Literature DB >> 29184394

Highly specific reasons for nonadherence to antiretroviral therapy: results from the German adherence study.

Johanna Boretzki1,2, Eva Wolf3, Carmen Wiese4, Sebastian Noe4, Annamaria Balogh3, Anja Meurer5, Ivanka Krznaric6, Alexander Zink7, Christian Lersch1, Christoph D Spinner1,2.   

Abstract

BACKGROUND: Reasons for and frequency of nonadherence to antiretroviral therapy (ART) may have changed due to pharmacological improvements. In addition, the importance of known non-pharmacologic reasons for nonadherence is unclear.
METHODS: We performed a cross-sectional, noninterventional, multicenter study to identify current reasons for nonadherence. Patients were categorized by physicians into the following adherence groups: good, unstable, or poor adherence. Co-variables of interest included age, sex, time since HIV diagnosis, ART duration, current ART regimen, HIV transmission route, comorbidity, HIV-1 RNA viral load (VL), and CD4 cell count. Patients self-reported the number of missed doses and provided their specific reasons for nonadherent behavior. Statistical analyses were performed using Fisher's extended exact test, Kruskal-Wallis test, and logistic regression models.
RESULTS: Our study assessed 215 participants with good (n=162), unstable (n=36), and poor adherence (n=17). Compared to patients with good adherence, patients with unstable and poor adherence reported more often to have missed at least one dose during the last week (good 11% vs unstable 47% vs poor 63%, p<0.001). Physicians' adherence assessment was concordant with patients' self-reports of missed doses during the last week (no vs one or more) in 81% cases. Similarly, we found a strong association of physicians' assessment with viral suppression. Logistic regression analysis showed that "reduced adherence" - defined as unstable or poor - was significantly associated with patients <30 years old, intravenous drug use, history of acquired immune deficiency syndrome (AIDS), and psychiatric disorders (p<0.05). Univariate analyses showed that specific reasons, such as questioning the efficacy/dosing of ART, HIV stigma, interactive toxicity beliefs regarding alcohol and/or party drugs, and dissatisfaction with regimen complexity, correlated with unstable or poor adherence (p<0.05).
CONCLUSION: Identification of factors associated with poor adherence helps in identifying patients with a higher risk for nonadherence. Reasons for nonadherence should be directly addressed in every patient, because they are common and constitute possible adherence intervention points.

Entities:  

Keywords:  ART; HIV; adherence; antiretroviral therapy; human immunodeficiency virus; nonadherence; patients’ beliefs

Year:  2017        PMID: 29184394      PMCID: PMC5687417          DOI: 10.2147/PPA.S141762

Source DB:  PubMed          Journal:  Patient Prefer Adherence        ISSN: 1177-889X            Impact factor:   2.711


Introduction

The efficacy of antiretroviral therapy (ART) has improved significantly within the recent years and has subsequently led to normal life expectancy in human immunodeficiency virus (HIV)-positive patients.1–4 Adherence to ART is crucial to overall treatment success.5–9 Yet, evaluation of adherence remains challenging. In addition to medication event monitoring systems (MEMSs), self-reports of adherence have been studied.7,10–13 Adherence questionnaires have been evaluated for clinical use.14–16 These questionnaires offer the opportunity to assess adherence and, importantly, the reasons for adherence problems. Adherence is known to be a complex behavior influenced by many factors, such as sociocultural background, comorbidities, and HIV- and ART-related factors.17,18 Due to pharmacological improvements, drugs with lower dosing frequencies and side effects, as well as single-tablet regimens (STRs), have been developed and have rendered drug use less cumbersome for patients.6,19–21 Furthermore, the prevalence of nonadherence and the reasons for nonadherent behaviors may have changed over time, due to sociocultural progress. Therefore, it is unclear whether the results from earlier studies are applicable to the current treatment of patients. To examine the complex influences of adherence currently, we analyzed the frequency of nonadherence, the patient-, HIV-, and ART-related factors associated with nonadherence, and patients’ reasons for nonadherent behaviors in a large German HIV patient study group. To achieve a balanced distribution between adherent and non-adherent patients, disproportionately more participants with suspected adherence problems were subsequently included in the study group.

