Darya
Mozhayeva
a and
Carsten
Engelhard
*ab
aUniversity of Siegen, Department of Chemistry and Biology, Adolf-Reichwein-Str. 2, D-57076 Siegen, Germany. E-mail: engelhard@chemie.uni-siegen.de; Fax: +49 2717402041
bCenter of Micro- and Nanochemistry and Engineering, University of Siegen, Adolf-Reichwein-Str. 2, D-57076 Siegen, Germany
First published on 30th May 2019
The detection of nanoparticles (NPs) in the presence of a high background (BG) is challenging in single particle inductively coupled plasma mass spectrometry (SP-ICP-MS) and leads to inaccurate quantification. In this study, we report a data processing procedure for the deconvolution of SP-ICP-MS data and its application to quantification of both the Ag NP size distribution (20 to 100 nm Ag NPs) and the concentration of dissolved silver ions (Ag+ up to 7.5 μg L−1) in mixtures using Poisson statistics to determine thresholds to identify the beginning and end of NP signal events. SP-ICP-MS with a microsecond time resolution data acquisition system (μsDAQ) and conventional pneumatic nebulization was used for the detection of Ag NPs in the presence of a significant concentration of ionic BG (107Ag+ up to 1000000 cps). In contrast to conventional three times standard deviation of the BG (3 × SDBG) decision criterion (normal distribution), our NP ion cloud extraction mechanism from the μsDAQ is based on setting thresholds to determine the beginning and the end of an ion cloud using Poisson statistics, which is suitable for the low count data. The algorithm was applied here for the flagging and detection of Ag NPs in the presence of Ag+. Critical level (false positive probability was set to 5%) and detection limit (false positive and false negative probabilities were set to 5%) based on Poisson distributions were implemented to determine the thresholds. A range of different sets of NP ion cloud extraction conditions were tested to verify the calculated thresholds and to obtain optimal extraction conditions at different BGs (Ag+ concentration). The method can be universally applied for the detection of different elements with SP-ICP-MS.
Techniques based on inductively coupled plasma mass spectrometry (ICP-MS) can be used to separate and directly analyse the NPs and dissolved metals. Liquid chromatography coupled to ICP-MS6–8 and capillary electrophoresis (CE) coupled to ICP-MS9–11 both can be used for this type of separation, yet these methods still require an experienced operator. Single particle (SP)-ICP-MS utilizes short dwell times (DT) (typically in the low to sub-millisecond range) and time-resolved data acquisition to detect single NPs in a sufficiently diluted dispersion with minimal sample pretreatment (dilution) at environmentally relevant concentrations (low nanogram per litre range for NPs). Individual NP sizes can be assessed through mass-related counts detected at a given mass-to-charge (m/z) ratio. These signals can be characterized as individual spikes from NPs, whereas the background (BG) represents the level of dissolved metal in the solution.12 Several reviews summarized the capabilities and limitations of SP-ICP-MS,13–15 emphasizing that there is still room for improvement. Namely, more well-characterized standards are needed for size and particle number concentration (PNC) determination, matrix effects require more detailed investigations and should be accounted for, the linear dynamic range of the pulse counting stage of the secondary electron multiplier (SEM) is limited, etc. Ideally, NPs can be distinguished from the BG as pulses, if the BG is low. Frequently, this is not the case, and BG increase hinders the detection of NPs, because of increased standard deviation (SD) of the BG; therefore, the detection limit (LD) for NP size drastically deteriorates. Laborda et al. could detect Ag NPs of size from 40 to 80 nm (with a DT of 5 ms) in the presence of the Ag+ BG below 1 μg L−1; however, the presence of already 300 ng L−1 of Ag+ resulted in the increase of the calculated particle size LD from 18 nm (in ultrapure water) to 32 nm (with 300 ng L−1 of Ag+).12 TiO2 NPs could be distinguished from the continuous BG, where up to 0.5 μg L−1 of Ti(IV) was added.16 Schwertfeger et al. introduced an approach for NP and dissolved analyte quantification, where three dilutions were implemented for the detection of gold and silver NPs in the presence of the dissolved ions.17 First, the solution without any dilutions was measured to quantify the dissolved metal; afterwards, two dilutions were done for single NP measurements. Without the dilution, it was shown that the presence of already 1 μg L−1 of dissolved silver leads to errors (size overestimation and a lower number of particles detected) in the detection of 30 nm Ag NPs.
