Browsing by Subject "Longitudinal data"
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Item Open Access Bayesian Modeling Using Latent Structures(2012) Wang, XiaojingThis dissertation is devoted to modeling complex data from the
Bayesian perspective via constructing priors with latent structures.
There are three major contexts in which this is done -- strategies for
the analysis of dynamic longitudinal data, estimating
shape-constrained functions, and identifying subgroups. The
methodology is illustrated in three different
interdisciplinary contexts: (1) adaptive measurement testing in
education; (2) emulation of computer models for vehicle crashworthiness; and (3) subgroup analyses based on biomarkers.
Chapter 1 presents an overview of the utilized latent structured
priors and an overview of the remainder of the thesis. Chapter 2 is
motivated by the problem of analyzing dichotomous longitudinal data
observed at variable and irregular time points for adaptive
measurement testing in education. One of its main contributions lies
in developing a new class of Dynamic Item Response (DIR) models via
specifying a novel dynamic structure on the prior of the latent
trait. The Bayesian inference for DIR models is undertaken, which
permits borrowing strength from different individuals, allows the
retrospective analysis of an individual's changing ability, and
allows for online prediction of one's ability changes. Proof of
posterior propriety is presented, ensuring that the objective
Bayesian analysis is rigorous.
Chapter 3 deals with nonparametric function estimation under
shape constraints, such as monotonicity, convexity or concavity. A
motivating illustration is to generate an emulator to approximate a computer
model for vehicle crashworthiness. Although Gaussian processes are
very flexible and widely used in function estimation, they are not
naturally amenable to incorporation of such constraints. Gaussian
processes with the squared exponential correlation function have the
interesting property that their derivative processes are also
Gaussian processes and are jointly Gaussian processes with the
original Gaussian process. This allows one to impose shape constraints
through the derivative process. Two alternative ways of incorporating derivative
information into Gaussian processes priors are proposed, with one
focusing on scenarios (important in emulation of computer
models) in which the function may have flat regions.
Chapter 4 introduces a Bayesian method to control for multiplicity
in subgroup analyses through tree-based models that limit the
subgroups under consideration to those that are a priori plausible.
Once the prior modeling of the tree is accomplished, each tree will
yield a statistical model; Bayesian model selection analyses then
complete the statistical computation for any quantity of interest,
resulting in multiplicity-controlled inferences. This research is
motivated by a problem of biomarker and subgroup identification to
develop tailored therapeutics. Chapter 5 presents conclusions and
some directions for future research.
Item Open Access Dynamics of biomarkers in relation to aging and mortality.(Mech Ageing Dev, 2016-06) Arbeev, Konstantin G; Ukraintseva, Svetlana V; Yashin, Anatoliy IContemporary longitudinal studies collect repeated measurements of biomarkers allowing one to analyze their dynamics in relation to mortality, morbidity, or other health-related outcomes. Rich and diverse data collected in such studies provide opportunities to investigate how various socio-economic, demographic, behavioral and other variables can interact with biological and genetic factors to produce differential rates of aging in individuals. In this paper, we review some recent publications investigating dynamics of biomarkers in relation to mortality, which use single biomarkers as well as cumulative measures combining information from multiple biomarkers. We also discuss the analytical approach, the stochastic process models, which conceptualizes several aging-related mechanisms in the structure of the model and allows evaluating "hidden" characteristics of aging-related changes indirectly from available longitudinal data on biomarkers and follow-up on mortality or onset of diseases taking into account other relevant factors (both genetic and non-genetic). We also discuss an extension of the approach, which considers ranges of "optimal values" of biomarkers rather than a single optimal value as in the original model. We discuss practical applications of the approach to single biomarkers and cumulative measures highlighting that the potential of applications to cumulative measures is still largely underused.Item Open Access How the effects of aging and stresses of life are integrated in mortality rates: insights for genetic studies of human health and longevity.