308 results on '"Eubank, Stephen"'
Search Results
2. Forum on immune digital twins: a meeting report
- Author
-
Laubenbacher, Reinhard, Adler, Fred, An, Gary, Castiglione, Filippo, Eubank, Stephen, Fonseca, Luis L., Glazier, James, Helikar, Tomas, Jett-Tilton, Marti, Kirschner, Denise, Macklin, Paul, Mehrad, Borna, Moore, Beth, Pasour, Virginia, Shmulevich, Ilya, Smith, Amber, Voigt, Isabel, Yankeelov, Thomas E., and Ziemssen, Tjalf
- Subjects
Quantitative Biology - Other Quantitative Biology - Abstract
Medical digital twins are computational models of human biology relevant to a given medical condition, which can be tailored to an individual patient, thereby predicting the course of disease and individualized treatments, an important goal of personalized medicine. The immune system, which has a central role in many diseases, is highly heterogeneous between individuals, and thus poses a major challenge for this technology. If medical digital twins are to faithfully capture the characteristics of a patient's immune system, we need to answer many questions, such as: What do we need to know about the immune system to build mathematical models that reflect features of an individual? What data do we need to collect across the different scales of immune system action? What are the right modeling paradigms to properly capture immune system complexity? In February 2023, an international group of experts convened in Lake Nona, FL for two days to discuss these and other questions related to digital twins of the immune system. The group consisted of clinicians, immunologists, biologists, and mathematical modelers, representative of the interdisciplinary nature of medical digital twin development. A video recording of the entire event is available. This paper presents a synopsis of the discussions, brief descriptions of ongoing digital twin projects at different stages of progress. It also proposes a 5-year action plan for further developing this technology. The main recommendations are to identify and pursue a small number of promising use cases, to develop stimulation-specific assays of immune function in a clinical setting, and to develop a database of existing computational immune models, as well as advanced modeling technology and infrastructure.
- Published
- 2023
- Full Text
- View/download PDF
3. Perturbative methods for mostly monotonic probabilistic satisfiability problems
- Author
-
Eubank, Stephen, Nath, Madhurima, Ren, Yihui, and Adiga, Abhijin
- Subjects
Computer Science - Discrete Mathematics - Abstract
The probabilistic satisfiability of a logical expression is a fundamental concept known as the partition function in statistical physics and field theory, an evaluation of a related graph's Tutte polynomial in mathematics, and the Moore-Shannon network reliability of that graph in engineering. It is the crucial element for decision-making under uncertainty. Not surprisingly, it is provably hard to compute exactly or even to approximate. Many of these applications are concerned only with a subset of problems for which the solutions are monotonic functions. Here we extend the weak- and strong-coupling methods of statistical physics to heterogeneous satisfiability problems and introduce a novel approach to constructing lower and upper bounds on the approximation error for monotonic problems. These bounds combine information from both perturbative analyses to produce bounds that are tight in the sense that they are saturated by some problem instance that is compatible with all the information contained in either approximation.
- Published
- 2022
4. Crowdsourcing County-Level Data on Early COVID-19 Policy Interventions in the United States: Technical Report
- Author
-
Ritchie, Jacob, Whiting, Mark, Chaturapruek, Sorathan, Zamfirescu-Pereira, J. D., Marathe, Madhav, Marathe, Achla, Eubank, Stephen, and Bernstein, Michael S.
- Subjects
Computer Science - Computers and Society - Abstract
Beginning in April 2020, we gathered partial county-level data on non-pharmaceutical interventions (NPIs) implemented in response to the COVID-19 pandemic in the United States, using both volunteer and paid crowdsourcing. In this report, we document the data collection process and summarize our results, to increase the utility of our open data and inform the design of future rapid crowdsourcing data collection efforts., Comment: Includes survey instrument
- Published
- 2021
5. Model selection for sequential designs in discrete finite systems using Bernstein kernels
- Author
-
Nath, Madhurima and Eubank, Stephen
- Subjects
Statistics - Methodology - Abstract
We view sequential design as a model selection problem to determine which new observation is expected to be the most informative, given the existing set of observations. For estimating a probability distribution on a bounded interval, we use bounds constructed from kernel density estimators along with the estimated density itself to estimate the information gain expected from each observation. We choose Bernstein polynomials for the kernel functions because they provide a complete set of basis functions for polynomials of finite degree and thus have useful convergence properties. We illustrate the method with applications to estimating network reliability polynomials, which give the probability of certain sets of configurations in finite, discrete stochastic systems.
- Published
- 2018
6. From Network Reliability to the Ising Model: A Parallel Scheme for Estimating the Joint Density of States
- Author
-
Ren, Yihui, Eubank, Stephen, and Nath, Madhurima
- Subjects
Condensed Matter - Statistical Mechanics ,Computer Science - Distributed, Parallel, and Cluster Computing - Abstract
Network reliability is the probability that a dynamical system composed of discrete elements interacting on a network will be found in a configuration that satisfies a particular property. We introduce a new reliability property, Ising feasibility, for which the network reliability is the Ising model s partition function. As shown by Moore and Shannon, the network reliability can be separated into two factors: structural, solely determined by the network topology, and dynamical, determined by the underlying dynamics. In this case, the structural factor is known as the joint density of states. Using methods developed to approximate the structural factor for other reliability properties, we simulate the joint density of states, yielding an approximation for the partition function. Based on a detailed examination of why naive Monte Carlo sampling gives a poor approximation, we introduce a novel parallel scheme for estimating the joint density of states using a Markov chain Monte Carlo method with a spin exchange random walk. This parallel scheme makes simulating the Ising model in the presence of an external field practical on small computer clusters for networks with arbitrary topology with 10 to 6 energy levels and more than 10 to 308 microstates., Comment: Ver.2. 8 pages, 7 figures. Accepted. Phys. Rev. E
- Published
- 2016
- Full Text
- View/download PDF
7. Toward mechanistic medical digital twins: some use cases in immunology
- Author
-
Laubenbacher, Reinhard, primary, Adler, Fred, additional, An, Gary, additional, Castiglione, Filippo, additional, Eubank, Stephen, additional, Fonseca, Luis L., additional, Glazier, James, additional, Helikar, Tomas, additional, Jett-Tilton, Marti, additional, Kirschner, Denise, additional, Macklin, Paul, additional, Mehrad, Borna, additional, Moore, Beth, additional, Pasour, Virginia, additional, Shmulevich, Ilya, additional, Smith, Amber, additional, Voigt, Isabel, additional, Yankeelov, Thomas E., additional, and Ziemssen, Tjalf, additional
- Published
- 2024
- Full Text
- View/download PDF
8. The Potential Impact of Increased Hospital Capacity to Contain and Control Ebola in Liberia
- Author
-
Lofgren, Eric T., Rivers, Caitlin M., Marathe, Madhav V., Eubank, Stephen G., and Lewis, Bryan L.
- Subjects
Quantitative Biology - Populations and Evolution - Abstract
West Africa is currently experiencing a severe outbreak of Ebola virus disease (EVD). As part of the international effort to address this outbreak, the United States has committed to building specialized Ebola treatment facilities with 1700 beds. However, the effectiveness of this increase in the available healthcare facilities to treat Ebola is unclear, especially in light of the rapidly increasing number of cases. Adapting a previously validated mathematical model of Ebola in West Africa, we examine the potential impact of an increase in hospital capacity to mitigate the impact of Ebola under several scenarios, ranging from the planned scenario of 1700 beds in 10 weeks to a considerably more aggressive approach of twice the number of beds in 5 weeks. We find that even for the most aggressive scenarios, while increasing the availability of healthcare reduces the number of Ebola cases and slows the outbreak, it is not sufficient to stop the epidemic within the next three months. We find that only a combination of increased hospital beds and a dramatic decrease in the rate of transmission within the community can bring the epidemic under control within the near future.
- Published
- 2014
9. Modeling the Impact of Interventions on an Epidemic of Ebola in Sierra Leone and Liberia
- Author
-
Rivers, Caitlin M., Lofgren, Eric T., Marathe, Madhav, Eubank, Stephen, and Lewis, Bryan L.
