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计算断层扫描图像中心外膜脂肪组织的分割和体积定量。

Segmentation and volume quantification of epicardial adipose tissue in computed tomography images.

机构信息

School of Science, Northeastern University, Shenyang, China.

School of Data and Computer Science, Guangdong Peizheng College, Guangzhou, China.

出版信息

Med Phys. 2022 Oct;49(10):6477-6490. doi: 10.1002/mp.15965. Epub 2022 Sep 12.

DOI:10.1002/mp.15965
PMID:36047382
Abstract

BACKGROUND

Many cardiovascular diseases are closely related to the composition of epicardial adipose tissue (EAT). Accurate segmentation of EAT can provide a reliable reference for doctors to diagnose the disease. The distribution and composition of EAT often have significant individual differences, and the traditional segmentation methods are not effective. In recent years, deep learning method has been gradually introduced into EAT segmentation task.

PURPOSE

The existing EAT segmentation methods based on deep learning have a large amount of computation and the segmentation accuracy needs to be improved. Therefore, the purpose of this paper is to develop a lightweight EAT segmentation network, which can obtain higher segmentation accuracy with less computation and further alleviate the problem of false-positive segmentation.

METHODS

First, the obtained computed tomography was preprocessed. That is, the threshold range of EAT was determined to be -190, -30 HU according to prior knowledge, and the non-adipose pixels were excluded by threshold segmentation to reduce the difficulty of training. Second, the image obtained after thresholding was input into the lightweight RDU-Net network to perform the training, validating, and testing process. RDU-Net uses a residual multi-scale dilated convolution block in order to extract a wider range of information without changing the current resolution. At the same time, the form of residual connection is adopted to avoid the problem of gradient expansion or gradient explosion caused by too deep network, which also makes the learning easier. In order to optimize the training process, this paper proposes PNDiceLoss, which takes both positive and negative pixels as learning targets, fully considers the class imbalance problem, and appropriately highlights the status of positive pixels.

RESULTS

In this paper, 50 CCTA images were randomly selected from the hospital, and the commonly used Dice similarity coefficient (DSC), Jaccard similarity, accuracy (ACC), specificity (SP), precision (PC), and Pearson correlation coefficient are used as evaluation metrics. Bland-Altman analysis results show that the extracted EAT volume is consistent with the actual volume. Compared with the existing methods, the segmentation results show that the proposed method achieves better performance on these metrics, achieving the DSC of 0.9262. The number of false-positive pixels has been reduced by more than half. Pearson correlation coefficient reached 0.992, and linear regression coefficient reached 0.977 when measuring the volume of EAT obtained. In order to verify the effectiveness of the proposed method, experiments are carried out in the cardiac fat database of VisualLab. On this database, the proposed method also achieved good results, and the DSC value reached 0.927 in the case of only 878 slices.

CONCLUSIONS

A new method to segment and quantify EAT is proposed. Comprehensive experiments show that compared with some classical segmentation algorithms, the proposed method has the advantages of shorter time-consuming, less memory required for operations, and higher segmentation accuracy. The code is available at https://github.com/lvanlee/EAT_Seg/tree/main/EAT_seg.

摘要

背景

许多心血管疾病与心外膜脂肪组织(EAT)的组成密切相关。EAT 的准确分割可为医生诊断疾病提供可靠参考。EAT 的分布和组成通常具有显著的个体差异,传统的分割方法效果不佳。近年来,深度学习方法已逐渐被引入 EAT 分割任务中。

目的

现有的基于深度学习的 EAT 分割方法计算量大,分割精度有待提高。因此,本文旨在开发一种轻量级的 EAT 分割网络,该网络可以用更少的计算量获得更高的分割精度,进一步缓解假阳性分割的问题。

方法

首先,对获得的计算机断层扫描进行预处理。即根据先验知识确定 EAT 的阈值范围为-190、-30 HU,通过阈值分割排除非脂肪像素,降低训练难度。其次,将阈值分割后的图像输入到轻量级 RDU-Net 网络中进行训练、验证和测试过程。RDU-Net 使用残差多尺度扩张卷积块,以便在不改变当前分辨率的情况下提取更广泛的信息。同时,采用残差连接的形式,避免因网络过深而导致的梯度扩展或梯度爆炸问题,也使得学习过程更容易。为了优化训练过程,本文提出了 PNDiceLoss,它将正像素和负像素都作为学习目标,充分考虑了类不平衡问题,并适当突出正像素的状态。

结果

本文从医院随机抽取了 50 张 CCTA 图像,采用常用的 Dice 相似系数(DSC)、Jaccard 相似系数、准确率(ACC)、特异性(SP)、精度(PC)和 Pearson 相关系数作为评价指标。Bland-Altman 分析结果表明,提取的 EAT 体积与实际体积一致。与现有的方法相比,分割结果表明,该方法在这些指标上表现出更好的性能,达到了 0.9262 的 DSC。假阳性像素的数量减少了一半以上。Pearson 相关系数达到 0.992,测量得到的 EAT 体积的线性回归系数达到 0.977。为了验证所提方法的有效性,在 VisualLab 的心脏脂肪数据库中进行了实验。在该数据库中,所提方法也取得了良好的效果,在仅 878 张切片的情况下,DSC 值达到 0.927。

结论

提出了一种新的 EAT 分割和量化方法。综合实验表明,与一些经典的分割算法相比,该方法具有耗时短、操作所需内存少、分割精度高的优点。代码可在 https://github.com/lvanlee/EAT_Seg/tree/main/EAT_seg 上获得。

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