Anatomy-aware and acquisition-agnostic joint registration with SynthMorph.

Malte Hoffmann, Andrew Hoopes, Douglas N Greve, Bruce Fischl, Adrian V Dalca
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Abstract

Affine image registration is a cornerstone of medical-image analysis. While classical algorithms can achieve excellent accuracy, they solve a time-consuming optimization for every image pair. Deep-learning (DL) methods learn a function that maps an image pair to an output transform. Evaluating the function is fast, but capturing large transforms can be challenging, and networks tend to struggle if a test-image characteristic shifts from the training domain, such as the resolution. Most affine methods are agnostic to the anatomy the user wishes to align, meaning the registration will be inaccurate if algorithms consider all structures in the image. We address these shortcomings with SynthMorph, a fast, symmetric, diffeomorphic, and easy-to-use DL tool for joint affine-deformable registration of any brain image without preprocessing. First, we leverage a strategy that trains networks with widely varying images synthesized from label maps, yielding robust performance across acquisition specifics unseen at training. Second, we optimize the spatial overlap of select anatomical labels. This enables networks to distinguish anatomy of interest from irrelevant structures, removing the need for preprocessing that excludes content which would impinge on anatomy-specific registration. Third, we combine the affine model with a deformable hypernetwork that lets users choose the optimal deformation-field regularity for their specific data, at registration time, in a fraction of the time required by classical methods. This framework is applicable to learning anatomy-aware, acquisition-agnostic registration of any anatomy with any architecture, as long as label maps are available for training. We analyze how competing architectures learn affine transforms and compare state-of-the-art registration tools across an extremely diverse set of neuroimaging data, aiming to truly capture the behavior of methods in the real world. SynthMorph demonstrates high accuracy and is available at https://w3id.org/synthmorph, as a single complete end-to-end solution for registration of brain magnetic resonance imaging (MRI) data.

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利用 SynthMorph 进行解剖感知和采集无关的关节配准。
仿射图像配准是医学图像分析的基石。虽然经典算法可以达到极高的精确度,但它们需要对每对图像进行耗时的优化。深度学习(DL)方法可以学习将图像对映射到输出变换的函数。评估函数的速度很快,但捕捉大型变换具有挑战性,而且如果测试图像的特征(如分辨率)偏离了训练域,网络往往会陷入困境。大多数仿射方法与用户希望配准的解剖结构无关,这意味着如果算法考虑到图像中的所有结构,配准就会不准确。我们利用 SynthMorph 解决了这些缺陷,它是一种快速、对称、差形、易用的 DL 工具,无需预处理即可对任何大脑图像进行联合仿射变形配准。首先,我们利用一种策略,用标签图合成的千差万别的图像来训练网络,从而在训练时未曾见过的采集特异性上获得稳健的性能。其次,我们优化了所选解剖标签的空间重叠。这样,网络就能将感兴趣的解剖结构与不相关的结构区分开来,从而无需进行预处理,排除会影响特定解剖结构配准的内容。第三,我们将仿射模型与可变形超网络相结合,让用户在配准时根据具体数据选择最佳的变形场规则性,所需的时间仅为传统方法的一小部分。只要标签图可用于训练,该框架就可用于学习任何结构的解剖感知、采集无关的配准。我们分析了相互竞争的架构如何学习仿射变换,并在一组极其多样的神经成像数据中比较了最先进的配准工具,旨在真实捕捉各种方法在真实世界中的行为。SynthMorph具有很高的准确性,可在https://w3id.org/synthmorph,是脑磁共振成像(MRI)数据配准的一个完整的端到端解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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