论文标题
离网:3D血管建模的连续隐式神经表示
Going Off-Grid: Continuous Implicit Neural Representations for 3D Vascular Modeling
论文作者
论文摘要
个性化的3D血管模型对于心血管疾病患者的诊断,预后和治疗计划很有价值。传统上,这样的模型是用明确表示(例如网格和体素面罩)构建的,或隐式表示,例如径向基函数或原子(管状)形状。在这里,我们建议在其签名距离函数(SDF)的零级集合中表示表面,以不同的隐式神经表示(INR)表示。这使我们能够用隐性,连续,轻巧且易于与深度学习算法集成的表示复杂的血管结构对复杂的血管结构进行建模。我们在这里通过三个实际示例证明了这种方法的潜力。首先,我们从CT图像中获得了腹主动脉瘤(AAA)的精确和水密表面,并显示出从表面上低至200点的稳健拟合。其次,我们同时将嵌套的容器壁贴在一个没有相交的单个INR中。第三,我们展示了如何将3D单个动脉的3D模型平滑地混合到单个水密表面。我们的结果表明,INR是一种灵活的表示,具有对复杂血管结构的微小互动注释和操纵的潜力。
Personalised 3D vascular models are valuable for diagnosis, prognosis and treatment planning in patients with cardiovascular disease. Traditionally, such models have been constructed with explicit representations such as meshes and voxel masks, or implicit representations such as radial basis functions or atomic (tubular) shapes. Here, we propose to represent surfaces by the zero level set of their signed distance function (SDF) in a differentiable implicit neural representation (INR). This allows us to model complex vascular structures with a representation that is implicit, continuous, light-weight, and easy to integrate with deep learning algorithms. We here demonstrate the potential of this approach with three practical examples. First, we obtain an accurate and watertight surface for an abdominal aortic aneurysm (AAA) from CT images and show robust fitting from as little as 200 points on the surface. Second, we simultaneously fit nested vessel walls in a single INR without intersections. Third, we show how 3D models of individual arteries can be smoothly blended into a single watertight surface. Our results show that INRs are a flexible representation with potential for minimally interactive annotation and manipulation of complex vascular structures.