Literature DB >> 27149072

Multiple Chronic Conditions and Use of Complementary and Alternative Medicine Among US Adults: Results From the 2012 National Health Interview Survey.

Laura Falci1, Zaixing Shi2, Heather Greenlee3.   

Abstract

INTRODUCTION: More than 25% of American adults report having 2 or more chronic conditions. People with chronic conditions often use complementary and alternative medicine (CAM) for self-care and disease management, despite a limited evidence base.
METHODS: Data from the 2012 National Health Interview Survey (NHIS) (n = 33,557) were analyzed to assess associations between presence of multiple chronic conditions (n = 13) and CAM use, using multivariable relative risk and linear regressions weighted for complex NHIS sampling. CAM use was defined as self-reported use of one or more of 16 therapies in the previous 12 months.
RESULTS: Chronic conditions were common. US adults reported one (22.3%) or 2 or more (33.8%) conditions. Many used at least one form of CAM. Multivitamins, multiminerals, or both (52.7%); vitamins (34.8%); and minerals (28.4%) were the most common. Compared with adults with no conditions, adults with 2 or more conditions were more likely to use multivitamins or multiminerals or both, vitamins, minerals, nonvitamins or herbs, mind-body therapies, chiropractic or osteopathic manipulation, massage, movement therapies, special diets, acupuncture, naturopathy, or some combination of these therapies (P <.003).
CONCLUSION: People with multiple chronic conditions have a high prevalence of CAM use. Longitudinal studies are needed to understand the association between CAM use and chronic disease prevention and treatment.

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Year:  2016        PMID: 27149072      PMCID: PMC4858448          DOI: 10.5888/pcd13.150501

Source DB:  PubMed          Journal:  Prev Chronic Dis        ISSN: 1545-1151            Impact factor:   2.830


Introduction

In 2012, more than 25% of US adults reported having 2 or more chronic conditions, which increased from 22% in 2001 (1,2). Because of this increase, the Department of Health and Human Services (DHHS) formed the Multiple Chronic Conditions Working Group to compile a list of chronic conditions to improve disease management and quality of life for people with chronic comorbid conditions (3,4). People with multiple chronic conditions face health care burdens because of the complexity of coordinating disease management, including treatment by medical professionals and self-care (3). Prior studies show that people with chronic conditions (5–14) often use complementary and alternative medicine (CAM) therapies as part of disease management. CAM therapies refer to a number of approaches not part of mainstream conventional medicine, used either in complement with or in lieu of standard medical treatments (15). Studies to date suggest that people with chronic conditions are more likely to use CAM, and people with additional conditions have an increased likelihood of overall CAM use (5,7,8,9,11,16–18). However, one study among patients with chronic liver disease showed an inverse association between additional comorbidities and current CAM use (19). The aim of this study was to determine the association between use of CAM therapies and multiple chronic conditions in a large nationally representative population of US adults. To our knowledge, no studies have examined specific CAM therapy use with comorbid conditions. Studies examining comorbid conditions and CAM use have collapsed CAM into any use versus no use, whereas in reality, CAM therapies represent a heterogeneous group of behaviors that differ in type, usage, and bodies of evidence on efficacy. Understanding use of specific CAM modalities among people with multiple chronic conditions could increase knowledge about CAM therapies and disease management.

