论文标题
FED-SIM:用于医学成像的联合模拟
Fed-Sim: Federated Simulation for Medical Imaging
论文作者
论文摘要
标记数据是昂贵且耗时的,尤其是对于包含体积成像数据并需要专业知识的医学成像等领域。利用跨多个中心可用的较大标记数据(例如在联邦学习中)也看到了有限的成功,因为当前的深度学习方法并不能很好地概括从不同制造商的扫描仪中获得的图像。我们的目标是在一个共同的,基于学习的图像模拟框架中解决这些问题,我们将其称为联合模拟。我们介绍了一种由物理驱动的生成方法,该方法由两个可学习的神经模块组成:1)一个合成3D心形形状及其材料的模块,以及2)CT模拟器,将它们变成现实的3D CT量和注释。由于几何和材料的模型与成像传感器分离,因此可以有效地在多个医疗中心进行训练。我们表明,我们的数据综合框架改善了几个数据集的下游细分性能。项目页面:https://nv-tlabs.github.io/fed-sim/。
Labelling data is expensive and time consuming especially for domains such as medical imaging that contain volumetric imaging data and require expert knowledge. Exploiting a larger pool of labeled data available across multiple centers, such as in federated learning, has also seen limited success since current deep learning approaches do not generalize well to images acquired with scanners from different manufacturers. We aim to address these problems in a common, learning-based image simulation framework which we refer to as Federated Simulation. We introduce a physics-driven generative approach that consists of two learnable neural modules: 1) a module that synthesizes 3D cardiac shapes along with their materials, and 2) a CT simulator that renders these into realistic 3D CT Volumes, with annotations. Since the model of geometry and material is disentangled from the imaging sensor, it can effectively be trained across multiple medical centers. We show that our data synthesis framework improves the downstream segmentation performance on several datasets. Project Page: https://nv-tlabs.github.io/fed-sim/ .