Abstract
Background
The purpose of this study was to determine physical activity (PA) preferences associated with increases in moderate-to-vigorous physical activity (MVPA) and decrease in sedentary time in Mexican American (MA) women participating in a Promotora (community health worker)-led intervention on the U.S.-Mexico border.
Methods
Enlace (‘to link’ in Spanish) was a randomized clinical trial to increase PA in low-income, MA women living in South Texas on the U.S.-Mexico border. A total of 620 participants were recruited into the study. The primary outcome was increase in moderate to vigorous physical activity (MVPA) using the Actigraph GT3X 16 Mb accelerometer. A modified version of the Community Health Activities Model Program for Seniors Physical Activity (CHAMPS) instrument was used to predict MVPA. Adjusted and unadjusted logistic regression models predicted change in MVPA by change in CHAMPS activities. ANOVA analysis determined the variance explained in change in MVPA by change in time engaged in activity. Individual effect sizes were then calculated for significant activity type change on MVPA increase.
Results
There were significant increases in all CHAMPS activities except aerobic machines and errand walking. An increase in leisure walking (O.R. = 2.76, p = .046), errand (O.R. = 3.53, p = .051), and brisk walking (O.R. = 4.74, p = .011), dance (O.R. = 8.22, p = .003), aerobics class (O.R. = 32.7, p = .001), and light housework (O.R. = 6.75, p = .000), were associated with a decrease in sedentary time. Significant effect sizes for MVPA were observed for jogging (1.2, p = .050), general exercise (1.6, p = .024), and other exercise not specified (2.6, p = .003). Significant effect sizes for sedentary time were detected for leisure time (.031, p = .036), errands (.017, p = .022), brisk walking (.022, p = .003), dance (.042, p = .005), and aerobics class (.013, p = .009).
Discussion
Participants who engaged in walking and aerobic activities through this intervention significantly increased their engagement in MVPA and decreased their sedentary time. These findings are novel, since preferences have not been examined in relation to MVPA or sedentary time in MA women.
Conclusion
PA preferences need to be considered when aiming to promote activities that reduce sedentary time and increase PA participation among marginalized groups, such as MA women.
Trial registration
Keywords: Mexican American, Women, Physical activity, Sedentary, Randomized control trial
Background
Only 28.8% of Mexican American adults met the 2008 U.S. recommended guidelines for physical activity (PA) [1]. Mexican Americans also carry a high burden of chronic conditions, such as diabetes, obesity and uncontrolled hypertension [2]. Increasing PA engagement in this population will have substantial impact on reversing current chronic disease trends.
In response to low levels of PA across race/ethnic groups in the United States, some interventions have been implemented with mixed success [1, 3, 4]. One limitation has been the use of the recommended 150 min of moderate to vigorous PA as a targeted endpoint, as it is often unachievable or difficult to maintain over the long term for many [5–14]. With growing evidence of lighter intensity PA or simply shifting from sedentary to any activity having health benefits [6, 7], the 150 min of moderate to vigorous physical activity (MVPA) standard may not only be unachievable by most, it may not be the best strategy to improve health through meaningful behavioral change [15, 16].
Programs to increase PA in Mexican Americans have largely focused on children and families, thereby providing limited information on the effectiveness in women [17–24]. Evidence suggests that overall, Hispanic women tend to engage in less PA than men, and cultural barriers may play an important role in this disparity [25]. For example, Hispanic women in the Study of Latinos (SOL) engaged in 10 min less a day of physical activity, estimated via accelerometry [25]. Mexican American women may be more responsive to programs geared towards the cultural barriers that affect them the most, such as language, diet, or childrearing expectations. [26, 27]. However, culturally tailored programs related to energy balance only have been adapted linguistically or provided nutrition demonstrations or tips on ethnic dishes of the targeted group [28–30] Few, if any, have tailored PA interventions culturally to Mexican American or other Hispanic women, or have been sensitive to the needs of subpopulations like those living in rural settings or in extreme poverty [31, 32]. In many cases, these subpopulations are the least active and most at risk for chronic health conditions [33, 34].
Physical activity preference is an understudied area of research in general, but particularly in Hispanics subgroups [33, 34]. The limited information that is available suggests that preferences depend on age, gender, race/ethnicity and existing health conditions [5, 9, 34–40]. Among Hispanics, women are more likely to engage in PA around the home, whereas Hispanic men tend to prefer sport-based (e.g. soccer, football, etc.) activities [41]. Age is also an important factor, whereas, older adults prefer group-based activities (e.g. exercise classes, walking groups, etc.), while youth tend to be drawn to sports-based activities [40, 42]. However, while interventions should be adapted to these preferences, there is little information on whether preferences translate into meaningful change in PA levels. Moreover, little information is available on Mexican American subpopulations living in varying parts of the country where availability to PA resources may differ.