- Subjects
Quantitative Biology - Populations and Evolution - Abstract
An Ebola outbreak of unparalleled size is currently affecting several countries in West Africa, and international efforts to control the outbreak are underway. However, the efficacy of these interventions, and their likely impact on an Ebola epidemic of this size, is unknown. Forecasting and simulation of these interventions may inform public health efforts. We use existing data from Liberia and Sierra Leone to parameterize a mathematical model of Ebola and use this model to forecast the progression of the epidemic, as well as the efficacy of several interventions, including increased contact tracing, improved infection control practices, the use of a hypothetical pharmaceutical intervention to improve survival in hospitalized patients. Model forecasts until Dec. 31, 2014 show an increasingly severe epidemic with no sign of having reached a peak. Modeling results suggest that increased contact tracing, improved infection control, or a combination of the two can have a substantial impact on the number of Ebola cases, but these interventions are not sufficient to halt the progress of the epidemic. The hypothetical pharmaceutical intervention, while impacting mortality, had a smaller effect on the forecasted trajectory of the epidemic. Near-term, practical interventions to address the ongoing Ebola epidemic may have a beneficial impact on public health, but they will not result in the immediate halting, or even obvious slowing of the epidemic. A long-term commitment of resources and support will be necessary to address the outbreak.
- Published
- 2014
10. Analyzing Network Reliability Using Structural Motifs
- Author
-
Khorramzadeh, Yasamin, Youssef, Mina, Eubank, Stephen, and Mowlaei, Shahir
- Subjects
Computer Science - Social and Information Networks ,Condensed Matter - Statistical Mechanics ,Mathematics - Combinatorics ,Physics - Physics and Society ,Quantitative Biology - Populations and Evolution - Abstract
This paper uses the reliability polynomial, introduced by Moore and Shannon in 1956, to analyze the effect of network structure on diffusive dynamics such as the spread of infectious disease. We exhibit a representation for the reliability polynomial in terms of what we call {\em structural motifs} that is well suited for reasoning about the effect of a network's structural properties on diffusion across the network. We illustrate by deriving several general results relating graph structure to dynamical phenomena.
- Published
- 2014
- Full Text
- View/download PDF
11. Enhancing disease surveillance with novel data streams: challenges and opportunities
- Author
-
Althouse, Benjamin M, Scarpino, Samuel V, Meyers, Lauren Ancel, Ayers, John W, Bargsten, Marisa, Baumbach, Joan, Brownstein, John S, Castro, Lauren, Clapham, Hannah, Cummings, Derek AT, Del Valle, Sara, Eubank, Stephen, Fairchild, Geoffrey, Finelli, Lyn, Generous, Nicholas, George, Dylan, Harper, David R, Hébert-Dufresne, Laurent, Johansson, Michael A, Konty, Kevin, Lipsitch, Marc, Milinovich, Gabriel, Miller, Joseph D, Nsoesie, Elaine O, Olson, Donald R, Paul, Michael, Polgreen, Philip M, Priedhorsky, Reid, Read, Jonathan M, Rodríguez-Barraquer, Isabel, Smith, Derek J, Stefansen, Christian, Swerdlow, David L, Thompson, Deborah, Vespignani, Alessandro, and Wesolowski, Amy
- Subjects
Public Health ,Health Sciences ,Biotechnology ,Good Health and Well Being ,disease surveillance ,novel data streams ,digital surveillance - Abstract
Novel data streams (NDS), such as web search data or social media updates, hold promise for enhancing the capabilities of public health surveillance. In this paper, we outline a conceptual framework for integrating NDS into current public health surveillance. Our approach focuses on two key questions: What are the opportunities for using NDS and what are the minimal tests of validity and utility that must be applied when using NDS? Identifying these opportunities will necessitate the involvement of public health authorities and an appreciation of the diversity of objectives and scales across agencies at different levels (local, state, national, international). We present the case that clearly articulating surveillance objectives and systematically evaluating NDS and comparing the performance of NDS to existing surveillance data and alternative NDS data is critical and has not sufficiently been addressed in many applications of NDS currently in the literature.
- Published
- 2015
12. An agent-based epidemiological model of incarceration
- Author
-
Lum, Kristian, Swarup, Samarth, Eubank, Stephen, and Hawdon, James
- Subjects
Statistics - Applications ,Statistics - Other Statistics - Abstract
We build an agent-based model of incarceration based on the SIS model of infectious disease propagation. Our central hypothesis is that the observed racial disparities in incarceration rates between Black and White Americans can be explained as the result of differential sentencing between the two demographic groups. We demonstrate that if incarceration can be spread through a social influence network, then even relatively small differences in sentencing can result in the large disparities in incarceration rates. Controlling for effects of transmissibility, susceptibility, and influence network structure, our model reproduces the observed large disparities in incarceration rates given the differences in sentence lengths for White and Black drug offenders in the United States without extensive parameter tuning. We further establish the suitability of the SIS model as applied to incarceration, as the observed structural patterns of recidivism are an emergent property of the model. In fact, our model shows a remarkably close correspondence with California incarceration data, without requiring any parameter tuning. This work advances efforts to combine the theories and methods of epidemiology and criminology.
- Published
- 2013
13. Network Reliability: The effect of local network structure on diffusive processes
- Author
-
Youssef, Mina, Khorramzadeh, Yasamin, and Eubank, Stephen
- Subjects
Physics - Physics and Society ,Computer Science - Social and Information Networks ,Physics - Computational Physics - Abstract
This paper re-introduces the network reliability polynomial - introduced by Moore and Shannon in 1956 -- for studying the effect of network structure on the spread of diseases. We exhibit a representation of the polynomial that is well-suited for estimation by distributed simulation. We describe a collection of graphs derived from Erd\H{o}s-R\'enyi and scale-free-like random graphs in which we have manipulated assortativity-by-degree and the number of triangles. We evaluate the network reliability for all these graphs under a reliability rule that is related to the expected size of a connected component. Through these extensive simulations, we show that for positively or neutrally assortative graphs, swapping edges to increase the number of triangles does not increase the network reliability. Also, positively assortative graphs are more reliable than neutral or disassortative graphs with the same number of edges. Moreover, we show the combined effect of both assortativity-by-degree and the presence of triangles on the critical point and the size of the smallest subgraph that is reliable., Comment: 12 pages, 8 figures, 1 table
- Published
- 2013
- Full Text
- View/download PDF
14. Epidemiological and economic impact of COVID-19 in the US
- Author
-
Chen, Jiangzhuo, Vullikanti, Anil, Santos, Joost, Venkatramanan, Srinivasan, Hoops, Stefan, Mortveit, Henning, Lewis, Bryan, You, Wen, Eubank, Stephen, Marathe, Madhav, Barrett, Chris, and Marathe, Achla
- Published
- 2021
- Full Text
- View/download PDF
15. Scaling laws for the movement of people between locations in a large city
- Author
-
Chowell, Gerardo, Hyman, James M., Eubank, Stephen, and Castillo-Chavez, Carlos
- Subjects
Physics - Physics and Society - Abstract
