CNN-based lung CT registration with multiple anatomical constraints

•We present a deep-learning-based method for lung registration.•We introduce a novel constraining method to control volume change and therefore avoid foldings inside the deformation field.•We integrate keypoints correspondence into the loss function to increase the alignment of airways and vessels....

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Published inMedical image analysis Vol. 72; p. 102139
Main Authors Hering, Alessa, Häger, Stephanie, Moltz, Jan, Lessmann, Nikolas, Heldmann, Stefan, van Ginneken, Bram
Format Journal Article
LanguageEnglish
Published Netherlands Elsevier B.V 01.08.2021
Elsevier BV
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Online AccessGet full text
ISSN1361-8415
1361-8423
1361-8423
DOI10.1016/j.media.2021.102139

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Summary:•We present a deep-learning-based method for lung registration.•We introduce a novel constraining method to control volume change and therefore avoid foldings inside the deformation field.•We integrate keypoints correspondence into the loss function to increase the alignment of airways and vessels. [Display omitted] Deep-learning-based registration methods emerged as a fast alternative to conventional registration methods. However, these methods often still cannot achieve the same performance as conventional registration methods because they are either limited to small deformation or they fail to handle a superposition of large and small deformations without producing implausible deformation fields with foldings inside. In this paper, we identify important strategies of conventional registration methods for lung registration and successfully developed the deep-learning counterpart. We employ a Gaussian-pyramid-based multilevel framework that can solve the image registration optimization in a coarse-to-fine fashion. Furthermore, we prevent foldings of the deformation field and restrict the determinant of the Jacobian to physiologically meaningful values by combining a volume change penalty with a curvature regularizer in the loss function. Keypoint correspondences are integrated to focus on the alignment of smaller structures. We perform an extensive evaluation to assess the accuracy, the robustness, the plausibility of the estimated deformation fields, and the transferability of our registration approach. We show that it achieves state-of-the-art results on the COPDGene dataset compared to conventional registration method with much shorter execution time. In our experiments on the DIRLab exhale to inhale lung registration, we demonstrate substantial improvements (TRE below 1.2 mm) over other deep learning methods. Our algorithm is publicly available at https://grand-challenge.org/algorithms/deep-learning-based-ct-lung-registration/.
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ISSN:1361-8415
1361-8423
1361-8423
DOI:10.1016/j.media.2021.102139