医学
列线图
膀胱癌
膀胱切除术
内科学
肿瘤科
淋巴血管侵犯
比例危险模型
泌尿科
癌症
转移
作者
Albert Font,Montserrat Domènech,Oscar Buisán,Héctor López,Andrea González,Olatz Etxániz,Marta Matas,Xavier Elias,Maica Gómez,Mariona Figols,Judith Horneros,Juan Carlos Pardo,L. Notario,Vicenç Ruiz de Porras,Ignacio Pérez Pérez,Joan Areal,Anna Esteve
标识
DOI:10.1007/s00345-022-04147-4
摘要
To develop a risk score based on a prognostic model and a nomogram integrating baseline clinicopathological variables to predict bladder cancer-specific survival (BCSS) to neoadjuvant chemotherapy (NAC) in muscle-invasive bladder cancer (MIBC) patients.We retrospectively identified a consecutive sample of 247 MIBC patients treated with cisplatin-based NAC-plus-cystectomy in two Spanish hospitals between 2000 and 2019. Age at MIBC diagnosis, sex, histology, lymphovascular invasion, previous non-MIBC, hydronephrosis, and clinical TNM were included in the initial Cox regression model. A risk score was computed based on the final prognostic model and a nomogram was used to estimate BCSS at 2 and 5 years.Median age was 66 years; 89% were males; 83% had pure urothelial carcinoma; 16.2% had previous non-MIBC. Clinical stage was T2N0, T3-4aN0, and Tx-4N + in 24%, 57%, and 19% of patients, respectively. Complete pathological response was seen in 29.4% and downstaging to non-MIBC (ypT1, ypTa, ypTis) in 12.5% of patients. Overall 5-year BCSS was 59%. Four prognostic factors were identified: variant histology, previous non-MIBC, female sex and hydronephrosis. By adding the points attributed to each of these factors, we categorized patients in three groups: low-risk (0 points); intermediate-risk (1-9 points); high-risk (≥ 10 points). Five-year BCSS was 72%, 53%, and 15%, respectively (p < 0.0001).We developed a nomogram and risk score based on four baseline clinicopathological characteristics to predict BCSS to NAC-plus-cystectomy in MIBC patients. If validated in prospective studies, this nomogram can be useful for selecting patients likely to benefit from NAC.
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