Healthcare utilization among persons living with hiv with attention to the influences of hepatitis


Chapter 4: Hospitalization Rates and Reasons among HIV Elite Controllers and Persons With Medically Controlled HIV Infection



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Chapter 4:
Hospitalization Rates and Reasons among HIV Elite Controllers and Persons With Medically Controlled HIV Infection


Reprinted from:

Crowell TA, Gebo KA, Blankson JN, Korthuis PT, Yehia BR, Rutstein RM, Moore RD, Sharp V, Nijhawan AE, Mathews WC, Hanau LH, Corales RB, Beil R, Somboonwit C, Edelstein H, Allen SL, Berry SA, for the HIV Research Network. “Hospitalization Rates and Reasons among HIV Elite Controllers and Persons with Medically Controlled HIV Infection.” The Journal of Infectious Diseases. Advance access published 2014 Dec 15, doi: 10.1093/infdis/jiu809.

By permission of Oxford University Press and the Infectious Diseases Society of America.

Abstract


Background: Elite controllers spontaneously suppress HIV viremia, but also demonstrate chronic inflammation that may increase risk of comorbidities. We compared hospitalization rates and causes among elite controllers to those of immunologically intact persons with medically controlled HIV.

Methods: For adults in care at 11 sites from 2005-2011, person-years with CD4 ≥350 cells/mm2 were categorized as medical control, elite control, low viremia or high viremia. All-cause and diagnostic category-specific hospitalization rates were compared between groups using negative binomial regression.

Results: We identified 149 (0.4%) elite controllers among 34,354 persons in care. Unadjusted hospitalization rates among the medical control, elite control, low viremia and high viremia groups were 10.5, 23.3, 12.6, and 16.9 per 100 person-years, respectively.

After adjustment for demographic and clinical factors, elite control was associated with higher rates of all-cause (adjusted incidence rate ratio 1.77 [95% CI 1.21-2.60]), cardiovascular (3.19 [1.50-6.79]) and psychiatric (3.98 [1.54-10.28]) hospitalization than was medical control. Non-AIDS-defining infections were the most common reason for admission overall (24.1% of hospitalizations) but were rare among elite controllers (2.7%), in whom cardiovascular hospitalizations were most common (31.1%).



Conclusions: Elite controllers are hospitalized more frequently than persons with medically controlled HIV, and cardiovascular hospitalizations are an important contributor.

Background


Elite controllers represent a small but important subset of persons living with HIV (PLWH) who suppress the virus and have delayed disease progression in the absence of antiretroviral therapy (ART).1,2 Although prevalence of elite control is estimated at only 0.15-1.5% of PLWH, study of these persons provides insights into HIV pathogenesis and potential mechanisms for new HIV therapies.3-6 Despite spontaneous and durable control of HIV viremia, elite control is associated with chronic immune activation and low-grade inflammation that exceeds the level seen in persons who achieve viral suppression via ART.7-9

Chronic inflammation among PLWH has been linked to complications such as cardiovascular disease, opportunistic infections, and neurologic disorders.10-13 Persistent low-grade inflammation may therefore place elite controllers at higher risk of clinical events than are persons whose HIV is controlled with ART. For example, prior studies have demonstrated a high burden of coronary atherosclerosis upon radiographic screening of elite controllers, but data on any association with clinical outcomes are lacking.14,15 The relative rarity of elite control makes it difficult to study clinical outcomes such as disease events or hospitalizations in this population.

We used a multi-site, multi-state cohort of persons living with HIV to compare hospitalization rates among elite controllers to immunologically intact persons with medically controlled and uncontrolled HIV.

Methods


Site Selection and Data Collection

The HIV Research Network (HIVRN) is a consortium that includes 12 sites providing longitudinal adult HIV care in 10 U.S. cities. Sites abstract comprehensive data from clinical records, de-identify these data and submit them to a data coordinating center for integration into a uniform database. Eleven of the participating sites submit hospitalization data and were able to participate in chart reviews for the purpose of this study (5 Northeast, 3 West, and 3 South). Nine of these sites have academic affiliations and two are community-based. Inclusion in this retrospective cohort study was restricted to persons who were in active care (defined as having at least one outpatient primary HIV care visit, one CD4 cell count, and one HIV-1 RNA during the calendar year) at these sites between 2005 and 2011. All sites contributed data for all years, except for one site which was not included in 2005 because of incomplete data.

