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Artificial Intelligence in Surgical Training for Kidney Cancer: A Systematic Review of the Literature

The prevalence of renal cell carcinoma (RCC) is increasing due to advanced imaging techniques. Surgical resection is the standard treatment, involving complex radical and partial nephrectomy procedures that demand extensive training and planning. Furthermore, artificial intelligence (AI) can potenti...

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Autores principales: Rodriguez Peñaranda, Natali, Eissa, Ahmed, Ferretti, Stefania, Bianchi, Giampaolo, Di Bari, Stefano, Farinha, Rui, Piazza, Pietro, Checcucci, Enrico, Belenchón, Inés Rivero, Veccia, Alessandro, Gomez Rivas, Juan, Taratkin, Mark, Kowalewski, Karl-Friedrich, Rodler, Severin, De Backer, Pieter, Cacciamani, Giovanni Enrico, De Groote, Ruben, Gallagher, Anthony G., Mottrie, Alexandre, Micali, Salvatore, Puliatti, Stefano
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10572445/
https://www.ncbi.nlm.nih.gov/pubmed/37835812
http://dx.doi.org/10.3390/diagnostics13193070
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author Rodriguez Peñaranda, Natali
Eissa, Ahmed
Ferretti, Stefania
Bianchi, Giampaolo
Di Bari, Stefano
Farinha, Rui
Piazza, Pietro
Checcucci, Enrico
Belenchón, Inés Rivero
Veccia, Alessandro
Gomez Rivas, Juan
Taratkin, Mark
Kowalewski, Karl-Friedrich
Rodler, Severin
De Backer, Pieter
Cacciamani, Giovanni Enrico
De Groote, Ruben
Gallagher, Anthony G.
Mottrie, Alexandre
Micali, Salvatore
Puliatti, Stefano
author_facet Rodriguez Peñaranda, Natali
Eissa, Ahmed
Ferretti, Stefania
Bianchi, Giampaolo
Di Bari, Stefano
Farinha, Rui
Piazza, Pietro
Checcucci, Enrico
Belenchón, Inés Rivero
Veccia, Alessandro
Gomez Rivas, Juan
Taratkin, Mark
Kowalewski, Karl-Friedrich
Rodler, Severin
De Backer, Pieter
Cacciamani, Giovanni Enrico
De Groote, Ruben
Gallagher, Anthony G.
Mottrie, Alexandre
Micali, Salvatore
Puliatti, Stefano
author_sort Rodriguez Peñaranda, Natali
collection PubMed
description The prevalence of renal cell carcinoma (RCC) is increasing due to advanced imaging techniques. Surgical resection is the standard treatment, involving complex radical and partial nephrectomy procedures that demand extensive training and planning. Furthermore, artificial intelligence (AI) can potentially aid the training process in the field of kidney cancer. This review explores how artificial intelligence (AI) can create a framework for kidney cancer surgery to address training difficulties. Following PRISMA 2020 criteria, an exhaustive search of PubMed and SCOPUS databases was conducted without any filters or restrictions. Inclusion criteria encompassed original English articles focusing on AI’s role in kidney cancer surgical training. On the other hand, all non-original articles and articles published in any language other than English were excluded. Two independent reviewers assessed the articles, with a third party settling any disagreement. Study specifics, AI tools, methodologies, endpoints, and outcomes were extracted by the same authors. The Oxford Center for Evidence-Based Medicine’s evidence levels were employed to assess the studies. Out of 468 identified records, 14 eligible studies were selected. Potential AI applications in kidney cancer surgical training include analyzing surgical workflow, annotating instruments, identifying tissues, and 3D reconstruction. AI is capable of appraising surgical skills, including the identification of procedural steps and instrument tracking. While AI and augmented reality (AR) enhance training, challenges persist in real-time tracking and registration. The utilization of AI-driven 3D reconstruction proves beneficial for intraoperative guidance and preoperative preparation. Artificial intelligence (AI) shows potential for advancing surgical training by providing unbiased evaluations, personalized feedback, and enhanced learning processes. Yet challenges such as consistent metric measurement, ethical concerns, and data privacy must be addressed. The integration of AI into kidney cancer surgical training offers solutions to training difficulties and a boost to surgical education. However, to fully harness its potential, additional studies are imperative.
