Seminars

MTSU Mathematical Biology

Math Biology Seminar

Spring 2016

Topics Speakers Resources
R0 calculation Dr. Rachel Leander Van Den Driessche R0 calculation

Fall 2015: Uncertainty and Sensitivity Analysis, Model Selection and more

Topics Speakers Resources
Uncertainty and Sensitivity Analysis, Model Selection Drs. Rachel Leander and Zachariah Sinkala
Evaluating mechanisms for the spread of Ebola Wyatt Goff, Samantha Pulido, and Christopher Murphy The 2014 Ebola epidemic is the largest Ebola outbreak on record. Data generated through this epidemic have evidenced an inability of previous models to predict the course of the epidemic. In this research we investigate the potential of basic SEIR models to describe an Ebola epidemic by studying the initial outbreak, in Meliandou, Guinea, which developed with limited external intervention and within a small village of about 500 individuals. Specifically, we compare the accuracy of various SEIR-type models in order to select the most accurate models of transmission and disease-induced responses. Interestingly, we find that, although frequencydependent transmission is standard for modeling Ebola, models with density-dependent transmission are better able to describe the Ebola epidemic in Meliandou. In addition, models that include mortality-induced behavioral changes are more able to describe this epidemic than those that include infection-induced behavioral changes or emigration.ontent 

Spring 2014

Modeling with Ito Stochastic Differential Equations by Edward Allen

MTSU Computational Science (COMS) Program.

Computational Science Seminar

Fall 2015

Faciliated by Dr. Wandi Ding

Dates Speakers Titles and Abstracts
Sep.4 Dr. John Wallin (Department of Physics and Astronomy) Graduate Students Meeting
Sep. 11 Dr. Wandi Ding (Department of Mathematical Sciences) Optimal Control Applied to Biological Problems

Dr. Ding will present 3 case studies: 1) Optimal fishery harvesting of Atlantic Cod; 2) Control of Community-Acquired Methicillin-Resistant Staphylococcus Aureus (MRSA) in Hospitals; 3) Native-Invasive Species Competition (Cottonwood and Salt Cedar).

Sep. 18 Dr. Erin McClelland (Department of Biology) Virulence and Gender Susceptibility in Cryptococcus neoformans

Cryptococcus neoformans is a pathogenic yeast that is responsible for 600,000 deaths/year and nearly 1 million new cases of fungal meningitis, primarily in Sub-Saharan Africa. It the most common secondary infection in AIDS patients and also afflicts other immunocompromised patients, including patients undergoing chemotherapy or organ transplantation. The drugs available to treat C. neoformans are generally toxic and have unpleasant side effects. Thus, many researchers are trying to find new therapeutics to treat patients with C. neoformans. Our lab is interested in factors that are involved in pathogenesis such as specific genes, modulation of NF-kB, gender of the host as well as trying to identify new compounds to treat C. neoformans infections.

Sep. 25 Dr. Yating Hu (Department of Engineering Technology) Wearable sensor-based system for mobile healthcare

Influenced by skyrocketing healthcare costs as a result of the aging population worldwide, there is a yearly increasing research effort to develop mobile healthcare technologies which enable ubiquitous patient monitoring and proactive health management. Dr. Hu has worked extensively on developing smart biomedical sensors, a key enabler for mobile healthcare. One of the projects is to develop a miniature ultra-sensitive acoustic sensor for cardio-respiratory sound monitoring. Although stethoscope had been widely used for intermittent auscultation, it is not feasible for continuous monitoring due to its bulky size. The accelerometer-based acoustic sensor developed in the group is miniature in size and presents a high sensitivity to capture the detailed information in the cardiorespiratory sound. Some of her current research projects include the use of non-contact ballistocardiography sensing devices as ambient intelligence for patient monitoring, the development of a non-invasive portable blood pressure monitoring device that extracts spectral information of the second heart sound, etc. In this seminar, Dr. Hu will also introduce some current research trends in mobile healthcare.