(Biogerontology, 2016-02) Yashin, Anatoliy I; Arbeev, Konstantin G; Arbeeva, Liubov S; Wu, Deqing; Akushevich, Igor; Kovtun, Mikhail; Yashkin, Arseniy; Kulminski, Alexander; Culminskaya, Irina; Stallard, Eric; Li, Miaozhu; Ukraintseva, Svetlana VIncreasing proportions of elderly individuals in developed countries combined with substantial increases in related medical expenditures make the improvement of the health of the elderly a high priority today. If the process of aging by individuals is a major cause of age related health declines then postponing aging could be an efficient strategy for improving the health of the elderly. Implementing this strategy requires a better understanding of genetic and non-genetic connections among aging, health, and longevity. We review progress and problems in research areas whose development may contribute to analyses of such connections. These include genetic studies of human aging and longevity, the heterogeneity of populations with respect to their susceptibility to disease and death, forces that shape age patterns of human mortality, secular trends in mortality decline, and integrative mortality modeling using longitudinal data. The dynamic involvement of genetic factors in (i) morbidity/mortality risks, (ii) responses to stresses of life, (iii) multi-morbidities of many elderly individuals, (iv) trade-offs for diseases, (v) genetic heterogeneity, and (vi) other relevant aging-related health declines, underscores the need for a comprehensive, integrated approach to analyze the genetic connections for all of the above aspects of aging-related changes. The dynamic relationships among aging, health, and longevity traits would be better understood if one linked several research fields within one conceptual framework that allowed for efficient analyses of available longitudinal data using the wealth of available knowledge about aging, health, and longevity already accumulated in the research field.Item Open Access Statistical Analysis of Response Distribution for Dependent Data via Joint Quantile Regression(2021) Chen, XuLinear quantile regression is a powerful tool to investigate how predictors may affect a response heterogeneously across different quantile levels. Unfortunately, existing approaches find it extremely difficult to adjust for any dependency between observation units, largely because such methods are not based upon a fully generative model of the data. In this dissertation, we address this difficulty for analyzing spatial point-referenced data and hierarchical data. Several models are introduced by generalizing the joint quantile regression model of Yang and Tokdar (2017) and characterizing different dependency structures via a copula model on the underlying quantile levels of the observation units. A Bayesian semiparametric approach is introduced to perform inference of model parameters and carry out prediction. Multiple copula families are discussed for modeling response data with tail dependence and/or tail asymmetry. An effective model comparison criterion is provided for selecting between models with different combinations of sets of predictors, marginal base distributions and copula models.
Extensive simulation studies and real applications are presented to illustrate substantial gains of the proposed models in inference quality, prediction accuracy and uncertainty quantification over existing alternatives. Through case studies, we highlight that the proposed models admit great interpretability and are competent in offering insightful new discoveries of response-predictor relationship at non-central parts of the response distribution. The effectiveness of the proposed model comparison criteria is verified with both empirical and theoretical evidence.
Item Open Access stpm: an R package for stochastic process model.(BMC Bioinformatics, 2017-02-23) Zhbannikov, Ilya Y; Arbeev, Konstantin; Akushevich, Igor; Stallard, Eric; Yashin, Anatoliy IBACKGROUND: The Stochastic Process Model (SPM) represents a general framework for modeling the joint evolution of repeatedly measured variables and time-to-event outcomes observed in longitudinal studies, i.e., SPM relates the stochastic dynamics of variables (e.g., physiological or biological measures) with the probabilities of end points (e.g., death or system failure). SPM is applicable for analyses of longitudinal data in many research areas; however, there are no publicly available software tools that implement this methodology. RESULTS: We developed an R package stpm for the SPM-methodology. The package estimates several versions of SPM currently available in the literature including discrete- and continuous-time multidimensional models and a one-dimensional model with time-dependent parameters. Also, the package provides tools for simulation and projection of individual trajectories and hazard functions. CONCLUSION: In this paper, we present the first software implementation of the SPM-methodology by providing an R package stpm, which was verified through extensive simulation and validation studies. Future work includes further improvements of the model. Clinical and academic researchers will benefit from using the presented model and software. The R package stpm is available as open source software from the following links: https://cran.r-project.org/package=stpm (stable version) or https://github.com/izhbannikov/spm (developer version).