In conventional multi-elemental analysis with ICP quadrupole MS (ICP-Q-MS) a signal at a selected m/z is recorded for a certain DT (typically in the low to sub-millisecond range for NP detection and up to 1 s during homogeneous sample analysis). As NPs result in relatively short ion signal events in ICP-Q-MS (e.g. the ion signal duration for one 60 nm Ag NP was approximately 500 μs in our previous study),10 the choice of an appropriate DT is crucial to ensure a correct detection. The use of a DT on the microsecond time scale allows acquiring several data points per NP18–26 and helps to avoid incorrect detection, when e.g. one NP event is split between two DTs (split-particle event). An approach to use a 5 μs DT without a significant dead time (other than the SEM dead time) between consequent dwells was introduced by our group earlier.26 When the prototype data acquisition system with 5 μs time resolution (μsDAQ) is used, the counts that would otherwise be counted in e.g. 3 ms are split into 600 dwells of 5 μs each; then, the counts detected per NP are summed up to get a signal reading per particle. This approach helps to minimize particle coincidence and split-particle events. Meanwhile, the BG is also split, and e.g. 100000 cps of a constant BG signal would theoretically correspond to only 0.5 counts in 5 μs; however, the counts that are recorded are positive integer numbers, so some of the readings would be 0 and others 1. This type of data should be described with a Poisson distribution, and not the Gaussian type. In this way, the low BG allows extending the concentration range of dissolved metals, in the presence of which NPs can still be detected and quantified. The data obtained with the μsDAQ are later processed to extract NPs with an optimized algorithm. In the algorithm, a NP event starts when a count value exceeds a certain threshold, and ends, when a second but lower threshold is reached.26 However, there is a challenge: a high BG (e.g. 100000 cps) can adversely influence the total counts per extracted NP ion cloud because the BG is extracted together with the NPs and the extraction conditions (thresholds) have to be carefully selected. In addition, the ICP-MS user has to decide, which signal should still be counted as a signal from a NP and which signal should be counted as BG fluctuation when working at a low count level (a single 20 nm Ag NP can result in a signal of approximately 30 counts with an optimized ICP-Q-MS). Additionally, a new LD definition is required to tackle this issue based on Poisson and not solely on normal statistics, and we present our approach in detail further below.
Typically, researchers use the three times the SD of the BG (3 × SDBG) based on the normal distribution of the data to differentiate NP signal distributions from the BG when ICP-MS data are obtained with millisecond time resolution.14,15,27 Cornelis and Hassellöv reported a deconvolution approach to differentiate the NPs that are not fully separated from the BG by modelling the noise contribution in ICP-Q-MS.28 Recently, Gundlach-Graham et al. used a Monte Carlo simulation approach to obtain the signal distribution of noise and low-count signals in ICP time-of-flight (TOF)-MS data at a mass spectral acquisition rate of 200 Hz. In their study, thresholds for the detection of NPs were determined using Poisson statistics.29 Beginning in 2014, ICP-Q-MS instruments became commercially available that feature DT settings down into the hundred-microsecond regime and up to 25 μs DT. However, a standardized data processing approach for microsecond-time resolved data in ICP-Q-MS is not established so far. Data processing is also limited by the software of current ICP-MS instruments, where only a few million data points can be recorded and/or processed per measurement, causing a limitation in the available total analysis time. Researches are still evaluating different types of data processing techniques and the possibilities that a higher time resolution might provide. For example, with 100 μs microsecond time resolution, the NPs were separated from the BG signal by applying the 3 × SDBG criterion.19,30 M. D. Montaño et al.23 used 25, 50, and 100 μs DTs to distinguish a 28Si+ signal from a high [14N14N]+ BG during silica colloid analysis. In their study, an iterative algorithm with an initial threshold according to the 3 × SDBG criterion, subsequent smoothing, and BG subtraction was used. An algorithm based on outlier detection was presented by J. Tuoriniemi et al. for data with 100 μs time resolution.20 A different approach reported by Donard et al. utilizes the detection of peak maxima.24,25
In the present study, we report a data processing method based on Poisson statistics for simultaneous quantification of NPs and dissolved ions (recorded with a prototype μsDAQ). The method is rapid and can be used to process ICP-MS measurements of any duration. Ag NPs are selected as a model sample because they are widely discussed in the literature on SP-ICP-MS. A general algorithm for the analysis of NPs and dissolved ions is developed that is not limited to silver ions and NPs, but can also be used for ions and NPs with different elemental compositions. Throughout the discussion below, the term “NP size” refers to the calculated NP size, if not stated otherwise.
