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Breast Lesion Segmentation in Ultrasound Images with Limited Annotated Data

机译:超声图像中带注释数据的乳房病变分割

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Ultrasound (US) is one of the most commonly used imaging modalities in both diagnosis and surgical interventions due to its low-cost, safety, and non-invasive characteristic. US image segmentation is currently a unique challenge because of the presence of speckle noise. As manual segmentation requires considerable efforts and time, the development of automatic segmentation algorithms has attracted researchers' attention. Although recent methodologies based on convolutional neural networks have shown promising performances, their success relies on the availability of a large number of training data, which is prohibitively difficult for many applications. Therefore, in this study we propose the use of simulated US images and natural images as auxiliary datasets in order to pre-train our segmentation network, and then to fine-tune with limited in vivo data. We show that with as little as 19 in vivo images, fine-tuning the pre-trained network improves the dice score by 21% compared to training from scratch. We also demonstrate that if same number of natural and simulation US images is available, pre-training on simulation data is preferable.
机译:超声(US)由于其低成本,安全性和无创性的特点,在诊断和手术干预中都是最常用的成像方式之一。由于存在斑点噪声,美国图像分割目前是一个独特的挑战。由于手动分割需要大量的精力和时间,因此自动分割算法的发展引起了研究人员的关注。尽管基于卷积神经网络的最新方法已显示出令人鼓舞的性能,但其成功取决于大量训练数据的可用性,这对于许多应用而言是极为困难的。因此,在这项研究中,我们建议使用模拟的美国图像和自然图像作为辅助数据集,以预先训练我们的分割网络,然后使用有限的体内数据进行微调。我们显示,与从头开始训练相比,微调预先训练的网络仅需19张体内图像,即可将骰子得分提高21%。我们还证明,如果有相同数量的自然和模拟美国图像可用,则对模拟数据进行预训练是可取的。

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