Patients and methods

Study design and patients

The study was a qualitative and quantitative, cross-sectional, noninterventional, multicenter clinical trial. Physicians (n=10) enrolled HIV-infected individuals aged 18 years and older, from September 2014 to April 2015 at four German centers (three primary care centers and one university hospital). Patients not receiving ART or those undergoing treatment for less than 6 months with still detectable viral loads (VLs) were excluded. Because of the expected low prevalence of nonadherence in Germany, recruitment of patients was not unselected; physicians were asked to enhance recruitment of patients with suspected nonadherence, thus ensuring a sufficient sample size of patients with adherence problems. This study was officially approved by the ethics committee of the University Hospital Klinikum rechts der Isar of the Technical University of Munich, Germany (approval number 240/14). This study was performed according to the Declaration of Helsinki. The study objectives and protocol were explained by the study personnel to the patients. Written informed consent was obtained from all participants before including them in the study. This study was not registered because of the noninterventional and cross-sectional study design.

Adherence questionnaires

Adherence questionnaires were provided to physicians and patients. The physician’s questionnaire contained questions regarding biomedical issues: time since HIV diagnosis, ART duration, current ART regimen, HIV transmission route, history of acquired immune deficiency syndrome (AIDS), comorbidities, co-medication, HIV-1 RNA VL, and CD4 cell count. The questionnaire was used to evaluate patient-, HIV-, and ART-related factors associated with nonadherence. Furthermore, the physicians were asked to classify their patients based on current and past adherence to one of the three adherence groups: A, good adherence; B, unstable adherence; C, poor adherence. Patients with excellent history of adherence were classified as patients with “good adherence.” Patients with intermittent phases of nonadherence were classified as patients with “unstable adherence.” Finally, patients who could rarely adhere were classified as patients with poor adherence. Information on patients’ age and sex was extracted from their medical records. The patients’ questionnaire was based on the German SMAQ MASRI Hybrid,22 which is a validated questionnaire.14,15 The patients’ questionnaire included questions regarding the frequency and extent of nonadherence in three different time frames. In addition, it contained a list of reasons for nonadherent behavior, which was developed by our research group, as well as items regarding satisfaction with ART. Detailed information about the patient items is provided in Table 1. All questionnaires were prepared in the German language. The items were categorized, and some were renamed. For this study, items were translated into English.
Table 1

List of items in the patients’ questionnaire

Categorized itemsAnswersOriginal text if renamed
Number of missed dosesFrequency of forgetting medication
During the last monthLess than 1 dose a month, 2–3 doses a month, 1–2 doses a week, nearly dailyLess than once a month, 2–3 times a month, 1–2 times a week, nearly daily
During the last weekNo dose, 1 dose, 2 or more dosesNever, once, twice, more than two times
During the last weekendNo dose, 1 dose, 2 dosesNever, once, twice
Reasons for nonadherent behavior
Skipping medication when feeling bad
Interactive toxicity beliefs regarding alcohol or party drugs/going outYes/noI want to go out. I think my medication is not compatible with alcohol/party drugs
Reminder of the diseaseTaking ART reminds me of my disease
No need of undergoing ART anymoreIt does not make sense anymore
Harmfulness of ARTThe medication is harmful to me
Nonexistence of HIV; just exists for the pharmaceutical industry to earn moneyHIV does not exist; the pharmaceutical industry just wants to earn money
Afraid of being seenI am afraid that others will see me taking my medication
Too high a doseI think the dose is too high
Financial constraintsCo-payment is sometimes too expensive/other financial reasons
Other reasonsFree text field
Satisfaction with ART regarding
Interference with daily routineSatisfied, not satisfiedOrdinal scale: 1–7; 1–2: satisfied, 3–7: not satisfied
Efficacy
SimplicitySimplicity and acceptability
Side effects
Other questions
Importance of regular ART intakeNone/little, high, very highNone, little, high, very high
Problems with adherenceYes/no, free text field

Note: List of categorized items from the patients’ questionnaire, containing also the possible answers and the original text if the items or answers were renamed.

Abbreviations: ART, antiretroviral therapy; HIV, human immunodeficiency virus.

Study end points

The outcomes of interest were as follows: Concordance between physicians’ adherence assessment and patients’ self-reports of adherence, and its association with viral suppression. Frequency and extent of nonadherent behavior in different time frames. Patient-, HIV-, and ART-related factors associated with nonadherence based on physicians’ adherence assessment. Patients’ self-reported reasons for nonadherent behavior and self-reported satisfaction with ART.

