Sa'ed H. Zyoud, Dala N. Daraghmeh, Diana O. Mezyed, Razan L. Khdeir, Mayas N. Sawafta and Nora A. Ayaseh
Author(s): Sa'ed H. Zyoud1,2,3 ,
Dala N. Daraghmeh4 , Diana O. Mezyed4 , Razan
L. Khdeir4 , Mayas N. Sawafta4 , Nora A. Ayaseh4 ,
Ghada H. Tabeeb4 , Waleed M. Sweileh5 , Rahmat
Awang3 and Samah W. Al-Jabi2
Background
Chronic kidney disease (CKD) is a growing
worldwide public health concern [1, 2]. It is characterised by an irreversible
worsening of renal function that could lead to end-stage renal disease (ESRD),
which necessitates treatment with renal replacement therapy (RRT) such as renal
transplant or haemodialysis (HD) [3, 4]. HD is one of the most effective therapeutic
techniques for patients with ESRD second to renal transplantation, but is
expensive and burdensome therapy for patients with ESRD [1, 2, 5].
In the United States of America (USA), the
number of newly reported ESRD cases in 2013 was 117,162 corresponding to an
unadjusted incidence rate of 363 per million per year [6, 7]. In the USA, 88.2
% of all incident cases started with RRT with HD, 9.0 % initiated with
peritoneal dialysis, and 2.6 % got a pre-emptive kidney transplant [6, 8]. In
the West Bank of Palestine, the total number of patients with ESRD has
increased notably over the last several years [9]. In 2014, the total reported
number of ESRD patients undergoing HD in the West Bank was 1104 patients,
representing an increase of 77.5 % compared to reported numbers in 2011 [10].
Previous reports have confirmed that ESRD
patients undergoing HD have lower health-related quality of life (HRQOL)
compared with compared with a normative sample [11-21]. Patients with ESRD
undergoing HD are prone to several complications such as depression,
inflammation, and malnutrition [21, 22]. Up to now, too little attention has
been paid to document the HRQOL of patients with ESRD in the Middle East [12,
23, 24]. It has been shown that improving the quality of treatment in patients
with ESRD can minimize the development and/or severity of complications and
therefore improve patients' HRQOL [25-27].
Health-related quality of life is a cultural
concept as revealed by the difference in association between HRQOL and clinical
outcomes such as compliance, or patient survival [28-30]. HRQOL is recognized
as an essential health outcome for studies assessing the quality of healthcare,
evaluating the impact of illness, and analyses of cost-effectiveness [31-33].
In addition, it has been shown that HEQOL is clinically important for improving
dialysis outcome in patients on HD [34, 35].
Although several studies were carried out and
published about HRQOL in different disease populations in Palestine such as
diabetic or hypertensive patients [36, 37], no such studies were carried out
among HD patients in Palestine. Therefore, we performed the present study to
describe the patterns of HRQOL and to determine the independent factors
associated with poor HRQOL in Palestinian patients with HD.
Methods
Study design
A multicenter cross-sectional study was carried
out from June 2014 to January 2015.
Study setting
Patients were recruited from all dialysis
centres in West Bank, Palestine. We collated related information about the
distribution of the population from the Palestinian Central Bureau of
Statistics and Ministry of Health [38].
Study population, sampling procedure and sample
size calculation
The Healthcare sector in Palestine is primarily
managed by the Government through the Palestinian Ministry of Health (PMOH).
There are 10 functioning dialysis centres in West-Bank, Palestine. All the
dialysis centres are on hospital campus and varies in size between one-machine
to 32-machine centres. The PMOH runs nine out of the 10 available dialysis facilities
[10]. At the time of the study, there were 740 dialysis patients served on 160
HD machines [38]. For the purpose of this study, sample size was detrmined
using a Raosoft sample size calculator, which is a web-based calculator [39]. A
sample size of 254 patients was considered to achieve a 5 % margin of error and
a 95 % confidence level assuming that 50 % of patients answered each question
correctly. The sample size was increased by 5-10 % to account for the
non-response rate. Two hundred and seventy seven patients were selected using a
convenience quota sampling method proportional to the number of patients in
each dialysis centre. The inclusion criteria were as follows: (1) patients 18
years of age or older; (2) confirmed diagnosis of ESRD by medical file; and (3)
on regular HD therapy for a minimum of 3 months prior to the interview.
Patients were excluded if they lacked the mental or physical capacity to
communicate with interviewer.
