Challenge of missing data in observational studies: investigating cross-sectional imputation methods for assessing disease activity in axial spondyloarthritis.

 0 Người đánh giá. Xếp hạng trung bình 0

Tác giả: Diogo Almeida, Adrian Ciurea, Catalin Codreanu, Daniela di Giuseppe, Stylianos Georgiadis, Bente Glintborg, Bjorn Gudbjornsson, Merete Lund Hetland, Florenzo Iannone, Tore K Kvien, Karin Lass, Louise Linde, Anne G Loft, Ross MacDonald, Daniel Melim, Brigitte Michelsen, Tor Olofsson, L M Ørnbjerg, Mikkel Østergaard, Olafur Palsson, Ritva Peltomaa, Katja Perdan Pirkmajer, Marion Pons, Sella Aarrestad Provan, Vappu Rantalaiho, Simon Rasmussen, Ziga Rotar, Ovidiu Rotariu, Johan K Wallman, Jakub Zavada

Ngôn ngữ: eng

Ký hiệu phân loại: 133.9 Spiritualism

Thông tin xuất bản: England : RMD open , 2025

Mô tả vật lý:

Bộ sưu tập: NCBI

ID: 228543

 OBJECTIVES: We aimed to compare various methods for imputing disease activity in longitudinally collected observational data of patients with axial spondyloarthritis (axSpA). METHODS: We conducted a simulation study on data from 8583 axSpA patients from ten European registries. Disease activity was assessed by the Axial Spondyloarthritis Disease Activity Score (ASDAS) and the corresponding low disease activity (LDA
  ASDAS<
 2.1) state at baseline, 6 and 12 months. We focused on cross-sectional methods which impute missing values of an individual at a particular time point based on the available information from other individuals at that time point. We applied nine single and five multiple imputation methods, covering mean, regression and hot deck methods. The performance of each imputation method was evaluated via relative bias and coverage of 95% confidence intervals for the mean ASDAS and the derived proportion of patients in LDA. RESULTS: Hot deck imputation methods outperformed mean and regression methods, particularly when assessing LDA. Multiple imputation procedures provided better coverage than the corresponding single imputation ones. However, none of the evaluated methods produced unbiased estimates with adequate coverage across all time points, with performance for missing baseline data being worse than for missing follow-up data. Predictive mean and weighted predictive mean hot deck imputation procedures consistently provided results with low bias. CONCLUSIONS: This study contributes to the available methods for imputing disease activity in observational research. Hot deck imputation using predictive mean matching exhibited the highest robustness and is thus our suggested approach.
Tạo bộ sưu tập với mã QR

THƯ VIỆN - TRƯỜNG ĐẠI HỌC CÔNG NGHỆ TP.HCM

ĐT: (028) 36225755 | Email: tt.thuvien@hutech.edu.vn

Copyright @2024 THƯ VIỆN HUTECH