Averbook Bruce J, Fu Pingfu, Rao J Sunil, Mansour Edward G
Department of Surgery, Division of Surgical Oncology and Department of Epidemiology and Biostatistics, MetroHealth Medical Center/Case Western Reserve University, Cleveland, Ohio 44109-1998, USA.
Surgery. 2002 Oct;132(4):589-602; discussion 602-4. doi: 10.1067/msy.2002.127546.
Traditional statistical analysis of 2 surgeons' experiences with resectable malignant melanoma during a 30-year period (November 1970-July 2000) was compared with new tree-structured recursive partitioning regression analysis.
A total of 1018 consecutive patients were registered and 983 patients were evaluable. Disease-free survival (DFS) and melanoma survival (MS) were calculated by Kaplan-Meier method for stage, thickness, ulceration, site, lymph node involvement, age, sex, and type; and compared with log-rank tests. Cox proportional hazards model was used for multivariate analysis. Multivariate predictors were used to analyze DFS and MS with a classification and regression tree model that partitioned patients into progressively more homogenous prognostic groups with significantly different Kaplan-Meier curves.
Multivariate correlations were with thickness (millimeters), ulceration, age (per year), type, and sex in predicting DFS (relative risk = 1.18, 2.10, 1.05, 1.71, and 1.71, respectively). Thickness, ulceration, age, and type remained significant predictors of MS (relative risk = 1.14, 3.02, 1.02, and 2.30, respectively). Classification and regression tree analysis showed thickness, age, ulceration, and sex affected DFS. Only thickness and ulceration were significant in predicting MS.
The Cox model is an important tool for analysis of clinical data but has flaws. New statistical technology to predict outcome should be considered. Classification and regression tree analysis of larger published series may reveal new predictors useful for staging, prognosis, and guiding clinical decisions.
将2名外科医生在30年期间(1970年11月至2000年7月)对可切除恶性黑色素瘤的经验进行传统统计分析,并与新的树状结构递归划分回归分析进行比较。
共登记了1018例连续患者,其中983例患者可进行评估。采用Kaplan-Meier法计算无病生存期(DFS)和黑色素瘤生存期(MS),分析指标包括分期、厚度、溃疡、部位、淋巴结受累情况、年龄、性别和类型;并通过对数秩检验进行比较。采用Cox比例风险模型进行多变量分析。使用多变量预测因子,通过分类和回归树模型分析DFS和MS,该模型将患者分为预后更同质的组,其Kaplan-Meier曲线有显著差异。
在预测DFS时,多变量相关性与厚度(毫米)、溃疡、年龄(每年)、类型和性别有关(相对风险分别为1.18、2.10、1.05、1.71和1.71)。厚度、溃疡、年龄和类型仍然是MS的显著预测因子(相对风险分别为1.14、3.02、1.02和2.30)。分类和回归树分析显示,厚度、年龄、溃疡和性别影响DFS。只有厚度和溃疡在预测MS方面具有显著性。
Cox模型是分析临床数据的重要工具,但存在缺陷。应考虑采用新的统计技术来预测结果。对更大规模已发表系列进行分类和回归树分析可能会揭示对分期、预后和指导临床决策有用的新预测因子。