| Literature DB >> 34283280 |
Darena Schymanski1,2, Barbara E Oßmann3, Nizar Benismail4, Kada Boukerma5, Gerald Dallmann6, Elisabeth von der Esch7, Dieter Fischer8, Franziska Fischer8, Douglas Gilliland9, Karl Glas10, Thomas Hofmann10, Andrea Käppler6, Sílvia Lacorte11, Julie Marco12, Maria El Rakwe5, Jana Weisser10, Cordula Witzig13, Nicole Zumbülte13, Natalia P Ivleva14.
Abstract
Microplastics are a widespread contaminant found not only in various natural habitats but also in drinking waters. With spectroscopic methods, the polymer type, number, size, and size distribution as well as the shape of microplastic particles in waters can be determined, which is of great relevance to toxicological studies. Methods used in studies so far show a huge diversity regarding experimental setups and often a lack of certain quality assurance aspects. To overcome these problems, this critical review and consensus paper of 12 European analytical laboratories and institutions, dealing with microplastic particle identification and quantification with spectroscopic methods, gives guidance toward harmonized microplastic particle analysis in clean waters. The aims of this paper are to (i) improve the reliability of microplastic analysis, (ii) facilitate and improve the planning of sample preparation and microplastic detection, and (iii) provide a better understanding regarding the evaluation of already existing studies. With these aims, we hope to make an important step toward harmonization of microplastic particle analysis in clean water samples and, thus, allow the comparability of results obtained in different studies by using similar or harmonized methods. Clean water samples, for the purpose of this paper, are considered to comprise all water samples with low matrix content, in particular drinking, tap, and bottled water, but also other water types such as clean freshwater.Entities:
Keywords: Bottled water; Clean water; Drinking water; Micro-(FT)IR spectroscopy; Micro-Raman spectroscopy; Microplastic
Mesh:
Substances:
Year: 2021 PMID: 34283280 PMCID: PMC8440246 DOI: 10.1007/s00216-021-03498-y
Source DB: PubMed Journal: Anal Bioanal Chem ISSN: 1618-2642 Impact factor: 4.142
Minimum requirements and the best practice guidelines for the analysis of microplastics in drinking water and other clean water samples with micro-Raman and micro-infrared spectroscopy
| Method | Minimum requirement | Best practice |
|---|---|---|
| Avoiding sample contamination | ||
| Air purity, type of floor/wall | Clean lab, linoleum or tiling floor, no carpet | Controlled air flow, clean room |
| Type of extraction hood | Laboratory hood surfaces must be thoroughly cleaned with filtered liquid (e.g., water) to avoid microparticle contamination | Laminar flow cabinet |
| Type of lab coat, clothes, gloves | Cotton lab coat, beneath: avoid all clothes with potential release of synthetic textile fibers Gloves: if used, check critically for potential contamination | Hairnet, beard protector/guard |
| Operator precautions | Wash hands, tie back hair, if mask must be worn, use N95 | No make-up, no hydration cream |
| Sampling | ||
| Type of sampling container or online process | Clean containers Minimize plastic use during sampling | Glass or stainless steel—avoid plastic component/item |
| Volume of sample | Volume adapted considering the water type (number and size distribution of microparticles) | Volume adapted to the container (e.g., entire packed bottle) Avoid sub-sampling, if possible |
| Number of replicates | 1 | Minimum 3 |
| Preparation of sampling container | Mechanical cleaning and rinsing (e.g., cleaning with particle-free water) | Filtrated tension-active/surfactant or chemical solution (e.g., sodium dodecyl sulfate, chromosulfuric acid) |
| Sample preparation | ||
| Cleaning of the outer side of the sampling container | Mechanical cleaning and rinsing before entering the lab hood/clean bench | |
| Addition of reagent, use of tools | If adding reagents: check for purity/possible contamination through blank samples; filtration advised with further check of contamination Use of pre-cleaned glassware and tools (glass pipette) Avoid plastic tools/pipettes | |
| Sample filtration | ||
| Filtration steps | 1 | |
| Nature of filter | Free choice | Check the quality of the filter surface: it should be default-free and very flat
• Silicon (FTIR, Raman) • Metal (Au, Al)-coated PC filter (IR, Raman): exclusion of PC results advised; at least careful checking of the level and stability of the blank needed • Aluminum oxide (IR) • PTFE (Raman): exclusion of PTFE results advised; at least careful checking of the level and stability of the blank needed
