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Methodology of a Novel Risk Stratification Algorithm for Patients with Multiple Myeloma in the Relapsed Setting

机译:复发设定中多发性骨髓瘤患者新风险分层算法的方法

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摘要

Abstract Introduction Risk stratification tools provide valuable information to inform treatment decisions. Existing algorithms for patients with multiple myeloma (MM) were based on patients with newly diagnosed disease, and these have not been validated in the relapsed setting or in routine clinical practice. We developed a risk stratification algorithm (RSA) for patients with MM at initiation of second-line (2L) treatment, based on data from the Czech Registry of Monoclonal Gammopathies. Methods Predictors of overall survival (OS) at 2L treatment were identified using Cox proportional hazards models and backward selection. Risk scores were obtained by multiplying the hazard ratios for each predictor. The K-adaptive partitioning for survival (KAPS) algorithm defined four groups of stratification based on individual risk scores. Results Performance of the RSA was assessed using Nagelkerke’s R 2 test and Harrell’s concordance index through Kaplan–Meier analysis of OS data. Prognostic groups were successfully defined based on real-world data. Use of a multiplicative score based on Cox modeling and KAPS to define cut-off values was effective. Conclusion Through innovative methods of risk assessment and collaboration between physicians and statisticians, the RSA was capable of stratifying patients at 2L treatment by survival expectations. This approach can be used to develop clinical decision-making tools in other disease areas to improve patient management. Funding Amgen Europe GmbH.
机译:摘要介绍风险分层工具提供有价值的信息,以通知治疗决策。具有多种骨髓瘤(MM)患者的现有算法基于患有新诊断的疾病的患者,这些患者尚未在复发环境中或常规临床实践中验证。我们基于来自单克隆术语的捷克登记处的数据,对MM在起始的患者的患者开发了一种风险分层算法(RSA)。方法使用COX比例危险模型和落后选择鉴定了2L治疗中总存活(OS)的预测因子。通过将每个预测因子乘以危险比来获得风险评分。存活的K-Adaptive分区(KAPS)算法基于个体风险评分定义了四组分层。结果使用Nagelkerke的R 2测试和Harrell的Concordance索引通过Kaplan-Meier分析进行评估RSA的性能。基于现实世界数据成功定义预后组。使用基于COX建模和KAP来定义截止值的乘法分数是有效的。结论通过创新方法的风险评估方法和医师和统计学家之间的合作,RSA能够通过生存期预期分层患者。这种方法可用于在其他疾病领域开发临床决策工具,以改善患者管理。资金Amgen Europe GmbH。

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