An objective comparison of methods for augmented reality in laparoscopic liver resection by preoperative-to-intraoperative image fusion
Sharib Ali, Yamid Espinel, Yueming Jin, Peng Liu, Bianca G\"uttner,, Xukun Zhang, Lihua Zhang, Tom Dowrick, Matthew J. Clarkson, Shiting Xiao,, Yifan Wu, Yijun Yang, Lei Zhu, Dai Sun, Lan Li, Micha Pfeiffer, Shahid Farid,, Lena Maier-Hein, Emmanuel Buc, Adrien Bartoli

TL;DR
This paper compares various methods for automating image fusion in augmented reality-assisted laparoscopic liver surgery, highlighting current limitations and proposing future research directions based on a challenge held at MICCAI 2022.
Contribution
It introduces the P2ILF challenge for automatic landmark detection and registration in laparoscopic liver resection, evaluating deep learning and differentiable rendering methods.
Findings
Deep learning methods effectively detect landmarks.
Differentiable rendering-based registration shows promise.
Identified key limitations and future research directions.
Abstract
Augmented reality for laparoscopic liver resection is a visualisation mode that allows a surgeon to localise tumours and vessels embedded within the liver by projecting them on top of a laparoscopic image. Preoperative 3D models extracted from CT or MRI data are registered to the intraoperative laparoscopic images during this process. In terms of 3D-2D fusion, most of the algorithms make use of anatomical landmarks to guide registration. These landmarks include the liver's inferior ridge, the falciform ligament, and the occluding contours. They are usually marked by hand in both the laparoscopic image and the 3D model, which is time-consuming and may contain errors if done by a non-experienced user. Therefore, there is a need to automate this process so that augmented reality can be used effectively in the operating room. We present the Preoperative-to-Intraoperative Laparoscopic Fusion…
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Taxonomy
TopicsSurgical Simulation and Training · Augmented Reality Applications
