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基于贝叶斯视觉变换器,利用天然及对比剂增强后的心脏T1映射图像进行基于自动不确定性的质量控制T1映射和ECV分析。

Automatic uncertainty-based quality controlled T1 mapping and ECV analysis from native and post-contrast cardiac T1 mapping images using Bayesian vision transformer.

作者信息

Arega Tewodros Weldebirhan, Bricq Stéphanie, Legrand François, Jacquier Alexis, Lalande Alain, Meriaudeau Fabrice

机构信息

ImViA Laboratory, Université Bourgogne Franche-Comté, Dijon, France.

ImViA Laboratory, Université Bourgogne Franche-Comté, Dijon, France.

出版信息

Med Image Anal. 2023 May;86:102773. doi: 10.1016/j.media.2023.102773. Epub 2023 Feb 15.

Abstract

Deep learning-based methods for cardiac MR segmentation have achieved state-of-the-art results. However, these methods can generate incorrect segmentation results which can lead to wrong clinical decisions in the downstream tasks. Automatic and accurate analysis of downstream tasks, such as myocardial tissue characterization, is highly dependent on the quality of the segmentation results. Therefore, it is of paramount importance to use quality control methods to detect the failed segmentations before further analysis. In this work, we propose a fully automatic uncertainty-based quality control framework for T1 mapping and extracellular volume (ECV) analysis. The framework consists of three parts. The first one focuses on segmentation of cardiac structures from a native and post-contrast T1 mapping dataset (n=295) using a Bayesian Swin transformer-based U-Net. In the second part, we propose a novel uncertainty-based quality control (QC) to detect inaccurate segmentation results. The QC method utilizes image-level uncertainty features as input to a random forest-based classifier/regressor to determine the quality of the segmentation outputs. The experimental results from four different types of segmentation results show that the proposed QC method achieves a mean area under the ROC curve (AUC) of 0.927 on binary classification and a mean absolute error (MAE) of 0.021 on Dice score regression, significantly outperforming other state-of-the-art uncertainty based QC methods. The performance gap is notably higher in predicting the segmentation quality from poor-performing models which shows the robustness of our method in detecting failed segmentations. After the inaccurate segmentation results are detected and rejected by the QC method, in the third part, T1 mapping and ECV values are computed automatically to characterize the myocardial tissues of healthy and cardiac pathological cases. The native myocardial T1 and ECV values computed from automatic and manual segmentations show an excellent agreement yielding Pearson coefficients of 0.990 and 0.975 (on the combined validation and test sets), respectively. From the results, we observe that the automatically computed myocardial T1 and ECV values have the ability to characterize myocardial tissues of healthy and cardiac diseases like myocardial infarction, amyloidosis, Tako-Tsubo syndrome, dilated cardiomyopathy, and hypertrophic cardiomyopathy.

摘要

基于深度学习的心脏磁共振成像(MRI)分割方法已取得了最优的结果。然而,这些方法可能会产生错误的分割结果,从而在下游任务中导致错误的临床决策。对下游任务进行自动且准确的分析,如心肌组织特征分析,高度依赖于分割结果的质量。因此,在进行进一步分析之前,使用质量控制方法来检测失败的分割结果至关重要。在这项工作中,我们提出了一种用于T1映射和细胞外容积(ECV)分析的基于不确定性的全自动质量控制框架。该框架由三部分组成。第一部分专注于使用基于贝叶斯Swin变换器的U-Net从天然和对比后T1映射数据集(n = 295)中分割心脏结构。在第二部分中,我们提出了一种新颖的基于不确定性的质量控制(QC)方法来检测不准确的分割结果。该QC方法利用图像级不确定性特征作为基于随机森林的分类器/回归器的输入,以确定分割输出的质量。来自四种不同类型分割结果的实验结果表明,所提出的QC方法在二元分类上的ROC曲线下平均面积(AUC)为0.927,在Dice分数回归上的平均绝对误差(MAE)为0.021,显著优于其他基于不确定性的最先进QC方法。在预测性能较差模型的分割质量时,性能差距尤为明显,这表明我们的方法在检测失败分割方面具有鲁棒性。在QC方法检测并排除不准确的分割结果后,在第三部分中,自动计算T1映射和ECV值以表征健康和心脏病理病例的心肌组织。从自动分割和手动分割计算得到的天然心肌T1和ECV值显示出极佳的一致性,在组合验证集和测试集上的皮尔逊系数分别为0.990和0.975。从结果中我们观察到,自动计算的心肌T1和ECV值能够表征健康和患有心肌梗死、淀粉样变性、应激性心肌病、扩张型心肌病和肥厚型心肌病等心脏疾病的心肌组织。

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