Statistical analyses

All results were expressed either in median and interquartile range (IQR), in number and percentage, or as odds ratio (OR) and 95% confidence interval (95% CI). First, the study population was characterized by describing sex, age, route of HIV transmission, history of AIDS, comorbidities, co-medication, time since HIV diagnosis, VL, CD4 cell count, current ART regimen, current ART dosing, and ART duration. Second, the concordance between physicians’ adherence assessment and patients’ self-reports of adherence was evaluated. We examined concordance between the categories “good adherence” in the physicians’ assessment and “no missed dose during the last week” in the patients’ questionnaire, as well as between “reduced adherence” (defined as unstable or poor adherence) and “one or more missed doses during the last week.” All the previously mentioned concordant pairs were summed to describe the overall concordance of adherence assessment by physicians and patients. In addition, the association of physicians’ adherence assessment with viral suppression (<200 cp/mL vs ≥200 cp/mL) was calculated. The Cohen’s κ test was used to measure agreement between physicians’ adherence assessment and patients’ self-reports of adherence and between physicians’ adherence assessment and suppression of VL. Third, univariate descriptive analyses were conducted to compare patient-, HIV-, and ART-related factors between the three adherence groups: A, good vs B, unstable vs C, poor adherence. Medians were analyzed using the Kruskal–Wallis test, and percentages using the Fisher’s extended exact test (Freeman–Halton test). In addition, binary multivariate logistic regression analyses were conducted using stepwise backward selection to assess the relationship between patient-, HIV-, and ART-related factors and “reduced adherence” (defined as unstable or poor). Covariates included in the logistic regression models were as follows: sex, age, route of HIV transmission, history of AIDS, comorbidities, co-medication, time since HIV diagnosis, and ART duration. Current ART regimen, VL, and CD4 cell count were not included in the model, because they were expected to be consequences of reduced adherence rather than causes for nonadherence and, therefore, constituted no proper variables for the model. We used stepwise backward selection until only variables with p<0.05 remained in the model. OR and 95% CI were reported for those covariates. In order to study patients’ beliefs, the patients’ self-reported reasons for nonadherent behavior were analyzed. After a general description of the reasons for nonadherent behavior, the frequency between the three groups was compared to focus on the barriers to adherence for patients with unstable or poor adherence. Finally, satisfaction with ART, pertaining to its interference with daily routine, efficacy, simplicity, and side effects, was examined. In all analyses, a p-value <0.05 was considered to be statistically significant. All statistical analyses were conducted using IBM SPSS Statistics Version 23 (IBM Corporation, Armonk, NY, USA).

Results

Study population and adherence groups

A total of 220 patients were enrolled at four German study centers. Due to protocol violation, five patients were excluded: one patient because of ART interruption, and the remaining four because of persistent detection of VLs despite ART duration for less than 6 months (Figure 1).
Figure 1

Flowchart of the process of patients’ inclusion and categorization into adherence groups A, B, and C (good, unstable, or poor adherence, respectively), based on physicians’ adherence assessment.

Therefore, 215 HIV-positive adults were included in the analyses: 80% were male, and the median age was 47 years (IQR 37–54). Additional characteristics of the study population are summarized in Table 2.
Table 2

Overview of the characteristics of the participants included in the analyses, with patient-, HIV-, and ART-related factors

Itemsn%Median (IQR)
Patient-related factors
 Male sex17280
 Age (years)47 (37–54)
 HIV transmission route
  MSM10850
  Origin of HPC2914
  IVDU157.0
  Other2713
  Unknown3918
 Comorbidities16175
  Psychiatric disorder6329
   Depression4019
  HBV104.7
  HCV136.0
  Cardiovascular risk factors5124
  Major vascular event115.1
  Other10850
 Co-medication9343
  Psychiatric co-medication2411
  Cardiovascular co-medication5023
  Antiinfectives167.4
 Other4822
HIV-related factors
 Time since HIV diagnosis (years)9 (4–18)
 History of AIDS2411
 HIV-1 RNA VL (cp/mL)19 (19–49)
 CD4 cells (n/μL)607 (410–850)
ART-related factors
 ART duration (years)6 (3–14)
 ART dosing and pill burden
  STR6530
  MTR once daily10348
  MTR twice daily4722
 Current ART regimen
  NRTI containing19289
  NNRTI containing9042
  PI containing7535
  CCR5 containing20.9
  INI containing6932

Abbreviations: AIDS, acquired immune deficiency syndrome; ART, antiretroviral therapy; CCR5, C-C chemokine receptor 5 inhibitor; cp, copies; HBV, chronic hepatitis B infection; HCV, chronic hepatitis C infection; HIV, human immunodeficiency virus; HPC, high prevalence country; IQR, interquartile range; INI, integrase inhibitor; IVDU, intravenous drug use; MSM, men having sex with men; MTR, multi-tablet regimen; NNRTI, non-nucleoside reverse transcriptase inhibitor; NRTI, nucleoside reverse transcriptase inhibitor; PI, protease inhibitor; STR, single-tablet regimen; VL, viral load.

