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Estimating failure probabilities and testing for treatment effects in the presence of competing risksTordoff, Kevin P. 10 December 2007 (has links)
No description available.
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Semiparametric estimation in hazards models with censoring indicators missing at randomLiu, Chunling, 劉春玲 January 2008 (has links)
published_or_final_version / Statistics and Actuarial Science / Doctoral / Doctor of Philosophy
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Ambitious Career-Seekers: An Analysis of Career Decisions and Duration in Latin AmericaBotero, Felipe January 2008 (has links)
Most everybody is ambitious about their own careers. Most of us aspire to be promoted to positions with greater responsibilities and benefits and have a clear sense of what we mean by a "successful career." Politicians are no different, and there is no apparent reason why they should be. However, unlike what happens in other occupations, politicians are forced periodically---i.e., at the end of each term they serve---to make a decision about what to do with their careers. This decision is made under the uncertainty about their ability to continue their careers according to their plans. The possibility of electoral defeat spares no one in spite of all that politicians do to avoid being voted out of office. Thus, at the end of each term, politicians must ponder what they want to do with their careers or where they want to go next. Politicians inform their decisions with their beliefs about their performance in office---or their performance as challengers---and their assessments of the difficulty of winning office in the following election. This raises the question about why some politicians decide to stay in office. Concretely, why do some politicians decide to get reelected while others seek election in "higher" or even "lower" offices? And also, why are some politicians more successful in having lasting careers? I focus on the career decisions that politicians make routinely and in the duration of their careers by considering individual and district factors that explain why politicians decide to run for particular offices and the length of their tenures.
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Essays on Health and RetirementBasu Roy, Subhasree 16 August 2014 (has links)
The essays in this dissertation explore issues related to health and retirement of older Americans, using longitudinal data on older Americans from ten waves of the Health and Retirement Study (1992-2010).
The first essay explores the effect of both subjective and relatively more objective physical and mental health conditions on the probability of exit from full-time employment. Eight health indices (factors) are created from a wide range of health measures by principal component analysis. The effect of these health factors on the time until exit from full-time employment is empirically examined in a proportional hazard model. Single and competing risk specifications are estimated that allow for multiple spells of full-time employment and control for unobserved heterogeneity. The main results suggest that increase in functional limitation factor makes an individual more likely to exit via any route in general and the complete retirement route in particular. For mental health problems, increase in the depression factor increases the likelihood of exit from full-time employment via the complete retirement, part-time work and unemployment routes. While increase in cognitive disorders factor has no significant effect on the likelihood of exit via complete retirement, but increases the likelihood of exit via the disability route. These results have implications for public policies targeted towards retaining older workers within the labor market.
The second essay examines the effect of retirement on post retirement physical and mental health and the extent to which the effects differ across these different health outcomes. The inherent issue of reverse causality between health and retirement that leads to endogeneity is addressed by using multiple sample stratification and instrumental variable estimation strategies. The stratified samples include individuals who are physically and mentally healthy prior to their retirement so that pure effect of retirement on post retirement health may be found. Five different instruments for complete retirement are also used to deal with endogeneity. The sample stratification results unanimously indicate that complete retirement has adverse effect on post retirement physical and mental health. While the instrumental variables approach results are mixed and are based on the choice of instrument for complete retirement.
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Semiparametric estimation in hazards models with censoring indicators missing at randomLiu, Chunling, January 2008 (has links)
Thesis (Ph. D.)--University of Hong Kong, 2008. / Includes bibliographical references (leaf 103-113) Also available in print.
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Estimating failure probabilities and testing for treatment effects in the presence of competing risksTordoff, Kevin P., January 2007 (has links)
Thesis (Ph. D.)--Ohio State University, 2007. / Title from first page of PDF file. Includes bibliographical references (p. 438-442).
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Nonparametric estimation for current status data with competing risks /Maathuis, Marloes Henriëtte, January 2006 (has links)
Thesis (Ph. D.)--University of Washington, 2006. / Vita. Includes bibliographical references (p. 257-261).
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The Effects of Personal and Family History of Cancer on the Development of Dementia in Japanese Americans: The KAME ProjectSlotnick, Adam Lee 30 June 2016 (has links)
An increasing number of studies have shown an inverse association between a personal history of cancer (PHC) and dementia/Alzheimer’s disease (AD), both in those using dementia/AD as the outcome or cancer as the outcome. This is the first study to examine this potential association in Japanese Americans; and to examine family history of cancer and its association with incident dementia. Also, the association between these two diseases in the parents of participants were analyzed.
