Introduction

Osteoarthritis (OA) is the most common form of arthritis and a leading cause of years lived with disability (YLD) and reduced quality of life [1, 2]. Osteoarthritis commonly affects the elderly and the commonest site affected is the knee; major symptoms are pain, stiffness and activity limitation leading to poor quality of life and psychosocial comorbidities [3].

Sleep disturbance is one of the comorbidities frequently associated with knee OA. Previous reports indicate that 28% to 80% of patients with knee OA have sleep disturbance [4]. The Johnston County Osteoarthritis Project on sleep and arthritis reported that 71% of US patients with knee OA had sleep abnormalities [5]. This high frequency of abnormal sleep among knee OA patients is not surprising given that pain, the commonest symptom of osteoarthritis, largely influences the sleep quality of individuals [6].

The relationship between sleep and pain is complex and multidimensional. Nocturnal pain reduces sleep quality, leading to difficulty initiating or maintaining sleep, while the un-refreshing nature of poor sleep contributes to pain and fatigue [7, 8]. Similarly, knee OA patients with poor functional status have been found to have poor sleep quality with resultant fatigue and lower physical and mental function scores [7, 8].

As a disease of the elderly, osteoarthritis affects a group of individuals who require a lot of family support especially regarding activities of daily living. Previous reports have shown a relationship between family function and subjective well-being, beyond the pain and fatigue experienced by patients [9]. Sleep disturbance is also frequently associated with depression. A study by Parmelee et al. [10] showed that sleep was independently associated with pain and depression with the sleep–pain relationship mediated by depressive symptoms.

To the best of our knowledge, multicentre studies on the impact of clinical features of knee OA on sleep quality among Nigerians are lacking. The main aim of this study is to determine the impact of pain, functional status, family function and depression on the sleep quality of patients with knee osteoarthritis.

Material and methods

Study design

We conducted a multi-centre, hospital-based crosssectional descriptive and analytic study at the Rheumatology clinics of five tertiary institutions in Nigeria (University of Maiduguri Teaching Hospital, Jos University Teaching Hospital, University of Ilorin Teaching Hospital, Lagos State University Teaching Hospital, and University of Uyo Teaching Hospital) all spread across the northern, middle and southern parts of the country.

Study population

Individuals aged 18 years and above, satisfying the American College of Rheumatology (ACR) clinical classification criteria for knee OA [11], were recruited over a period of 3 months.

Sample size determination

Sample size was obtained using Fisher’s statistical formula for estimating minimum sample size in descriptive health studies for population sizes greater than 10,000 [12]. Based on the reported knee OA prevalence of 11.5% determined by Adebusoye et al. in Ibadan, Southwest Nigeria [13], the calculated sample size for the study was estimated to be 156. However, to increase the power of the study, we recruited a total of 250 patients at a rate of 50 patients per centre.

Sampling method

Patients were recruited using a systematic random sampling method in which every other patient with knee OA was recruited. Prior communication with the co-investigators representing each of the participating hospitals revealed that a median of 100 patients with knee OA were seen over a period of three months. With a recruitment plan of 50 participants per centre, a sampling interval of 2 was chosen. The first patient seen each day meeting the inclusion criteria for the study was chosen followed by the 3rd patient and so on. If an individual did not satisfy the inclusion criteria, or the person refused to participate, the next individual was recruited. Patients’ folders were labelled and a research register was kept to avoid double sampling. The procedure was repeated each day until the sample size was attained.

Inclusion and exclusion criteria

Consenting patients aged 18 and older who satisfied the ACR clinical classification criteria for knee OA served as inclusion criteria. Patients with a history of previous knee surgery, known mental illness, previous diagnosis of insomnia, inflammatory arthritis, systemic infection, or malignancy and other symptomatic chronic diseases, e.g. diabetes mellitus, chronic liver disease, chronic obstructive lung disease, were excluded from the study.