The current study makes use of data collected through a Promotora (community health worker) led PA intervention in South Texas on the U.S.-Mexico border region. Hidalgo County, the intervention site, is located on the southernmost tip of Texas and has the highest number of colonia settlements in the State of Texas [43, 44]. Colonias are unincorporated settlements that lack basic infrastructure such as electric and public sanitation [44]. Colonias in Hidalgo County are generally located in the most rural areas and are inhabited by Mexican Americans who live in extreme poverty. Physical activity participation in Hidalgo County is low with only 36.8% of adults engaging in any leisure time activity [45]. The intervention was tailored to the needs of women in this community recognizing the low baseline of PA engagement using community-based participatory research. In addition, the setting was largely rural, providing insight into a population that has been underrepresented in PA interventions target towards Hispanic populations. The setting and population allowed us to test research hypotheses on PA preferences and changes after an intervention in low income, rural-residing Mexican American women.
The purpose of this study was to assess changes in MVPA and sedentary time in low-income Mexican American women living in South Texas of the U.S.-Mexico border. We made use of multiple measures of subjective PA and sedentary time to evaluate which type of activities were most associated with intended change in the outcomes [46]. A notable strength of this study was the use of community-based participatory research where we engaged key stakeholders in an advisory committee and community members in focus groups to design the intervention. The education and physical activities were designed to address cultural barriers (e.g. gender roles, beliefs about health and wellness, etc.) and appeal to the preferences of our targeted population thereby reducing barriers (e.g. social control, low health literacy, among others.) to PA. As part of the education, we provided information on the recommendations for PA, health benefits and provide planned activities that are culturally sensitive and responsive to the resources available within the community. As a result of this approach, it was expected that increases in MVPA and decreases in sedentary time between pre and post intervention will be most associated with activities that were most sensitive to the community resources and barriers.
Methods
Enlace: a promotora-led physical activity intervention
This is a secondary data analysis of the Enlace study. Enlace was a 16 week-long promotora-led PA intervention randomized clinical trial (NCT02046343) funded by the National Heart, Lung and Blood Institute (NHLBI) of the National Institutes of Health (NIH) in the United States. A total of 8 community centers were randomized to either the physical activity intervention (PA) or control (community health and safety) using simple randomization because of the small n-size (8 centers). Centers were matched based on geographic location into pairs of two. Then were randomly assigned either as intervention or control group. While study staff knew which community centers were in the intervention or control conditions, participants were unaware of what the status was of other centers. The study was located in Hidalgo County of South Texas on the U.S.-Mexico border. Low-income, primarily immigrant, Mexican American women were recruited from 8 community resource centers (CRC’s) located in Cameron and Hidalgo Counties located in South Texas on the U.S.-Mexico border from 2012 until 2016. Four CRC’s were randomly assigned to receive the PA intervention (intervention) and four received a community health education program (control). Women were included if they did not meet the recommended level of PA of at least 150 min per week of MVPA. Women were excluded if they had a chronic condition (e.g. diabetes, hypertension, etc) and were not cleared by their doctors to participate or if they were pregnant. Women in the intervention group participated in weekly PA education sessions that were complemented by guided physical activities, such as, walking groups, Zumba® classes and yoga. The control group received a 16 week long community health and safety educational program without any other complementary activities. Each session lasted one to 2 h. Sample size for Enlace was calculated to reach a minimal detectable effect size for a power of .80. In total 620 women completed the baseline assessment and 439 completed follow-up. Reasons for intervention non-completion included securing employment, pregnancy, relocated outside of center catchment area, withdrew, non-compliant with accelerometry collection, and illness. About 20% of participants attended all sessions and about 50% attended most sessions (5 to 13) in the intervention group.
At baseline, women in the Enlace study were on average 40.4 +/− 10.3 years old (age range: 18–67 years), had an average of an 10th grade education and were primarily born in Mexico (86.1%) (See Table 1). Additionally, most were married or in a partner relationship (79.8%), only 23.1% were unemployed and 16.9% had health insurance. Significant differences between the intervention and control group were observed for body mass index (BMI) (kg/m2) only (intervention 32.8 vs. control 30.8, p = .039). There was, however, a near significant difference by age (intervention 39.7 years vs. control 41.2 years, p = .078). Therefore, these two significant variables were used as covariates in the regression analysis.
Table 1.