Large scale simulations of the movements of people in a ``virtual'' city and their analyses are used to generate new insights into understanding the dynamic processes that depend on the interactions between people. Models, based on these interactions, can be used in optimizing traffic flow, slowing the spread of infectious diseases or predicting the change in cell phone usage in a disaster. We analyzed cumulative and aggregated data generated from the simulated movements of 1.6 million individuals in a computer (pseudo agent-based) model during a typical day in Portland, Oregon. This city is mapped into a graph with $181,206$ nodes representing physical locations such as buildings. Connecting edges model individual's flow between nodes. Edge weights are constructed from the daily traffic of individuals moving between locations. The number of edges leaving a node (out-degree), the edge weights (out-traffic), and the edge-weights per location (total out-traffic) are fitted well by power law distributions. The power law distributions also fit subgraphs based on work, school, and social/recreational activities. The resulting weighted graph is a ``small world'' and has scaling laws consistent with an underlying hierarchical structure. We also explore the time evolution of the largest connected component and the distribution of the component sizes. We observe a strong linear correlation between the out-degree and total out-traffic distributions and significant levels of clustering. We discuss how these network features can be used to characterize social networks and their relationship to dynamic processes., Comment: 18 pages, 10 figures
- Published
- 2005
- Full Text
- View/download PDF
16. Modeling the regional spread and control of vancomycin-resistant enterococci
- Author
-
Lee, Bruce Y, Yilmaz, S Levent, Wong, Kim F, Bartsch, Sarah M, Eubank, Stephen, Song, Yeohan, Avery, Taliser R, Christie, Richard, Brown, Shawn T, Epstein, Joshua M, Parker, Jon I, and Huang, Susan S
- Subjects
Health Services and Systems ,Biomedical and Clinical Sciences ,Clinical Sciences ,Health Sciences ,Clinical Research ,Health Services ,Good Health and Well Being ,Anti-Bacterial Agents ,California ,Computer Simulation ,Cross Infection ,Enterococcus ,Gram-Positive Bacterial Infections ,Hospitals ,Humans ,Infection Control ,Prevalence ,Vancomycin ,Vancomycin Resistance ,Vancomycin-resistant Enterococcus ,Health care-associated infections ,Modeling ,Simulation ,article ,bacterial colonization ,bacterial transmission ,disease surveillance ,emergency care ,infection control ,nonhuman ,United States ,vancomycin resistant Enterococcus ,Nursing ,Public Health and Health Services ,Epidemiology ,Clinical sciences ,Public health - Abstract
BackgroundBecause patients can remain colonized with vancomycin-resistant enterococci (VRE) for long periods of time, VRE may spread from one health care facility to another.MethodsUsing the Regional Healthcare Ecosystem Analyst, an agent-based model of patient flow among all Orange County, California, hospitals and communities, we quantified the degree and speed at which changes in VRE colonization prevalence in a hospital may affect prevalence in other Orange County hospitals.ResultsA sustained 10% increase in VRE colonization prevalence in any 1 hospital caused a 2.8% (none to 62%) average relative increase in VRE prevalence in all other hospitals. Effects took from 1.5 to >10 years to fully manifest. Larger hospitals tended to have greater affect on other hospitals.ConclusionsWhen monitoring and controlling VRE, decision makers may want to account for regional effects. Knowing a hospital's connections with other health care facilities via patient sharing can help determine which hospitals to include in a surveillance or control program.
- Published
- 2013
17. Modeling the Spread of Methicillin-Resistant Staphylococcus aureus (MRSA) Outbreaks throughout the Hospitals in Orange County, California
- Author
-
Lee, Bruce Y, McGlone, Sarah M, Wong, Kim F, Yilmaz, S Levent, Avery, Taliser R, Song, Yeohan, Christie, Richard, Eubank, Stephen, Brown, Shawn T, Epstein, Joshua M, Parker, Jon I, Burke, Donald S, Platt, Richard, and Huang, Susan S
- Subjects
Biomedical and Clinical Sciences ,Clinical Sciences ,Patient Safety ,Antimicrobial Resistance ,Emerging Infectious Diseases ,Infectious Diseases ,Infection ,California ,Computer Simulation ,Cross Infection ,Disease Outbreaks ,Epidemiologic Methods ,Humans ,Length of Stay ,Methicillin-Resistant Staphylococcus aureus ,Patient Readmission ,Patient Transfer ,Prevalence ,Staphylococcal Infections ,Time Factors ,article ,disease transmission ,epidemic ,hospital ,hospital readmission ,human ,length of stay ,major clinical study ,methicillin resistant Staphylococcus aureus infection ,patient transport ,prevalence ,sensitivity analysis ,United States ,Medical and Health Sciences ,Epidemiology ,Biomedical and clinical sciences ,Health sciences - Abstract
BackgroundSince hospitals in a region often share patients, an outbreak of methicillin-resistant Staphylococcus aureus (MRSA) infection in one hospital could affect other hospitals.MethodsUsing extensive data collected from Orange County (OC), California, we developed a detailed agent-based model to represent patient movement among all OC hospitals. Experiments simulated MRSA outbreaks in various wards, institutions, and regions. Sensitivity analysis varied lengths of stay, intraward transmission coefficients (β), MRSA loss rate, probability of patient transfer or readmission, and time to readmission.ResultsEach simulated outbreak eventually affected all of the hospitals in the network, with effects depending on the outbreak size and location. Increasing MRSA prevalence at a single hospital (from 5% to 15%) resulted in a 2.9% average increase in relative prevalence at all other hospitals (ranging from no effect to 46.4%). Single-hospital intensive care unit outbreaks (modeled increase from 5% to 15%) caused a 1.4% average relative increase in all other OC hospitals (ranging from no effect to 12.7%).ConclusionMRSA outbreaks may rarely be confined to a single hospital but instead may affect all of the hospitals in a region. This suggests that prevention and control strategies and policies should account for the interconnectedness of health care facilities.
- Published
- 2011
18. Social Network Analysis of Patient Sharing Among Hospitals in Orange County, California
- Author
-
Lee, Bruce Y, McGlone, Sarah M, Song, Yeohan, Avery, Taliser R, Eubank, Stephen, Chang, Chung-Chou, Bailey, Rachel R, Wagener, Diane K, Burke, Donald S, Platt, Richard, and Huang, Susan S
- Subjects
Health Services and Systems ,Biomedical and Clinical Sciences ,Health Sciences ,California ,Evaluation Studies as Topic ,Hospitals ,County ,Humans ,Interinstitutional Relations ,Patient Discharge ,Patient Transfer ,article ,evaluation ,hospital discharge ,human ,patient transport ,public hospital ,public relations ,statistics ,United States ,utilization review ,Medical and Health Sciences ,Public Health ,Biomedical and clinical sciences ,Health sciences - Abstract
ObjectivesWe applied social network analyses to determine how hospitals within Orange County, California, are interconnected by patient sharing, a system which may have numerous public health implications.MethodsOur analyses considered 2 general patient-sharing networks: uninterrupted patient sharing (UPS; i.e., direct interhospital transfers) and total patient sharing (TPS; i.e., all interhospital patient sharing, including patients with intervening nonhospital stays). We considered these networks at 3 thresholds of patient sharing: at least 1, at least 10, and at least 100 patients shared.ResultsGeographically proximate hospitals were somewhat more likely to share patients, but many hospitals shared patients with distant hospitals. Number of patient admissions and percentage of cancer patients were associated with greater connectivity across the system. The TPS network revealed numerous connections not seen in the UPS network, meaning that direct transfers only accounted for a fraction of total patient sharing.ConclusionsOur analysis demonstrated that Orange County's 32 hospitals were highly and heterogeneously interconnected by patient sharing. Different hospital populations had different levels of influence over the patient-sharing network.
