Inferring meaningful change in quality of life with posterior predictive distribution: An alternative to standard error of measurement Journal Article


Author: Li, Y.
Article Title: Inferring meaningful change in quality of life with posterior predictive distribution: An alternative to standard error of measurement
Abstract: ObjectiveIn the absence of population-based information, distribution-based meaningful change metrics have been previously found to perform similarly. Yet, it is unknown how a Bayesian approach derived from Posterior Predictive Distribution (PPD) of anticipated changes would compare against existing metrics.MethodsPPD defines meaningful change as change scores that exceed the amount expected from the posterior predictive distribution given a previous score. The PPD adjusts for common statistical phenomena that arise in a pre-test-post-test setting, such as regression to the mean and post-test drift. The PPD was compared to Reliable Change Index (RCI) and Gulliksen-Lord-Novick (GLN) methods using published real-world data and simulated hypothetical data, respectively.ResultsReal-world data showed that the methods made similar classifications when the measurement reliability was above 0.80. When reliability was low at 0.50 and thus more susceptible to regression to the mean effects, PPD and GLN were able to correct for it but not the RCI. However, PPD was more conservative and sensitive to biased priors. The simulation study showed that the three methods performed similarly overall, but PPD was slightly better in detecting prevalent changes, e.g., at time 2 (against RCI at p < 0.0001; against GLN at p < 0.0001) and time 3 (p = 0.024, p = 0.002).ConclusionsWhen measurement reliability is high, as is frequent in HRQOL development efforts, the three methods performed similarly. At a cost of more conservative cutoffs and complex calculations, the Bayesian PPD nevertheless confers practical advantages when reliability is low. It may be worthy of further research and applications. (PsycInfo Database Record (c) 2022 APA, all rights reserved)
Keywords: bayesian statistics; bayesian regression; bayesian posterior predictive distribution; meaningful change
Journal Title: Quality of Life Research
Volume: 32
Issue: 5
ISSN: 0962-9343
Publisher: Springer  
Date Published: 2023-05-01
Start Page: 1391
End Page: 1400
ACCESSION: 2023-01703-001
DOI: 10.1007/s11136-022-03239-3
PROVIDER: Ovid Technologies
PROVIDER: psycinfo
PUBMED: 36083421
PMCID: PMC10202216
DOI/URL:
Notes: MSK Cancer Center Support Grant (P30 CA008748) acknowledged in PDF and PubMed -- MSK corresponding author is Yuelin Li -- Source: APA PsycInfo
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  1. Yuelin Li
    219 Li