Radiomics and artificial intelligence (AI) may increase the differentiation of benign from malignant kidney lesions, differentiation of angiomyolipoma (AML) from renal cell carcinoma (RCC), differentiation of oncocytoma from RCC, differentiation of different subtypes of RCC, to predict Fuhrman grade, to predict gene mutation through molecular biomarkers and to predict treatment response in metastatic RCC undergoing immunotherapy. Neural networks analyze imaging data. Statistical, geometrical, textural features derived are giving quantitative data of contour, internal heterogeneity and gray zone features of lesions. A comprehensive literature review was performed, until July 2022. Studies investigating the diagnostic value of radiomics in differentiation of renal lesions, grade prediction, gene alterations, molecular biomarkers and ongoing clinical trials have been analyzed. The application of AI and radiomics could lead to improved sensitivity, specificity, accuracy in detecting and differentiating between renal lesions. Standardization of scanner protocols will improve preoperative differentiation between benign, low-risk cancers and clinically significant renal cancers and holds the premises to enhance the diagnostic ability of imaging tools to characterize renal lesions.

Artificial intelligence and radiomics in evaluation of kidney lesions: a comprehensive literature review / M. Ferro, F. Crocetto, B. Barone, F. Del Giudice, M. Maggi, G. Lucarelli, G.M. Busetto, R. Autorino, M. Marchioni, F. Cantiello, F. Crocerossa, S. Luzzago, M. Piccinelli, F.A. Mistretta, M. Tozzi, L. Schips, U.G. Falagario, A. Veccia, M.D. Vartolomei, G. Musi, O. de Cobelli, E. Montanari, O.S. Tătaru. - In: THERAPEUTIC ADVANCES IN UROLOGY. - ISSN 1756-2872. - 15:(2023), pp. 17562872231164803.1-17562872231164803.26. [10.1177/17562872231164803]

Artificial intelligence and radiomics in evaluation of kidney lesions: a comprehensive literature review

S. Luzzago;M. Piccinelli;F.A. Mistretta;M. Tozzi;G. Musi;O. de Cobelli;E. Montanari
Penultimo
;
2023

Abstract

Radiomics and artificial intelligence (AI) may increase the differentiation of benign from malignant kidney lesions, differentiation of angiomyolipoma (AML) from renal cell carcinoma (RCC), differentiation of oncocytoma from RCC, differentiation of different subtypes of RCC, to predict Fuhrman grade, to predict gene mutation through molecular biomarkers and to predict treatment response in metastatic RCC undergoing immunotherapy. Neural networks analyze imaging data. Statistical, geometrical, textural features derived are giving quantitative data of contour, internal heterogeneity and gray zone features of lesions. A comprehensive literature review was performed, until July 2022. Studies investigating the diagnostic value of radiomics in differentiation of renal lesions, grade prediction, gene alterations, molecular biomarkers and ongoing clinical trials have been analyzed. The application of AI and radiomics could lead to improved sensitivity, specificity, accuracy in detecting and differentiating between renal lesions. Standardization of scanner protocols will improve preoperative differentiation between benign, low-risk cancers and clinically significant renal cancers and holds the premises to enhance the diagnostic ability of imaging tools to characterize renal lesions.
English
artificial intelligence; imaging; machine learning; radiomics; renal cancer;
Settore MED/24 - Urologia
Review essay
Sì, ma tipo non specificato
Pubblicazione scientifica
2023
17-apr-2023
SAGE Publications
15
17562872231164803
1
26
26
Pubblicato
Periodico con rilevanza internazionale
pubmed
scopus
crossref
Aderisco
info:eu-repo/semantics/article
Artificial intelligence and radiomics in evaluation of kidney lesions: a comprehensive literature review / M. Ferro, F. Crocetto, B. Barone, F. Del Giudice, M. Maggi, G. Lucarelli, G.M. Busetto, R. Autorino, M. Marchioni, F. Cantiello, F. Crocerossa, S. Luzzago, M. Piccinelli, F.A. Mistretta, M. Tozzi, L. Schips, U.G. Falagario, A. Veccia, M.D. Vartolomei, G. Musi, O. de Cobelli, E. Montanari, O.S. Tătaru. - In: THERAPEUTIC ADVANCES IN UROLOGY. - ISSN 1756-2872. - 15:(2023), pp. 17562872231164803.1-17562872231164803.26. [10.1177/17562872231164803]
open
Prodotti della ricerca::01 - Articolo su periodico
23
262
Article (author)
Periodico con Impact Factor
M. Ferro, F. Crocetto, B. Barone, F. Del Giudice, M. Maggi, G. Lucarelli, G.M. Busetto, R. Autorino, M. Marchioni, F. Cantiello, F. Crocerossa, S. Luzzago, M. Piccinelli, F.A. Mistretta, M. Tozzi, L. Schips, U.G. Falagario, A. Veccia, M.D. Vartolomei, G. Musi, O. de Cobelli, E. Montanari, O.S. Tătaru
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/967449
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