Abstract
Study design
Cross-sectional study.
Objectives
The purposes of this study were to assess (i) prevalence of self-reported multiple chronic conditions (MCC) in a population-based cohort of persons with traumatic spinal cord injury (TSCI) and (ii) the association between health-related behaviors and MCC.
Setting
Population-based TSCI cohort.
Methods
Participants included 716 adults with TSCI of at least 1-year duration who were identified through a population-based TSCI surveillance system. Standard questions from the Behavioral Risk Factor Surveillance System measured cigarette smoking, binge drinking, planned exercises, and 10 chronic health conditions (CHC), including diabetes, heart attack, angina (or coronary artery disease), stroke, cancer, asthma, kidney disease, arthritis, depressive disorder, chronic obstructive pulmonary disease. MCC was defined as having two or more CHCs in this study. Multivariate logistic regression models were used to assess the association between health-related behaviors and MCC.
Results
Almost half (45%) of the study sample had MCC. After controlling for demographic and injury characteristics, participants with smoking history of at least 100 cigarettes were 59% more likely to develop MCC, and those who had planned exercises at least three times a week were 36% less likely to have MCC.
Conclusions
We found MCC prevalence was high among people with TSCI, and MCC was associated with cigarette smoking and planned exercise.
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Introduction
Multiple chronic conditions (MCC) have received prominent recent focus as an important public health issue [1]. MCC is defined as “having two or more concurrent chronic conditions that collectively have an adverse effect on health status, function, or quality of life and that require complex health care management, decision-making, or coordination,” and is associated with taking more medications, seeing more than one clinician, and inconsistent health care [2]. Persons with traumatic spinal cord injury (TSCI) have an elevated risk of chronic health conditions (CHC), such as diabetes and cardiovascular disease [3,4,5], but the risk of MCC is unknown. For those with TSCI, CHC may appear prior to injury as co-morbidities first. Then sedentary lifestyle makes such conditions progressive and ultimately exacerbates both physical health and mental health to develop additional CHC, resulting in MCC [6].
One major impacting factor for CHC and MCC is health-related behavior. The Alameda County Study of 1982 identified five behaviors significantly associated with preventing chronic disease. These behaviors included never smoking, regular physical activity, consuming little to no alcohol, maintaining a normal body weight, and obtaining a sufficient amount of sleep each day [7]. In the general population, cigarette smoking is a leading risk factor for the development of cardiovascular disease [8], and smoking is known to increase chronic disease and can result in premature mortality [9]. Alcohol consumption is also a known risk factor for many CHC, including cardiovascular disease, cancer, and digestive diseases [10].
TSCI is associated with high risk behaviors, such as alcohol misuse, which contribute to the initial traumatic injury in some instances [11]. There is also evidence that high-risk behaviors are highly prevalent post-injury [12, 13]. One study found the prevalence for cigarette smoking in the TSCI population (35.3%) was significantly higher than the rate of smoking in the general population [14]. Other research has also found alcohol use and binge drinking are elevated in the TSCI population at the time of injury over the general population. While alcohol use decreases after injury, the rates still remain slightly elevated [15]. Due to the loss in function that TSCI causes, those with TSCI are already predisposed to impaired physical activity, with one study finding they have 40% of the activity levels of able-bodied peers [16]. Lack of physical activity has been found to be associated with health risks, such as cardiovascular disease and type 2 diabetes [17]. In part due to impaired mobility and limited levels of physical activity, obesity prevalence in the TSCI population is also higher than the general population, with prevalence ranging from 40% to 66% [18].
Although the literature suggests people with TSCI may have higher MCC prevalence and health-related behaviors are associated with MCC, little empirical research has focused on the extent of MCC among persons with TSCI. This study attempts to identify the prevalence of MCC and assess the association between health-related behaviors and MCC in a population-based cohort with TSCI.
Methods
Participants
All participants were recruited from a subset of individuals identified through the Spinal Cord Injury Surveillance System Registry (SCISSR) in the state of South Carolina in the United States. The South Carolina SCISSR is a population-based registry of TSCI in the state. All 62 acute care non-federal hospitals in South Carolina have a statutory requirement to report uniform billing discharge data to the State Budget and Control Board. The preliminary participant pool included 1167 participants with TSCI who had previously been enrolled in a more detailed outcomes database than what could be abstracted through SCISSR existing records. Other studies also recruit participants from the same outcomes database, and it is possible some of the participants overlap. However, these studies’ data collection and analyses are independent from each other (i.e., these data have never been used in a previous publication). The current study was specifically designed to measure CHC. All participants in this study met the following selection criteria: (a) minimum of 18 years of age, (b) residual impairment (excludes those with complete recovery), (c) minimum of one year since TSCI onset, and (d) resident of South Carolina. Among the initial pool of 1167, 68 had died and 28 were deemed not eligible. Of the remaining 1071 potential participants, 155 were lost to follow-up, leaving a working sample of 916, 716 of who responded (78.2% of those who were not lost at follow-up and 66.9% including all those who were not deceased or ineligible).
