Literature DB >> 31977070

Discrimination analysis of breast calcifications using x-ray dark-field radiography.

Thomas Rauch1, Jens Rieger1, Georg Pelzer1, Florian Horn1, Ramona Erber2, Marius Wunderle3, Julius Emons3, Naiba Nabieva3, Nicole Fuhrich2, Thilo Michel1, Arndt Hartmann2, Peter A Fasching3, Gisela Anton1.   

Abstract

BACKGROUND: X-ray dark-field radiography could enhance mammography by providing more information on imaged tissue and microcalcifications. The dark field signal is a measure of small angle scattering and can thus provide additional information on the imaged materials. This information can be useful for material distinction of calcifications and the diagnosis of breast cancer by classifying benign and malign association of these calcifications.
METHODS: For this study, institutional review board approval was obtained. We present the evaluation of images acquired with interferometric grating-based x-ray imaging of 323 microcalcifications (166 malign and 157 benign associated) in freshly dissected breast tissue and compare the results to the information extracted in follow-up pathological evaluation. The number of imaged calcifications is sufficiently higher than in similar previous studies. Fourteen calcification properties were extracted from the digital images and used as predictors in three different models common in discrimination analysis namely a simple threshold model, a naive Bayes model and a linear regression model, which classify the calcifications as associated with a benign or suspicious finding. Three of these fourteen predictors have been newly defined in this work and are independent from the tissue background surrounding the microcalcifications. Using these predictors no background correction is needed, as in previous works in this field. The new predictors are the length of the first and second principle component of the absorption and dark-field data, as well as the angle between the first principle component and the dark-field axis. We called these predictors data length, data width, and data orientation.
RESULTS: In fourfold cross-validation malignancy of the imaged tissue was predicted. Models that take only classical absorption predictors into account reached a sensitivity of 53.3% at a specificity of 81.1%. For a combination of predictors that also include dark field information, a sensitivity of 63.2% and specificity of 80.8% were obtained. The included dark field information consisted of the newly introduced parameters, data orientation and data width.
CONCLUSIONS: While remaining at a similar specificity, the sensitivity, with which a trained model was able to distinguish malign from benign associated calcifications, was increased by 10% on including dark-field information. This suggests grating-based x-ray imaging as a promising clinical imaging method in the field of mammography.
© 2020 The Authors. Medical Physics published by Wiley Periodicals, Inc. on behalf of American Association of Physicists in Medicine.

Entities:  

Keywords:  dark field; discriminant analysis; mammography; microcalcifications; phase-contrast x-ray imaging

Mesh:

Year:  2020        PMID: 31977070     DOI: 10.1002/mp.14043

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  2 in total

1.  Whole-body x-ray dark-field radiography of a human cadaver.

Authors:  Jana Andrejewski; Fabio De Marco; Konstantin Willer; Wolfgang Noichl; Alex Gustschin; Thomas Koehler; Pascal Meyer; Fabian Kriner; Florian Fischer; Christian Braun; Alexander A Fingerle; Julia Herzen; Franz Pfeiffer; Daniela Pfeiffer
Journal:  Eur Radiol Exp       Date:  2021-01-26

2.  The effect of a variable focal spot size on the contrast channels retrieved in edge-illumination X-ray phase contrast imaging.

Authors:  A Astolfo; I Buchanan; T Partridge; G K Kallon; C K Hagen; P R T Munro; M Endrizzi; D Bate; A Olivo
Journal:  Sci Rep       Date:  2022-03-01       Impact factor: 4.996

  2 in total

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