Accurate geometric quantification of the human heart is a key step in the diagnosis of numerous cardiac diseases, and in the management of cardiac patients. Ultrasound imaging is the primary modality for cardiac imaging, however acquisition requires high operator skill, and its interpretation and analysis is difficult due to artifacts. Reconstructing cardiac anatomy in 3D can enable discovery of new biomarkers and make imaging less dependent on operator expertise, however most ultrasound systems only have 2D imaging capabilities. We propose both a simple alteration to the Pix2Vox++ networks for a sizeable reduction in memory usage and computational complexity, and a pipeline to perform reconstruction of 3D anatomy from 2D standard cardiac views, effectively enabling 3D anatomical reconstruction from limited 2D data. We evaluate our pipeline using synthetically generated data achieving accurate 3D whole-heart reconstructions (peak intersection over union score > 0.88) from just two standard anatomical 2D views of the heart. We also show preliminary results using real echo images.
翻译:人体心脏的精确几何量化是诊断许多心脏疾病和管理心脏病人的关键步骤。超声成像是心脏成像的主要模式,然而,获得这种成像需要高操作技能,其解释和分析也因人工制品而难以进行。 3D中重新构造心脏解剖可以发现新的生物标志,使成像不那么依赖操作员的专门知识,然而大多数超声波系统仅具有2D成像能力。我们提议简单改变Pix2Vox++网络,以便大量减少记忆用量和计算复杂性,以及从2D标准心脏视图重建3D解剖管道,有效地使3D解剖重建能够利用有限的2D数据。我们利用合成生成的数据评估我们的管道,从心脏的两种标准解剖2D视图中实现准确的3D全心重建(联盟分数的峰值交叉点 > 0.88)。我们还用真实回声图像显示初步结果。