Open Access Article
Sarah E.
Szakas
a,
Richard
Lancaster
a,
Ralf
Kaegi
b and
Alexander
Gundlach-Graham
*a
aDepartment of Chemistry, Iowa State University, Ames, Iowa, USA. E-mail: alexgg@iastate.edu
bEawag, Dubendorf, Switzerland
First published on 18th March 2022
Cerium containing nanoparticles (Ce-NPs) from geogenic and anthropogenic sources are frequently found in the environment, and the ability to determine the origins of Ce-NPs relies on the presence of other rare earth elements (REEs), such as La. In this study, we develop a scheme to classify individual natural, incidental, and engineered Ce-containing particles using spICP-TOFMS. Well-characterized CeO2 engineered particles (Ce-ENPs), incidental particles (Ce-INPs) from ferrocerium mischmetal, and natural particles (Ce-NNPs) from ground minerals (bastnaesite and parisite) are used as a model particle system. Based on mixtures of these three Ce-NP types, we demonstrate that the measured signals of Ce, La, and Nd in Ce-NNPs follow Poisson statistics and have conserved element ratios. The Ce-INPs we measure have similar Ce
:
La mass ratios to those of the Ce-NNPs, and Ce
:
Nd mass ratios can be used to distinguish these two Ce-NP types. Based on this, we develop particle-type-specific detection limits (LD,sp) for the measurement of La and Nd in Ce-NNPs. Our approach establishes LD,sp values with defined confidence intervals to control false-positive particle-type assignments, and allows us to accurately classify engineered, incidental, and natural Ce-NPs down to effective spherical diameters of 32, 35, and 45 nm, respectively. In pure Ce-NNP suspensions, this approach accurately classifies 68% of all detected Ce-NPs with <4% false assignments. For ternary mixtures of Ce-ENPs, INPs, and NNPs, we classify 56% to 76% of all detected Ce-NPs. We demonstrate a linear response with increasing concentrations of Ce-INPs and Ce-ENPs across approximately three orders of magnitude and can classify particles down to ratios of ∼1
:
50 for anthropogenic
:
natural Ce-NPs.
Environmental significanceWe report the use of spICP-MS with detection-limit filtering to distinguish cerium-containing nanoparticles (Ce-NPs) from natural, engineered, and incidental origins. This is necessary for accurate assessment of Ce-NP inputs into environmental compartments and Ce-NP source allocation. Previously, spICP-TOFMS has been employed to classify engineered and natural Ce-NPs based on particle-type-specific cerium-to-lanthanum mass ratios. Here, we report a new class of anthropogenic incidental Ce-NPs that cannot be resolved from natural Ce-NPs with the previous binary classification approach. With multi-element spICP-TOFMS analysis, we demonstrate simultaneous quantification and classification of Ce-NPs from three origins: natural bastnaesite/parisite, engineered CeO2 NPs, and incidental Ce-NPs produced from sparking a disposable lighter. These analytical developments support continued efforts to measure anthropogenic NP inputs into the environment. |
Measuring NPs by individual particle detection is typically done with scanning electron microscopy (SEM) or transmission electron microscopy (TEM).11 Both provide morphology, size of individual particles, and can be coupled with energy dispersive X-ray spectroscopy (EDX) to determine the elemental composition. However, even when automated, microscopy is a low-throughput technique, which limits detection and quantification of specific NPs in complex NP mixtures with varying particle number concentrations (PNCs). Bulk analysis of NPs, such as with inductively coupled plasma optical emission spectrometry (ICP-OES) and ICP-mass spectrometry (MS), can offer overall elemental composition but limited information on PNCs or individual particle compositions, especially when analyzing NP mixtures.12 Single-particle (sp) ICP-MS provides a means for the detection and quantification of elements in individual particle signals, but with quadrupole-based mass analyzers, only one or two isotopes can be quantitatively measured.13–19
In recent years, spICP-time-of-flight mass spectrometry (TOFMS) has emerged as a useful method for classification of NP type based on multi-element fingerprints.16,20–22 spICP-MS can provide PNCs, isotopic masses in particles, and—based on assumed spherical particle geometries, densities, and stoichiometries—particle size in a high-throughput analysis.23 With spICP-TOFMS, complete elemental mass spectra are typically recorded with time resolutions from 1–3 ms to detect signals from individual particles, whose transient signals last up to ∼500 μs.24,25
