Centre for Computational Imaging and Simulation Technologies in Biomedicine (CISTIB), School of Computing, University of Leeds, Leeds, UK; Biomedical Imaging Department, Leeds Institute for Cardiovascular and Metabolic Medicine (LICAMM), School of Medicine, University of Leeds, Leeds, UK.
Centre for Computational Imaging and Simulation Technologies in Biomedicine (CISTIB), School of Computing, University of Leeds, Leeds, UK.
Med Image Anal. 2022 Aug;80:102498. doi: 10.1016/j.media.2022.102498. Epub 2022 May 27.
Accurate 3D modelling of cardiac chambers is essential for clinical assessment of cardiac volume and function, including structural, and motion analysis. Furthermore, to study the correlation between cardiac morphology and other patient information within a large population, it is necessary to automatically generate cardiac mesh models of each subject within the population. In this study, we introduce MCSI-Net (Multi-Cue Shape Inference Network), where we embed a statistical shape model inside a convolutional neural network and leverage both phenotypic and demographic information from the cohort to infer subject-specific reconstructions of all four cardiac chambers in 3D. In this way, we leverage the ability of the network to learn the appearance of cardiac chambers in cine cardiac magnetic resonance (CMR) images, and generate plausible 3D cardiac shapes, by constraining the prediction using a shape prior, in the form of the statistical modes of shape variation learned a priori from a subset of the population. This, in turn, enables the network to generalise to samples across the entire population. To the best of our knowledge, this is the first work that uses such an approach for patient-specific cardiac shape generation. MCSI-Net is capable of producing accurate 3D shapes using just a fraction (about 23% to 46%) of the available image data, which is of significant importance to the community as it supports the acceleration of CMR scan acquisitions. Cardiac MR images from the UK Biobank were used to train and validate the proposed method. We also present the results from analysing 40,000 subjects of the UK Biobank at 50 time-frames, totalling two million image volumes. Our model can generate more globally consistent heart shape than that of manual annotations in the presence of inter-slice motion and shows strong agreement with the reference ranges for cardiac structure and function across cardiac ventricles and atria.
准确的心脏腔室三维建模对于心脏容积和功能的临床评估至关重要,包括结构和运动分析。此外,为了研究心脏形态与大人群中其他患者信息之间的相关性,有必要自动生成人群中每个个体的心脏网格模型。在本研究中,我们引入了 MCSI-Net(多线索形状推理网络),我们将统计形状模型嵌入到卷积神经网络中,并利用队列中的表型和人口统计学信息来推断所有四个心脏腔室的个体特异性 3D 重建。通过使用形状先验来约束预测,这种方式利用了网络学习心脏磁共振(CMR)图像中心脏腔室外观的能力,并生成合理的 3D 心脏形状,形状先验的形式是从人群子集中学到的形状变化的统计模式。这反过来又使网络能够对整个人群的样本进行泛化。据我们所知,这是首次使用这种方法进行患者特定心脏形状生成的工作。MCSI-Net 仅使用可用图像数据的一小部分(约 23%至 46%)就能生成准确的 3D 形状,这对社区来说非常重要,因为它支持 CMR 扫描采集的加速。我们使用来自英国生物库的心脏 MR 图像来训练和验证所提出的方法。我们还展示了对英国生物库的 4 万名受试者在 50 个时间帧进行分析的结果,总共分析了两百万个图像容积。在存在切片间运动的情况下,我们的模型可以生成比手动注释更具全局一致性的心脏形状,并在心脏心室和心房的心脏结构和功能参考范围内表现出很强的一致性。