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Automatic Lymph Node Cluster Segmentation Using Holistically-Nested Neural Networks and Structured Optimization in CT Images

机译:整体嵌套神经网络的淋巴结簇自动分割和CT图像的结构优化

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Lymph node segmentation is an important yet challenging problem in medical image analysis. The presence of enlarged lymph nodes (LNs) signals the onset or progression of a malignant disease or infection. In the thoracoabdominal (TA) body region, neighboring enlarged LNs often spatially collapse into "swollen" lymph node clusters (LNCs) (up to 9 LNs in our dataset). Accurate segmentation of TA LNCs is complexified by the noticeably poor intensity and texture contrast among neighboring LNs and surrounding tissues, and has not been addressed in previous work. This paper presents a novel approach to TA LNC segmentation that combines holistically-nested neural networks (HNNs) and structured optimization (SO). Two HNNs, built upon recent fully convolutional networks (FCNs) and deeply supervised networks (DSNs), are trained to learn the LNC appearance (HNN-A) or contour (HNN-C) probabilistic output maps, respectively. HNN first produces the class label maps with the same resolution as the input image, like FCN. Afterwards, HNN predictions for LNC appearance and contour cues are formulated into the unary and pairwise terms of conditional random fields (CRFs), which are subsequently solved using one of three different SO methods: dense CRF, graph cuts, and boundary neural fields (BNF). BNF yields the highest quantitative results. Its mean Dice coefficient between segmented and ground truth LN volumes is 82.1% ± 9.6%, compared to 73.0% ± 17.6% for HNN-A alone. The LNC relative volume (cm~3) difference is 13.7%± 13.1%,a promising result for the development of LN imaging biomarkers based on volumetric measurements.
机译:淋巴结分割是医学图像分析中一个重要但具有挑战性的问题。淋巴结肿大(LNs)的存在预示着恶性疾病或感染的发作或进展。在胸腹(TA)身体区域,相邻的扩大LN通常在空间上塌陷为“肿胀的”淋巴结簇(LNC)(在我们的数据集中最多9个LN)。 TA LNC的精确分割由于相邻LN和周围组织之间明显差的强度和纹理对比度而变得复杂,并且在以前的工作中未曾解决。本文提出了一种新的TA LNC分割方法,该方法结合了整体嵌套神经网络(HNN)和结构优化(SO)。对两个基于最近的全卷积网络(FCN)和深度监督网络(DSN)的HNN进行了训练,以分别学习LNC外观(HNN-A)或轮廓(HNN-C)概率输出图。 HNN首先生成具有与输入图像相同分辨率的类标签图,例如FCN。然后,将LNC外观和轮廓提示的HNN预测公式化为条件随机场(CRF)的单项和成对项,随后使用三种不同的SO方法之一进行求解:密集CRF,图割和边界神经场(BNF) )。 BNF产生最高的定量结果。分段和地面真实LN量之间的平均Dice系数为82.1%±9.6%,而仅HNN-A的平均Dice系数为73.0%±17.6%。 LNC相对体积(cm〜3)差异为13.7%±13.1%,这对于基于体积测量的LN成像生物标志物的开发是有希望的结果。

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