DC ElementWertSprache
dc.contributor.advisorGrüner, Florian-
dc.contributor.advisorWerner, Rene-
dc.contributor.advisorStaufer, Theresa-
dc.contributor.authorKreidelmeyer, Jonas Joachim-
dc.date.accessioned2026-06-22T10:30:53Z-
dc.date.available2026-06-22T10:30:53Z-
dc.date.issued2026-
dc.identifier.urihttps://ediss.sub.uni-hamburg.de/handle/ediss/12351-
dc.description.abstractX-ray fluorescence imaging (XFI) has the potential to become a highly advantageous medical imaging technique. It offers functional imaging over arbitrary time intervals into significant tissue depth and with high spatial resolution. There are two key steps in processing XFI data, the evaluation of the energy spectra at a given point and the reconstruction of the image. Both of these tasks can be interpreted as inference tasks in the statistical sense. One powerful statistical framework for inference is given by the field of Bayesian statistics which revolves around updating beliefs using new information. This work attempts to extend the established XFI processing pipeline using various Bayesian techniques. Firstly, this work discusses how x-ray fluorescence (XRF) spectra can be modeled as Poisson variables over a linear combination of base curves. This model then allows simple predictions for measurements at different tracer concentrations and dose levels, which is particularly useful for planning measurements using simulation data. This model is also validated against simulation data. Next, linear curve fitting of spectral models is reexamined, with least squares, weighted least squares and the first order correction to the Poisson likelihood being studied. Additionally this work shows that projecting the uncertainty of the energy-bin-wise posterior into the parameter space provides a robust and useful uncertainty estimate. The error estimation for signal isolation via spectral subtraction is also examined. Here, the Bayesian posterior leads to a correction of the uncertainty estimate that effectively removes singular behavior in the low count regime. It is shown that both of these revised uncertainty estimates produce strictly more powerful $z$-tests for signal detection than the established methods. Finally a new method for incorporating data from multiple detectors into spectral processing is proposed. To handle quantitative 3d image reconstruction several methods are evaluated. It is shown that the reconstruction of depth information using multiple detectors, but only one projection, is generally not feasible. However, hierarchical generative Bayesian models are capable of reconstructing 3d images from very few (e.g.\ eleven) projections at reasonable resolution with additional detectors being able to reduce the required dose at equal image quality. The uncertainty estimate this model provides are also shown to be usable for quantitative work. The resolution of the reconstruction is shown to be at the expected limits induced by the data dimensionality itself.en
dc.language.isoende_DE
dc.publisherStaats- und Universitätsbibliothek Hamburg Carl von Ossietzkyde
dc.rightshttp://purl.org/coar/access_right/c_abf2de_DE
dc.subject.ddc530: Physikde_DE
dc.titleBayesian Methods for XFIen
dc.title.alternativeBayesianische Methoden für XFIde
dc.title.alternativeBayesianische Methoden für Röntgenfluoreszenz Bildgegungde
dc.title.alternativeBayesian Methods for X-Ray Fluorescence Imagingen
dc.typedoctoralThesisen
dcterms.dateAccepted2026-03-18-
dc.rights.cchttps://creativecommons.org/licenses/by-sa/4.0/de_DE
dc.rights.rshttp://rightsstatements.org/vocab/InC/1.0/-
dc.subject.bcl33.90: Physik in Beziehung zu anderen Fachgebietende_DE
dc.subject.gndRöntgenfluoreszenzspektroskopiede_DE
dc.subject.gndBayes-Verfahrende_DE
dc.subject.gndMedizinische Physikde_DE
dc.subject.gndBildgebendes Verfahrende_DE
dc.subject.gndMaschinelles Lernende_DE
dc.type.casraiDissertation-
dc.type.dinidoctoralThesis-
dc.type.driverdoctoralThesis-
dc.type.statusinfo:eu-repo/semantics/publishedVersionde_DE
dc.type.thesisdoctoralThesisde_DE
tuhh.type.opusDissertation-
thesis.grantor.departmentPhysikde_DE
thesis.grantor.placeHamburg-
thesis.grantor.universityOrInstitutionUniversität Hamburgde_DE
dcterms.DCMITypeText-
dc.identifier.urnurn:nbn:de:gbv:18-ediss-137209-
item.grantfulltextopen-
item.languageiso639-1other-
item.creatorOrcidKreidelmeyer, Jonas Joachim-
item.advisorGNDGrüner, Florian-
item.advisorGNDWerner, Rene-
item.advisorGNDStaufer, Theresa-
item.creatorGNDKreidelmeyer, Jonas Joachim-
item.fulltextWith Fulltext-
Enthalten in den Sammlungen:Elektronische Dissertationen und Habilitationen
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