Methods

The 2012 National Health Interview Survey (NHIS) (20) is a cross-sectional household survey conducted annually by the Centers for Disease Control and Prevention of the US noninstitutionalized, civilian population. The NHIS uses a complex sampling procedure to obtain a nationally representative sample (21). Since 2002 and every 5 years thereafter, the NHIS has included a survey supplement on CAM use. The 2012 NHIS data set included 34,525 adults (people aged 18 or older). People were excluded from this analysis if they had missing data on all CAM variables (n = 968), leaving a final sample size of 33,557. The number of chronic conditions was calculated by using the list developed by the Multiple Chronic Conditions Working Group (4). Of the 20 chronic conditions listed by the working group, 13 conditions were ascertained in the NHIS 2012 interview (4,20). The chronic condition variables selected from the 2012 data set were those that best reflected the definition of a chronic condition (4). Participants self-reported having ever been told by a physician they had the following conditions: hypertension 2 times or more, cancer (excluding nonmelanoma skin cancer), chronic obstructive pulmonary disease (COPD, emphysema, or chronic bronchitis in the past 12 months), diabetes, hepatitis, coronary heart disease (CHD), stroke, arthritis, depression, high cholesterol; and any of the following conditions in the past 12 months: asthma attack, weak or failing kidneys, or substance abuse (20). In 2012, because of the CAM supplement being included in the NHIS, additional conditions were assessed that are on the DHHS list but not usually ascertained, including high cholesterol, depression, and substance abuse. A composite variable summed the number of chronic conditions each subject reported (range, 0–13). It was conservatively assumed that any missing value for a single condition would be recoded as a “no” response. The composite variable was categorized into 3 levels: none, 1, and 2 or more of the 13 selected chronic conditions. The NHIS contains dichotomous (yes/no) information on use of 20 different CAM therapies: body-based therapies including chiropractic or osteopathic manipulation, massage, acupuncture, and movement therapy; mind–body therapies including yoga, tai chi, qi gong, energy healing therapy, hypnosis, and biofeedback; alternative therapies including Ayurvedic medicine, chelation therapy, craniosacral therapy, homeopathy, naturopathy, and traditional healing; dietary supplements including vitamins, minerals, multivitamin or multimineral, and other nonvitamin or herbal therapies; and special diets. Energy healing therapy, biofeedback, hypnosis, yoga, tai chi, qi gong, and mind–body therapies such as guided relaxation were collapsed into one mind–body therapy variable because they are similar behavioral CAM therapies. Therefore, this analysis examined 16 dichotomous CAM therapy outcome variables, defined as using a therapy or seeing a practitioner for the modality or both in the past 12 months. A CAM use index was created by summing the number of CAM therapies each individual used (range, 0–16). It was assumed that any missing value for a single therapy would be recoded as a “no” response. The definition of CAM therapies is largely based on the classifications of the National Center for Complementary and Integrative Health (15), though these analyses also include the use of vitamins, minerals, and multivitamins because of their high prevalence of use. The inclusion of vitamins, minerals, and multivitamins in the definition of CAM varies in the literature. More than 50% of the US population uses dietary supplements including multivitamins or minerals and singular vitamin and mineral supplements, and this use has increased over the past 20 years (22). Because use is so widespread and the risk for supplements to interact with standard pharmaceutical treatments is high (23), it is important to describe all supplement use. Therefore, we analyzed these individual therapies and 3 CAM indices; all CAM, excluding multivitamins or minerals, and further excluding singular vitamin and mineral supplements. Demographic and psychosocial characteristics were examined for confounding effects. A priori confounders included respondent-reported race/ethnicity, sex, age, employment status in the previous year (yes/no), imputed family income, and highest level of education. Hypothesized confounders included region, body mass index (BMI), marital status, and the following in the past 12 months: feeling frequently stressed and/or anxious (yes/no), perceived health status (fair or poor vs excellent to good), and fatigue (yes/no). Frequencies analysis and bivariable and multivariable analyses were performed to assess the association between the presence of multiple chronic conditions and CAM use. Each CAM therapy was analyzed in separate unadjusted and adjusted Poisson regression models with a robust error variance that estimated the relative risk of CAM use, comparing participants with 1 and 2 or more chronic conditions with participants with no chronic conditions (the reference group). Bonferroni procedures (24) were used to account for multiple comparisons; the standard α level of 5% was divided by 17 (the total number of specific CAM therapies plus the CAM index) to create a corrected α level of .003. Data on chelation therapy was not shown because of the small sample size (n = 17). The relationship between the CAM index and multiple chronic conditions was determined by using a linear regression model adjusted for confounders. Confounders to be included in the final models were identified by using the minimally adjusted models, which included all a priori confounders. Hypothesized confounders were added to minimally adjusted models for all of the separate CAM outcomes. The variables that appreciably changed the parameter estimates by 10% were included in all of the final models. Multicollinearity of predictors was assessed for the final adjusted models by examining tolerance and variance inflation factor characteristics in a linear regression model (25). Tolerance and variance inflation factors are statistical values that describe the percentage by which 1 predictor is explained by the other predictors in the model. Values of tolerance below 10% and variance inflation factor above 10 indicate potential collinearity. Missing covariates were not imputed and were excluded from individual regression models. All regression analyses were weighted on the basis of the complex NHIS sampling survey procedure (26), using SAS software version 9.3 (SAS Institute Inc).

Results

Chronic conditions were common in the US population as sampled in the 2012 NHIS, where 22.3% of adults reported 1 condition and 33.8% reported 2 or more conditions; therefore, more than half (56.1%) reported at least 1 chronic condition (Table 1). Of the participants with 2 or more chronic conditions, most had 2 conditions (42.3%), followed by 3 (27.5%) and 4 (15.9%) conditions (data not shown). The average age of participants was 48 years and most adults were non-Hispanic white (67.2%), female (51.8%), and employed (66.5%). Compared with adults with no chronic conditions, adults with multiple chronic conditions were older, had a lower income, were less educated, were unemployed, were more likely to be obese, and reported having worse perceived health status and being frequently stressed or anxious.
Table 1

Population Characteristics by Number of Chronic Conditions, National Health Interview Survey, 2012

