Abstract
The objective of this study was to examine individual and neighborhood determinants of late HIV diagnosis by gender and birthplace among Latinos. Florida HIV surveillance data for 2007–2011 were merged with American Community Survey data to estimate the odds of late HIV diagnosis (AIDS within 3 months of HIV diagnosis). Of 5522 HIV-positive Latinos, 26.5 % were diagnosed late. The odds ratio (OR) for late diagnosis was 1.39 times higher for males than females [95 % confidence interval (CI) 1.14–1.69]. Neighborhood-level factors associated with late diagnosis included residing in the 3 highest quartiles of neighborhood unemployment for males. The OR was 1.22 times higher for foreign- than US-born Latinos (95 % CI 1.07–1.40). Among foreign-born, residing in areas in the 2nd and 3rd quartiles of unemployment, in rural areas, and areas with <25 % Hispanic/Latino population were associated with late diagnosis. Population-based HIV testing campaigns may require tailoring to ensure that they effectively reach male Latinos in areas with high unemployment and foreign-born Latinos in rural and predominantly non-Latino areas.
Keywords: Latinos, Foreign-born Latinos, Human immunodeficiency virus, Acquired immune deficiency syndrome, Late diagnosis
Background
An estimated 20 % of Latinos with human immunodeficiency virus (HIV) are not aware of their HIV status [1], and over 40 % are diagnosed with acquired immunodeficiency syndrome (AIDS) within 12 months of an HIV diagnosis [2]. Nearly half of HIV transmissions in the US are from persons unaware of their HIV infection [3] who may continue risky sexual and drug-related behaviors, unknowingly putting others at risk. Moreover, concurrent HIV and AIDS diagnosis, and subsequent delayed treatment, increase the risk of poor health outcomes [4] and doubles the risk of HIV-related mortality [5].
Concurrent HIV and AIDS diagnosis is most often due to delayed HIV screening (i.e. late HIV diagnosis). Late diagnosis has, therefore, been frequently measured as a short HIV-to-AIDS interval ranging from 1 to 12 months [2, 5–7]. Reported predictors of late HIV diagnosis among Latinos include male sex, older age [2, 6], injection drug use (IDU), high-risk heterosexual contact [6], birth outside of the US [2], and being Spanish-speaking [7]. A study of Latinos diagnosed with HIV in 33 states and 5 US-dependent areas found males to be 40 % more likely to be diagnosed late compared with females after controlling for individual-level covariates [6]. Furthermore, Latinos born in Mexico and Central America were over 2 times more likely to be diagnosed late with HIV compared with US-born Latinos [6].
In addition to demographics, area level factors might also influence the timing of HIV diagnosis. Areas with low socioeconomic status (SES) have been associated with high HIV rates [8, 9] and low AIDS survival [5, 10]. Neighborhood poverty has also been shown to partially account for racial/ethnic disparities in HIV/AIDS survival [11, 12] and antiretroviral initiation [12]. Although few studies have examined the role of neighborhood factors on late HIV diagnosis [5, 13], research suggests that residential neighborhood might predict availability and utilization of health care [14, 15] and preventive services. [16–18] Ethnic composition of neighborhoods has also been linked to health outcomes [19, 20] and health care utilization [14–18] among the general Latino population, but has not been examined among HIV-positive Latinos.
To date, we did not identify studies that examined the role of neighborhood SES and ethnic composition on late HIV diagnosis among Latinos. However, an earlier Florida study showed that 26 % of Latinos diagnosed in urban areas, and 43 % of Latinos diagnosed in rural areas were diagnosed late with HIV indicating that late HIV diagnosis is common [13]. Given Florida’s large and diverse Latino population and that Florida has the 7th highest HIV incidence rate and 3rd highest number of HIV cases among Latinos in the US, [21] this study was undertaken to (1) examine individual and neighborhood determinants of late HIV diagnosis (operationalized as AIDS within 3 months of HIV) among Latinos and (2) compare differences in the context of gender and country of birth.
Methods
Study Population
De-identified HIV surveillance data were obtained from the Florida Department of Health Enhanced HIV/AIDS Reporting System (eHARS). Latinos, ages 13 and over, who met the Centers for Disease Control and Prevention (CDC) case definition for HIV [22] between 2007 and 2011 were included. Cases with missing or invalid data for zip code at time of HIV diagnosis (n = 271), and cases diagnosed in a correctional facility (n = 102) were excluded.
