Crocetti Emanuele, Mangone Lucia, Lo Scocco Giovanni, Carli Paolo
Tuscany Cancer Institute, Tuscany Cancer Registry, Clinical and Descriptive Epidemiology Unit, Centre for the Study and Cancer Prevention, Florence, Italy.
Melanoma Res. 2006 Oct;16(5):429-33. doi: 10.1097/01.cmr.0000222602.80803.e1.
The common way to analyse the prognostic role of selected variables in cutaneous melanoma patients is by means of Cox proportional hazard model. The prognostic effect of the simultaneous presence of more than one independent variable in the same patient is, however, difficult to establish. This hampers the possibility of tailoring a survival expectance for a selected patient as well as to communicate it to the patient himself/herself. The objectives of the study were to compare information on cutaneous melanoma prognosis from multivariate Cox proportional hazard model and from Classification And Regression Trees analysis. Classification And Regression Trees analysis is an automatic method that splits data by means of a binary recursive process creating a 'tree' of groups with different profiles according to the analysed outcome, for example, the risk of death. This approach automatically produces data that is easily interpreted by clinicians. A total of 1403 invasive cutaneous melanoma patients, 1110 from the Tuscan Cancer Registry and 293 from the Reggio Emilia Cancer Registry, Italy, were included. Cases were incident during 1996-2001 and followed up at the end of 2003. Cox proportional hazard model and Classification And Regression Trees analysis were applied to the following variables: age, sex, Breslow thickness, Clark level, registry, subsite and morphologic type. The Classification And Regression Trees analysis identified 10 categories with statistically different survival; this results were summarized into six classes of different risks based on Breslow thickness, age and sex. The best prognostic group (5-year observed survival, 98.1%) included those subjected with Breslow less than 0.94 mm and age 19-44 years. The same thickness but an older age (50-69 years) was associated with a statistically significant different prognosis (5-year observed survival, 92.8%). The Cox proportional hazard model found sex, age, Breslow thickness, Clark and morphologic type to have a significant independent prognostic value. In conclusion, compared with the conventional approach based on Cox hazard model, Classification And Regression Trees analysis produces data closer to the clinical need of defining the prognostic profile of a specific patient. This may help the clinician both in the communication of risk and in the follow-up strategy.
分析特定变量在皮肤黑色素瘤患者中的预后作用的常用方法是使用Cox比例风险模型。然而,同一患者同时存在多个独立变量时的预后效应很难确定。这阻碍了为特定患者量身定制生存预期并将其传达给患者本人的可能性。本研究的目的是比较多变量Cox比例风险模型和分类与回归树分析所得出的皮肤黑色素瘤预后信息。分类与回归树分析是一种自动方法,它通过二元递归过程对数据进行分割,根据分析结果(例如死亡风险)创建具有不同特征的“树”状分组。这种方法会自动生成临床医生易于解读的数据。总共纳入了1403例浸润性皮肤黑色素瘤患者,其中1110例来自托斯卡纳癌症登记处,293例来自意大利雷焦艾米利亚癌症登记处。病例发生于1996 - 2001年,并在2003年底进行随访。将Cox比例风险模型和分类与回归树分析应用于以下变量:年龄、性别、Breslow厚度、Clark分级、登记处、亚部位和形态学类型。分类与回归树分析确定了10个具有统计学上不同生存率的类别;基于Breslow厚度、年龄和性别,这些结果被归纳为6个不同风险等级。预后最佳的组(5年观察生存率为98.1%)包括那些Breslow厚度小于0.94 mm且年龄在19 - 44岁的患者。相同厚度但年龄较大(50 - 69岁)的患者预后在统计学上有显著差异(5年观察生存率为92.8%)。Cox比例风险模型发现性别、年龄、Breslow厚度、Clark分级和形态学类型具有显著的独立预后价值。总之,与基于Cox风险模型的传统方法相比,分类与回归树分析得出的数据更接近定义特定患者预后特征的临床需求。这可能有助于临床医生在风险沟通和随访策略方面的工作。