Precision and trueness of a method for determing antimony content in groundwater using hydride generation-atomic fluorescence spectrometry
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Abstract: At present, there is currently a lack of unified standard methods for the determination of antimony content in groundwater in China. The precision and trueness of related detection technologies have not yet been systematically and quantitatively evaluated, which limits the effective implementation of environmental monitoring. In response to this key technical gap, this study aimed to establish a standardized method for determining antimony in groundwater using Hydride Generation–Atomic Fluorescence Spectrometry (HG-AFS). Ten laboratories participated in inter-laboratory collaborative tests, and the statistical analysis of the test data was carried out in strict accordance with the technical specifications of GB/T 6379.2—2004 and GB/T 6379.4—2006. The consistency and outliers of the data were tested by Mandel's h and k statistics, the Grubbs test and the Cochran test, and the outliers were removed to optimize the data, thereby significantly improving the reliability and accuracy. Based on the optimized data, parameters such as the repeatability limit (r), reproducibility limit (R), and method bias value (δ) were determined, and the trueness of the method was statistically evaluated. At the same time, precision-function relationships were established, and all results met the requirements. The results show that the lower the antimony content, the lower the repeatability limit (r) and reproducibility limit (R), indicating that the measurement error mainly originates from the detection limit of the method and instrument sensitivity. Therefore, improving the instrument sensitivity and reducing the detection limit are the keys to controlling the analytical error and improving precision. This study provides reliable data support and a solid technical foundation for the establishment and evaluation of standardized methods for the determination of antimony content in groundwater.
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Table 1. Sample information
Sample number YP-1 YP-2 YP-3 YP-4 YP-5 pH 8.37 8.38 7.35 7.95 7.86 Hydrochemical type HCO3+Cl-Na HCO3-Na HCO3+SO4-Ca+Mg HCO3-Ca HCO3-Ca Antimony content (μg/L) 0.10–0.30 0.50–1.00 1.20–1.80 2.00–3.00 3.00–5.00 Table 2. Method trueness test
Sample number Background value (μg/L) Added value (μg/L) Measured value (μg/L) Recovery rate (%) 1# N.D 0.30 0.3021, 0.3104, 0.3068, 0.3113, 0.3124, 0.2943, 98.10%–104.7% 0.3081, 0.3108, 0.3056, 0.3099, 0.3011, 0.3142 1.00 0.9874, 1.0196, 1.0296, 0.9851, 0.9644, 0.9661 96.20%–105.7% 1.0281, 1.0574, 0.9996, 1.0471, 1.0056, 0.9620 3.00 2.9761, 2.9914, 2.9414, 3.0499, 3.0309, 3.0354 98.05%–103.8% 3.0980, 3.0695, 3.0662, 3.1142, 2.9856, 3.0304 2# N.D 0.30 0.3072, 0.3121, 0.3078, 0.2906, 0.2964, 0.2933 95.77%–104.3% 0.3110, 0.2873, 0.3024, 0.3018, 0.3128, 0.3115 1.00 0.9654, 0.9511, 0.9758, 0.9882, 1.0274, 1.0447 95.11%–104.5% 1.0115, 1.0083, 1.0356, 1.0298, 1.0059, 0.9627 3.00 3.1055, 3.0631, 2.9652, 3.0321, 3.0615, 3.0629 97.18%–103.5% 2.9881, 3.0054, 3.0015, 3.0445, 2.9653, 2.9155 Table 3. Comparison of HG-AFS, HG-AAS and ICP-MS methods
