Literature DB >> 22141425

Factors associated with non-adherence to highly active antiretroviral therapy in Nairobi, Kenya.

Samwel N Wakibi1, Zipporah W Ng'ang'a, Gabriel G Mbugua.   

Abstract

BACKGROUND: Antiretroviral therapy (ART) requires high-level (> 95%) adherence. Kenya is rolling out ART access programmes and, issue of adherence to therapy is therefore imperative. However, published data on adherence to ART in Kenya is limited. This study assessed adherence to ART and identified factors responsible for non adherence in Nairobi.
METHODS: This is a multiple facility-based cross-sectional study, where 416 patients aged over 18 years were systematically selected and interviewed using a structured questionnaire about their experience taking ART. Additional data was extracted from hospital records. Patients were grouped into adherent and non-adherent based on a composite score derived from a three questions adherence tool developed by Center for Adherence Support Evaluation (CASE). Multivariate regression model was used to determine predictors of non-adherence.
RESULTS: Overall, 403 patients responded; 35% males and 65% females, 18% were non-adherent, and main (38%) reason for missing therapy were being busy and forgetting. Accessing ART in a clinic within walking distance from home (OR = 2.387, CI.95 = 1.155-4.931; p = 0.019) and difficulty with dosing schedule (OR = 2.310, CI.95 = 1.211-4.408, p = 0.011) predicted non-adherence.
CONCLUSIONS: The study found better adherence to HAART in Nairobi compared to previous studies in Kenya. However, this can be improved further by employing fitting strategies to improve patients' ability to fit therapy in own lifestyle and cue-dose training to impact forgetfulness. Further work to determine why patients accessing therapy from ARV clinics within walking distance from their residence did not adhere is recommended.

Entities:  

Year:  2011        PMID: 22141425      PMCID: PMC3247823          DOI: 10.1186/1742-6405-8-43

Source DB:  PubMed          Journal:  AIDS Res Ther        ISSN: 1742-6405            Impact factor:   2.250


Background

Antiretroviral treatment success depends on sustainable high rates of adherence to medication regimen of ART [1]. However, significant proportions of HIV-infected patients do not reach high levels of adherence and this can lead to devastating public health problems. Mills et al in a meta-analysis study found a combined continental adherence to ART of 64% with 55% adherence in North America and 77% in Africa. Twenty four percent non-adherence has been reported in Southwest Ethiopia [2], 22% in Cote d'Ivore [3] and 13% in Cameroon [4]. Byakika et al [5] reported 68% adherence to HIV treatment in Uganda, 54% in Nigeria [6] and 63% in South Africa [7]. Non-adherence to ART has been associated to diverse factors including patient related factors, health condition/disease, health care system and healthcare teams, therapy/treatment and Socio-economic factors [5,6,8-10]. Kenya is rolling out a free HAART programme to increase access and by 2009, 336980 patients were accessing [11], and adherence reported vary from 48% in Kibera, Nairobi [12]; 56.8% in Eldoret [13] and 64% in Mombasa [14].

Statement of the research hypothesis

Published data about factors that influence non-adherence to ART in Kenya is limited. To generate this knowledge, this study determined prevalence of non-adherence and associated factors. It was hypothesized that: H0 - there are no factors association with non-adherence to HAART among HIV patients in Nairobi, Kenya.

Method

Setting

This study was conducted at HIV/AIDS treatment centre in the Kenyatta National Hospital, Kenya Medical Research Institute (KEMRI) and Riruta Health centre in Nairobi, Kenya.

Population sample

The sample was of 416 HIV+ outpatients aged 18 years or more on free HAART for three or more months between November, 2008 and April, 2009.

