TY - JOUR
T1 - Missing not at random in end of life care studies
T2 - multiple imputation and sensitivity analysis on data from the ACTION study
AU - Carreras, Giulia
AU - Miccinesi, Guido
AU - Wilcock, Andrew
AU - Preston, Nancy
AU - Nieboer, Daan
AU - Deliens, Luc
AU - Groenvold, Mogens
AU - Lunder, Urška
AU - van der Heide, Agnes
AU - Baccini, Michela
AU - Korfage, Ida J.
AU - Rietjens, Judith A.C.
AU - Jabbarian, Lea J.
AU - Polinder, Suzanne
AU - van Delden, Hans
AU - Kars, Marijke
AU - Zwakman, Marieke
AU - Verkissen, Mariëtte N.
AU - Eecloo, Kim
AU - Faes, Kristof
AU - Pollock, Kristian
AU - Seymour, Jane
AU - Caswell, Glenys
AU - Bramley, Louise
AU - Payne, Sheila
AU - Dunleavy, Lesley
AU - Sowerby, Eleanor
AU - Bulli, Francesco
AU - Ingravallo, Francesca
AU - Carreras, Giulia
AU - Toccafondi, Alessandro
AU - Gorini, Giuseppe
AU - Lunder, Urška
AU - Červ, Branka
AU - Simonič, Anja
AU - Mimić, Alenka
AU - Kodba-Čeh, Hana
AU - Ozbič, Polona
AU - Groenvold, Mogens
AU - Arnfeldt, Caroline
AU - Thit Johnsen, Anna
N1 - Funding Information:
The project is funded by the 7th Framework Programme for Research and Technological Development (FP7) (Proposal No.
Publisher Copyright:
© 2021, The Author(s).
PY - 2021/1/9
Y1 - 2021/1/9
N2 - Background: Missing data are common in end-of-life care studies, but there is still relatively little exploration of which is the best method to deal with them, and, in particular, if the missing at random (MAR) assumption is valid or missing not at random (MNAR) mechanisms should be assumed. In this paper we investigated this issue through a sensitivity analysis within the ACTION study, a multicenter cluster randomized controlled trial testing advance care planning in patients with advanced lung or colorectal cancer. Methods: Multiple imputation procedures under MAR and MNAR assumptions were implemented. Possible violation of the MAR assumption was addressed with reference to variables measuring quality of life and symptoms. The MNAR model assumed that patients with worse health were more likely to have missing questionnaires, making a distinction between single missing items, which were assumed to satisfy the MAR assumption, and missing values due to completely missing questionnaire for which a MNAR mechanism was hypothesized. We explored the sensitivity to possible departures from MAR on gender differences between key indicators and on simple correlations. Results: Up to 39% of follow-up data were missing. Results under MAR reflected that missingness was related to poorer health status. Correlations between variables, although very small, changed according to the imputation method, as well as the differences in scores by gender, indicating a certain sensitivity of the results to the violation of the MAR assumption. Conclusions: The findings confirmed the importance of undertaking this kind of analysis in end-of-life care studies.
AB - Background: Missing data are common in end-of-life care studies, but there is still relatively little exploration of which is the best method to deal with them, and, in particular, if the missing at random (MAR) assumption is valid or missing not at random (MNAR) mechanisms should be assumed. In this paper we investigated this issue through a sensitivity analysis within the ACTION study, a multicenter cluster randomized controlled trial testing advance care planning in patients with advanced lung or colorectal cancer. Methods: Multiple imputation procedures under MAR and MNAR assumptions were implemented. Possible violation of the MAR assumption was addressed with reference to variables measuring quality of life and symptoms. The MNAR model assumed that patients with worse health were more likely to have missing questionnaires, making a distinction between single missing items, which were assumed to satisfy the MAR assumption, and missing values due to completely missing questionnaire for which a MNAR mechanism was hypothesized. We explored the sensitivity to possible departures from MAR on gender differences between key indicators and on simple correlations. Results: Up to 39% of follow-up data were missing. Results under MAR reflected that missingness was related to poorer health status. Correlations between variables, although very small, changed according to the imputation method, as well as the differences in scores by gender, indicating a certain sensitivity of the results to the violation of the MAR assumption. Conclusions: The findings confirmed the importance of undertaking this kind of analysis in end-of-life care studies.
KW - Humans
KW - Models, Statistical
KW - Quality of Life
KW - Research Design
KW - Terminal Care
UR - http://www.scopus.com/inward/record.url?scp=85098940209&partnerID=8YFLogxK
U2 - 10.1186/s12874-020-01180-y
DO - 10.1186/s12874-020-01180-y
M3 - Article
C2 - 33422019
AN - SCOPUS:85098940209
SN - 1471-2288
VL - 21
SP - 1
EP - 12
JO - BMC Medical Research Methodology
JF - BMC Medical Research Methodology
IS - 1
M1 - 13
ER -