1a | Langevin et al. ILC #2b | Current studyb | Langevin et al. ILC #3b | ||
| a Denotes no common SOP. b Denotes use of the same SOP. n.d. = not determined. | ||||||
| Non- weighted global mean | x nw (nm) | 57 | n.d. | n.d. | 62 | n.d. |
| 1SDnw (nm) | 4 | n.d. | n.d. | 3 | n.d. | |
| CVnw (%) | 6.4 | n.d. | n.d. | 4.7 | n.d. | |
| Weighted global mean | x w (nm) | 55 | 55 | 46 | 60 | 50 |
| 1SDw (nm) | 5 | 3 | 2 | 3 | 15 | |
| CVw (%) | 8.2 | 5.5 | 4.4 | 5.3 | 30.0 | |
| n | 87 | 162 | 199 | 45 | 72 | |
| nanoPET (water) | nanoPET (CCM) #1 | nanoPET (CCM) #2 | nanoPP (water) | ||
|---|---|---|---|---|---|
| Non- weighted global mean | x nw (nm) | 83 | 78 | 80 | 187 |
| 1SDnw (nm) | 6 | 9 | 8 | 13 | |
| CVnw (%) | 7.6 | 11.2 | 9.5 | 7.1 | |
| Weighted global mean | x w (nm) | 82 | 75 | 75 | 182 |
| 1SDw (nm) | 6 | 11 | 12 | 12 | |
| CVw (%) | 7.3 | 14.2 | 16.5 | 6.8 | |
| n | 132 | 81 | 65 | 138 |
The most important repulsion mechanisms include 1) charge repulsion (when the electrostatic charge of two neighboring particles are similar and repulse each other) and 2) steric repulsion (when two particles exhibit irregular surfaces that prevent close contact of particle surfaces thus reducing attractive forces). Since most nanomaterials carry some surface charge in aqueous environments due to the ionization/dissociation of surface groups, or the adsorption of charged molecules or ions to the particle surface, they show some form of charge repulsion. The true surface charge is not easy to measure and is therefore commonly approximated by measuring the zeta potential (ZP) value in a dilute salt solution (typically 10–15 mM sodium chloride). The ZP is the electrostatic potential of the particles measured at the shear plane, i.e. at the distance from the surface where ions are not bound to the particle. For more background information on the ZP, please refer to the following sources.38–41 Importantly, a highly positive or negative zeta potential (typically greater than ±30 mV) indicates a sufficient charge repulsion for good colloidal stability in aqueous dispersants.42 Additives to dispersion media which alter the ion content (e.g. electrolytes) or pH (e.g. buffers) will alter the charge state of the particles (and the ZP value) with the possibility of charge neutralization, which can result in aggregation through a reduction in charge repulsion.9
When considering the chemical structure of the nanoplastics used in the current study, we would expect the ZP of the PS-COOH to be highly negative in a diluted salt solution with a neutral pH (Fig. 1), since the majority of the carboxyl groups at the surface will be deprotonated and carry an anionic charge. Contrary to expectations, the ZP of the nanoPET and nanoPP used here are also negative (Fig. 1), a phenomenon that has been reported for other micro- and nanoplastics.6,24 The observation of strongly electronegative ZP values measured for insoluble, hydrophobic micro- and nanoplastics dispersed at a physiological pH is a controversial topic in plastics research. Among the diverse explanations for the negative ZP of hydrophobic particles are the adsorption of anionic species such as hydroxyl43 and bicarbonate ions44 to the particle surface, interfacial polarization,40 adsorption of charge transfer between water molecules,45 and surface-active charged impurities.46,47
In addition to the mechanisms described above, we also hypothesize that the respective fabrication methods (nanoprecipitation and wet-crushing) may play a role in introducing charged functional groups (e.g. hydroxyl, carbonyl or carboxyl groups) to the nanoPET and nanoPP surface, improving their colloidal stability in aqueous media, even at higher concentrations.19 It is intriguing to observe that even minor differences in production procedures, such as the choice of solvents, can result in test materials with vastly different colloidal stability.19 For example, Wimmer et al. (2025), produced PET nanoplastics by dissolving PET in heated benzyl alcohol and precipitating into chilled ethanol. Dispersion of these PET nanoplastics was not possible in aqueous media without a surfactant stabilizer,12 indicating a lack of surface charge necessary for colloidal stability. In contrast, the nanoPET studied here was dissolved at room temperature in HFIP and precipitated directly into water, forming nanoparticles with sufficient surface charge for colloidal stability at concentrations up to ∼6 mg mL−1. Similarly, Wimmer et al. (2025) prepared nanosized PP materials by dissolving PP in heated xylene and injecting it into chilled ethanol. This method also resulted in nanomaterials without sufficient charge repulsion for colloidal stability in water,12 in contrast to the wet-milled nanoPP studied here. Both comparisons highlight how nanomaterial surface properties can be effectively manipulated by the production procedure.