- Published
- 2011
19. Quantifying Interhospital Patient Sharing as a Mechanism for Infectious Disease Spread
- Author
-
Huang, Susan S, Avery, Taliser R, Song, Yeohan, Elkins, Kristen R, Nguyen, Christopher C, Nutter, Sandra K, Nafday, Alaka A, Condon, Curtis J, Chang, Michael T, Chrest, David, Boos, John, Bobashev, Georgiy, Wheaton, William, Frank, Steven A, Piatt, Richard, Lipsitch, Marc, Bush, Robin M, Eubank, Stephen, Burke, Donald S, and Lee, Bruce Y
- Subjects
Health Services and Systems ,Biomedical and Clinical Sciences ,Health Sciences ,Infectious Diseases ,Good Health and Well Being ,Aged ,California ,Child ,Cohort Studies ,Cross Infection ,Female ,Humans ,Male ,Medical Audit ,Middle Aged ,Patient Discharge ,Patient Transfer ,Retrospective Studies ,adult ,article ,Clostridium difficile infection ,disease transmission ,female ,hospital admission ,hospital infection ,human ,infection ,major clinical study ,male ,Medical and Health Sciences ,Epidemiology ,Biomedical and clinical sciences ,Health sciences - Abstract
BackgroundAssessments of infectious disease spread in hospitals seldom account for interfacility patient sharing. This is particularly important for pathogens with prolonged incubation periods or carrier states.MethodsWe quantified patient sharing among all 32 hospitals in Orange County (OC), California, using hospital discharge data. Same-day transfers between hospitals were considered "direct" transfers, and events in which patients were shared between hospitals after an intervening stay at home or elsewhere were considered "indirect" patient-sharing events. We assessed the frequency of readmissions to another OC hospital within various time points from discharge and examined interhospital sharing of patients with Clostridium difficile infection.ResultsIn 2005, OC hospitals had 319,918 admissions. Twenty-nine percent of patients were admitted at least twice, with a median interval between discharge and readmission of 53 days. Of the patients with 2 or more admissions, 75% were admitted to more than 1 hospital. Ninety-four percent of interhospital patient sharing occurred indirectly. When we used 10 shared patients as a measure of potential interhospital exposure, 6 (19%) of 32 hospitals "exposed" more than 50% of all OC hospitals within 6 months, and 17 (53%) exposed more than 50% within 12 months. Hospitals shared 1 or more patient with a median of 28 other hospitals. When we evaluated patients with C. difficile infection, 25% were readmitted within 12 weeks; 41% were readmitted to different hospitals, and less than 30% of these readmissions were direct transfers.ConclusionsIn a large metropolitan county, interhospital patient sharing was a potential avenue for transmission of infectious agents. Indirect sharing with an intervening stay at home or elsewhere composed the bulk of potential exposures and occurred unbeknownst to hospitals.
- Published
- 2010
20. Medical costs of keeping the US economy open during COVID-19
- Author
-
Chen, Jiangzhuo, Vullikanti, Anil, Hoops, Stefan, Mortveit, Henning, Lewis, Bryan, Venkatramanan, Srinivasan, You, Wen, Eubank, Stephen, Marathe, Madhav, Barrett, Chris, and Marathe, Achla
- Published
- 2020
- Full Text
- View/download PDF
21. Don't bleach chaotic data
- Author
-
Theiler, James and Eubank, Stephen
- Subjects
Nonlinear Sciences - Cellular Automata and Lattice Gases - Abstract
A common first step in time series signal analysis involves digitally filtering the data to remove linear correlations. The residual data is spectrally white (it is ``bleached''), but in principle retains the nonlinear structure of the original time series. It is well known that simple linear autocorrelation can give rise to spurious results in algorithms for estimating nonlinear invariants, such as fractal dimension and Lyapunov exponents. In theory, bleached data avoids these pitfalls. But in practice, bleaching obscures the underlying deterministic structure of a low-dimensional chaotic process. This appears to be a property of the chaos itself, since nonchaotic data are not similarly affected. The adverse effects of bleaching are demonstrated in a series of numerical experiments on known chaotic data. Some theoretical aspects are also discussed., Comment: 12 dense pages (82K) of ordinary LaTeX; uses macro psfig.tex for inclusion of figures in text; figures are uufile'd into a single file of size 306K; the final dvips'd postscript file is about 1.3mb Replaced 9/30/93 to incorporate final changes in the proofs and to make the LaTeX more portable; the paper will appear in CHAOS 4 (Dec, 1993)
- Published
- 1993
- Full Text
- View/download PDF
22. Opinion: Mathematical models: A key tool for outbreak response
- Author
-
Lofgren, Eric T., Halloran, M. Elizabeth, Rivers, Caitlin M., Drake, John M., Porco, Travis C., Lewis, Bryan, Yang, Wan, Vespignani, Alessandro, Shaman, Jeffrey, Eisenberg, Joseph N. S., Eisenberg, Marisa C., Marathe, Madhav, Scarpino, Samuel V., Alexander, Kathleen A., Meza, Rafael, Ferrari, Matthew J., Hyman, James M., Meyers, Lauren A., and Eubank, Stephen
- Published
- 2014
23. Data-driven scalable pipeline using national agent-based models for real-time pandemic response and decision support
- Author
-
Bhattacharya, Parantapa, primary, Chen, Jiangzhuo, additional, Hoops, Stefan, additional, Machi, Dustin, additional, Lewis, Bryan, additional, Venkatramanan, Srinivasan, additional, Wilson, Mandy L., additional, Klahn, Brian, additional, Adiga, Aniruddha, additional, Hurt, Benjamin, additional, Outten, Joseph, additional, Adiga, Abhijin, additional, Warren, Andrew, additional, Baek, Young Yun, additional, Porebski, Przemyslaw, additional, Marathe, Achla, additional, Xie, Dawen, additional, Swarup, Samarth, additional, Vullikanti, Anil, additional, Mortveit, Henning, additional, Eubank, Stephen, additional, Barrett, Christopher L., additional, and Marathe, Madhav, additional
- Published
- 2022
- Full Text
- View/download PDF
24. Multimodeling approach to evaluating the efficacy of layering pharmaceutical and nonpharmaceutical interventions for influenza pandemics.
- Author
-
Prasad, Pragati V., Steele, Molly K., Reed, Carrie, Meyers, Lauren Ancel, Zhanwei Du, Pasco, Remy, Alfaro-Murillo, Jorge A., Lewis, Bryan, Venkatramanan, Srinivasan, Schlitt, James, Jiangzhuo Chen, Orr, Mark, Wilson, Mandy L., Eubank, Stephen, Lijing Wang, Chinazzi, Matteo, y Piontti, Ana Pastore, Davis, Jessica T., Halloran, M. Elizabeth, and Longini, Ira
- Subjects
SCHOOL closings ,PANDEMICS ,INFLUENZA ,VIRAL transmission ,VACCINE development ,MULTIPLE comparisons (Statistics) - Abstract
When an influenza pandemic emerges, temporary school closures and antiviral treat- ment may slow virus spread, reduce the overall disease burden, and provide time for vaccine development, distribution, and administration while keeping a larger portion of the general population infection free. The impact of such measures will depend on the transmissibility and severity of the virus and the timing and extent of their imple- mentation. To provide robust assessments of layered pandemic intervention strategies, the Centers for Disease Control and Prevention (CDC) funded a network of academic groups to build a framework for the development and comparison of multiple pandemic influenza models. Research teams from Columbia University, Imperial College London/ Princeton University, Northeastern University, the University of Texas at Austin/Yale University, and the University of Virginia independently modeled three prescribed sets of pandemic influenza scenarios developed collaboratively by the CDC and network members. Results provided by the groups were aggregated into a mean-based ensemble. The ensemble and most component models agreed on the ranking of the most and least effective intervention strategies by impact but not on the magnitude of those impacts. In the scenarios evaluated, vaccination alone, due to the time needed for development, approval, and deployment, would not be expected to substantially reduce the numbers of illnesses, hospitalizations, and deaths that would occur. Only strategies that included early implementation of school closure were found to substantially mitigate early spread and allow time for vaccines to be developed and administered, especially under a highly transmissible pandemic scenario. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
25. Modeling Targeted Layered Containment of an Influenza Pandemic in the United States
- Author
-
Halloran, M. Elizabeth, Ferguson, Neil M., Eubank, Stephen, Longini,, Ira M., Cummings, Derek A. T., Lewis, Bryan, Xu, Shufu, Fraser, Christophe, Vullikanti, Anil, Germann, Timothy C., Wagener, Diane, Beckman, Richard, Kadau, Kai, Barrett, Chris, Macken, Catherine A., Burke, Donald S., and Cooley, Philip
- Published
- 2008
- Full Text
- View/download PDF
26. The Ecology of Pathogen Spillover and Disease Emergence at the Human-Wildlife-Environment Interface
- Author
-
Alexander, Kathleen A., Carlson, Colin J., Lewis, Bryan L., Getz, Wayne M., Marathe, Madhav V., Eubank, Stephen G., Sanderson, Claire E., and Blackburn, Jason K.
