3.9 Article

Radiomics in photon-counting dedicated breast CT: potential of texture analysis for breast density classification

Journal

EUROPEAN RADIOLOGY EXPERIMENTAL
Volume 6, Issue 1, Pages -

Publisher

SPRINGER WIEN
DOI: 10.1186/s41747-022-00285-x

Keywords

Breast density; Breast neoplasms; Image processing (computer-assisted); Radiomics; Tomography (x-ray computed)

Funding

  1. Clinical Research Priority Program Artificial Intelligence in oncological Imaging of the University Zurich
  2. Swiss National Science Foundation SNF Sinergia [183568]

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This study investigated the use of texture analysis features to distinguish breast density in spiral photon-counting breast CT images, highlighting skewness and grey-level nonuniformity as strongly correlated with breast density. Multinomial logistic regression analysis showed an overall accuracy of 80% for breast density assessment, suggesting texture analysis of PC-BCT images as a potential observer-independent tool for breast density evaluation.
Background We investigated whether features derived from texture analysis (TA) can distinguish breast density (BD) in spiral photon-counting breast computed tomography (PC-BCT). Methods In this retrospective single-centre study, we analysed 10,000 images from 400 PC-BCT examinations of 200 patients. Images were categorised into four-level density scale (a-d) using Breast Imaging Reporting and Data System (BI-RADS)-like criteria. After manual definition of representative regions of interest, 19 texture features (TFs) were calculated to analyse the voxel grey-level distribution in the included image area. ANOVA, cluster analysis, and multinomial logistic regression statistics were used. A human readout then was performed on a subset of 60 images to evaluate the reliability of the proposed feature set. Results Of the 19 TFs, 4 first-order features and 7 second-order features showed significant correlation with BD and were selected for further analysis. Multinomial logistic regression revealed an overall accuracy of 80% for BD assessment. The majority of TFs systematically increased or decreased with BD. Skewness (rho -0.81), as a first-order feature, and grey-level nonuniformity (GLN, -0.59), as a second-order feature, showed the strongest correlation with BD, independently of other TFs. Mean skewness and GLN decreased linearly from density a to d. Run-length nonuniformity (RLN), as a second-order feature, showed moderate correlation with BD, but resulted in redundant being correlated with GLN. All other TFs showed only weak correlation with BD (range -0.49 to 0.49, p < 0.001) and were neglected. Conclusion TA of PC-BCT images might be a useful approach to assess BD and may serve as an observer-independent tool.

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