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分析 FIGO 早期(IA-IIA)宫颈癌手术治疗的预后变量,建立预测模型,对风险组进行分层。

Analysis of prognostic variables, development of predictive models, and stratification of risk groups in surgically treated FIGO early-stage (IA-IIA) carcinoma cervix.

机构信息

Queensland Centre for Gynaecological Cancer, Royal Brisbane and Women's Hospital, Brisbane, Australia.

出版信息

Int J Gynecol Cancer. 2012 Jan;22(1):115-22. doi: 10.1097/IGC.0b013e31822fa8bb.

Abstract

OBJECTIVES

The objectives of the study were to evaluate clinicopathologic prognostic variables in surgically treated International Federation of Obstetrics and Gynecology early-stage (IA-IIA) cervical cancer, develop prognostic models, and note the role of adjuvant treatment, patterns of failure, and salvage survival (SS) in each group.

METHODS

Records of 542 patients who received primary surgical treatment for International Federation of Obstetrics and Gynecology (IA-IIA) cervical cancer were reviewed. Ninety-eight patients who relapsed after primary treatment were identified and matched for stage and age with a control group. Clinicopathologic prognostic variables were identified and used to develop a prognostic model with 3 risk groups for overall survival (OS) and relapse-free survival (RFS). The roles of adjuvant treatment, relapse sites, and SS were also noted in the groups.

RESULTS

The 5-year OS was 70% for the whole group, 97% in the control group, and 44% in the relapse group. There was a statistically significant decrease in survival in patients 70 years or older, those with positive lymphovascular space invasion (LVSI), and in patients with positive LVSI and increasing depth of invasion in both univariate and multivariate analyses (P < 0.001). Positive lymph node status and tumor size of 31 mm or greater showed only a trend toward lower OS and RFS, respectively, in multivariate analysis. An additive model using regression coefficients from multivariate Cox model stratified patients into low-, medium-, and high-risk groups. Relapse-free survival and OS were significantly different in all 3 groups (P < 0.001). Salvage survival was better in low-risk group relative to medium- and high-risk groups, (P = 0.05) as well as between the medium- and high-risk groups (P = 0.03). More distant and locoregional relapses were noted in the medium- and high-risk groups, and SS was better with a local versus locoregional or distant recurrence (P < 0.001).

CONCLUSIONS

In this study, age 70 years or older and positive LVSI were found to be statistically significant prognostic factors for both OS and RFS. Positive lymph nodes status showed only a trend toward lower OS. Positive LVSI status had significant adverse prognostic effects on RFS and OS in tumors with increasing depth of invasion. Additive prognostic model helps identify predictors and stratify patients into low-, medium-, and high-risk groups for survival. Many of these factors can be identified preoperatively and may assist in decision to offer primary surgery or alternative therapies in patients with potentially operable cervix cancer. Prognostic model can be used as a tool to design clinical trials and select the group of patients who are the appropriate target for a trial.

摘要

目的

本研究旨在评估接受国际妇产科联合会(FIGO)早期(IA-IIA)宫颈癌手术治疗的患者的临床病理预后变量,构建预后模型,并观察辅助治疗、失败模式和各组挽救性生存率(SS)的作用。

方法

回顾了 542 例接受国际妇产科联合会(FIGO)IA-IIA 宫颈癌初始手术治疗的患者的病历。确定了 98 例在初始治疗后复发的患者,并按分期和年龄与对照组进行匹配。确定了临床病理预后变量,并用于建立 3 个总体生存率(OS)和无复发生存率(RFS)风险组的预后模型。还观察了各组中辅助治疗、复发部位和 SS 的作用。

结果

全组患者的 5 年 OS 为 70%,对照组为 97%,复发组为 44%。在年龄 70 岁或以上、有淋巴血管间隙浸润(LVSI)阳性、LVSI 阳性且浸润深度增加的患者中,生存显著下降,在单因素和多因素分析中均具有统计学意义(P<0.001)。在多因素分析中,淋巴结阳性和肿瘤直径 31mm 或更大仅显示出 OS 和 RFS 分别呈下降趋势。使用多因素 Cox 模型回归系数的加性模型将患者分层为低、中、高危组。所有 3 组的 RFS 和 OS 差异均有统计学意义(P<0.001)。与中、高危组相比,低危组的 SS 更好(P=0.05),中危组与高危组之间的 SS 也更好(P=0.03)。中、高危组出现更多远处和局部复发,局部复发的 SS 优于局部或远处复发(P<0.001)。

结论

在本研究中,年龄 70 岁或以上和 LVSI 阳性被发现是 OS 和 RFS 的统计学显著预后因素。淋巴结阳性状态仅显示 OS 呈下降趋势。LVSI 阳性状态对肿瘤浸润深度增加的 RFS 和 OS 具有显著的不良预后影响。加性预后模型有助于识别预测因子,并将患者分层为低、中、高危组,以获得生存。这些因素中的许多可以在术前确定,并可能有助于决定对有潜在可手术宫颈癌的患者进行初始手术或替代治疗。预后模型可用作设计临床试验和选择适合试验的患者群体的工具。

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