The analysis was limited to persons considered immunologically intact. Person-years were excluded if they contained two consecutive CD4 measurements <350 cells/mm3 or any CD4 measurement <200 cells/mm3. If two consecutive measurements <350 cells/mm3 spanned separate calendar years, both calendar years were excluded. Participants could contribute additional observation time to the analysis after consistent CD4 reconstitution to >350 cells/mm3 occurred. Nadir CD4 was not considered a criterion for study participation and participants with CD4 reconstitution following any CD4 nadir were eligible to contribute observation time during calendar years following the first year of consistent CD4 reconstitution to >350 cells/mm3. All participants in this study either provided informed consent for inclusion in the HIVRN research database or a waiver of informed consent was granted by their local institutional review board. Institutional review boards at each site and at the data coordinating center at Johns Hopkins University approved the collection and use of these data for analysis and publication.
HIV Control Status

Elite control was defined by at least 3 consecutive HIV-1 RNA measurements, on separate days and spanning a period of at least 12 months, registering below the limit of detection for the assay in the absence of any ART. This definition of elite control has been used in several prior reports.3,16,17 Accrual of elite control observation time began only after one full year of undetectable HIV-1 RNA levels in order to minimize misclassification due to any missing ART data. (Laboratory data prior to 2005 were used to establish status in 2005). During elite control, detectable HIV-1 RNA levels <1000 copies/mL were permissible as long as such episodes represented the minority of measurements during the calendar year. The calendar year during which the elite control period ends was not considered an elite control PY. Medical records of elite controllers identified via this algorithm were manually reviewed to confirm elite control status. Individuals were excluded from the analysis if medical record review was not possible. Elite controllers were not eligible to contribute observation time to other HIV control categories.

Individuals not identified as elite controllers could contribute observation time to the following groups: medical control, low viremia, and/or high viremia. Medical control was defined by at least 3 consecutive HIV-1 RNA measurements, on separate days and spanning at least 12 months, which registered below the limit of detection for the assay, while prescribed ART. Medical control began during the first qualifying year starting with an undetectable HIV-1 RNA. Detectable HIV-1 RNA levels <1000 copies/mL were permissible after establishing medical control if they represented a minority of measurements during any calendar year.

Exploratory data analysis suggested a difference in hospitalization rates above and below the HIV-1 RNA threshold of 1000 copies/mL. Therefore, low viremia was defined by all HIV-1 RNA measurements in the calendar year falling below this threshold, but not satisfying other criteria for medical control. All person-years with HIV-1 RNA measurement(s) ≥1000 copies/mL were considered high viremia person-years. HIV control status was assessed annually and participants who were not identified as elite controllers could transition between other HIV control categories with each change in calendar year. A sensitivity analysis was performed in which participants could only contribute person-time to one HIV control status category, censoring data at the time of transition from that category.


Covariates

Age was assessed annually on July 1. Race/ethnicity and gender were categorized based on self-report. HIV transmission risk factors were divided into mutually exclusive categories: injection drug use (IDU), men who have sex with men (MSM), heterosexual transmission, or other/unknown. Individuals who reported IDU in addition to any other risk factor were categorized as IDU. Men who reported sex with both men and women were categorized as MSM. Hepatitis B surface antigen and hepatitis C antibody were used to determine hepatitis status and this assessment was updated annually. Outpatient HIV primary care visits were tallied annually. Insurance status, CD4 and HIV-1 RNA were updated with the first available assessment for each calendar year of observation. Participants with dual eligibility for Medicaid and Medicare were included in the Medicare category.


Outcomes

The primary outcome was all-cause hospitalization, and this was ascertained using admission and discharge dates that are reported by all HIVRN sites.

We also investigated cause-specific hospitalization rates within the subgroup of nine HIVRN sites which had International Classification of Diseases 9th edition (ICD-9) diagnosis code data available for each hospitalization. Hospitalizations were assigned to one of 18 diagnostic categories using a previously published algorithm.18,19 First, the primary diagnostic code was identified as the first-listed ICD-9 code that did not refer to HIV (042, V08, 795.71, V01.79), chronic HBV (070.22, 070.23, 070.32, 070.33), chronic HCV (070.44, 070.54, 070.70, 070.71), or oral candidiasis (112.0), since these represent comorbidities frequently recorded for billing purposes but insufficient to justify hospitalization. Second, Clinical Classifications Software (CCS) was used to assign the primary ICD-9 code into one of 18 “first-level” CCS categories 20. Finally, we modified the CCS diagnostic categories by reassigning infections (such as pneumonia) from organ system categories to the infection category; combining the congenital, perinatal, and unclassified categories (together representing 1% of admissions); and reassigning specific infections and malignancies into a new AIDS-defining illness (ADI) category according to Centers for Disease Control and Prevention criteria.21
Data Analysis

All-cause and cause-specific hospitalization rates were calculated using total number of visits as the numerator and aggregate person-time as the denominator and multiplied by 100 to obtain rates per 100 person-years (PY). Participants could contribute <1 year of observation during a calendar year due to death or new enrollment in care. Univariable and multivariable negative binomial regression models were used to estimate incidence rate ratios (IRRs) for hospitalization rates associated with HIV control status, age, race, sex, HIV risk factor, CD4 stratum, hepatitis status, number of primary HIV care visits and insurance status. Multivariable models included indicators for clinical care site to adjust for site-specific variability and for calendar year to adjust for secular trends.

All models used generalized estimating equations, clustered on person, with unstructured working correlation, robust variance estimators, and an offset for person-time. This technique adjusts the variance to account for multiple hospitalization events by a single person, including when these events occur under different exposure categories (e.g. under low viremia in one year and medical control in a separate year).22 A two-sided type I error of 5% was considered statistically significant. All analyses were performed using Stata 12.0 (StataCorp LP, College Station, TX, USA).



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