Design

Cross-sectional observational study design collected data from systematically selected patients as they visited the three purposively selected HIV clinics to refill. The patients were interviewed about their health beliefs, health system interaction, ARV therapy uptake and reasons for non-adherence. CASE adherence tool [15] was used to determine adherence. Additional data about time on ARV and age were extracted from hospital records. CASE Adherence tool was developed by the New York Academy of Medicine's (NYAM) Center for Adherence Support Evaluation (CASE). It consists of three adherence questions: (rated on a likert scale) "How often do you feel that you have difficulty taking your HIV medications on time? On average, how many days PER WEEK would you say that you missed at least one dose of your HIV medications? When was the last time you missed at least one dose of your HIV medications?"A higher composite score signify better adherence. The CASE Adherence Index correlated strongly with the AACTG three-day self-reported adherence data (p < 0.001), is more strongly associated with HIV outcomes and performed as well as the three-day self-report when predicting CD4 cell count status[16].

Data analysis

Patient's scores in the CASE adherence tool were summed up to obtain a composite score that ranged from 3 to 16 points. Patients with Index score ≤10 points were classified as non-adherent and > 10 adherent [15]. Other data generated from the questionnaire were keyed into SPSS and analyzed for frequencies, cross-tabulations, chi-square test, and multivariate logistic regression to determine predicting factors. A p-value < 0.05 was considered significant in all statistical analysis.

Ethical considerations

Ethical clearance was given by the KEMRI's National Ethical Review Committee, and permission to conduct the research was obtained from the participating clinics. Consent was obtained both verbally and in writing in either English or Kiswahili. To ensure confidentiality, interviews were conducted in private and strict control maintained over data.

Results

Characteristics of the respondents

Characteristics of the respondents are presented in Table 1. Out of the 416 patients interviewed, 403 answered all adherence questions and were analyzed. Females were 262 (65%) and males 141 (35%); their age ranged between 18 and 64 years old. Most patients were married 213 (53%); 246 (61%) had at least secondary education, 145 (36%) had primary education and 10 (3%) had no formal education. Three hundred (75%) respondents earned less than $120 per month; and most 271(67%) lived in 1-3 rooms and the rest in a more than 1 bedroom house.
Table 1

Characteristics of respondents

CharacteristicsAdherentp-value
VariableNo; n (%)Total; n (%)

Socio-demographic characteristics

Gender distribution
All72 (18)331 (82)403 (100)
Males25 (18)116 (82)141 (35)0.958
Females47 (18)215 (82)262 (65)

Mean age
 All37.6 yrs40.2 yrs39.7 yrs0.017*
 Male41.6 yrs42.8 yrs42.6 yrs0.491
 Female35.4 yrs38.8 yrs38.2 yrs0.012*

Marital status 0.225
 Never married14 (19)58 (81)72 (18)
 Married40 (19)173 (81)213 (53)
 Divorced/Separate13 (23)44 (77)57 (14)
 Widowed5 (9)52 (91)57 (14)
 Missing044 (1)
Ever widowed?0.053
 Yes5 (9)52 (91)57 (14)
 No67 (20)275 (80)342 (85)

Education level0.665
No education1 (10)9 (10)10 (3)
Primary28 (19)117 (81)145(36)
Secondary32 (16)168 (84)200(50)
Post secondary10 (22)36 (78)46 (11)
Missing2

Monthly Income (USD)0.734
Unemployed27 (20)110 (80)137(34)
< 6017 (21)66 (80)83 (21)
61 - 12011 (14)69 (86)80 (20)
121 - 1802 (9)21 (91)23 (6)
181 - 2405 (19)22 (82)27 (7)
241 - 6005 (15)29 (85)34 (8)
600+4 (24)13 (77)17 (4)
Missing2

Housing0.275
1 room39 (21)147 (79)186(46)
2-3 rooms16 (19)69 (81)85 (21)
1 bedroom7 (17)34 (83)41 (10)
2 bedrooms4 (8)48 (92)52 (13)
≥ 3 bedrooms6 (15)33 (85)39 (10)
1-3 rooms55 (20)216 (80)271 (67)0.068
≥ 1 bedrooms17 (13)115 (87)132 (33)

Clinical characteristics

CD4 cell count ≤200 cells/ml0.025*
Yes25(26)71 (74)96 (24)
No44(16)237(84)281(70)
Missing26 (6)

