Predictors of Loss to Follow-up Among HIV-infected Patients in a Rural South-Eastern Nigeria Hospital: A 5-year Retrospective Cohort Study

KN Eguzo, A. Lawal, C. Umezurike, Ce Eseigbe
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引用次数: 19

Abstract

Background: Patient attrition has been a challenge in managing HIV programs in resource-limited settings. Aim: This study reviews the predictors of loss to follow-up (LTFU) in our hospital and suggests the best practices for dealing with the issue. Subjects and Methods: A 5-year retrospective cohort study of 1256 HIV-infected patients. Baseline CD4 counts, age, gender, year of enrolment, and antiretroviral therapy combination regimen were considered in this study. Kaplan–Meier models were used to estimate the univariate time-to-LTFU and Cox proportional hazards models to identify the multivariate predictors of LTFU. Results: Twenty-four percent (23.9% [301/1256]) of patients were lost to follow-up. Baseline CD4 count, year of enrolment, and drug combination were significant predictors of LTFU. Patients enrolled earlier (2008/2009) were twice as likely to be LTFU compared with those enrolled later (2010–2013). Gender and age did not significantly predict LTFU nor confound other predictors. Conclusion: The program showed higher LTFU rates than most studies in Nigeria and Africa, maybe due to difficulties with the access to the hospital and possible treatment fatigue. This study recommends the provision of transportation subsidies and proactive patient follow-up with “peer-tracking” to reduce LTFU among HIV infected patients, especially in resource-limited settings.
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尼日利亚东南部农村医院hiv感染患者随访损失的预测因素:一项5年回顾性队列研究
背景:在资源有限的环境中,患者流失一直是管理艾滋病毒项目的一个挑战。目的:本研究回顾我院失访率(LTFU)的预测因素,并提出处理该问题的最佳做法。研究对象和方法:对1256例hiv感染者进行5年回顾性队列研究。本研究考虑了基线CD4计数、年龄、性别、入组年份和抗逆转录病毒联合治疗方案。Kaplan-Meier模型用于估计单变量的时间到LTFU, Cox比例风险模型用于确定LTFU的多变量预测因子。结果:24%(23.9%[301/1256])患者失访。基线CD4计数、入组年份和药物组合是LTFU的重要预测因子。较早入组(2008/2009)的患者发生LTFU的可能性是较晚入组(2010-2013)的两倍。性别和年龄不能显著预测LTFU,也不能混淆其他预测因子。结论:与尼日利亚和非洲的大多数研究相比,该项目显示出更高的LTFU率,可能是由于进入医院的困难和可能的治疗疲劳。本研究建议提供交通补贴和积极的“同行跟踪”患者随访,以减少HIV感染者的LTFU,特别是在资源有限的环境中。
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Annals of Medical and Health Sciences Research
Annals of Medical and Health Sciences Research HEALTH CARE SCIENCES & SERVICES-
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