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Masked Registration and Autoencoding of CT Images for Predictive Tibia Reconstruction

Hongyou Zhou
Cederic Aßmann
Alaa Bejaoui
Heiko Tzschätzsch
Mark Heyland
Julian Zierke
Niklas Tuttle
Sebastian Hölzl
Timo Auer
David A. Back
Marc Toussaint
Main:8 Pages
2 Figures
Bibliography:3 Pages
3 Tables
Abstract

Surgical planning for complex tibial fractures can be challenging for surgeons, as the 3D structure of the later desirable bone alignment may be diffi- cult to imagine. To assist in such planning, we address the challenge of predicting a patient-specific reconstruction target from a CT of the fractured tibia. Our ap- proach combines neural registration and autoencoder models. Specifically, we first train a modified spatial transformer network (STN) to register a raw CT to a standardized coordinate system of a jointly trained tibia prototype. Subsequently, various autoencoder (AE) architectures are trained to model healthy tibial varia- tions. Both the STN and AE models are further designed to be robust to masked input, allowing us to apply them to fractured CTs and decode to a prediction of the patient-specific healthy bone in standard coordinates. Our contributions include: i) a 3D-adapted STN for global spatial registration, ii) a comparative analysis of AEs for bone CT modeling, and iii) the extension of both to handle masked inputs for predictive generation of healthy bone structures. Project page:this https URL

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