Publication:
Artificial intelligence for renal cancer: From imaging to histology and beyond

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2022-07-01

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Kowalewski, Karl-Friedrich
Egen, Luisa
Fischetti, Chanel E.
Puliatti, Stefano
Rivas Juan, Gomez
Taratkin, Mark
Belenchon Ines, Rivero
Abate, Marie Angela Sidoti
Muehlbauer, Julia
Wessels, Frederik

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Elsevier singapore pte ltd
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Abstract

Artificial intelligence (AI) has made considerable progress within the last decade and is the subject of contemporary literature. This trend is driven by improved computational abilities and increasing amounts of complex data that allow for new approaches in analysis and interpretation. Renal cell carcinoma (RCC) has a rising incidence since most tumors are now detected at an earlier stage due to improved imaging. This creates considerable challenges as approximately 10%-17% of kidney tumors are designated as benign in histopathological evaluation; however, certain co-morbid populations (the obese and elderly) have an increased peri-interventional risk. AI offers an alternative solution by helping to optimize precision and guidance for diagnostic and therapeutic decisions. The narrative review introduced basic principles and provide a comprehensive overview of current AI techniques for RCC. Currently, AI applications can be found in any aspect of RCC management including diagnostics, perioperative care, pathology, and follow-up. Most commonly applied models include neural networks, random forest, support vector machines, and regression. However, for implementation in daily practice, health care providers need to develop a basic understanding and establish interdisciplinary collaborations in order to standardize datasets, define meaningful endpoints, and unify interpretation. (C) 2022 Editorial Office of Asian Journal of Urology. Production and hosting by Elsevier B.V. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).

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Kidney cancer, Imaging, Technology, Artificial intelligence, Machine learning, Cell carcinoma, Active surveillance, Pulsatile motion, Performance, Validation, Masses, Tumor, Radiomics, Predict, Ct

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