Individual- and Neighborhood-Level Variables
The following individual-level variables were extracted from eHARS: year of HIV diagnosis, sex at birth; age at HIV diagnosis; HIV transmission mode; birth country; HIV-to-AIDS interval in months (if case progressed to AIDS); residential zip code at time of HIV diagnosis; and whether the case was diagnosed at a correctional facility. Late HIV diagnosis was defined as AIDS diagnosis within 3 months of HIV diagnosis. A 3-month time period was chosen to allow for comparison to a recent CDC study using HIV surveillance data [23]. Latinos were classified as US-born if they were born in any of the 50 states, District of Columbia, Puerto Rico, or any US dependent area, and foreign-born if born elsewhere. The US- versus foreign-born categorization was used to stratify the analysis. The “birthplace” variable was a further categorization of place of birth and included: US (excluding Puerto Rico), Puerto Rico, Cuba, Mexico, Central America, South America, and other. The “birthplace” variable was used to describe the sample and for models where we stratified by gender. The 2011 American Community Survey/Census Bureau Hispanic origin classification was used to define the Central and South America categories [24].
Neighborhood-level variables were obtained from the 2007–2011 American Community Survey (ACS) [25]. Zip codes were matched to a corresponding zip code tabulation area (ZCTA). ZCTAs are generalized areal representations of zip code service areas used by the ACS to tabulate summary statistics [26]. There were 983 ZCTAs in Florida 2007–2011. On average, ZCTAs had a population size of 19,012, and were 66 % non-Latino white, 17 % Latino, and 14 % non-Latino black [25]. Extracted ZCTA-level characteristics were: percent of the population living below the poverty line; percent of the population aged 16 years and older who are unemployed; percent of the population aged 18 years and older that was a high school graduate; and percent of the population who identified as Hispanic or Latino. Neighborhood-level SES variables were divided into quartiles of the Florida population. Based on previous research [27, 28], the percent of Hispanics/Latinos in the ZCTA was divided into 3 categories: <25, 25–49, and ≥50 %. Version 2.0 of Rural-Urban Commuting Area (RUCA) codes, developed by the University of Washington WWAMI Rural Research Center [29], were used to divide ZCTAs into rural or urban status. RUCA codes divide zip codes into urban and rural levels based on population dispersion and commuting patterns. We combined codes using categorization C of the RUCA codes. Categorization C allowed us to address the small number of cases in rural towns by combining the RUCA codes for large rural cities, small rural towns, and isolated small rural towns [29].
Analysis
Latinos were categorized as having a late HIV diagnosis or not. Timing of HIV diagnosis was compared across individual- and neighborhood-level variables using chi-square tests for categorical variables. The bivariate analyses were repeated comparing Latinos by gender and US/foreign-born status. An α ≤ 0.25 was used to determine which individual- and neighborhood-level variables to include in the multilevel logistic regression models [30]. Multilevel (level 1: individual; level 2: ZCTA) modeling was used to account for correlation among cases living in the same ZCTA. SAS GLIMMIX procedure was used to calculate crude (OR) and adjusted (aOR) odds ratios, treating ZCTA as a random effect. Models were stratified by gender and US- versus foreign-born status. SAS software, version 9.3 (SAS Institute, Cary, NC 2002) was used to conduct all analyses. The Florida International University and Florida Department of Health Institutional Review Boards approved this study.
Results
Of the 5522 Latinos who met the inclusion criteria, 1462 (26.5 %) were diagnosed with AIDS within 3 months of an HIV diagnosis (Table 1). The proportion of females (28.9 %) and males (26.0 %) diagnosed late with HIV was similar (p = 0.0657). Late HIV diagnosis was more common among foreign- (28.5 %) compared with US-born (23.7 %) Latinos (p <0.0001).
Table 1.