Parameter | Value |
---|---|
RF power | 1450 W |
Ar cooling gas flow | 14 L min−1 |
Ar auxiliary gas flow | 0.8 L min−1 |
Ar nebulizer flow | 0.6 L min−1 |
Sampling position | 2 mm |
Skimmer type | Ni (insert version) |
Insert type | Skimmer cone insert “2.8” |
Torch injector inner diameter | 1 mm |
Dwell time for the μsDAQ | 5 μs |
Dwell time for vendor software | 10 ms |
Monitored isotope | 107Ag+ |
Different ion cloud extraction conditions were tested only on one data set out of the three replicates, because the number of NPs per 3 min run was always higher than 3500 for 40, 60, and 100 nm NPs. The number of detected NPs was considered to be sufficient to construct a size distribution with statistical significance (also because the determination of PNC was not the goal of the study). External size calibration was made daily with 20, 40, 60, and 100 nm Ag NPs without addition of dissolved silver. To have a starting point for the investigation of the influence of the extraction conditions on the calculated NP size external size calibration has been performed under S = 5, T = 5, and E = 1 extraction conditions (when 5 counts (T = 5) were detected in 25 μs (S = 5) an ion cloud starts and when there was only 1 count (E = 1) in 25 μs, the ion cloud ends). These values were calculated using the formulas from Table 2, when the average BG is low (see Table 3 and further sections for details). The BG was subtracted, and the linear fit resulted in R2 = 0.996 ± 0.002 based on the sizes provided by the manufacturer. A high correlation coefficient is the evidence of the stability of the NPs in the suspensions. After size calibration and BG subtraction, the size distribution diagrams were constructed by binning the data into 2 nm bins. Fitting of all obtained size distributions was performed with a Gaussian model. This allows us to easily compare the maxima of the distributions, which is not always straightforward with other fitting models (e.g. Poisson distribution). In this study, different criteria including the BG maximum, mean NP size, width of the size distribution, total number of detected NPs, and size starting from which the NP size distribution can be distinguished obtained from the constructed size distributions were used to compare different extraction conditions (see the ESI and Fig. S1‡).
Scor,i = Si − Di × BG5 μs | (1) |
After data processing with the BG subtraction (eqn (1)), the BG corrected Ag NP sizes in the presence of ionic silver were found to be in better agreement with Ag NP reference values (sizes obtained from suspensions without an addition of ionic silver). In fact, the NP sizes were gradually decreasing with increasing Ag+ concentration, with around a 4 nm size decrease for 40, 60, and 100 nm Ag NPs after the addition of 7.5 μg L−1 of Ag+. As 107Ag+ is detected in ICP-MS, Ag+ and Ag NPs are not differentiated from each other; therefore, the slight decrease in the calculated NP size may occur due to partial suppression of the BG, when NPs are detected; or due to a lower number of counts detected per NP, when the BG is present. As it was discussed in the previous section, the simultaneous presence of Ag NPs and Ag+ may cause matrix effects in the plasma due to changes in plasma characteristics, it is also confirmed by the fact that the average BG obtained with the vendor software decreased 5.4 ± 1.4% compared to the values obtained for calibration solutions (after adding 1 μg L−1 of Ag+) (Fig. 1B). The NP sizes obtained under different ion cloud extraction conditions were not compensated for the discovered NP size decrease, as the mentioned matrix effects require more investigations (in a future study).
