Standardization of Body Composition Status in Patients with Advanced Urothelial Tumors: The Role of a CT-Based AI-Powered Software for the Assessment of Sarcopenia and Patient Outcome Correlation

Author:

Borrelli Antonella1,Pecoraro Martina1,Del Giudice Francesco2ORCID,Cristofani Leonardo1,Messina Emanuele1,Dehghanpour Ailin1,Landini Nicholas1ORCID,Roberto Michela1ORCID,Perotti Stefano1,Muscaritoli Maurizio3,Santini Daniele1,Catalano Carlo1,Panebianco Valeria1

Affiliation:

1. Department of Radiological Sciences, Oncology and Pathology, Sapienza University of Rome, 00161 Rome, Italy

2. Department of Maternal Infant and Urologic Sciences, Sapienza University of Rome, 00161 Rome, Italy

3. Department of Translational and Precision Medicine, Sapienza University of Rome, 00161 Rome, Italy

Abstract

Background: Sarcopenia is a well know prognostic factor in oncology, influencing patients’ quality of life and survival. We aimed to investigate the role of sarcopenia, assessed by a Computed Tomography (CT)-based artificial intelligence (AI)-powered-software, as a predictor of objective clinical benefit in advanced urothelial tumors and its correlations with oncological outcomes. Methods: We retrospectively searched patients with advanced urothelial tumors, treated with systemic platinum-based chemotherapy and an available total body CT, performed before and after therapy. An AI-powered software was applied to CT to obtain the Skeletal Muscle Index (SMI-L3), derived from the area of the psoas, long spine, and abdominal muscles, at the level of L3 on CT axial images. Logistic and Cox-regression modeling was implemented to explore the association of sarcopenic status and anthropometric features to the clinical benefit rate and survival endpoints. Results: 97 patients were included, 66 with bladder cancer and 31 with upper-tract urothelial carcinoma. Clinical benefit outcomes showed a linear positive association with all the observed body composition variables variations. The chances of not experiencing disease progression were positively associated with ∆_SMI-L3, ∆_psoas, and ∆_long spine muscle when they ranged from ~10–20% up to ~45–55%. Greater survival chances were matched by patients achieving a wider ∆_SMI-L3, ∆_abdominal and ∆_long spine muscle. Conclusions: A CT-based AI-powered software body composition and sarcopenia analysis provide prognostic assessments for objective clinical benefits and oncological outcomes.

Publisher

MDPI AG

Subject

Cancer Research,Oncology

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