Predicting Factors of Pain Duration in Patients with Chronic Pain: A Large Population-based Study

AUTHORS

Hossein Majedi ORCID 1 , 2 , * , Mohammadreza Hoseini Amini 3 , Fardin Yousefshahi ORCID 2 , Zahra Khazaeipour ORCID 1 , Maryam Majedi 1 , Mojgan Rahimi ORCID 2 , Amirhossein Orandi 2

1 Brain and Spinal Cord Injury Research Center, Neuroscience Institute, Tehran University of Medical Sciences, Tehran, Iran

2 Department of Anesthesiology, Critical Care and Pain Medicine, School of Medicine, Tehran University of Medical Sciences, Tehran, Iran

3 Department of Anesthesiology and Critical Care, Qom University of Medical Sciences, Qom, Iran

How to Cite: Majedi H, Amini M H , Yousefshahi F, Khazaeipour Z , Majedi M, et al. Predicting Factors of Pain Duration in Patients with Chronic Pain: A Large Population-based Study, Anesth Pain Med. Online ahead of Print ; 10(1):e95776. doi: 10.5812/aapm.95776.

ARTICLE INFORMATION

Anesthesiology and Pain Medicine: 10 (1); e95776
Published Online: February 10, 2020
Article Type: Research Article
Received: June 28, 2019
Revised: October 26, 2019
Accepted: January 27, 2020
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Abstract

Background: Chronic pain is the third main problem of global health and the most common cause of long-term disabilities. The duration that patients suffer from chronic pain is directly proportional to the extent of the suffering and to the amount of health care resources allocated to this problem. There is no research that has studied the risk factors associated with the long pain duration in chronic pain patients.

Methods: We investigated the potential risk factors associated with long pain duration in a population with diverse pain conditions in a cross-sectional study. We used a questionnaire that included a number of potential risk factors including sex, age, marital status, household condition, number of children, employment, education, body mass index (BMI), pain intensity, and the level of anxiety/depression. The data were analyzed by univariable and multivariable linear regression models.

Results: We recruited 780 patients. The analyses showed that age and abnormal BMI had a positive correlation with pain duration.

Conclusions: The risk factors that might be associated with longer pain duration include older age and abnormal BMI.

Copyright © 2020, Author(s). This is an open-access article distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 International License (http://creativecommons.org/licenses/by-nc/4.0/) which permits copy and redistribute the material just in noncommercial usages, provided the original work is properly cited.

1. Background

Chronic pain is the third main problem of global health and the most common cause of long-term disabilities. The total number of working days lost due to chronic pain is about 50 million days a year in the United States (1). Chronic pain is a complicated health problem that is associated with significant psychological co-morbidities, including somatization, depression, and anxiety. It affects sleeping and eating habits, reduces physical and professional activities, limits personal income, and impairs interpersonal relationships (2, 3).

The duration that patients suffer from chronic pain has variable lengths. A certain chronic pain condition lasts longer or even persists forever in some patients while the same condition subsides sooner in other patients. Pain duration (PD) is directly proportional to the extent of the suffering and to the amount of health care resources that allocated to this problem. Long PD may have many reasons including the chronic nature of the underlying condition, delayed referring to pain clinics, and inadequate pain treatment (IPT). Our information is very limited concerning the risk factors associated with long PD. Some investigations have studied the socioeconomic parameters that may have an impact on chronic pain (4-8). However, to the best of our knowledge, there is no research that has studied the risk factors associated with long PD in chronic pain patients. Most studies have only reported the average duration of pain in these patients whereas we tried to determine the risk factors associated with PD. Our comprehensive knowledge of associated risk factors for longer PD in chronic pain patients can ultimately improve the treatment outcome and save a lot of health care resources.

2. Methods

In this cross-sectional study, we investigated the potential risk factors associated with long PD in a population with diverse underlying pain conditions who had referred to our tertiary pain clinic before we commenced our specialized pain treatments. This study was approved by the Ethics Committee of our university hospital. Informed consent was obtained from all patients.

