Missing not at random in end of life care studies: multiple imputation and sensitivity analysis on data from the ACTION study

被引:0
作者
Giulia Carreras
Guido Miccinesi
Andrew Wilcock
Nancy Preston
Daan Nieboer
Luc Deliens
Mogensm Groenvold
Urska Lunder
Agnes van der Heide
Michela Baccini
机构
[1] Oncological Network,Department of Clinical Oncology
[2] Prevention and Research Institute (ISPRO),Department of Public Health
[3] University of Nottingham,Department of Public Health
[4] Lancaster University,Department of Statistics, Computer Science, Applications ‘G. Parenti’ (DISIA)
[5] International Observatory on end of life care,undefined
[6] Erasmus University,undefined
[7] Vrije Universiteit Brussel & Ghent University,undefined
[8] Copenhagen University,undefined
[9] University Clinic for Respiratory and Allergic Diseases,undefined
[10] University of Florence,undefined
来源
BMC Medical Research Methodology | / 21卷
关键词
Missing data; MAR; MNAR; Advance care planning; Oncology; Quality of life;
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