Uterine mesenchymal tumors: development and preliminary results of a magnetic resonance imaging (MRI) diagnostic algorithm

Purpose The aim of our study is to propose a diagnostic algorithm to guide MRI findings interpretation and malignancy risk stratification of uterine mesenchymal masses with a multiparametric step-by-step approach. Methods A non-interventional retrospective multicenter study was performed: Preoperati...

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Veröffentlicht in:Radiologia medica 2023-07, Vol.128 (7), p.853-868
Hauptverfasser: Rosa, Francesca, Martinetti, Carola, Magnaldi, Silvia, Rizzo, Stefania, Manganaro, Lucia, Migone, Stefania, Ardoino, Silvia, Schettini, Daria, Marchiolè, Pierangelo, Ragusa, Tommaso, Gandolfo, Nicoletta
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Sprache:eng
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Zusammenfassung:Purpose The aim of our study is to propose a diagnostic algorithm to guide MRI findings interpretation and malignancy risk stratification of uterine mesenchymal masses with a multiparametric step-by-step approach. Methods A non-interventional retrospective multicenter study was performed: Preoperative MRI of 54 uterine masses was retrospectively evaluated. Firstly, the performance of MRI with monoparametric and multiparametric approach was assessed. Reference standard for final diagnosis was surgical pathologic result ( n  = 53 patients) or at least 1-year MR imaging follow-up ( n  = 1 patient). Subsequently, a diagnostic algorithm was developed for MR interpretation, resulting in a Likert score from 1 to 5 predicting risk of malignancy of the uterine lesion. The accuracy and reproducibility of the MRI scoring system were then tested: 26 preoperative pelvic MRI were double-blind evaluated by a senior (SR) and junior radiologist (JR). Diagnostic performances and the agreement between the two readers with and without the application of the proposed algorithm were compared, using histological results as standard reference. Results Multiparametric approach showed the best diagnostic performance in terms of accuracy (94.44%,) and specificity (97.56%). DWI was confirmed as the most sensible parameter with a relative high specificity: low ADC values (mean 0.66) significantly correlated to uterine sarcomas diagnosis ( p  
ISSN:1826-6983
0033-8362
1826-6983
DOI:10.1007/s11547-023-01654-1