Automatic 3D Augmented-Reality Robot-Assisted Partial Nephrectomy Using Machine Learning: Our Pioneer Experience

Author:

Piana Alberto1ORCID,Amparore Daniele1,Sica Michele2ORCID,Volpi Gabriele2,Checcucci Enrico2ORCID,Piramide Federico1,De Cillis Sabrina1,Busacca Giovanni1,Scarpelli Gianluca3,Sidoti Flavio3,Alba Stefano3,Piazzolla Pietro1ORCID,Fiori Cristian1,Porpiglia Francesco1ORCID,Di Dio Michele4ORCID

Affiliation:

1. Division of Urology, Department of Oncology, School of Medicine, University of Turin, San Luigi Hospital, 10043 Turin, Italy

2. Department of Surgery, Candiolo Cancer Institute FPO-IRCCS, 10060 Turin, Italy

3. Romolo Hospital, 88821 Rocca di Neto, Italy

4. Division of Urology, Department of Surgery, Annunziata Hospital, 87100 Cosenza, Italy

Abstract

The aim of “Precision Surgery” is to reduce the impact of surgeries on patients’ global health. In this context, over the last years, the use of three-dimensional virtual models (3DVMs) of organs has allowed for intraoperative guidance, showing hidden anatomical targets, thus limiting healthy-tissue dissections and subsequent damage during an operation. In order to provide an automatic 3DVM overlapping in the surgical field, we developed and tested a new software, called “ikidney”, based on convolutional neural networks (CNNs). From January 2022 to April 2023, patients affected by organ-confined renal masses amenable to RAPN were enrolled. A bioengineer, a software developer, and a surgeon collaborated to create hyper-accurate 3D models for automatic 3D AR-guided RAPN, using CNNs. For each patient, demographic and clinical data were collected. A total of 13 patients were included in the present study. The average anchoring time was 11 (6–13) s. Unintended 3D-model automatic co-registration temporary failures happened in a static setting in one patient, while this happened in one patient in a dynamic setting. There was one failure; in this single case, an ultrasound drop-in probe was used to detect the neoplasm, and the surgery was performed under ultrasound guidance instead of AR guidance. No major intraoperative nor postoperative complications (i.e., Clavien Dindo > 2) were recorded. The employment of AI has unveiled several new scenarios in clinical practice, thanks to its ability to perform specific tasks autonomously. We employed CNNs for an automatic 3DVM overlapping during RAPN, thus improving the accuracy of the superimposition process.

Publisher

MDPI AG

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