In contrast to conventional SP-ICP-MS operation, which provides only one count value per particle event at 1–10 ms DT, data from our μsDAQ are comprised of a time-resolved profile of counts, where the sum of counts gives the total NP signal. Therefore, we propose that the LD can represent a value, above which an ion cloud profile can be detected on top of BG fluctuations. As it was not feasible in the current study to get an average BG from 5 μs resolved data due to a high number of data points and limitations in the software, the BG was obtained from data acquired with 10 ms DT and then recalculated (discussed above) to match shorter DTs. After a recalculation to 25 μs (S = 5), the BG is typically only between fractions of a count and 32 counts. In this case, a normal distribution, which was assumed for the conventional LD formula derivation, does not apply anymore, and a Poisson distribution can be used instead.34 Three main criteria determine the Poisson distribution:
– The values are positive integer numbers, which is the case for the μsDAQ.
– If a time interval tends to zero, then also the probability to get a count tends to zero, which is also true for the NP detection, as the detection occurs at discrete time intervals.
– A value xn does not depend on the next value xn+1. In order to achieve this condition, there should be only one data point detected per NP, which is not the case for the μsDAQ. As a NP represents a profile of data points, each data point is not independent.
In order to determine the LD for an ion cloud, the ion cloud extraction process should be considered. To fulfil all three criteria of the Poisson distribution, especially the third criterion, we can consider only the beginning of an ion cloud, namely the T threshold value (an ion cloud starts when the value is reached), so the decision for the detection of an ion cloud would depend only on the rising edge of the ion cloud count profile. Consequently, the LD calculation for a low number of counts in the Poisson distribution has to be found. As in the ion cloud extraction process one of the conditions is that T > E (when T = E, the algorithm would go to a loop), we propose to use LC to determine the end of an ion cloud. Thus, the T parameter should be above LD (α ≤ 5%, β ≤ 5%), and the E parameter should be equal to LC (α ≤ 5%). Cases of a low number of counts are often found in radiochemistry; and Currie34 treated the Poisson distribution under an assumption of a normal distribution, “if the number of counts is sufficiently large”. The LD formulas for the Poisson distribution (with the assumption of a normal distribution) were determined for two cases: paired observations and well-known blank (where the deviations of the BG are neglected).34 Later, the paper was extended35 in order to address the issue of “very low-level counting data” below 5 counts. The initial paper and a more recent summary36 presented a table based on the calculations using a cumulative exact Poisson distribution (without Gaussian approximation), a well-known blank; α ≤ 5% and β ≤ 5% for LD (α ≤ 5% for LC). Formulae and example calculations for the exact Poisson distribution to determine LD and LC are presented in the ESI and Table S1.‡ It should be noted that for the Poisson distribution, LQ should be above 100 counts; therefore, this parameter was not considered in the calculations.
For a user friendly calculation of LD and LC, we propose to use the formulas that are presented in Table 2 (Poisson distribution with the normal distribution approximation). The values obtained from the cumulative exact Poisson distributions were compared (Table 3) with the values obtained for the Poisson distribution with normality approximation, where only an average BG (μB) is sufficient to conduct the calculations (Table 2).34 In the formula of paired observations, the deviation of the BG is taken into account, resulting in higher values compared to the case with “well-known” BG values. After the comparison of the values (Table 3), the formula of paired observations (Table 2) can be used as an approximation for the BG below 5 counts, and the “well-known” blank formula can be used for the BG above 5 counts. According to this approximation, the difference between the values obtained with the cumulative Poisson distribution and the normality approximated values was below 1 count (only two values of LD differed less than 2 counts, with the higher values obtained for the normality approximation). In practice, false positives and false negatives can still be separated from the NP events, since the size distribution diagram is constructed, and the remaining BG can still be distinguished from the NPs by the 3.29 × SDBG criterion.
