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Dive into the research topics where Kassandra Fronczyk is active.

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Featured researches published by Kassandra Fronczyk.


Journal of the American Statistical Association | 2014

A Bayesian Nonparametric Modeling Framework for Developmental Toxicity Studies

Kassandra Fronczyk; Athanasios Kottas

We develop a Bayesian nonparametric mixture modeling framework for replicated count responses in dose-response settings. We explore this methodology for modeling and risk assessment in developmental toxicity studies, where the primary objective is to determine the relationship between the level of exposure to a toxic chemical and the probability of a physiological or biochemical response, or death. Data from these experiments typically involve features that cannot be captured by standard parametric approaches. To provide flexibility in the functional form of both the response distribution and the probability of positive response, the proposed mixture model is built from a dependent Dirichlet process prior, with the dependence of the mixing distributions governed by the dose level. The methodology is tested with a simulation study, which involves also comparison with semiparametric Bayesian approaches to highlight the practical utility of the dependent Dirichlet process nonparametric mixture model. Further illustration is provided through the analysis of data from two developmental toxicity studies.


Quality Engineering | 2016

Bayesian reliability: Combining information

Alyson G. Wilson; Kassandra Fronczyk

ABSTRACT One of the most powerful features of Bayesian analyses is the ability to combine multiple sources of information in a principled way to perform inference. This feature can be particularly valuable in assessing the reliability of systems where testing is limited. At their most basic, Bayesian methods for reliability develop informative prior distributions using expert judgment or similar systems. Appropriate models allow the incorporation of many other sources of information, including historical data, information from similar systems, and computer models. We introduce the Bayesian approach to reliability using several examples and point to open problems and areas for future work.


Biometrics | 2014

A Bayesian approach to the analysis of quantal bioassay studies using nonparametric mixture models.

Kassandra Fronczyk; Athanasios Kottas

We develop a Bayesian nonparametric mixture modeling framework for quantal bioassay settings. The approach is built upon modeling dose-dependent response distributions. We adopt a structured nonparametric prior mixture model, which induces a monotonicity restriction for the dose-response curve. Particular emphasis is placed on the key risk assessment goal of calibration for the dose level that corresponds to a specified response. The proposed methodology yields flexible inference for the dose-response relationship as well as for other inferential objectives, as illustrated with two data sets from the literature.


Head and Neck-journal for The Sciences and Specialties of The Head and Neck | 2016

Salient body image concerns of patients with cancer undergoing head and neck reconstruction

Irene Teo; Kassandra Fronczyk; Michele Guindani; Marina Vannucci; Sara S. Ulfers; Matthew M. Hanasono; Michelle Cororve Fingeret

Patients with cancer undergoing head and neck reconstruction can experience significant distress from alterations in appearance and bodily functioning. We sought to delineate salient dimensions of body image concerns in this patient population preparing for reconstructive surgery.


Risk Analysis | 2018

A Framework to Understand Extreme Space Weather Event Probability

Seth Jonas; Kassandra Fronczyk; Lucas M. Pratt

An extreme space weather event has the potential to disrupt or damage infrastructure systems and technologies that many societies rely on for economic and social well-being. Space weather events occur regularly, but extreme events are less frequent, with a small number of historical examples over the last 160 years. During the past decade, published works have (1) examined the physical characteristics of the extreme historical events and (2) discussed the probability or return rate of select extreme geomagnetic disturbances, including the 1859 Carrington event. Here we present initial findings on a unified framework approach to visualize space weather event probability, using a Bayesian model average, in the context of historical extreme events. We present disturbance storm time (Dst) probability (a proxy for geomagnetic disturbance intensity) across multiple return periods and discuss parameters of interest to policymakers and planners in the context of past extreme space weather events. We discuss the current state of these analyses, their utility to policymakers and planners, the current limitations when compared to other hazards, and several gaps that need to be filled to enhance space weather risk assessments.


Cancer Informatics | 2015

A Bayesian Nonparametric Approach for Functional Data Classification with Application to Hepatic Tissue Characterization

Kassandra Fronczyk; Michele Guindani; Brian P. Hobbs; Chaan S. Ng; Marina Vannucci

Computed tomography perfusion (CTp) is an emerging functional imaging technology that provides a quantitative assessment of the passage of fluid through blood vessels. Tissue perfusion plays a critical role in oncology due to the proliferation of networks of new blood vessels typical of cancer angiogenesis, which triggers modifications to the vasculature of the surrounding host tissue. In this article, we consider a Bayesian semiparametric model for the analysis of functional data. This method is applied to a study of four interdependent hepatic perfusion CT characteristics that were acquired under the administration of contrast using a sequence of repeated scans over a period of 590 seconds. More specifically, our modeling framework facilitates borrowing of information across patients and tissues. Additionally, the approach enables flexible estimation of temporal correlation structures exhibited by mappings of the correlated perfusion biomarkers and thus accounts for the heteroskedasticity typically observed in those measurements, by incorporating change-points in the covariance estimation. This method is applied to measurements obtained from regions of liver surrounding malignant and benign tissues, for each perfusion biomarker. We demonstrate how to cluster the liver regions on the basis of their CTp profiles, which can be used in a prediction context to classify regions of interest provided by future patients, and thereby assist in discriminating malignant from healthy tissue regions in diagnostic settings.


Journal of Statistical Planning and Inference | 2015

A Bayesian nonparametric approach for the analysis of multiple categorical item responses

Andrew E. Waters; Kassandra Fronczyk; Michele Guindani; Richard G. Baraniuk; Marina Vannucci


Journal of Agricultural Biological and Environmental Statistics | 2017

Risk Assessment for Toxicity Experiments with Discrete and Continuous Outcomes: A Bayesian Nonparametric Approach

Kassandra Fronczyk; Athanasios Kottas


Quality and Reliability Engineering International | 2018

Bayesian modeling and test planning for multiphase reliability assessment: Bayesian Reliability Modeling and Test Planning

James F. Gilman; Kassandra Fronczyk; Alyson G. Wilson


Archive | 2017

Recommendation for a Dual-Energy X-Ray Decomposition Method for Explosives Material Characterization

Harry E. Martz; Larry McMichael; Kyle M. Champley; Kassandra Fronczyk; Ronald Krauss; Robert Klueg; Joseph Palma; John Tatarowicz; Brian Skradzinski

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Alyson G. Wilson

North Carolina State University

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Annalisa Palange

Houston Methodist Hospital

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Brian P. Hobbs

University of Texas MD Anderson Cancer Center

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Chaan S. Ng

University of Texas MD Anderson Cancer Center

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Harry E. Martz

Lawrence Livermore National Laboratory

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Irene Teo

University of Texas MD Anderson Cancer Center

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