Oct. 2 Dr. Joshua Phillips (Department of Computer Science) An Introduction to Studies in Computational Structural Biology

My research focuses on the development, application, and validation of computational approaches for structural biology. In particular, I apply statistical and/or machine learning algorithms to molecular simulation data in order to form testable hypotheses of underlying molecular mechanisms. I will present three relevant project vignettes: 1) using molecular dynamics simulations to engineer proteins which break down chemical warfare nerve agents, 2) using molecular modeling and electrostatic surface calculations to predict how pH impacts HIV transmission, and 3) using simple polymer models to validate machine learning algorithms (clustering and dimensionality estimation) applied to molecular dynamics simulations of disordered and natively folded proteins. My main goal is to show how computational structural biology may be used to address both scientific and engineering problems, but also to engage with students and faculty who are interested in these kinds of problems and techniques.

Oct. 9    
Oct. 16 Dr. Yi Gu (Department of Computer Science) Performance Modeling and Optimization of Large-scale Workflows for Big Data Science

Next-generation e-science is producing colossal amounts of data, now frequently termed as "Big Data", on the order of terabyte at present and petabyte or even exabyte in the predictable future. These scientific applications typically feature data- and network-intensive workflows comprised of computing modules with intricate inter-module dependencies. Application users oftentimes need to manually configure their computing workflows in distributed environments in an ad-hoc manner, which significantly limits the productivity of scientists and constrains the utilization of resources.

The end-to-end performance of such big data scientific workflows depends on both the mapping scheme that determines module assignment and the scheduling policy that determines resource allocation if multiple modules are mapped to the same node. These two aspects of a workflow-based research process are traditionally treated as two separate topics, and the interactions between them have not been fully explored by any existing efforts. As the scale and complexity of scientific workflows and network environments rapidly increase, each individual aspect of performance optimization alone can only meet with limited success. We will conduct an in-depth investigation into workflow execution dynamics in resource sharing environments and explore the interactions between workflow mapping and node scheduling on a unified application-support platform. We propose to build a three-layer workflow optimization architecture that seamlessly integrates three interrelated components, i.e. resource abstraction, module mapping, and node scheduling, based on rigorous algorithmic design, theoretical dynamics analysis, and real network implementation, deployment, and evaluation.

Oct. 23 Dr. Stoney Brooks (Department of Information Systems and Analytics) Personal Social Media Use at Work: An Examination of Technostress and Work Performance

We investigate whether personal social media usage is associated with positive or negative effects. We propose two models, for the bright-side and the dark-side arguments, to examine the effects of usage in the classroom as a secondary task. The bright side model draws upon Uses and Gratifications theory and the benefits of stress reduction to posit a reduction in social media-related technostress and increases in performance. The dark side model draws upon Distraction-Conflict theory to posit increases in social media-related technostress and decreases in performance. We also draw upon qualitative data gathered from interviews to support the models. We find that the students' usage of personal social media as a secondary task is associated with greater social media-related technostress and lower performance. This result supports the dark-side model of personal social media usage. To further examine the dark-side model, we examine the associated effects of personal social media usage in the workplace. With a survey of IT professionals, we find differing relationships in the dark-side model across organizational hierarchy levels. Overall, personal social media usage as a secondary task is associated with negative effects in both the classroom and the workplace. Managers, educators, and users should be aware of the consequences associated with personal social media usage as a secondary task.

Oct. 30 Dr. Louis J. Gross (NIMBioS and UTK)
9:00-10:00 in KOM 206
"Best" in a Biological Context: Optimization across the Biological Hierarchy

Many central concepts in biology involve notions of what is "better" or "best" in the context of evolution, physiology, and behavior. Similarly, in many applied areas of the life sciences, we are concerned with developing a "best" method to carry out drug therapies, resource harvesting, pest management, and epidemic control. I will discuss, with audience participation, what it might mean to be "best" for several problems at different levels of the biological hierarchy. This includes being clear about differences between maximization and optimization, and taking account of constraints, historical and others, on biological systems. Examples will incorporate notions of optimal control, emphasizing spatial problems.