Procedures
After receiving approval from an institutional review board, an introductory letter was sent describing the study and alerting potential participants of the mail-in, self-report materials to be sent 4–6 weeks later. The non-responders received a second set of materials and a follow-up phone call. A third mailing was implemented for those who lost or misplaced materials but stated an intention to participate. Participants were offered $50 remuneration.
Measures
Both health-related behaviors and CHC were measured by standard Behavioral Risk Factor Surveillance System (BRFSS) questions developed by the Centers for Disease Control and Prevention (CDC) available at the time of the study initiation [19]. They have since added more CHC questions. CHC questions asked participants if a doctor, nurse, or other health professional ever told them they had diabetes (not including gestational), a heart attack (also called a myocardial infarction), angina or coronary artery disease, stroke, cancer (including skin cancer and other cancers), asthma, kidney disease (not include kidney stones, bladder infection, or incontinence), arthritis, depressive disorder, chronic obstructive pulmonary disease. MCC was defined as having two or more CHC in this study.
Smoking status (yes vs. no) was measured by the BRFSS question, “have you smoked at least 100 cigarettes in your entire life?” Binge drinking (yes vs. no) was measured by “how many times during the past month did you have five or more drinks on one occasion?”. Planned exercises at least three times a week (yes vs. no) was measured by “how often do you do planned exercise? (Lifting weights, swimming, or pushing your chair for the sake of exercise. Not include passive range of motion—when somebody moves your arms or legs for you).”
Demographic characteristics included age at measurement, sex, and race/ethnicity (non-Hispanic White vs. others). Self-reported injury level was categorized as C1–4, C5–8, and other levels. Ambulatory ability (yes vs. no) was measured by asking whether a participant can walk without difficulty and without special equipment or help from another person. Years post-injury was included as another covariate. To avoid the issue of multicollinearity between age and years post-injury in the multivariate regression model, we categorized years post-injury into three groups: ≤1 year post-injury, between 1 and 5 years post-injury, and more than 5 years post-injury. If a participant’s current household income from all resources was <$20,000, we defined it as poverty (yes vs. no) in this study. Education level was measured by a dichotomous variable (bachelor’s degree and above vs. others).
Analysis
All analyses were conducted using SAS version 9.4. We presented the prevalence for MCC and each CHC. Then we ran the bivariate comparison between participants with and without MCC in terms of demographic, injury, and socioeconomic characteristics and health-related behaviors. Chi-square tests and t-test were used to assess the difference between two groups. We developed a multivariate logistic regression model to identify the association between MCC and health-related behaviors after controlling for participants’ demographic, injury, and socioeconomic characteristics.
Results
Because one participant did not answer the CHC questions, we had 715 valid measures. Our study sample was 70% male, 56% non-Hispanic White, and 26% reported C1–4 injury level. Non-respondents were more likely than participants to be male (76%), non-Hispanic White (64%), and C1–4 injury level (34%). Among them, 28% had no CHC, 27% had one CHC, 21% had two CHCs, 12% had three CHCs, and 12% had four or more CHCs. Based on our definition, 321 participants (45%) had MCC. The prevalence of each individual CHC is presented in Table 1. Arthritis was the most prevalent condition (47%) among participants, followed by depression (33%).
Bivariate
Compared to participants without MCC, those having MCC were older, less likely to be male, more likely to be non-Hispanic White and have C1–4 level injury. They had a higher percentage of cigarette smoking history and had low probability of regular planned exercise (Table 2).
Multivariate
In the multivariate logistic regression model (Table 3), we found older age, C1–4 level injury, and injury duration between 1 and 5 years were positively associated with the likelihood of MCC, while being male and having normal ambulatory status were associated with a reduced likelihood of MCC. Results also indicated a significant association between health-related behaviors and MCC. Participants with a smoking history of at least 100 cigarettes showed a 59% increase in the odds of MCC (OR = 1.59), while those who had planned exercises at least three times a week were 36% (OR = 0.64) less likely to have MCC. Binge drinking was not significantly associated with MCC.