CharacteristicNo. of Chronic Conditions
P b
Total Study Population
0 Chronic Conditions
1 Chronic Condition
≥2 Chronic Conditions
n% (95% CI)a n% (95% CI)a n% (95% CI)a n% (95% CI)a
Totals 33,557 100 (NA) 13,790 43.9 (43.1–44.6) 7,427 22.3 (21.7–22.9) 12,340 33.8 (33.1–34.5) NA
Race/ethnicity
Hispanic5,73815.0 (14.3–15.7)3,15520.0 (18.9–21.0)1,20413.9 (12.9–14.8)1,3799.4 (8.7–10.0)<.001
Non-Hispanic white20,27767.2 (66.3–68.1)7,27259.8 (58.5–61.0)4,71170.1 (68.9–71.4)8,29475.0 (73.9–76.0)
Non-Hispanic black5,10111.8 (11.2–12.3)2,04312.6 (11.9–13.3)1,06010.8 (10.0–11.7)1,99811.3 (10.5–12.1)
Asian2,0785.2 (4.9–5.5)1,1646.9 (6.4–7.5)3864.5 (4.0–5.1)5283.4 (3.0–3.9)
Other race3630.8 (0.6–1.0)1560.8 (0.6–1.0)660.6 (0.4–0.9)1410.9 (0.7–1.2)
Age group, y
18–243,32912.9 (12.3–13.5)2,54922.7 (21.6–23.8)59010.1 (9.0–11.1)1902.1 (1.6–2.5)<.001
25–345,95517.6 (17.0–18.2)4,07727.7 (26.8–28.7)1,26916.4 (15.3–17.5)6095.2 (4.7–5.7)
35–445,61116.9 (16.4–17.5)3,08121.5 (20.6–22.4)1,43419.3 (18.1–20.5)1,0969.4 (8.7–10.1)
45–545,76018.6 (18.0–19.1)2,10515.8 (15.0–16.6)1,53122.5 (21.3–23.7)2,12419.6 (18.7–20.5)
55–645,72816.3 (15.8–16.8)1,2137.8 (7.3–8.3)1,30417.4 (16.3–18.6)3,21126.5 (25.3–27.6)
≥657,17417.8 (17.2–18.3)7654.4 (4.0–4.8)1,29914.3 (13.3–15.4)5,11037.3 (36.2–38.4)
Sex
Male14,85848.2 (47.4–48.9)6,50250.6 (49.5–51.6)3,23447.6 (46.0–49.1)5,12245.5 (44.4–46.6)<.001
Female18,69951.8 (51.1–52.6)7,28849.4 (48.4–50.5)4,19352.4 (50.9–54.0)7,21854.5 (53.4–55.6)
Marital status
Divorced or separated6,30513.5 (13.0–13.9)1,95810.1 (9.6–10.7)1,39913.4 (12.6–14.3)2,94817.8 (17.1–18.6)<.001
Married14,58353.2 (52.4–53.9)5,87948.5 (47.4–49.6)3,40656.5 (55.0–58.1)5,29857.0 (55.9–58.2)
Single9,33327.1 (26.4–27.8)5,52639.7 (38.6–40.9)2,00924.9 (23.6–26.1)1,79812.3 (11.6–13.0)
Widowed3,2576.2 (5.9–6.5)3891.7 (1.5–1.9)5925.2 (4.6–5.7)2,27612.8 (12.1–13.5)
Region
Northeast5,61718.2 (17.5–18.9)2,30218.9 (17.8–19.9)1,29218.9 (17.5–20.2)202316.9 (16.0–17.8)<.001
Midwest6,96722.7 (21.9–23.5)2,78322.0 (21.0–23.1)1,61523.5 (22.1–24.9)2,56923.1 (21.9–24.4)
South12,18436.4 (35.5–37.3)4,84835.2 (34.0–36.4)2,56635.0 (33.5–36.5)4,77038.9 (37.5–40.2)
West8,78922.7 (21.8–23.5)3,85723.9 (22.8–25.0)1,95422.7 (21.3–24.0)2,97821.1 (20.0–22.2)
Employment status
Employed21,41266.5 (65.7–67.3)10,81778.1 (77.2–79.1)5,23572.4 (71.0–73.9)5,36047.5 (46.3–48.7)<.001
Unemployed12,12133.5 (32.7–34.3)2,96121.9 (20.9–22.8)2,18827.6 (26.1–29.0)6,97252.5 (51.3–53.7)
Imputed family income, $
0–34,99913,93633.5 (32.6–34.4)5,37631.7 (30.5–33.0)2,74728.9 (27.4–30.3)5,81338.7 (37.5–40.0)<.001
35,000–74,9999,67331.9 (31.2–32.7)4,02831.6 (30.5–32.6)2,19331.8 (30.3–33.2)3,45232.5 (31.3–33.7)
75,000–99,9993,18612.3 (11.8–12.9)1,39612.7 (11.9–13.5)77013.6 (12.5–14.7)1,02011.0 (10.2–11.9)
≥100,0004,96322.3 (21.4–23.1)2,25224.0 (22.8–25.2)1,33025.8 (24.2–27.3)1,38117.7 (16.5–18.9)
Education
≤High school diploma14,01240.2 (39.4–41.0)5,28537.6 (36.5–38.7)2,87637.6 (36.2–39.0)5,85145.3 (44.0–46.6)<.001
Some college or associate degree10,29031.3 (30.5–32.1)4,28831.7 (30.5–32.8)2,32031.4 (30.1–32.7)3,68230.8 (29.6–31.9)
Bachelor’s degree5,83818.5 (17.9–19.0)2,77621.0 (20.1–21.9)1,40119.5 (18.4–20.6)1,66114.5 (13.6–15.3)
Graduate or professional degree3,28210.0 (9.5–10.5)1,3759.7 (9.0–10.4)81111.5 (10.6–12.4)1,0969.5 (8.7–10.2)
Body mass index, kg/m2
<25.011,85236.6 (35.9–37.3)6,13946.2 (45.0–47.4)2,59736.1 (34.7–37.5)3,11624.5 (23.6–25.4)<.001
25.0–29.911,26834.9 (34.2–35.6)4,47333.3 (32.2–34.3)2,57835.4 (34.1–36.8)4,21736.5 (35.5–37.6)
≥30.0 9,43428.5 (27.9–29.2)2,74020.5 (19.6–21.4)2,04628.5 (27.1–29.9)4,64839.0 (37.9–40.1)
Perceived health status
Fair or poor5,08212.9 (12.4–13.3)5653.5 (3.1–3.8)7198.3 (7.6–9.0)3,79828.1 (27.0–29.2)<.001
Excellent to good28,46187.1 (86.7–87.6)1,322196.5 (96.2–96.9)6,70591.7 (91.0–92.4)8,53571.9 (70.8–73.0)
Frequent stress and anxiety
No22,69068.3 (67.6–69.0)10,83878.6 (77.6–79.6)4,86364.9 (63.4–66.3)6,98957.2 (56.0–58.5)<.001
Yes10,84631.7 (31.0–32.4)2,94121.4 (20.4–22.4)2,56235.1 (33.7–36.6)5,34342.8 (41.5–44.0)
Fatigue
No28,16584.6 (84.1–85.1)12,98694.1 (93.7–94.6)6,37785.6 (84.5–86.6)8,80271.7 (70.6–72.7)<.001
Yes5,37415.4 (14.9–15.9)7985.9 (5.4–6.3)1,04914.4 (13.4–15.5)3,52728.3 (27.3–29.4)

