Periaortic adipose radiomics texture features associated with increased coronary calcium score - first results on a photon-counting-CT

Background: Cardiovascular diseases remain the world’s primary cause of death. The identification and treatment of patients at risk of cardiovascular events thus are as important as ever. Adipose tissue is a classic risk factor for cardiovascular diseases, has been linked to systemic inflammation, a...

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Main Authors: Mundt, Peter (Author) , Tharmaseelan, Hishan (Author) , Hertel, Alexander (Author) , Rotkopf, Lukas Thomas (Author) , Nörenberg, Dominik (Author) , Riffel, Philipp (Author) , Schönberg, Stefan (Author) , Froelich, Matthias F. (Author) , Ayx, Isabelle (Author)
Format: Article (Journal)
Language:English
Published: 2023
In: BMC medical imaging
Year: 2023, Volume: 23, Pages: 1-10
ISSN:1471-2342
DOI:10.1186/s12880-023-01058-7
Online Access:Verlag, kostenfrei, Volltext: https://doi.org/10.1186/s12880-023-01058-7
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Author Notes:Peter Mundt, Hishan Tharmaseelan, Alexander Hertel, Lukas T. Rotkopf, Dominik Nörenberg, Philipp Riffel, Stefan O. Schoenberg, Matthias F. Froelich and Isabelle Ayx
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Summary:Background: Cardiovascular diseases remain the world’s primary cause of death. The identification and treatment of patients at risk of cardiovascular events thus are as important as ever. Adipose tissue is a classic risk factor for cardiovascular diseases, has been linked to systemic inflammation, and is suspected to contribute to vascular calcification. To further investigate this issue, the use of texture analysis of adipose tissue using radiomics features could prove a feasible option. Methods: In this retrospective single-center study, 55 patients (mean age 56, 34 male, 21 female) were scanned on a first-generation photon-counting CT. On axial unenhanced images, periaortic adipose tissue surrounding the thoracic descending aorta was segmented manually. For feature extraction, patients were divided into three groups, depending on coronary artery calcification (Agatston Score 0, Agatston Score 1–99, Agatston Score ≥ 100). 106 features were extracted using pyradiomics. R statistics was used for statistical analysis, calculating mean and standard deviation with Pearson correlation coefficient for feature correlation. Random Forest classification was carried out for feature selection and Boxplots and heatmaps were used for visualization. Additionally, monovariable logistic regression predicting an Agatston Score > 0 was performed, selected features were tested for multicollinearity and a 10-fold cross-validation investigated the stability of the leading feature. Results: Two higher-order radiomics features, namely “glcm_ClusterProminence” and “glcm_ClusterTendency” were found to differ between patients without coronary artery calcification and those with coronary artery calcification (Agatston Score ≥ 100) through Random Forest classification. As the leading differentiating feature “glcm_ClusterProminence” was identified. Conclusion: Changes in periaortic adipose tissue texture seem to correlate with coronary artery calcium score, supporting a possible influence of inflammatory or fibrotic activity in perivascular adipose tissue. Radiomics features may potentially aid as corresponding biomarkers in the future.
Item Description:Veröffentlicht: 26. Juli 2023
Gesehen am 24.08.2023
Physical Description:Online Resource
ISSN:1471-2342
DOI:10.1186/s12880-023-01058-7