Performance indicators This method (HG-AFS) HG-AAS (Li et al. 2008) ICP-MS (Zhang et al. 2016) Detection limit (μg/L) 0.02 0.31 0.03 Precision (RSD,%) 1.34–2.46 2.2-4.2 0.36–1.15 Linear range (μg/L) 0–5.0 0–20.0 0–50.0 Matrix interference Transition metals (Cu, Ni, etc.) Transition metals, hydride-forming elements Mass spectrometry interference Analysis costs Low Intermediate Very High Table 4. Mean and standard deviation of antimony content analysis results for each unit
Unit: μg/L Laboratory number Level 1 2 3 4 5 Mean Standard deviation Mean Standard deviation Mean Standard deviation Mean Standard deviation Mean Standard deviation 1 0.256 0.017 0.832 0.016 1.520 0.037 2.254 0.064 4.620 0.051 2 0.248 0.014 0.932 0.040 1.542 0.077 2.176 0.092 4.556 0.189 3 0.252 0.008 0.796 0.027 1.482 0.036 2.270 0.061 4.616 0.129 4 0.244 0.017 0.816 0.015 1.562 0.015 2.272 0.051 4.606 0.103 5 0.230 0.010 0.824 0.023 1.546 0.036 2.250 0.043 4.762 0.049 6 0.314 0.009 0.876 0.005 1.542 0.064 2.260 0.068 4.530 0.114 7 0.252 0.019 0.728 0.002 1.376 0.021 2.130 0.046 4.416 0.034 8 0.274 0.011 0.860 0.016 1.406 0.017 2.232 0.022 4.546 0.027 9 0.324 0.018 0.732 0.013 1.364 0.015 2.020 0.020 4.148 0.038 10 0.257 0.004 0.787 0.010 1.482 0.019 2.195 0.021 4.563 0.030 Table 5. Grubbs and Cochran test results
Collaborative sample number YP-1 YP-2 YP-3 YP-4 YP-5 Grubbs test Gp 1.928 1.375 1.138 0.926 1.829 G1 1.149 1.517 1.47 1.964 1.694 1% critical value 2.482 2.387 2.387 2.387 2.274 5% critical value 2.29 2.215 2.215 2.215 2.126 Cochran test C 0.197 0.316 0.424 0.298 0.348 1% critical value 0.393 0.425 0.425 0.425 0.463 5% critical value 0.331 0.358 0.358 0.358 0.391 Table 6. Statistical analysis results of method precision and trueness parameters
Statistical parameters Level 1 2 3 4 5 Number of accepted laboratories (p) 10 9 8 9 8 Number of test replicates (n) 5 5 5 5 5 Grand mean (m)/(μg/L) 0.265 0.806 1.47 2.23 4.58 Acceptable reference value (μ)/(μg/L) 0.26 0.80 1.50 2.20 4.55 Repeatability standard deviation (sr)/(μg/L) 0.014 0.016 0.026 0.056 0.078 Repeatability coefficient of variation/% 5.09 1.99 1.79 2.52 1.69 Repeatability limit (r)/(μg/L) 0.038 0.045 0.074 0.159 0.219 Reproducibility standard deviation (sR)/(μg/L) 0.033 0.053 0.080 0.070 0.120 Reproducibility coefficient of variation/% 12.41 6.59 5.47 3.16 2.62 Reproducibility limit (R)/(μg/L) 0.093 0.150 0.227 0.199 0.340 γ=sR/sr 2.429 3.311 3.048 1.250 1.551 Uncertainty coefficient (A) 0.630 0.625 0.626 0.658 0.645 Method bias value (δ)/(μg/L) 0.005 0.006 -0.033 0.027 0.032 δ − A*sR/(μg/L) −0.016 −0.027 −0.083 −0.020 −0.045 δ + A*sR/(μg/L) 0.026 0.039 0.018 0.073 0.110 Table 7. Inter-laboratory precision
Unit: μg/L Element Mean level (m) Repeatability limit (r) Reproducibility limit (R) Antimony 0.26–4.55 r = 0.0451 m + 0.0229 R = 0.1668 m 0.4357 Note: The precision was determined in accordance with GB/T 6379.2, based on statistical analysis of data from ten laboratories, each performing five replicate determinations for five concentration levels under repeatability conditions, after the elimination of outliers. -
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