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Valuation structures of health states revealed with singular value decomposition.

机译:健康状态的估值结构显示出奇异值分解。

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OBJECTIVE: A basic mathematical routine called singular value decomposition (SVD) is introduced and applied to explore the applicability of this methodology in the context of health state valuations. METHODS: SVD dissects a data matrix into 3 separatematrices that contain all the information present in the original data. Eachmatrix comprises a specific type of information. One matrix comprises arrays of weights that show the different valuation structures (i.e., similar ways among respondents to quantify specific sets of health states). A 2nd matrix with weights expresses how strongly each respondent's ratings are related to each of the valuation structures, and a 3rd matrix contains the percentages of variance associated with the valuation structures. SVD was applied to data from a group of 340 respondents who each gave a value to 16 health states using the time tradeoff (TTO) method and the visual analog scale (VAS). RESULTS: SVD of the VAS data showed 1 distinct response pattern that accounted for 91.6% of the total variance. The contribution of the 1st component in the TTO data wasmuch lower (57.4%), and a 2nd component (15.6%) could be identified that reflected a distinct preference structure opposed to the 1st and principal component. CONCLUSIONS: Application of SVD to the TTO data revealed that respondents fell into 2 different groups in their TTO evaluations, but respondents weremore similar to each other in their VAS responses. The author discusses other applications of SVD to clinical research.
机译:目的:介绍了一种称为奇异值分解(SVD)的基本数学例程,并将其应用于探索此方法在健康状态评估中的适用性。方法:SVD将数据矩阵分解为3个单独的矩阵,其中包含原始数据中存在的所有信息。每个矩阵都包含特定类型的信息。一个矩阵包含权重阵列,这些权重阵列显示了不同的评估结构(即,受访者之间以相似方式量化特定的一组健康状态)。具有权重的第二矩阵表示每个受访者的评分与每个评估结构的关联程度,而第三矩阵包含与评估结构相关的方差百分比。 SVD用于来自340位受访者的数据,他们使用时间权衡(TTO)方法和视觉模拟量表(VAS)为16个健康状态赋予了价值。结果:VAS数据的SVD显示1种不同的响应模式,占总方差的91.6%。 TTO数据中第一成分的贡献要低得多(57.4%),可以确定第二成分(15.6%)反映了与第一成分和主成分相对的独特偏好结构。结论:将SVD应用于TTO数据显示,受访者在TTO评估中分为两个不同的组,但受访者的VAS响应彼此相似。作者讨论了SVD在临床研究中的其他应用。

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