L C (limit to identify the end of an ion cloud) | L D (limit to identify the beginning of an ion cloud) | |
---|---|---|
a The paired observations case takes into the account the deviation of BG, resulting in higher values compared to the case with “well-known” BG values. The “well-known” BG represents the case, where the deviations of the BG are neglected. | ||
Paired observations (μB < 5) | ||
“Well-known” BG (μB > 5) |
c Ag+/ng L−1 | μ B/counts in 25 μs (S = 5) | SD/counts in 25 μs (S = 5) | Poisson distribution35,36 | Paired observations34 | “Well-known” BG34 | |||
---|---|---|---|---|---|---|---|---|
y C | y D | y C | y D | y C | y D | |||
a The first set of yC and yD was calculated for the exact Poisson distribution with a “well known” BG (Table S1), and further sets were calculated with an assumption of normality for the Poisson distribution according to Table 2. LC and LD are obtained from yC and yD, respectively, by subtraction of μB. | ||||||||
0 | 0.09 | 0.02 | 1 | 4.74 | 0.77 | 4.16 | 0.57 | 3.76 |
10 | 0.12 | 0.02 | 1 | 4.74 | 0.92 | 4.44 | 0.69 | 3.97 |
50 | 0.28 | 0.03 | 1 | 4.74 | 1.51 | 5.45 | 1.15 | 4.73 |
100 | 0.48 | 0.04 | 2 | 6.30 | 2.10 | 6.42 | 1.62 | 5.48 |
500 | 2.1 | 0.1 | 5 | 10.51 | 5.51 | 11.59 | 4.50 | 9.61 |
1000 | 4.2 | 0.2 | 8 | 14.44 | 8.91 | 16.35 | 7.50 | 13.57 |
2500 | 9.9 | 0.4 | 15 | 23.10 | 17.24 | 27.26 | 15.07 | 22.98 |
5000 | 19.9 | 0.7 | 28 | 38.38 | 30.35 | 43.42 | 27.27 | 37.35 |
7500 | 30 | 1 | 39 | 50.94 | 42.37 | 57.72 | 38.61 | 50.31 |
In order to get the ion cloud extraction parameters E and T, μB should be added to the obtained LC and LD to obtain the corresponding gross counts (yC and yD). It should be noted that only positive integer numbers are used in the ion cloud extraction, since only integer counts are detected; thus, the obtained non-integers can be rounded to the closest integer number to obtain the suitable ion cloud extraction conditions. In the next section, the hypothesis of using LC and LD for NP ion cloud extraction will be tested in detail.
Fig. 2 and S2‡ show average calculated NP sizes (label B in Fig. S1‡) obtained under different extraction conditions without an addition of dissolved silver (Fig. 2) and with the addition of 7.5 μg L−1 of Ag+ (Fig. S2‡). In general, the main trends are very similar, and the obtained sizes are more or less independent of the T parameter and change dependent on the E parameter. Lower E results in higher sizes, since more counts are added in the end of ion clouds and higher E results in lower sizes. No specific trends were found for the changes in the width of the NP size distributions (label C in Fig. S1‡) under varying extraction conditions. The obtained NP sizes do not change to a large degree under the varied extraction conditions: maximum deviation is up to 4.7 nm for 40 nm, up to 2.1 nm for 60 nm, and up to 1.0 nm for 100 nm Ag NPs (Fig. 2 and S2‡). Considering the trends from Fig. 2 and S2,‡T and E parameters can be chosen from the proposed LC and LD calculations (Table 2).
The number of detected particles (label E in Fig. S1‡) is an important parameter in quantitative SP-ICP-MS applications and was, therefore, used here to identify suitable ion cloud extraction conditions (Fig. S3 and S4‡). It was found that there was a significant difference in the number of detected particles in the case of 20 nm sized Ag NPs with the change of extraction conditions; however, this happens because they could not completely be separated from the BG. The trends are more difficult to follow (Fig. S3 and S4‡), with the number of detected NPs being more dependent on E than on T. In general, it was found that a relatively wide range of extraction conditions can be used for larger sized NPs, specifically for 60 nm and 100 nm Ag NPs, because only minimal differences in the number of detected NPs were obtained. The number of detected 20 nm Ag NPs and 40 nm NPs with Ag+ above 1 μg L−1 was significantly affected by the extraction conditions, with a few hundreds more NPs detected under the extraction conditions below LC and LD (false positives). Clearly, the choice of extraction conditions according to LC and LD assures a more reliable detection of smaller sized NPs.
