Background: The combination of radiomic and transcriptomic approaches for patients diagnosed with small clear-cell renal cell carcinoma (ccRCC) might improve decision making. In this pilot and methodological study, we investigate whether imaging features obtained from computed tomography (CT) may correlate with gene expression patterns in ccRCC patients.Methods: Samples from 6 patients who underwent partial nephrectomy for unilateral non-metastatic ccRCC were included in this pilot cohort. Transcriptomic analysis was conducted through RNA-sequencing on tumor samples, while radiologic features were obtained from pre-operative 4-phase contrast-enhanced CT. To evaluate the heterogeneity of the transcriptome, after a 1,000 re-sampling via bootstrapping, a first Principal Component Analyses (PCA) were fitted with all transcripts and a second ones with transcripts deriving from a list of 369 genes known to be associated with ccRCC from The Cancer Genome Atlas (TCGA). Significant pathways in each Principal Components for the 50 genes with the highest loadings absolute values were assessed with pathways enrichment analysis. In addition, Pearson's correlation coefficients among radiomic features themselves and between radiomic features and transcripts expression values were computed.Results: The transcriptomes of the analysed samples showed a high grade of heterogeneity. However, we found four radiogenomic patterns, in which the correlation between radiomic features and transcripts were statistically significant.Conclusions: We showed that radiogenomic approach is feasible, however its clinical meaning should be further investigated.

Radiomic and gEnomic approaches for the enhanced DIagnosis of clear cell REnal Cancer (REDIRECt): a translational pilot methodological study / Cianflone, Francesco; Lazarevic, Dejan; Palmisano, Anna; Fallara, Giuseppe; Larcher, Alessandro; Freschi, Massimo; Dell'Antonio, Giacomo; Scotti, Giulia Maria; Morelli, Marco J; Ferrara, Anna Maria; Trevisani, Francesco; Cinque, Alessandra; Esposito, Antonio; Briganti, Alberto; Tacchetti, Carlo; Doglioni, Claudio; Del Maschio, Alessandro; de Cobelli, Francesco; Bertini, Roberto; Salonia, Andrea; Montorsi, Francesco; Tonon, Giovanni; Capitanio, Umberto. - In: TRANSLATIONAL ANDROLOGY AND UROLOGY. - ISSN 2223-4691. - 11:2(2022), pp. 149-158. [10.21037/tau-21-713]

Radiomic and gEnomic approaches for the enhanced DIagnosis of clear cell REnal Cancer (REDIRECt): a translational pilot methodological study

Palmisano, Anna;Fallara, Giuseppe;Larcher, Alessandro;Trevisani, Francesco;Esposito, Antonio;Briganti, Alberto;Tacchetti, Carlo;Doglioni, Claudio;de Cobelli, Francesco;Salonia, Andrea;Montorsi, Francesco;Tonon, Giovanni
Penultimo
;
2022-01-01

Abstract

Background: The combination of radiomic and transcriptomic approaches for patients diagnosed with small clear-cell renal cell carcinoma (ccRCC) might improve decision making. In this pilot and methodological study, we investigate whether imaging features obtained from computed tomography (CT) may correlate with gene expression patterns in ccRCC patients.Methods: Samples from 6 patients who underwent partial nephrectomy for unilateral non-metastatic ccRCC were included in this pilot cohort. Transcriptomic analysis was conducted through RNA-sequencing on tumor samples, while radiologic features were obtained from pre-operative 4-phase contrast-enhanced CT. To evaluate the heterogeneity of the transcriptome, after a 1,000 re-sampling via bootstrapping, a first Principal Component Analyses (PCA) were fitted with all transcripts and a second ones with transcripts deriving from a list of 369 genes known to be associated with ccRCC from The Cancer Genome Atlas (TCGA). Significant pathways in each Principal Components for the 50 genes with the highest loadings absolute values were assessed with pathways enrichment analysis. In addition, Pearson's correlation coefficients among radiomic features themselves and between radiomic features and transcripts expression values were computed.Results: The transcriptomes of the analysed samples showed a high grade of heterogeneity. However, we found four radiogenomic patterns, in which the correlation between radiomic features and transcripts were statistically significant.Conclusions: We showed that radiogenomic approach is feasible, however its clinical meaning should be further investigated.
2022
Kidney cancer
genomics
radiomics
renal cancer
transcriptomics
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.11768/143218
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