Cancer Epidemiology Group, Centre for Epidemiology and Biostatistics, University of Leeds, Leeds, UK.
J Epidemiol Community Health. 2010 Sep;64(9):772-6. doi: 10.1136/jech.2008.085852. Epub 2009 Aug 19.
Stage of disease and socioeconomic background (SEB) are often used to 'explain' differences in breast cancer outcomes. There are challenges for all types of analysis (eg, survival analysis, logistic regression), including missing data, measurement error and the 'reversal paradox'. This study investigates the association between SEB and survival status within 5 years of breast cancer diagnosis using (1) logistic regression with and without adjustment for stage and (2) logistic latent class analysis (LCA) excluding stage as a covariate but with and without stage as a latent class predictor.
Women diagnosed with invasive breast cancer between 1998 and 2000 in one UK region were identified (n=11 781). Multilevel logistic regression was performed using standard regression and LCA. Models included SEB (2001 Townsend Index), age and stage ('missing' stage (8.0%) modelled as a separate category). The association of SEB with stage was also assessed.
Using standard regression, there was a substantial association between SEB and death within 5 years, with and without adjustment for stage. Using LCA, patients were assigned to a large good prognosis group and a small poor prognosis group. The association between SEB and survival was substantive in both classes for the model without stage, but only in the larger class for the model with stage. Increasing deprivation was associated with more advanced stage at diagnosis.
LCA categorises patients into prognostic groups according to patient and tumour characteristics, providing an alternative strategy to the usual statistical adjustment for stage.
疾病分期和社会经济背景(SEB)常被用于“解释”乳腺癌结局的差异。所有类型的分析(例如生存分析、逻辑回归)都存在挑战,包括缺失数据、测量误差和“反转悖论”。本研究使用(1)有和无阶段调整的逻辑回归和(2)无阶段作为协变量但有和无阶段作为潜在类别预测因子的逻辑潜在类别分析(LCA),调查了乳腺癌诊断后 5 年内 SEB 与生存状态之间的关联。
在英国一个地区,确定了 1998 年至 2000 年间诊断为浸润性乳腺癌的女性(n=11781)。使用标准回归和 LCA 进行多水平逻辑回归。模型包括 SEB(2001 汤森指数)、年龄和阶段(“缺失”阶段(8.0%)建模为单独类别)。还评估了 SEB 与阶段的关联。
使用标准回归,有和无阶段调整时,SEB 与 5 年内死亡之间存在实质性关联。使用 LCA,患者被分配到预后良好的大组和预后较差的小组。在无阶段的模型中,SEB 与生存的关联在两个类别中均具有实质性,但在有阶段的模型中仅在较大类别中具有实质性。贫困程度增加与诊断时更晚期的阶段相关。
LCA 根据患者和肿瘤特征将患者分类为预后组,为通常的阶段统计调整提供了替代策略。