MAPI Consultancy, Boston, MA 02114, USA.
BMC Med Res Methodol. 2012 Oct 8;12:152. doi: 10.1186/1471-2288-12-152.
Recently, network meta-analysis of survival data with a multidimensional treatment effect was introduced. With these models the hazard ratio is not assumed to be constant over time, thereby reducing the possibility of violating transitivity in indirect comparisons. However, bias is still present if there are systematic differences in treatment effect modifiers across comparisons.
In this paper we present multidimensional network meta-analysis models for time-to-event data that are extended with covariates to explain heterogeneity and adjust for confounding bias in the synthesis of evidence networks of randomized controlled trials. The impact of a covariate on the treatment effect can be assumed to be treatment specific or constant for all treatments compared.
An illustrative example analysis is presented for a network of randomized controlled trials evaluating different interventions for advanced melanoma. Incorporating a covariate related to the study date resulted in different estimates for the hazard ratios over time than an analysis without this covariate, indicating the importance of adjusting for changes in contextual factors over time.
Adding treatment-by-covariate interactions to multidimensional network meta-analysis models for published survival curves can be worthwhile to explain systematic differences across comparisons, thereby reducing inconsistencies and bias. An additional advantage is that heterogeneity in treatment effects can be explored.
最近,提出了一种用于生存数据的多维治疗效果的网络荟萃分析。通过这些模型,假设风险比不是随时间而恒定的,从而降低了间接比较中违反传递性的可能性。然而,如果在比较中治疗效果修饰因素存在系统性差异,仍然存在偏差。
在本文中,我们提出了多维网络荟萃分析模型,用于时间事件数据,该模型扩展了协变量,以解释异质性,并在综合随机对照试验证据网络时调整混杂偏差。协变量对治疗效果的影响可以假定为特定于治疗的,也可以假定为比较的所有治疗的常数。
为评估不同干预措施治疗晚期黑色素瘤的随机对照试验网络,提出了一个说明性示例分析。与不包含该协变量的分析相比,包含与研究日期相关的协变量的分析导致风险比随时间的不同估计,这表明随着时间的推移调整上下文因素变化的重要性。
在多维网络荟萃分析模型中添加治疗与协变量的相互作用,对于解释比较之间的系统差异、减少不一致性和偏差是值得的。另一个优点是可以探索治疗效果的异质性。