Abbreviations: CI, confidence interval; NA, not applicable.

Each n reported in the table is not weighted, but all percentages are weighted.

Rao-Scott χ2 tests were used to assess associations between population characteristics and number of chronic conditions.

Abbreviations: CI, confidence interval; NA, not applicable. Each n reported in the table is not weighted, but all percentages are weighted. Rao-Scott χ2 tests were used to assess associations between population characteristics and number of chronic conditions. CAM use was common in the US population. The 4 most frequently used therapies in the past year were multivitamins (52.7%), vitamins (34.8%), minerals (28.4%), and nonvitamin or herbal therapies (17.9%) (Table 2). Adults with multiple chronic conditions reported using on average 2.0 CAM therapies in the last year. Compared with adults with 1 condition or no chronic conditions, adults with multiple chronic conditions reported higher frequency of multivitamin or multimineral use (57.1%), vitamins (42.8%), minerals (37.5%), nonvitamin or herbal therapies (22.0%), chiropractic or osteopathic manipulation (10.1%), massage (9.7%), special diets (3.6%), and acupuncture (1.9%). Conversely, adults with multiple chronic conditions reported using mind–body and movement therapy less often than those with no chronic conditions or one chronic condition (Table 2).
Table 2

Use of CAM in the Past 12 Months by Number of Chronic Conditions, National Health Interview Survey, 2012

CAM Index, Mean (SE)Total Study Population (n = 33,557)
0 Chronic Conditions (n = 13,790)
1 Chronic Condition (n = 7,427)
≥2 Chronic Conditions (n = 12,340)
P b
Meana 95% CI (SE)Meana 95% CI (SE)Meana 95% CI (SE)Meana 95% CI (SE)
All CAM1.81.8–1.8 (0.02)1.51.5–1.6 (0.02)1.91.9–2.0 (0.03)2.02.0–2.1 (0.02)<.001
Excluding multivitamins1.31.2–1.3 (0.01)1.01.0–1.1 (0.02)1.41.3–1.4 (0.02)1.51.4–1.5 (0.02)<.001
Excluding multivitamins, vitamins and minerals0.60.6–0.7 (0.01)0.60.5–0.6 (0.01)0.70.7–0.7 (0.02)0.70.6–0.7 (0.02)<.001
Specific CAM therapies N % (CI)a n % (CI)a n % (CI)a n % (CI)a P b
Multivitamin or multimineral17,49352.7 (52.0–53.5)6,62848.4 (47.2–49.6)3,98554.6 (53.2–56.0)6,88057.1 (55.9–58.2)<.001
Vitamin11,66234.8 (34.0–35.6)3,75127.6 (26.6–28.6)2,67036.8 (35.3–38.3)5,24142.8 (41.5 –44.1)<.001
Mineral9,89128.4 (27.7–29.2)2,97921.0 (20.1–21.9)2,22529.3 (27.9–30.8)4,68737.5 (36.3– 38.7)<.001
Nonvitamin or herbal therapies5,97417.9 (17.2–18.6)1,92513.6 (12.8–14.4)1,43120.0 (18.8–21.3)2,61822.0 (20.8–23.1<.001
Mind–body therapy4,12712.5 (11.9–13.0)1,77112.8 (12.1–13.6)1,00613.9 (12.9–15.0)1,35011.0 (10.3 –11.7)<.001
Chiropractic or osteopathic manipulation2,9939.1 (8.7–9.5)9917.5 (6.9–8.1)77610.7 (9.8–11.6)1,22610.1 (9.4–10.8)<.001
Massage2,9518.8 (8.4–9.2)1,0947.8 (7.2–8.4)7169.4 (8.6–10.3)1,1419.7 (9.0–10.4)<.001
Movement therapy2,1626.6 (6.2–7.0)9747.2 (6.5–7.8)5847.8 (7.1–8.5)6045.0 (4.5–5.6)<.001
Special diets1,0273.0 (2.8–3.3)3412.4 (2.0–2.7)2663.4 (2.9–4.0)4203.6 (3.1–4.1)<.001
Homeopathy7182.2 (2.0–2.4)2702.1 (1.8–2.4)1852.6 (2.1–3.1)2632.1 (1.8–2.5).1
Acupuncture6041.6 (1.4–1.8)1961.3 (1.1–1.5)1421.8 (1.4–2.1)2661.9 (1.6–2.2).002
Naturopathy2760.7 (0.6–0.8)960.6 (0.5–0.8)750.7 (0.5–1.0)1050.9 (0.7–1.0).15
Traditional healing1700.4 (0.4–0.5)670.5 (0.3–0.6)350.4 (0.2–0.5)680.5 (0.3–0.6).70
Craniosacral therapy1090.3 (0.2–0.4)370.3 (0.2–0.4)250.2 (0.1–0.3)470.3 (0.2–0.5).50
Ayurvedic medicine960.3 (0.2–0.3)450.3 (0.2–0.5)250.2 (0.1–0.3)260.2 (0.1–0.3).10

