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| Science Stories for the Homeland Security Enterprise |
| U.S. Department of Homeland Security |
| March 2008 • Volume 2, Issue 2 |
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All Over the MapA Washington, D.C., think tank says it has pioneered a way to simulate, through advanced computer technology, the spread of an infectious disease on a national scale using both biological and sociological data.
Information about how the disease is transmitted can be combined with statistics from the census on The Large-Scale Agent Model (LSAM) is developed by the Brookings Institution and can be used to plot and plan for insect-borne and sexually transmitted diseases, industrial accidents that can produce harmful chemical plumes, and even trends such as obesity and teenage smoking. Eventually, LSAM will be able to expand to encompass data on schools, workplaces, and every hospital and medical facility in the country. It could even be integrated with travel and sociological data from other countries to predict disease spread and emergency response around the globe.
We build artificial communities of cyber people who represent the real population, said Joshua Epstein, the project lead at Brookings. Basically, we grow large-scale social dynamics of central importance to policy. LSAM is a major initiative of the National Center for the Study of Preparedness and Catastrophic Event Response (PACER), a DHS Center of Excellence based at Johns Hopkins University. PACER partners with other schools and organizations such as the American Red Cross to find ways to improve the Nations ability to prepare for and respond to high-consequence natural or man-made disasters. The Brookings model fits into PACERs focus on surge capacity, which deals with the challenge of accounting for enough medical care in the event of a catastrophe. Epstein and his colleague Jon Parkerwho built the computer program for LSAMwill input over the next year information about the location of every staffed hospital bed in the country. Then, theyll run a simulation that shows where shortages in medical care can be expected if theres ever an epidemic or disaster. In the same scenario, public health experts and policymakers would be able to use LSAM to map out and observe the effectiveness of vaccine distribution and other measures that could, for example, stop the spread of contagious diseases. These other measures could range from simple health advisories to moratoriums on travel. Epstein said PACER and Brookings see a host of potential uses for LSAM, which could apply to government agencies in the United States and, eventually, around the world. Were trying to have a very big picture of things, he said, and so far, weve had a lot of success. To request more information about this story, click here Security from ChaosTheres safety (and security) in
Heres how it works: Basically, computer software records the locations of routine, random vehicle checkpoints and canine searches at the airport. Police then provide data on possible terrorist targets and their relative importance. These data may change from one day to the next, or if there have been any security breaches or suspicious activity. A button is pushed, the computer runs, andvoilàpolice get a model of where to go, and when. The software comes up with random decisions that are based on calculated probabilities of a terrorist attack at those locations, using mathematical algorithms. The result: Security with airtight unpredictability. With the software, its extremely difficult to predict police operations.
What the airport was doing before was not truly statistically random; it was simply mixing things up, said computer science professor Milind Tambe. What they have now is systematized, true randomization. Tambe is with the Center for Risk and Economic Analysis of Terrorism Events (CREATE), a It was Tambe who had an ah-ha moment in 2004 that led to the
Praveen Paruchuri was a CREATE student at the time, and he, too, saw the connection. Then, in 2007, Paruchuris Soon thereafter, Tambe and Paruchuri tested the software, and the project was born as a six-month trial period. And it was given a snappy name, of course: Assistant for Randomized Monitoring over Routes, a.k.a. ARMOR. ARMOR has recently completed its six-month trial, and airport officials have given the university the thumbs up to transfer the software over to LAX on a more permanent basis. Meanwhile, other airports, agencies, and even businesses are starting to notice, Tambe said. Its a project thats attracting attention from coast to coast. But, wait: What if terrorists get hold of ARMOR and use the same information? Couldnt they solve the predictability puzzle? Not really, Tambe said. Even if they got the software and all the inputs, itd be like rolling To request more information about this story, click here Reading by NumbersLast summer, five mathematicians and one public health student converged on Rutgers University. Their mission: Develop an early-warning model that can see an epidemic before it claims many victims.
The visiting researchers worked with members of the Rutgers Center for Dynamic Data Analysis (DyDAn), the lead on a DHS Center of Excellence that creates ways to see patterns and relationships hidden in massive amounts of data. Our goal is to find evidence of an epidemic as early as possible, even before public health officials recognize it, said Nina Fefferman, a research professor at the universitys Center for Discrete Mathematics and Theoretical Computer Science. Fefferman, an applied mathematician, served as her visitors research mentor and joint team leader The six researchers came from two historically black universities: Howard in Washington, D.C., and Morgan State in Baltimore. Each school sent a graduate student, an undergrad, and a faculty member. They were part of the DHS Summer Research Team Program for Minority Serving Institutions (MSIs), in which the departments Epidemiologists study health reports and compare them to chart a diseases coursethe earlier, the better. But report data can seldom be compared apples for apples. For example, two neighboring counties may report an illness by ZIP code or by street, by week or by month. And to respect privacy laws, some of the most telling health datasuch as a victims contact information, age, or racemay remain off-limits.
Therefore, epidemiologists often must interpolate, reading between the lines, even when they are eyeing an illness that has already claimed scores of victims. So imagine the challenge of charting an illness whose numbers seem to be growing in no discernible pattern. The earliest victims may fall ill sporadicallytoo sporadically to signal a pattern or raise an alarm. Are their illnesses the start of a mushrooming trend? Or are they just statistical noiseisolated accidents that foretell nothing? Could the DyDAn researchers sort the noise from the signal? Using math, could they see a budding Yes, they couldusing a principle called information entropy, which is a measure of the uncertainty associated with a random variable. A single event thats totally randomsay, a coin toss or dice rollhas the greatest possible entropy. Its outcome is completely uncertain. But add weight to the coin or load the die, and the outcome is now less random, more predictable; it has less entropy.
The research teams exploited these properties to study disease. They first analyzed data that indicate the start of a possible disease spread (Step one in the diagram), selected just the right time-window for analysis (Step two), and grouped the diseases daily incidence figures into just the right categories (Step three). In this way, they were able to tease out an unmistakable jump in entropy The researchers then tested how well their model detected actual historical outbreaks. They scored a bulls-eye, accurately detecting when each disease shifted from low, normal levels to become an epidemic, days in advance. If DyDAn can maximize the models warning time, while retaining its accuracy, public health officials could intervene early, saving hundreds or even thousands of lives, Fefferman said. We know what we want to accomplish, but we dont know how long it will take, she added. But one thing is for sure: These students are up for the challenge. To request more information about this story, click here S&T Snapshots is a monthly newsletter produced by the DHS Science and Technology Directorate in partnership with the Homeland Security Institute. HSI is a Studies and Analysis Federally Funded Research and Development Center. |
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