Title :
A classification of polycystic Ovary Syndrome based on follicle detection of ultrasound images
Author :
Purnama, Bedy ; Wisesti, Untari Novia ; Adiwijaya ; Nhita, Fhira ; Gayatri, Andini ; Mutiah, Titik
Author_Institution :
Sch. of Comput., Telkom Univ., Bandung, Indonesia
Abstract :
Polycystic Ovary Syndrome (PCOS) is an endocrine abnormality that occurred in female reproductive cycle. This paper designed an application to classify Polycystic Ovary Syndrome based on follicle detection using USG images. The first stage of this classification is preprocessing, which employs low pass filter, equalization histogram, binarization, and morphological processes to obtain binary follicle images. The next stage is segmentation with edge detection, labeling, and cropping the follicle images. The following stage is feature extraction using Gabor wavelet. The cropped follicle images are categorized into two groups of texture features: (1) Mean, (2) Mean, Entropy, Kurtosis, Skewness, and Variance. This result in 2 datasets prepared for classification process, i.e. (1) data set A has 40 images that consist of 26 normal images and 14 PCOS-indicated images. It counted by Mean texture feature and obtained 275 follicle images. (2) Dataset B has 40 images consist of 34 normal images and 6 PCOS-indicated images. It counted by Mean, Entropy, Kurtosis, Skewness, and Variance texture features then obtained 339 follicle images. The last stage is classification. It identifies the features of PCO and non-PCO follicles based on the feature vectors resulted from feature extraction. Here, three classification scenarios are designed: (1) Neural Network-Learning Vector Quantization (LVQ) method, (2) KNN - euclidean distance, and (3) Support Vector Machine (SVM) - RBF Kernel. The best accuracy gained from SVM-RBF Kernel on C=40. It shows that dataset A reach 82.55% while dataset B that obtained from KNN-euclidean distance classification on K=5 reach 78.81%.
Keywords :
Gabor filters; biomedical ultrasonics; edge detection; entropy; feature extraction; image classification; image filtering; image segmentation; image texture; learning (artificial intelligence); low-pass filters; medical disorders; medical image processing; radial basis function networks; support vector machines; wavelet transforms; Gabor wavelet; KNN-euclidean distance classification; PCOS-indicated images; SVM-RBF kernel; binarization; binary follicle images; cropped follicle images; edge detection; endocrine abnormality; entropy texture feature; equalization histogram; feature extraction; feature vectors; female reproductive cycle; follicle detection; image segmentation; kurtosis texture feature; low-pass filter; mean texture feature; morphological process; neural network-learning vector quantization method; polycystic ovary syndrome classification; skewness texture feature; support vector machine-RBF kernel; ultrasound images; variance texture feature; Accuracy; Euclidean distance; Feature extraction; Filter banks; Image segmentation; Neurons; Training; Gabor wavelet; follicle detection; polycystic ovary syndrome; ultrasonography images;
Conference_Titel :
Information and Communication Technology (ICoICT ), 2015 3rd International Conference on
Conference_Location :
Nusa Dua
DOI :
10.1109/ICoICT.2015.7231458