Herein, we describe the use of spICP-TOFMS to classify Ce-containing NPs based on their REE abundances and ratios. Ce-NPs were studied due to their prevalence in the environment; it has been estimated that total Ce-NP PNCs range from 104 to 107 particles mL−1 in surface waters and precipitation samples from around the world.10,21 Ce-NNPs found in soils and water derive from weathering of minerals such as bastnaesite (CeCO3F),26 parisite (CaCe2(CO3)2F2),27 and monazite (CePO4).28,29 These minerals' ores contain elevated concentrations of the light rare-earth elements (LREEs), i.e. the lanthanide-series elements from La to Gd, and are mined specifically for LREE extraction and use.29 These Ce-NNPs often have mass ratios of ∼2
:
1 for both Ce
:
La and Ce
:
Nd, which reflects the earth's crustal abundances of these elements.19,30
Cerium dioxide (CeO2) NPs are among the most heavily used engineered nanoparticles (ENPs) worldwide.30,31 Major uses of CeO2 ENPs include chemical mechanical polishing for glass and semiconductors, and as a catalytic additive to aid biodiesel combustion.11 CeO2 is also used for biological applications such as in drug delivery techniques and enzymatic processes.32 LREEs aside from Ce (such as La, Pr, and Nd) are impurities that are most likely found in CeO2, as complete Ce extraction and separation from these similar elements is challenging.33 However, previous research has demonstrated that LREE:Ce mass ratios in CeO2 ENPs are typically less than 6.2 × 10−5 (w/w),33 meaning CeO2 ENPs are free from trace rare earth metals within the sensitivity range of spICP-MS approaches. Unlike the natural Ce-NNPs, which have measurable amounts of LREEs, CeO2 ENPs are detected by spICP-TOFMS as single metal Ce particles. The presence of La in Ce-NNPs and its absence in Ce-ENPs has led to the use of La measured concurrent with Ce to be a common signature for Ce-NNPs.34–36
With expanding consumer use of Ce and other REEs, more particle types are being discovered that arise from human activity and are produced and released unintentionally.30,31 These incidental nanoparticles (INPs) have multiple sources, but their importance and contribution to the NP budget in the environment is poorly understood.30,31 One type of Ce-INP is derived from the mining of Ce-minerals such as bastnaesite and monazite.29 A by-product of Ce-mineral mining and the REE extraction process is mischmetal, which is composed predominantly of Ce and La.29 Mischmetal is used in many applications, one of which is to create ferrocerium, or the ‘flint’ in a common disposable lighter. When ferrocerium is struck, a high-temperature spark (∼3000 °C) is created in which cerium-rich particles are formed.37 These Ce-INPs have similar Ce
:
La mass ratios as Ce-NNPs, but lack significant mass fractions of other LREEs, such as Nd and Pr. In previous research, such Ce–La-rich particles were observed in the influent of wastewater treatment plants, suggesting that Ce-INPs, with indicative REE signatures, are present in the environment.17
Unlike ferrocerium INPs, Ce-NNPs have significant fractions of other LREEs, which may be used to discriminate Ce-NNPs from Ce-INPs. In this study, we present ternary mixtures of Ce-ENPs, INPs, and NNPs in the forms of CeO2, BIC® lighter-produced particles, and ground minerals (bastnaesite and parisite). Based on the conserved mass ratios of Ce
:
La and Ce
:
Nd in the Ce-NNPs, we develop an approach grounded in Poisson statistics to classify individual Ce-containing particles.
:
NNP number ratios from ∼1
:
50 up to 2
:
1 for the high-concentration Ce-NNP matrix and from 1
:
8 up to 26
:
1 for the low-concentration Ce-NNP matrix. Ratios of anthropogenic to natural particles are variable in environmental and industrial samples, and the particle ratio range was chosen to cover PNCs across at least two orders of magnitude against the natural matrix.7,17 Using two Ce-NNP suspension concentrations limited the amount of particle coincidences characteristic of high number concentrations. A table describing sample dilutions for this experiment is provided in the ESI† (Table S1).
