First‐in‐human real‐time AI‐assisted instrument deocclusion during augmented reality robotic surgery

Author:

Hofman Jasper1ORCID,De Backer Pieter1234,Manghi Ilaria5,Simoens Jente1,De Groote Ruben16,Van Den Bossche Hannes7,D'Hondt Mathieu8,Oosterlinck Tim9,Lippens Julie2,Van Praet Charles4,Ferraguti Federica5,Debbaut Charlotte3,Li Zhijin10,Kutter Oliver10,Mottrie Alexandre16,Decaestecker Karel211

Affiliation:

1. ORSI Academy Melle Belgium

2. Faculty of Medicine and Health Sciences, Department of Human Structure and Repair Ghent University Ghent Belgium

3. IBiTech‐Biommeda, Faculty of Engineering and Architecture, and CRIG Ghent University Ghent Belgium

4. Department of Urology Ghent University Hospital Ghent Belgium

5. Department of Sciences and Methods for Engineering University of Modena and Reggio Emilia Modena Italy

6. Department of Urology OLV Hospital Aalst Belgium

7. Department of Urology AZ West Hospital Veurne Belgium

8. Department of Digestive and Hepatobiliary/Pancreatic Surgery AZ Groeninge Hospital Kortrijk Belgium

9. Faculty of Medicine KU Leuven Leuven Belgium

10. NVIDIA Santa Clara California USA

11. Department of Urology AZ Maria Middelares Hospital Ghent Belgium

Abstract

AbstractThe integration of Augmented Reality (AR) into daily surgical practice is withheld by the correct registration of pre‐operative data. This includes intelligent 3D model superposition whilst simultaneously handling real and virtual occlusions caused by the AR overlay. Occlusions can negatively impact surgical safety and as such deteriorate rather than improve surgical care. Robotic surgery is particularly suited to tackle these integration challenges in a stepwise approach as the robotic console allows for different inputs to be displayed in parallel to the surgeon. Nevertheless, real‐time de‐occlusion requires extensive computational resources which further complicates clinical integration. This work tackles the problem of instrument occlusion and presents, to the authors’ best knowledge, the first‐in‐human on edge deployment of a real‐time binary segmentation pipeline during three robot‐assisted surgeries: partial nephrectomy, migrated endovascular stent removal, and liver metastasectomy. To this end, a state‐of‐the‐art real‐time segmentation and 3D model pipeline was implemented and presented to the surgeon during live surgery. The pipeline allows real‐time binary segmentation of 37 non‐organic surgical items, which are never occluded during AR. The application features real‐time manual 3D model manipulation for correct soft tissue alignment. The proposed pipeline can contribute towards surgical safety, ergonomics, and acceptance of AR in minimally invasive surgery.

Funder

Universiteit Gent

Agentschap Innoveren en Ondernemen

Publisher

Institution of Engineering and Technology (IET)

Subject

Health Information Management,Health Informatics

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