Free choice, e.g., above-named filters or others, e.g., nitrocellulose |
| Filter features (pore size, dimensions) | Filter pore size must be adapted to the size of particles delivered in the report (information about filter pore size should be given in the report) | To reduce the time of analysis, the smallest possible filter surface should be chosen If background correction is applied in spectroscopy, pay attention to the distances between pores to obtain adequate background signals from the filter |
| Nature of filter holder and other materials used | Avoid plastic tools as alternatives are existing Use of plastic devices (e.g., PTFE) needs critical and very strict control (check blanks) with possible exclusion of corresponding polymer particles | Stainless steel, glass, or colored PTFE (colored with blue or red dye; allows the laboratory to give results for PTFE, with exclusion of the dyed material from the results) |
| Volume of sample filtered | Sub-filtration possible; if it is done, it has to be stated in the report | Ideally filtration of the entire sampling volume to reduce inhomogeneity when aliquoting the sample |
| Rinsing conditions after filtration | Glassware rinsed once with particle-free water after initial filtration of the sample to maximize the recuperation of microparticles potentially stuck at the surface of glassware. Be aware that the rinsing step might bring contamination (check blank values) | |
| Handling, transport, and storage of the filter | Protection of the filter from atmospheric deposit needed, e.g., in glass Petri dishes or metal containers It is highly recommended to avoid plastic containers (possible contamination; electrostatic charging may result in a loss of particles) | |
| Laboratory blanks | ||
| Matrix used | Particle-free water: tested in the lab or water bought and tested | |
| Frequency of blank samples during routine analysis | 1 blank per series or day for a maximum of 10 samples | More than one blank per day or 10 samples |
| Acceptance criterion for blank routine analysis (MPs/blank), for validation or invalidation of the series | The sum of all kinds of MPs in the blank sample must not exceed the LOD of the method (see below) for accepting the results of the series If the number of MPs in the blank sample is higher, some contamination occurred during sample processing that could have polluted the samples, leading to false-positive results | |
| Analysis | ||
| Particle detection mode | Parameters for image acquisition (e.g., focus, contrast/brightness) have to be adapted in order to obtain correct images for particle detection (e.g., for correct size determination) | Auto or semiautomatic particle detection possible. Dark-field illumination can be used to improve the detection of small particles (< 5 μm). Critical parameters for particle detection may ideally be adjusted automatically or should be fixed in order to avoid inter-operator bias. Less important for mapping/imaging during Raman/IR measurement. |
| Size range of MPs targeted (μm) | Information on smallest particle size analyzed (size range and distribution) If particle numbers are reported in a binned form, the following size classes should be used: 1–5 μm, 5–10 μm, 10–20 μm, 20–50 μm, 50–100 μm, 100–500 μm, > 500 μm | For future best practice, the specific particle sizes, e.g., in the form of raw data, should be provided for further data analysis and modeling. |
| Libraries used | Minimal included polymer types: PE, PET, PP, PS, PC, PVC, PMMA, PTFE, nylon (PA), PU (several types) Natural materials present in samples (e.g., proteins, cellulose) to avoid mistaking with, e.g., PA (see Supplementary information (ESM), section S1) | Additionally, spectral data for additives (e.g., pigments (Raman)), elastomers, further naturally occurring materials (e.g., minerals) Homemade spectral database, for example, including materials from sample packaging, containers, and materials used in the laboratory |
