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On Modelling Minimal Disease Activity

Authors :
Dafna D. Gladman
Vernon T. Farewell
Li Su
Christopher Jackson
Jackson, Christopher [0000-0002-6656-8913]
Su, Li [0000-0003-0919-3462]
Farewell, Vernon [0000-0001-6704-5295]
Apollo - University of Cambridge Repository
Source :
Arthritis Care & Research
Publication Year :
2018
Publisher :
Wiley, 2018.

Abstract

OBJECTIVE: To explore methods for statistical modelling of minimal disease activity (MDA) based on data from intermittent clinic visits. METHODS: The analysis was based on a 2-state model. Comparisons were made between analyses based on "complete case" data from visits at which MDA status was known, and the use of hidden model methodology that incorporated information from visits at which only some MDA defining criteria could be established. Analyses were based on an observational psoriatic arthritis cohort. RESULTS: With data from 856 patients and 7,024 clinic visits, analysis was based on virtually all visits, although only 62.6% provided enough information to determine MDA status. Estimated mean times for an episode of MDA varied from 4.18 years to 3.10 years, with smaller estimates derived from the hidden 2-state model analysis. Over a 10-year period, the estimated expected times spent in MDA episodes of longer than 1 year was 3.90 to 4.22, and the probability of having such an MDA episode was estimated to be 0.85 to 0.91, with longer times and greater probabilities seen with the hidden 2-state model analysis. CONCLUSION: A 2-state model provides a useful framework for the analysis of MDA. Use of data from visits at which MDA status can not be determined provide more precision, and notable differences are seen in estimated quantities related to MDA episodes based on complete case and hidden 2-state model analyses. The possibility of bias, as well as loss of precision, should be recognized when complete case analyses are used.

Details

Database :
OpenAIRE
Journal :
Arthritis Care & Research
Accession number :
edsair.doi.dedup.....81f8c72d7f7d0cc8e01ad9b1f0a48873
Full Text :
https://doi.org/10.17863/cam.24200