- Subjects
Anthrax ,Spillover ,Eco-epidemiology ,Emerging diseases ,Host ,Ebola ,Vector ,Article - Abstract
Novel diseases are increasingly emerging into human populations through the complex—and often, unseen—stepwise process of spillover from a combination of wildlife, livestock, vectors, and the abiotic environment. Characterizing and modeling the spillover interface are a key part of how eco-epidemiologists respond to the growing global burden of emerging infectious diseases; but the diversity of pathogen life cycles and transmission modes poses a complex challenge for ecologists and clinicians alike. We review our current understanding of the spillover process and present a framework that relates spillover rates and human-to-human transmissibility to the basic reproduction number (R 0). Using pathogens that exemplify important transmission pathways (anthrax, Ebola, influenza, and Zika), we illustrate key aspects of the spillover interface and discuss implications to public health and management of emerging infectious disease.
- Published
- 2018
27. Modelling disease outbreaks in realistic urban social networks
- Author
-
Eubank, Stephen, Guclu, Hasan, Anil Kumar, V. S., Marathe, Madhav V., Srinivasan, Aravind, Toroczkai, Zoltán, and Wang, Nan
- Published
- 2004
- Full Text
- View/download PDF
28. Impact of Paid Sick Leave Policy: A Social Plannerʼs Perspective
- Author
-
Marathe, Achla, Chen, Jiangzhuo, Eubank, Stephen, Liao, Shaojuan, and Ma, Yifei
- Published
- 2014
- Full Text
- View/download PDF
29. A survey of quality of life indicators in the Romanian Roma population following the ‘Decade of Roma Inclusion’
- Author
-
Doherty, Rebecca Powell, Telionis, Pyrros A., Müller-Demary, Daniel, Hosszu, Alexandra, Duminica, Ana, Bertke, Andrea S., Lewis, Bryan L., Eubank, Stephen G., Doherty, Rebecca Powell, Telionis, Pyrros A., Müller-Demary, Daniel, Hosszu, Alexandra, Duminica, Ana, Bertke, Andrea S., Lewis, Bryan L., and Eubank, Stephen G.
- Abstract
Background: This study explores how the Roma in Romania, the EU’s most concentrated population, are faring in terms of a number of quality of life indicators, including poverty levels, healthcare, education, water, sanitation, and hygiene. It further explores the role of synthetic populations and modelling in identifying at-risk populations and delivering targeted aid. Methods: 135 surveys were conducted across five geographically diverse Romanian communities. Household participants were selected through a comprehensive random walk method. Analyses were conducted on all data using Pandas for Python. Combining land scan data, time-use survey analyses, interview data, and ArcGIS, the resulting synthetic population was analysed via classification and regression tree (CART) analysis to identify hot-spots of need, both ethnically and geographically. Results: These data indicate that the Roma in Romania face significant disparities in education, with Roma students less likely to progress beyond 8 th grade. In addition, the Roma population remains significantly disadvantaged with regard to safe and secure housing, poverty, and healthcare status, particularly in connection to diarrheal disease. In contrast, however, both Roma and non-Roma in rural areas face difficulties regarding full-time employment, sanitation, and water, sanitation, and hygiene infrastructure. In addition, the use of a synthetic population can generate information about ‘hot spots’ of need, based on geography, ethnicity, and type of aid required. Conclusions: These data demonstrate the challenges that remain to the Roma population in Romania, and also point to the myriad of ways in which all rural Romanians, regardless of ethnicity, are encountering hardship. This study highlights an approach that combines traditional survey data with more wide-reaching geographically based data and CART analysis to determine ‘hot spot’ areas of need in a given population. With the appropriate inputs, this tool can be e
- Published
- 2019
- Full Text
- View/download PDF
30. Advancing the Global Land Grant Institution: Creating a Virtual Environment to Re-envision Extension and Advance GSS-related Research, Education, and Collaboration
- Author
-
Hall, Ralph P., Polys, Nicholas F., Sforza, Peter M., Eubank, Stephen D., Lewis, Bryan L., Krometis, Leigh-Anne H., Pollyea, Ryan M., Schoenholtz, Stephen H., Sridhar, Venkataramana, Crowder, Van, Lipsey, John, Christie, Maria Elisa, Glasson, George E., Scherer, Hannah H., Davis, A. Jack, Dunay, Robert J., King, Nathan T., Muelenaer, Andre A., Muelenaer, Penelope, Rist, Cassidy, and Wenzel, Sophie
- Abstract
The vision for this project has emerged from several years of research, teaching, and service in Africa and holds the potential to internationalize education at Virginia Tech and in our partner institutions in Malawi. The vision is simple, to develop a state-of-the-art, data rich, virtual decision-support and learning environment that enables local-, regional-, and national-level actors in developed and developing regions to make decisions that improve resilience and sustainability. Achieving these objectives will require a system that can combine biogeophysical and sociocultural data in a way that enables actors to understand and leverage these data to enhance decision-making at various levels. The project will begin by focusing on water, agricultural, and health systems in Malawi, and can be expanded over time to include any sector or system in any country. The core ideas are inherently scalable...
- Published
- 2017
31. A survey of quality of life indicators in the Romanian Roma population following the ‘Decade of Roma Inclusion’
- Author
-
Powell Doherty, Rebecca, primary, Telionis, Pyrros A., additional, Müller-Demary, Daniel, additional, Hosszu, Alexandra, additional, Duminica, Ana, additional, Bertke, Andrea, additional, Lewis, Bryan, additional, and Eubank, Stephen, additional
- Published
- 2018
- Full Text
- View/download PDF
32. What to know before forecasting the flu
- Author
-
Chakraborty, Prithwish, primary, Lewis, Bryan, additional, Eubank, Stephen, additional, Brownstein, John S., additional, Marathe, Madhav, additional, and Ramakrishnan, Naren, additional
- Published
- 2018
- Full Text
- View/download PDF
33. What to know before forecasting the flu
- Author
-
Chakraborty, Prithwish, Lewis, Bryan L., Eubank, Stephen, Brownstein, John S., Marathe, Madhav V., Ramakrishnan, Naren, Chakraborty, Prithwish, Lewis, Bryan L., Eubank, Stephen, Brownstein, John S., Marathe, Madhav V., and Ramakrishnan, Naren
- Abstract
Accurate and timely influenza (flu) forecasting has gained significant traction in recent times. If done well, such forecasting can aid in deploying effective public health measures. Unlike other statistical or machine learning problems, however, flu forecasting brings unique challenges and considerations stemming from the nature of the surveillance apparatus and the end utility of forecasts. This article presents a set of considerations for flu forecasters to take into account prior to applying forecasting algorithms.
- Published
- 2018
- Full Text
- View/download PDF
34. What to know before forecasting the flu
- Author
-
Computer Science, Discovery Analytics Center, Fralin Life Sciences Institute, Chakraborty, Prithwish, Lewis, Bryan L., Eubank, Stephen, Brownstein, John S., Marathe, Madhav V., Ramakrishnan, Naren, Computer Science, Discovery Analytics Center, Fralin Life Sciences Institute, Chakraborty, Prithwish, Lewis, Bryan L., Eubank, Stephen, Brownstein, John S., Marathe, Madhav V., and Ramakrishnan, Naren
- Abstract
Accurate and timely influenza (flu) forecasting has gained significant traction in recent times. If done well, such forecasting can aid in deploying effective public health measures. Unlike other statistical or machine learning problems, however, flu forecasting brings unique challenges and considerations stemming from the nature of the surveillance apparatus and the end utility of forecasts. This article presents a set of considerations for flu forecasters to take into account prior to applying forecasting algorithms.