Discussion
Our study fills a gap in the literature by identifying the prevalence of MCC based on a population-based TSCI cohort, derived from a statewide TSCI registry system. This minimizes bias related to treatment factors, such as access to care, within the geographic region. Our study showed 45% of participants with TSCI have MCC, while a recent study found only 26% adults have MCC in the general population [20]. Although the general population study used a slightly different CHC scheme from ours (adding hypertension and hepatitis, but no heart attack and depressive disorder), both studies use the same number of CHC (n = 10) and same definition of MCC (≥2 CHCs). The definition and the list of “chronic diseases” varied in the literature depending on the data used and researchers’ academic discipline, so our findings are relative to the definitions we used to define chronic disease [21]. The BRFSS instrument we used was developed by the CDC, which has some overlapping in terms of organ systems and pathophysiology. For instance, heart attack and angina are CHCs of the cardiovascular system. Consequently, it is possible that the prevalence of MCC might be overestimated by using the BRFSS list. While further study is needed on the extent to which MCC in persons with SCI is elevated relative to the general population, the absolute prevalence indicates significant concern regarding the negative health outcomes associated with TSCI, even with the possibility of overestimation. While those with TSCI are living longer than ever before due to advances in health care, the higher prevalence of MCC could be a more serious health problem in the future for long-term survivors of TSCI. Our population-based study found significantly higher prevalence of CHC and MCC than that of one previous study, which drew its TSCI sample from a specialty rehabilitation hospital [6]. It indicated the CHC and MCC problems among TSCI population might be more serious than we thought based on our clinical experience.
It is not surprising to find older age is associated with MCC risk. Controlling for aging effect, participants with 1–5 years injury duration had higher odds of MCC than those injured more than 5 years. It might suggest a non-linear relationship between injury duration and MCC. Another possible explanation is participants with MCC are less likely to have survived more than 5 years. Females were more likely to have MCC than males, predominantly because of having a much higher prevalence of depression (43% vs. 28%) and arthritis (58% vs. 42%). These are the most prevalent conditions among people with TSCI. The sex differences in depression and arthritis are consistent with the findings in the general population [22,23,24]. Our study finds a relationship between MCC and individual health-related behaviors. Cigarette smoking and planned exercise were significantly associated with MCC after controlling for demographic, injury, and socioeconomic variables. These findings suggest we can use health-related behavior patterns as an early indicator of MCC and to develop targeted prevention strategies. We did not find a significant association between binge drinking and MCC. One possible reason is the decrease of binge drinking prevalence from 43% pre-injury to 17% post-injury [15]. Our study also only measured the post-injury drinking pattern in the past 30 days, which may not be strongly associated with MCC.
Limitations
The measurement of MCC was based on the number of CHC, but we did not measure the timing of CHC in relation to TSCI. Therefore, we cannot differentiate whether they occurred before or after TSCI onset. Second, self-report information may be subject to recall bias. Third, the significant non-response rate may restrict the representativeness of the study and result in the possibility of selection bias. The selective participation could affect the overall prevalence estimate of MCC, and the strength of the relationship between the predictors and MCC, in either direction. Fourth, our sample only included participants from non-federal civilian hospitals, and the results may not be generalized to the non-civilian population. Therefore, the findings apply to those not treated in military facilities so they have unknown generalizability to this population. Fifth, although we used standard CDC-developed questions from the BRFSS, the number of CHC assessed has been expanded since the initiation of the study. Adding more potential CHC to the equation would result in an even higher rate of MCC. Lastly, the study was cross-sectional in design and precluded any assessment of a causal relationship.
Conclusion
Our study identified a higher MCC prevalence among people with TSCI and the association of MCC with cigarette smoking and planned exercise. Health care providers need to be aware of the risk of MCC and do early screenings for MCC in addition to regular maintenance related to TSCI. Prevention is always preferable to treatment, and prevention of MCC through health-related behaviors may have a significant long-term impact on the quality of life of those with TSCI.
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Acknowledgements
The contents of this publication were developed under a grant from the National Institute on Disability, Independent Living, and Rehabilitation Research (NIDILRR grant number 90IF0070). NIDILRR is a Center within the Administration for Community Living (ACL), Department of Health and Human Services (HHS). The contents of this publication do not necessarily represent the policy of NIDILRR, ACL, HHS, and you should not assume endorsement by the Federal Government.
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YC was responsible for introduction, research method, and result sections. MJ was responsible for literature search and review. JK was responsible for discussion and conclusion sections.
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Cao, Y., Jarnecke, M. & Krause, J.S. Health-related behaviors and multiple chronic health conditions among persons with traumatic spinal cord injury. Spinal Cord 57, 367–371 (2019). https://doi.org/10.1038/s41393-018-0227-3
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DOI: https://doi.org/10.1038/s41393-018-0227-3
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