Department of Health Technology and Services Research, Faculty of Behavioural, Management and Social Sciences, Technical Medical Centre, University of Twente, PO Box 217, 7500 AE, Enschede, The Netherlands.
Department of Mathematics and Computer Science, Eindhoven University of Technology, PO Box 513, 5600 MB, Eindhoven, The Netherlands.
BMC Med Res Methodol. 2018 Jun 22;18(1):62. doi: 10.1186/s12874-018-0516-8.
A new patient-reported health measurement model has been developed to quantify descriptions of health states. Known as the multi-attribute preference response (MAPR) model, it is based on item response theory. The response task in the MAPR is for a patient to judge whether hypothetical health-state descriptions are better or worse than his/her own health status.
In its most simple form MAPR is a Rasch model where for each respondent on the same unidimensional health scale values are estimated of their own health status and values of the hypothetical comparator health states. These values reflect the quality or severity of the health states. Alternatively, the respondents are offered health-state descriptions that are based on a classification system (e.g., multi-attribute) with a fixed number of health attributes, each with a limited number of levels. In the latter variant, the weights of the levels of the attributes in the descriptive system, which represents the range of the health states, are estimated. The results of a small empirical study are presented to illustrate the procedures of the MAPR model and possible extensions of the model are discussed.
The small study that we conducted to illustrate the procedure and results of our proposed method to measure the quality of health states and patients' own health status showed confirming results.
This paper introduces the typical MAPR model and shows how it extends the basic Rasch model with a regression function for the attributes of the health-state classification system.
一种新的患者报告健康测量模型已经被开发出来,用于量化健康状态的描述。该模型被称为多属性偏好反应(MAPR)模型,它基于项目反应理论。在 MAPR 中,患者的反应任务是判断假设的健康状态描述是否比自己的健康状况更好或更差。
在其最简单的形式中,MAPR 是一个 Rasch 模型,对于同一个单维健康量表上的每个受访者,都会估计他们自己的健康状况和假设比较者健康状态的价值。这些值反映了健康状态的质量或严重程度。或者,受访者会收到基于分类系统(例如多属性)的健康状态描述,该系统具有固定数量的健康属性,每个属性都具有有限数量的水平。在后一种变体中,描述系统中属性的水平权重(代表健康状态的范围)会被估计。本文呈现了一个小型实证研究的结果,以说明 MAPR 模型的程序,以及模型的可能扩展。
我们进行的这项小型研究旨在说明我们提出的测量健康状态质量和患者自身健康状况的方法的过程和结果,结果令人满意。
本文介绍了典型的 MAPR 模型,并展示了它如何通过回归函数扩展基本的 Rasch 模型,该回归函数用于健康状态分类系统的属性。