Oct. 30 Dr. Ralph Butler (Department of Computer Science) The Asynchronous Dynamic Load Balancing Library

This is the story of the implementation of a simple programming model for extreme computing, its use in achieving a breakthrough in nuclear physics, and a discussion of how to use it in other parallel applications. Today, the largest computers in the world have several hundreds of thousands of cores, and are capable of running more than 3 million hardware threads. Many scientists share a concern that the dominant approach for specifying parallel algorithms (message-passing via MPI) will become inadequate as we enter the exascale age (one quintillion, 10^18, flops). ADLB takes the view that the key will be to adopt a simple, scalable programming model that may be less general than message passing but still being useful for most applications.

Nov. 6 Dr. Vishwas Bedekar (Department of Engineering Technology) Energy Harvesting Materials and Devices Laboratories and Instructional Facility

Recent advancements in the field of wireless sensor networks have resulted in increasing demand for self-powering techniques that reduces the dependence on batteries. In order to address this problem, there has been significant effort on generating small electrical power locally by harvesting energy from freely available environmental sources such as mechanical vibrations, wind, and stray magnetic field. Further, there is need for inventing new sensing techniques to reduce the overall power consumption. The road for reaching the destination of self-powered sensor networks requires cooperative progress in reduction in sensor power consumption by developing new sensing mechanisms and local generation of power by developing high efficiency energy harvesters. In this talk, vibration energy harvesting using multiple mechanisms will be discussed along with magnetoelectric and piezoelectric sensors.

Nov. 13 Dr. Zachariah Sinkala (Department of Mathematical Sciences) Application of Probabilistic Graphical Models to Model Fitting and Selection

I will start with an overview of probabilistic graphical models and their types, why they are used, and what kind of problems they solve. For motivation of studying these models, I will explore their use in medical diagnosis and student problems. Then, I will discuss how I use them to study model fitting and selection problems in my own research(Cancer problems). To end my talk, I will discuss other potential use of probabilistic graphic models.

Nov. 20 Dr. Song Cui (School of Agriculture) RNA-seq analysis using machine learning approaches

RNA-seq is a collection of experimental methods and computational algorithms for determining the identity and quantities of RNA sequences from biological samples. Data obtained from RNA-seq analysis could be used for identification of novel genes and recognition of expression patterns affected by different cellular environmental cues. In this presentation, I will talk about a collaborative research project between MTSU-ABAS and Vanderbilt School of Medicine on spermatogonial stem cell culture and transfer using livestock animals as models. We followed standard RNA-seq data-processing pipeline and yielded great preliminary results. We will incorporate machine learning-based approaches for differential expression analysis. Additionally, we will use different feature ranking and selection algorithms to identify the potential causes of gene expression changes, such as within-cell changes and cell-cell interactions. The findings from this project will provide great information on SSC transfer in human medicine research.

