TY - JOUR
T1 - Methods for comparative effectiveness based on time to confirmed disability progression with irregular observations in multiple sclerosis
AU - Debray, Thomas P.A.
AU - Simoneau, Gabrielle
AU - Copetti, Massimiliano
AU - Platt, Robert W.
AU - Shen, Changyu
AU - Pellegrini, Fabio
AU - de Moor, Carl
N1 - Publisher Copyright:
© The Author(s) 2023.
PY - 2023/7
Y1 - 2023/7
N2 - Real-world data sources offer opportunities to compare the effectiveness of treatments in practical clinical settings. However, relevant outcomes are often recorded selectively and collected at irregular measurement times. It is therefore common to convert the available visits to a standardized schedule with equally spaced visits. Although more advanced imputation methods exist, they are not designed to recover longitudinal outcome trajectories and typically assume that missingness is non-informative. We, therefore, propose an extension of multilevel multiple imputation methods to facilitate the analysis of real-world outcome data that is collected at irregular observation times. We illustrate multilevel multiple imputation in a case study evaluating two disease-modifying therapies for multiple sclerosis in terms of time to confirmed disability progression. This survival outcome is derived from repeated measurements of the Expanded Disability Status Scale, which is collected when patients come to the healthcare center for a clinical visit and for which longitudinal trajectories can be estimated. Subsequently, we perform a simulation study to compare the performance of multilevel multiple imputation to commonly used single imputation methods. Results indicate that multilevel multiple imputation leads to less biased treatment effect estimates and improves the coverage of confidence intervals, even when outcomes are missing not at random.
AB - Real-world data sources offer opportunities to compare the effectiveness of treatments in practical clinical settings. However, relevant outcomes are often recorded selectively and collected at irregular measurement times. It is therefore common to convert the available visits to a standardized schedule with equally spaced visits. Although more advanced imputation methods exist, they are not designed to recover longitudinal outcome trajectories and typically assume that missingness is non-informative. We, therefore, propose an extension of multilevel multiple imputation methods to facilitate the analysis of real-world outcome data that is collected at irregular observation times. We illustrate multilevel multiple imputation in a case study evaluating two disease-modifying therapies for multiple sclerosis in terms of time to confirmed disability progression. This survival outcome is derived from repeated measurements of the Expanded Disability Status Scale, which is collected when patients come to the healthcare center for a clinical visit and for which longitudinal trajectories can be estimated. Subsequently, we perform a simulation study to compare the performance of multilevel multiple imputation to commonly used single imputation methods. Results indicate that multilevel multiple imputation leads to less biased treatment effect estimates and improves the coverage of confidence intervals, even when outcomes are missing not at random.
KW - Clustered data
KW - comparative effectiveness
KW - confirmed disability progression
KW - longitudinal data
KW - multiple imputation
KW - multiple sclerosis
KW - real-world data
UR - http://www.scopus.com/inward/record.url?scp=85162670899&partnerID=8YFLogxK
U2 - 10.1177/09622802231172032
DO - 10.1177/09622802231172032
M3 - Article
C2 - 37303120
AN - SCOPUS:85162670899
SN - 0962-2802
VL - 32
SP - 1284
EP - 1299
JO - Statistical Methods in Medical Research
JF - Statistical Methods in Medical Research
IS - 7
M1 - doi.org/10.1177/09622802231172032
ER -