The physicians’ adherence assessment between the three adherence groups showed the following: 75% (162/215) in group A (good adherence), 17% (36/215) in group B (unstable adherence), and 8% (17/215) in group C (poor adherence).

Concordance of physicians’ adherence assessment with patients’ self-reports of adherence and its association with viral suppression

The adherence of 162 patients was described as good by their physicians. Of those patients, 90% (n=145) reported “no dose missed during the last week,” while 10% (n=17) reported “one or more doses missed during the last week.” The adherence of 53 patients was described as “reduced” (unstable, n=36; poor, n=17). Of those patients, 48% (n=25) reported “no dose missed during the last week,” while 52% (n=27) reported “one or more missed doses during the last week;” one answer was missing. Of all patients, 68% (n=145) were assessed by both physicians and themselves as adherent, while 13% of all patients (n=27) were assessed by both physicians and themselves as nonadherent. Therefore, concordance of physicians’ adherence assessment and patients’ self-reports of adherence was 81%. All numbers are provided in Table 3. The κ value for agreement was −0.090.
Table 3

Concordance of physicians’ adherence assessment and patients’ self-reports

Physicians’ adherence assessment, n(% of whole study group)
GoodUnstable/poor
Patients’ self-reports, n (% of whole study group)
No dose missed during the last week145 (67.8)25 (11.7)170 (79.4)
One or more doses missed during the last week17 (7.9)27 (12.6)44 (20.6)

162 (75.7)a52 (24.3)214 (100)

Note:

One patient’s data was missing.

Of the 162 patients with good adherence, 99% (n=160) had a VL <200 cp/mL, while 1.2% (n=2) had a VL ≥200 cp/mL. Of the 53 patients with reduced adherence, 70% (n=37) had a VL <200 cp/mL, while 30% (n=16) had a VL ≥200 cp/mL. Seventy-four percent of all patients (n=160) were described by physicians as adherent and had a VL <200 cp/mL, while 7.4% of all patients (n=16) were described by physicians as nonadherent and had a VL ≥200 cp/mL. The κ value for agreement was 0.372.

Differences in patients’ self-reports of adherence in relation to the evaluated time frame

Concurrent with results from physicians’ assessment regarding reduced adherence, a higher percentage of patients in groups B and C reported missing doses in all three time frames: regarding the doses missed during the last month, a higher percentage of patients from groups B and C reported “missed one or more doses per week” (A: 2.5% [4/162] vs B: 8.3% [3/36] vs C: 24% [4/17], p<0.001). Regarding the doses missed during the last week, an even higher percentage of patients from groups B and C reported “missed one or more doses” (A: 11% [17/162] vs B: 47% [17/36] vs C: 63% [10/17], p<0.001). Regarding the doses missed during the last weekend, the percentage of patients from groups B and C who reported “one or more missed doses” was still significantly high (A: 3.1% [5/162] vs B: 22% [8/36] vs C: 31% [5/17], p<0.001).

Factors associated with reduced adherence

Table 4 summarizes the patient-, HIV-, and ART-related factors in the three adherence groups. Significant differences between the three groups regarding the following patient-related factors are: age, HIV transmission route, chronic hepatitis C infection (HCV), and psychiatric disorders. Furthermore, Table 4 summarizes the significant differences between the groups regarding the following HIV- and ART-related factors: time since HIV diagnosis, history of AIDS, VL, CD4 cell count, ART duration, and current ART regimen. Sex, co-medication, and dosing frequency did not show significant differences between groups.
Table 4

Patient-, HIV-, and ART-related factors correlated with “unstable” or “poor adherence”