The inclusion criteria were (a) patients with chronic pain, defined as PD of more than three months. Chronic pain conditions included: CRPS, fibromyalgia, phantom/stump pain, chronic persistent post-surgical pain, facetogenic pain, sacroiliac joint dysfunction, different kinds of poly/mono-neuropathies and neuralgias, migraine, atypical facial pain, trigeminal neuralgia, cluster-type headaches, piriformis syndrome, cervical/lumbosacral radicular pain, etc., (b) having adequate information or records of the previous pain management, (c) willingness to participate in the study, (d) having the mental capacity to fill in the questionnaire or cooperate with the interviewer, and (e) lack of any previous specialized chronic pain treatments including consuming tricyclic antidepressants, antiepileptics, SNRIs, SSRIs, or any specialized pain injection/block/denervation techniques. The exclusion criteria were (a) lack of chronic pain and (b) unwillingness to participate in the study.

We designed a self-report questionnaire that included a number of questions on the following potential risk factors (independent variables): sex, age, marital status, household condition, number of children, employment, education, body mass index (BMI), pain intensity (PI), and the level of anxiety/depression. Pain duration was also asked and recorded as the dependent variable. If the patient was unable to fill in the questionnaire, a trained staff was available to help him/her answer the questions.

Pain intensity was evaluated by the validated Persian version of the brief pain inventory (BPI) (9). The BPI is a multidimensional tool that contains a body diagram. The BPI has four numeric rating scales (NRS) to measure pain intensity at its least, worst, average, and current severity. Pain relief and interference with function, enjoyment, and mood can also be evaluated by BPI. Patients expressed their PI by an 11-point NRS with four questions: minimal PI, maximal PI, right-now PI (PI at the time of the interview), and overall PI (PI that the patient had suffered from during the last week). The mean PI was defined as the mean of the maximal, right-now, and overall pain intensities. Eventually, the mean PI was calculated and recorded for each patient.

Patients’ education was classified into (a) illiterate, (b) below high school: having some education but less than high school diploma, (c) high school diploma: graduated from high school, (d) BS (Bachelor of Science) or lower: having some university education, (e) MS (Master of Science) or Ph.D.: having post-graduate training.

Marital status was classified into two groups: single (not being in any kind of relationship) and married (married or being in any type of relationship). The household condition was referred to as the number of people who were living in a residential unit. We classified it into two groups: (a) alone (living alone) and (b) accompanied with others (living with someone else, whether a family member or a roommate). Patients were also classified into two groups based on their BMI: (a) normal BMI: 18.5 to 24.9 kg/m2 and (b) abnormal BMI.

We evaluated the patients’ level of anxiety and depression with the validated hospital anxiety and depression scale (HADS). This scale has 14 items. Each item is scored from 0 to 3. Therefore, patients could get a score from 0 to 42.

2.1. Statistics

Data analysis was performed with SPSS 18. According to Elliott et al. (10), with a 10% reduction in the sample size and with a d = 0.04 and alpha = 0.05, the sample size was calculated about 660 patients. Data were expressed as frequency, percentage, and measures of central tendency such as mean, and measures of dispersion such as standard deviation. The distribution of data was evaluated using the Kolmogorov-Smirnov test. The correlation of continuous variables was evaluated by Pearson’s correlation or Spearman's rho correlation test. The mean values of continuous variables in two categorical variables were done by ‘t’ or Mann-Whitney test. A linear regression model was used to adjust for the independent variables. In the linear regression model, PD was the dependent variable while age, sex, job, education, BMI, PI, number of children, and household condition were the independent variables. We entered the mean PI, right-now PI, or minimal PI instead of maximal PI in other models. The p values of less than 0.05 were considered significant.

3. Results

We recruited 780 patients in this study. Their characteristics and descriptive data are shown in Table 1. The average PD was 60.52 months.

Table 1. Patient Characteristics and Descriptive Data on Investigated Variables (N = 780)
VariableMean ± SD or Percentage (%)
Age, y49 ± 15.26
≤ 3012.0
31 - 4530.1
46 - 6541.2
> 6516.7
Sex
Male43.6
Female56.4
Employment
Employed39.5
Unemployed60.5
Education
Illiterate14.2
Below high school38.7
High school diploma 24.1
BS or lower18.4
MS or Ph.D.4.6
Marital status
Single19.6
Married80.4
Household conditions
Alone5.6
Accompanied with othersa94.4
Number of children 3.04 ± 2.09
BMI, kg/m225.7 ± 4.95
Normal (18.5 to 24.9)46.3
Abnormal53.7
Pain intensity (NRS)
Minimal 2.90 ± 2.35
Maximal 8.39 ± 1.94
Right-now 5.22 ± 2.86
Overall 6.76 ± 1.58
‘Mean Pain Intensity’ b6.75 ± 1.78
HADS 17.86 ± 8.59
Pain duration, mo60.52 ± 88.99

Abbreviations: BMI, body mass index; BS, bachelor of science; HADS, hospital anxiety and depression scale (0 - 42); MS, master of science; NRS, 11-point numeric rating scale.

aLiving with someone else in a residential unit.

b‘Mean Pain Intensity’: the mean of the maximal, right-now, and overall pain intensities.