Data collection instrument
Data were collected using a questionnaire
containing two sections, a socio-demographic and clinical history section and a
validated Arabic version of HRQOL section [40]. Details regarding age, gender,
body mass index (BMI) quartiles calculated from height and weight, educational
level, household monthly income were obtained, residency, living status,
smoking status ["light smoker": (1 to 9 cigarettes/day),
"moderate smoker": (10 to 19 cigarettes/day), and "heavy
smoker": ([greater than or equai to]20 cigarettes/day) [41]], marital
status, occupation, dialysis vintage (length of time on dialysis treatment),
average duration of dialysis session, total number of medications for chronic
use, and the total number of chronic diseases. We categorised BMI as obese (BMI
[greater than or equai to] 30 kg/m2 ), overweight (BMI = 25 to
<30 kg/m2 ), normal (BMI = 18.5 to <25 kg/m2 ),
or underweight (BMI < 18.5 kg/m2 ) [42]. To determine the
health status, the 5-level EuroQoL Group's 5-dimension (EQ-5D-5L) questionnaire
was used. The EQ-5D instrument was developed by the Euro QOL Group. The EQ-5D
includes a 5-item descriptive system to calculate the EQ-5D index score and the
EQ visual analogue scale (EQ-VAS) that allows the patients to judge their
current health status during intradialysis from 0 to 100. The measuring
principle of the instrument was described in detail in the previous works by
the investigators [36, 37, 43]. The Arabic version of EQ-5D [40] was provided
by using Euro QOL guidelines [44]. The study was registered with Euro QOL and
permission was given for its use (ID: 8537, approval date: April 7, 2014).
Data collection procedure
Two hundred and seventy seven patients were
recruited and interviewed face to face. We tried to make each interviewee feel
as comfortable as possible. Face-to-face interview was used to provide
researchers with an opportunity to collect as complete data as possible and to
overcome non-response by those who cannot read. Interviews were performed by
trained clinical pharmacy students. Data collection method was pre-tested to
check for the clarity of questions in a pilot study of 16 patients was tested
on eight medical files that were not included in the final anslysis. All the
comments noted in the pilot study were taken into consideration and a modified
questionnaire was reviewed by experts in the field of quality of live (QOL) to
ensure content validity of data collection form in relations to factors that
might be associated with QOL in ESRD population. The internal consistency of
the EQ-5D instrument was found to be 0.84 which showed high reliability of the
EQ-5D instrument.
Ethical approval
The study protocol was approved by the Ethics
Committee of An-Najah National University, and the local health authorities
that had jurisdiction over the local study population. The interview content
was described to respondents, and an informed verbal consent was obtained
before the start of the interview.
Statistical analysis
Data were analysed using SPSS (SPSS Inc.,
Chicago, IL, USA) programme version 15. Results were reported as mean [+ or -]
SDs or as frequencies and percentages or as a median with a range of values
(lower-upper quartiles) wherever appropriate. Data that were not normally
distributed were analysed using the Mann-Whitney U test or Kruskal-Wallis
test according to the number of groups to compare. The Kolmogorov-Smirnov test
was used to assess normality of distribution of data. The Pearson correlation
coefficient was used to assess the correlation between the reported EQ-VAS
scores and EQ-5D-5L index values. Multiple linear regression was carried out to
identify factors that were significantly associated with HRQOL. Multiple linear
regression was carried out to identify factors that were significantly
associated with HRQOL (dependent factor). The independent factors were
socio-demographic, and HD related clinical factors. A dummy coding of 0 and 1
was used to enter the nominal independent variables such as gender, BMI,
educational level, residency, and occupation into the regression model.
Variables with a p < 0.05 in univariate analysis were
entered in the regression model. The significance level was predetermined at p
level < of 0.05 for all tests. Variance inflation factors (VIF) and
tolerance index were conducted to assess collinearity between independent
variables. The internal consistency reliability of the study scale was assessed
using Cronbach's alpha values. EQ-5D was scored to calculate the index value
using the value sets (weights) from the existing United Kingdom general population
scoring algorithm (i.e. EQ-5D-5L Crosswalk Index Value Calculator [45]). We
used the UK value set for three reasons; first, to present the health status as
a continuous variable; second, due to absence of a locally or regionally
appropriate set of values; and lastly to make the comparison more reasonable
because most published studies at local or regional level used the UK value set
as suggested by EuroQol Group the EQ-5D [12, 37, 46].
