Department of Medical Imaging, Western University, London ON, Canada; School of Computer Science and Technology, Anhui University, Hefei, China.
Department of Medical Imaging, Beijing Anzhen Hospital, Capital Medical University, Beijing, China.
Med Image Anal. 2018 Dec;50:82-94. doi: 10.1016/j.media.2018.09.001. Epub 2018 Sep 6.
Changes in mechanical properties of myocardium caused by a infarction can lead to kinematic abnormalities. This phenomenon has inspired us to develop this work for delineation of myocardial infarction area directly from non-contrast agents cardiac MR imaging sequences. The main contribution of this work is to develop a new joint motion feature learning architecture to efficiently establish direct correspondences between motion features and tissue properties. This architecture consists of three seamless connected function layers: the heart localization layers can automatically crop the region of interest (ROI) sequences involving the left ventricle from the cardiac MR imaging sequences; the motion feature extraction layers, using long short-term memory-recurrent neural networks, a) builds patch-based motion features through local intensity changes between fixed-size patch sequences (cropped from image sequences), and b) uses optical flow techniques to build image-based features through global intensity changes between adjacent images to describe the motion of each pixel; the fully connected discriminative layers can combine two types of motion features together in each pixel and then build the correspondences between motion features and tissue identities (that is, infarct or not) in each pixel. We validated the performance of our framework in 165 cine cardiac MR imaging datasets by comparing to the ground truths manually segmented from delayed Gadolinium-enhanced MR cardiac images by two radiologists with more than 10 years of experience. Our experimental results show that our proposed method has a high and stable accuracy (pixel-level: 95.03%) and consistency (Kappa statistic: 0.91; Dice: 89.87%; RMSE: 0.72 mm; Hausdorff distance: 5.91 mm) compared to manual delineation results. Overall, the advantage of our framework is that it can determine the tissue identity in each pixel from its motion pattern captured by normal cine cardiac MR images, which makes it an attractive tool for the clinical diagnosis of infarction.
心肌梗死后心肌力学性能的变化可导致运动学异常。这一现象启发我们从无对比剂心脏磁共振成像序列中直接开发用于描绘心肌梗死区域的工作。这项工作的主要贡献是开发一种新的联合运动特征学习架构,以便在运动特征和组织特性之间建立直接对应关系。该架构由三个无缝连接的功能层组成:心脏定位层可以自动从心脏磁共振成像序列中裁剪出包含左心室的感兴趣区域(ROI)序列;运动特征提取层,使用长短期记忆循环神经网络,a)通过在固定大小的补丁序列(从图像序列中裁剪)之间的局部强度变化构建基于补丁的运动特征,b)使用光流技术通过相邻图像之间的全局强度变化构建基于图像的特征,以描述每个像素的运动;完全连接的判别层可以在每个像素中将两种类型的运动特征组合在一起,然后在每个像素中建立运动特征与组织身份(即是否梗死)之间的对应关系。我们通过将 165 个电影心脏磁共振成像数据集与两位具有 10 多年经验的放射科医生从延迟钆增强磁共振心脏图像手动分割的真实数据进行比较,验证了我们框架的性能。我们的实验结果表明,与手动分割结果相比,我们提出的方法具有很高且稳定的准确性(像素级:95.03%)和一致性(kappa 统计量:0.91;Dice 分数:89.87%;RMSE:0.72 毫米;Hausdorff 距离:5.91 毫米)。总的来说,我们框架的优势在于它可以根据正常电影心脏磁共振图像捕获的运动模式确定每个像素的组织身份,这使其成为梗塞临床诊断的一种有吸引力的工具。