基于深度学习的 4D 流式心脏 MRI 自动左心室分割和血流量化。

IF 4.2 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS Journal of Cardiovascular Magnetic Resonance Pub Date : 2024-06-01 Epub Date: 2024-01-10 DOI:10.1016/j.jocmr.2023.100003
Xiaowu Sun, Li-Hsin Cheng, Sven Plein, Pankaj Garg, Rob J van der Geest
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引用次数: 0

摘要

背景:四维血流磁共振成像可通过一次采集评估心脏功能和心内血流动态。然而,由于心腔和周围组织之间的对比度较低,定量分析依赖于从登记的 cine MRI 采集中得出的分割结果。这需要额外的采集,而且容易出现扫描间空间和时间对齐不完美的情况。因此,在这项工作中,我们开发并评估了基于深度学习的方法,直接从四维血流 MRI 对左心室(LV)进行分割:我们比较了五种基于深度学习的方法,它们具有不同的网络结构、数据预处理和特征融合方法。在数据预处理方面,我们将四维血流磁共振成像数据重新格式化为一叠短轴视图切片。提出了两种特征融合方法,以整合来自幅值和速度图像的特征。这些网络在一个包含 101 名受试者、67,567 张二维图像和 3030 个三维体积的内部数据集上进行了训练和评估。性能评估采用了各种指标,包括 Dice、平均表面距离(ASD)、舒张末期容积(EDV)、收缩末期容积(ESV)、左心室射血分数(LVEF)、左心室血流动能(KE)和左心室血流成分。采用蒙特卡洛放弃法评估置信度并描述分割结果的不确定性区域:结果:在五个模型中,结合二维 U-Net 和后期融合方法的模型在短轴重新格式化的四维血流体积上取得了最佳结果,Dice 为 84.52%,ASD 为 3.14mm。在 EDV、ESV、LVEF 和 KE 方面,手动和自动分割的最佳平均绝对误差和相对误差分别为 19.93 毫升(10.39%)、17.38 毫升(22.22%)、7.37%(13.93%)和 0.07 毫焦(5.61%)。与人工分割得出的结果相比,自动分割得出的血流成分结果显示出较高的相关性和较小的平均误差:基于深度学习的方法可以实现准确的自动左心室分割,并在随后从四维血流 MRI 中量化左心室的容积和血流动力学参数,而无需额外的 cine MRI 采集。
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Deep learning based automated left ventricle segmentation and flow quantification in 4D flow cardiac MRI.

Background: 4D flow MRI enables assessment of cardiac function and intra-cardiac blood flow dynamics from a single acquisition. However, due to the poor contrast between the chambers and surrounding tissue, quantitative analysis relies on the segmentation derived from a registered cine MRI acquisition. This requires an additional acquisition and is prone to imperfect spatial and temporal inter-scan alignment. Therefore, in this work we developed and evaluated deep learning-based methods to segment the left ventricle (LV) from 4D flow MRI directly.

Methods: We compared five deep learning-based approaches with different network structures, data pre-processing and feature fusion methods. For the data pre-processing, the 4D flow MRI data was reformatted into a stack of short-axis view slices. Two feature fusion approaches were proposed to integrate the features from magnitude and velocity images. The networks were trained and evaluated on an in-house dataset of 101 subjects with 67,567 2D images and 3030 3D volumes. The performance was evaluated using various metrics including Dice, average surface distance (ASD), end-diastolic volume (EDV), end-systolic volume (ESV), LV ejection fraction (LVEF), LV blood flow kinetic energy (KE) and LV flow components. The Monte Carlo dropout method was used to assess the confidence and to describe the uncertainty area in the segmentation results.

Results: Among the five models, the model combining 2D U-Net with late fusion method operating on short-axis reformatted 4D flow volumes achieved the best results with Dice of 84.52% and ASD of 3.14 mm. The best averaged absolute and relative error between manual and automated segmentation for EDV, ESV, LVEF and KE was 19.93 ml (10.39%), 17.38 ml (22.22%), 7.37% (13.93%) and 0.07 mJ (5.61%), respectively. Flow component results derived from automated segmentation showed high correlation and small average error compared to results derived from manual segmentation.

Conclusions: Deep learning-based methods can achieve accurate automated LV segmentation and subsequent quantification of volumetric and hemodynamic LV parameters from 4D flow MRI without requiring an additional cine MRI acquisition.

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来源期刊
CiteScore
10.90
自引率
12.50%
发文量
61
审稿时长
6-12 weeks
期刊介绍: Journal of Cardiovascular Magnetic Resonance (JCMR) publishes high-quality articles on all aspects of basic, translational and clinical research on the design, development, manufacture, and evaluation of cardiovascular magnetic resonance (CMR) methods applied to the cardiovascular system. Topical areas include, but are not limited to: New applications of magnetic resonance to improve the diagnostic strategies, risk stratification, characterization and management of diseases affecting the cardiovascular system. New methods to enhance or accelerate image acquisition and data analysis. Results of multicenter, or larger single-center studies that provide insight into the utility of CMR. Basic biological perceptions derived by CMR methods.
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