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spelling pubmed-105724452023-10-14 Artificial Intelligence in Surgical Training for Kidney Cancer: A Systematic Review of the Literature Rodriguez Peñaranda, Natali Eissa, Ahmed Ferretti, Stefania Bianchi, Giampaolo Di Bari, Stefano Farinha, Rui Piazza, Pietro Checcucci, Enrico Belenchón, Inés Rivero Veccia, Alessandro Gomez Rivas, Juan Taratkin, Mark Kowalewski, Karl-Friedrich Rodler, Severin De Backer, Pieter Cacciamani, Giovanni Enrico De Groote, Ruben Gallagher, Anthony G. Mottrie, Alexandre Micali, Salvatore Puliatti, Stefano Diagnostics (Basel) Systematic Review The prevalence of renal cell carcinoma (RCC) is increasing due to advanced imaging techniques. Surgical resection is the standard treatment, involving complex radical and partial nephrectomy procedures that demand extensive training and planning. Furthermore, artificial intelligence (AI) can potentially aid the training process in the field of kidney cancer. This review explores how artificial intelligence (AI) can create a framework for kidney cancer surgery to address training difficulties. Following PRISMA 2020 criteria, an exhaustive search of PubMed and SCOPUS databases was conducted without any filters or restrictions. Inclusion criteria encompassed original English articles focusing on AI’s role in kidney cancer surgical training. On the other hand, all non-original articles and articles published in any language other than English were excluded. Two independent reviewers assessed the articles, with a third party settling any disagreement. Study specifics, AI tools, methodologies, endpoints, and outcomes were extracted by the same authors. The Oxford Center for Evidence-Based Medicine’s evidence levels were employed to assess the studies. Out of 468 identified records, 14 eligible studies were selected. Potential AI applications in kidney cancer surgical training include analyzing surgical workflow, annotating instruments, identifying tissues, and 3D reconstruction. AI is capable of appraising surgical skills, including the identification of procedural steps and instrument tracking. While AI and augmented reality (AR) enhance training, challenges persist in real-time tracking and registration. The utilization of AI-driven 3D reconstruction proves beneficial for intraoperative guidance and preoperative preparation. Artificial intelligence (AI) shows potential for advancing surgical training by providing unbiased evaluations, personalized feedback, and enhanced learning processes. Yet challenges such as consistent metric measurement, ethical concerns, and data privacy must be addressed. The integration of AI into kidney cancer surgical training offers solutions to training difficulties and a boost to surgical education. However, to fully harness its potential, additional studies are imperative. MDPI 2023-09-27 /pmc/articles/PMC10572445/ /pubmed/37835812 http://dx.doi.org/10.3390/diagnostics13193070 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Systematic Review
Rodriguez Peñaranda, Natali
Eissa, Ahmed
Ferretti, Stefania
Bianchi, Giampaolo
Di Bari, Stefano
Farinha, Rui
Piazza, Pietro
Checcucci, Enrico
Belenchón, Inés Rivero
Veccia, Alessandro
Gomez Rivas, Juan
Taratkin, Mark
Kowalewski, Karl-Friedrich
Rodler, Severin
De Backer, Pieter
Cacciamani, Giovanni Enrico
De Groote, Ruben
Gallagher, Anthony G.
Mottrie, Alexandre
Micali, Salvatore
Puliatti, Stefano
Artificial Intelligence in Surgical Training for Kidney Cancer: A Systematic Review of the Literature
title Artificial Intelligence in Surgical Training for Kidney Cancer: A Systematic Review of the Literature
title_full Artificial Intelligence in Surgical Training for Kidney Cancer: A Systematic Review of the Literature
title_fullStr Artificial Intelligence in Surgical Training for Kidney Cancer: A Systematic Review of the Literature
title_full_unstemmed Artificial Intelligence in Surgical Training for Kidney Cancer: A Systematic Review of the Literature
title_short Artificial Intelligence in Surgical Training for Kidney Cancer: A Systematic Review of the Literature
title_sort artificial intelligence in surgical training for kidney cancer: a systematic review of the literature
topic Systematic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10572445/
https://www.ncbi.nlm.nih.gov/pubmed/37835812
http://dx.doi.org/10.3390/diagnostics13193070
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