Machine‐learning approach for prediction of pT3a upstaging and outcomes of localized renal cell carcinoma (UroCCR‐15)

Author:

Boulenger de Hauteclocque Astrid1ORCID,Ferrer Loïc2,Ambrosetti Damien3ORCID,Ricard Solene1,Bigot Pierre4,Bensalah Karim5,Henon François6,Doumerc Nicolas7,Méjean Arnaud8,Verkarre Virginie8,Dariane Charles8,Larré Stéphane9,Champy Cécile10,de La Taille Alexandre10,Bruyère Franck11ORCID,Rouprêt Morgan12,Paparel Philippe13,Droupy Stéphane14ORCID,Fontenil Alexis14,Patard Jean‐Jacques15,Durand Xavier16,Waeckel Thibaut17,Lang Herve18,Lebâcle Cédric19ORCID,Guy Laurent20,Pignot Geraldine21,Durand Matthieu22ORCID,Long Jean‐Alexandre23,Charles Thomas24,Xylinas Evanguelos25,Boissier Romain26ORCID,Yacoub Mokrane27,Colin Thierry2,Bernhard Jean‐Christophe1

Affiliation:

1. Department of Urology Bordeaux University Hospital Bordeaux France

2. SOPHiA GENETICS, Radiomics R&D Department Pessac France

3. Department of Pathology Nice University Hospital Nice France

4. Department of Urology Angers University Hospital Angers France

5. Department of Urology Rennes University Hospital Rennes France

6. Department of Urology Lille University Hospital Lille France

7. Department of Urology Toulouse University Hospital Toulouse France

8. Department of Urology Georges Pompidou European University Hospital Paris France

9. Department of Urology Reims University Hospital Reims France

10. Department of Urology Henri Mondor University Hospital Créteil France

11. Department of Urology Tours University Hospital Tours France

12. Department of Urology La Pitié‐Salpêtrière University Hospital Paris France

13. Department of Urology Lyon Sud University Hospital Lyon France

14. Department of Urology Nîmes University Hospital Nîmes France

15. Department of Urology Mont de Marsan Hospital Mont de Marsan France

16. Department of Urology Saint‐Joseph Hospital Foundation Paris France

17. Department of Urology Caen University Hospital Caen France

18. Department of Urology Strasbourg University Hospital Strasbourg France

19. Department of Urology Bicêtre University Hospital Le Kremlin‐Bicêtre France

20. Department of Urology Clermont‐Ferrand University Hospital Clermont‐Ferrand France

21. Department of Urology Paoli‐Calmettes Institute Marseille France

22. Department of Urology Nice University Hospital Nice France

23. Department of Urology Grenoble University Hospital Grenoble France

24. Department of Urology Poitiers University Hospital Poitiers France

25. Department of Urology Bichat University Hospital Paris France

26. Department of Urology Marseille University Hospital Marseille France

27. Department of Pathology Bordeaux University Hospital Bordeaux France

Abstract

ObjectivesTo assess the impact of pathological upstaging from clinically localized to locally advanced pT3a on survival in patients with renal cell carcinoma (RCC), as well as the oncological safety of various surgical approaches in this setting, and to develop a machine‐learning‐based, contemporary, clinically relevant model for individual preoperative prediction of pT3a upstaging.Materials and MethodsClinical data from patients treated with either partial nephrectomy (PN) or radical nephrectomy (RN) for cT1/cT2a RCC from 2000 to 2019, included in the French multi‐institutional kidney cancer database UroCCR, were retrospectively analysed. Seven machine‐learning algorithms were applied to the cohort after a training/testing split to develop a predictive model for upstaging to pT3a. Survival curves for disease‐free survival (DFS) and overall survival (OS) rates were compared between PN and RN after G‐computation for pT3a tumours.ResultsA total of 4395 patients were included, among whom 667 patients (15%, 337 PN and 330 RN) had a pT3a‐upstaged RCC. The UroCCR‐15 predictive model presented an area under the receiver‐operating characteristic curve of 0.77. Survival analysis after adjustment for confounders showed no difference in DFS or OS for PN vs RN in pT3a tumours (DFS: hazard ratio [HR] 1.08, P = 0.7; OS: HR 1.03, P > 0.9).ConclusionsOur study shows that machine‐learning technology can play a useful role in the evaluation and prognosis of upstaged RCC. In the context of incidental upstaging, PN does not compromise oncological outcomes, even for large tumour sizes.

Publisher

Wiley

Subject

Urology

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