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Mastherteshis analysis
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### Model selection | |
Vorlagestudie: | |
* Variables with P < 0.20 from the univariate analyses were selected as candidates for inclusion in the multivariate model and were | |
retained in the final model if they were significant at P < 0.10 or if they altered any of the other estimates (i.e., odds ratio) by more than 10% | |
* Or from my proposal: Thereby, the predictors are selected based on previous research (Field, 2012). From there, a forward modeling strategy will be used to identify variables with a p-value of under 0,25 from the univariable t-test and included in the multivariable model. They will be included in the preliminary main effects model if they achieve the threshold (p < 0,05) in the partial likelihood ratio test of the nested model or if they change any variables coefficient (π₯π½Μ > 20%) substantially (Behnke, 2014 pp. 105-111; Hosmer, 2013, pp. 90-94). | |
* Workflow: Nur variablen mit p<0.25 inkludieren aus "columne K des unadjusted model/univariate model", anschliessend "(Rao-Scott+F) LRT" durchfΓΌhren und schauen ob p<0.05 oder Variablenkoeffizient sich um: π₯π½Μ > 20%, verΓ€ndert. | |
* For Man: | |
```{r} | |
# man | |
# variable list of variables with p-value of under 0,25: | |
# 13: education, language, nationality, ADL, FL, depression, bmi_cut, age_cut, (age), diabetes, osteoarthritis, urinary_incontinence, osteoporosis | |
# Forward selection strategy: Keep variable if P < 0.05 in the partial likelihood ratio test of the nested model or if they change any variables coefficient π₯π½Μ > 20% | |
# education model | |
fit_fs_education_m <- svyglm(I(fall=="fall last 12 months") ~ education, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# education + language model | |
fit_fs_education_language_m <- svyglm(I(fall=="fall last 12 months") ~ education + language, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_m, fit_fs_education_language_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_m, fit_fs_education_language_m, exp =TRUE) | |
# jtools::plot_summs(fit_fs_education_m, fit_fs_education_language_m) # graphic | |
########### exclude due to 1 & 2 ############ | |
# education + nationality model | |
fit_fs_education_nationality_m <- svyglm(I(fall=="fall last 12 months") ~ education + nationality, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_m, fit_fs_education_nationality_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_m, fit_fs_education_nationality_m, exp = TRUE) | |
# jtools::plot_summs(fit_fs_education_m, fit_fs_education_nationality_m) # graphic | |
########### include due to 1 not 2 ############ | |
# education + nationality + ADL model | |
fit_fs_education_nationality_ADL_m <- svyglm(I(fall=="fall last 12 months")~education + nationality + ADL, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_nationality_m, fit_fs_education_nationality_ADL_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_nationality_m, fit_fs_education_nationality_ADL_m, exp = TRUE) | |
# jtools::plot_summs(fit_fs_education_nationality_m, fit_fs_education_nationality_ADL_m) # graphic | |
########### include due to 1 not 2 ############ | |
# education + nationality + ADL + FL model | |
fit_fs_education_nationality_ADL_FL_m <- svyglm(I(fall=="fall last 12 months")~education + nationality + ADL + FL, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_nationality_ADL_m, fit_fs_education_nationality_ADL_FL_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_nationality_ADL_m, fit_fs_education_nationality_ADL_FL_m, exp = TRUE) | |
# jtools::plot_summs(fit_fs_education_nationality_ADL_m, fit_fs_education_nationality_ADL_FL_m) # graphic | |
########### include due to 2 not 1 ############ | |
# education + nationality + ADL + FL + depression model | |
fit_fs_education_nationality_ADL_FL_depression_m <- svyglm(I(fall=="fall last 12 months")~education + nationality + ADL + FL + depression, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_nationality_ADL_FL_m, fit_fs_education_nationality_ADL_FL_depression_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_nationality_ADL_FL_m, fit_fs_education_nationality_ADL_FL_depression_m, exp = TRUE) | |
# jtools::plot_summs(fit_fs_education_nationality_ADL_FL_m, fit_fs_education_nationality_ADL_FL_depression_m) # graphic | |
########### include due to 1 & 2 ############ | |
# education + nationality + ADL + FL + depression + bmi_cut model | |
fit_fs_education_nationality_ADL_FL_depression_bmi_cut_m <- svyglm(I(fall=="fall last 12 months")~education + nationality + ADL + FL + depression + bmi_cut, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_nationality_ADL_FL_depression_m, fit_fs_education_nationality_ADL_FL_depression_bmi_cut_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_nationality_ADL_FL_depression_m, fit_fs_education_nationality_ADL_FL_depression_bmi_cut_m, exp = TRUE) | |
# jtools::plot_summs(fit_fs_education_nationality_ADL_FL_depression_m, fit_fs_education_nationality_ADL_FL_depression_bmi_cut_m) # graphic | |
########### exclude due to 1 & 2 ############ | |