Spring 2015

Faciliated by Dr. Jing Kong

Spring 2014

Facilitated by Dr. Jing Kong

Fall 2013

Facilitated by Dr. Jing Kong

Schedule

  • September 20: Dr. Yuri Melnikov
    • Some recent advances in representation of elementary functions:
      • The talk focuses on single-variable functions only. The classical methods to represent elementary functions will be briefly reviewed first. Taylor series representation , Fourier series expansion, interpolation by polynomials, spline-polynomial interpolation, data fitting, and Euler infinite product forms will be mentioned. Then, a surprising Green's-functions-based approach will be discussed, in more detail, aiming at an alternative strategy to represent elementary functions in the form of infinite products.
  • October 4: Mr. JJ Lay
    • Forecasting and Modeling with Hadoop:
      • Hadoop is a distributed computing platform developed at Yahoo in 2005 to address the issues surrounding "Big Data". Big Data refers to a computational problem that taxes the limitation of traditional computing paradigms. A key component of Hadoop is the MapReduce algorithm patented by Google in 2004. MapReduce involves dividing large problems into smaller units that can then be solved by the nodes within a cluster and aggregating the results once all nodes are finished. Unlike MPI, Hadoop has levels of fault-tolerance built-in that make it resilient to one or more node failures. This presentation will cover two projects underway that apply Hadoop to industry problems. The first is the challenge of accurately forecasting inventory needs. By using the widely accepted Holt-Winters method and applying it simultaneously to thousands of inventory items across a cluster, the ability to forecast in near realtime becomes a reality. The second problem involves using Monte Carlo simulations to project cash flow needs for a startup company. In this project a manufacturing startup must project cash flow demand for investors until a steady revenue stream can be established. This presentation will provide an overview of Hadoop and MapReduce within the context of these two problems and describe future research directions.
  • October 18:Dr. Ying Guo --- Emory University
    • A hierarchical group ICA model for studying brain functional networks in fMRI studies
      • Functional magnetic resonance imaging (fMRI) is a powerful non-invasive tool for studying behavior-, clinical- and cognitive-related neural activity. Observed fMRI data represent the combination of spatiotemporal processes from neural signals generated by various brain functional networks. A major goal in fMRI studies is to identify and characterize the underlying functional networks. Independent component analysis (ICA) is a computational technique that has been widely applied for this purpose. In this talk, I present a new hierarchical group ICA regression model that can directly model subjects' covariate effects in decomposition of multi-subject imaging data. The proposed model fills an important gap in the ICA literature by providing a formal statistical method to model subjects' characteristics on underlying source signals. A maximum likelihood estimation method via the EM algorithm is developed for the proposed model. Simulation studies show that our method provides more accurate estimation for brain functional networks on both the population- and individual- level compared to existing approaches. The hierarchical ICA regression model can potentially have important applications in fMRI studies to examine how spatial distributed patterns of functional networks vary with subjects' clinical and demographical variables. I will illustrate our method with an fMRI data example.
  • November 8: Dr. Guannan Zhang --- Oak Ridge National Laboratory
    • Adaptive Hierarchical Stochastic Collocation Methods for High-Dimensional Approximation, Discontinuity Detection and Parameter Estimation:
      • We will discuss an adaptive hierarchical stochastic collocation (AHSC) framework that ad- dresses several challenges arising in uncertainty quantification (UQ) including: quantication of high-dimensional quantities of interest; high-dimensional discontinuity detection; and reducing com- putational complexity of parameter estimation. For high-dimensional approximation, we extended the conventional AHSC method by incorporating the wavelet basis into the sparse-grid framework. Second-generation wavelets are used constructed from a lifting scheme which allow us to preserve the framework of the multi-resolution analysis, compact support, as well as the necessary interpo- latory and Riesz property of the hierarchical basis. For high-dimensional discontinuity detection, We developed a hyper-spherical stochastic collocation method for identifying jump discontinuities by incorporating a hyper-spherical coordinate system (HSCS) into the sparse-grid approximation framework. An approximate discontinuity surface is constructed directly in the hyper-spherical system with a greatly reduced number of sparse grid points compared to existing methods. For parameter estimation problems with computationally expense physical simulations, we incorporate the AHSC approach with high-order hierarchical basis into Bayesian inference framework to reduce computational complexity in MCMC sampling. A surrogate of the posterior probability density function (PPDF) is constructed using the AHSC methods. High-order local hierarchical polynomials (e.g. quadratic, cubic basis) are used to further improve the accuracy and cost of the surrogate. Moreover, to efficiently approximate PPDFs with multiple significant modes, we also incorporate optimization into our new approaches.