Tables 2 and 3 demonstrate the univariable analysis. We primarily evaluated the correlation between different potential risk factors and the outcome (dependent variable, PD). In the second step, the linear regression model (Table 4) was used to adjust for the independent variables. Table 2 shows that PD had a positive correlation with age, mean PI, and minimal and right-now PI in univariable analysis. Table 3 demonstrates that PD was significantly longer in females than in males (P = 0.008). Although PD was longer in unemployed patients and in people who were living alone, this difference was not significant.

Table 2. Correlation Between Pain Duration (Dependent Factor) and Independent Variables of Age, Education, and Different Pain Intensities
VariablesCorrelation CoefficientaP Value
Age0.135b0.001
Education0.032b0.459
‘Mean Pain intensity’0.102c0.040
Minimal pain intensity0.100c0.035
Right-now pain intensity 0.120c0.015
Maximal pain intensity0.073c0.120
Overall pain intensity0.023c0.619

a1 is a totally positive linear correlation, 0 is no linear correlation, and -1 is a totally negative linear correlation

bPearson’s correlation

cSpearman’s rho correlation

Table 3. Comparison of Pain Duration Between the Groups of Sex, Employments, and Household Condition
Variable Mean Pain Duration, moStandard DeviationP Value
Sex0.008a,b
Male49.676.2
Female68.496.4
Employment0.528b
Employed57.491.7
Unemployed62.387.0
Household condition0.114c
Accompanied with others57.281.7
Alone 98137.9

aValues show a significant correlation with pain duration (P value < 0.05).

bt test

cMann-Whitney test

Table 4. Linear Regression Analysis Between Pain Duration (Dependent Factor) and Independent Variables of Age, Sex, Employment, Education, BMI, Household Condition, and Maximal PI
ModelCoefficientsa
Unstandardized CoefficientsStandardized CoefficientstP
BStd. ErrorBeta
1
(Constant)-158.44962.193-2.5480.012
Age1.1660.4470.1822.6110.010b
Sex14.07114.1890.0750.9920.322
Employment-2.06714.347-0.011-0.1440.886
Education8.1466.3660.0911.2800.202
BMI, kg/m22.9781.2810.1602.3250.021b
Household condition30.89228.1970.0721.0960.274
PI-maximal 2.4523.1240.0520.7850.433

Abbreviations: BMI, body mass index; PI, pain intensity

aDependent variable: pain duration (months). Negative and positive beta correlations represent inverse and straight relationships.

bValues show a significant correlation with pain duration (P value < 0.05).

In the linear regression models, PD was the dependent variable, while age, sex, employment, education, BMI, household condition, and different measures of PI were the independent variables (Table 4). Age and abnormal BMI had a consistent positive correlation with PD in different models. Some other models were also tested. The results were similar when entering other measures of PI. Other independent variables did not show any significant relationship.

4. Discussion

This study demonstrated that older people and patients with abnormal BMI had longer PD among chronic pain patients. Therefore, age and abnormal BMI were independent risk factors of long PD. Female gender and higher mean PI were associated with longer PD in univariable analysis, which was not confirmed in multivariable linear regression models. Long PD in patients suffering from chronic pain can have many reasons including the chronic nature of the underlying condition, delayed seeking for medical care by the patients, delayed referral of the patients to pain clinics by health care providers, and Inadequate Pain Treatment (IPT).

