Purpose: The analysis of longitudinal health-related quality of life measures (HRQOL) can be seriously hampered due to informative drop-out. Random effects models assume Missing At Random and do not take into account informative drop-out. We therefore aim to correct the bias due to informative drop-out.
Methods: Analyses of data from a trial comparing standard-dose and high-dose chemotherapy for patients with breast cancer with respect to long-term impact on HRQOL will serve as illustration. The subscale Physical Function (PF) of the SF36 will be used. A pattern mixture approach is proposed to account for informative drop-out. Patterns are defined based on events related to HRQOL, such as death and relapse. The results of this pattern mixture approach are compared to the results of the commonly used random effects model.
Results: The findings of the pattern mixture approach are well interpretable, and different courses over time in different patterns are distinguished. In terms of estimated differences between standard dose and high dose, the results of both approaches are slightly different, but have no consequences for the clinical evaluation of both doses.
Conclusion: Under the assumption that drop-out is at random within the patterns, the pattern mixture approach adjusts the estimates to a certain degree. This approach accounts in a relatively simple way for informative drop-out.
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http://dx.doi.org/10.1007/s11136-009-9564-1 | DOI Listing |
Alzheimers Dement
December 2024
Centre for Brain Research, Indian Institute of Science, Bangalore, Karnataka, India.
Background: Dementia, a global health challenge, drives the need for comprehensive understanding. Longitudinal cohort studies are vital, yet maintaining follow-up in dementia cohorts poses challenges. This study explores challenges in follow-up, refines protocols, and develops strategies that can elevate dementia research quality.
View Article and Find Full Text PDFBMC Oral Health
December 2024
Department of Community Dentistry, Faculty of Dentistry, Chulalongkorn University, 34 Henri-Dunant rd., Wangmai, Pathumwan, Bangkok, 10330, Bangkok, Thailand.
Background: According to anecdotal reports, SDF's ability to arrest caries can be enhanced by light-curing in a clinical setting. The purpose of the present study was to explore the dental professionals' perceptions of using SDF and to understand the barriers and enabling factors to using SDF with and without light-curing.
Methods: A qualitative study was conducted with dental professionals who had experience with using SDF with and without light-curing.
Cureus
November 2024
Physiology, Lahore Medical and Dental College, Lahore, PAK.
Introduction: Medical student dropout is characterized by the early exit from the medical college prior to graduation. The dropout ratio fluctuates globally and is influenced by factors, such as academic demands, individual characteristics, and insufficient work-life balance, which contribute to thoughts of dropping out. This study sought to evaluate the frequency of dropout ideation and influencing factors among medical students at Lahore Medical and Dental College (LMDC).
View Article and Find Full Text PDFDisabil Rehabil Assist Technol
December 2024
College of Health and Life Sciences, Brunel University London, Uxbridge, UK.
Frame Running is an adapted community-based exercise option for people with moderate-to-severe walking impairments. This mixed-methods study aimed to examine the feasibility of 1) community-based Frame Running by young people with moderate-to-severe walking impairments and 2) conducting future studies on the impact of Frame Running on functional mobility and cardiometabolic disease risk factors. Weekly training sessions and data collection occurred in two sites.
View Article and Find Full Text PDFBiometrics
October 2024
Department of Biostatistics, Harvard T. H. Chan School of Public Health, Boston, MA 02115, United States.
Analyses of cluster randomized trials (CRTs) can be complicated by informative missing outcome data. Methods such as inverse probability weighted generalized estimating equations have been proposed to account for informative missingness by weighing the observed individual outcome data in each cluster. These existing methods have focused on settings where missingness occurs at the individual level and each cluster has partially or fully observed individual outcomes.
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