# education + nationality + ADL + FL + depression + age_cut | |
fit_fs_education_nationality_ADL_FL_depression_age_cut_m <- svyglm(I(fall=="fall last 12 months")~education + nationality + ADL + FL + depression + age_cut, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_nationality_ADL_FL_depression_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_nationality_ADL_FL_depression_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_m, exp = TRUE) | |
# jtools::plot_summs(fit_fs_education_nationality_ADL_FL_depression_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_m) # graphic | |
########### exclude due to 1 & 2 ############ | |
# We retained age (age_cut) in the model regardless of statistical significance because it was deemed to be an important confounder | |
# education + nationality + ADL + FL + depression + age_cut + diabetes | |
fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_m <- svyglm(I(fall=="fall last 12 months")~education + nationality + ADL + FL + depression + age_cut + diabetes, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_nationality_ADL_FL_depression_age_cut_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_nationality_ADL_FL_depression_age_cut_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_m, exp = TRUE) | |
# jtools::plot_summs(fit_fs_education_nationality_ADL_FL_depression_age_cut_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_m) # graphic | |
########### include due to 1 & 2 ############ | |
# education + nationality + ADL + FL + depression + age_cut + diabetes + osteoarthritis | |
fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_m <- svyglm(I(fall=="fall last 12 months")~education + nationality + ADL + FL + depression + age_cut + diabetes + osteoarthritis, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_m, exp = TRUE) | |
# jtools::plot_summs(fit_fs_education_nationality_ADL_FL_depression_age_cut_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_m) # graphic | |
########### include due to 1 not 2 ############ | |
# education + nationality + ADL + FL + depression + age_cut + diabetes + osteoarthritis + urinary_incontinence | |
fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_urinary_incontinence_m <- svyglm(I(fall=="fall last 12 months")~education + nationality + ADL + FL + depression + age_cut + diabetes + osteoarthritis + urinary_incontinence, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_urinary_incontinence_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_urinary_incontinence_m, exp = TRUE) | |
# jtools::plot_summs(fit_fs_education_nationality_ADL_FL_depression_age_cut_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_m) # graphic | |
########### include due to 1 & 2 ############ | |
# education + nationality + ADL + FL + depression + age_cut + diabetes + osteoarthritis + urinary_incontinence + osteoporosis | |
fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_urinary_incontinence_osteoporosis_m <- svyglm(I(fall=="fall last 12 months")~education + nationality + ADL + FL + depression + age_cut + diabetes + osteoarthritis + urinary_incontinence + osteoporosis, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
# 1) model comparison and LR-test p < 0.05 | |
anova(fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_urinary_incontinence_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_urinary_incontinence_osteoporosis_m) | |
# 2) Coefficent comparison π₯π½Μ > 20% | |
export_summs(fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_urinary_incontinence_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_osteoarthritis_urinary_incontinence_osteoporosis_m, exp = TRUE) | |
# jtools::plot_summs(fit_fs_education_nationality_ADL_FL_depression_age_cut_m, fit_fs_education_nationality_ADL_FL_depression_age_cut_diabetes_m) # graphic | |
########### include due to 1 & 2 ############ | |
# final model man: | |
final_model_m<- svyglm(I(fall=="fall last 12 months") ~ education + nationality + ADL + FL + depression + age_cut + diabetes + osteoarthritis + urinary_incontinence + osteoporosis, | |
design = wdat_17_m, | |
family = quasibinomial(logit)) | |
final_model_ma<- jtools::summ(final_model_m,exp = TRUE, vifs = TRUE, confint = TRUE, digits = 6) | |
final_model_ma | |
# woman | |
# variable list of variables with p-value of under 0,25: | |
# 13: language, smoke, ADL, FL, depression, bmi_cut, age_cut, SHS, diabetes, osteoarthritis, stroke, urinary_incontinence, activity | |
``` |
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## Results | |
* flow chart Inclusion exclusion | |
* 14: | |
* 14 (a). Give characteristics of study participants (e.g., | |
demographic, clinical, social) and information on | |
exposures and potential confounders. | |
* Table. Characteristics | |
* 14 (b). Indicate the number of participants with missing | |
data for each variable of interest. | |
* Cross-sectional study: Report numbers of outcome events | |
or summary measures./ Table. Prevalence of Current Asthma and Diagnosed Hay Fever | |
by Average Alternaria alternata Antigen Level in the Household |
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