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A novel segmentation method for breast ultrasound images based on neutrosophic l-means clustering

机译:基于中智l均值聚类的乳腺超声图像分割方法

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摘要

Purpose: Fully automatic and accurate breast lesion segmentation is an essential and challenging task. In this paper, the authors develop a novel, effective, and fully automatic method for breast ultrasound (BUS) image segmentation. Methods: The segmentation method utilizes a novel phase feature to improve the image quality, and a novel neutrosophic clustering approach to detect the accurate lesion boundary. First, a region of interest is generated to cut off complex background. After speckle reduction, an enhancement algorithm based on phase in max-energy orientation (PMO) is developed to further improve the image quality. The PMO is a newly proposed 2D phase feature obtained by filtering the image in the frequency domain and calculating the phase accumulation in the orientation with maximum energy. Finally, the authors propose a novel clustering approach called neutrosophic l-means (NLM) to detect the lesion boundary. NLM is a generalized clustering method that can be used to solve other clustering problems as well. In this paper, NLM is used to segment images with vague boundaries, and to deal with uncertainty better. To evaluate the performance of the proposed method, the authors compare it with the traditional fuzzy c-means clustering, active contour, level set, and watershed-based segmentation methods, using a common database. Radiologists manual delineations are used as the golden standards. Five assessment metrics are utilized to evaluate the performance from different aspects. Both accuracy and efficiency are analyzed. Sensitivity analysis is also conducted to test the robustness of the proposed method. Results: Compared with the other methods, the proposed method generates the most similar boundaries to the radiologists manual delineations (TP rate is 92.4, FP rate is 7.2, and similarity rate is 86.3; Hausdorff distance is 22.5 pixels and mean absolute distance is 4.8 pixels), with efficient processing speed (averagely 9.8 s per image). Sensitivity analysis shows the robustness of the proposed method as well. Conclusions: The proposed method is a fully automatic segmentation method for BUS images that can generate accurate lesion boundaries even for complicated cases. The fast processing speed, robustness, and accuracy of the proposed method suggest its potential applications in clinics.
机译:目的:全自动,准确的乳腺病变分割是一项必不可少且具有挑战性的任务。在本文中,作者开发了一种新颖,有效且全自动的乳房超声(BUS)图像分割方法。方法:分割方法利用新颖的相位特征来改善图像质量,并利用新颖的中智聚类方法来检测准确的病变边界。首先,生成一个感兴趣的区域以切断复杂的背景。在减少斑点后,开发了一种基于最大能量方向相位(PMO)的增强算法,以进一步提高图像质量。 PMO是新提出的2D相位特征,通过在频域中对图像进行滤波并以最大能量计算方向上的相位累积。最后,作者提出了一种新的聚类方法,称为中智I均值(NLM)以检测病变边界。 NLM是一种通用的群集方法,也可以用于解决其他群集问题。在本文中,NLM用于分割具有模糊边界的图像,并更好地处理不确定性。为了评估该方法的性能,作者使用一个公共数据库将其与传统的模糊c均值聚类,主动轮廓,水平集和基于分水岭的分割方法进行了比较。放射科医生的手工划定被用作黄金标准。五个评估指标用于从不同方面评估绩效。分析准确性和效率。还进行了灵敏度分析,以测试该方法的鲁棒性。结果:与其他方法相比,该方法产生的边界与放射科医生的人工划界最为相似(TP率为92.4,FP率为7.2,相似率为86.3; Hausdorff距离为22.5像素,平均绝对距离为4.8像素) ),高效的处理速度(每个图像平均9.8 s)。灵敏度分析也表明了该方法的鲁棒性。结论:所提出的方法是一种用于BUS图像的全自动分割方法,即使在复杂情况下也可以生成准确的病变边界。该方法的快速处理速度,鲁棒性和准确性表明其在临床中的潜在应用。

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