Spring 2013

Faciliated by Dr. Wandi Ding

Schedule

    • January 18: Dr. Wandi Ding
      • Optimal Control of Epidemic Models of Rabies in Raccoons: ReadingReading 2Reading 3
      • Dr. Matthew Beauregard - Baylor University
        • Adaptive Splitting Methods in Application to a Solid Fuel Ignition Model
          • Various types of partial differential equations have been playing increasingly important roles in the study of theoretical and numerical combustion. The heat distribution of a premixed, solid-fuel combustor can be decoupled from the activation energy leading to a singular, nonlinear, and degenerate reaction-diffusion equation. A Peaceman-Rachford splitting based adaptive method is developed. Spatial adaptation is accomplished through modified equidistribution principles that stem from a priori solution information. This generates non-uniform exponentially evolving grids. Rigorous numerical analysis are given to ensure the satisfactory effectiveness, efficiency, and numerical stability of the developed scheme. Simulation experiments are provided to illustrate these accomplishments. A brief history is provided, while many open problems are illustrated throughout the discussion.
    • January 25: Dr. Bill Robertson
      • Optical Sensor Development at MTSU: Computation Guiding Experiment: Robertson Reading
      • This talk describes the development of an optical sensing platform for detecting chemical and biological reactions which has been developed at MTSU over the past decade. The sensor is based on the resonant excitation of surface electromagnetic waves in multilayer dielectrics. The ultimate goal of the project is experimental "fabricating and characterizing prototype sensors" however, numerical simulation plays a pivotal role in experimental design and in the interpretation of results. Although, the project is an interdisciplinary effort with collaborators in chemistry and biology, the bulk of the work presented here will describe the physics associated with understanding the nature of surface waves, how their properties can be used to realize sensing, and how and why numerical modeling is crucial to the success of the research.
    • January 28: Dr. Rachel Leander - Ohio State University
      • Granulomas and Model-based derivation of intermitotic time distributions
      • Granuloma: A granuloma is a collection of immune cells that contains bacteria or other foreign material. An example is provided by the granulomas of Tuberculosis, a disease that infects a third of the world's population. Although 90% of Tuberculosis cases are latent, 10% result in active infection. I will present a simple model of a generic granuloma and discuss efforts to discover why granulomas break down to cause active infections. Model-based derivation of intermitotic time distributions: The time it takes a cell to divide, or intermitotic time (IMT), is highly variable, even under homogeneous environmental conditions. I will present a multistep stochastic model of the cell cycle and discuss how the model can be used to explain variability in IMT distributions and study the effect of drug treatment.
    • February 1: Dr. Don Hong
      • From Approximation Theory to High Dimensional Data Analysis
      • In this talk, I'll first briefly mention my research experience in approximation theory, including spline functions, wavelets, and applications. Then, I'll share my research experience at Vanderbilt Ingram Cancer Center on medical data analysis. Finally, I'll describe some recent research topics on hyper-spectral type data processing and applications.
      • Here are some papers for references:
    • February 8: Mr. Xiao Liang
      • Efficient numerical methods and high performance computing for solving Nonlinear Schrodinger Equations Liang Reading 1Liang Reading 2
      • We compare several numerical methods for solving Nonlinear Schrodinger (NLS) equations. Finite difference, quartic spline, Discontinues Galerkin (DG) method and Local DG method are implemented for the spatial discretization. The exponential time differencing (ETD) methods with Pad (1, 1) and Pad (2, 2) approximations are employed for the temporal discretization. These ETD methods have been proven to be unconditionally stable and their convergence rates will be shown in the numerical experiments. We will also discuss some parallel processing algorithms and compare sequential C programs with CUDA C programs running on a GPU cluster.
    • February 15: Dr. Qiang Wu
      • An Introduction to Stylometry Analysis Wu Reading 1
      • In this talk, I will give an introduction to the application of machine learning theory in stylometry analysis. Support vector machine is a useful tool for pattern recognition problems. It can be used to search for relevant features and build classifiers. The recursive elimination technique and pseudo aggregate model help to stabilize the feature ranking. Applications in classification of painting styles and analysis of Chinese classical novels will be discussed.
    • February 22: Dr. Shengfeng Cheng - Sandia National Laboratories
      • Self-assembly of Model Microtubules
