Abstract

PurposeThe registration of a 3D atlas image to 2D radiographs enables 3D pre-operative planning without the need to acquire costly and high-dose CT-scans. Recently, many deep-learning-based 2D/3D registration methods have been proposed which tackle the problem as a reconstruction by regressing the 3D image immediately from the radiographs, rather than registering an atlas image. Consequently, they are less constrained against unfeasible reconstructions and have no possibility to warp auxiliary data. Finally, they are, by construction, limited to orthogonal projections.MethodsWe propose a novel end-to-end trainable 2D/3D registration network that regresses a dense deformation field that warps an atlas image such that the forward projection of the warped atlas matches the input 2D radiographs. We effectively take the projection matrix into account in the regression problem by integrating a projective and inverse projective spatial transform layer into the network.ResultsComprehensive experiments conducted on simulated DRRs from patient CT images demonstrate the efficacy of the network. Our network yields an average Dice score of 0.94 and an average symmetric surface distance of 0.84 mm on our test dataset. It has experimentally been determined that projection geometries with 80^{circ } to 100^{circ } projection angle difference result in the highest accuracy.ConclusionOur network is able to accurately reconstruct patient-specific CT-images from a pair of near-orthogonal calibrated radiographs by regressing a deformation field that warps an atlas image or any other auxiliary data. Our method is not constrained to orthogonal projections, increasing its applicability in medical practices. It remains a future task to extend the network for uncalibrated radiographs.

Highlights

  • Radiography or X-ray imaging is the most common imaging procedure for many orthopaedic interventions thanks to its ability to visualise internal structures with a relatively low radiation dose and low acquisition cost

  • Previous research has suggested the reconstruction of a patient-specific 3D model from two or more 2D radiographs by registering a 3D computed tomography (CT) atlas image to 2D radiographs, referred to as 2D/3D registration [4]

  • This section describes the results of the registration to AP and lateral digitally reconstructed radiographs (DRRs), by our proposed network and by two other networks for comparison

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Summary

Introduction

Radiography or X-ray imaging is the most common imaging procedure for many orthopaedic interventions thanks to its ability to visualise internal structures with a relatively low radiation dose and low acquisition cost. 1 imec-Visionlab, University of Antwerp, 2610 Antwerp, Belgium nosis, it is a valuable imaging technique for intraoperative guidance and post-operative evaluation. It plays a crucial role in pre-operative surgical planning and the selection of the right implants. To avoid the difficulties associated with 2D projections, three-dimensional (3D) computed tomography (CT) images are preferred for surgical planning because they are less ambiguous [3]. They allow to study the cortical and cancellous bone, in addition to the outer bone surface [4]. Previous research has suggested the reconstruction of a patient-specific 3D model from two or more 2D radiographs by registering a 3D CT atlas image to 2D radiographs, referred to as 2D/3D registration [4]

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