| Component classes and CCM properties | Component/parameter details | DMEM + 10% FBS | MEM + 10% FBS | RPMI + 10% FBS | Human plasma |
|---|---|---|---|---|---|
| Amino acids | Total (mM) | 10.65 | 5.43 | 6.44 | 2.32–4.05 |
| Vitamins | Total (mM) | 0.15 | 0.04 | 0.24 | <0.07 |
| Cations | Sodium (mM) | 155.31 | 144.44 | 124.27 | 142.00 |
| Potassium (mM) | 5.33 | 5.33 | 5.33 | 4.00 | |
| Calcium (mM) | 1.80 | 1.80 | 0.42 | 2.50 | |
| Magnesium (mM) | 0.81 | 0.81 | 0.41 | 1.50 | |
| Iron (mM) | 0.25 | 0.25 | n/a | 10–27 | |
| Anions | Chloride (mM) | 117.47 | 124.37 | 100.16 | 103.00 |
| Bicarbonate (mM) | 44.05 | 26.19 | 23.81 | 27.00 | |
| Sulfate (mM) | 0.81 | 0.81 | 0.41 | 0.50 | |
| Nitrate (mM) | 0.74 | n/a | 0.85 | 20.00 | |
| Phosphate (mM) | 0.92 | 1.01 | 5.63 | 1.00 | |
| Proteins | Total (g L−1) | 3.00–4.50 | 3.00–4.50 | 3.00–4.50 | 65–80 |
| Serum albumin (mM) | 0.05 | 0.05 | 0.05 | 0.58 | |
| α-Globulins (g L−1) | 0.30 | 0.30 | 0.30 | 8.10 | |
| β-Globulins (g L−1) | 0.27 | 0.27 | 0.27 | 11.50 | |
| γ-Globulins (g L−1) | 0.07 | 0.07 | 0.07 | 15.60 | |
| IgG (mM) | 3.25 | 3.25 | 3.25 | 0.08 | |
| Parameters | pH range | 7.00–7.40 | 7.00–7.40 | 7.00–7.40 | 7.34–7.42 |
| Osmolality (mOsm kg−1) | 320–360 | 280–320 | 270–310 | 276–295 |
It is important to note that CCM contains a variety of amphiphilic biomolecules, such as proteins, which can adsorb onto the particle surface (thereby changing the surface charge) and achieving colloidal stability primarily via steric hindrance with only a minor contribution of charge repulsion.9 The important role of steric stabilization is exemplified by the reduction of the zeta potential of most nanomaterials when dispersed in CCM. For example, the ZP of stable dispersions of PS-COOH and nanoPET in CCM were reduced from ∼−42 mV (in MilliQ water) to −11.1 ± 0.8 mV and −10.8 ± 0.5 mV in CCM, respectively. It is important to acknowledge that protein adsorption to the particle surface (i.e. biocorona formation) may have opposite effects on colloidal stability, depending upon the material and kind of proteins. In fact, while proteins can improve colloidal stability, in some cases they can promote particle agglomeration (reversible) and aggregation (irreversible). For example, both incomplete surface coverage and particle bridging phenomena (i.e. the linkage of two particles via the surface coating) can result in agglomeration and aggregation.9 Because of these limitations, it is extremely important to validate dispersion SOPs (recommendations in section 3.7) prior to performing routine measurements.50,51
One laboratory with two instruments (13, 14*) volunteered to measure serial dilutions of PS-COOH and nanoPET in water, comparing the hydrodynamic diameters of the dilutions with the previously established consensus range. Z-Ave values of PS-COOH dilutions were not stable, steadily decreasing with increasing concentration, while the nanoPET Z-Ave values were constant between 0.1–1 mg mL−1 (Fig. 7). Low concentrations (i.e., 0.01 mg mL−1) showed higher variations between measurements and instruments, although it should be noted that only one lab provided these measurements and further replication by other ILC participants is recommended. However, the results suggest that PS-COOH and nanoPET samples measured at elevated concentrations should theoretically fall within the