
Determinants of HIV outpatient service utilization according to HIV parameters
Author(s) -
Di Carlo Paola,
Immordino Palmira,
Mazzola Giovanni,
Colletti Pietro,
Alongi Ilenia,
Mineo Maurizio,
Scognamillo Marco,
Vitale Francesco,
Casuccio Alessandra
Publication year - 2014
Publication title -
journal of the international aids society
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.724
H-Index - 62
ISSN - 1758-2652
DOI - 10.7448/ias.17.4.19611
Subject(s) - medicine , logistic regression , dyslipidemia , health care , pediatrics , disease , economics , economic growth
The increased life expectancy of HIV patients in the era of highly active antiretroviral therapy has had profound consequences for the healthcare systems that provide their care. It is useful to assess whether healthcare resources need to be adapted to the different stages of HIV infection or to patient characteristics [1]. To study how patient features influence utilization of out patient services, we retrospectively analyzed the electronic health record of HIV‐positive patients who had followed day‐care programs at the AIDS Center of the University of Palermo, Italy. Materials and Methods 223 HIV‐infected subjects were recruited and divided into two groups according to CD4 cell counts (117 with a CD4 count ≤500/mm 3 and 106 with CD4 count ≥500/mm 3 ). Data on age, gender, race, lifestyle habits (including educational level, drug abuse history, smoking status, alcohol consumption, sexual behaviour) BMI, HIV‐RNA, CD4+ T‐cell count, antiretroviral therapy (ART), comorbidities such as HCV co‐infection, osteoporosis biomarker, dyslipidemia, diabetes, renal function and systolic and diastolic blood pressure were recorded in a purposely designed database and were analyzed in relation to AIN by uni‐ and multivariable logistic regression. Results Table 1 shows the characteristics of enrolled patients; the average age of the recruited patients was 45.4±9.5 years. 163 individuals were male (73%), 26 were immigrants (12%) and 91 (40%) were treatment‐naïve. Mean day care access for laboratory tests to evaluate stage of HIV and for treatment monitoring was 6.5 days for CD4 cell count measurements and 9.6 for HIV RNA/drug‐resistance testing. When patients were stratified according to CD4 count, mean day care access for laboratory tests to evaluate HIV stage and to monitor treatment was negatively correlated with CD4 cell counts. Conclusions Only patients with CD4 counts ≤500/mm 3 showed higher rates of healthcare utilization; these data may be useful for monitoring and revising implementation plans for the different phases of HIV disease.