Results
Socio-demographic and clinical characteristics
Two hundred and sixty-seven patients were
participated in the current study giving response rate of 96 %. Overall, 139
(52.1 %) were male, and the mean (standard deviation) age was 53.3 (16.2)
years. 177 patients (66.3 %) were on dialysis for less than four years. There
were 204 patients (76.4 %) who were dialysed three times weekly among which 198
patients (74.2 %) stayed on dialysis three hours. The mean duration of disease
was 3.4 [+ or -] 3.7 year. The majority of patients 197 (73.8 %) took their
medication by themselves, 116 (43.4 %) had three or more chronic co-morbid
diseases, and 222 (83.1 %) were on four or more chronic medications. The mean
number of chronic co-morbid diseases was 2.4 [+ or -] 1.6 and the mean number
of chronic medications was 6.5 [+ or -] 2.8. Overall, 52.7 % of study
participants were either overweight or obese (28.1 % were overweight and 24.6 %
were obese). Being obese was significantly more prevalent in females (14.8 %)
as compared to males (9.8 %); (p value = 0.042). The socio-demographic and
clinical characteristics of the study participants are displayed in Table 1.
Table 1: Socio-demographic and clinical
characteristics of the study sample [see PDF for image]
EQ-5D health status
The reported HRQOL as measured by mean EQ-5D-5L
index value and EQ-VAS score was 0.37 [+ or -] 0.44 and 59.38 [+ or -] 45.39,
respectively. There was a moderate positive correlation between the EQ-VAS and
the EQ-5D-5L index value (r = 0.42, p < 0.001).
The distribution of reported no problems across dimensions of QOL was as
follows: mobility 73 (27.3 %), usual activities 100 (37.5 %), self-care 146
(54.7 %), pain/discomfort 68 (25.5 %) and anxiety/depression 94 (35.2 %); (Fig.
1). A total of 178 states of health were reported by the participants. We found
that 17 (6.4 %) participants reported no problems for any dimension, and 9 (3.4
%) patients reported very severe difficulty for all five dimensions.
Fig. 1: Distribution of health-related quality
of life measures in different European Quality of Life scale 5 (EQ-5D)
dimensions [see PDF for image]
EQ-5D-5L index values
The median EQ-5D-5L index value was 0.41
(interquartile range: 0.06-0.77). Tables 2 showed that there were significant
differences between participant groups according to age, BMI, education level, residency
and total co-morbid disease, as well as gender, occupation, and total number of
chronic medication (p-value < 0.05). No significant differences were found
between participants according to income, living status, marital status,
dialysis vintage, dialysis session duration, smoking status, and
transplantation history.
Table 2: EQ-5D total score by
socio-demographic and clinical variables (n = 267) [see
PDF for image]
EQ-VAS score
The median EQ-VAS score was 50 (interquartile
range: 50-70). As seen in Tables 3, there were significant differences between
participant groups according to age and total co-morbid diseases, as well as
gender, and total number of chronic medications (p-value < 0.05). Patients
older than 60 years had a lower EQ-VAS score than those younger than 60. In
addition, male gender was associated with higher EQ-VAS value compared to
female. The study found that EQ-VAS score decreased as the total number of
chronic medication increased and as illustrated in Table 3 increased co-morbid
diseases had the lowest EQ-VAS score.
Table 3: EQ-VAS by socio-demographic
and clinical characteristics [see PDF for image]
After adjustment for covariates, regression
coefficients indicated significant associations between some of the independent
variables and EQ-5D index score in comparison to a reference category for
categorical variables or with one unit increase of a continuous variable. This
model explained about 37 % of the variance in EQ-5D scores. As shown in Table
4, age, total number of chronic comorbid diseases and the total number of
chronic medications were negatively associated with EQ-5D scores, whereas male
gender, university education level and patients who live in village were
positively associated with the EQ-5D scores. The range of VIF was from 1.015 to
1.465 which indicated absence of multicollinearity between independent
variables.
Table 4: Multiple linear regression
analysis of association between factors and EQ-5D score[see PDF for image]
Discussion
This study provided a comprehensive analysis of
HRQOL among ESRD patients undergoing HD in the West Bank of Palestine. HRQOL
was assessed using the EQ-5D Overall, this study indicated that the main
sociodemographic factors associated with HD-related QOL were old age, female
gender, obesity, residency in a refugee camp, unemployment, low income, and
having no formal education. Review of literature indicated that the EQ-5D has
been used to measure HRQOL among ESRD patients undergoing HD in different
countries [11-19]. The construct validity, reliability, and responsiveness of
the EQ-5D have been recognized widely in both specific and general disease
populations [47, 48]. Furthermore, Wasserfallen et al. [49] showed that using a
generic QOL instrument EQ-5D was well-accepted, and easy to use for assessing
HRQOL among ESRD patients undergoing HD due to the shorter completion time
compared with other generic instruments.