Characteristic | Total, na | Late diagnosis (AIDS diagnosis within 3 months of HIV diagnosis) | p valueb | |
---|---|---|---|---|
| ||||
Yes n (%) |
No n (%) |
|||
Total | 5522 | 1462 (26.5) | 4060 (73.5) | |
Individual-level variables, n (%) | ||||
Year of HIV diagnosis | 0.5259 | |||
2007 | 1225 | 303 (24.7) | 922 (75.3) | |
2008 | 1140 | 311 (27.3) | 829 (72.7) | |
2009 | 1097 | 299 (27.3) | 798 (72.7) | |
2010 | 1048 | 272 (26.0) | 776 (74.1) | |
2011 | 1012 | 277 (27.4) | 735 (72.6) | |
Sex at birth | 0.0657 | |||
Male | 4584 | 1191 (26.0) | 3393 (74.0) | |
Female | 938 | 271 (28.9) | 667 (71.1) | |
Age group at diagnosis | < 0.0001 | |||
13–24 years | 756 | 109 (14.4) | 647 (85.6) | |
25–49 years | 3799 | 983 (25.9) | 2816 (74.1) | |
50 years or older | 967 | 370 (38.3) | 597 (61.7) | |
Mode of transmission | < 0.0001 | |||
IDUc | 342 | 101 (29.5) | 241 (70.5) | |
MSM | 3254 | 703 (21.6) | 2551 (78.4) | |
Heterosexual | 1340 | 441 (32.9) | 899 (67.1) | |
Other/unknown | 586 | 217 (37.0) | 369 (63.0) | |
US- versus foreign-born | < 0.0001 | |||
US-bornd | 2290 | 542 (23.7) | 1748 (76.3) | |
Foreign-born | 3232 | 920 (28.5) | 2312 (71.5) | |
Birthplace | < 0.0001 | |||
United States | 1828 | 410 (22.4) | 1418 (77.6) | |
Puerto Rico | 462 | 132 (28.6) | 330 (71.4) | |
Cuba | 909 | 201 (22.1) | 708 (77.9) | |
Mexico | 325 | 134 (41.2) | 191 (58.8) | |
Central Americae,f | 535 | 196 (36.6) | 339 (63.4) | |
South Americae,g | 582 | 142 (24.4) | 440 (75.6) | |
Otherh | 881 | 247 (28.0) | 634 (72.0) | |
ZCTA-level variables, n (%) | ||||
Percent of population below poverty line (average 2007–2011), quartiles | 0.2546 | |||
<8.7 | 410 | 108 (26.3) | 302 (73.7) | |
8.7–12.9 | 1186 | 304 (25.6) | 882 (74.4) | |
13.0–19.3 | 1951 | 496 (25.4) | 1455 (74.6) | |
≥19.4 | 1975 | 554 (28.1) | 1421 (72.0) | |
Percent of population 16 and older who is unemployed (average 2007–2011), quartiles | 0.0012 | |||
<4.2 | 940 | 202 (21.5) | 738 (78.5) | |
4.2–5.5 | 1041 | 278 (26.7) | 763 (73.3) | |
5.6–7.2 | 1447 | 389 (26.9) | 1058 (73.1) | |
≥7.3 | 2094 | 593 (28.3) | 1501 (71.7) | |
Percent of population 18 years and older that is a high school graduate (average 2007–2011), quartiles | 0.0034 | |||
≥92.1 | 514 | 111 (21.6) | 403 (78.4) | |
86.9–92.0 | 1031 | 292 (28.3) | 739 (71.7) | |
80.4–86.8 | 1657 | 409 (24.7) | 1248 (75.3) | |
<80.4 | 2320 | 650 (28.0) | 1670 (72.0) | |
Percent of population who identified themselves as Hispanic/Latino | 0.1155 | |||
≥50 | 2017 | 509 (25.2) | 1508 (74.8) | |
25–49 | 1668 | 436 (26.1) | 1232 (73.9) | |
<25 | 1837 | 517 (28.1) | 1320 (71.9) | |
RUCA classificationi | 0.0008 | |||
Rural | 88 | 37 (42.1) | 51 (58.0) | |
Urban | 5434 | 1425 (26.2) | 4009 (73.8) |
US United States, ZCTA zip code tabulation area, IDU injection drug use, MSM male to male sexual contact, RUCA Rural–Urban Commuting Area. Percentage may not add up to 100 due to rounding
Excludes cases diagnosed in a correctional facility, missing residential zip code at time of HIV diagnosis, or diagnosed under the age of 13
p value from Chi square tests
Includes cases reported as both IDU and MSM/IDU
Category includes cases born in any of the 50 states, District of Columbia, or any US dependency
Category defined based on the 2011 American Community Survey/Census Bureau Hispanic origin classification
Includes cases born in the following countries: Costa Rica, El Salvador, Guatemala, Honduras, Nicaragua, and Panama
Includes cases born in the following countries: Argentina, Bolivia, Chile, Colombia, Ecuador, Paraguay, Peru, Uruguay, and Venezuela
Includes cases identified as “Hispanic/Latino” and born in countries other than the United States, Puerto Rico, Mexico, Cuba, Central American and South America with the exception of Brazil. This category includes cases born in Brazil (n = 112) and the Dominican Republic (n = 94)
Classified as rural or urban based on categorization C from the Rural–Urban Commuting Area (RUCA) data codes developed by the University of Washington WWAMI Rural Research Center
Male Versus Female Latinos
The adjusted odds of late diagnosis was 1.39 times higher for males compared with females [95 % confidence interval (CI) 1.14–1.69] (not in table). Being diagnosed with HIV at 25 years of age or older compared with 13–24 and being born in Mexico or Central America were independently associated with higher odds of late diagnosis in both females and males (Table 2). For females only, being born in Puerto Rico was marginally associated with late diagnosis. Mode of transmission of men who have sex with men (MSM) compared with heterosexual transmission was associated with lower odds of late diagnosis for males. Neighborhood factors were not associated with late diagnosis for females. Males residing in neighborhoods with higher unemployment compared with the lowest unemployment quartile were at higher odds of late diagnosis.
