Performance of sp-ICP-TOFMS with signal distributions fitted to a compound Poisson model


Date

2019-09

Publication Type

Journal Article

ETH Bibliography

yes

Citations

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Data

Abstract

Accurate separation of signals from individual nanoparticles (NPs) from background ion signals is decisive to correct sizing and number-concentration determinations in single-particle (sp) ICP-MS analyses. In typical sp-ICP-MS approaches, NP signals are identified via outlier analysis based on the assumption of normally distributed (i.e. Gaussian) or Poisson-distributed background signals. However, for sp-ICP-MS with a Time-of-Flight (TOF) mass spectrometer that digitizes MS signal by fast analog-to-digital conversion (ADC), the background ion signals are neither Gaussian nor Poisson. Instead, steady-state ion signals with ICP-TOFMS follow a compound Poisson distribution that reflects noise contributions from Poisson-distributed arrival of ions and gain statistics of microchannel-plate-based ion detection. Here, we characterize this compound Poisson distribution with Monte Carlo simulations to establish net critical values (LC(ADC)) as detection decision levels for the discrimination of discrete NPs in sp-ICP-TOFMS analyses. We apply LC(ADC) to the analysis of gold-silver core–shell nanoparticles (Au–Ag NPs), and compare these results to conventional sigma-based NP-detection thresholds. Additionally, we investigate how accurate modelling of the compound Poisson TOFMS signal distribution enables separation of overlapping background and NP distributions; we demonstrate accurate size measurement of 20 nm Au NPs that have mean signal intensity of less than four counts.

Publication status

published

Editor

Book title

Volume

34 (9)

Pages / Article No.

1900 - 1909

Publisher

Royal Society of Chemistry

Event

Edition / version

Methods

Software

Geographic location

Date collected

Date created

Subject

Organisational unit

03512 - Günther, Detlef / Günther, Detlef check_circle

Notes

Funding

174061 - Toward High-Throughput Quantitative Analysis of Nanoparticle Pollution in Environmental Samples (SNF)

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