      • Self-assembly plays a central role in producing ordered superstructures. The crucial question is to identify the necessary features that a macromolecular monomer must have in order to drive self-assembly into a desired complex structure. In this talk I will present our recent work on the self-assembly of model microtubules. The model monomer has a wedge-shape with lateral and vertical binding sites. Using MD simulations, we calculated a diagram of the self-assembled structures from these monomers. A modified Flory-Huggins theory was developed to predict the boundaries between different structures that match well with simulation results. We found that to form tubules the interaction strengths must be in a limited range. In addition, helical tubes are frequently formed even though the monomer is nonchiral. The occurrence of the helical tubes is related to the large overlap of energy distributions for nonhelical and helical tubes. To enhance structural control of the self-assembly, we added chirality and a lock-and-key mechanism to the model. We could control both the pitch of the helicity and the twist deformation of the tube by modifying the locations of the binding sites and their interaction strengths. Our results shed new light on the structure of in vitro microtubules formed with various numbers of protofilaments of tubulins, which also exhibit similar twisted structures and various pitches, and have determined the fundamental features of macromolecular monomers for self-assembly into a tubular structure. Sandia National Laboratories is a multi-program laboratory managed and operated by Sandia Corporation, a wholly owned subsidiary of Lockheed Martin Corporation, for the U.S. Department of Energy's National Nuclear Security Administration under contract DE-AC04-94AL85000.
    • March 1: Dr. Jing Kong ------ Q-Chem Inc., Pittsburgh, Pennsylvania
      • Molecular Quantum Modeling: State of the Art and Future Outlook
      • Density functional theory (DFT) is the main modeling methodology of atomistic simulations at quantum mechanical level. DFT faces challenges in computational efficiency and accuracy of prediction and we have made progress in meeting the challenges in the last few years. The electronic Coulomb interaction is one of the computational bottlenecks in DFT and we have developed a set of methods [1, 2] that speed up the Coulomb calculation by several times without error. The new methods use Fourier series as auxiliary functions to treat the smooth electron density and the long-range part of the compact electron density, improving the scaling from quartic (O(N4)) to quardratic (O(N2)) with respect to the number of basis functions. For the calculation of exchange-correlation, the other computational bottleneck, we have developed a method [3] that shifts the calculation associated with the smooth electron density to an even-spaced cubic grid and speeds up the calculation by up to 10 times with no loss of accuracy. We believe that the combination of the above methods yields the fastest accurate DFT integration scheme for molecules. In addition to computational efficiency, a major challenge to DFT is the accurate prediction for strongly correlated systems. We have recently devised a scheme for efficient self-consistent calculation of nondynamic correlation with Becke's B05 model [4]. The performance of B05 is illustrated through chemical problems that have been difficult to mainstream DFT and wavefunction methods. Looking to the future, I plan to (1) speed up the DFT calculations by many more times without sacrifice of accuracy so that it can be applied to realistic molecular systems and materials with dynamics; (2) characterize the strong correlation qualitatively and quantitatively and apply the latest development to the study of molecular magnets and catalysis; (3) apply DFT methods and other molecular modeling techniques to the study of ligand-protein binding [5]; (4) design a novel software structure for molecular simulations that lowers the barrier between the idea formulation and software implementation.
        • 1. L. Fusti-Molnar and J. Kong, Fast Coulomb calculations with Gaussian functions. J. Chem. Phys., 2005. 122: 74108.
        • 2. C.-M. Chang and J. Kong, Ewald mesh method for quantum mechanics calculations. J. Chem. Phys., 2012. 136: 114112.
        • 3. J. Kong, S.T. Brown, and L. Fusti-Molnar, Efficient computation of the exchange-correlation contribution in density functional theory through multiresolution. J. Chem. Phys., 2006. 124: 094109.
        • 4. E. Proynov, F. Liu, Y. Shao, and J. Kong, Improved self-consistent and resolution-of-identity approximated Becke'05 density functional model of nondynamic electron correlation. J. Chem. Phys., 2012. 136: 034102.
        • 5. N.N. Nasief, H. Tan, J. Kong, and D. Hangauer, Water mediated ligand functional group cooperativity: The contribution of a methyl group to binding affinity is enhanced by a COO group through changes in the structure and thermodynamics of the hydration waters of ligand thermolysin complexes. J. Med. Chem., 2012. 55: 8283.
    • March 8: Dr. Henrique Momm
    • March 15: Spring Break
    • March 22: Dr. Dong Ye
      • Computing Kekul\'e number and Clar number of Fullerenes, Nanotubes and Nanotori
      • Fullerenes and nanotubes are typical nano-materials. They have been the subject of intense research, both for their unique chemistry and for their technological applications, especially in materials science, electronics, and nanotechnology. The Kekule number and Clar number play a key role in the resonant stability of fullerenes and nanotubes. In this talk, we will discuss the methods of computing the Kekule number and the Clar number of Fullerenes, Nanotubes and Nanotori.
    • March 27: Distinguished Lecture: Dr. Linda Allen - Texas Tech University
      • Mathematical Models of a Zoonotic Infectious Disease:Hantavirus
      • Flyer
