The Use of Radiomic Tools in Renal Mass Characterization

Author:

Gutiérrez Hidalgo Beatriz1,Gómez Rivas Juan1ORCID,de la Parra Irene1,Marugán María Jesús1,Serrano Álvaro1,Hermida Gutiérrez Juan Fco1,Barrera Jerónimo2,Moreno-Sierra Jesús1

Affiliation:

1. Department of Urology, Clínico San Carlos Hospital, Health Research Institute of Clínico San Carlos Hospital, Complutense University, 28040 Madrid, Spain

2. Radiodiagnosis Department, Clínico San Carlos Hospital, Complutense University, 28040 Madrid, Spain

Abstract

The incidence of renal mass detection has increased during recent decades, with an increased diagnosis of small renal masses, and a final benign diagnosis in some cases. To avoid unnecessary surgeries, there is an increasing interest in using radiomics tools to predict histological results, using radiological features. We performed a narrative review to evaluate the use of radiomics in renal mass characterization. Conventional images, such as computed tomography (CT) and magnetic resonance (MR), are the most common diagnostic tools in renal mass characterization. Distinguishing between benign and malignant tumors in small renal masses can be challenging using conventional methods. To improve subjective evaluation, the interest in using radiomics to obtain quantitative parameters from medical images has increased. Several studies have assessed this novel tool for renal mass characterization, comparing its ability to distinguish benign to malign tumors, the results in differentiating renal cell carcinoma subtypes, or the correlation with prognostic features, with other methods. In several studies, radiomic tools have shown a good accuracy in characterizing renal mass lesions. However, due to the heterogeneity in the radiomic model building, prospective and external validated studies are needed.

Publisher

MDPI AG

Subject

Clinical Biochemistry

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