In a second set of experiments, we used ternary mixtures of Ce-ENPs, Ce-INPs, and Ce-NNPs to investigate the influence of different anthropogenic-NP number concentrations on the detection and classification of the other particle types. Five different amounts of Ce-ENPs were spiked into suspensions with constant Ce-INP and Ce-NNP concentrations. Likewise, five different amounts of Ce-INPs were spiked into suspensions with constant Ce-ENPs and Ce-NNPs. Mixtures were made by diluting the Ce-ENP stock suspension (2.7 × 106 particles per mL), and Ce-INP stock suspension (5.9 × 106 particles per mL) volumetrically; dilution details for each sample are presented in the ESI† (Table S2). For all samples, Ce-NNPs were diluted to a PNC of ∼4.1 × 104 particles per mL, which resulted in an average of 360 classified Ce-NNP signals per spICP-TOFMS run.
ICP-TOFMS data was processed through an in-house LabVIEW program (LabVIEW 2018, National Instruments, TX, USA). In each spICP-TOFMS run, integrated TOF intensities from select isotopes (see Table S4†) were extracted as time-dependent signal traces. Critical values (Lc,sp) for each element were used to extract particle signals within each sample. The critical values are based on the dissolved background signals of each element and a compound-Poisson Lc,sp expression specific to ICP-TOFMS detection, as previously reported.39,41,42Lc,sp provides the fundamental detection criterion for spICP-TOFMS analysis; all signal intensities above the Lc,sp are considered particle-derived, while signals below this value are considered part of the background. After registering individual particle signals, the masses of the selected elements in each particle signal were quantified, and PNCs were determined based on transmission efficiency of the sample introduction system (see ESI† for details). Classification of individual particle events as Ce-ENPs, Ce-INPs, Ce-NNPs, or unclassified was accomplished with a custom-written LabVIEW program. Details of this classification approach are provided in Results and discussion section.
Throughout this manuscript, we refer to detected particle signals as “NPs”; in fact, we detect both nano- (diameter <100 nm) and micro-particles (diameter >0.1 μm). With spICP-TOFMS, some elements commonly present in NPs, such as carbon, nitrogen, oxygen, sulfur, and fluorine, are not readily detectable at the single-particle level. Additionally, we use the terms “single-metal” and “multi-metal” NPs (sm-NP and mm-NP) to refer to particles measured with either one or with two or more ICP-TOFMS-detectable elements.
The Ce-INPs formed fractal-like aggregates consisting of primary particles of only a few to a few tens of nanometers in width. REEs detected in these particles were limited to Ce and La. Within individual Ce-INPs, these REEs were separated in two phases: a Ce-rich phase forming close to spherical particles with diameters up to a few tens of nanometers and a La-rich phase that seems to flow around the Ce-rich phase (see Fig. S1†). The La-rich phase was likely present as a fluid either during the production of the mischmetal or during the spark formation. The REE-phase separation is distinct to the Ce-INPs and indicates that the Ce
:
La mass ratio of the Ce-INPs will likely show considerable variability.
The sampled Ce-NNPs form angular fragments from a hundred to a few hundred nanometers in diameter. Two types of Ce-NNPs, which can be distinguished by their Ca content, were observed in the Ce-NNP sample. This is consistent with two distinct mineral phases observed on backscattered electron images and elemental analyses of resin embedded bastnaesite/parisite mineral grains extracted from a host rock (see Fig. S2†). The nominal formula of bastnaesite is CeCO3F, and that of parisite is CaCe2(CO3)2F2; in both minerals, Ce can be substituted with other LREEs.26,27 In the samples examined, Ce, La, and Nd were all detected and evenly distributed in both the bastnaesite and parisite phases of the Ce-NNPs (Fig. 1i–k).
The average signal intensity of Ce is larger in mm-Ce NPs than in sm-Ce NPs for both the Ce-INPs and Ce-NNPs. This is a characteristic of the spICP-TOFMS measurement rather than a property of the measured particles. To detect NPs in spICP-TOFMS, the particle generated signal must be above the Lc,sp for each isotope/element measured. In particles—even those with constant mass ratios—elements with higher abundance will be measurable as particle size decreases but low-abundance elements will fall below the Lc,sp. If an element is below the Lc,sp it will not be detected, and this leads to small mm-NPs being falsely characterized as sm-NPs. In our measurements, Ce and La have roughly equal sensitivities, but Ce is more abundant, and so smaller NPs are occasionally detected as sm-Ce NPs.