Data collection

Informed verbal and written consent was obtained from all participants while a semi-structured interviewer-administered questionnaire was used to collect demographic and relevant clinical information. Pain severity was assessed using a 0–10 numerical rating scale (NRS), with 0 representing no pain and 10 being maximum pain experienced. A score of 4 or less was considered mild pain, 5–7 as moderate and 8 and above as severe pain. The WOMAC (Likert) pain subscale was also used to grade pain intensity. We considered cut-off points of less than 5, 6–10 and 11 to 20 as mild, moderate and severe pain respectively.

Individuals were grouped into four functional classes using the Steinbrocker functional classification [14]. Each knee was examined separately for the presence or absence of deformities, effusion, joint line tenderness and crepitus. The range of motion (ROM) and alignment of the knee joint were measured using an International Standard Goniometer. Quadriceps strength was graded using the Medical Research Council grading scale. The weight to the nearest 0.01 kg and height to the nearest 0.01 m were measured using a Seca electronic weighing/ height scale (Seca Deutschland, Hamburg Germany) using standard techniques. Body mass index (BMI) was calculated using the formula, weight (kg)/height² (m). For the purpose of our analysis we grouped patients as not obese (BMI < 30 kg/m2) or obese (BMI ≥ 30.0 kg/m2).

Blood pressure (BP) was measured with a mercury sphygmomanometer (Accosson, England) using standard techniques [15]. Standard antero-posterior (AP) and lateral semi-flexed radiographs of both knees in weight bearing position were taken by qualified radiographers of the radiology department of the hospitals. The radiographs were interpreted and graded by both the radiologists and the principal investigators using the Kellgren and Lawrence (KL) criteria [16]. The higher KL grade of the knee was used for the final analysis.

The sleep quality of respondents was assessed using the Pittsburgh Sleep Quality Index (PSQI) [17]. The 19-item questionnaire generates seven components: sleep quality, sleep latency, sleep duration, habitual sleep efficiency, sleep disturbances, use of sleep medications and daytime dysfunction. The global score ranges from 0 to 21, with higher scores indicative of poorer subjective sleep quality. The PSQI has been validated in Nigeria by Aloba et al. [18] with the best cut-off score set at 5. We dichotomized patients into two groups, scores less than 5 (no sleep abnormality) and score ≥ 5 (poor sleep quality).

Family functioning was assessed by the Family APGAR (Adaptation, Partnership, Growth, Affection, and Resolve) questionnaire. The measure consists of five parameters of family function: Adaptability, Partnership, Growth, Affection and Resolve. The instrument has a minimum score of 0 and maximum score of 10. Family APGAR scores are interpreted as follows: 7–10 = highly functional family; 4–6 = moderately dysfunctional family; 0–3 = severely dysfunctional family. The correlation of the instrument with the previously validated instrument (Pless-Satterwhite index) is 0.80 and the correlation with a clinical report is 0.64 [19]. Family APGAR has been validated and used for previous studies in Nigeria [20].

Depression was assessed using the Patient Health Questionnaire (PHQ-9) [21]. It has a minimum score of 0 and maximum score of 27. Component scores are rated 0 to 3. The interpretation of the total scores is as follows: 0–4 = no depression; 5–9 = mild depression; 10–14 = moderate depression; 15–19 = moderately severe depression; 20–27 = severe depression. It has been validated for use in Nigeria, having a good concurrent validity with the Beck Depression Inventory (BDI) (r = 0.84, p < 0.001) and good one month test-retest reliability (r = 0.84, p < 0.001) [22]. The sensitivity and specificity with 5 as the cut-off score for minor depressive disorder is 0.989 and 0.973 respectively, and 0.846 and 0.994 respectively with 10 as the cut-off for major depression [22]. PHQ-9 has also been shown to be a valid and reliable tool for assessing depressive disorders and depression severity among patients with knee OA [23]. We dichotomized patients into two groups: PHQ-9 < 5 (no depression) and PHQ-9 ≥ 5 (has depression).

