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Unsupervised Segmentation of 3D Medical Images Based on Clustering and Deep Representation Learning

机译:基于聚类和深度代表学习的3D医学图像的无监督分割

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This paper presents a novel unsupervised segmentation method for 3D medical images. Convolutional neural networks (CNNs) have brought significant advances in image segmentation. However, most of the recent methods rely on supervised learning, which requires large amounts of manually annotated data. Thus, it is challenging for these methods to cope with the growing amount of medical images. This paper proposes a unified approach to unsupervised deep representation learning and clustering for segmentation. Our proposed method consists of two phases. In the first phase, we learn deep feature representations of training patches from a target image using joint unsupervised learning (JULE) that alternately clusters representations generated by a, CNN and updates the CNN parameters using cluster labels as supervisory signals. We extend JULE to 3D medical images by utilizing 3D convolutions throughout the CNN architecture. In the second phase, we apply κ-means to the deep representations from the trained CNN and then project cluster labels to the target image in order to obtain the fully segmented image. We evaluated our methods on three images of lung cancer specimens scanned with micro-computed tomography (micro-CT). The automatic segmentation of pathological regions in micro-CT could further contribute to the pathological examination process. Hence, we aim to automatically divide each image into the regions of invasive carcinoma, noninvasive carcinoma, and normal tissue. Our experiments show the potential abilities of unsupervised deep representation learning for medical image segmentation.
机译:本文提出了一种用于3D医学图像的无监督分段方法。卷积神经网络(CNNS)在图像分割中提出了显着的进步。但是,最近的大多数方法都依赖于监督学习,这需要大量的手动注释数据。因此,这些方法应对越来越多的医学图像进行挑战。本文提出了对无监督的深度代表学习和分割聚类的统一方法。我们所提出的方法包括两个阶段。在第一阶段,我们使用联合无监督学习(Jule)学习来自目标图像的训练补丁的深度特征表示,其交替地通过A,CNN生成的簇表示簇,并使用群集标签更新CNN参数作为监控信号。我们通过在整个CNN架构中利用3D卷积来扩展Jule至3D医学图像。在第二阶段,我们将κ算送到训练的CNN的深度表示,然后将群集标签项目施加到目标图像中,以获得完全分段图像。我们在用微型计算机断层扫描(Micro-CT)扫描的肺癌标本的三个图像中评估了我们的方法。微型CT病理区域的自动分割可以进一步有助于病理检查过程。因此,我们的目标是自动将每个图像分成侵入性癌,非侵入性癌和正常组织区域。我们的实验表明了无监督的深度代表学习对医学图像分割的潜在能力。

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