ItemPhysicians’ adherence assessment
p-value
Good adherence(n=162)
Unstable adherence(n=36)
Poor adherence(n=17)
n%n%n%
Patient-related factors
 Male sex13282287812710.479
 Age (years)a4840–554233–514644–480.020
  <30106.261715.90.120
  ≥3015293.830831694
 Transmission route
  MSM915613364240.007
  Transmission in HPC17117195290.040
  IVDU31.9822424<0.001
  Other19125143180.631
  Unknown332051415.90.303
 Comorbidities
  Psychiatric disorder402515428470.030
  HBV74.338.3000.494
  HCV63.761715.90.013
  Cardiovascular risk factors41258222120.527
  Major vascular event95.612.815.90.758
  Other895513366350.052
 Co-medication
  Psychiatric171161715.90.514
  Cardiovascular412582215.90.226
  Antiinfectives95.661715.90.079
  Other352210283180.687
HIV-related factors
 Time since HIV diagnosis (years)a94–16105–211915–210.002
  <163.812.9000.024
  1–1089561749317
  >10654117491482
 History of AIDS116.89254240.002
 HIV-1 RNA VL (cp/mL)a1919–394919–494,82460–17,542<0.001
 CD4 cell count (n/μL)a680487–887503211–76131586–426<0.001
ART-related factors
 ART duration (years)a63–1253–11149–170.022
  <1106.338.6000.142
  1–10103642366741
  >1047299261059
 ART dosing and pill burden
  STR503113362120.173
  MTR once daily784816449530.841
  MTR twice daily34217196350.373
 Current ART regimen
  NRTI containing14388349415880.629
  NNRTI containing7949102815.9<0.001
  PI containing4628174712710.001
  CCR5 containing21.200001
  INI containing523211316350.936

Note: p-values were calculated using the Fisher’s extended exact and Kruskal–Wallis test.

Data presented as median and IQR.

Abbreviations: AIDS, acquired immune deficiency syndrome; ART, antiretroviral therapy; CCR5, C-C chemokine receptor 5 inhibitor; cp, copies; HBV, chronic hepatitis B infection; HCV, chronic hepatitis C infection; HIV, human immunodeficiency virus; HPC, high prevalence country; IQR, interquartile range; INI, integrase inhibitor; IVDU, intravenous drug use; MSM, men having sex with men; MTR, multi-tablet regimen; NNRTI, non-nucleoside reverse transcriptase inhibitor; NRTI, nucleoside reverse transcriptase inhibitor; PI, protease inhibitor; STR, single-tablet regimen; VL, viral load.

Multivariate regression analysis showed that the following variables remained significantly associated with reduced adherence, defined as unstable or poor: age <30 years (OR =4.2, 95% CI 1.4–12.6, p=0.010), HIV transmission via intravenous drug use (IVDU; OR =16.7, 95% CI 4.2–66.2, p<0.001), history of AIDS (OR =5.8, 95% CI 2.2–15.3, p<0.001), and psychiatric disorders (OR =2.5, 95% CI 1.2–5.4, p=0.015).

Self-reported reasons for nonadherent behavior

A higher proportion of patients from adherence groups B and C than from group A reported reasons for adherence problems (A: 32% [52/162] vs B: 78% [24/36] vs C: 94% [16/17], p<0.001). In general, the most frequently reported reasons were as follows: just forgot (n=16), reminder of the disease (n=16), skipping medication when feeling bad (n=13), stress/stressful work (n=12), interactive toxicity beliefs regarding alcohol or party drugs/going out (n=12), different daily routine (n=10), and afraid of being seen (n=10). “Skipping medication when feeling bad,” “reminder of the disease,” “interactive toxicity beliefs regarding alcohol or party drugs/going out,” “too high a dose,” “afraid of being seen,” “no need of undergoing ART anymore,” and “financial constraints” were the reasons reported significantly more often by groups B and C patients than by the group A patients, as shown in Figure 2.
Figure 2

Differences in self-reported reasons for nonadherent behavior between the adherence groups.

Note: p-values were calculated using the Fisher’s extended exact test.

Abbreviation: ART, antiretroviral therapy.

Patient satisfaction with ART and its association with adherence

A higher percentage of patients from adherence groups B and C reported that they were not satisfied with ART regarding interference with daily routine, efficacy, simplicity, and side effects. While dissatisfaction regarding interference with daily routine, efficacy, and simplicity was significantly associated with unstable and poor adherence, dissatisfaction regarding side effects was not significantly associated with unstable or poor adherence, as summarized in Table 5.
Table 5

Association of patient dissatisfaction with ART and nonadherence

Patient dissatisfaction regardingPhysicians’ adherence assessment
p-value
Good adherence(n=162)Unstable adherence(n=36)Poor adherence(n=17)

n%n%n%
Interference with daily routine169.9925.0635.30.003
Efficacy31.9411.115.90.001
Simplicity63.7616.7211.80.018
Side effects2616.0925.0635.00.218

Abbreviation: ART, antiretroviral therapy.

