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首页> 外文期刊>Artificial intelligence in medicine >Segmentation of breast MR images using a generalised 2D mathematical model with inflation and deflation forces of active contours
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Segmentation of breast MR images using a generalised 2D mathematical model with inflation and deflation forces of active contours

机译:使用具有活动轮廓充气和放气力的广义二维数学模型对乳房MR图像进行分割

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摘要

In medical computer aided diagnosis systems, image segmentation is one of the major pre-processing steps used to ensure only the region of interest, such as the breast region, will be processed in subsequent steps. Nevertheless, breast segmentation is a difficult task due to low contrast and inhomogeneity, especially when estimating the chest wall in magnetic resonance (MR) images. In fact, the chest wall comprises fat, skin, muscles, and the thoracic skeleton, which can misguide automatic methods when attempting to estimate its location. The objective of the study is to develop a fully automated method for breast and pectoral muscle boundary estimation in MR images. Firstly, we develop a 2D breast mathematical model based on 30 MRI slices (from a patient) and identify important landmarks to obtain a model for the general shape of the breast in an axial plane. Subsequently, we use Otsu's thresholding approach and Canny edge detection to estimate the breast boundary. The active contour method is then employed using both inflation and deflation forces to estimate the pectoral muscle boundary by taking account of information obtained from the proposed 2D model. Finally, the estimated boundary is smoothed using a median filter to remove outliers. Our two datasets contain 60 patients in total and the proposed method is evaluated based on 59 patients (one patient is used to develop the 2D breast model). On the first dataset (9 patients) the proposed method achieved Jaccard = 81.1% +/- 6.1 % and dice coefficient = 89.4% +/- 4.1 % and on the second dataset (50 patients) Jaccard = 84.9% +/- 5.8 % and dice coefficient = 92.3% +/- 3.6 %. These results are qualitatively comparable with the existing methods in the literature.
机译:在医疗计算机辅助诊断系统中,图像分割是主要的预处理步骤之一,用于确保仅在后续步骤中处理感兴趣的区域(例如乳房区域)。但是,由于对比度低和不均匀,乳房分割是一项艰巨的任务,尤其是在磁共振(MR)图像中估计胸壁时。实际上,胸壁由脂肪,皮肤,肌肉和胸骨组成,在尝试估计其位置时可能会误导自动方法。该研究的目的是开发一种用于在MR图像中估算乳房和胸肌边界的全自动方法。首先,我们基于30个MRI切片(来自患者)开发了2D乳房数学模型,并确定了重要的地标,从而获得了轴向平面上乳房总体形状的模型。随后,我们使用Otsu的阈值方法和Canny边缘检测来估计乳房边界。然后使用主动轮廓方法,同时使用充气和放气力,通过考虑从建议的2D模型获得的信息来估计胸肌边界。最后,使用中值滤波器对估计的边界进行平滑处理以去除异常值。我们的两个数据集总共包含60位患者,并且根据59位患者对提出的方法进行了评估(其中一位患者用于开发2D乳房模型)。在第一个数据集(9位患者)上,所提出的方法实现了Jaccard = 81.1%+/- 6.1%和骰子系数= 89.4%+/- 4.1%,在第二个数据集(50位患者)上,Jaccard = 84.9%+/- 5.8%和骰子系数= 92.3%+/- 3.6%。这些结果在质量上与文献中的现有方法相当。

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