Suppr超能文献

验证一种用于膀胱癌辅助放疗前瞻性研究的局部失败风险分层方法。

Validating a Local Failure Risk Stratification for Use in Prospective Studies of Adjuvant Radiation Therapy for Bladder Cancer.

作者信息

Baumann Brian C, He Jiwei, Hwang Wei-Ting, Tucker Kai N, Bekelman Justin E, Herr Harry W, Lerner Seth P, Guzzo Thomas J, Malkowicz S Bruce, Christodouleas John P

机构信息

Department of Radiation Oncology, University of Pennsylvania, Philadelphia, Pennsylvania.

Department of Epidemiology and Biostatistics, University of Pennsylvania, Philadelphia, Pennsylvania.

出版信息

Int J Radiat Oncol Biol Phys. 2016 Jun 1;95(2):703-6. doi: 10.1016/j.ijrobp.2016.01.034. Epub 2016 Jan 23.

Abstract

PURPOSE

To inform prospective trials of adjuvant radiation therapy (adj-RT) for bladder cancer after radical cystectomy, a locoregional failure (LF) risk stratification was proposed. This stratification was developed and validated using surgical databases that may not reflect the outcomes expected in prospective trials. Our purpose was to assess sources of bias that may affect the stratification model's validity or alter the LF risk estimates for each subgroup: time bias due to evolving surgical techniques; trial accrual bias due to inclusion of patients who would be ineligible for adj-RT trials because of early disease progression, death, or loss to follow-up shortly after cystectomy; bias due to different statistical methods to estimate LF; and subgrouping bias due to different definitions of the LF subgroups.

METHODS AND MATERIALS

The LF risk stratification was developed using a single-institution cohort (n=442, 1990-2008) and the multi-institutional SWOG 8710 cohort (n=264, 1987-1998) treated with radical cystectomy with or without chemotherapy. We evaluated the sensitivity of the stratification to sources of bias using Fine-Gray regression and Kaplan-Meier analyses.

RESULTS

Year of radical cystectomy was not associated with LF risk on univariate or multivariate analysis after controlling for risk group. By use of more stringent inclusion criteria, 26 SWOG patients (10%) and 60 patients from the single-institution cohort (14%) were excluded. Analysis of the remaining patients confirmed 3 subgroups with significantly different LF risks with 3-year rates of 7%, 17%, and 36%, respectively (P<.01), nearly identical to the rates without correcting for trial accrual bias. Kaplan-Meier techniques estimated higher subgroup LF rates than competing risk analysis. The subgroup definitions used in the NRG-GU001 adj-RT trial were validated.

CONCLUSIONS

These sources of bias did not invalidate the LF risk stratification or substantially change the model's LF estimates.

摘要

目的

为了指导膀胱癌根治性膀胱切除术后辅助放疗(adj-RT)的前瞻性试验,我们提出了一种局部区域复发(LF)风险分层方法。该分层方法是利用手术数据库开发并验证的,而这些数据库可能无法反映前瞻性试验中预期的结果。我们的目的是评估可能影响分层模型有效性或改变各亚组LF风险估计值的偏倚来源:由于手术技术不断发展导致的时间偏倚;由于纳入了因疾病早期进展、死亡或膀胱切除术后不久失访而不符合adj-RT试验条件的患者所导致的试验入组偏倚;由于估计LF的统计方法不同而导致的偏倚;以及由于LF亚组定义不同而导致的亚组划分偏倚。

方法和材料

LF风险分层是利用一个单机构队列(n = 442,1990 - 2008年)和多机构的SWOG 8710队列(n = 264,1987 - 1998年)开发的,这些队列接受了有或无化疗的根治性膀胱切除术。我们使用Fine-Gray回归和Kaplan-Meier分析评估分层对偏倚来源的敏感性。

结果

在控制风险组后,单因素或多因素分析显示根治性膀胱切除的年份与LF风险无关。通过使用更严格的纳入标准,排除了26例SWOG患者(10%)和单机构队列中的60例患者(14%)。对其余患者的分析证实了3个亚组,其LF风险有显著差异,3年发生率分别为7%、17%和36%(P <.01),与未校正试验入组偏倚时的发生率几乎相同。Kaplan-Meier技术估计的亚组LF发生率高于竞争风险分析。NRG-GU001辅助放疗试验中使用的亚组定义得到了验证。

结论

这些偏倚来源并没有使LF风险分层无效,也没有实质性地改变模型的LF估计值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/314f/5126649/7eb036c31612/nihms830836f1.jpg

相似文献

5
Bladder cancer patterns of pelvic failure: implications for adjuvant radiation therapy.膀胱癌盆腔失败的模式:对辅助放疗的影响。
Int J Radiat Oncol Biol Phys. 2013 Feb 1;85(2):363-9. doi: 10.1016/j.ijrobp.2012.03.061. Epub 2012 May 30.

引用本文的文献

2
Bladder cancer.膀胱癌。
Nat Rev Dis Primers. 2023 Oct 26;9(1):58. doi: 10.1038/s41572-023-00468-9.
3
Perioperative therapy in muscle invasive bladder cancer.肌层浸润性膀胱癌的围手术期治疗
Indian J Urol. 2021 Jul-Sep;37(3):226-233. doi: 10.4103/iju.IJU_540_20. Epub 2021 Jul 1.

本文引用的文献

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验