In the current study, we found that mean EQ-5D
score among ESRD patients undergoing HD was 0.37 [+ or -] 0.44 while findings
from studies that used the same instruments in Korean, Japanese, Taiwan, and
Singaporean patients were 0.704 [+ or -] 0.199 [17], 0.75 [+ or -] 0.17 [18],
0.65 [+ or -] 0.23 [13], and 0.60 [+ or -] 0.21 [20], respectively. Several
socioeconomic and healthcare system related factors could affect HRQOL among
ESRD patients undergoing HD. Some of these variations in EQ-5D score could be
explained by differences in the main sociodemographic and clinical
characteristics of recruited participants such as; age, duration of HD and
presence of comorbid diseases. Furthermore, many patients, particularly in
developing countries, frequently do not seek medical advice until other
debilitating symptoms or complications appeared, thus, delay in diagnosis and
therapy can directly increase the number of complications and therefore leading
to reduction in patient's HRQOL [50].
In our study, there was a modest positive
correlation between the EQ-5D index values and reported EQ-VAS scores. Several
studies suggested that individual experiences that are assessed by different
rating scales such as the EQ-5D-5L and EQ-VAS may result in slightly different
outcomes [12, 51, 52]. In addition, Saffari et al. [12] declared that when
contributors were asked to select their health status using five dimensions,
accuracy in outcomes is probable than when using only one overall dimension of
health status.
Our results demonstrated that increased age was
associated with lower HRQOL. Similar previous studies have reported the same
findings, for instance, Kang et al.'s [17] study using EQ-5D found age was a
significant factor determining HRQOL of Korean HD patients. Younger patients
(<30 years) in the current study reported significantly better HRQOL,
possibly because of the short duration of disease, and minor complications
[37]. According to another study, older age was the most important predictor of
lower QOL and health status [12]. Our study found that female gender was
significantly associated with lower mean EQ-5D scores than male gender. One
possible explanation is that poor social life and physical inactivity of
females in developing countries might contribute to lower QOL scores, thus,
females tend to have poor QOL [50]. This observation is in agreement with Merom
et al [53] findings which identified Palestinian women as being at the highest
risk of physical inactivity. Furthermore, males were less likely to become anxious
or depressed compared to females [12, 54], thus, patients presented with more
symptoms of depression and anxiety indicated lower levels of QOL [55-58]. The
other possible explanation for this result may be that females were more obese
in our study, which by itself worsens HRQOL, as reported by Bossola et al. [59]
and Feroze et al. [54, 60]. According to our study, obese patients were
significantly associated with lower EQ-5D scores. In the USA, a study conducted
by Dwyer et al. [61] also mentioned obesity as one of the factors associated
with impaired HRQOL and recommended the importance of keeping weight at
healthier levels for improvement of QOL.
This study found significant associations
between high education level and high HRQOL. This could be due to the fact that
educated patients may have a better understanding of the illness, its effects,
and will themselves benefit from the best management they can give [50], or
they have more information about the treatments, greater self reported
adherence, and a better relationship with their healthcare team [58]. Education
was also confirmed in several studies as an important discriminator of HRQOL in
HD patients [13, 62-64]. Our data showed that being unemployed was
significantly related to lower EQ-5D scores. These results were in agreement
with the findings documented by Sakthong and Kasemsup [13]. Unemployment was
also confirmed in several studies as an important factor associated with
impaired HRQOL in HD patients [23, 32, 58].
According to our study, residency in a refugee
camp was also associated with low QOL with those living in a village had the
highest EQ-5D index. These results further support the idea of closer
communications and stronger family ties among people in rural areas as found by
Saffari et al. [12] among Iranian population. A Lebanese study demonstrated
that rural residents had higher vitality scores than urban residents [65].
However, it is hard to compare our results with other studies since the health
care systems are different in different countries. Most of Palestinians in
refugees in the camps receive their care from the UNRWA, and according to
Eljedi et al. [66], patients treated at the UNRWA clinics may have a poorer
quality of health care than patients getting care from other providers.
Residency in refugee camps, as an important factor associated with impaired
HRQOL, was also confirmed in several previous studies among different
populations from Palestine such as diabetic or hypertensive patients [36, 37,
43].
As for clinical factors, presence of co-morbid
diseases and increasing in the total number of medications have been recognised
as variables that were negatively associated with HRQOL. Presence of
co-morbidity was negatively associated with HRQOL. Similar associations were observed
in previous studies [12, 20, 24, 63]. Chronic illnesses, mainly DM, were
strongly associated with impaired HRQOL in ESRD patients on dialysis [67]. The
number of medications was significantly associated with lower EQ-5D scores.
