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Classification of Ovarian Cysts on Ultrasound Images Using Watershed Segmentation and Contour Analysis

机译:利用分水岭分割和轮廓分析对超声图像上的卵巢囊肿进行分类

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Ovarian cyst is a disease that occurs in the uterus of a woman, the method of detection and analysis is carried out by experts by looking at and observing the size of the cyst and the characteristics of the cyst on an ultrasound device. The accuracy of manual ovarian cyst measurement analysis on ultrasound examination results often results in errors, therefore a tool is needed to calculate the size of the cyst and detect the characteristics of the cyst based on the papillary growth in the cyst. Ultrasound image from the hospital as input from the system, then a preprocessing process is carried out to remove noise in the image, the next step is the segmentation process using the watershed method, the segmentation results will be used for feature extraction by detecting cysts and papillary and their sizes using contour analysis with the bounding box method. The extraction feature will be used for cyst classification. This system has an accuracy rate of 97.8%.
机译:卵巢囊肿是一种发生在女性子宫中的疾病,检测和分析方法由专家通过在超声设备上观察和观察囊肿的大小以及囊肿的特征来进行。超声检查结果中人工卵巢囊肿测量分析的准确性通常会导致错误,因此需要一种工具来计算囊肿的大小并根据囊肿中的乳头状生长检测囊肿的特征。将来自医院的超声图像作为系统的输入,然后执行预处理过程以去除图像中的噪声,下一步是使用分水岭方法进行分割过程,该分割结果将通过检测囊肿和乳头及其大小,使用边界框法进行轮廓分析。提取功能将用于囊肿分类。该系统的准确率为97.8%。

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