BACKGROUND: Approximately 70% of bladder cancer is diagnosed as non-muscle invasive (NMIBC) and inflammation is known to impact the oncological outcomes. Adjuvant intravesical BCG in intermediate/high risk can lower recurrence and progression. The efficacy of intravesical BCG can be impacted by smoking effects on systemic inflammation. METHODS: Our retrospective, multicenter study with data from 1.313 NMIBC patients aimed to assess the impact of smoking and the systemic inflammatory status on BCG response in T1G3 bladder cancer, using a machine-learning CART based algorithm. RESULTS: In a median of 50-month follow-up (IQR 41-75), 344 patients experienced progression to muscle invasive or metastatic disease and 65 died due to bladder cancer. A CART algorithm has been employed to stratify patients in three prognostic clusters using smoking status, LMR (lymphocytes to monocytes ratio), NLR (neutrophil-to-lymphocyte ratio) and PLR (platelet-to-lymphocyte ratio) as variables. Cox regression models revealed a 1.5-fold (HR 1.66, 95%, CI 1.20-2.29, P=0.002) and three-fold (HR 2.99, 95% CI 2.08-4.30, P<0.001) risk of progression, in intermediate and high risk NMIBC respectively, compared to the low-risk group. The model’s concordance index was 0.66. CONCLUSIONS: Our study provides an insight into the influence of smoking on inflammatory markers and BCG response in NMIBC patients. Our machine-learning approach provides clinicians a valuable tool for risk stratification, treatment, and decision-making. Future research in larger prospective cohorts is required for validating these findings.

Assessing the influence of smoking on inflammatory markers in bacillus Calmette Guérin response among bladder cancer patients: a novel machine-learning approach / FERRO, Matteo; TATARU, Octavian S.; FALLARA, Giuseppe; FIORI, Cristian; MANFREDI, Matteo; CLAPS, Francesco; HURLE, Rodolfo; BUFFI, Nicolò M.; LUGHEZZANI, Giovanni; LAZZERI, Massimo; AVETA, Achille; PANDOLFO, Savio D.; BARONE, Biagio; CROCETTO, Felice; DITONNO, Pasquale; LUCARELLI, Giuseppe; LASORSA, Francesco; CARRIERI, Giuseppe; BUSETTO, Gian M.; FALAGARIO, Ugo G.; DEL GIUDICE, Francesco; MAGGI, Martina; CANTIELLO, Francesco; BORGHESI, Marco; TERRONE, Carlo; BOVE, Pierluigi; ANTONELLI, Alessandro; VECCIA, Alessandro; MARI, Andrea; LUZZAGO, Stefano; GHERASIM, Raul; TODEA-MOGA, Ciprian; MINERVINI, Andrea; MUSI, Gennaro; MISTRETTA, Francesco A.; BIANCHI, Roberto; TOZZI, Marco; SORIA, Francesco; GONTERO, Paolo; MARCHIONI, Michele; JANELLO, Letizia M.; TERRACCIANO, Daniela; RUSSO, Giorgio I.; SCHIPS, Luigi; PERDONÀ, Sisto; AUTORINO, Riccardo; CATELLANI, Michele; SIGHINOLFI, Chiara; MONTANARI, Emanuele; DI STASI, Savino M.; PORPIGLIA, Francesco; ROCCO, Bernardo; de COBELLI, Ottavio; CONTIERI, Roberto. - In: MINERVA UROLOGY AND NEPHROLOGY. - ISSN 2724-6051. - ELETTRONICO. - 77:(2025), pp. 338-346. [10.23736/s2724-6051.24.05876-2]

Assessing the influence of smoking on inflammatory markers in bacillus Calmette Guérin response among bladder cancer patients: a novel machine-learning approach

MARI, Andrea;MINERVINI, Andrea;
2025

Abstract

BACKGROUND: Approximately 70% of bladder cancer is diagnosed as non-muscle invasive (NMIBC) and inflammation is known to impact the oncological outcomes. Adjuvant intravesical BCG in intermediate/high risk can lower recurrence and progression. The efficacy of intravesical BCG can be impacted by smoking effects on systemic inflammation. METHODS: Our retrospective, multicenter study with data from 1.313 NMIBC patients aimed to assess the impact of smoking and the systemic inflammatory status on BCG response in T1G3 bladder cancer, using a machine-learning CART based algorithm. RESULTS: In a median of 50-month follow-up (IQR 41-75), 344 patients experienced progression to muscle invasive or metastatic disease and 65 died due to bladder cancer. A CART algorithm has been employed to stratify patients in three prognostic clusters using smoking status, LMR (lymphocytes to monocytes ratio), NLR (neutrophil-to-lymphocyte ratio) and PLR (platelet-to-lymphocyte ratio) as variables. Cox regression models revealed a 1.5-fold (HR 1.66, 95%, CI 1.20-2.29, P=0.002) and three-fold (HR 2.99, 95% CI 2.08-4.30, P<0.001) risk of progression, in intermediate and high risk NMIBC respectively, compared to the low-risk group. The model’s concordance index was 0.66. CONCLUSIONS: Our study provides an insight into the influence of smoking on inflammatory markers and BCG response in NMIBC patients. Our machine-learning approach provides clinicians a valuable tool for risk stratification, treatment, and decision-making. Future research in larger prospective cohorts is required for validating these findings.
2025
77
338
346
Goal 3: Good health and well-being
FERRO, Matteo; TATARU, Octavian S.; FALLARA, Giuseppe; FIORI, Cristian; MANFREDI, Matteo; CLAPS, Francesco; HURLE, Rodolfo; BUFFI, Nicolò M.; LUGHEZZA...espandi
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1438764
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