      • Approximately 75% of human infectious diseases originate from an animal reservoir, many caused by viruses such as SARS coronavirus, avian in uenza viruses, rabies virus, West Nile virus and hantaviruses. Human diseases originating from a nonhuman animal reservoir are referred to as zoonoses and the transmission of infection from an animal reservoir to another species is referred to as a spillover infection. In this presentation, some deterministic and stochastic mathematical approaches developed for the study of the viral pathogen hantavirus are presented. Hantavirus, carried by wild rodents, can be transmitted to humans through inhalation of viral particles from rodent excreta. Whereas hantavirus infection in the rodent reservoir causes little impact on rodent survival, infection in humans results in hantavirus cardiopulmonary syndrome, a frequently fatal disease. Application of mathematical models to study the dynamics at the population and the cellular level have increased our understanding of the mechanisms for viral persistence in the reservoir host and have led to new investigations about the potential role of the spillover infection in emerging diseases.
    • April 5: No Seminar (Scholars Week Posters)
    • April 12: Dr. Clyton Webster ------ Head of the Predictive and Applied Mathematics Group at ORNL.
      • Adaptive sparse grid generalized stochastic collocation methods for PDEs with high-dimensional random input data
      • Abstract: Our modern treatment of predicting the behavior of physical and engineering problems often relies on approximating solutions in terms of high dimensional spaces, particularly in the case when the input data (coefficients, forcing terms, boundary conditions, geometry, etc) are affected by a large amount of uncertainty. The goal of the mathematical and computational analysis becomes the prediction of statistical moments (mean value, variance, covariance, etc.) or even the whole probability distribution of some responses of the system (quantities of physical interest), given the probability distribution of the input random data. For higher accuracy, the computer simulation must increase the number of random variables (stochastic dimensions), and expend more effort approximating the quantity of interest within each individual dimension. The resulting explosion in computational effort is a symptom of the curse of dimensionality. Adaptive sparse grid generalized stochastic collocation (gSC) techniques yield non-intrusive methods to discretize and approximate these higher dimensional problems with a feasible amount of unknowns leading to usable methods.
      • It is the aim of this talk to survey the fundamentals and analysis of an adaptive sparse grid gSC method utilizing both local and global polynomial approximation theory. We will present both a priori and a posteriori approaches to adapt the anisotropy of the sparse grids to applications of both linear and nonlinear stochastic PDEs. Rigorously derived error estimates, for the fully discrete problem, will be described and used to compare the efficiency of the method with several other techniques. Numerical examples illustrate the theoretical results and are used to show that, for moderately large dimensional problems, the adaptive sparse grid gSC approach is extremely efficient and superior to all examined methods, including Monte Carlo.
    • April 19: Dr. Yijuan Hu - Emory University
      • Meta-Analysis of Rare Genetic Variants via Single-Variant Summary Statistics
      • Meta-analysis, which combines summary statistics from a series of independent studies, has become a norm in discovering common genetic variants associated with complex human diseases. Obtaining summary statistics is much more appealing than collecting individual participant data because it protects the privacy of genetic information, avoids cumbersome integration of genotype and phenotype data from different studies and increases the number of available studies. There is a growing recognition that identifying "causal'' rare variants also requires large-scale meta-analysis. However, the various gene-level tests for rare variants present unprecedented challenges, because the test results from different studies may not be compatible and collating multivariate summary statistics (i.e., the components of the test statistic and their covariance matrix) for certain tests is practically inconvenient. To circumvent these problems, we propose to collate only the single-variant summary statistics and to estimate the correlation matrix of test statistics from an internal reference study or a publicly available database, such as the 1000 Genomes or HapMap. We show both theoretically and numerically that the proposed meta-analysis approach provides accurate control of the type I error and is as powerful as as joint analysis of individual participant data.
    • April 26: Mr. Robert Michael
      • Thermal Averaging of Atoms in Molecules
        • In this computational study, we topologically analyze thermally averaged properties of the Electron Density (ED) and compare these properties to those of the static ED. We calculate the single point optimized (static) geometry of Acetamide and construct an ensemble of wavefunction based densities from harmonic nuclear vibrations. This yields a thermally averaged density without invoking the convolution approximation. We use 10,000 thermally perturbed geometries to generate the large ensemble of wavefunctions. The corresponding EDs are then used to evaluate the location of the Bond Critical Point (BCP) between various atoms and compare these locations to those obtained from the static wavefunction represe