consensus range. For two erroneous PS-COOH samples (2.8 mg mL−1), this was the case (60 ± 1 nm; n = 18), while one nanoPET (0.6 mg mL−1) sample fell outside the consensus range (106 ± 1 nm; n = 9). Generally, it appears that a measurement concentration of 0.1 mg mL−1 is well-suited for DLS measurements of PS-COOH and nanoPET. DLS measurements of serial dilutions are helpful to establish the ideal measurement range and measurements of moderately higher concentrations are acceptable if within the stable measurement range.
![]() | ||
| Fig. 7 Scattered light intensity-based harmonic mean hydrodynamic diameter (Z-Ave) of PS-COOH (left) and nanoPET (right) at different concentrations. Black lines depict the weighted global mean xw, and dashed lines correspond to ± 2SDw from Fig. 2 and 3. Values for each measurement depict the xi ± 1SDi (n = 9) from one lab with access to a Malvern Pananalytic device (13) and an Anton Paar device (14*). | ||
Secondly, we recommend that laboratories routinely measure a benchmark material, such as PS-COOH, using the optimized SOPs published in the ESI. This is useful for checking instrument functionality, ensuring that all settings are correct, training new users and adding useful benchmark data to the literature. When evaluating new test materials, we encourage labs to produce multiple replicate datasets in water before moving on to measurements in CCM. Size data generated in water provides a valuable reference for the more variable size data generated in complex media. Furthermore, it should be highlighted that the nanoPET and nanoPP materials studied here, despite their increasing complexity, are still “model” nanoplastics and not true environmental particles. Naturally weathered nanoplastics will likely exhibit an even greater complexity, such as a broader size distribution, high sample-to-sample variability, different surface modifications and eco-coronas. Therefore, understanding the sources of data variation in DLS measurements and the use of complementary sizing techniques (such as image-based analysis) is important for understanding complex environmental samples.
To further improve comparisons of DLS measurement quality across users and test materials, we recommend documentation and reporting of CVw values whenever possible. As a general guide, CV values of DLS measurements in water should not exceed 10%. This arbitrary limit, based on empirical data from the current study and literature, appears to be suitable for both spherical, monodisperse samples (e.g. PS-COOH) as well as irregular shaped samples with a greater polydispersity (e.g. nanoPET and nanoPP). Due to the greater inherent degree of measurement variability observed for dispersions in CCM,9,26 we recommend a CV of <30% as a realistic guide for tolerable measurement variability of nanoplastics dispersed in CCM. Importantly, it should be emphasized that the proposed CV thresholds (<10% in water, <30% in CCM) are valuable guidance criteria but should not be misinterpreted as universal standards, since they are derived from empirical observations reported in two limited datasets and are not regulatory specifications. We therefore caution against over interpretation of these values.
Supplementary information is available. See DOI: https://doi.org/10.1039/d5en00645g.
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