A higher percentage of patients from groups B and C agreed having problems with adherence (A: 8.6% [14/162] vs B: 14% [5/35] vs C: 35% [6/17], p=0.008). Recognized problems included: aversion to pill swallowing (n=3), side effects (n=4), irregular daily routine (n=1), negligence (n=1), and problems with dietary restrictions (n=1). A lower percentage of patients from groups B and C rated the importance of regular intake of medication as very high (A: 83% [133/162] vs B: 66% [23/36] vs C: 71% [12/17], p=0.033).

Discussion

This cross-sectional study provides insights into the factors associated with a higher risk of nonadherence and into the self-reported reasons for nonadherence. Physicians correlate extensive information, including the frequency of nonadherence and reasons for nonadherent behavior, that are collected over a long time during patient interviews, with patients’ VL.23–25 This provides a long-term, multidimensional overview of adherence. Therefore, physicians’ adherence assessment was used to classify adherence groups, although this may be subjective. In our study, physicians’ adherence assessment and patients’ self-reports of missed doses showed good concordance. In addition, there was a strong association of physicians’ adherence assessment with patients’ viral suppression. However, the κ values estimating the agreement between the various methods of adherence assessment were poor, especially for agreement between physicians’ adherence assessment and self-report, which is consistent with previous reports.25 The poor κ values seem to be mainly due to the disagreement in the nonadherence assessment. Of note, the κ statistics may be affected by the lack of symmetry and by imbalances in the marginal totals of the 2×2 tables and therefore may not be the appropriate measurement for interrater agreement in this situation.26 The disagreement in the nonadherence assessment may be due to patients’ overestimation of adherence,11,12,27 alternate phases of high and low adherence, or erroneous physicians’ adherence assessment. The analysis of patients’ self-reports of adherence showed that the number of missed doses during the last week was higher in the self-reports of “last week” than in the ones of “last month.” Therefore, we hypothesized the self-reports of last week were more accurate, probably due to recall bias. Consistent with previous studies,28,29 the majority of included patients was adherent; however, we revealed a remarkable number of nonadherent patients in our study. Because our study aimed at including more patients with adherence problems, the frequency of nonadherence in our cohort does not represent the overall HIV population in Germany. Our multivariate analyses demonstrated that reduced adherence was associated with known patient-related factors such as younger age,5,13,30–32 history of hard drug use,1,6,31,33–36 and psychiatric disorders (especially depression).27,37–43 Our study also revealed a correlation between the history of AIDS and reduced adherence. This is probably due to the physicians’ adherence assessment that included the patients’ entire history over a long period of time. In accordance with various studies, our study did not find a correlation between female individuals and reduced adherence.5,31,34,44 In line with the studies by Langness et al19 and Saberi et al,46 dissatisfaction with regimen complexity and interference with daily routine was associated with unstable or poor adherence in our study. In contrast, patient dissatisfaction with side effects was not significantly associated with unstable or poor adherence. Therefore, due to lower dosing frequencies and less side effects, it remains unclear whether pharmaceutical reasons for nonadherence are still as important as they used to be. In addition to studying patient-, HIV-, and ART-related factors, we further analyzed the patients’ reasons for non-adherent behavior. We hypothesized that there may be an association of unstable or poor adherence with patients’ beliefs. Patients’ beliefs are found to be crucial to adherence intervention strategies because they are reported to be frequent among patients and may be targeted to enhance adherence – in contrast to most patient-, HIV-, and ART-related factors.27,45 In this study, patients reported a vast variety of reasons for nonadherence. We focused on the reasons given by patients with unstable or poor adherence and found that those patients reported unspecific answers, such as just forgot or stress/stressful work, less frequently than patients with good adherence. We found a correlation between unstable or poor adherence and questioning ART efficacy and correct dosage, in agreement with Saberi et al.46 We also found that unstable or poor adherence correlated with “interactive toxicity beliefs regarding alcohol or party drugs/going out.” It has already been observed that patients may intentionally skip ART doses when they consume alcohol or drugs.47–51 It is a common misperception that alcohol inhibits ART’s effectiveness and that there are potential toxic interactions between ART and alcohol consumption.47–49 Probably, physicians avoid talking about the alcohol–ART interaction or even tell their patients not to take alcohol with their ART.47,49,51 A discussion to clarify the interaction between ART and alcohol, and other recreational drugs, may be highly beneficial to maximize adherence. There are several limitations to our study. Although we encouraged participation of nonadherent patients, we could not include as many as expected. The sample of patients with poor adherence was especially small, due to low prevalence of nonadherence and to little motivation of those patients to participate in a study. Even though the physicians’ assessment offers a relevant view of adherence, such assessments are not free from personal biases and may be influenced by VL results. Furthermore, self-reported nonadherence and reasons for nonadherence may be underreported due to poor recall and social desirability bias. No detailed information about recent alcohol consumption and hard drug use was collected in our study because we assumed that this information will be strongly underreported. Because this is an observational, cross-sectional study, no causal conclusions can be drawn and one should be cautious when generalizing these results to the overall German HIV population.