Abbreviations: CAM, complementary and alternative medicine; CI, confidence interval; SE, standard error.

Each n reported in the table is not weighted, but all averages and percentages are weighted.

P values for association between CAM therapies and number of chronic conditions. Rai-Scott χ2 tests and univariable linear regression models used for categorical and continuous variables, respectively.

Abbreviations: CAM, complementary and alternative medicine; CI, confidence interval; SE, standard error. Each n reported in the table is not weighted, but all averages and percentages are weighted. P values for association between CAM therapies and number of chronic conditions. Rai-Scott χ2 tests and univariable linear regression models used for categorical and continuous variables, respectively. After controlling for a priori confounders of age, sex, race, family income, employment status, and education, adults with 2 or more chronic conditions were more likely than adults with no chronic conditions to report using multivitamins/minerals, minerals, vitamins, nonvitamin or herbal therapies, mind–body therapies, chiropractic or osteopathic manipulation, massage, and special diets (Table 3). In models adjusted for additional confounding factors, the relationships persisted in all outcome models, and the positive association between multiple chronic conditions and use of movement therapy, acupuncture, and naturopathy became significant (Table 3).
Table 3

Association Between CAM Use and Number of Chronic Conditions, National Health Interview Survey, 2012

CAM Modality Outcome Measuresa
Unadjusted Models
Minimally Adjustedb Models
Final Adjustedc Models
No. of Chronic Conditions
No. of Chronic Conditions
No. of Chronic Conditions
01≥201≥201≥2

n = 13,790n = 7,427n = 12,340n = 13,790n = 7,427n = 12,340n = 13,790n = 7,427N = 12,340
CAM indexes, β coefficient (95% CI)d
All CAM
Ref0.4e 0.5e Ref0.3e 0.6e Ref0.3e 0.6e
(0.3–0.4)(0.5–0.6)(0.3–0.4)(0.5–0.6)(0.3–0.4)(0.6–0.7)
Excluding multivitamins/minerals
Ref0.3e 0.4e Ref0.3e 0.5e Ref0.3e 0.5e
(0.3–0.4)(0.4–0.5)(0.2–0.3)(0.4–0.5)(0.2–0.3)(0.5–0.6)
Excluding multivitamins, vitamins, and minerals
Ref0.1e 0.1e Ref0.1e 0.2e Ref0.1e 0.2e
(0.1–0.2)(0.1–0.1)(0.1–0.2)(0.2–0.2)(0.1–0.2)(0.2–0.3)
Specific CAM therapies, RR (95% CI)f
Multivitamin or multimineral
Ref1.1e 1.2e Ref1.1g 1.1e Ref1.1e 1.2e
(1.1–1.2)(1.1–1.2)(1.0–1.1)(1.1–1.2)(1.0–1.1)(1.1–1.2)
Mineral
Ref1.4e 1.8e Ref1.2e 1.4e Ref1.2e 1.4e
(1.3–1.5)(1.7–1.9)(1.1–1.3)(1.3–1.5)(1.1–1.3)(1.4–1.5)
Vitamin
Ref1.3e 1.6e Ref1.2e 1.4e Ref1.2e 1.4e
(1.3–1.4)(1.5–1.6)(1.2–1.3)(1.3–1.5)(1.2–1.3)(1.3–1.5)
Nonvitamin or herbal therapies
Ref1.5e 1.6e Ref1.4e 1.7e Ref1.4e 1.7e
(1.4–1.6)(1.5–1.7)(1.3–1.5)(1.5–1.8)(1.3–1.6)(1.6–1.9)
Mind–body therapy
Ref1.1h 0.9 e Ref1.2e 1.4e Ref1.3e 1.6e
(1.0–1.2)(0.8–0.9)(1.1–1.4)(1.3–1.6)(1.2–1.4)(1.4–1.7)
Chiropractic or osteopathic manipulation
Ref1.4e 1.3e Ref1.3e 1.4e Ref1.3e 1.4e
(1.3–1.6)(1.2–1.5)(1.2–1.5)(1.2–1.6)(1.2–1.5)(1.2–1.6)
Massage
Ref1.2g 1.2e Ref1.3e 1.8e Ref1.3e 1.9e
(1.1–1.4)(1.1–1.4)(1.1–1.4)(1.6–2.1)(1.2–1.5)(1.7–2.2)
Movement therapy
Ref1.1h 0.7e Ref1.2h 1.2h Ref1.3e 1.3e
(1.0–1.2)(0.6–0.8)(1.1–1.4)(1.0–1.4)(1.1–1.4)(1.1–1.5)
Special diets
Ref1.5e 1.5e Ref1.5e 1.9e Ref1.5e 1.8e
(1.2–1.8)(1.3–1.8)(1.2–1.9)(1.5–2.4)(1.2–1.9)(1.5–2.4)
Homeopathy
Ref1.2h 1.0 h Ref1.3h 1.3h Ref1.3h 1.4h
(1.0–1.6)(0.8–1.3)(1.0–1.6)(1.0–1.7)(1.0–1.7)(1.0–1.8)
Acupuncture
Ref1.4h 1.5e Ref1.3h 1.6h Ref1.3h 1.8e
(1.0–1.8)(1.2–1.9)(1.0–1.8)(1.2–2.1)(1.0–1.8)(1.3–2.4)
Naturopathy
Ref1.2h 1.4h Ref1.3h 2.0h Ref1.4h 2.4e
(0.9–1.8)(1.0–2.0)(0.9–2.0)(1.3–3.2)(0.9–2.1)(1.5– 3.8)
Traditional healers
Ref0.8h 1.0h Ref1.1h 1.9h Ref1.1h 1.9h
(0.5–1.3)(0.6–1.5)(0.6–1.9)(1.1–3.2)(0.6–2.0)(1.1–3.2)
Craniosacral
Ref0.8h 1.2h Ref0.7h 1.2h Ref0.7h 1.4h
(0.4–1.5)(0.7–2.0)(0.3–1.4)(0.6–2.7)(0.4–1.5)(0.6–3.1)
Ayurvedic medicine
Ref0.7h 0.5h Ref0.7h 0.6h Ref0.7h 0.6h
(0.4– 1.2)(0.3– 1.0)(0.4– 1.2)(0.3– 1.3)(0.4– 1.3)(0.3–1.3)

