Diagnostic accuracy of ovarian cyst segmentation in B-mode ultrasound images

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Abstract

Cystic and polycystic ovary syndrome is an endocrine disorder affecting women in the fertile age. The Moore Neighbor Contour, Watershed Method, Active Contour Models, and a recent method based on Active Contour Model with Selective Binary and Gaussian Filtering Regularized Level Set (ACM&SBGFRLS) techniques were used in this paper to detect the border of the ovarian cyst from echography images. In order to analyze the efficiency of the segmentation an original computer aided software application developed in MATLAB was proposed. The results of the segmentation were compared and evaluated against the reference contour manually delineated by a sonography specialist. Both the accuracy and time complexity of the segmentation tasks are investigated. The Fréchet distance (FD) as a similarity measure between two curves and the area error rate (AER) parameter as the difference between the segmented areas are used as estimators of the segmentation accuracy. In this study, the most efficient methods for the segmentation of the ovarian were analyzed cyst. The research was carried out on a set of 34 ultrasound images of the ovarian cyst. © 2013 AIP Publishing LLC.

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APA

Bibicu, D., Moraru, L., & Stratulat, M. (2013). Diagnostic accuracy of ovarian cyst segmentation in B-mode ultrasound images. In AIP Conference Proceedings (Vol. 1564, pp. 164–170). https://doi.org/10.1063/1.4832813

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