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Ultrasound Ovary Image Classification Using Kσ-Classifier

机译:超声波卵巢图像分类使用kΣ-甲分类器

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Transvaginal UltraSound (TVUS) imaging is preferred imaging modality in detection of ovarian abnormalities. The ovarian parameters are measured manually by the expert and the shape of the Ovary is analyzed subjectively. There is a need for computer-assisted diagnostic support system to aid the experts in faster diagnosis as Manual measurement is time consuming. In this paper, we have extracted geometrical and shape features of the Ovary and have used Kσ-classifier to classify the Ovary as normal or abnormal. The proposed method is tested on Transvaginal ultrasound images of ovaries. The obtained experimental results are validated with the manual measurements and inferences by the medical expert and demonstrate the efficacy of the method. The algorithm could achieve a classification rate of 76.67% for Bilinear filtering-Contrast Stretched-Adaptive Thresholding (BGAT) method and 85.8% for Anisotropic filtering-CLAHE-Adaptive Thresholding (ACAT) method.
机译:经阴道超声(TVUS)成像是检测卵巢异常的优选成像模型。卵巢参数由专家手动测量,主观地分析卵巢的形状。需要计算机辅助诊断支持系统,以帮助专家更快地诊断,因为手动测量是耗时的。在本文中,我们提取了卵巢的几何形状和形状特征,并使用KΣ-甲分类器将卵巢分类为正常或异常。所提出的方法在卵巢的经阴道超声图像上进行测试。所获得的实验结果用医学专家的手动测量和推论进行了验证,并证明了该方法的功效。该算法可以实现76.67%的双线性过滤 - 对比拉伸 - 自适应阈值(BGAT)方法的分类率和85.8%,各向异性过滤 - CLAHE自适应阈值(ACAT)方法。

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