The next parameter to consider is the BG maximum (label A in Fig. S1‡). A high BG results in a high number of false positives, hinders the detection of NPs with sizes close to the BG, and increases the file size, which leads to time-consuming data processing. In our study, the BG was high at low T values, and found to be mostly independent of E values (Fig. 3); therefore, T is the decisive factor in choosing the BG. Similar trends are detected for all NP sizes and all the concentrations of Ag+ that were tested: the BG decreases with increasing T values.
Fig. 3 Influence of ion cloud extraction conditions on the maximum of the number of BG events (BG count distribution maximum, see label A in Fig. S1‡) during the analysis of 60 nm Ag NPs (left: without and right: with 7.5 μg L−1 Ag+ added to the NP suspension). Optimal conditions are highlighted with black dots. Note: the step size in size resolution is for illustrative purposes only and a result of data processing. It does not represent the actual size resolution of the SP-ICP-MS method. Also, areas of white colour indicate extraction conditions, which were not tested. |
If the Gaussian distribution would be used instead of the Poisson distribution, then the decision threshold would be 3 × SDBG. For example, let us calculate this threshold for 60 nm Ag NPs with 7.5 μg L−1 Ag+ and the Gaussian distribution. With an average BG of 29.033 ± 1.178 counts in 25 μs, LD for the Gaussian distribution is 32.567 counts or 33 counts, if rounded. The optimal conditions obtained with Poisson statistics are higher (T = 51 and E = 39, Fig. 3) than the ones obtained with Gaussian statistics. In Fig. 3 it can be seen that, when T = 40 and E = 33, the BG that was extracted from the raw data was high, around 100000 events at BG maximum (file size approximately 14 Mb each). When Gaussian statistics were used, the average NP size (at T = 40 and E = 33) was higher than the NP size detected at T = 51 and E = 39 (Fig. S2‡), the BG maximum was significantly higher (cf.Fig. 3, T = 40 and E = 33), the number of detected NPs was decreasing (cf. Fig. S4,‡T = 40 and E = 33), and the size starting from which NPs could be distinguished from the BG significantly increased by 10 nm (cf.Fig. 3, at T = 40 and E = 33), compared to T = 51 and E = 39 as optimal extraction conditions with Poisson statistics. In conclusion, Gaussian distribution statistics at a low number of counts (average BG below 100 counts) results in underestimation of thresholds in SP-ICP-MS: more BG is extracted together with NPs, and, in turn, the detection and characterization of the NPs are less precise.
Considering all the parameters discussed in the section, LC and LD can be used for quantitative extraction of NP ion clouds. As an option, the T parameter may be chosen 4–5 counts above the LD value to decrease the BG further, which will not significantly affect the size or the number of extracted NPs.
In order to determine the concentration of dissolved metal in the presence of NPs and to assess the NP size distribution the following steps are proposed:
– Perform a calibration with dissolved metal with a millisecond DT (e.g. 10 ms). This is done in order to ascertain the concentration of dissolved metal in the mixture, taking into account possible matrix effects.
– Construct the signal distribution after sample analysis to determine the average BG. It represents the dissolved metal concentration.
– In order to determine the NP size distribution, extract the NP ion clouds from the data obtained with the μsDAQ. This is done by setting thresholds (S, T, and E), and the threshold typically increase with the increasing BG signal. The thresholds can be calculated using the average BG obtained from the vendor software from the cumulative Poisson distribution or with the normality approximation (Table 2). The ion cloud beginning threshold (T) may be increased by 4–5 counts to decrease the BG further.
– Subtract the average BG from each ion cloud to obtain more precise sizing information.
– Construct the size distribution based on the NP size calibration.
Footnotes |
† Dedicated to Professor Alfredo Sanz-Medel on the occasion of his retirement. |
‡ Electronic supplementary information (ESI) available. See DOI: 10.1039/c9ja00042a |
This journal is © The Royal Society of Chemistry 2019 |