Abbreviations: CAM, complementary and alternative medicine; CI, confidence interval; RR, relative risk.

Each modality was run as a separate relative risk regression model.

Adjusted for age, sex, race, income, employment status, and education.

Adjusted for age, sex, race, income, employment status, education, body mass index, and marital status.

Values are β (95% CI).

P value <.001 (α = .003 after Bonferroni adjustment for multiple comparisons).

Values are RR (95% CI).

P value <.003 (α = .003 after Bonferroni adjustment for multiple comparisons).

P value >.003 (α = .003 after Bonferroni adjustment for multiple comparisons).

Abbreviations: CAM, complementary and alternative medicine; CI, confidence interval; RR, relative risk. Each modality was run as a separate relative risk regression model. Adjusted for age, sex, race, income, employment status, and education. Adjusted for age, sex, race, income, employment status, education, body mass index, and marital status. Values are β (95% CI). P value <.001 (α = .003 after Bonferroni adjustment for multiple comparisons). Values are RR (95% CI). P value <.003 (α = .003 after Bonferroni adjustment for multiple comparisons). P value >.003 (α = .003 after Bonferroni adjustment for multiple comparisons). For the CAM index, after adjustment, adults with multiple conditions used significantly more CAM therapies than adults with no chronic conditions. No collinearity between predictors was observed for the final adjusted models (data not shown). Sensitivity analyses, examining more conservative definitions of CAM, resulted in smaller β coefficients. However, these definitions showed the same overall relationship as the all-inclusive CAM index (Table 3).

