Automated characterisation of ultrasound images of ovarian tumours: the diagnostic accuracy of a support vector machine and image processing with a local binary pattern operator
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Original Papers
VOLUME: 7 ISSUE: 1
P: 7 - 15
March 2015

Automated characterisation of ultrasound images of ovarian tumours: the diagnostic accuracy of a support vector machine and image processing with a local binary pattern operator

Facts Views Vis ObGyn 2015;7(1):7-15
1. Department of Applied Computing, University of Buckingham, Buckingham MK18 1EG, UK
2. Department of Cancer and Surgery, Queen Charlotte’s and Chelsea Hospital, Imperial College, London W12 0HS, UK
3. KU Leuven Department of Development and Regeneration; Obstetrics and Gynaecology, University Hospitals KU Leuven, Leuven, Belgium
4. Queen Charlotte’s and Chelsea Hospital, Imperial College, London W12 0HS, UK
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Abstract

Introduction

Preoperative characterisation of ovarian masses into benign or malignant is of paramount importance to optimise patient management. Objectives: In this study, we developed and validated a computerised model to characterise ovarian masses as benign or malignant.

Materials and methods

Transvaginal 2D B mode static ultrasound images of 187 ovarian masses with known histological diagnosis were included. Images were first pre-processed and enhanced, and Local Binary Pattern Histograms were then extracted from 2 × 2 blocks of each image. A Support Vector Machine (SVM) was trained using stratified cross validation with randomised sampling. The process was repeated 15 times and in each round 100 images were randomly selected.

Results

The SVM classified the original non-treated static images as benign or malignant masses with an average accuracy of 0.62 (95% CI: 0.59-0.65). This performance significantly improved to an average accuracy of 0.77 (95% CI: 0.75-0.79) when images were pre-processed, enhanced and treated with a Local Binary Pattern operator (mean difference 0.15: 95% 0.11-0.19, p < 0.0001, two-tailed t test).

Conclusion

We have shown that an SVM can classify static 2D B mode ultrasound images of ovarian masses into benign and malignant categories. The accuracy improves if texture related LBP features extracted from the images are considered.

Keywords:
Decision support techniques, ovarian cancer, ovarian neoplasm, Support Vector Machines, ultrasonography