Modelling of Survival Time Among Adult HIV/AIDS Patients Under Antiretroviral Therapy in Moi Teaching and Referral Hospital in Kenya

Mengich Kibichii Robert, A. Mwangi, G. Kerich, N. O. Cornelious
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Abstract

Survival modelling is a technique which exploits repeated measures of continuous covariates to predict explanatory variable’s effects on the response factor. The survival modelling helps design interventions in the health sector, which has seen one of its applications in the management of Human Immune Virus/ Acquired Immune Deficiency Syndrome (HIV/AIDS). However, despite improvement in Anti-Retroviral Therapy (ART) interventions over the years, the observed disease effects (morbidity, progression and mortality) remain high and varies across geographical borders. This study utilizes survival models to determine the predictors of survival among adult HIV/AIDS patients on ART in Moi Teaching and Referral Hospital (MTRH) Kenya. This is achieved by fitting a Cox proportional hazard regression model to adult HIV/AIDS patients data and determine predictors of survival amongst the study subjects. A retrospective study design was adopted where a target population of 10,038 patients who were on ART and were enrolled between January 2005 and January 2007 were investigated for a ten years follow-up period. The Cox proportional hazard regression model (CPHRM) was fitted to the data using log partial likelihood function. The log rank test and 95% confidence Interval (C.I) were used to analyze the significance of the hazard ratios of each variable. The results showed that HIV severity with unadjusted Hazard Ratio [UHR=0.729, p=0.032], level of education [lower UHR=0.952, p=0.019], and perfect adherence of antiretroviral drugs (ARV) [UHR=0.668, p=0.004] positively influenced patient survival time. Patient’s gender [male UHR=1.633, p< 0.001] showed negative effect on patient survival time. The adjusted hazard ratios for multivariate Cox model were, HIV severity [AHR1.18, p=0.735] age category between 30-40 in reference to age less than 30 [AHR=0.459, p=0.178] and age category above 40 years [AHR=0.644, p=0.447], Body Mass Index (BMI) less than 18.5kg/m2 in reference to between 18.5-<25kg/m2 [AHR=1.65, p=0.847] and BMI above 25 kg/m2 [AHR=0.861, p=0.847], level of education [lower AHR=0.931, p=0.209], patients’ gender [male AHR=1.884, p=0.19] and ARV adherence [perfect AHR=1.393, p=0.498]. In conclusion, HIV severity, level of education, ARV adherence and patients' gender were significant predictors of survival time. In addition, none of the patient's characteristics predicted survival time in the multivariate Cox model. Therefore, this study recommends to the government of Kenya to spearhead the development of policy framework for the provision of regular screening services for the male population to avoid late diagnosis and interventions of HIV/AIDS disease.
肯尼亚Moi教学和转诊医院接受抗逆转录病毒治疗的成年艾滋病毒/艾滋病患者生存时间建模
生存模型是一种利用连续协变量的重复测量来预测解释变量对反应因子的影响的技术。生存模型有助于设计卫生部门的干预措施,其应用之一是人体免疫病毒/获得性免疫缺陷综合症(艾滋病毒/艾滋病)的管理。然而,尽管多年来抗逆转录病毒疗法(ART)干预措施有所改善,但观察到的疾病影响(发病率、进展和死亡率)仍然很高,而且因地域而异。本研究利用生存模型来确定肯尼亚Moi教学和转诊医院(MTRH)接受抗逆转录病毒治疗的成年艾滋病毒/艾滋病患者的生存预测因素。这是通过对成年艾滋病毒/艾滋病患者数据拟合Cox比例风险回归模型并确定研究对象的生存预测因子来实现的。采用回顾性研究设计,对2005年1月至2007年1月期间入组的10038名接受抗逆转录病毒治疗的患者进行了为期10年的随访调查。采用对数偏似然函数拟合Cox比例风险回归模型(CPHRM)。采用对数秩检验和95%置信区间(ci)分析各变量风险比的显著性。结果显示,HIV严重程度(未校正风险比)[UHR=0.729, p=0.032]、受教育程度[低UHR=0.952, p=0.019]、抗逆转录病毒药物(ARV)的完全依从性[UHR=0.668, p=0.004]正影响患者的生存时间。患者性别[男性UHR=1.633, p< 0.001]对患者生存时间有负相关影响。多因素Cox模型的校正风险比为:HIV严重程度[AHR1.18, p=0.735]年龄类别在30-40岁之间与年龄小于30岁[AHR=0.459, p=0.178]、年龄类别大于40岁[AHR=0.644, p=0.447]、体质指数(BMI)小于18.5kg/m2与年龄在18.5-<25kg/m2之间[AHR=1.65, p=0.847]、身体质量指数(BMI)大于25kg/m2 [AHR=0.861, p=0.847]、受教育程度[较低AHR=0.931, p=0.209]、患者性别[男性AHR=1.884, p=0.19]、抗逆转录病毒治疗依从性[完美AHR=1.393,p = 0.498)。总之,艾滋病病毒严重程度、受教育程度、抗逆转录病毒药物依从性和患者性别是生存时间的重要预测因素。此外,在多变量Cox模型中,患者的任何特征都不能预测生存时间。因此,本研究建议肯尼亚政府率先制定政策框架,为男性人口提供定期筛查服务,以避免艾滋病毒/艾滋病疾病的晚期诊断和干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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