Causal Inference with Misclassified Confounder and Missing Data in the Surrogates

dc.contributor.advisorShen, Hua
dc.contributor.advisorLi, Haocheng
dc.contributor.authorFan, Zheng
dc.contributor.committeememberWallace, Michael
dc.contributor.committeememberde Leon, Alexander R.
dc.date2019-11
dc.date.accessioned2019-07-10T14:38:02Z
dc.date.available2019-07-10T14:38:02Z
dc.date.issued2019-07-05
dc.description.abstractThe causal inference pertains to statistical analyses that researchers evaluate causal effect based on precisely measured data. In an observational study interest often lies in estimating the causal effects which are more naturally interfered by potential confounding factors. However, some confounding variables may be measured with error or classified into an incorrect group or category. It could occur due to the difficulty of tracking a long-term average quantity, unavoidable recall bias in answering a questionnaire, unwillingness of answering sensitive questions, unaffordability of precise measurements, etc. We first investigate the consequences of naively ignoring the misclassification issue in confounding variables on the estimation of average treatment effect (ATE). We then develop an EM algorithm through the latent variable model for parameter estimation and subsequent removal of the estimation bias of ATE in the absence of validation data set. Moreover, we adapt the proposed method to address the additional complication when some surrogates are only partially observed. Variance estimation of ATE is obtained through bootstrap method. Simulation studies are reported to assess the performances of the proposed methods with both continuous and discrete outcome variables. The estimation methods we examined include outcome regression, G-computation, propensity score (PS) matching, PS stratification, inverse probability weighting (IPW) and augmented inverse probability weighting (AIPW). Lastly, we analyze a breast cancer data to illustrate the proposed methods. Discussion and future work are outlined in the end.en_US
dc.identifier.citationFan, Z. (2019). Causal Inference with Misclassified Confounder and Missing Data in the Surrogates (Master's thesis, University of Calgary, Calgary, Canada). Retrieved from https://prism.ucalgary.ca.en_US
dc.identifier.doihttp://dx.doi.org/10.11575/PRISM/36719
dc.identifier.urihttp://hdl.handle.net/1880/110604
dc.language.isoengen_US
dc.publisher.facultyScienceen_US
dc.publisher.institutionUniversity of Calgaryen
dc.rightsUniversity of Calgary graduate students retain copyright ownership and moral rights for their thesis. You may use this material in any way that is permitted by the Copyright Act or through licensing that has been assigned to the document. For uses that are not allowable under copyright legislation or licensing, you are required to seek permission.en_US
dc.subjectCausal Inferenceen_US
dc.subjectMIsclassificationen_US
dc.subject.classificationStatisticsen_US
dc.titleCausal Inference with Misclassified Confounder and Missing Data in the Surrogatesen_US
dc.typemaster thesisen_US
thesis.degree.disciplineMathematics & Statisticsen_US
thesis.degree.grantorUniversity of Calgaryen_US
thesis.degree.nameMaster of Science (MSc)en_US
ucalgary.item.requestcopytrueen_US
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