In Fig. 3, we present mass correlation plots of Ce
:
La (Fig. 3a) and Ce
:
Nd (Fig. 3b) in Ce-NNPs and Ce
:
La (Fig. 3c) in Ce-INPs. The correlations between Ce and the other two elements in the Ce-NPs suggests that the ratios of Ce to La and Ce to Nd are conserved at the single-particle level. Scatter at low La and Ce masses is a product of measurement statistics, as described in the next section. From linear fits of the correlation plots, we determine the mass ratios of Ce
:
La and Ce
:
Nd in Ce-NNPs to be 2.1
:
1 and 2.2
:
1, respectively. This matches closely to previously measured mass ratios of ∼2
:
1 Ce
:
La and ∼2.3
:
1 Ce
:
Nd, which are known to be well-conserved in soil matrices.19,44,45 We do not record measurable amounts of Nd from Ce-INPs; however, the similarity of the Ce
:
La mass ratio to Ce-NNPs emphasizes that classification of these NPs by spICP-MS based on Ce–La alone is inadequate. We observe higher variation in the Ce
:
La mass ratios from the Ce-INPs compared to Ce-NNPs, which agrees with the results from the electron microscopy investigations showing an uneven distribution of Ce and La at the individual particle level (Fig. S1†). We will focus on the heterogeneity of this ratio in detail as it affects the accuracy of classifying our chosen Ce-NPs. In the ESI,† we provide mass spectra of these three Ce-NP types (Fig. S3†), and the ternary plots of the Ce–La–Nd contents in both Ce-NNPs and Ce-INPs (Fig. S4†).
:
La and Ce
:
Nd mass ratios are positively correlated, and the variance of measured ratios decreases as the mass per particle of Ce, La, and Nd increases (Fig. 3). To evaluate the origin of the variation in these ratios, we plot the signal ratios of Ce
:
La and Ce
:
Nd in counts versus the recorded counts of Ce from each particle event (Fig. 4). The count ratios obtained are specific to the isotopes listed for each element in Table S4.† By plotting data in terms of counts, we can directly compare measured results to that predicted by Poisson statistics.46 Poisson statistics, used for counting methods in set intervals, describes how to predict the probability of event occurrence as a function of the mean count rate (λ). As seen in Fig. 4, the variation in signal ratios of both Ce
:
La and Ce
:
Nd follow that predicted by Poisson statistics. In Fig. 4, the confidence intervals (CI) are generated using a Poisson–normal approximation of (λ)1/2 = σ, where σ is the standard deviation, and Z-scores for a normal distribution are used. Confidence bands were created for one and two standard deviations away from the mean ratio (given the counts of Ce, La, and Nd). The CI bands are centered around mean count ratios of 2.4
:
1 for Ce
:
La and 4.1
:
1 for Ce
:
Nd. For both ratios, a few outliers extend beyond the 95% CI. These elevated-ratio outliers are due to limitations of the Poisson–normal approximations at low λ values. At low count rates Poisson distributions are right skewed, and more exact Poisson confidence intervals can be numerically calculated via Monte Carlo methods or estimated,47,48 but in this study, we found the Poisson–Normal approximation fit-for-purpose (Table S9†). Errors in Ce
:
La and Ce
:
Nd ratios follow Poisson statistics which indicate the accuracy of these ratios is controlled by our measurement technique rather than by the variation in the composition of individual Ce-NNPs. This is in congruence with the uniform distribution of the individual REEs shown by the elemental distribution maps from TEM analysis (Fig. 1). Within the sensitivity range of the spICP-TOFMS measurement, the composition of all Ce-NNPs is constant. Importantly, with measurement uncertainty controlled by Poisson statistics, we can define the statistical likelihood of measuring La or Nd in a Ce-NNP based on the recorded counts of Ce.
:
La and Ce
:
Nd in the natural particles. The LD's are also controlled by the minimum detectable sp-signal for the elements, i.e., LC,sp,Ce, LC,sp,La, and LC,sp,Nd. From LD,sp,Ce,Ce–La and LD,sp,Ce,Ce–Nd, we can create mass and size-detection limits for classification of Ce-NPs; however, these LD's are first established in terms of counts as that is the domain of Poisson statistics.