Data analysis

All data obtained were analyzed using SPSS version 21.0 by IBM USA, Armonk, NY 10504. Demographic and clinical data were summarized using frequencies, percentages and proportions. Normality testing was performed using Shapiro-Wilk statistics. Means of normally distributed continuous variables of participants with poor sleep quality and those without poor sleep quality were compared using the t-test. Tests of association between poor sleep quality and each of the determinants under consideration (pain scores, functional status, family functioning, KL grades and depression) were done using the chi-square test with Fisher’s exact test used where frequencies were < 5. Pearson’s and Spearman’s correlation was used to determine correlations between sleep quality and the determinants under consideration. Predictors of poor sleep in patients with knee OA were determined using multiple logistic regression analysis with PSQI score <5 and ≥ 5 as a binary outcome. A p-value < 0.05 was considered statistically significant for all tests.

The study was approved by the Ethical Review Committee of each of the study centres.

Results

Demographic characteristics

The 250 participants comprised 209 (83.6%) females and 41 (16.4%) males. One hundred and forty-one (56.4%) had PSQI scores ≥ 5, indicative of poor sleep quality. Their mean age was 59.90±10.62 years, and 97 (38.8%) were 65 years or older. There was no significant difference in mean ages of those with and without poor sleep (p = 0.353). The majority (74.4%) had a formal education, 185 (74%) were married, 66 (26.4%) were unemployed. The mean BMI was 30.82 ±5.48. Patients with poor sleep had higher BMI compared to those without poor sleep (p = 0.04). Poor sleep was significantly associated with level of education and smoking (p = 0.001 and p = 0.019 respectively). Table I shows the socio-demographic distribution of the patients.

Table I

Socio-demographic characteristics of participants

VariablePSQI ≤ 4 n (%) = 109 (43.6)PSQI ≥ 5 n (%) = 141 (56.4)p-value
Age60.61 ±10.2959.35 ±10.880.353*
Gender0.305#
 Male21 (19.3)20 (14.2)
 Female88 (80.7)121 (85.8)
Level of education0.001#
 None27 (24.8)19 (13.5)
 Primary15 (13.8)28 (19.9)
 Secondary19 (17.4)26 (18.4)
 Tertiary40 (36.7)34 (24.1)
 Postgraduate6 (5.5)18 (12.8)
 Others2 (1.8)16 (11.3)
Marital status0.316#
 Single3 (2.8)2 (1.4)
 Married74 (67.9)111 (78.7)
 Separated1 (0.9)2 (1.4)
 Divorced3 (2.8)2 (1.4)
 Widowed27 (24.8)23 (16.3)
Occupation0.518#
 Business23 (21.1)32 (22.7)
 Civil servant19 (17.4)26 (18.4)
 Others15 (13.8)20 (14.2)
 Retired24 (22.0)28 (19.9)
 Unemployed28 (25.7)35 (24.8)
Ethnic group0.137#
 Hausa13 (11.9)7 (5.0)
 Igbo8 (7.3)11 (7.8)
 Yoruba41 (37.6)47 (33.3)
 Others47 (43.1)76 (53.9)
Diabetes mellitus0.423#
 Yes16 (14.7)23 (16.3)
 No93 (85.3)118 (83.7)
Hypertension0.861#
 Yes74 (67.9)88 (62.4)
 No35 (32.1)53 (37.6)
Height1.63 ±0.081.61 ±0.070.124*
Weight79.37 ±12.7282.04 ±17.230.176*
BMI30.01 ±4.7431.44 ±5.940.040*

PSQI – Pittsburgh Sleep Quality Index

* – Student’s t-test

# – χ2 test, BMI – body mass index.

Relationship between sleep quality and pain, functional class, APGAR score, depression and Kellgren-Lawrence grade

The mean ±SD WOMAC pain score was 8.83 ±3.84. Participants with poor sleep had higher mean pain scores compared to those with good sleep quality (9.60 vs. 7.83, p < 0.001). One hundred and eighteen (83.7%) patients with poor sleep quality had moderate to severe WOMAC pain scores, compared to 66 (63.1%) patients without poor sleep (p < 0.001). The proportion of participants with poor sleep increased as pain severity increased (p for trend < 0.0001). Eighty-four (59.6%) patients with poor sleep had depression (PHQ-9 score ≥ 5). Poor sleep was strongly associated with depression (p < 0.0001) and the proportion of participants with poor sleep quality and depression was higher than those with good sleep quality and depression (59.6% vs. 19.3%, p < 0.0001). Poor sleep quality was not associated with functional class (p = 0.854) or APGAR score (p = 0.137) of the participants (Table II).

