后期钆增强图像分辨率对心血管磁共振成像中基于神经网络的疤痕自动分割的影响。

IF 4.2 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS Journal of Cardiovascular Magnetic Resonance Pub Date : 2024-06-01 Epub Date: 2024-03-01 DOI:10.1016/j.jocmr.2024.101031
Tobias Hoh, Isabel Margolis, Jonathan Weine, Thomas Joyce, Robert Manka, Miriam Weisskopf, Nikola Cesarovic, Maximilian Fuetterer, Sebastian Kozerke
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引用次数: 0

摘要

背景:利用神经网络从晚期钆增强(LGE)图像中自动分割心肌瘢痕,有望替代耗时且依赖观察者的半自动方法。然而,数据采集、重建和后处理过程中的变化可能会影响网络性能。本研究的目的是系统评估由于训练数据和测试数据之间的点分布函数不匹配而导致的网络性能下降:方法:在猪心肌梗死模型中采集了 36 个高分辨率(0.7x0.7x2.0mm3)LGE k 空间数据集。在视场和矩阵大小保持不变的情况下,使用 k 空间低通滤波法对平面内点扩散函数和平面内分辨率 Δx 进行了回溯降级。对左心室(LV)和健康的远端心肌进行手动分割,通过阈值(≥ SD5 以上为远端)量化瘢痕的位置和面积(占心肌的百分比)。在训练分辨率Δxtrain = 0.7、1.2 和 1.7 毫米的条件下训练了三个标准 U 网络,以预测左心室心肌和瘢痕的心内和心外边界。将三个网络在不同测试分辨率(Δxtest = 0.7 至 1.7 毫米)下的瘢痕预测结果与参考的 0.7 毫米 SD5 阈值进行了比较。最后,测试了在不同分辨率(Δxtrain = 0.7 至 1.7 毫米)组合下训练的第四个网络:结果:当测试数据的分辨率与训练时使用的分辨率相同或接近时,相对疤痕面积的预测精度最高。在相同分辨率下训练和测试的网络的疤痕分数误差和精确度(IQR)中位数分别为 0.0 个百分点(p.p.)(1.24 - 1.45)和 -0.5 - 0.0 个百分点(2.00 - 3.25)。部署在多个分辨率上训练的网络可降低分辨率依赖性,所有调查测试分辨率的疤痕误差中位数和 IQR 均为 0.0 p.p. (1.24 - 1.69):结论:正如在 LGE 猪心肌梗死数据上所展示的那样,使用当前的 U-Net 架构时,训练数据和测试数据之间成像点分布函数的不匹配会导致疤痕分割效果下降。在多分辨率数据上训练网络可以减轻分辨率依赖性。
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Impact of late gadolinium enhancement image acquisition resolution on neural network based automatic scar segmentation.

Background: Automatic myocardial scar segmentation from late gadolinium enhancement (LGE) images using neural networks promises an alternative to time-consuming and observer-dependent semi-automatic approaches. However, alterations in data acquisition, reconstruction as well as post-processing may compromise network performance. The objective of the present work was to systematically assess network performance degradation due to a mismatch of point-spread function between training and testing data.

Methods: Thirty-six high-resolution (0.7×0.7×2.0 mm3) LGE k-space datasets were acquired post-mortem in porcine models of myocardial infarction. The in-plane point-spread function and hence in-plane resolution Δx was retrospectively degraded using k-space lowpass filtering, while field-of-view and matrix size were kept constant. Manual segmentation of the left ventricle (LV) and healthy remote myocardium was performed to quantify location and area (% of myocardium) of scar by thresholding (≥ SD5 above remote). Three standard U-Nets were trained on training resolutions Δxtrain = 0.7, 1.2 and 1.7 mm to predict endo- and epicardial borders of LV myocardium and scar. The scar prediction of the three networks for varying test resolutions (Δxtest = 0.7 to 1.7 mm) was compared against the reference SD5 thresholding at 0.7 mm. Finally, a fourth network trained on a combination of resolutions (Δxtrain = 0.7 to 1.7 mm) was tested.

Results: The prediction of relative scar areas showed the highest precision when the resolution of the test data was identical to or close to the resolution used during training. The median fractional scar errors and precisions (IQR) from networks trained and tested on the same resolution were 0.0 percentage points (p.p.) (1.24 - 1.45), and - 0.5 - 0.0 p.p. (2.00 - 3.25) for networks trained and tested on the most differing resolutions, respectively. Deploying the network trained on multiple resolutions resulted in reduced resolution dependency with median scar errors and IQRs of 0.0 p.p. (1.24 - 1.69) for all investigated test resolutions.

Conclusion: A mismatch of the imaging point-spread function between training and test data can lead to degradation of scar segmentation when using current U-Net architectures as demonstrated on LGE porcine myocardial infarction data. Training networks on multi-resolution data can alleviate the resolution dependency.

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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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