Small Renal Masses: Developing a Robust Radiomic Signature

Author:

Maddalo Michele1ORCID,Bertolotti Lorenzo2ORCID,Mazzilli Aldo1,Flore Andrea Giovanni Maria3,Perotta Rocco2,Pagnini Francesco4,Ziglioli Francesco5ORCID,Maestroni Umberto5,Martini Chiara24ORCID,Caruso Damiano6ORCID,Ghetti Caterina1,De Filippo Massimo24ORCID

Affiliation:

1. Medical Physics Unit, University Hospital of Parma, 43126 Parma, Italy

2. Department of Medicine and Surgery, Section of Radiology, University of Parma, Via Gramsci 14, 43126 Parma, Italy

3. Porretta Terme Hospital, AUSL Bologna, 40046 Porretta Terme, Italy

4. Diagnostic Department, Parma University Hospital, Via Gramsci 14, 43126 Parma, Italy

5. Department of Urology, Parma University Hospital, Via Gramsci 14, 43126 Parma, Italy

6. Radiology Unit, Department of Medical Surgical Sciences and Translational Medicine, Sant’Andrea University Hospital, Sapienza-University of Rome, 00100 Rome, Italy

Abstract

(1) Background and (2) Methods: In this retrospective, observational, monocentric study, we selected a cohort of eighty-five patients (age range 38–87 years old, 51 men), enrolled between January 2014 and December 2020, with a newly diagnosed renal mass smaller than 4 cm (SRM) that later underwent nephrectomy surgery (partial or total) or tumorectomy with an associated histopatological study of the lesion. The radiomic features (RFs) of eighty-five SRMs were extracted from abdominal CTs bought in the portal venous phase using three different CT scanners. Lesions were manually segmented by an abdominal radiologist. Image analysis was performed with the Pyradiomic library of 3D-Slicer. A total of 108 RFs were included for each volume. A machine learning model based on radiomic features was developed to distinguish between benign and malignant small renal masses. The pipeline included redundant RFs elimination, RFs standardization, dataset balancing, exclusion of non-reproducible RFs, feature selection (FS), model training, model tuning and validation of unseen data. (3) Results: The study population was composed of fifty-one RCCs and thirty-four benign lesions (twenty-five oncocytomas, seven lipid-poor angiomyolipomas and two renal leiomyomas). The final radiomic signature included 10 RFs. The average performance of the model on unseen data was 0.79 ± 0.12 for ROC-AUC, 0.73 ± 0.12 for accuracy, 0.78 ± 0.19 for sensitivity and 0.63 ± 0.15 for specificity. (4) Conclusions: Using a robust pipeline, we found that the developed RFs signature is capable of distinguishing RCCs from benign renal tumors.

Publisher

MDPI AG

Subject

Cancer Research,Oncology

Reference40 articles.

1. (2023, May 29). «LINEE GUIDA TUMORI DEL RENE». AIOM, 31 December 2021. Available online: https://www.aiom.it/linee-guida-aiom-2021-tumori-del-rene/.

2. European Association of Urology Guidelines on Renal Cell Carcinoma: The 2022 Update;Ljungberg;Eur. Urol.,2022

3. Epidemiology of Renal Cell Carcinoma: 2022 Update;Bukavina;Eur. Urol.,2022

4. Rising Incidence of Small Renal Masses: A Need to Reassess Treatment Effect;Hollingsworth;Clin. Med. (Russ. J.),2006

5. Renal cell carcinoma: Histological classification and correlation with imaging findings;Muglia;Radiol. Bras.,2015

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