Discussion

Results from the 2012 National Health Interview Survey showed more than half of US adults had at least one chronic condition and over a third had 2 or more chronic conditions. Dietary supplements were used most commonly. In multivariable models we observed that adults with multiple conditions were more likely to report using multiple forms of CAM therapies within the previous 12 months. Previous studies using the NHIS CAM questionnaire in 2002 and 2007 reported similar associations between specific chronic conditions and CAM use, but no prior analysis has examined use in 13 simultaneous chronic conditions (6,7,10,11,27). In 2002, adults with asthma (7), cancer (6), diabetes (11), and at least one of 5 specific chronic conditions (arthritis, cancer, cardiovascular disease, diabetes, and lung disease) (27) reported higher CAM use than people with no chronic conditions. A study examining both the 2002 and 2007 NHIS data set also found that among adults with diabetes, participants with functional limitations or 3 or more conditions were more likely to use CAM (10). These studies are similar to the results of our analyses, where adults with multiple conditions reported a higher likelihood of CAM use. Our study differs from previously reported NHIS studies in the definition of chronic condition, the definition of CAM, and in the choice of statistical model. First, prior studies vary in their definitions of chronic conditions. Many of these studies examined singular chronic conditions or a limited number of chronic conditions. Our study has an inclusive definition of multiple chronic conditions. Second, our study examines specific CAM therapies as opposed to other studies, which have focused on combined variables for any CAM therapy. Last, previous studies used odds ratios as compared with risk ratios. The epidemiological convention for point estimates states that when prevalence is more than 10%, the odds ratio will show an overestimated measure of association in comparison to the risk ratio, so the risk ratio should be used (28). Risk ratios were used in this analysis because many of the specific CAM therapies were reported as being used by more than 10% of the population. Although one cannot compare the specific estimates, the general direction of the association is consistent between our analysis and previous analyses. Additionally, these studies report data from the 2002 and 2007 surveys, suggesting this study’s results support an ongoing trend of CAM use in association with chronic conditions. To our knowledge, this is the first study to examine the likelihood of specific CAM modality use by multiple chronic conditions as defined by DHHS (4). A major strength of this study is the examination of CAM use as separate therapies. CAM is a group of separate behaviors that have differing intensity, effectiveness, and adverse effects. When these behaviors are combined into one overall CAM construct, information is lost regarding the direction of effect for specific therapies. Examining specific CAM therapies allowed us to parse out specific self-care and disease management behaviors among adults with chronic conditions. Our results showed that not all CAM therapies are associated with chronic conditions or multiple chronic conditions and further support the decision to examine CAM use as specific therapies rather than one overarching construct. There are also limitations to note. First, the NHIS is a cross-sectional study, so temporality between chronic conditions and specific CAM use cannot be determined. One possibility is that chronic conditions influence people to use specific CAM therapies. Conversely, it is also possible that the CAM use precedes the development of a chronic condition. Second, there may be selection bias; the NHIS process excludes hospitalized and institutionalized people, causing an underestimation of adults with chronic illnesses as well as the most severe chronic conditions. This selection bias causes the sample to have proportionally more healthy people than are in the US population and more participants that have the ability to access CAM therapies, causing a bias toward the null. Third, both chronic disease status and CAM use is self-reported, resulting in potential misclassification and recall bias. Lastly, this data set does not include frequency of CAM modality use. If an individual used a modality once in the past year, they would be considered users, as would someone who uses these therapies weekly or daily. This causes an issue of determining what constitutes CAM behaviors. If the users who do not use a modality frequently in truth should be considered nonusers then there is nondifferential misclassification of outcome, biasing the association toward the null. In addition, there may be people with chronic conditions who discontinue CAM within the past year because of factors related to their disease status, which would overestimate the number of regular CAM users. Multiple chronic conditions increase health care costs not only for the individual but also for the health care system. People with many conditions must navigate the health-care system to coordinate disease management, which often requires regular visits to different medical specialists. This increases the cost for the patient and health-care spending. People with multiple conditions account for approximately 66% of total health care costs (3). DHHS has created 4 goals to improve factors related to multiple chronic conditions, including changes to the health care system; empowering people with multiple conditions by creating community wellness programs; providing clinicians with education, training, and clinical practice guidelines; and improving research practices to include a focus on comorbid conditions as opposed to specific diseases (29). Research on CAM use among people with comorbid conditions can provide information in support of the DHHS goals. The high use of dietary supplements among people with comorbid conditions is of major importance in disease management because of potential drug interactions. More research is needed to understand the efficacy of supplements and how they interact with standard chronic condition treatments. In addition, we observed high use of practitioner-based CAM. To improve disease management, an open dialogue between CAM practitioners and medical professionals could help improve decisions on care for patients with multiple chronic conditions. Additional research will help provide clinicians with evidence-based guidelines and lower health-care reimbursements. Therapies with an evidence base for improved health outcomes in this population could also be integrated into community wellness programs. In summary, using data from a population-based sample of US adults, we found that adults with multiple chronic conditions have an increased likelihood of using specific types of CAM, including dietary supplements, mind–body therapies, chiropractic or osteopathic manipulation, massage, movement therapies, special diets, acupuncture, and naturopathy. Because adults with chronic conditions have an increased likelihood of using specific CAM therapies, in the face of unclear evidence, it is important to conduct CAM research on people with multiple chronic conditions and not only populations with specific diseases. Chronic condition management is an integral part in improving mortality and reducing illness among people with chronic conditions. Further research should focus on the efficacy of these therapies in individuals with multiple chronic conditions and on interactions with standard chronic disease treatments.
  21 in total

1.  [Statistical methods: multiple significance tests and the Bonferroni procedure].

Authors:  A Kowalski; P Enck
Journal:  Psychother Psychosom Med Psychol       Date:  2010-07-07

2.  Use of complementary and alternative medicine in a large sample of anxiety patients.

Authors:  Alexander Bystritsky; Sarit Hovav; Cathy Sherbourne; Murray B Stein; Raphael D Rose; Laura Campbell-Sills; Daniela Golinelli; Greer Sullivan; Michelle G Craske; Peter P Roy-Byrne
Journal:  Psychosomatics       Date:  2012-02-01       Impact factor: 2.386

3.  Optimizing health for persons with multiple chronic conditions.

Authors:  Anand K Parekh; Richard Kronick; Marilyn Tavenner
Journal:  JAMA       Date:  2014-09-24       Impact factor: 56.272

4.  Use of complementary and alternative medicine among adults with chronic diseases: United States 2002.

Authors:  Sharon H Saydah; Mark S Eberhardt
Journal:  J Altern Complement Med       Date:  2006-10       Impact factor: 2.579

5.  Use of complementary therapies in patients with cardiovascular disease.

Authors:  Gloria Y Yeh; Roger B Davis; Russell S Phillips
Journal:  Am J Cardiol       Date:  2006-07-07       Impact factor: 2.778

6.  Use of complementary and alternative medicine and prayer among a national sample of cancer survivors compared to other populations without cancer.

