Diagnostic performance of photon-counting detector CT for differentiation between adrenal adenomas and metastases

Stefanie Bette, Franka Risch, Luca Canalini, Judith Becker, Eva V. Leithner, Adrian Huber,Mark Haerting,Bertram Jehs, Claudia Wollny,Florian Schwarz, Kartikay Tehlan,Christian Scheurig-Muenkler, Thomas Wendler,Thomas Kroencke,Josua A. Decker

European Radiology(2024)

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摘要
Aim of this study was to assess the value of virtual non-contrast (VNC) reconstructions in differentiating between adrenal adenomas and metastases on a photon-counting detector CT (PCD-CT). Patients with adrenal masses and contrast-enhanced CT scans in portal venous phase were included. Image reconstructions were performed, including conventional VNC (VNCConv) and PureCalcium VNC (VNCPC), as well as virtual monochromatic images (VMI, 40–90 keV) and iodine maps. We analyzed images using semi-automatic segmentation of adrenal lesions and extracted quantitative data. Logistic regression models, non-parametric tests, Bland–Altman plots, and a random forest classifier were used for statistical analyses. The final study cohort consisted of 90 patients (36 female, mean age 67.8 years [range 39–87]) with adrenal lesions (45 adenomas, 45 metastases). Compared to metastases, adrenal adenomas showed significantly lower CT-values in VNCConv and VNCPC (p = 0.007). Mean difference between VNC and true non-contrast (TNC) was 17.67 for VNCConv and 14.85 for VNCPC. Random forest classifier and logistic regression models both identified VNCConv and VNCPC as the best discriminators. When using 26 HU as the threshold in VNCConv reconstructions, adenomas could be discriminated from metastases with a sensitivity of 86.7
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关键词
Photon-counting detector computed tomography,Adrenal adenomas,Virtual non-contrast
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