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基于深度学习模型的定量 MR T1 图谱左心室心肌自动分割流水线及径向 T1 和 ECV 值的计算。

Automatic pipeline for segmentation of LV myocardium on quantitative MR T1 maps using deep learning model and computation of radial T1 and ECV values.

机构信息

Centre for Biomedical Engineering, Indian Institute of Technology Delhi, New Delhi, India.

Department of Radiology, Fortis Memorial Research Institute, Gurugram, India.

出版信息

NMR Biomed. 2024 Dec;37(12):e5230. doi: 10.1002/nbm.5230. Epub 2024 Aug 4.

Abstract

Native T1 mapping is a non-invasive technique used for early detection of diffused myocardial abnormalities, and it provides baseline tissue characterization. Post-contrast T1 mapping enhances tissue differentiation, enables extracellular volume (ECV) calculation, and improves myocardial viability assessment. Accurate and precise segmenting of the left ventricular (LV) myocardium on T1 maps is crucial for assessing myocardial tissue characteristics and diagnosing cardiovascular diseases (CVD). This study presents a deep learning (DL)-based pipeline for automatically segmenting LV myocardium on T1 maps and automatic computation of radial T1 and ECV values. The study employs a multicentric dataset consisting of retrospective multiparametric MRI data of 332 subjects to develop and assess the performance of the proposed method. The study compared DL architectures U-Net and Deep Res U-Net for LV myocardium segmentation, which achieved a dice similarity coefficient of 0.84 ± 0.43 and 0.85 ± 0.03, respectively. The dice similarity coefficients computed for radial sub-segmentation of the LV myocardium on basal, mid-cavity, and apical slices were 0.77 ± 0.21, 0.81 ± 0.17, and 0.61 ± 0.14, respectively. The t-test performed between ground truth vs. predicted values of native T1, post-contrast T1, and ECV showed no statistically significant difference (p > 0.05) for any of the radial sub-segments. The proposed DL method leverages the use of quantitative T1 maps for automatic LV myocardium segmentation and accurately computing radial T1 and ECV values, highlighting its potential for assisting radiologists in objective cardiac assessment and, hence, in CVD diagnostics.

摘要

心肌 T1 mapping 是一种用于早期检测弥漫性心肌异常的非侵入性技术,它提供了基础组织特征。钆对比增强 T1 mapping 增强了组织分化,实现了细胞外容积(ECV)的计算,并改善了心肌活力评估。在 T1 图上准确、精确地分割左心室(LV)心肌对于评估心肌组织特征和诊断心血管疾病(CVD)至关重要。本研究提出了一种基于深度学习(DL)的 LV 心肌 T1 图自动分割和径向 T1 和 ECV 值自动计算的流水线。该研究使用包含 332 名受试者的回顾性多参数 MRI 数据的多中心数据集来开发和评估所提出方法的性能。该研究比较了 U-Net 和 Deep Res U-Net 两种用于 LV 心肌分割的 DL 架构,它们的 Dice 相似系数分别为 0.84±0.43 和 0.85±0.03。在基底、中部和心尖切片上对 LV 心肌进行径向子分割的 Dice 相似系数分别为 0.77±0.21、0.81±0.17 和 0.61±0.14。对真实值与预测值之间进行 t 检验,结果表明,对于任何径向子段,原生 T1、钆对比增强 T1 和 ECV 的预测值均无统计学差异(p>0.05)。所提出的 DL 方法利用定量 T1 图进行 LV 心肌自动分割,并准确计算径向 T1 和 ECV 值,突出了其在协助放射科医生进行客观心脏评估,从而在 CVD 诊断中的潜力。

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