Conclusion

A remarkable number of patients with unstable or poor adherence were identified in our study. In every case, physicians should evaluate patients’ adherence during a short time frame to reduce recall bias. While recognition of factors associated with nonadherence helps identifying patients with a higher risk of nonadherence, it is more important to address patients’ individual reasons for nonadherent behavior, such as interactive toxicity beliefs, HIV stigma, and concerns about drug dosage. In nonadherent patients, specific reasons for nonadherent behaviors are common and may be targeted for interference, thus representing potential starting points for focused counseling and adherence interventions. Further investigation is required to reveal how to optimize patient–health care provider relationships and how to unveil and solve adherence problems, thus achieving long-term viral suppression and avoiding disease progression.
  49 in total

Review 1.  Self-report measures of antiretroviral therapy adherence: A review with recommendations for HIV research and clinical management.

Authors:  Jane M Simoni; Ann E Kurth; Cynthia R Pearson; David W Pantalone; Joseph O Merrill; Pamela A Frick
Journal:  AIDS Behav       Date:  2006-05

2.  Correlates of self-reported nonadherence to antiretroviral therapy in HIV-infected patients: the Swiss HIV Cohort Study.

Authors:  Tracy R Glass; Sabina De Geest; Rainer Weber; Pietro L Vernazza; Martin Rickenbach; Hansjakob Furrer; Enos Bernasconi; Matthias Cavassini; Bernard Hirschel; Manuel Battegay; Heiner C Bucher
Journal:  J Acquir Immune Defic Syndr       Date:  2006-03       Impact factor: 3.731

3.  Repeated measures longitudinal analyses of HIV virologic response as a function of percent adherence, dose timing, genotypic sensitivity, and other factors.

Authors:  Honghu Liu; Loren G Miller; Ron D Hays; Carol E Golin; Tongtong Wu; Neil S Wenger; Andrew H Kaplan
Journal:  J Acquir Immune Defic Syndr       Date:  2006-03       Impact factor: 3.731

4.  Long-term trends in adherence to antiretroviral therapy from start of HAART.

Authors:  Valentina Cambiano; Fiona C Lampe; Alison J Rodger; Colette J Smith; Anna M Geretti; Rebecca K Lodwick; Dewi I Puradiredja; Margaret Johnson; Leonie Swaden; Andrew N Phillips
Journal:  AIDS       Date:  2010-05-15       Impact factor: 4.177

5.  Directly observed antiretroviral therapy eliminates adverse effects of active drug use on adherence.

Authors:  Shadi Nahvi; Alain H Litwin; Moonseong Heo; Karina M Berg; Xuan Li; Julia H Arnsten
Journal:  Drug Alcohol Depend       Date:  2011-08-31       Impact factor: 4.492

6.  Validation of a simplified medication adherence questionnaire in a large cohort of HIV-infected patients: the GEEMA Study.

Authors:  Hernando Knobel; Jordi Alonso; José L Casado; Julio Collazos; Juan González; Isabel Ruiz; José M Kindelan; Alexia Carmona; Javier Juega; Antonio Ocampo
Journal:  AIDS       Date:  2002-03-08       Impact factor: 4.177

7.  The combined effect of modern highly active antiretroviral therapy regimens and adherence on mortality over time.

Authors:  Viviane D Lima; Richard Harrigan; David R Bangsberg; Robert S Hogg; Robert Gross; Benita Yip; Julio S G Montaner
Journal:  J Acquir Immune Defic Syndr       Date:  2009-04-15       Impact factor: 3.731

8.  Adherence to antiretroviral treatment and correlation with risk of hospitalization among commercially insured HIV patients in the United States.

Authors:  Paul E Sax; Juliana L Meyers; Michael Mugavero; Keith L Davis
Journal:  PLoS One       Date:  2012-02-24       Impact factor: 3.240

Review 9.  Understanding patients' adherence-related beliefs about medicines prescribed for long-term conditions: a meta-analytic review of the Necessity-Concerns Framework.

Authors:  Rob Horne; Sarah C E Chapman; Rhian Parham; Nick Freemantle; Alastair Forbes; Vanessa Cooper
Journal:  PLoS One       Date:  2013-12-02       Impact factor: 3.240

10.  Psychosocial predictors of non-adherence and treatment failure in a large scale multi-national trial of antiretroviral therapy for HIV: data from the ACTG A5175/PEARLS trial.

