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首页> 外文期刊>Health economics >Frequentist and B B ayesian meta‐regression of health state utilities for multiple myeloma incorporating systematic review and analysis of individual patient data
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Frequentist and B B ayesian meta‐regression of health state utilities for multiple myeloma incorporating systematic review and analysis of individual patient data

机译:频率和B B AYESIAN荟萃回归的健康状态公用事业对多个骨髓瘤的系统审查和分析个体患者数据

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摘要

Abstract This analysis presents the results of a systematic review for health state utilities in multiple myeloma, as well as analysis of over 9,000 observations taken from registry and trial data. The 27 values identified from 13 papers are then synthesised in a frequentist nonparametric bootstrap model and a Bayesian meta‐regression. Results were similar between the frequentist and Bayesian models with low utility on disease diagnosis (approximately 0.55), raising to approximately 0.65 on first line treatment and declining slightly with each subsequent line. Stem cell transplant was also found to be a significant predictor of health‐related quality of life in both individual patient data and meta‐regression, with an increased utility of approximately 0.06 across different models. The work presented demonstrates the feasibility of Bayesian methods for utility meta‐regression, whilst also presenting an internally consistent set of data from the analysis of registry data. To facilitate easy updating of the data and model, data extraction tables and model code are provided as Data S1 . The main limitations of the model relate to the low number of studies available, particularly in highly pretreated patients.
机译:摘要此分析介绍了多个骨髓瘤中健康状态公用事业的系统审查结果,以及分析来自注册管理机构和试验数据的9,000多种观察结果。然后在13篇论文中识别的27个值在频繁的非参数引导模型和贝叶斯元回归中合成。结果与疾病诊断(约0.55)的效用低的频率和贝叶菊模型相似,在第一线处理上升高到大约0.65,每次后续线略微下降。还发现干细胞移植是个体患者数据和荟萃回归中有关健康相关生活质量的重要预测因素,其不同模型的效用增加了约0.06。所呈现的工作展示了贝叶斯常用性Meta-回归的方法的可行性,同时还从注册表数据的分析中呈现内部一致的数据集。为了便于轻松更新数据和模型,数据提取表和型号代码被提供为数据S1。该模型的主要局限性涉及可用的低数量的研究,特别是在高度预处理的患者中。

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