Time on ART 0.003*
3 to 6 months13(37)22 (63)35 (9)
6 - 12 months 18(21)69 (79)87 (22)
1 to 2 years25(19)110(81)135(34)
3 years +16(11)129(89)145(36)
Missing1

Adverse effects
Nausea7 (30)16 (70)23 (7)0.898
Vomiting1 (8)11 (92)12 (4)
Diarrhea3 (23)10 (77)13 (4)
Neuropathy3 (10)27 (90)30 (9)
Itching6 (23)20 (77)26 (8)
Rashes5 (12)36 (88)41 (13)
Others6 (15)33 (85)39 (12)
None24(17)114(83)138(43)

ART knowledge

Health literacy
Adhere57 (17)272 (83)329 (82)0.55
Condom use35 (18)162 (82)197 (49)0.959
Nutrition43 (16)233 (84)276 (68)0.077
Use
Identify drugs72 (18)331 (82)403 (100)
Dosage72 (18)330 (82)402 (100)
Life-long therapy72 (18)328 (82)400 (99)

Social support

Living with0.484
Family53(17)268(83)321(80)
Friends2 (22)7 (78)9 (2)
Alone16(22)56 (78)72 (18)

Living with children?0.345
No10(14)62 (86)72 (18)
Yes 50(18)235(82)285(71)
Have no children12(26)34 (74)46 (11)0.122
Has children60(17)297(83)357(89)

HIV Status disclosed0.794
Yes:58(18)271(82)329(82)
No: 13(18)60 (81)73 (18)

Reminded dose by 0.781
Self36(19)151(81)187(46)
Family35(17)176(83)211(52)
Friends 1 (20)4 (80)5 (1)

Level of social Support
Never (0%)13(23)43 (77)56 (14)
Rarely (25%)5 (28)13 (72)18 (5)
Sometimes (50%)12(26)34 (74)46 (11)
Often (75%)17(22)60 (78)77 (19)
Always (> 75%)24(18)181(88)205(51)
Missing1
Felt social Support0.030*
< Sometimes18(24)56 (76)74 (21)
> Sometimes41(14)241(86)282(79)

Concerns about therapy

Taking ART worries me0.378
Agree16 (22)58 (78)74 (18)
Disagree55 (17)264 (83)319 (79)
Not sure10 (3)
I Worry about long-term effects of ART0.885
Agree31 (19)135 (81)166 (41)
Disagree40 (18)181 (82)221 (55)
Not sure16 (4)
Lack understanding of how ART works 0.505
Agree28 (20)115 (80)143 (35)
Disagree40 (17)197 (83)237 (59)
Not sure23 (6)
Therapy disrupt my life0.006*
Agree20 (29)49 (71)69 (17)
Disagree49 (15)274 (85)323 (80)
Not sure11 (3)
I am embarrassed taking ARV0.162
Agree38 (20)148 (80)186 (46)
Disagree31 (15)175 (85)206 (51)
Not sure11 (3)

Reason for not taking therapy

Implied missed therapy0.001*
Gave reason for not taking50 (24)156 (76)206 (51)
Never failed22 (11)175 (89)197 (49)

Reason for not taking medicine 0.000*
Being busy and forgetting44 (29)110 (71)154 (38)
Hiding from colleagues3 (60)2 (40)5 (2)
Others3 (6)44 (94)47 (11)

*Statistically significant at level p < 0.05 by chi-square test

Characteristics of respondents *Statistically significant at level p < 0.05 by chi-square test Majority respondents 281 (70%) had a CD4 count of more than 200 cells/ml, 280 (80%) had more than 1 year experience with ART and 138(43%) had not had side effects. ART knowledge was extremely high (100), but only 197 (49%) stated condom use as important, (82%) reported adherence and (68%) nutrition. Most 321(80%) patients lived with family, 329(82%) had disclosed their HIV status and 282(79%) reported getting social support. Sixty nine (17%) patients found therapy disruptive of their life while 186 (46%) were embarrassed taking ARV. Most respondents 154 (38%) reported being busy and forgetting as the reason for missing therapy, while 197 (49%) had never failed to take medicine.