Inadequate pain treatment can be an important reason for longer PD. When patients are not satisfied with their pain management or their pain is not adequately relieved, PD will be longer. Inadequate pain treatment is very common in chronic pain patients (11-13). Several factors have been proposed to contribute to IPT including age, gender, social status, and pain intensity (14-18). Our findings are comparable with these results. We observed that older patients, females, and patients with higher mean PI had longer PD, which could be attributed to more common IPT in this population. Older patients are also more prone to side effects of medications and they have a more fragile health condition. Therefore, some physicians are very cautious in the treatment of the geriatric population and they administer analgesics with low doses. Ultimately, it may lead to pain undertreatment of older patients.

There are many reports that IPT is more common in women (11, 19, 20), which are compatible with our results. Previous studies have indicated that race, ethnicity, gender, and socioeconomic factors would affect the people′s health status and the use of medical care services (4-6). The importance of these factors in chronic pain has also been explained in several studies (4, 21, 22). Socioeconomic factors can modify individual pain experience (4-6, 10, 21-26). Women have a lower quality of pain management in different societies. In other words, IPT is more common in women (4, 19, 22, 27). There are some mechanisms that can explain this difference, including a different pain sensitivity or a different response to analgesics between the two genders (28-30) and a gender bias in the physician’s prescription of potent analgesics (31). Consequently, IPT is more common in women and it may lead to longer PD.

We demonstrated that abnormal BMI is associated with longer PD. Prior studies have shown that obese patients reported higher pain intensities (32-35). Obesity is usually associated with a number of health issues including fatty liver, hypertension, insulin resistance, diabetes, depression, obstructive sleep apnea, and respiratory compromise (34, 36-38). It limits physicians to administer potent analgesics to these patients with adequate doses. Moreover, the volume of distribution and the rate of metabolism/elimination of analgesics are higher in obese patients due to the altered enzymatic activity by fatty liver-, which can decrease the efficacy of prescribed drugs (39, 40). Therefore, these patients are prone to pain undertreatment. On the other hand, physicians may be concerned to administer potent analgesics with adequate doses to underweight people because they may be easily overmedicated with usual doses due to their low body mass. Thus, that is why patients with abnormal BMI are usually prone to receive undertreatment; as a result, IPT would be more prevalent in this population, which can eventually lead to longer PD.

Our study was similar in gender distribution to the study by Rustoen et al. aiming to determine the prevalence and characteristics of chronic pain in the general Norwegian population. In both studies, chronic pain was more prevalent in females. These studies were also similar in the age distribution of patients. Meanwhile, the percentage of illiterate patients was higher in our study than in the Rustoen et al.’s report. It is expected that literate people would be more populated in countries with high annual income. The percentage of people who lived alone was higher in their study. Employed patients were more common in their study. Their sample was chosen from the general population while our patients were chronic pain patients referred to our public care service. It is reasonable that unemployment would be more common in disabled patients suffering from chronic pain with a lower annual income, which encouraged them to use public services rather than expensive private medical services. Unlike our study, Rustoen et al. (27) did not evaluate the relationship between different variables and PD.

Saastamoinen et al. investigated the relationship between socioeconomic variables and the prevalence of acute, chronic, and disabling chronic pain among employees. A questionnaire survey was conducted in 2000 - 2002 among employees aged 40, 45, 50, 55, and 60 (N = 8,970; response rate = 67%). Sociodemographic and socioeconomic factors and measures of current pain, PD, and pain-related disability were assessed. They demonstrated that patients with older age, lower education, and lower occupational class appeared to have a higher risk of chronic pain, especially disabling chronic pain. The results of this study are in line with our study that showed patients with older age appeared to be at excess risk of chronic pain. Also, the prevalence of chronic or disabling chronic pain was higher in females in both studies (41, 42).

Larsson et al. demonstrated a correlation between old age and persistent pain, which is similar to our study (42). However, their report showed that PD was more correlated with older females than senior men.

4.1. Limitations

Our sample was selected from the public sector; therefore, our patients were not a perfect representative of all chronic pain patients in society, especially those who used the private sector. Our patients had diverse underlying pain conditions; therefore, our results would have been more accurate if we had recruited all patients from a single chronic pain condition. Furthermore, the majority of the data were collected by a self-report questionnaire. In addition, illiterate patients or people with low levels of education usually have difficulty when they are asked to fill in the forms. Moreover, it is always possible that the investigators could not consider all possible confounding factors in their study or they could not think over all the possible logistic regression models.

4.2. Conclusion

The risk factors that might be associated with longer PD are older age and abnormal BMI.

Footnotes

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