TY - JOUR
T1 - Heterogeneity and event dependence in the analysis of sickness absence
AU - Torá-Rocamora, Isabel
AU - Gimeno, David
AU - Delclos, George
AU - Benavides, Fernando G.
AU - Manzanera, Rafael
AU - Jardí, Josefina
AU - Alberti, Constança
AU - Yasui, Yutaka
AU - Martínez, José Miguel
PY - 2013
Y1 - 2013
N2 - Background: Sickness absence (SA) is an important social, economic and public health issue. Identifying and understanding the determinants, whether biological, regulatory or, health services-related, of variability in SA duration is essential for better management of SA. The conditional frailty model (CFM) is useful when repeated SA events occur within the same individual, as it allows simultaneous analysis of event dependence and heterogeneity due to unknown, unmeasured, or unmeasurable factors. However, its use may encounter computational limitations when applied to very large data sets, as may frequently occur in the analysis of SA duration. Methods. To overcome the computational issue, we propose a Poisson-based conditional frailty model (CFPM) for repeated SA events that accounts for both event dependence and heterogeneity. To demonstrate the usefulness of the model proposed in the SA duration context, we used data from all non-work-related SA episodes that occurred in Catalonia (Spain) in 2007, initiated by either a diagnosis of neoplasm or mental and behavioral disorders. Results: As expected, the CFPM results were very similar to those of the CFM for both diagnosis groups. The CPU time for the CFPM was substantially shorter than the CFM. Conclusions: The CFPM is an suitable alternative to the CFM in survival analysis with recurrent events, especially with large databases.
AB - Background: Sickness absence (SA) is an important social, economic and public health issue. Identifying and understanding the determinants, whether biological, regulatory or, health services-related, of variability in SA duration is essential for better management of SA. The conditional frailty model (CFM) is useful when repeated SA events occur within the same individual, as it allows simultaneous analysis of event dependence and heterogeneity due to unknown, unmeasured, or unmeasurable factors. However, its use may encounter computational limitations when applied to very large data sets, as may frequently occur in the analysis of SA duration. Methods. To overcome the computational issue, we propose a Poisson-based conditional frailty model (CFPM) for repeated SA events that accounts for both event dependence and heterogeneity. To demonstrate the usefulness of the model proposed in the SA duration context, we used data from all non-work-related SA episodes that occurred in Catalonia (Spain) in 2007, initiated by either a diagnosis of neoplasm or mental and behavioral disorders. Results: As expected, the CFPM results were very similar to those of the CFM for both diagnosis groups. The CPU time for the CFPM was substantially shorter than the CFM. Conclusions: The CFPM is an suitable alternative to the CFM in survival analysis with recurrent events, especially with large databases.
KW - Conditional frailty model
KW - Mental disorders
KW - Neoplasms
KW - Poisson regression
KW - Sickness absence
KW - Survival analysis
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U2 - 10.1186/1471-2288-13-114
DO - 10.1186/1471-2288-13-114
M3 - Article
C2 - 24040880
AN - SCOPUS:84883765631
SN - 1471-2288
VL - 13
JO - BMC Medical Research Methodology
JF - BMC Medical Research Methodology
IS - 1
M1 - 114
ER -