Deformable registration consists of finding the best dense correspondence between two different images. Many algorithms have been published, but the clinical application was made difficult by the high calculation time needed to solve the optimisation problem. Deep learning overtook this limitation by taking advantage of GPU calculation and the learning process. However, many deep learning methods do not take into account desirable properties respected by classical algorithms. In this paper, we present MICS, a novel deep learning algorithm for medical imaging registration. As registration is an ill-posed problem, we focused our algorithm on the respect of different properties: inverse consistency, symmetry and orientation conservation. We also combined our algorithm with a multi-step strategy to refine and improve the deformation grid. While many approaches applied registration to brain MRI, we explored a more challenging body localisation: abdominal CT. Finally, we evaluated our method on a dataset used during the Learn2Reg challenge, allowing a fair comparison with published methods.
翻译:变形注册包括找到两种不同图像之间最密集的对应关系。 许多算法已经公布, 但是临床应用由于解决优化问题所需的计算时间太长而变得很困难。 深度学习利用 GPU 计算和学习过程超越了这一限制。 但是, 许多深层次的学习方法没有考虑到古典算法所尊重的可取属性。 在本文中, 我们介绍了MICS, 这是一种医学成像注册的新颖的深层次学习算法。 由于注册是一个错误的问题, 我们的算法侧重于不同的属性: 逆一致性、 对称性和定向保护。 我们还将我们的算法与改进和改良变形网格的多步战略结合起来。 虽然许多方法对大脑MRI进行了注册, 我们探索了一种更具挑战性的机体定位: abdminal CT。 最后, 我们评估了我们在“ 学习2Reg ” 挑战期间所使用的数据集的方法, 允许与公布的方法进行公平的比较。