L D,sp,Ce,Ce–La and LD,sp,Ce,Ce–Nd are defined in single particles as the likelihood of measuring each element (e.g., La and Nd) as a function of the counts recorded for Ce. For simplicity, we will limit the discussion to the determination of LD,sp,Ce,Ce–La. To detect La in a particle, its signal must be above the Lc,sp,La. We use the Lc,sp,La to define the average counts of La (λ) in a recorded La signal distribution with a given false-negative rate (β). β is the fraction of the La-signal distribution below Lc,sp,La. The average counts of La is the detection limit for La (LD,sp,La) (eqn (1)); the calculation for LD,sp,La is analogous to a conventional detection limit calculation49,50 except the critical value for detection is defined independently as Lc,sp,La (eqn (2)). Eqn (3) relates LD,sp,La to a user-defined β, here set to 5% (0.05), where z1−β is the Z-score for a Normal distribution. As previously stated, the standard deviation is related to the square root of the mean count rate (λ1/2).
| LD,sp,La = λLa | (1) |
| LD,sp,La = LC,sp,La + (z1−β)(λLa)1/2 | (2) |
| z1−β = 1.64 | (3) |
| LD,sp,La = LC,sp,La + 1.64(LD,sp,La)1/2 | (4) |
![]() | (5) |
:
La in Ce-NNPs (RCe
:
La) as shown in eqn (6).LD,sp,Ce,Ce–La = (LD,sp,La)RCe : La | (6) |
:
La to be 2.4
:
1 and use eqn (6) to set LD,sp,Ce,Ce–La = 40 counts, as shown by the blue line in Fig. 6. If the single-particle critical value for Ce (LC,sp,Ce) is below the calculated LD,sp,Ce,Ce–La, eqn (6) remains valid. The detection-limit for Ce in particles is controlled by Lc,sp,La since Ce and La have similar sensitivities and La is less abundant in Ce-NNPs. To determine LD,sp,Ce,Ce–Nd at a given false-negative rate, the above steps are repeated the using Lc,sp,Nd and RCe
:
Nd in place of the La-specific values.
Setting particle-type-specific detection limits for Ce and filtering Ce-NP signals with these detection limits reduces the chance of falsely classifying Ce-NP types. For example, if a sm-Ce NP is recorded and its Ce-signal is greater than both LD,sp,Ce,Ce–La and LD,sp,Ce,Ce–Nd, then we are 95% certain that we would have measured La and Nd if these elements were present in the particle, and therefore we can classify this particle as a Ce-ENP. In a case in which a mm-Ce–La NP is recorded and the Ce-signal is greater than LD,sp,Ce,Ce–Nd, then we are 95% certain that we would have measured Nd if it was present, and the particle can be confidently classified as a Ce-INP. Because Ce-ENPs and Ce-INPs do not contain measurable amounts of Nd, any particle in which Nd is detected is classified as a Ce-NNP. All sm-Ce NPs or mm-Ce–La NPs with Ce signals below LD,sp,Ce,Ce–La and/or LD,sp,Ce,Ce–Nd are deemed unclassified by this scheme, as the counts are too low to determine whether La and/or Nd are present but undetected. Essential to our classification approach is that the user can define their tolerance for false-positive classification by adjusting β, which controls the confidence interval (CI) for the detection limits according to eqn (7).
| CI = 1 − β | (7) |
Setting the CI at lower values allows for more particles to be identified, but at the cost of an increase in false positives. Setting the CI at a higher value reduces false-positive particle assignments, but will increase LD,sp,Ce,Ce–La and LD,sp,Ce,Ce–Nd, and thus result in more unclassified particles (i.e., false negatives). Here, we suggest that a CI of 95% provides a good balance of classifying many Ce-NPs without high false-positive percentages.