These results were in agreement with the findings reported by Chiu and
colleagues whereby people who took a large number of medications rated their
health as poorer than those who did not [68]. A negative impact of medication
on HRQOL might be mediated by the effect of medication-taking on patients'
behaviour due to high expense or side effects.
Strengths and limitations
This study had many strengths such as including
a generalised sample of all HD centres in the West Bank, as well as conducting
face-to-face interviews to obtain more complete data and high reliability of
data collection. Furthermore, our study is the first study assessing HRQOL
among ESRD patients in the West Bank and to the best of our knowledge is the
first one in Palestine that used the EQ-5D scale as a measure. However, there
were a number of limitations that need to be noted. First, the cross-sectional
nature of this study makes it difficult to interpret any cause-effect
relationship. Second, we used a convenience sampling technique that could
decrease the generalisability of the results to other HD patients. Third, data
were collected via a face-to-face interview which might have introduced
interviewer's bias in the results. Lastly, additional clinical variables such
as albumin, calcium, and creatinine would help to get a more complete view of
possible dialysis outcome factors related to HRQOL of HD patients.
Conclusions
Our results provide insight into a number of
associations between patient variables such as demographics, clinical factors,
and their HRQOL. Our research study reveals a number of important results that
can be taken into consideration when dealing with HD patients. Elderly
patients, female gender, obese patients, patients with no formal education, and
living in Palestinian refugee camps were all associated with poor HRQOL. In
addition, this study showed that lower HRQOL was associated with higher numbers
of chronic diseases as well as higher numbers of medications. These results are
expected to be of interest to educators, pharmacists, and clinicians working
with ESRD patients. Healthcare providers should be aware of low HRQOL among
patients with no formal education, female gender, patient's residents of
refugee camps, multiple co-morbid diseases, multiple chronic medications, and
elderly patients to improve their QOL.
Ethics approval and consent to participate
The study protocol was approved by the Ethics
Committee of An-Najah National University. The interview content was described
to respondents, and an informed verbal consent was obtained before the start of
the interview.
Consent for publication
Not applicable.
Availability of supporting data
All data supporting the study is presented in
the manuscript or available upon request from the corresponding author of this
manuscript, Zyoud S. H.
Abbreviations: CKD: Chronic kidney disease; EQ-5D-5L: 5-level
EuroQoL Group's 5-dimension; EQ-VAS: EuroQoL visual analogue scale; ESRD:
end-stage renal disease; HD: haemodialysis; HRQOL: health-related quality of
life, PMOH, Palestinian Ministry of Health, BMI, body mass index; QOL: quality
of live; RRT: renal replacement therapy; SD: standard deviation; UNRWA: United
Nations Relief and Works Agency for Palestine Refugees in the Near East; VIF:
variance inflation factor
Competing interests: The authors declare that they have no competing
interests.
Authors' contributions: SZ led study design, data collection,
statistical analysis, interpreted the data, and drafting of manuscript; WS, SA,
and RA involved in study concept and design, and revised the article for
important intellectual content; and DD, DM, RK, MS, NA, and GT carried out the
data collection, results tabulation, statistical analysis, and wrote part of
the article. SZ, WS, SA, and RA responded to editorial and reviewers' comments.
All authors read and approved the final manuscript and agreed on its
submission.
Acknowledgements: We would like to thank all participants for
their cooperation. Furthermore, we would like to express sincere thanks to
An-Najah National University and the PMOH for their help and ethical approval
to conduct this study.
Funding sources
No funding was received for writing this study.
Correspondence: Sa'ed H. Zyoud:
saedzyoud@yahoo.comsaedzyoud@najah.edu
Author details: 1 Poison Control and Drug Information
Center (PCDIC), College of Medicine and Health Sciences, An-Najah National
University, 44839, Nablus, Palestine. 2 Department of
Clinical and Community Pharmacy, College of Medicine and Health Sciences,
An-Najah National University, 44839, Nablus, Palestine. 3 WHO
Collaborating Centre for Drug Information, National Poison Centre,
Universiti Sains Malaysia (USM), 11800, Penang, Malaysia. 4 PharmD
program, College of Medicine and Health Sciences, An-Najah National University,
Nablus, Palestine. 5 Department of Pharmacology and Toxicology,
College of Medicine and Health Sciences, An-Najah National University, 44839,
Nablus, Palestine.
Article history: Received 16 October 2015 Accepted 22 April 2016
Published online 27 April 2016
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