Estimating pain visual analogue scale from health assessment questionnaire for rheumatoid arthritis with beta mixture models

Sean P. Gavan, Sainan Chang, Felice Rivellese, Zoë Ide, Michael Stadler, Katherine Payne, Darren Plant, Anne Barton, Costantino Pitzalis

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Abstract

To map from the health assessment questionnaire disability index (HAQ) to the pain visual analogue scale (VAS) for people with rheumatoid arthritis. The estimation sample comprised adults with rheumatoid arthritis and inadequate response to tumour necrosis factor-α inhibitors in a multicentre phase 4 randomised controlled trial. Beta mixture models were estimated with combinations of HAQ and its square, age and sex as independent variables. Bayesian Information Criteria informed the number of components. Model performance (root mean squared error; mean absolute error; pseudo-R2) was estimated by k-fold cross validation. Graphs illustrated mean observed and predicted pain VAS, and cumulative distribution of observed and simulated pain VAS values. For face validity, a probabilistic analysis simulated 5000 pain VAS values at four HAQ scores. For external validation, the performance of the preferred specifcation was assessed using the Rheumatoid Arthritis Medication Study cohort. There were 1055 observations from 158 participants in the estimation sample (mean age: 55.8; 81% female; mean HAQ: 1.72). The preferred specifcation was a two-component beta mixture model (probability variables:
HAQ, age, sex; main regression variable: HAQ). Visual plots illustrated good ft across the HAQ distribution, and a similar cumulative distribution of observed and predicted pain VAS values. Probabilistic analysis demonstrated that the preferred specifcation handled uncertainty appropriately. External validation demonstrated that the preferred specifcation performed well in an independent dataset. Beta mixture models provide accurate non-linear estimates of pain VAS from HAQ scores to support evidence synthesis and resource allocation decision-making for people with rheumatoid arthritis.
Original languageEnglish
Article number154
JournalRheumatology International
Volume45
Issue number7
Early online date14 Jun 2025
DOIs
Publication statusE-pub ahead of print - 14 Jun 2025

Keywords

  • Beta mixture model
  • Health assessment questionnaire
  • Mapping
  • Patient-reported outcomes
  • Pain
  • Rheumatoid arthritis
  • Visual analogue scale

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