| Literature DB >> 32526558 |
Frederick Meisenkothen1, Daniel V Samarov2, Irina Kalish3, Eric B Steel4.
Abstract
Atom probe tomography (APT) can theoretically deliver accurate chemical and isotopic analyses at a high level of sensitivity, precision, and spatial resolution. However, empirical APT data often contain significant biases that lead to erroneous chemical concentration and isotopic abundance measurements. The present study explores the accuracy of quantitative isotopic analyses performed via atom probe mass spectrometry. A machine learning-based adaptive peak fitting algorithm was developed to provide a reproducible and mathematically defensible means to determine peak shapes and intensities in the mass spectrum for specific ion species. The isotopic abundance measurements made with the atom probe are compared directly with the known isotopic abundance values for each of the materials. Even in the presence of exceedingly high numbers of multi-hit detection events (up to 80%), and in the absence of any deadtime corrections, our approach produced isotopic abundance measurements having an accuracy consistent with values limited predominantly by counting statistics.Entities:
Keywords: Atom probe; Isotopic analysis; Mass spectrometry; Multi-hit detection events; Peak fitting
Year: 2020 PMID: 32526558 PMCID: PMC7717065 DOI: 10.1016/j.ultramic.2020.113018
Source DB: PubMed Journal: Ultramicroscopy ISSN: 0304-3991 Impact factor: 2.689