Table 2.
Females | Males | |||||
---|---|---|---|---|---|---|
|
|
|||||
Crude OR (95 % CI) | aORa (95 % CI) | aORb (95 % CI) | Crude OR (95 % CI) | aORa (95 % CI) | aORb (95 % CI) | |
Individual-level variables | ||||||
Age group at diagnosis | ||||||
13–24 years | Referent | Referent | Referent | Referent | Referent | Referent |
25–49 years | 2.30 (1.34–3.97) | 2.44 (1.39–4.27) | 2.49 (1.41–4.39) | 2.03 (1.61–2.57) | 1.91 (1.50–2.43) | 1.99 (1.56–2.53) |
50 years or older | 3.55 (1.98–6.35) | 3.68 (2.01–6.76) | 3.86 (2.08–7.14) | 3.71 (2.85–4.84) | 3.53 (2.67–4.66) | 3.64 (2.75–4.82) |
Mode of transmission | ||||||
Heterosexual | Referent | Referent | Referent | Referent | Referent | Referent |
IDUc | 0.70 (0.38–1.30) | 0.70 (0.37–1.32) | 0.70 (0.37–1.34) | 0.73 (0.54–0.99) | 0.83 (0.61–1.13) | 0.82 (0.60–1.13) |
MSM | – | – | – | 0.44 (0.37–0.53) | 0.54 (0.45–0.65) | 0.56 (0.47–0.68) |
Other/unknown | 1.44 (0.99–2.10) | 1.52 (1.04–2.24) | 1.49 (1.00–2.21) | 0.95 (0.74–1.22) | 0.95 (0.74–1.24) | 0.93 (0.72–1.21) |
Birthplace | ||||||
United States | Referent | Referent | Referent | Referent | Referent | Referent |
Puerto Rico | 1.87 (1.17–2.99) | 1.63 (1.00–2.64) | 1.66 (1.01–2.72) | 1.26 (0.96–1.64) | 1.08 (0.82–1.42) | 1.06 (0.81–1.40) |
Cuba | 1.64 (0.94–2.85) | 1.34 (0.76–2.37) | 1.36 (0.75–2.46) | 0.93 (0.76–1.15) | 0.78 (0.63–0.97) | 0.82 (0.65–1.02) |
Mexico | 3.26 (1.51–7.04) | 3.61 (1.64–7.94) | 3.51 (1.58–7.80) | 2.35 (1.81–3.06) | 2.20 (1.68–2.88) | 2.16 (1.64–2.84) |
Central America | 2.07 (1.31–3.25) | 1.91 (1.20–3.03) | 1.96 (1.22–3.15) | 1.98 (1.57–2.50) | 1.78 (1.40–2.27) | 1.82 (1.42–2.33) |
South America | 1.38 (0.77–2.48) | 1.11 (0.61–2.01) | 1.22 (0.66–2.25) | 1.08 (0.85–1.37) | 1.02 (0.80–1.30) | 1.06 (0.83–1.36) |
Other | 1.48 (0.99–2.22) | 1.20 (0.79–1.81) | 1.22 (0.80–1.87) | 1.32 (1.07–1.62) | 1.11 (0.89–1.37) | 1.12 (0.91–1.39) |
ZCTA-level variables | ||||||
Percent of population below poverty line (average 2007–2011), quartiles | ||||||
< 8.7 | Referent | d | d | Referent | d | Referent |
8.7–12.9 | 1.36 (0.69–2.66) | 0.95 (0.70–1.29) | 0.81 (0.59–1.11) | |||
13.0–19.3 | 1.37 (0.73–2.59) | 0.99 (0.74–1.32) | 0.79 (0.57–1.09) | |||
≥19.4 | 1.28 (0.69–2.39) | 1.15 (0.86–1.54) | 0.77 (0.53–1.10) | |||
Percent of population 16 and older who is unemployed (average 2007–2011), quartiles | ||||||
< 4.2 | Referent | d | d | Referent | d | Referent |
4.2–5.5 | 1.19 (0.67–2.14) | 1.28 (0.96–1.71) | 1.37 (1.06–1.78) | |||
