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Adjusted Quick Shift Phase Preserving Dynamic Range Compression method for breast lesions segmentation

机译:调整后的快速移位保存乳房病变分割动态范围压缩方法

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Ultrasound imaging systems produce images that are affected by speckle. This is mainly due to the interference of the returning wave at the transducer aperture that degrades images quality. As the filtering stage affects the quality of segmentation for breast ultrasound images, significant research recently concentrated on eliminating the speckle using different mathematical methods. In this paper, we propose a new approach for segmentation of breast ultrasound images called Adjusted Quick Shift Phase Preserving Dynamic Range Compression (AQS-APPDRC). AQS-APPDRC consists of three steps: a preprocessing step by applying APPDRC Filter and Frost Filter, followed by proposed Adjusted Quick Shift segmentation for superpixel extraction, and a post processing step of Binary Thresholding for blob selection. The results of our proposed AQS-APPDRC segmentation is compared with two other conventional segmentation methods namely: QS-FR, and QS-PPDRC. In addition, this study considers two state-of-the-art Convolutional Neural Networks (CNNs), i.e. U-Net and FCNs (FCN-AlexNet, FCN-32s and FCN-16s) for comparison. The segmentation results are evaluated on two small breast ultrasound datasets, where Dataset A has 306 images and Dataset B has 163 images. The proposed AQS-APPDRC approach achieved the best performance amongst two conventional methods and the CNNs in terms ofDice,Specificity, andMCC, when evaluated on Dataset A. For Dataset B, FCN-16s showed the bestDice,Specificity, andMCC, but the proposed AQS-APPDRC achieved comparable results. ForSensitivity, FCN-32s showed the best result for both datasets. Our results revealed that, for CNNs, the size of dataset is always the key indicator for its performance. The conventional methods produce comparable results on small datasets.
机译:超声成像系统产生受斑点影响的图像。这主要是由于换波在换能器孔的干扰,这降低了图像质量。随着过滤阶段影响乳房超声图像的分割质量,最近的重大研究集中在消除使用不同数学方法的斑点。在本文中,我们提出了一种新方法,用于分割称为调整后的快速移位保留动态范围压缩(AQS-APPDRC)的乳房超声图像的分割方法。 AQS-APPDRC由三个步骤组成:通过应用APPDRC滤波器和霜冻过滤器进行预处理步骤,然后提出了用于Superpixel提取的调整后的快速分割,以及BLOB选择的二进制阈值的后处理步骤。我们提出的AQS-APPDRC分段结果与另外两种传统的分割方法进行了比较:QS-FR和QS-PPDRC。此外,本研究考虑了两个最先进的卷积神经网络(CNNS),即U-Net和FCN(FCN-AlexNet,FCN-32S和FCN-16S)进行比较。分段结果在两个小乳房超声数据集上进行评估,其中数据集A具有306图像和数据集B具有163个图像。所提出的AQS-APPDRC方法在DataSet A的评估时,实现了两个传统方法和CNNS中的最佳性能,并且在DataSet A中评估。对于DataSet B,FCN-16显示了Bestdice,Compority,AndMCC,但提出的AQS -Appdrc实现了可比的结果。 fcn-32s显示两个数据集的最佳结果。我们的结果表明,对于CNN,数据集的大小始终是其性能的关键指示器。传统方法对小型数据集产生可比结果。

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