The Kame Project, conducted from 1992 through 2001 in King County, Washington was a population-based, prospective cohort study of older Japanese Americans. Conversion to incident dementia was observed throughout the follow-up period and diagnosed by standard criteria in a consensus conference.
A PHC did not have a significant association with the development of dementia. Differences between this study and those conducted previously showing an inverse association between cancer and dementia or AD included a lower age of the present cohort, race/ethnicity, focus on all-cause dementia vs. AD and adjustment for the competing risk of death. A family history of cancer was inversely associated with the development of dementia. There were statistically significant trends for a dose-response association between the numbers of affected relatives with cancer and risk for dementia. The findings are most likely explained by an inverse genetic association between cancer and dementia. Older Japanese Americans (the parents) with a history of cancer were nearly 2.5 times less likely to have a history of dementia than those without a cancer history.
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Statistical Methods for Dealing with Outcome Misclassification in Studies with Competing Risks Survival OutcomesMpofu, Philani Brian 02 1900 (has links)
Indiana University-Purdue University Indianapolis (IUPUI) / In studies with competing risks outcomes, misidentifying the event-type responsible
for the observed failure is, by definition, an act of misclassification. Several authors have
established that such misclassification can bias competing risks statistical analyses, and have
proposed statistical remedies to aid correct modeling. Generally, these rely on adjusting
the estimation process using information about outcome misclassification, but invariably
assume that outcome misclassification is non-differential among study subjects regardless
of their individual characteristics. In addition, current methods tend to adjust for the
misclassification within a semi-parametric framework of modeling competing risks data.
Building on the existing literature, in this dissertation, we explore the parametric modeling
of competing risks data in the presence of outcome misclassification, be it differential or
non-differential. Specifically, we develop parametric pseudo-likelihood-based approaches
for modeling cause-specific hazards while adjusting for misclassification information that is
obtained either through data internal or external to the current study (respectively, internal
or external-validation sampling). Data from either type of validation sampling are used
to model predictive values or misclassification probabilities, which, in turn, are used to
adjust the cause-specific hazard models. We show that the resulting pseudo-likelihood
estimates are consistent and asymptotically normal, and verify these theoretical properties
using simulation studies. Lastly, we illustrate the proposed methods using data from a
study involving people living with HIV/AIDS (PLWH)in the East-African consortium of the International Epidemiologic Databases for the Evaluation of HIV/AIDS (IeDEA EA). In
this example, death is frequently misclassified as disengagement from care as many deaths
go unreported to health facilities caring for these patients. In this application, we model
the cause-specific hazards of death and disengagement from care among PLWH after they
initiate anti-retroviral treatment, while adjusting for death misclassification. / 2021-03-10
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Variable Selection in Competing Risks Using the L1-Penalized Cox ModelKong, XiangRong 22 September 2008 (has links)
One situation in survival analysis is that the failure of an individual can happen because of one of multiple distinct causes. Survival data generated in this scenario are commonly referred to as competing risks data. One of the major tasks, when examining survival data, is to assess the dependence of survival time on explanatory variables. In competing risks, as with ordinary univariate survival data, there may be explanatory variables associated with the risks raised from the different causes being studied. The same variable might have different degrees of influence on the risks due to different causes. Given a set of explanatory variables, it is of interest to identify the subset of variables that are significantly associated with the risk corresponding to each failure cause. In this project, we develop a statistical methodology to achieve this purpose, that is, to perform variable selection in the presence of competing risks survival data. Asymptotic properties of the model and empirical simulation results for evaluation of the model performance are provided. One important feature of our method, which is based on the idea of the L1 penalized Cox model, is the ability to perform variable selection in situations where we have high-dimensional explanatory variables, i.e. the number of explanatory variables is larger than the number of observations. The method was applied on a real dataset originated from the National Institutes of Health funded project "Genes related to hepatocellular carcinoma progression in living donor and deceased donor liver transplant'' to identify genes that might be relevant to tumor progression in hepatitis C virus (HCV) infected patients diagnosed with hepatocellular carcinoma (HCC). The gene expression was measured on Affymetrix GeneChip microarrays. Based on the current available 46 samples, 42 genes show very strong association with tumor progression and deserve to be further investigated for their clinical implications in prognosis of progression on patients diagnosed with HCV and HCC.
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