5.6–7.2 | 1.20 (0.69–2.07) | 1.27 (0.97–1.67) | 1.29 (1.01–1.66) | |||
≥7.3 | 1.16 (0.69–1.96) | 1.44 (1.11–1.87) | 1.33 (1.03–1.72) | |||
Percent of population 18 years and older that is a high school graduate (average 2007–2011), quartiles | ||||||
≥92.1 | Referent | d | Referent | Referent | d | Referent |
86.9–92.0 | 1.75 (0.93–3.29) | 1.82 (0.95–3.49) | 1.35 (1.00–1.83) | 1.51 (1.10–2.07) | ||
80.4–86.8 | 1.35 (0.74–2.48) | 1.47 (0.78–2.76) | 1.27 (0.95–1.70) | 1.36 (0.97–1.90) | ||
< 80.4 | 1.67 (0.94–2.97) | 1.86 (1.00–3.47) | 1.43 (1.08–1.90) | 1.45 (1.00–2.10) | ||
Percent of population who identified themselves as Hispanic/Latino | ||||||
≥50 | Referent | d | Referent | Referent | d | Referent |
25–49 | 0.72 (0.50–1.04) | 0.78 (0.52–1.16) | 1.23 (0.99–1.52) | 1.14 (0.93–1.39) | ||
< 25 | 0.99 (0.71–1.38) | 1.22 (0.82–1.83) | 1.23 (1.01–1.50) | 1.10 (0.89–1.36) | ||
RUCA classification | ||||||
Urban | Referent | d | d | Referent | d | Referent |
Rural | 1.49 (0.53–4.15) | 2.02 (1.22–3.34) | 1.60 (0.96–2.68) |
US United States, ZCTA zip code tabulation area, IDU injection drug use, MSM male to male sexual contact, RUCA Rural–Urban Commuting Area, OR odds ratio, aOR adjusted odds ratio, CI confidence interval
Adjusted for individual-level variables with α ≤ 0.25 in bivariate analysis
Adjusted for individual-level variables and ZCTA-level variables with α ≤ 0.25 in bivariate analysis
IDU and IDU/MSM categories have been combined to address small cell numbers
Variable not included in the model
US Versus Foreign-Born Latinos
The adjusted odds of late diagnosis was 1.22 times higher for foreign- compared with US-born Latinos (95 % CI 1.07–1.40) (not in table). Being 25 years or older at time of diagnosis compared with 13–24 was associated with higher odds of late HIV diagnosis for both US-born and foreign-born Latinos (Table 3). Reporting the HIV transmission mode of MSM compared with heterosexual sex was associated with lower odds of late diagnosis for both groups. For foreign-born Latinos only, being male compared with female, and residing in the second and third highest quartiles of neighborhood unemployment compared with the lowest quartile, the third highest quartile of high school graduates compared with the highest quartile, an area with <25 % compared with ≥50 % Hispanic/Latino population, and in a rural compared with an urban area was associated with higher odds of late HIV diagnosis.
Table 3.
