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Machine learning and Region Growing for Breast Cancer Segmentation

机译:用于乳腺癌细分的机器学习和地区

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One of the main causes of increased mortality among women is breast cancer. The ultrasound scan is the most widely used method for diagnosing geological disease i.e. breast cancer. The first step for identifying the abnormality of the breast cancer (malignant from benign), is the extraction of the region of interest (ROI). In order to achieve this, a new approach to breast ROI extraction is proposed for the purpose of reducing false positive cases (FP). The proposed model was built based on the local pixel information and neural network. It includes two stages namely, training and testing. In the training stage, a trained model was built by extracting the number of batches from both ROI and background. The testing stage involved scanning the image with a fixed size window to detect the ROI from the background. Afterwards, a distance transform was used to identify the ROI and remove non-ROI. Experiments were conducted on the on-data set with 250 ultrasound images (150 benign and 100 malignant) the preliminary results show that the proposed method achieves a success rate of about 95.4% for breast contour extraction. The performance of the proposed solution also has been compared with the existing solutions that have been used to segment different types of images.
机译:增加女性死亡率增加的主要原因是乳腺癌。超声波扫描是最广泛使用的诊断地质疾病的方法I.。乳腺癌。鉴定乳腺癌异常的第一步(来自良性的恶性),是提取感兴趣区域(ROI)。为了实现这一点,提出了一种新的乳腺ROI提取方法,以减少假阳性病例(FP)。基于本地像素信息和神经网络建立了所提出的模型。它包括两个阶段,即培训和测试。在培训阶段,通过从ROI和背景中提取批次数量来构建培训的模型。测试阶段涉及使用固定尺寸窗口扫描图像以从后台检测ROI。然后,使用距离变换来识别ROI并删除非ROI。在具有250个超声图像(150良性和100个恶性)的数据集上进行了实验,初步结果表明,该方法可实现乳腺轮廓提取的成功率约为95.4%。所提出的解决方案的性能也与已用于分割不同类型图像的现有解决方案进行比较。

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