- Published
- 2018
35. Modeling Commodity Flow in the Context of Invasive Species Spread: Study of Tuta absoluta in Nepal
- Author
-
Sridhar, Venkataramana, Wu, S., Shi, B., Marathe, Achla, Sah, L.P., Giri, A.P., Colavito, L.A., Nitin, K.S., Asokan, R., Muniappan, Rangaswamy (Muni), Norton, George W., Adiga, A., and Eubank, Stephen
- Abstract
Trade and transport of goods is widely accepted as a primary pathway for the introduction and dispersal of invasive species. However, understanding commodity flows remains a challenge owing to its complex nature, unavailability of quality data and lack of systematic modeling methods. A robust network-based approach is proposed to model seasonal flow of agricultural produce and examine its role in pest spread. It is applied to study the spread of Tuta absoluta, a devastating pest of tomato in Nepal. Further, the long-term establishment potential of the pest and its economic impact on the country are assessed. Preliminary analyses indicate that T. absoluta will invade most major tomato production regions within a year of introduction and the economic impact of invasion could range from $17-25 million. The proposed approach is generic and particularly suited for data-poor scenarios. This work was supported in part by the United States Agency for International Development under the Cooperative Agreement NO. AID-OAA-L-15-00001 Feed the Future Innovation Lab for Integrated Pest Management, DTRA CNIMS Contract HDTRA1-11-D-0016-0001, NSF BIG DATA Grant IIS-1633028, NSF DIBBS Grant ACI-1443054, NIH Grant 1R01GM109718 and NSF NRT-DESE Grant DGE-154362. G.N. was also partly supported by Virginia Agricultural Experiment Station project VA-136324.
- Published
- 2017
36. Results from the centers for disease control and prevention’s predict the 2013–2014 Influenza Season Challenge
- Author
-
Biggerstaff, Matthew, Alper, David, Dredze, Mark, Fox, Spencer, Fung, Isaac Chun Hai, Hickmann, Kyle S., Lewis, Bryan, Rosenfeld, Roni, Shaman, Jeffrey, Tsou, Ming Hsiang, Velardi, Paola, Vespignani, Alessandro, Finelli, Lyn, Chandra, Priyadarshini, Kaup, Hemchandra, Krishnan, Ramesh, Madhavan, Satish, Markar, Ashirwad, Pashley, Bryanne, Paul, Michael, Meyers, Lauren Ancel, Eggo, Rosalind, Henderson, Jette, Ramakrishnan, Anurekha, Scott, James, Singh, Bismark, Srinivasan, Ravi, Bakach, Iurii, Hao, Yi, Schaible, Braydon J., Sexton, Jessica K., Del Valle, Sara Y., Deshpande, Alina, Fairchild, Geoffrey, Generous, Nicholas, Priedhorsky, Reid, Hickman, Kyle S., Hyman, James M., Brooks, Logan, Farrow, David, Hyun, Sangwon, Tibshirani, Ryan J., Yang, Wan, Allen, Christopher, Aslam, Anoshã, Nagel, Anna, Stilo, Giovanni, Basagni, Stefano, Zhang, Qian, Perra, Nicola, Chakraborty, Prithwish, Butler, Patrick, Khadivi, Pejman, Ramakrishnan, Naren, Chen, Jiangzhuo, Barrett, Chris, Bisset, Keith, Eubank, Stephen, Anil Kumar, V. S., Laskowski, Kathy, Lum, Kristian, Marathe, Madhav, Aman, Susan, Brownstein, John S., Goldstein, Ed, Lipsitch, Marc, Mekaru, Sumiko R., Nsoesie, Elaine O., Gesualdo, Francesco, Tozzi, Alberto E., Broniatowski, David, Karspeck, Alicia, Tse, Zion Tsz Ho, Ying, Yuchen, Gambhir, Manoj, and Scarpino, Sam
- Subjects
0301 basic medicine ,Veterinary medicine ,Influenza season ,Models, Biological ,03 medical and health sciences ,0302 clinical medicine ,Public health surveillance ,Models ,Centers for Disease Control and Prevention (U.S.) ,Influenza, Human ,Influenza prevention ,Expert evaluation ,Humans ,Medicine ,Public Health Surveillance ,Research article ,National level ,030212 general & internal medicine ,Duration (project management) ,health care economics and organizations ,Models, Statistical ,business.industry ,Modeling ,social sciences ,Statistical ,Biological ,Disease control ,United States ,Influenza ,3. Good health ,030104 developmental biology ,Infectious Diseases ,Forecasting ,Prediction ,Seasons ,Human ,Centers for Disease Control and Prevention, U.S ,business ,Research Article ,Demography - Abstract
Background Early insights into the timing of the start, peak, and intensity of the influenza season could be useful in planning influenza prevention and control activities. To encourage development and innovation in influenza forecasting, the Centers for Disease Control and Prevention (CDC) organized a challenge to predict the 2013–14 Unites States influenza season. Methods Challenge contestants were asked to forecast the start, peak, and intensity of the 2013–2014 influenza season at the national level and at any or all Health and Human Services (HHS) region level(s). The challenge ran from December 1, 2013–March 27, 2014; contestants were required to submit 9 biweekly forecasts at the national level to be eligible. The selection of the winner was based on expert evaluation of the methodology used to make the prediction and the accuracy of the prediction as judged against the U.S. Outpatient Influenza-like Illness Surveillance Network (ILINet). Results Nine teams submitted 13 forecasts for all required milestones. The first forecast was due on December 2, 2013; 3/13 forecasts received correctly predicted the start of the influenza season within one week, 1/13 predicted the peak within 1 week, 3/13 predicted the peak ILINet percentage within 1 %, and 4/13 predicted the season duration within 1 week. For the prediction due on December 19, 2013, the number of forecasts that correctly forecasted the peak week increased to 2/13, the peak percentage to 6/13, and the duration of the season to 6/13. As the season progressed, the forecasts became more stable and were closer to the season milestones. Conclusion Forecasting has become technically feasible, but further efforts are needed to improve forecast accuracy so that policy makers can reliably use these predictions. CDC and challenge contestants plan to build upon the methods developed during this contest to improve the accuracy of influenza forecasts. Electronic supplementary material The online version of this article (doi:10.1186/s12879-016-1669-x) contains supplementary material, which is available to authorized users.
- Published
- 2016
- Full Text
- View/download PDF
37. Interactions among human behavior, social networks, and societal infrastructures: A Case Study in Computational Epidemiology
- Author
-
Barrett, Christopher L., Bisset, Keith, Chen, Jiangzhuo, Eubank, Stephen, Lewis, Bryan, Kumar, V. S. Anil, Marathe, Madhav V., and Mortveit, Henning S.
- Subjects
combinatorial algorithms ,computational complexity ,socio-technical and information systems ,discrete dynamical systems ,interaction-based computing ,theory of simulations ,agent-based models ,urban infrastructures ,Article ,biological - Abstract
Human behavior, social networks, and the civil infrastructures are closely intertwined. Understanding their co-evolution is critical for designing public policies and decision support for disaster planning. For example, human behaviors and day to day activities of individuals create dense social interactions that are characteristic of modern urban societies. These dense social networks provide a perfect fabric for fast, uncontrolled disease propagation. Conversely, people’s behavior in response to public policies and their perception of how the crisis is unfolding as a result of disease outbreak can dramatically alter the normally stable social interactions. Effective planning and response strategies must take these complicated interactions into account. In this chapter, we describe a computer simulation based approach to study these issues using public health and computational epidemiology as an illustrative example. We also formulate game-theoretic and stochastic optimization problems that capture many of the problems that we study empirically.