US-born Latinos | Foreign-born Latinos | |||||
---|---|---|---|---|---|---|
|
|
|||||
Crude OR (95 % CI) | aORa (95 % CI) | aORb (95 % CI) | Crude OR (95 % CI) | aORa (95 % CI) | aORb (95 % CI) | |
Individual-level variables | ||||||
Gender | ||||||
Female | Referent | Referent | Referent | Referent | Referent | Referent |
Male | 0.91 (0.72–1.15) | 1.28 (0.95–1.74) | 1.29 (0.95–1.75) | 0.78 (0.63–0.97) | 1.41 (1.09–1.81) | 1.38 (1.06–1.78) |
Age group at diagnosis | ||||||
13–24 years | Referent | Referent | Referent | Referent | Referent | Referent |
25–49 years | 2.06 (1.54–2.77) | 1.99 (1.48–2.67) | 1.99 (1.48–2.69) | 1.98 (1.43–2.72) | 1.87 (1.35–2.58) | 2.05 (1.47–2.86) |
50 years or older | 3.22 (2.26–4.59) | 2.87 (2.00–4.11) | 2.85 (1.98–4.10) | 3.70 (2.62–5.23) | 3.15 (2.22–4.48) | 3.56 (2.48–5.11) |
Mode of transmission | ||||||
Heterosexual | Referent | Referent | Referent | Referent | Referent | Referent |
IDUc | 1.07 (0.76–1.51) | 0.92 (0.64–1.33) | 0.91 (0.63–1.32) | 0.82 (0.54–1.27) | 0.76 (0.49–1.18) | 0.76 (0.48–1.19) |
MSM | 0.70 (0.56–0.89) | 0.66 (0.48–0.89) | 0.66 (0.49–0.89) | 0.48 (0.40–0.58) | 0.46 (0.37–0.57) | 0.51 (0.41–0.64) |
Other/unknown | 1.28 (0.91–1.81) | 1.14 (0.79–1.64) | 1.13 (0.78–1.63) | 1.11 (0.86–1.43) | 1.06 (0.82–1.38) | 1.02 (0.78–1.34) |
ZCTA-level variables | ||||||
Percent of population below poverty line (average 2007–2011), quartiles | ||||||
<8.7 | Referent | d | d | Referent | d | Referent |
8.7–12.9 | 0.90 (0.61–1.32) | 1.06 (0.72–1.55) | 0.95 (0.63–1.43) | |||
13.0–19.3 | 0.90 (0.62–1.31) | 1.09 (0.75–1.57) | 0.99 (0.65–1.51) | |||
≥19.4 | 0.83 (0.57–1.20) | 1.38 (0.96–1.99) | 1.11 (0.70–1.77) | |||
Percent of population 16 and older who is unemployed (average 2007–2011), quartiles | ||||||
<4.2 | Referent | d | d | Referent | d | Referent |
4.2–5.5 | 1.21 (0.84–1.76) | 1.42 (1.01–2.02) | 1.45 (1.04–2.04) | |||
5.6–7.2 | 1.11 (0.79–1.57) | 1.56 (1.12–2.17) | 1.43 (1.04–1.97) | |||
≥7.3 | 1.27 (0.92–1.76) | 1.61 (1.17–2.21) | 1.23 (0.88–1.73) | |||
Percent of population 18 years and older that is a high school graduate (average 2007–2011), quartiles | ||||||
≥92.1 | Referent | d | d | Referent | d | Referent |
86.9–92.0 | 1.25 (0.85–1.85) | 1.58 (1.09–2.30) | 1.68 (1.12–2.52) | |||
80.4–86.8 | 1.20 (0.83–1.74) | 1.33 (0.93–1.91) | 1.34 (0.87–2.06) | |||
<80.4 | 1.20 (0.83–1.73) | 1.58 (1.12–2.22) | 1.57 (0.98–2.51) | |||
Percent of population who identified themselves as Hispanic/Latino | ||||||
≥50 | Referent | d | Referent | Referent | d | Referent |
25–49 | 1.01 (0.77–1.32) | 0.95 (0.73–1.24) | 1.26 (0.98–1.62) | 1.24 (0.95–1.61) | ||
<25 | 1.19 (0.94–1.52) | 1.13 (0.88–1.44) | 1.30 (1.03–1.65) | 1.37 (1.05–1.79) | ||
RUCA classification | ||||||
Urban | Referent | d | Referent | Referent | d | Referent |
Rural | 1.55 (0.76–3.12) | 1.32 (0.65–2.68) | 2.24 (1.24–4.06) | 2.01 (1.08–3.73) |
US United States, ZCTA zip code tabulation area, IDU injection drug use, MSM male to male sexual contact, RUCA Rural–urban commuting area, OR odds ratio, aOR adjusted odds ratio, CI confidence interval
Adjusted for individual-level variables with α ≤ 0.25 in bivariate analysis
Adjusted for individual-level variables and ZCTA-level variables with α ≤ 0.25 in bivariate analysis
IDU and IDU/MSM categories have been combined to address small cell numbers
Variable not included in the model
Discussion
Our study found that 26.5 % of Latinos diagnosed with HIV 2007–2011 in Florida were diagnosed late; similar to 2011 national rates (27.4 %) [23], and to Florida rates for non-Latino whites (25.6 %) and blacks (28.7 %) [13]. Older age was a risk factor among both sexes and among US- and foreign-born Latinos. Latinos born in Mexico and Central America were significantly more likely to be diagnosed late compared with US-born Latinos. Higher neighborhood unemployment was associated with an increased risk of late diagnosis among males. Neighborhood-level variables were not associated with late diagnosis among females or US-born Latinos. However, neighborhood unemployment, education, and percent Hispanic/Latino were associated with late diagnosis for foreign-born Latinos.
