Author/Authors :
Arab, M Cancer Research Center - Shahid Beheshti University of Medical Sciences, Tehran - Imam Hossein Hospital - Shahid Beheshti University of Medical Sciences, Tehran , Yaseri, M Department of Epidemiology and Biostatistics School of Public Health - Tehran University of Medical Sciences, Tehran , Farzaneh, M Imam Hossein Hospital - Shahid Beheshti University of Medical Sciences, Tehran , Moridi, A Imam Hossein Hospital - Shahid Beheshti University of Medical Sciences, Tehran , Tehranian, A Arash Hospital - Tehran University of Medical Sciences, Tehran , Sheibani, K Imam Hossein Hospital - Shahid Beheshti University of Medical Sciences, Tehran
Abstract :
Background: The best management for an ovarian mass is provided by
appropriate prediction of malignancy. The aim of our study is to construct and
validate a new Malignancy Probability Score based on four simple sonographic
findings and age.
Methods: In a cross sectional study; histopathological files of 3303 ovarian mass
patients and tertiary hospitals, have reviewed within 6 years (2000-2006).
Pathology, age, sonographic findings including solid area, ascetic, size and
bilateralism were recorded. Logistic multivariate regression analysis SPSS18 has
used to create malignancy probability scoring model. Our ovarian Malignancy
Probability Score (OMPS) has constructed based on 80% of samples in a logistic
regression model and has validated using the remainder of the cases.
Results: Ovarian malignancy probability score (OMPS) has calculated as follow:
age × 0.062 + Tumor size (cm) × 0.012+1.172(if the tumor is solid) + 1.289(if
ascites is present) +0.758(if the tumor is bilateral)
Sensitivity of OMPS in prediction of malignancy with cutoff value of 3.65 score
number was 77.9% and its specificity was 72.9% with Area under Curve (AUC) of
83% in ROC curve.
Conclusion: OMPS is designed and tested in our research, to be proved as a
simple and accurate clinical tool for ovarian malignancy prediction.
Keywords :
Logistic model , Ovarian mass , Ovarian cancer , Ultrasound , Risk of malignancy