- Published
- 2009
38. Disparities in spread and control of influenza in slums of Delhi: findings from an agent-based modelling study
- Author
-
Adiga, Abhijin, primary, Chu, Shuyu, additional, Eubank, Stephen, additional, Kuhlman, Christopher J, additional, Lewis, Bryan, additional, Marathe, Achla, additional, Marathe, Madhav, additional, Nordberg, Eric K, additional, Swarup, Samarth, additional, Vullikanti, Anil, additional, and Wilson, Mandy L, additional
- Published
- 2018
- Full Text
- View/download PDF
39. Multi-scale immunoepidemiological modeling of within-host and between-host HIV dynamics: systematic review of mathematical models
- Author
-
Dorratoltaj, Nargesalsadat, primary, Nikin-Beers, Ryan, additional, Ciupe, Stanca M., additional, Eubank, Stephen G., additional, and Abbas, Kaja M., additional
- Published
- 2017
- Full Text
- View/download PDF
40. A survey of quality of life indicators in the Romanian Roma population following the ‘Decade of Roma Inclusion’
- Author
-
Powell Doherty, Rebecca, primary, Müller-Demary, Daniel, additional, Hosszu, Alexandra, additional, Duminica, Ana, additional, Bertke, Andrea, additional, Lewis, Bryan, additional, and Eubank, Stephen, additional
- Published
- 2017
- Full Text
- View/download PDF
41. Epidemiological and economic impact of pandemic influenza in Chicago: Priorities for vaccine interventions
- Author
-
Dorratoltaj, Nargesalsadat, primary, Marathe, Achla, additional, Lewis, Bryan L., additional, Swarup, Samarth, additional, Eubank, Stephen G., additional, and Abbas, Kaja M., additional
- Published
- 2017
- Full Text
- View/download PDF
42. Epidemiological and economic impact of pandemic influenza in Chicago: Priorities for vaccine interventions
- Author
-
Dorratoltaj, Nargesalsadat, Marathe, Achla, Lewis, Bryan L., Swarup, Samarth, Eubank, Stephen G., Abbas, Kaja M., Dorratoltaj, Nargesalsadat, Marathe, Achla, Lewis, Bryan L., Swarup, Samarth, Eubank, Stephen G., and Abbas, Kaja M.
- Abstract
The study objective is to estimate the epidemiological and economic impact of vaccine interventions during influenza pandemics in Chicago, and assist in vaccine intervention priorities. Scenarios of delay in vaccine introduction with limited vaccine efficacy and limited supplies are not unlikely in future influenza pandemics, as in the 2009 H1N1 influenza pandemic. We simulated influenza pandemics in Chicago using agent-based transmission dynamic modeling. Population was distributed among high-risk and non-high risk among 0±19, 20±64 and 65+ years subpopulations. Different attack rate scenarios for catastrophic (30.15%), strong (21.96%), and moderate (11.73%) influenza pandemics were compared against vaccine intervention scenarios, at 40% coverage, 40% efficacy, and unit cost of $28.62. Sensitivity analysis for vaccine compliance, vaccine efficacy and vaccine start date was also conducted. Vaccine prioritization criteria include risk of death, total deaths, net benefits, and return on investment. The risk of death is the highest among the high-risk 65+ years subpopulation in the catastrophic influenza pandemic, and highest among the high-risk 0±19 years subpopulation in the strong and moderate influenza pandemics. The proportion of total deaths and net benefits are the highest among the high-risk 20±64 years subpopulation in the catastrophic, strong and moderate influenza pandemics. The return on investment is the highest in the high-risk 0±19 years subpopulation in the catastrophic, strong and moderate influenza pandemics. Based on risk of death and return on investment, high-risk groups of the three age group subpopulations can be prioritized for vaccination, and the vaccine interventions are cost saving for all age and risk groups. The attack rates among the children are higher than among the adults and seniors in the catastrophic, strong, and moderate influenza pandemic scenarios, due to their larger social contact network and homophilous interactions in school.
- Published
- 2017
- Full Text
- View/download PDF
43. Multi-scale immunoepidemiological modeling of within-host and between-host HIV dynamics: systematic review of mathematical models
- Author
-
Dorratoltaj, Nargesalsadat, Nikin-Beers, Ryan, Ciupe, Mihaela Stanca, Eubank, Stephen G., Abbas, Kaja M., Dorratoltaj, Nargesalsadat, Nikin-Beers, Ryan, Ciupe, Mihaela Stanca, Eubank, Stephen G., and Abbas, Kaja M.
- Abstract
Objective The objective of this study is to conduct a systematic review of multi-scale HIV immunoepidemiological models to improve our understanding of the synergistic impact between the HIV viral-immune dynamics at the individual level and HIV transmission dynamics at the population level. Background While within-host and between-host models of HIV dynamics have been well studied at a single scale, connecting the immunological and epidemiological scales through multi-scale models is an emerging method to infer the synergistic dynamics of HIV at the individual and population levels. Methods We reviewed nine articles using the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) framework that focused on the synergistic dynamics of HIV immunoepidemiological models at the individual and population levels. Results HIV immunoepidemiological models simulate viral immune dynamics at the within-host scale and the epidemiological transmission dynamics at the between-host scale. They account for longitudinal changes in the immune viral dynamics of HIV+ individuals, and their corresponding impact on the transmission dynamics in the population. They are useful to analyze the dynamics of HIV super-infection, co-infection, drug resistance, evolution, and treatment in HIV+ individuals, and their impact on the epidemic pathways in the population. We illustrate the coupling mechanisms of the within-host and between-host scales, their mathematical implementation, and the clinical and public health problems that are appropriate for analysis using HIV immunoepidemiological models. Conclusion HIV immunoepidemiological models connect the within-host immune dynamics at the individual level and the epidemiological transmission dynamics at the population level. While multi-scale models add complexity over a single-scale model, they account for the time varying immune viral response of HIV+ individuals, and the corresponding impact on the time-varying risk of transmis
- Published
- 2017
- Full Text
- View/download PDF
44. Multi-scale immunoepidemiological modeling of within-host and between-host HIV dynamics: systematic review of mathematical models
- Author
-
Mathematics, Population Health Sciences, Fralin Life Sciences Institute, Dorratoltaj, Nargesalsadat, Nikin-Beers, Ryan, Ciupe, Mihaela Stanca, Eubank, Stephen G., Abbas, Kaja M., Mathematics, Population Health Sciences, Fralin Life Sciences Institute, Dorratoltaj, Nargesalsadat, Nikin-Beers, Ryan, Ciupe, Mihaela Stanca, Eubank, Stephen G., and Abbas, Kaja M.
- Abstract
Objective The objective of this study is to conduct a systematic review of multi-scale HIV immunoepidemiological models to improve our understanding of the synergistic impact between the HIV viral-immune dynamics at the individual level and HIV transmission dynamics at the population level. Background While within-host and between-host models of HIV dynamics have been well studied at a single scale, connecting the immunological and epidemiological scales through multi-scale models is an emerging method to infer the synergistic dynamics of HIV at the individual and population levels. Methods We reviewed nine articles using the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) framework that focused on the synergistic dynamics of HIV immunoepidemiological models at the individual and population levels. Results HIV immunoepidemiological models simulate viral immune dynamics at the within-host scale and the epidemiological transmission dynamics at the between-host scale. They account for longitudinal changes in the immune viral dynamics of HIV+ individuals, and their corresponding impact on the transmission dynamics in the population. They are useful to analyze the dynamics of HIV super-infection, co-infection, drug resistance, evolution, and treatment in HIV+ individuals, and their impact on the epidemic pathways in the population. We illustrate the coupling mechanisms of the within-host and between-host scales, their mathematical implementation, and the clinical and public health problems that are appropriate for analysis using HIV immunoepidemiological models. Conclusion HIV immunoepidemiological models connect the within-host immune dynamics at the individual level and the epidemiological transmission dynamics at the population level. While multi-scale models add complexity over a single-scale model, they account for the time varying immune viral response of HIV+ individuals, and the corresponding impact on the time-varying risk of transmis
- Published
- 2017
45. MOESM1 of Enhancing disease surveillance with novel data streams: challenges and opportunities
- Author
-
Althouse, Benjamin, Scarpino, Samuel, Meyers, Lauren, Ayers, John, Bargsten, Marisa, Baumbach, Joan, Brownstein, John, Castro, Lauren, Clapham, Hannah, Cummings, Derek, Valle, Sara Del, Eubank, Stephen, Fairchild, Geoffrey, Finelli, Lyn, Generous, Nicholas, George, Dylan, Harper, David, HĂŠbert-Dufresne, Laurent, Johansson, Michael, Konty, Kevin, Lipsitch, Marc, Milinovich, Gabriel, Miller, Joseph, Nsoesie, Elaine, Olson, Donald, Paul, Michael, Polgreen, Philip, Priedhorsky, Reid, Read, Jonathan, RodrĂGuez-Barraquer, Isabel, Smith, Derek, Stefansen, Christian, Swerdlow, David, Thompson, Deborah, Vespignani, Alessandro, and Wesolowski, Amy
- Subjects
ComputingMethodologies_DOCUMENTANDTEXTPROCESSING - Abstract
Supplemental table (pdf)
- Published
- 2015
- Full Text
- View/download PDF
46. Innovation networks and complex contagion in East Africa: modeling adoption of conservation agriculture in the Mt. Elgon region of Kenya and Uganda
- Author
-
Rivers Gunter, J. C. M., Moore, Keith M., Eubank, Stephen, Kuhlman, C., Lamb, Jennifer Nicole, Laker-Ojok, Rita, Ngosia Sikuku, D., and Sustainable Agriculture and Natural Resource Management (SANREM) Knowledgebase
- Subjects
Conservation agriculture ,Social learning ,Agent-based modeling ,Social contagion ,Farmer to farmer ,Network analysis ,Farm/Enterprise Scale Watershed ,Adoption of innovations ,Extension service ,Technology transfer - Abstract
Metadata only record Community support networks play a key role in smallholder farmers’ willingness to adopt CCRA-8 (Technology Networks for Sustainable Innovation)
- Published
- 2014
47. Modeling the Ebola Outbreak in West Africa, August 4th 2014 update
- Author
-
Lewis, Bryan L., Rivers, Caitlin, Eubank, Stephen, Marathe, Marathe, and Barrett, Christopher L.