| Match acceptance criterion between sample spectra and database reference | If the laboratory is using a fixed limit for automatic acceptance of spectral matching with the database (e.g., hit quality index, HQI): The minimum limit can be set at a matching result of, for example, > 70% The lab has to approve initially that the automatic identification for spectral matching above this value is correct, e.g., through operator/human review of the characteristic peaks in the spectra. Afterwards, the lab is free to consider particles with spectral matching below this value as identified, when the identity is confirmed via operator/human review. Be aware that different software may produce different values for the HQI and that a verification of the algorithm has to be done to confirm the correct identification of the material (see “Data processing”). Besides classical database search, other identification techniques, such as a homemade semiautomatic identification via mathematical algorithms (e.g., classical least squares (CLS), including manual review of results), model-based classification (e.g., random decision forest (RDF) classifiers) are possible after validation of the recognition model. | Pay attention to the spectra of nylon and proteins, which are very similar in IR and Raman spectra (compare “Data processing” and ESM, section S1). The same kind of spectral similarities could issue with Polyethylene and molecules containing long CH-chains, e.g., stearates leading to potential false-positive identification. |
| Objective used | Depends on samples and equipment type—must allow to obtain a good image/signal | Adjust the objective to the analyzed particle size, e.g., for Raman, particles of 1 μm can be measured with a 50× objective |
| IR acquisition mode | Transmission and reflection modes for micro-(FT)IR are easier/faster to use ATR: only for particles > 100 μm. Slower, more difficult to use and attention must be paid to the cleaning of the device (germanium/diamond) with contact mode to get rid of any cross contamination | |
| Range of acquisition (cm−1) | IR: 1250–3600 cm-1 Raman: 200–2000 cm-1 | IR: entire MID-IR range Raman: 50–4000 cm−1 (Raman) |
| Raman laser wavelength used (nm) | 532 nm or 785 nm | |
| Raman laser beam spot size (μm) | Spot size depends on the instrumentation (information on the spot size has to be given in the report) | Down to 1 μm, if particles of that size have to be analyzed |
| Raman laser parameters | Laser parameters should not cause particle destruction (RM) Acquisition time minimal 1 s for single particle measurement to reach an acceptable signal-to-noise ratio. For imaging, shorter time can be used. | Measurement time as long as necessary to get good spectra, but as short as possible to save time. Some examples are given for a mean generic value to start the acquisition testing of a sample: silicon filter/magnification 20× (NA 0.50) or 50× (NA 0.55)/laser power (532 nm) 5 mW or 6 mW, (785 nm) 15 mW Au-coated PC filter/magnification 20× (NA 0.50) or 50× (NA 0.55)/ laser power (532 nm) 3 mW/5 s, 10 s or 20 s Al-coated PC filter/magnification 50× (NA 0.55)/laser power (532 nm) 3 mW–(785 nm) 5 mW/2 s |
| Spectral resolution (cm−1) | IR : ≤ 8 cm-1 | |
| Number of particles/surface of filter analyzed | Different approaches are possible to analyze particles on the filter. Different possibilities are listed below (beginning with the most favorable model) (1 A) THE TOTAL SURFACE MODEL If the total number of particles is < 1000 (< 500 for practical reasons, < 5000 or 7000 for best practice), all particles on the filter surface should be analyzed by spectral recognition.
ALL particles > 50 μm (up to 1000) have to be counted and measured (if possible with imaging/sizing system), especially for environmental or complex (e.g., food) samples. For particles < 50 μm, one of the following models should be chosen: (1 B) THE RANDOM MODEL Choose randomly a selected number (1000 particles at minimum, 500 for practical reasons, 5000 or 7000 particles for best practice) to be analyzed/identified. (1 C) THE “CAKE” MODEL If random particle selection is not possible, at least one region representing “a piece of cake” (from the center of the filter to the border of the filter, for example, a quarter of the filter is a piece of cake by 1/4) has to be chosen for analysis. Its surface should be at least 20% of the total filter surface, when analyzing particles down to 10 μm (IR) or 5 μm (RM), and at least 4% of the total filter surface, when analyzing particles down to 1 μm. Additionally, the number of particles analyzed on this piece of cake must exceed 1000 (500 for practical reasons, 5000 or 7000 particles for best practice). (1 D) THE HELIX or “SNAIL” MODEL If it is technically not possible to choose random model, at least 5 regions on the filter have to be chosen for analysis. Their total surface should be at least 20% of the total filter surface, when analyzing particles down to 10 μm (IR) or 5 μm (RM), and at least 4% of the total filter surface, when analyzing particles down to 1 μm. Additionally, the number of particles analyzed for the chosen regions must exceed 1000 (500 for practical reasons, 5000 or 7000 particles for best practice).