Authors:  Jun J Mao; John T Farrar; Sharon X Xie; Marjorie A Bowman; Katrina Armstrong
Journal:  Complement Ther Med       Date:  2006-09-28       Impact factor: 2.446

7.  Gender, symptom experience, and use of complementary and alternative medicine practices among cancer survivors in the U.S. cancer population.

Authors:  Judith M Fouladbakhsh; Manfred Stommel
Journal:  Oncol Nurs Forum       Date:  2010-01       Impact factor: 2.172

8.  Complementary and alternative therapies among very long-term breast cancer survivors.

Authors:  C L Carpenter; P A Ganz; L Bernstein
Journal:  Breast Cancer Res Treat       Date:  2008-08-20       Impact factor: 4.872

9.  Disease severity is associated with the use of complementary medicine to treat or manage type-2 diabetes: data from the 2002 and 2007 National Health Interview Survey.

Authors:  Richard L Nahin; Danita Byrd-Clark; Barbara J Stussman; Nilesh Kalyanaraman
Journal:  BMC Complement Altern Med       Date:  2012-10-22       Impact factor: 3.659

10.  Defining and measuring chronic conditions: imperatives for research, policy, program, and practice.

Authors:  Richard A Goodman; Samuel F Posner; Elbert S Huang; Anand K Parekh; Howard K Koh
Journal:  Prev Chronic Dis       Date:  2013-04-25       Impact factor: 2.830

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  35 in total

1.  Diagnoses associated with dietary supplement use in a national dataset.

Authors:  Julie Friedman; Jen Birstler; Gayle Love; David Kiefer
Journal:  Complement Ther Med       Date:  2019-02-23       Impact factor: 2.446

2.  Patient preferences for personalized (N-of-1) trials: a conjoint analysis.

Authors:  Nathalie Moise; Dallas Wood; Ying Kuen K Cheung; Naihua Duan; Tara St Onge; Joan Duer-Hefele; Tiffany Pu; Karina W Davidson; Ian M Kronish
Journal:  J Clin Epidemiol       Date:  2018-05-30       Impact factor: 6.437

3.  Prevalence and Determinants of Traditional, Complementary and Alternative Medicine Provider Use among Adults from 32 Countries.

Authors:  Karl Peltzer; Supa Pengpid
Journal:  Chin J Integr Med       Date:  2016-12-27       Impact factor: 1.978

4.  Hypnotherapy or medications: a randomized noninferiority trial in urgency urinary incontinent women.

Authors:  Yuko M Komesu; Ronald M Schrader; Rebecca G Rogers; Robert E Sapien; Andrew R Mayer; Loren H Ketai
Journal:  Am J Obstet Gynecol       Date:  2019-08-23       Impact factor: 8.661

5.  The Relationship Between Migraine or Severe Headache and Chronic Health Conditions: A Cross-Sectional Study from the National Health Interview Survey 2013-2015.

Authors:  Mia T Minen; Judith Weissman; Gretchen E Tietjen
Journal:  Pain Med       Date:  2019-11-01       Impact factor: 3.750

6.  Complementary alternative medicine practices and beliefs in spinal cord injury and non-spinal cord injured individuals.

Authors:  Renuka T Rudra; Gary J Farkas; Shahd Haidar; Kristin E Slavoski; Nancy E Lokey; Timothy R Hudson
Journal:  J Spinal Cord Med       Date:  2017-08-06       Impact factor: 1.985

7.  Rural-urban differences in health behaviors and outcomes among older, overweight, long-term cancer survivors in the RENEW randomized control trial.

Authors:  Marquita S Gray; Suzanne E Judd; Richard Sloane; Denise C Snyder; Paige E Miller; Wendy Demark-Wahnefried
Journal:  Cancer Causes Control       Date:  2019-02-19       Impact factor: 2.506

8.  Trends in Obesity Prevalence in Adults With a History of Cancer: Results From the US National Health Interview Survey, 1997 to 2014.

Authors:  Heather Greenlee; Zaixing Shi; Christine L Sardo Molmenti; Andrew Rundle; Wei Yann Tsai
Journal:  J Clin Oncol       Date:  2016-07-25       Impact factor: 44.544

9.  Nonvitamin, Nonmineral Dietary Supplement Use in Individuals with Rheumatoid Arthritis.

Authors:  Meghan B Skiba; Laura L Hopkins; Allison L Hopkins; Dean Billheimer; Janet L Funk
Journal:  J Nutr       Date:  2020-09-01       Impact factor: 4.798

10.  A National Survey of Complementary and Alternative Medicine Use for Treatment Among Asian-Americans.

Authors:  Rhea Faye D Felicilda-Reynaldo; So Yung Choi; Susan D Driscoll; Cheryl L Albright
Journal:  J Immigr Minor Health       Date:  2020-08
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