Background: Differential diagnosis between benign uterine smooth muscle tumors and malignant counterpart is challenging. OBJECTIVE: To evaluate the accuracy of a clinical and ultrasound based algorithm in predicting mesenchymal uterine malignancies, including smooth muscle tumors of uncertain malignant potential. STUDY DESIGN: We report the 12-month follow-up of an observational, prospective, single-center study that included women with at least 1 myometrial lesion ≥3 cm on ultrasound examination. These patients were classified according to a 3-class diagnostic algorithm, using symptoms and ultrasound features. “White” patients underwent annual telephone follow-up for 2 years, “Green” patients underwent a clinical and ultrasound follow-up at 6, 12, and 24 months and “Orange” patients underwent surgery. We further developed a risk class system to stratify the malignancy risk. RESULTS: Two thousand two hundred sixty-eight women were included and target lesion was classified as benign in 2158 (95.1%), as other malignancies in 58 (2.6%) an as mesenchymal uterine malignancies in 52 (2.3%) patients. At multivariable analysis, age (odds ratio 1.05 [95% confidence interval 1.03–1.07]), tumor diameter >8 cm (odds ratio 5.92 [95% confidence interval 2.87–12.24]), irregular margins (odds ratio 2.34 [95% confidence interval 1.09–4.98]), color score=4 (odds ratio 2.73 [95% confidence interval 1.28–5.82]), were identified as independent risk factors for malignancies, whereas acoustic shadow resulted in an independent protective factor (odds ratio 0.39 [95% confidence interval 0.19–0.82[). The model, which included age as a continuous variable and lesion diameter as a dichotomized variable (cut-off 81 mm), provided the best area under the curve (0.87 [95% confidence interval 0.82–0.91]). A risk class system was developed, and patients were classified as low-risk (predictive model value <0.39%: 0/606 malignancies, risk 0%), intermediate risk (predictive model value 0.40%–2.2%: 9/1093 malignancies, risk 0.8%), high risk (predictive model value ≥2.3%: 43/566 malignancies, risk 7.6%). Conclusion: The preoperative 3-class diagnostic algorithm and risk class system can stratify women according to risk of malignancy. Our findings, if confirmed in a multicenter study, will permit differentiation between benign and mesenchymal uterine malignancies allowing a personalized clinical approach.
Ciccarone, F., Biscione, A., Robba, E., Pasciuto, T., Giannarelli, D., Gui, B., Manfredi, R., Ferrandina, M. G., Romualdi, D., Moro, F., Zannoni, G. F., Lorusso, D., Scambia, G., Testa, A. C., A clinical ultrasound algorithm to identify uterine sarcoma and smooth muscle tumors of uncertain malignant potential in patients with myometrial lesions: the MYometrial Lesion UltrasouNd And mRi study, <<AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY>>, 2025; 232 (1): 108.e1-108.e22. [doi:10.1016/j.ajog.2024.07.027] [https://hdl.handle.net/10807/313088]
A clinical ultrasound algorithm to identify uterine sarcoma and smooth muscle tumors of uncertain malignant potential in patients with myometrial lesions: the MYometrial Lesion UltrasouNd And mRi study
Ciccarone, Francesca;Pasciuto, Tina;Giannarelli, Diana;Gui, Benedetta;Manfredi, Riccardo;Ferrandina, Maria Gabriella;Romualdi, Daniela;Zannoni, Gian Franco;Lorusso, Domenica;Scambia, Giovanni;Testa, Antonia Carla
2025
Abstract
Background: Differential diagnosis between benign uterine smooth muscle tumors and malignant counterpart is challenging. OBJECTIVE: To evaluate the accuracy of a clinical and ultrasound based algorithm in predicting mesenchymal uterine malignancies, including smooth muscle tumors of uncertain malignant potential. STUDY DESIGN: We report the 12-month follow-up of an observational, prospective, single-center study that included women with at least 1 myometrial lesion ≥3 cm on ultrasound examination. These patients were classified according to a 3-class diagnostic algorithm, using symptoms and ultrasound features. “White” patients underwent annual telephone follow-up for 2 years, “Green” patients underwent a clinical and ultrasound follow-up at 6, 12, and 24 months and “Orange” patients underwent surgery. We further developed a risk class system to stratify the malignancy risk. RESULTS: Two thousand two hundred sixty-eight women were included and target lesion was classified as benign in 2158 (95.1%), as other malignancies in 58 (2.6%) an as mesenchymal uterine malignancies in 52 (2.3%) patients. At multivariable analysis, age (odds ratio 1.05 [95% confidence interval 1.03–1.07]), tumor diameter >8 cm (odds ratio 5.92 [95% confidence interval 2.87–12.24]), irregular margins (odds ratio 2.34 [95% confidence interval 1.09–4.98]), color score=4 (odds ratio 2.73 [95% confidence interval 1.28–5.82]), were identified as independent risk factors for malignancies, whereas acoustic shadow resulted in an independent protective factor (odds ratio 0.39 [95% confidence interval 0.19–0.82[). The model, which included age as a continuous variable and lesion diameter as a dichotomized variable (cut-off 81 mm), provided the best area under the curve (0.87 [95% confidence interval 0.82–0.91]). A risk class system was developed, and patients were classified as low-risk (predictive model value <0.39%: 0/606 malignancies, risk 0%), intermediate risk (predictive model value 0.40%–2.2%: 9/1093 malignancies, risk 0.8%), high risk (predictive model value ≥2.3%: 43/566 malignancies, risk 7.6%). Conclusion: The preoperative 3-class diagnostic algorithm and risk class system can stratify women according to risk of malignancy. Our findings, if confirmed in a multicenter study, will permit differentiation between benign and mesenchymal uterine malignancies allowing a personalized clinical approach.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.