Immigration Laws and Immigrant Health: Modeling the Spread of Tuberculosis in Arizona The Mathematical and Theoretical Biology Institute 2010 Abstract.

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Immigration Laws and Immigrant Health: Modeling the Spread of Tuberculosis in Arizona The Mathematical and Theoretical Biology Institute 2010 Abstract Introduction Epidemiological Model Analysis Simulations and Results Sensitivity Analysis Conclusions Acknowledgments R c is a measure of the number of primary infections caused by a “typical” infectious individual in a fully susceptible population. In the absence of backward bifurcation, if R c 1, the disease free equilibrium is unstable and our system will now approach an endemic equilibrium where the disease will invade our population. The United States has observed a steady decline in the number of reported Tuberculosis(TB) cases in the past fifty years, but many states, such as Arizona, have had rates consistently above the US average. TB has been regarded as a disease of the disadvantaged, where poverty, overcrowding and malnourishment are responsible for much of the continued spread. Accordingly, the majority of TB cases in Arizona occur in the foreign-born population, whose households usually fall below the poverty line and have less access to adequate health care. Within this population, undocumented immigrants are the most socially and economically disadvantaged. Therefore, immigration laws, including some of the provisions in SB 1070, are likely to cause further marginalization as the increased fear of deportation will discourage undocumented individuals from seeking work and healthcare. Such laws could potentially exacerbate the spread of TB among undocumented immigrants and the low-income communities in which they reside, eventually extending to all socioeconomic classes. To observe the spread of TB in Arizona this paper employs a TB epidemic model that considers low and high income groups and accounts for different degrees of interaction within and between these socioeconomic classes. We also adjust the model parameters to simulate changes in behavior of undocumented immigrants before and after the implementation of an immigration law such as SB This project has been supported by grants from the National Science Foundation (NSF - Grant DMPS ), the National Security Agency (NSA - Grant H ), the Alfred P. Sloan Foundation; and the President and Provost Offices at Arizona State University. The Mathematical and Theoretical Biology Institute now hosted at the Mathematical, Computational and Modeling Science Center at ASU would like to give thanks to everybody involved with the program for the past 15 years. We would especially like to thank our faculty advisor Baojun Song PhD, as well as our mentors Karen Rios-Soto PhD, Leon Arriola PhD, Angela Ortiz PhD, Benjamin Morin and Reynaldo Castro-Estrada, for their insight and support. We also would like to thank MTBI and Dr. Carlos Castillo-Chavez PhD for the wonderful opportunity and academic experience.  In 2007 the TB rate for U.S.-born individuals TB was 2.3 per 100,000 people while the TB rate for foreign-born individuals was 21.9 per 100,000  In Arizona, foreign-born persons account for 61% of all TB cases  Immigration laws such as SB 1070 would legally allows law enforcement officials to question a suspect's immigration status if there is ''reasonable suspicion" they entered the country illegally  Some of the medical community is outraged, since undocumented immigrants are less likely to utilize healthcare; now, out of increased fear of deportation they are even more isolated medically and socially  TB is highly contagious, is expensive to treat and effects impoverished communities  Consequently, such immigration laws could foster the spread of TB within low-income communities where the majority of undocumented immigrants reside and also to other socioeconomic groups Parameters values were estimated by fitting a solution curve to the number of active TB cases per year in Arizona and from existing TB literature. The birth rates were estimated by fitting an exponential curve to the population of AZ earning less than $30,000 (low-income) and those earning more than $30,000 (high-income). Recruitment rate Per capita natural death rate Infection rate Per capita treatment rate Coefficient of infectiousness Natural progression from latent to infected Per capita death rate due to TB Force of transmission Contact probability Contact preference for own group Laura Catron, East Tennessee State University, Ambar La Forgia, Swarthmore College, Dustin Padilla, Arizona State University  P ij represents the probability that an individual in group i contacts an individual in group j  f i is one’s contact preference for their own income group and (1-f i ) is an individuals contact preference for the other income group  When is equal to one, there exists preferred mixing for one's own group Basic Control Number  p ij is P ij evaluated at the disease free equilibrium  Each R ij is itself a reproductive number representing the expected number of infections in a fully susceptible population of group i produced by an infected individual in group j Scenario 1 simulates an extreme scenario after an immigration law. TB drastically increases among the low-income population, increasing from 200 cases to 700 cases in 50 years. Despite the decreased contact with high-income groups, there is a slight increase in TB cases for this socioeconomic group as well. Scenario 2 simulates a moderate scenario after an immigration law. Despite small parameter changes, there is still a substantial increase in the number of infectious individuals among the low-income population, doubling from 200 to 400 TB cases. There is virtually no effect on high-income individuals. Scenario 1Scenario 2 Scenario 3Scenario 4 Scenario 3 models an extreme scenario assuming greater inter-group mixing (lower fi). The increase in infected individuals for the high-income group is larger than Scenario 1, doubling from 50 infected individuals to 100 over 40 years. Additionally, our low-income cases triples from 200 to 600. Scenario 4 mimics Scenario 2 except assuming lower fi. As one of our more plausible scenarios, it is important to notice the increase in the number of infectious TB cases for both income groups, creating a public health concern for both populations. When R c < 1 there are 3 biologically feasible equilibria: a stable disease free equilibrium, a small unstable positive equilibrium and a larger stable endemic equilibrium. A small increase in can cause a large increase in the number of disease cases but a small decrease in does not necessarily lead to the disappearance of an endemic disease. This means an epidemic may persist at steady state even if R c < 1. Symbol, i= L,H L = Low Income H = High Income NameDefinition SiSi SusceptibleNot infected but susceptible to TB infection EiEi ExposedInfected but unable to infect others IiIi InfectedActive TB infection (individual is able to infect others) Backward Bifurcation Sensitivity analysis quantifies the effect of changes in parameters, r i and f i on R c. Since R c is in terms of R LL, R LH, R HL, and R HH we use the chain rule when evaluating for some parameter p k. This results in the following sensitivity index: and r L are the most sensitive parameters  = means that a % decrease in results in roughly a 1% decrease in R c  = means that a 1.097% increase in r L results in roughly a 1% decrease in R c Single effort control method: the minimum change that should be made to an individual parameter to decrease R c to less than 1  The most consistently plausible method through all scenarios is an increase in r L  Through simulation, we observe an increase in the number of TB cases among low-income individuals in Arizona under all scenarios.  Under extreme parameter changes, as well as with less strict mixing preferences, there is a notable effect on the increase of infectious TB cases among our high-income group.  Through sensitivity analysis, we show that the most feasible and effective single effort control method is through increasing the treatment rate for the low-income group, though if a backward bifurcation exists for these parameters, more drastic measures must be taken to control TB in the population  Though Tuberculosis is of interest because of the direct increase in foreign-born TB cases, TB is not necessarily the largest health threat after severe immigration laws. The logic behind our model applies to other communicable diseases from measles to the common flu. R c =1