Fall 2012

Faciliated by Dr. Wandi Ding

Dates Speakers Titles
Sep.9 Dr. Bing Zhang --- Vanderbilt University Data integration around the networked central dogma of molecular biology
Sep. 16 Dr. Hui Yang --- MTSU Theoretical Studies of Molecular Recognition in Protein-Ligand and Protein-Protein Complexes
Sep. 23 Dr. Deniz Gencaga --- MTSU Information-Theoretic Methods for Identifying Relationships among Climate Variables
Sep. 30 Dr. Greg Fasshauer --- Illinois Institute of Technology Positive Definite Kernels
Oct. 7 Dr. Shawn Garbett --- Vanderbilt University Beyond Persistence: New Models of Cell Motility
Oct. 14    
Oct. 19 (Wed.) Dr. Glenn Webb --- Vanderbilt University Distinguished Lecture: Mathematical Models of Antibiotic Resistant Bacteria Epidemics in Hospitals
Oct. 21 Dr. Hyrum Carroll --- MTSU PSI-GLOBAL: Domain-aware Genetic Sequence Alignment
Oct. 28 Dr. Donal Estep --- University of Colorado, Denver (not confirmed) Uncertainty Quantification
Nov. 4 Dr. John Wallin --- MTSU Galactic Mergers Observations, Numerical Models, and Dynamical Parameters using Galaxy Zoo
Nov. 8 (Tue.) Dr. Henri Shurz --- Southern Illinois University Basic Concepts of Numerical Analysis Explained by Simplest Class of Stochastic Runge-Kutta Methods for Stochastic Differential Equations
Nov. 11 Mr. Cori Hendon Verification of Los Alamos National Lab Production Hydrodynamics Code xRAGE
Nov. 18 Mr. Lu Xiong --- MTSU Multiresolution Analysis Method for IMS Data Biomarker selection and Classification
Nov. 25 Happy Thanksgiving  
Dec. 2 Dr. Zach Sinkala --- MTSU Mathematical Modeling of Competition Between the Immune System and Cancer

Spring 2012

Faciliated by Dr. Wandi Ding

Dates Speakers Titles
Jan. 26 Dr. Suzanne Robertson - MBI Modeling the Spread of Waterborne Disease: Incorporating Heterogeneity in Multiple Transmission Pathways
Jan. 20 Dr. Jintao Cui - IMA Discontinuous Galerkin Methods for Elliptic Problems
Jan. 18 Mr. Dong Ye - West Virginia University Fullerenes: Resonance, Kekule Count and Stability