Authors:  Steven A Safren; Katie B Biello; Laura Smeaton; Matthew J Mimiaga; Ann Walawander; Javier R Lama; Aadia Rana; Mulinda Nyirenda; Virginia M Kayoyo; Wadzanai Samaneka; Anjali Joglekar; David Celentano; Ana Martinez; Jocelyn E Remmert; Aspara Nair; Umesh G Lalloo; Nagalingeswaran Kumarasamy; James Hakim; Thomas B Campbell
Journal:  PLoS One       Date:  2014-08-25       Impact factor: 3.240

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  9 in total

1.  A Descriptive Study of HIV Patients Highly Adherent to Antiretroviral.

Authors:  Nick Williams; Craig Mayer; Vojtech Huser
Journal:  AMIA Annu Symp Proc       Date:  2021-01-25

2.  Alcohol-related intentional nonadherence to antiretroviral therapy among people living with HIV, Cape Town, South Africa.

Authors:  Seth Kalichman; Catherine Mathews; Ellen Banas; Moira Kalichman
Journal:  AIDS Care       Date:  2019-03-18

3.  Effectiveness of integrase strand transfer inhibitors among treatment-experienced patients in a clinical setting.

Authors:  Thibaut Davy-Mendez; Sonia Napravnik; Oksana Zakharova; David A Wohl; Claire E Farel; Joseph J Eron
Journal:  AIDS       Date:  2019-06-01       Impact factor: 4.177

4.  Safety Assessment of Microbicide 2P23 on the Rectal and Vaginal Microbiota and Its Antiviral Activity on HIV Infection.

Authors:  Zhengqin Gao; Rui Fu; Xiaobo Li; Ji Wang; Yuxian He
Journal:  Front Immunol       Date:  2021-08-10       Impact factor: 7.561

5.  Genetic Variant ABCC1 rs45511401 Is Associated with Increased Response to Statins in Patients with Familial Hypercholesterolemia.

Authors:  Carolina Dagli-Hernandez; Jéssica Bassani Borges; Elisangela da Silva Rodrigues Marçal; Renata Caroline Costa de Freitas; Augusto Akira Mori; Rodrigo Marques Gonçalves; Andre Arpad Faludi; Victor Fernandes de Oliveira; Glaucio Monteiro Ferreira; Gisele Medeiros Bastos; Yitian Zhou; Volker M Lauschke; Alvaro Cerda; Mario Hiroyuki Hirata; Rosario Dominguez Crespo Hirata
Journal:  Pharmaceutics       Date:  2022-04-27       Impact factor: 6.525

Review 6.  Alcohol-Antiretroviral Therapy Interactive Toxicity Beliefs and Intentional Medication Nonadherence: Review of Research with Implications for Interventions.

Authors:  Renee El-Krab; Seth C Kalichman
Journal:  AIDS Behav       Date:  2021-05-05

7.  Dose-related and contextual aspects of suboptimal adherence to antiretroviral therapy among persons living with HIV in Western Europe.

Authors:  Babatunde Akinwunmi; Daniel Buchenberger; Jenny Scherzer; Martina Bode; Paolo Rizzini; Fabio Vecchio; Laetitia Roustand; Gaelle Nachbaur; Laurent Finkielsztejn; Vasiliki Chounta; Nicolas Van de Velde
Journal:  Eur J Public Health       Date:  2021-07-13       Impact factor: 3.367

8.  First report of computational protein-ligand docking to evaluate susceptibility to HIV integrase inhibitors in HIV-infected Iranian patients.

Authors:  Farzane Ghasabi; Ava Hashempour; Nastaran Khodadad; Soudabeh Bemani; Parisa Keshani; Mohamad Javad Shekiba; Zahra Hasanshahi
Journal:  Biochem Biophys Rep       Date:  2022-03-29

9.  Risk Factors for Suboptimal Adherence Identified by Patient-Reported Outcomes Assessments in Routine HIV Care at 2 North American Clinics.

Authors:  Duncan Short; Xueqi Wang; Shivali Suri; Thomas K Hsu; Bryn Jones; Rob J Fredericksen; Heidi M Crane; Alexandra Musten; Jean Bacon; Yongwei Wang; Kevin A Gough; Moti Ramgopal; Jeff Berry; William B Lober
Journal:  Patient Prefer Adherence       Date:  2022-09-05       Impact factor: 2.314

  9 in total

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