Diagnosis of HIV as an adult (24–49 years) and older adult (50 years and older) compared with youth (13–24 years) was a strong predictor of late diagnosis in this study, consistent with previous research among Latinos [2, 6]. While this may be at least partially due to faster disease progression among older individuals [31], this may also be a consequence of adults and older adults having a greater opportunity to be diagnosed late by having more possible years to progress from HIV exposure to AIDS (if exposed young). It is important for future research to differentiate between accelerated progression of HIV, where individuals who are infected with HIV develop AIDS quickly providing little opportunity for effective screening, and late diagnosis, where individuals spend many years with HIV before developing AIDS but are not screened, to determine if strategies to improve HIV testing are needed. Nevertheless, the incidence of HIV among older adult Latinos is high [32], and over 80 % of Latinos over the age of 48 have never been tested for HIV [33].
The finding that males are at increased odds of late HIV diagnosis is consistent with national results [2, 6, 34]. A study of Latinos in 33 states and 5 US-dependent areas found the adjusted odds of late diagnosis to be 1.4 times higher for males compared with females (95 % CI 1.2–1.6) [6]. This might reflect the low HIV testing rates among male compared with female Latinos [33]. Our result of foreign- versus US-born Latinos is also consistent with a national study that reported an adjusted prevalence ratio of 1.2, 95 % CI 1.16–1.24 [2]. However, a separate study in Los Angeles found no difference between foreign- and US-born Latinos [7] suggesting that Latinos, or HIV testing outreach strategies, in Florida differ from those in California.
Our study found 41 % of HIV-positive Latinos born in Mexico and 37 % born in Central America were diagnosed late. Moreover, they had over twice the odds of late diagnosis compared with US-born Latinos. These results are similar to aggregate results for the US (Mexico aOR 2.2, 95 % CI 1.8–2.5; Central America aOR 2.5, 95 % CI 2.0–3.2) [6]. Among Latinos in the US, Mexicans are more likely to report never having been tested for HIV compared with Puerto Ricans, Central and South Americans, and other Latinos [33].
We did not find that neighborhood poverty was associated with late diagnosis despite its association with other adverse outcomes such as lower AIDS survival. Neighborhood poverty was not associated with delayed HIV diagnosis in an earlier study of Floridians that included non-Latino blacks, non-Latino whites, and Latinos [13]. This may be due to enhanced outreach efforts in Florida in poorer communities and that HIV testing is generally free of charge. In our study, males who resided in the three highest quartiles of unemployment had higher odds of late diagnosis compared with those who resided in the lowest quartile of unemployment. A study of National Health Interview Survey data found no difference in HIV testing between Latinos who were unemployed compared with those who were employed [33]. This suggests that a structural, rather than an individual-level mechanism may be playing a role. Of note, neighborhood-level factors examined in our study were not associated with late diagnosis among females. Previous research has suggested gender differences in social and structural determinants of health including socioeconomic factors and social support, with social support being more important for women and job security more important for men [35–37].
In our study, neighborhood-level variables were associated with late HIV diagnosis among foreign- but not US-born Latinos. For foreign-born Latinos, living in the 2nd and 3rd highest quartiles of unemployment increased the odds of late diagnosis. Although foreign-born Latinos (1.8 %) are less likely to be unemployed compared to US-born Latinos (2.8 %), they are more likely to be uninsured (49.3 versus 18 %, respectively) [38]. This might reflect work in industries that are less likely to offer employer-based health insurance [39]. Residing in a neighborhood with a low Latino ethnic density also increased the odds of late HIV diagnosis for foreign-born Latinos. A previous study by Gaskin et al. [15] found Latinos more likely to have an office-based physician visit when they resided in predominately Latino communities than non-Latino whites and blacks in Latino areas. The authors suggested this may be due to Latinos in predominantly Latino areas having better access to social networks and a higher rate of language-concordant patient/provider interactions. Communities with a larger proportion of Latinos might specifically target HIV testing strategies, outreach, and other resources to Latinos, including the provision of information in Spanish [40–42]. Although our study controlled for neighborhood SES, it is important to note that ethnic density was negatively correlated with neighborhood educational attainment (Pearson correlation −0.49, p value <0.0001), and unemployment (−0.22, p value <0.0001), and positively correlated with neighborhood poverty (0.15, p value <0.0001). Factors not measured in this study related to lower educational attainment and higher poverty in high ethnic density areas may be putting Latinos at risk for late diagnosis.
