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Automated Breast Lesion Segmentation from Ultrasound Images based on PPU-Net

机译:基于PPU网的超声图像自动乳房病变分割

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Ultrasound is one of the most widely applied imaging modalities for breast lesion assessment. Breast lesion segmentation in ultrasound plays an important role in extracting features that is crucial for breast cancer diagnosis and treatment planning. Existing methods include manual or automated identifying breast lesion boundary. However, manual segmentation is time consuming and leads to inter- and intra-observer variations. Automated segmentation of breast lesion is highly required but very challenging due to the ultrasonic property of tissue. The neural network, an emerging automated segmentation technology, is widely used in medical images segmentation tasks and has achieved good performance. In this study, we proposed a novel pyramidal pooling U-Net network (PPU-Net) to segment breast lesion. In PPU-Net, the pyramid pooling module (PPM) was applied together with the U-Net to extract more scale information. The ratio of training set (408 cases) and test set (103 cases) was 4:1 in 511 breast lesion images. The PPU-Net approach was evaluated on the test set and achieved good performance. The evaluation metrics of Dice similarity coefficient (DSC) and accuracy (ACC) for PPU-Net were $88.97 pm 8.96$% and $94.16pm 4.02$% respectively. For comparision, the DSC and the ACC based on U-Net and FCN were evaluated. The result demonstrated the feasibility that PPU-Net could be applied in breast lesion segmentation from ultrasound images and it has better performance than U-Net and FCN in this study.
机译:超声是乳房病变评估最广泛应用的成像模式之一。超声中的乳腺病变分割在提取对乳腺癌诊断和治疗规划至关重要的提取特征方面发挥着重要作用。现有方法包括手动或自动识别乳房病变边界。但是,手动分割是耗时的,导致观察者和观察者内的变化。由于组织的超声特性,乳房病变的自动分割非常需要,但非常具有挑战性。神经网络是一种新兴自动分割技术,广泛用于医学图像分割任务,实现了良好的性能。在这项研究中,我们提出了一种新的金字塔汇集U-Net网络(PPU-Net),以分段乳腺病变。在PPU-NET中,金字塔汇集模块(PPM)与U-Net一起应用,以提取更多比例​​信息。训练集(408例)和试验组(103例)的比例为511乳腺病变图像。对测试集进行评估PPU-Net方法,实现了良好的性能。 PPU-Net的骰子相似系数(DSC)和准确度(ACC)的评估度量分别为88.97美元,分别为88.97美元,分别为8.96美元和94.16美元。对于比较,评估基于U-Net和FCN的DSC和ACC。结果表明,PPU-NET可以从超声图像应用于乳房病变分段的可行性,并且在本研究中具有比U-Net和FCN更好的性能。

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