Adherence to HAART

Seventy two (18%) respondents were non-adherence based on CASE adherence method, while74 (18%) reported missing at least one dose of therapy per week (< 95% adherence) (Table 2). Adherence to HAART among respondents differed significantly at p-value < 0.05 by age (p = 0.017), difficulty fitting therapy in own daily schedule (p = 0.006), social support (p = 0.015), period on therapy (p = 0.002), self report missed therapy (p = 0.001), proximity to clinic where respondents refilled (p = 0.003) and time spent at clinic per visit (p = 0.000) by univariate analysis (Table 1). However, only having difficult fitting therapy in own schedule (OR = 2.310, CI.95 = 1.211-4.408, p = 0.011) and proximity to clinic where respondents refilled (OR = 2.387, CI.95 = 1.155-4.931, p = 0.019) predicted non-adherence by multivariate analysis (Table 3). Main reason for missing therapy was being busy and forgetting.
Table 2

Prevalence of non-adherence to HAART among respondents

Adherent?
Methods of determining adherenceYes; n (%)No; n (%)

a)CASE adherence Index; i.e. ≤ 10 (non-adherent)72 (18)331 (82)

b)missed at least once a week method (< 95 adherence)74 (18)329 (82)
Table 3

Predictors of Non-adherence to HAART among respondents

CrudeAdjusted
CharacteristicsOR (CI.95)p-valueOR (CI.95)p-value

Proximity to clinic where refilled2.740 (1.382,5.434)0.003*2.387(1.155,4.931)0.019**

Reported difficult fitting therapy in own schedule2.282(1.250-4.169)0.006*2.310(1.211-4.408)0.011**

Gave reasons for skipping doses2.550(1.477-4.401)0.001*2.264(1.261-4.064)0.006**

**Statistically significant at level p < 0.05 by multivariate analysis

Prevalence of non-adherence to HAART among respondents Predictors of Non-adherence to HAART among respondents **Statistically significant at level p < 0.05 by multivariate analysis

