Yang Guang, Chen Jun, Gao Zhifan, Zhang Heye, Ni Hao, Angelini Elsa, Mohiaddin Raad, Wong Tom, Keegan Jennifer, Firmin David
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:1123-1127. doi: 10.1109/EMBC.2018.8512550.
Accurate delineation of heart substructures is a prerequisite for abnormality detection, for making quantitative and functional measurements, and for computer-aided diagnosis and treatment planning. Late Gadolinium-Enhanced Cardiac MRI (LGE-CMRI) is an emerging imaging technology for myocardial infarction or scar detection based on the differences in the volume of residual gadolinium distribution between scar and healthy tissues. While LGE-CMRI is a well-established non-invasive tool for detecting myocardial scar tissues in the ventricles, its application to left atrium (LA) imaging is more challenging due to its very thin wall of the LA and poor quality images, which may be produced because of motion artefacts and low signal-to-noise ratio. As the LGE-CMRI scan is designed to highlight scar tissues by altering the gadolinium kinetics, the anatomy among different heart substructures has less distinguishable boundaries. An accurate, robust and reproducible method for LA segmentation is highly in demand because it can not only provide valuable information of the heart function but also be helpful for the further delineation of scar tissue and measuring the scar percentage. In this study, we proposed a novel deep learning framework working on LGE-CMRI images directly by combining sequential learning and dilated residual learning to delineate LA and pulmonary veins fully automatically. The achieved results showed accurate segmentation results compared to the state-of-the-art methods. The proposed framework leads to an automatic generation of a patient-specific model that can potentially enable an objective atrial scarring assessment for the atrial fibrillation patients.
准确描绘心脏亚结构是异常检测、进行定量和功能测量以及计算机辅助诊断与治疗规划的前提条件。延迟钆增强心脏磁共振成像(LGE-CMRI)是一种基于瘢痕组织与健康组织间残留钆分布体积差异的用于检测心肌梗死或瘢痕的新兴成像技术。虽然LGE-CMRI是检测心室心肌瘢痕组织的成熟非侵入性工具,但其应用于左心房(LA)成像更具挑战性,因为左心房壁非常薄且图像质量差,这可能是由运动伪影和低信噪比造成的。由于LGE-CMRI扫描旨在通过改变钆动力学来突出瘢痕组织,不同心脏亚结构之间的解剖边界较难区分。因此,非常需要一种准确、稳健且可重复的左心房分割方法,因为它不仅能提供心脏功能的有价值信息,还有助于进一步描绘瘢痕组织并测量瘢痕百分比。在本研究中,我们提出了一种新颖的深度学习框架,通过结合序列学习和扩张残差学习直接处理LGE-CMRI图像,以全自动描绘左心房和肺静脉。与现有最先进方法相比,所取得的结果显示出准确的分割结果。所提出的框架能够自动生成患者特异性模型,这有可能为房颤患者实现客观的心房瘢痕评估。