Finally, the proportion of Latinos diagnosed late with HIV was significantly higher in rural (42.1 %) compared with urban (26.2 %) areas, consistent with previous Florida [13] and US studies of Latinos [2]. The odds of late diagnosis was higher in rural compared with urban areas in the fully adjusted model but only for foreign-born Latinos. Only one study has compared late diagnosis among Latinos in rural and urban areas using multivariate models [2]. In this previous study, Espinoza et al. [2] found a higher prevalence of late diagnosis among Latinos residing in rural versus urban areas in 40 states and Puerto Rico. The study did not account for neighborhood SES or ethnic composition, and did not stratify by gender or US birth. Foreign-born Latinos in rural areas may experience lower individual-level SES and may include migrant farm workers with unique and added barriers to HIV testing. It is also possible that the few number of rural cases (n = 88) limited our power to find an association in the models stratified by gender and among US-born Latinos.
This study is not without limitations. First, our definition of late HIV diagnosis differed from previous studies examining Latinos, which used a 12-month HIV-to-AIDS interval [2, 6]. However, it was important to match our definition to the CDC national report for comparison [23]. Nevertheless, sensitivity analysis using a 12-month HIV-to-AIDS interval revealed similar estimates of late HIV diagnosis in our population compared to the national study (31.4 %) [2]. In addition, we used the date of HIV and AIDS diagnosis from Florida HIV surveillance records. It is possible that some foreign-born cases were diagnosed at a previous date in their country of birth, or that some foreign-born cases returned to their birth country and were subsequently diagnosed with AIDS within our study period but not recorded in our database. Second, our dataset did not contain individual-level SES, length of time in the US or documentation status, language of preference, health insurance status, level of acculturation, or perceived risk for HIV. These variables may be important predictors of late diagnosis [33]. Furthermore, individual-level SES particularly is important because it is possible that the association between residing in a neighborhood with high poverty and late HIV diagnosis differs for individuals whose individual-level income is above the poverty level or above the mean neighborhood level. Third, we were only able to study neighborhood factors at the ZCTA-level, as it was the smallest geographic unit available in the dataset. Finally, our study may not be generalizable to the predominantly Mexican foreign-born Latino population in the US as our sample of foreign-born Latinos was largely Cuban. Despite this difference, our results appear to parallel several national studies of Latinos suggesting a higher degree of generalizability than expected. Further study of delayed HIV diagnosis among other ethnic groups such as non-Hispanic blacks would be useful especially in Florida which has both a sizeable foreign-born and US-born black population [25].
The findings of this study suggest that adult and older adult Latinos, and Latinos who are male and born in Mexico and Central America are not fully benefiting from existing HIV testing programs. HIV testing outreach among Latinos should target efforts to reach these individuals more effectively. Furthermore, population-based HIV testing campaigns designed to reach Latinos may need to be enhanced and expanded in areas with high unemployment and areas that are rural. Innovative approaches need to be developed to serve hard-to-reach Latinos in non-Latino areas. It may be important for future studies to also examine neighborhoods with a high proportion of early HIV diagnoses, as these neighborhoods could provide important information for future structural level HIV testing efforts.
Acknowledgments
Research reported in this publication was supported by the National Institute on Drug Abuse (NIDA) under Award Number F31DA037790 and by the National Institute on Minority Health and Health Disparities (NIMHD) under award 5R01MD004002 of the National Institutes of Health. The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health.
Funding
This study was funded by the National Institute on Drug Abuse (NIDA) under Award Number F31DA037790 and by the National Institute on Minority Health & Health Disparities (NIMHD) under award 5R01MD004002 of the National Institutes of Health.
Footnotes
Author Contribution
To our knowledge this is the first study to identify neighborhood-level predictors of late HIV diagnosis for Latinos beyond rural/urban differences. Findings suggest that HIV testing campaigns in areas with high unemployment are not reaching Latino males. Additionally, foreign-born Latinos in rural and predominantly non-Latino areas appear to be at greater risk of late HIV diagnosis.
Conflict of interest
DM Sheehan declares no conflicts of interest. MJ Trepka declares no conflicts of interest. KP Fennie declares no conflicts of interest. G Prado declares no conflicts of interest. P Madhivanan declares no conflicts of interest. FR Dillon declares no conflicts of interest. LM Maddox declares no conflicts of interest.
Ethical Approval
All procedures performed were in accordance with the ethical standards of the institutional and/or national research committee and with the 1964 Helsinki declaration and its later amendments or comparable ethical standards. The Florida International University and Florida Department of Health Institutional Review Boards approved this study.
Informed Consent
This study conducted secondary data analysis of de-identified state-level administrative data, and therefore, informed consent was not applicable.
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