School of Biomedical Engineering, Fengtai District, Capital Medical University, 10 Xitoutiao, YouanmenwaiBeijing, 100069, China.
Beijing Key Laboratory of Fundamental Research On Biomechanics in Clinical Application, Fengtai District, Capital Medical University, 10 Xitoutiao, YouanmenwaiBeijing, 100069, China.
J Imaging Inform Med. 2024 Jun;37(3):1-13. doi: 10.1007/s10278-023-00942-6. Epub 2024 Feb 16.
Accurate segmentation of the left ventricle myocardium is the key step of automatic assessment of cardiac function. However, the current methods mainly focus on the end-diastolic and the end-systolic frames in cine MR sequences and lack the attention to myocardial motion in the cardiac cycle. Additionally, due to the lack of fine segmentation tools, the simplified approach, excluding papillary muscles and trabeculae from myocardium, is applied in clinical practice. To solve these problems, we propose a motion-aware DNN model with edge focus loss and quality control in this paper. Specifically, the bidirectional ConvLSTM layer and a new motion attention layer are proposed to encode motion-aware feature maps, and an edge focus loss function is proposed to train the model to generate the fine segmentation results. Additionally, a quality control method is proposed to filter out the abnormal segmentations before subsequent analyses. Compared with state-of-the-art segmentation models on the public dataset and the in-house dataset, the proposed method has obtained high segmentation accuracy. On the 17-segment model, the proposed method has obtained the highest Pearson correlation coefficient at 14 of 17 segments, and the mean PCC of 85%. The experimental results highlight the segmentation accuracy of the proposed method as well as its availability to substitute for the manually annotated boundaries for the automatic assessment of cardiac function.
准确分割左心室心肌是自动评估心脏功能的关键步骤。然而,目前的方法主要集中在电影磁共振序列的舒张末期和收缩末期帧,缺乏对心动周期中心肌运动的关注。此外,由于缺乏精细的分割工具,临床实践中采用了简化方法,即将乳头肌和小梁从心肌中排除。为了解决这些问题,我们在本文中提出了一种具有边缘焦点损失和质量控制的运动感知 DNN 模型。具体来说,提出了双向 ConvLSTM 层和新的运动注意力层来编码运动感知特征图,并提出了边缘焦点损失函数来训练模型生成精细分割结果。此外,还提出了一种质量控制方法,以便在后续分析之前过滤异常分割。与公共数据集和内部数据集上的最新分割模型相比,所提出的方法在 17 段模型上获得了最高的分割精度。在 17 段模型中,所提出的方法在 17 个分段中的 14 个分段中获得了最高的皮尔逊相关系数,平均 PCC 为 85%。实验结果突出了所提出方法的分割精度,以及它可用于替代手动标注边界以自动评估心脏功能。