- Published
- 2014
48. Innovation networks and social contagion in East Africa
- Author
-
Gunter, J., Rivers, Caitlin, Eubank, Stephen, Moore, Keith M., Kuhlman, C., Lamb, Jennifer Nicole, Norton, James B., Omondi, Emmanuel C., Ojok, R. L., Sikuku, Dominic Ngosia, Ashilenje, Dennis S., Odera, J., Fralin Life Sciences Institute, and Sustainable Agriculture and Natural Resource Management (SANREM) Knowledgebase
- Subjects
Social network analysis ,Complex contagion ,Governance ,Participatory processes ,Conservation strategy ,Conservation agriculture ,Social learning ,Local knowledge ,Agent-based modeling ,Small-scale farming ,Conservation tillage ,Adoption of innovations ,Simulated populations - Abstract
This study seeks to understand the pathway by which new technology and the associated knowledge passes through community networks in western Kenya and eastern Uganda. Previous research in the region emphasizes the importance of community support to promote widespread adoption of Conservation Agriculture practices. We will simulate complex contagions of information in these networks using the simulation platform EpiSimdemics. This work complements and expands on the growing body of research that uses network analysis to study the effects of network structure and social contagion on complex health and social systems. LTRA-10 (CAPS for smallholder farms in eastern Uganda and western Kenya)
- Published
- 2012
49. Enhancing disease surveillance with novel data streams: challenges and opportunities
- Author
-
Althouse, Benjamin M., Scarpino, Samuel V., Meyers, Lauren Ancel, Ayers, John W., Bargsten, Marisa, Baumbach, Joan, Brownstein, John S., Castro, Lauren, Clapham, Hannah, Cummings, Derek A. T., Del Valle, Sara, Eubank, Stephen, Fairchild, Geoffrey, Finelli, Lyn, Generous, Nicholas, George, Dylan, Harper, David R., Hebert-Dufresne, Laurent, Johansson, Michael A., Konty, Kevin, Lipsitch, Marc, Millinovich, Gabriel, Miller, Joseph D., Nsoesie, Elaine O., Olson, Donald R., Paul, Michael, Priedhorsky, Reid, Read, Jonathan M., Rodriguez-Barraquer, Isabel, Smith, Derek J., Stefansen, Christian, Swerdlow, David L., Thompson, Deborah, Vespignani, Alessandro, Wesolowski, Amy, Polgreen, Philip M., Althouse, Benjamin M., Scarpino, Samuel V., Meyers, Lauren Ancel, Ayers, John W., Bargsten, Marisa, Baumbach, Joan, Brownstein, John S., Castro, Lauren, Clapham, Hannah, Cummings, Derek A. T., Del Valle, Sara, Eubank, Stephen, Fairchild, Geoffrey, Finelli, Lyn, Generous, Nicholas, George, Dylan, Harper, David R., Hebert-Dufresne, Laurent, Johansson, Michael A., Konty, Kevin, Lipsitch, Marc, Millinovich, Gabriel, Miller, Joseph D., Nsoesie, Elaine O., Olson, Donald R., Paul, Michael, Priedhorsky, Reid, Read, Jonathan M., Rodriguez-Barraquer, Isabel, Smith, Derek J., Stefansen, Christian, Swerdlow, David L., Thompson, Deborah, Vespignani, Alessandro, Wesolowski, Amy, and Polgreen, Philip M.
- Abstract
Novel data streams (NDS), such as web search data or social media updates, hold promise for enhancing the capabilities of public health surveillance. In this paper, we outline a conceptual framework for integrating NDS into current public health surveillance. Our approach focuses on two key questions: What are the opportunities for using NDS and what are the minimal tests of validity and utility that must be applied when using NDS? Identifying these opportunities will necessitate the involvement of public health authorities and an appreciation of the diversity of objectives and scales across agencies at different levels (local, state, national, international). We present the case that clearly articulating surveillance objectives and systematically evaluating NDS and comparing the performance of NDS to existing surveillance data and alternative NDS data is critical and has not sufficiently been addressed in many applications of NDS currently in the literature.
- Published
- 2015
- Full Text
- View/download PDF
50. Opinion: Mathematical models: A key tool for outbreak response
- Author
-
Lofgren, Eric T., Halloran, M. Elizabeth, Rivers, Caitlin, Drake, John M., Porco, Travis C., Lewis, Bryan L., Yang, Wan, Vespignani, Alessandro, Shaman, Jeffrey, Eisenberg, Joseph N.S., Eisenberg, Marisa C., Marathe, Madhav V., Scarpino, Samuel V., Alexander, Kathleen A., Meza, Rafael, Ferrari, Matthew J., Hyman, James M., Meyers, Lauren Ancel, Eubank, Stephen, Lofgren, Eric T., Halloran, M. Elizabeth, Rivers, Caitlin, Drake, John M., Porco, Travis C., Lewis, Bryan L., Yang, Wan, Vespignani, Alessandro, Shaman, Jeffrey, Eisenberg, Joseph N.S., Eisenberg, Marisa C., Marathe, Madhav V., Scarpino, Samuel V., Alexander, Kathleen A., Meza, Rafael, Ferrari, Matthew J., Hyman, James M., Meyers, Lauren Ancel, and Eubank, Stephen
- Abstract
The 2014 outbreak of Ebola in West Africa is unprecedented in its size and geographic range, and demands swift, effective action from the international community. Understanding the dynamics and spread of Ebola is critical for directing interventions and extinguishing the epidemic; however, observational studies of local conditions have been incomplete and limited by the urgent need to direct resources to patient care. Mathematical and computational models can help address this deficiency through work with sparse observations, inference on missing data, and incorporation of the latest information. These models can clarify how the disease is spreading and provide timely guidance to policymakers. However, the use of models in public health often meets resistance (1), from doubts in peer review about the utility of such analyses to public skepticism that models can contribute when the means to control an epidemic are already known (2). Even when they are discussed in a positive light, models are often portrayed as arcane and largely inaccessible thought experiments (3). However, the role of models is crucial: they can be used to quantify the effect of mitigation efforts, provide guidance on the scale of interventions required to achieve containment, and identify factors that fundamentally influence the course of an outbreak.
- Published
- 2015
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.