Table II

Association between sleep quality and pain, depression, functional class, APGAR score, and Kellgren and Lawrence grade

VariablePSQI ≤ 4 n (%) = 109 (43.6)PSQI ≥ 5 n (%) = 141 (56.4)p-value*p for trend**
WOMAC pain< 0.0001
 Mean ±SD7.83 ±3.919.60 ±3.61< 0.001#
 Mild (≤ 5)43 (65.2)23 (34.8)< 0.001
 Moderate (6–10)35 (38.0)57 (62.0)
 Severe (11–20)31 (33.7)61 (66.3)
PHQ-9< 0.001
 Score ≤ 488 (80.7)57 (40.4)
 Score ≥ 521 (19.3)84 (59.6)
Functional class0.854
 Class I23 (21.1)35 (24.8)
 Class II60 (55.0)70 (49.6)
 Class III23 (21.1)32 (22.7)
 Class IV3 (2.8)4 (2.8)
APGAR score0.1370.052
 0–32 (18.2)9 (81.8)
 4–615 (37.5)25 (62.5)
 7–1092 (46.2)107 (53.8)
KL grade0.3330.475
 Grade I1 (14.3)6 (85.7)
 Grade II25 (41.0)36 (59.0)
 Grade III51 (48.1)55 (51.9)
 Grade IV32 (42.1)44 (57.9)

PSQI – Pittsburgh Sleep Quality Index

* – χ2 test

** – χ2 test for trend, SD – standard deviation

# – Student’s t-test, WOMAC – Western Ontario and McMaster Universities index

PHQ-9 – Patient Health Questionnaire score-9, APGAR – Adaptation, Partnership, Growth, Affection, and Resolve, KL – Kellgren-Lawrence.

Radiographic findings

Most participants (97.2%) had KL grade II and above. One hundred and eighty-six (74.6%) had medial knee OA, 156 (62.4%) had lateral knee OA, while 149 (59.6%) had patello-femoral knee OA. The proportion of participants with a PSQI score ≥ 5 (poor sleep quality) was higher among individuals with medial and patello-femoral knee OA compared to those with a PSQI score ≤ 4 (p = 0.024 and p = 0.002 respectively). There was no significant association between lateral knee OA, KL grade and poor sleep (p = 0.103 and p = 0.333 respectively), as shown in Table III.

Table III

Radiographic findings of participants with good and poor sleep quality

VariablePSQI ≤ 4 n (%)PSQI ≥ 5 n (%)p-value*p-value**
Medial comp.0.0320.024
 Yes73 (73.0)113 (85.0)
 No27 (27.0)20 (15.0)
Lateral comp.0.1030.159
 Yes59 (64.1)97 (74.6)
 No33 (35.9)33 (25.4)
Patellofemoral0.0020.002
 Yes49 (57.6)100 (77.5)
 No36 (42.4)29 (22.5)
KL grade0.3330.475#
 Grade I1 (14.3)6 (85.7)
 Grade II25 (41.0)36 (59.0)
 Grade III51 (48.1)55 (51.9)
 Grade IV32 (42.1)44 (57.9)

PSQI – Pittsburgh Sleep Quality Index, comp. – compartment

* – χ2 test

** – Z-test for difference in proportion.

# – χ2 test for trend.

Predictors of poor sleep quality

After analyzing variables significantly associated with PSQI scores using multiple logistic regression, higher PHQ-9 scores, WOMAC pain scores and higher level of education were found to be the best predictors of poor sleep quality among the participants (p < 0.001, p = 0.035 and p = 0.013 respectively). Participants with depression and knee OA were 1.27 times more likely to have poor sleep than those without depression, while those with higher WOMAC pain scores were 1.11 times more likely to have poor sleep compared to those with lower pain scores (Table IV).