Ce-NNPs may be misclassified as Ce-ENPs or Ce-INPs due to the detection of sm-Ce NPs or mm-Ce–La NPs. From the stock Ce-NNPs, we classified over 70% of all Ce-NPs detected. 95% of these particles were correctly classified as Ce-NNPs while only 5% were classified as false-positive Ce-ENPs or Ce-INPs. Of the total Ce mass in all Ce-NPs detected, 93% was correctly classified. Ce-INPs are challenging to classify because, as evidenced from the TEM measurements, Ce
:
La ratios in individual particles are more variable than in the Ce-NNPs. Since sm-Ce NPs are detected along with mm-Ce–La NPs, misclassification as Ce-ENPs can occur. Ce-INPs cannot be misclassified as Ce-NNPs due to the absence of Nd. From our stock suspension of Ce-INPs, 48% of Ce-NPs detected were classified. 75% of these particles were correctly classified as Ce-INPs while 25% were false-positive classifications as Ce-ENPs. In terms of total Ce-NP mass, we correctly classified 72% of the Ce-mass as Ce-INPs. Ce-ENPs cannot be misclassified as Ce-INPs or Ce-NNPs because they do not contain measurable amounts of La or Nd. From our stock suspension of Ce-ENPs, we classified 60% of particles with no false positives. The Ce-mass recovery from classified Ce-ENPs was >95%. In Table S6,† we estimate the minimum classifiable size for Ce-ENP, Ce-INP, and Ce-NNPs particles based on LD,sp,Ce,Ce–La and LD,sp,Ce,Ce–Nd values from the Ce-NNP stock suspension. Assuming spherical geometry, known density, and known Ce mass fractions, size-based detection limits for Ce-ENPs, Ce-INPs, and Ce-NNPs are 31.5, 34.9, and 44.8 nm, respectively.
:
119 to 11
:
1 and for Ce-ENP classification, the ENP:NNP ratios cover 1
:
27 to 26
:
1, meaning both anthropogenic Ce-NP types can be identified against a Ce-NNP background across at least two orders of magnitude. The number of Ce-INPs that were classified ranged from 3 to 249, and Ce-ENPs ranged from 6 to 611. With increasing numbers of Ce-ENPs and Ce-INPs, the number of classified Ce-NNPs remains constant for all runs in both Ce-NNP concentrations. On average, 24 and 360 Ce-NNPs were classified for the low and high Ce-NNP matrices, respectively. While we classified down to particle ratios of 1
:
119 for Ce-INP
:
Ce-NNP, this was likely due to false positive classifications from Ce-NNPs, and from stock suspensions of Ce-NNPs, we estimate true number ratios around 1
:
50, or 2% false positive Ce-INPs from Ce-NNPs.
Because particle classification depends on single-particle critical values (LC,sp), the fraction of classifiable particles increases as the dissolved element backgrounds are reduced. Classification can be improved with increased dilution of the samples, but at the expense of measurement time. Interestingly, in this experimental data, it was observed that an increase in Ce-INP PNC was accompanied by an increase in the background of “dissolved” Ce and La signals. Results from TEM investigations show Ce-INPs with diameters around 20 nm, which are too small for quantitative detection by our spICP-TOFMS method. These small nanoparticles are detected at counts below the LC,sp values and therefore may contribute to the background signal, which raises LC,sp values for Ce and La. Increases in these critical values elevate LD,sp,Ce,Ce–La and thus increase the minimum size needed to classify particles.
In the second set of experiments, the influence of Ce-NP types on accurate classification of the other particle types was explored. In these experiments, we kept the particle number concentration of one type of anthropogenic Ce-NP constant while increasing the other; Ce-NNPs were constant in every sample. In Fig. 8, we show the particle numbers of each classified Ce-NP plotted against the dilution of the Ce-NP type as well as the linear trends for all Ce-NP types.
As seen in Fig. 8a, increasing the concentrations of Ce-ENPs does not result in false-positive classification of either Ce-INPs or Ce-NNPs. We also find that the Ce-background is not appreciably raised with increasing Ce-ENP concentration: LD,sp,Ce,Ce–La only changes ±3 counts across the five samples. When Ce-INP concentration increases, the dissolved background increases for both Ce and La, increasing LC,sp,Ce, LC,sp,La, and LD,sp,Ce,Ce–La values. The detection limit for Ce-INP classification (LD,sp,Ce,Ce–La) increases from 56.7 to 81.9 counts (low-to-high Ce-INP concentration), which corresponds to the detection limit in Ce mass increasing from 111 ag to 160 ag. Background elevations by Ce-INPs do not affect the Nd background, though, and Ce-NNPs are able to be classified consistently in Ce-INP backgrounds, as shown in Fig. S6.†
Ferrocerium lighter particles cause more false-positive Ce-ENP classifications than the Ce-NNPs due to the inherent heterogeneity of Ce
:
La in the Ce-INPs. LD,sp,Ce,Ce–La is based on the conserved ratios of Ce
:
La in the Ce-NNPs and this ratio is not as well-conserved in the Ce-INPs. A portion of Ce-INPs with Ce signal above LD,sp,Ce,Ce–La will contain amounts of La below the Lc,sp,La. These low-La Ce-INPs are falsely classified as Ce-ENPs. As shown in Fig. 8b, with increasing concentrations of Ce-INPs, we observe that false-positive Ce-ENPs also increase, though at a slower rate than correctly classified Ce-INPs. Falsely classifying Ce-INPs as Ce-ENPs is a limitation of our approach and is due to the variation of Ce
:
La in our Ce-INPs. At lower number fractions of Ce-ENPs, false-positive Ce-ENP events from Ce-INPs could outnumber true Ce-ENP events. Ce-INPs do not cause false-positive Ce-NNP events because no Nd signal is recorded from Ce-INPs.