- All particles on the entire filter surface must be analyzed with spectral recognition up to a total number of particles of 1000 (500 for practical reasons) as minimum requirement (> 2000 for best practice approach) - Analysis of all particles > 50 μm up to 1000 (500 for practical reasons) (possible with imaging/sizing system) The final results are obtained as the sum of the particles above and below 50 μm (measured with one of the above-described models; each extrapolated to all particles detected in the corresponding size range). | Spectral recognition of all particles on the filter, if possible. If too many particles occur on the filter, a |
| Method validation | ||
| Description of the way to validate the method | I. Verification of size measurement of the equipment, e.g., with particles of known size II. Verification of qualitative polymer identification at the claimed minimal size, at least for the main polymer types (PE, PET, PC, PP, PVC, PS, etc.) III. Determination of the LOD as the mean of all MPs identified in 10 blank samples + their threefold standard deviation: Re-determination after modifications of the method | IV. Verification of the recovery rates of the entire method V. Inter laboratory comparison (ILC) and proficiency tests (PT) |
| Data processing | ||
| Information to be given in the report | • Total number of particles in the sample or sub-sample (if available) • Number of particles analyzed • LOD • Number of total microplastics identified (calculation or measurement) ➢ By type of polymer ➢ By size ranges ➢ No blank subtraction • If sub-sampling during measurement was done: analyzed area of the filter (%) or statistical percentage of analyzed particles on the total number of particles (%) The laboratory should report quantitative results only, if the results exceed the LOD. Otherwise, results can be given as < LOD. | Additional information, if requested: • Shape (fragment, fiber, or bead) • Color, pictures of particles or filters • Number of (potential) MPs not included in the minimum set of polymer classes. Total number of non-plastic particles identified (e.g., minerals, proteins, cellulose), by type, by size range, etc. • Total number of non-identified particles If qualitative information is given about particles smaller than the pore size of the filter, it must be demonstrated that these particles were intrinsic to the sample. Further, it must be stated that these data are not representative. For future best practice, the specific particles size, e.g., in the form of raw data, should be provided for further data analysis and modeling. |
Fig. 1Important precautions and advice for the analysis of microplastics
Fig. 2Illustration of the three sub-sampling models and their effects on introduced errors. Left, “cake” model. Slices are selected for measurement. Depending on their location and size, the grouping of particles may affect the results and introduce errors. Middle, “snail” model. A composite sampling strategy based on the selection of multiple small boxes, which should be spread across the filter, so that the edges and middle are represented. Right, random model. Since each fragment is randomly selected, the grouping of particles does not influence their selection. Representativity is only dependant on the number of fragments chosen
Fig. 3Dependence of sample size (n) on margin of error (e = 10%, 20% or 30%; e.g., 10% ± 0.5% MP, 10% ± 1% MP, or 10% ± 1.5% MP, resp.) and total number of fragments (N) for MP contents of 10% (green), 1% (blue), and 0.1% (yellow) for the random model, calculated based on Eq. 1 [87]. Sampling thresholds (n = 2000, 5000, and 7000) are marked in red
| Variable | Symbol | Required information |
|---|---|---|
| Confidence interval | For 90% | |
| Total number of particles | Particle count from detection | |
| Estimated MP content | From prior experiments/literature | |
| Margin of error | Inherent to research question | |
| Sample size | Determined by image analysis |