Gao, SujuanLiu, HaiWang, ChenkunYu, ZhangshengCallahan, Christopher M.2016-01-072016-01-072015-05https://hdl.handle.net/1805/7938http://dx.doi.org/10.7912/C2/2783Indiana University-Purdue University Indianapolis (IUPUI)With the availability of electronic medical records, medication dispensing data offers an unprecedented opportunity for researchers to explore complex relationships among longterm medication use, disease progression and potential side-effects in large patient populations. However, these data also pose challenges to existing statistical models because both medication exposure status and its intensity vary over time. This dissertation focused on flexible models to investigate the association between time-varying exposures and different types of outcomes. First, a penalized functional regression model was developed to estimate the effect of time-varying exposures on multivariate longitudinal outcomes. Second, for survival outcomes, a regression spline based model was proposed in the Cox proportional hazards (PH) framework to compare disease risk among different types of time-varying exposures. Finally, a penalized spline based Cox PH model with functional interaction terms was developed to estimate interaction effect between multiple medication classes. Data from a primary care patient cohort are used to illustrate the proposed approaches in determining the association between antidepressant use and various outcomes.en-USMedical records -- Data processingMedicine -- Research -- Statistical methodsMedicine -- Data processingErrors-in-variables modelsRegression analysisFlexible models of time-varying exposuresThesis10.7912/C2GW2H