American Dental Association Science and Research Institute, Chicago, IL, USA.
Support Care Cancer. 2023 Mar 22;31(4):226. doi: 10.1007/s00520-023-07681-y.
Patient-reported outcome measures (PRO) are critical tools to developing an understanding of cancer patients' experience. This paper presents some of the lesser-understood implications of using patient-reported outcome measures in clinical research.
This study uses a combination of literature sources, real-world examples from supportive care studies, and statistical simulations to demonstrate the operating characteristics of patient-reported measures.
It is demonstrated that care must be taken in the analysis of PROs as the assumptions of the most common mean-based approaches are often violated including linearity, normally distributed errors, interference with asymptotic convergence via boundary values, and more. Further, the implications of subjective discretization are shown to reduce the apparent statistical power of PRO-based studies.
PRO-based studies must be designed conscientiously as each PRO item will demonstrate a varying degree of subjectivity in a given population. Sample sizes of randomized studies using PROs must be inflated to account for this. Analyses should consider using ordinal statistical models until such time as the assumptions of mean-based models can be verified.
患者报告的结局测量(PRO)是了解癌症患者体验的重要工具。本文介绍了在临床研究中使用患者报告结局测量的一些不太为人理解的含义。
本研究使用了文献资料、支持性护理研究的实际例子和统计模拟相结合的方法,来展示患者报告测量的操作特征。
研究表明,在分析 PRO 时必须小心,因为最常见的基于均值的方法的假设通常会被违反,包括线性、误差正态分布、边界值对渐近收敛的干扰,等等。此外,主观离散化的影响也表明,基于 PRO 的研究的表观统计效力会降低。
基于 PRO 的研究必须谨慎设计,因为在给定的人群中,每个 PRO 项目都会表现出不同程度的主观性。使用 PRO 的随机研究的样本量必须增加,以弥补这一点。分析时应考虑使用有序统计模型,直到可以验证基于均值模型的假设。