The Geography of HIV in Harris County, Texas, 1999-2003.

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Presentation transcript:

The Geography of HIV in Harris County, Texas,

Introduction This paper attempts to examine the geography of HIV in Harris County zip codes and the factors associated with areas of high prevalence. Examining zip codes where individuals have a greater risk of contracting HIV will provide information for the necessary programs needed to lessen the risk of HIV/AIDS within the zip-code areas. With a total of 70,127 cases, Texas is ranked as the state with the forth highest numbers of HIV/AIDS in the U.S. Within the state of Texas, Harris County reports the largest number of HIV/AIDS cases; it is ranked 8th nationally in the number of total reported AIDS cases; an estimated 1 in 90 Houstonians is living with HIV/AIDS

Variables Explaining Geographic Distribution of HIV POVERTY: Poor people are more likely to contract HIV because of what they have to do to find income or work. High Risk Transactional Sex Cannot negotiate condom use Poor nutrition and poor health, more vulnerable to HIV infection Less access to health care services. Lack of access to education, mass media and other sources of information

Variables Explaining Geographic Distribution of HIV EDUCATION Educated women are more likely to prevent HIV infection Education makes men more receptive to prevention Increased ability to think critically and analyze situations before acting irrationally. Gives status and confidence needed to act. Provide larger life skills to make informed choices Helps develop both economic and personal independence

Introduction: Variables Explaining Geographic Distribution of HIV RACE/ETHNICITY African Americans only account for 12% of the adults in the United States but account for 46.1% of the total number of people living with HIV in the United States. Reasons that African Americans might be at the greatest risk - Poverty - Lack of Health Access - Sexual Behavior - Stigma/Racism - Drug use

Hypotheses Hypothesis 1 Poverty will have a direct relationship with the zip-code HIV prevalence rates. Zip codes with a higher percentage of households that make under the poverty line will have higher HIV prevalence. Hypothesis 2 Education will also have a direct relationship with the zip-code HIV prevalence rate. Zip codes with a higher percentage of people who are over 25 years old and have an education of eighth grade or less will have the highest HIV prevalence rates Hypothesis 3 Race/Ethnicity will be a risk marker of HIV. Zip codes with a higher percentage of African Americans will have higher HIV rates. In contrast, neighborhoods with a high percentage of Whites will have a lower HIV prevalence rates.

Results: HIV & Poverty Data confirms hypothesis. A Spearman rho correlation coefficient was calculated for the relationship between HIV prevalence and the percentage of people who have a household income under the poverty line. A strong positive correlation was found (rho (132) =.696, p <.001), indicating a significant relationship between the two variables. As the number households that make an income under the poverty line increases, the neighborhood’s HIV prevalence rate increases correspondingly.

Results: HIV & Poverty

Results: HIV & Education Data also confirms this hypothesis. A Spearman rho correlation coefficient was calculated for the relationship between HIV prevalence and the percentage of people above the age of 25 with an education level less than eighth grade. A strong positive correlation was found (rho (132) =.469, p <.001), indicating a significant relationship between the two variables. As the number of people above 25 with an education level of eighth grade or less increases, the HIV rate increases.

Results: HIV & Education

Results: HIV & %White Hypothesis was confirmed from data. A Spearman rho correlation coefficient was calculated for the relationship between HIV prevalence and the percentage of Whites in Harris County. A strong negative correlation was found (rho (132) = -.653, p <.001), indicating a significant relationship between the two variables. As the percentage of Whites increase, the HIV prevalence rate decreases.

Results: HIV & %Whites

Results: HIV & %Black Hypothesis was confirmed from the data. A Spearman rho correlation coefficient was calculated for the relationship between HIV prevalence and the percentage of African Americans in Harris County. A strong positive correlation was found (rho (132) =.570, p <.001), indications a significant relationship between the two variables. As the percentage of African Americans increases, HIV prevalence increases.

Results: HIV & %Blacks

Results: HIV & %Hispanics A Spearman rho correlation coefficient was calculated for the relationship between HIV prevalence and the percentage of Hispanics. A moderately strong positive correlation was found (rho (132) =.294, p = <.001), indicating a significant relationship between the two variables. As the percentage of Hispanics increase, the HIV prevalence rate increase.

Results: HIV & %Hispanics

Conclusion HIV confirms to have strong relationships to education, poverty, and race/ethnicity. Some recommendations that can be made are: Local awareness in central Harris County -free and open to public -reduce stigma Future Research and Limitations