Table IV

Predictors of poor sleep quality amongst patients with knee osteoarthritis

VariableBWaldp-valueORCI
PHQ-90.23816.572< 0.0011.2691.131–1.423
Level of educatiom0.2896.1870.0131.3351.063–1.676
WOMAC pain score0.1004.4680.0351.1051.007–1.212
PF compartment–0.6893.4700.0620.5020.223–1.037
BMI0.0421.7660.1841.0430.980–1.102
KL grade–0.2441.3500.2450.7840.519–1.182

[i] OR – odds ratio, CI – confidence interval, PHQ-9 – Patient Health Questionnaire score-9, PF – patellofemoral, BMI – body mass index, KL – Kellgren-Lawrence.

Discussion

Our study revealed that poor sleep quality is common among patients with knee OA and it is strongly associated with depression, moderate to severe knee pain, level of education, obesity as well as medial and patellofemoral knee OA. Level of depression and pain scores were the best predictors of poor sleep among our participants. Sleep abnormalities are fairly common among patients with knee OA. Previous studies have reported frequencies of 11.6 to 71% of insomnia among patients with arthritis [5, 6]. This large variation in frequency is due to differences in sleep assessment tools used, populations studied and the region/country involved. The 56.4% we found in our study is similar to that seen in other studies [46].

In our study, there was no difference in sleep quality between males and females, though a study by Quan et al. [24] involving elderly patients in a small city in Korea revealed that more females had insomnia compared to males. This was similar to a report by Arber et al. [25]. These studies involved patients from the general population without particular reference to knee OA, and this might explain the difference.

The relationship between poor sleep and level of education has yielded conflicting results. In a cross-sectional survey of 9,714 individuals by Patel et al. [26], level of education was found to mediate poor sleep in poor individuals only, while Tang et al. in China [27] found that poor sleep was significantly associated with higher level of education. Our study also revealed a strong association between level of education and poor sleep similar to reports by Tang et al. [27] We observed that patients with poor sleep had higher BMI compared to those with good sleep, in agreement with the report by Taylor et al. [4]. Their study involving 300 veterans with insomnia, obstructive sleep apnoea (OSA) and either hip or knee OA showed that obesity was strongly associated with poor sleep and OSA.

Multiple studies [58] have all shown a strong association between knee OA pain and poor sleep quality though this relationship is complex. Our study confirmed that pain is strongly related and is a strong predictor of poor sleep amongst patients with knee OA. Similarly, Louie et al. [6] reported that joint pain and limitation were the main mediators between pain and insomnia. Woolhead et al. [28] found that night pain was associated with poor sleep quality while Sasaki et al. [8] reported that pain severity increased with increasing KL grade and this was associated with higher rates of poor sleep.

Most of our patients with poor sleep were depressed. Depression has been linked to poor sleep among patients with knee OA in previous studies, similar to what we observed. [46, 24]. Parmelee et al. [10] found that the sleep–pain relationship could be explained by depressive symptoms and depression was independently associated with both pain and sleep problems. Our study also identified depression as the best predictor of poor sleep quality, further confirming the association between pain, depression and sleep quality.

Interestingly, we found no association between KL grade and poor sleep, in contrast with the report by Sasaki et al. [8], though poor sleep was associated with medial and patello-femoral knee OA. This is not surprising in view of the poor correlation between radiographic severity of knee OA and pain, with the latter being a major determinant of poor sleep in our study. Lim et al. [29] reported that as family APGAR scores decreased, the WOMAC pain subscale score increased, indicating that a functional family reduces pain perception by knee OA patients.

We were unable to identify any significant association between poor sleep and family functioning, though the proportion of patients with a severely dysfunctional family and poor sleep was higher than those without poor sleep. Potential limitations of this study include its cross-sectional design, limited study sites and the fact that it was hospital-based.

Conclusions

This study has shown that sleep quality is poor among Nigerian knee OA patients and it is largely influenced by depression, pain and higher level of education. Whether treating depression will improve pain and sleep quality remains unanswered. Larger multicentre studies preferably with an intervention arm are hereby recommended to properly assess the impact of pain and depression on sleep quality of knee OA patients.