36 The specific comorbidities were derived from self-report and/o

36 The specific comorbidities were derived from self-report and/or admission conditions listed in the hospital chart. Descriptive statistics were

used to characterise the cohort and univariate analyses were performed. Although participants were asked to rate the impact of diabetes on routine activities, the mild, moderate and severe categories were collapsed into one category because very few participants reported moderate or severe impact. Participants who did not report having diabetes but had a diagnosis of diabetes in the chart were categorised as having diabetes without impact on their routine activities. Linear mixed modelling was used to examine the pattern of recovery for WOMAC pain and function scores over the four

time points because non-linear equations, as opposed to a linear equation, BIBW2992 concentration provided the best fit for predicting pain and function scores over the 6 months. Linear mixed modeling also allowed available data to be used at each time period, unlike repeated measures analysis, which requires complete datasets over all time periods.19 The linear mixed models included parameters that estimated either pain or function for TKA before surgery, and the rate of change during the recovery. The square of time was also included as an estimate of change in the recovery rate because of the quadratic relationship over time for WOMAC pain and function scores. The model had two levels, which consisted of one level C59 wnt datasheet for the within-individual change over time and the other for between-individual differences in change over time. In the multivariate linear mixed models, variables were selected using both forward selection and backward elimination procedures. Forward selection started with a simple linear mixed model, then considered all of the reasonable one-step-more-complicated models and chose the one with the smallest p-value for the new parameter. This continued until no additional variables

had a significant p-value. Backward elimination started with a complicated model, including all those variables with a p-value < 0.2 in the univariate linear mixed model, and else removed the variable with the largest p-value at each step, as long as that p-value was larger than 0.05. In the final multivariable linear mixed models, all variables with a p-value of less than 0.05 or clinically important variables with a p-value close to 0.05 were kept in the models. Within this model, time squared, diabetes status, baseline WOMAC pain and function scores, depression, kidney disease, MOS social support score, HUI3 score, other weight-bearing joint involvement, age and gender were treated as fixed effects where the fixed effects describe the mean change in the population. A p-value was considered to be statistically significant if less than 0.05 for main level factors and if less than 0.10 for interaction terms.

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