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使用卷积神经网络和时间信号特征对 DCE-MR 图像进行健康肾脏分割。

Healthy Kidney Segmentation in the Dce-Mr Images Using a Convolutional Neural Network and Temporal Signal Characteristics.

机构信息

Institute of Electronics, Lodz University of Technology, 90-924 Łódź, Poland.

Department of Health and Functioning, Western Norway University of Applied Sciences, 5063 Bergen, Norway.

出版信息

Sensors (Basel). 2021 Oct 9;21(20):6714. doi: 10.3390/s21206714.

Abstract

Quantification of renal perfusion based on dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) requires determination of signal intensity time courses in the region of renal parenchyma. Thus, selection of voxels representing the kidney must be accomplished with special care and constitutes one of the major technical limitations which hampers wider usage of this technique as a standard clinical routine. Manual segmentation of renal compartments-even if performed by experts-is a common source of decreased repeatability and reproducibility. In this paper, we present a processing framework for the automatic kidney segmentation in DCE-MR images. The framework consists of two stages. Firstly, kidney masks are generated using a convolutional neural network. Then, mask voxels are classified to one of three regions-cortex, medulla, and pelvis-based on DCE-MRI signal intensity time courses. The proposed approach was evaluated on a cohort of 10 healthy volunteers who underwent the DCE-MRI examination. MRI scanning was repeated on two time events within a 10-day interval. For semantic segmentation task we employed a classic U-Net architecture, whereas experiments on voxel classification were performed using three alternative algorithms-support vector machines, logistic regression and extreme gradient boosting trees, among which SVM produced the most accurate results. Both segmentation and classification steps were accomplished by a series of models, each trained separately for a given subject using the data from other participants only. The mean achieved accuracy of the whole kidney segmentation was 94% in terms of IoU coefficient. Cortex, medulla and pelvis were segmented with IoU ranging from 90 to 93% depending on the tissue and body side. The results were also validated by comparing image-derived perfusion parameters with ground truth measurements of glomerular filtration rate (GFR). The repeatability of GFR calculation, as assessed by the coefficient of variation was determined at the level of 14.5 and 17.5% for the left and right kidney, respectively and it improved relative to manual segmentation. Reproduciblity, in turn, was evaluated by measuring agreement between image-derived and iohexol-based GFR values. The estimated absolute mean differences were equal to 9.4 and 12.9 mL/min/1.73 m for scanning sessions 1 and 2 and the proposed automated segmentation method. The result for session 2 was comparable with manual segmentation, whereas for session 1 reproducibility in the automatic pipeline was weaker.

摘要

基于动态对比增强磁共振成像(DCE-MRI)的肾灌注定量需要确定肾实质区域的信号强度时间曲线。因此,必须特别小心地选择代表肾脏的体素,这是限制该技术作为标准临床常规更广泛应用的主要技术限制之一。即使由专家执行,肾脏区域的手动分割也是降低可重复性和再现性的常见原因。在本文中,我们提出了一种用于 DCE-MR 图像自动肾脏分割的处理框架。该框架由两个阶段组成。首先,使用卷积神经网络生成肾脏掩模。然后,根据 DCE-MRI 信号强度时间曲线,将掩模体素分类为皮质、髓质和骨盆三个区域之一。该方法在 10 名接受 DCE-MRI 检查的健康志愿者的队列中进行了评估。MRI 扫描在 10 天的间隔内重复两次。对于语义分割任务,我们采用了经典的 U-Net 架构,而对于体素分类实验,我们使用了三种替代算法-支持向量机、逻辑回归和极端梯度提升树,其中 SVM 产生了最准确的结果。分割和分类步骤都是通过一系列模型完成的,每个模型都是针对特定的个体单独训练的,仅使用其他参与者的数据。整个肾脏分割的平均准确率以 IoU 系数衡量为 94%。根据组织和身体侧,皮质、髓质和骨盆的分割 IoU 范围从 90%到 93%不等。通过将图像衍生的灌注参数与肾小球滤过率(GFR)的地面真实测量值进行比较,对结果进行了验证。通过测量左肾和右肾的变异系数来评估 GFR 计算的重复性,分别为 14.5%和 17.5%,并且与手动分割相比有所提高。另一方面,通过测量图像衍生和 iohexol 基 GFR 值之间的一致性来评估可重复性。估计的绝对平均差异分别为 1 和 2 扫描会话的 9.4 和 12.9 mL/min/1.73 m,以及自动分割方法。对于会话 2,结果与手动分割相当,而对于会话 1,自动流水线的可重复性较弱。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4030/8538657/8cd1da3aa13d/sensors-21-06714-g001.jpg

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