Discussion

The current study assessed non-adherence and factors associated with it in Nairobi, Kenya. Prevalence of non-adherence found in this study (18%) is comparable to the continental prevalence (23%) for Africa [1], 21% in Southwest Ethiopia [2] and 22% in Cote d'Ivore [3]. But, inconsistent with the findings of Ellis et al. in Kibera, Nairobi (48%) [12]; Talam et al. in Eldoret (56.8%) [13] and Munyao et al. in Mombasa [14]. The inconsistency with the findings of Eldoret study was attributed to differences in assessment methods, and inconsistency with the findings of Kibera and Mombasa studies to difference in treatment periods (2005) when ART knowledge among patients and clinicians was low [17]. In this study, younger respondents below the mean age (39.7 years) were more likely not to adhere to HAART although age did not predict. The finding is consistent with the findings of Iliyasu et al in Nigeria [6], Carballo et al in Spain [9] and Orrell et al in South Africa [7] but, inconsistent with the finding of Talam et al in Eldoret [13]. The inconsistent with Eldoret study can be attributed to difference in mean age; respondents in the Eldoret study were younger (mean age 36.1 years). Better adherence among older adults may be explained by survivor effect in that, individuals who maintain greater compliance with treatment recommendations may actually outlive those who are non-adherent. Proportion of female in this study was two-fold that of male and is similar to the proportion of HIV/AIDS reported in Kenya [18]. However, gender did not predict non-adherence to HAART in Nairobi. These findings correlated with findings of other studies [5,6,13,19]. Marital status did not predict non-adherence. Other studies have reported mixed results; Byakika et al found an association between marital status and non-adherence to ARV therapy in Uganda [5] while, Weiser et al in Botswana did not [19]. Socio-economic factors did not significantly influence adherence in this study. Findings with respect to income were consistent with the findings of Orrell et al in South Africa [7] but inconsistent with findings of Byakika et al in Uganda where patients paid for ART [5]. Finding about formal education was consistent with the findings of Weiser et al in Botswana [19] but, inconsistent with the findings of Carballo et al in Spain [9] where understanding of treatment regimen was poor [10]. Although respondents living in smaller houses were more likely not to adhere to therapy than respondents living in bigger houses, house size did not predict non-adherence. These findings are consistent with findings in other studies [9,20]. In this study, proximity to clinic predicted non-adherence. Respondents who accessed therapy in clinics within a walking distance from their homes were about two and a half times more likely not to adhere than patients who refilled in far away clinics. These findings together with social stigma associated with ART use suggested that most respondents who accessed free therapy in clinics within walking distance to their homes did so due to lack of choice; speculatively, could not afford transport cost to alternative HAART clinics. Where respondents paid for transport, amounts paid did not significantly influence non-adherence to HAART which was consistent with the finding of Byakika et al in Uganda [5]. Most respondents reported felt social support from friends and relatives, and it was therefore hypothesized that these friends and relatives also provided respondents with material support, making it possible to overcome cost barrier that has been associated with non-adherence to therapy in other studies [5]. Such "helpers" have been found to make their expectations for the patients to adherence known, thus, creating a responsibility on the part of patients who consequently, adhered to therapy to promote goodwill with the helpers [21]. Recipients who reported receiving social support were two folds more likely to adhere to therapy than those who did not. These findings are consistent with many ARV therapy adherence studies [16,2,22-25]. Adherence to therapy in this study increased with duration on HAART although did not predict it. This is consistent with findings of Mannheimer et al [15] but, inconsistent with the findings of Byakika et al in Uganda [5]. The inconsistency was attributed to the shorter experience with ARVs and paying for therapy in the Uganda study. Where drugs are paid for, many studies have found shortage of drugs due to economic barriers, as the most common reason for non adherence. The reported adverse effects did not significantly influence non-adherence which was consistent with findings of Weiser et al in Botswana [19], and Aspeling and Van Wyk in South Africa [22]. The findings could be attributed to high ART knowledge and awareness found among respondents in line with the South Africa study in which informed HIV patients tolerated side effects and adhered to therapy [22]. In this study, respondents regarded adherence to HAART extremely important to HIV treatment and translated this knowledge into positive belief about necessity of HIV medication almost universally. Belief in the benefit of therapy found together with availability of free HAART is credited for improved adherence among the respondents. This finding correlates with findings of Aspeling and Van Wyk in South Africa where adequate pre-therapy counselling and HIV education impacted adherence positively [22]. However, giving reason for skipping therapy predicted non-adherence. Three quarters of the respondents who gave reasons for skipping therapy stated being busy and forgetting as the reason and a third of them did not adhere. This finding is consistent with findings of Nieuwkerk et al [26] and Byakika et al in Uganda [5]. Having difficult fitting therapy in own daily schedule predicted non-adherence. Respondents who reported difficult with therapy were more than two folds more likely not to adhere to ARV therapy. This was consistent with the findings of Munro et al [8]. It was speculated, in line with Vervoort et al [24] finding that when medication scheme did not fit in a patient's routine, it caused them to forget to take medications and consequently resulted in poor adherence.

Conclusion

Given the complex array of factors associated with non-adherence, no single strategy is likely to be effective for every patient. It is recommended that patients be targeted with comprehensive individualized interventions employing behavioral educational strategies to improve ability to fit therapy in own lifestyle and cue-dose training to impact forgetfulness. Further research is recommended to explain poor adherence among patients accessing therapy from ARV clinics within walking distance from their homes.

List of abbreviations

AOR: Adjusted Odds Ratio; ART: Antiretroviral Therapy; ARV: Antiretroviral; CCC: Comprehensive Care Centre; COR: Crude Odds Ratio; HAART: Highly Active Antiretroviral Therapy; HIV: Human Immunodeficiency Virus; OR: Odds Ratio.

Competing interests

The authors declare that they have no competing interests.

Authors' contributions

SNW conceived, designed and conducted study, analysed data and interpreted findings. ZWN and GGM supervised and guided the student. All authors contributed to the final report and approved the final manuscript.
  21 in total

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