To decrease false-positive classifications of Ce-ENPs from Ce-INPs, we must increase LD,sp,Ce,Ce–La. This can be done in two ways: either by choosing a higher confidence interval or by increasing RCe
:
La used for classification. For example, increasing the CI from 95% to 99% raises the LD,sp,Ce,Ce–La from 51.3 to 61.3 counts. This reduces false positives, but also reduces the percent of particles classified overall. Table S7† shows how the LD,sp counts increase for the same sample as the CI is increased. Likewise, by increasing RCe
:
La to a higher value, such as RCe
:
La = 3, the number of false-positive Ce-ENPs can be reduced at the expense of more false-negative classifications. Fig. S7† shows data displayed in Fig. 8 with Ce-ENPs re-classified using RCe
:
La = 3. The probability of recording false-positive Ce-ENP or Ce-INP events from either Ce-INPs or Ce-NNPs depends on the size-distribution of the measured particles, the average element ratios of the particles, and the variability of these ratios.
The ferrocerium lighter Ce-INPs used in these experiments serve as a model for other INP types that may resemble natural particles. It is likely Ce-INPs found in the environment will have Ce
:
La ratios that differ from the ferrocerium INPs studied here and may not resemble ratios of other coexistent NNPs. However, natural colloids have been reported to have well-conserved Ce
:
La and Ce
:
Nd ratios, which indicates that the use of these ratios is a good benchmark for Ce-NNP identification. In Table S8,† we report the single-particle Ce
:
La and Ce
:
Nd mass ratios for the Ce-containing minerals monazite, allanite, and bastnaesite/parisite, as well as from two ferrocerium-produced Ce-INP populations. From this initial analysis of Ce-containing minerals, it appears that mass ratios of 2.3–3.3 for Ce
:
La and 1.2–2.3 for Ce
:
Nd are appropriate for establishing the LD,sp values necessary for fingerprinting a range of Ce-NNP types. As more Ce-INPs are discovered, further classification categories of Ce-NPs, with Ce above the LD,sp values set by Ce-NNPs, may be incorporated.
With this approach, we show mixtures of Ce-ENPs, Ce-INPs, and Ce-NNPs are quantifiable across at least three orders of magnitude. However, since Ce-NNPs inherently produce some false-positive Ce-INP and Ce-ENP classifications, we are limited to detection of number ratios down to ∼1
:
50 (2% false positives), for both Ce-INP
:
Ce-NNPs and Ce-ENP
:
Ce-NNPs. Our study serves as a baseline for how spICP-TOFMS data can be detection-limit filtered to provide a population of classifiable particles and reduce false-positive particle assignments.
We also report a new class of Ce-INPs, created from sparking a ferrocerium lighter, with similar Ce
:
La mass ratios as the Ce-NNPs used. These Ce-INPs therefore require a third element, in this case Nd, to avoid misidentification. Using our detection limit filtering, we are able to identify Ce-INPs in mixtures with Ce-NNPs. This lays the groundwork for expanding upon identifying other Ce-INPs that may be currently misclassified as natural.
Our methods can be adapted to other natural NNPs with conserved element ratios, such as minerals containing Mg, Al, Ti, Fe, or Zn. While not pursued here, detection-limit filtering could also be used for robust mineralogical assignment of different particles based on element ratios, even for particles that contain the same major and minor elements. The experiments presented in this paper represent ideal suspensions of Ce-NPs; in future work we will expand the application of this classification scheme to quantify Ce-minerals in environmental samples.
Footnote |
| † Electronic supplementary information (ESI) available. See DOI: 10.1039/d1en01039e |
| This journal is © The Royal Society of Chemistry 2022 |