Total | Intervention | Control | P-value | |
---|---|---|---|---|
Demographics | ||||
Age (mean ± s.d.) | 40.4 (10.3) | 39.7 (10.1) | 41.2 (10.4) | .078 |
Years of education (mean ± s.d.) | 9.8 (4.7) | 10.0 (5.6) | 9.6 (3.5) | .309 |
Country of birth (n(%)) | ||||
United States | 80 (12.9) | 40 (11.8) | 40 (14.2) | .382 |
Mexico | 534 (86.1) | 296 (87.6) | 238 (84.4) | |
Other | 6 (.97) | 2 (.59) | 4 (1.4) | |
Marital status (n(%)) | ||||
Married/common law/partnered | 495 (79.8) | 272 (80.5) | 223 (79.1) | .666 |
Not married | 125 (20.2) | 66 (19.5) | 59 (20.9) | |
Number of children living in household (mean ± s.d.) | 2.5 (3.8) | 2.7 (5.0) | 2.4 (1.6) | .304 |
Employed (n(%)) | 143 (23.1) | 82 (24.3) | 61 (21.6) | .439 |
Health insurance (yes)(n(%)) | 104 (16.9) | 54 (16.0) | 50 (17.9) | .521 |
Baseline Anthropometrics | ||||
Body mass index (mean ± s.d.) | 31.9 (11.8) | 32.8 (14.6) | 30.8 (6.9) | .039 |
% Body Fat (mean ± s.d.) | 39.9 (7.5) | 40.1 (7.7) | 39.5 (7.2) | .317 |
Waist circumference (mean ± s.d.) | 100.0 (14.1) | 100.7 (15.3) | 99.2 (12.5) | .187 |
atwo-tailed significance test
Intervention description
Enlace participants engaged in a 16-week long intervention that included educational classes and promotora-led PA sessions (i.e. aerobic or walking groups). Classes were offered weekly and PA session were offered throughout the week. The PA group (intervention) were provided information on the health benefits of PA, what is considered PA, different types of PA, levels of intensity, PA guidelines, PA demonstrations and group exercise activities (e.g. exercise classes, DVD’s and walking groups). Promotoras also coordinated walking groups and exercise classes offered through the community centers. A 6-month maintenance period followed the intervention whereas promotoras met with participants individually every month and offered guided group-based physical activities such as Zumba® classes and walking groups. The control group received a community health and safety curriculum and were also offered activities during the maintenance period.
Data and measures
Outcome variable
Moderate to vigorous physical activity (MVPA)
MVPA was measure using the ActiGraph GT3X 16 Mb accelerometer. Actigraphs were given to the participants at baseline and 16-week data collection interviews. At the end of each interval, the summed value or activity “count” was stored in memory and the integrator was reset. We determined the total time per day spent in MVPA and sedentary time by using adapted count cut points previously established by Freedson et al. [47, 48]. In general counts are based on frequency and intensity of acceleration. Sedentary activity was determined to be counts per minute of less than 99. Moderate activity counts per minute were 1952–5724 and vigorous 5725–9498. Freedson, et al. [47, 48] has documented the validity and inter-instrument reliability of the ActiGraph monitor in adults. Activity counts were strongly correlated with energy expenditure during treadmill walking and running (r = 0.86). Minutes for moderate and vigorous activity were combined to generate values for our MVPA outcome.
Participants were given accelerometers during their first data collection appointment. They were told to wear the device every day from the time they woke up until they went to bed. They were only to take it off to shower. On the second day of data collection, a week after the first visit, accelerometers were collected from participants and checked for wear time. If participants did not have adequate wear time, accelerometers were returned for re-wear. Participants needed to wear the accelerometer for at least 12 h per day and on at least 4 of the 7 days for reliable measurement of activity. Participants were also asked to wear the device on both weekdays and weekend days. Because average per day minutes were reported by the accelerometer, we converted minutes per day to minutes per week by multiplying by seven. The total minutes per week at baseline and 16-week follow-up were used for this analysis. We used intent to treat (ITT) to address missing outcomes at 16 week follow-up due to drop out from the study [49]. Missing values at 16 weeks were replaced with values from baseline. A categorical variable was created to measure an increase in MVPA between baseline and 16 week follow-up. The difference between follow-up MVPA and baseline MVPA was calculated and an increase was coded as “1”, otherwise “0” for values of zero or less. Similarly, a variable was created for sedentary time, however a decrease in sedentary time was coded as “1” and “0” for no change or an increase.
Explanatory variables
Community health activities model program for seniors physical activity questionnaire (CHAMPS)
We used the CHAMPS to characterize participants’ type and amount of PA. Knowing which types of PA correspond most directly with increases in MVPA and decreases in sedentary time. The original 41-item self-reported measure of type of PA was developed originally for older adults, but it has been used with general adult populations and sensitive to changes in intervention studies [50, 51]. We removed questions that were not relevant to our targeted population For example, questions related to reading, playing a musical instrument, and shooting pool were not included in this study. The benefit of using CHAMPS over other instruments is that in the CHAMPS PA is assessed by an algorithm of different types of physical activities to calculate moderate, vigorous and leisure time activity. As a result we were able to determine to what extent our intervention impacts specific types of activities. Additionally, we were able to determine which activities corresponded most with changes in objectively measured MVPA. The CHAMPS asked participants to recall over the past month, typically how many hours per week do they engage in the listed activity. We used hours per week for each individual activity (e.g. dance, heavy gardening, yoga, walking, etc.). Differences between baseline and 16-week follow-up were calculated and a categorical variable was created. Increased activity of 30 min or more were coded as “1” for each of the 41 items. No change or a decrease in the amount of time spent was coded as “0”. The threshold of 30 min per week change was set because it was the lowest measureable unit in the instrument that was used for this study.
Covariates
We did an initial analysis to assess for successful randomization and to determine if control variables would need to be adjusted for. The variables used were age (continuous), education (continuous), birth country (U.S., Mexico, other), marital status (married/not married), number of children (continuous), employment status (employed/not employed), and health insurance (yes/no). We also used body mass index (BMI), % body fat, and waist circumference to account for any variation in baseline obesity status that might affect intervention participation. Both BMI and % body fat was calculated using a portable Tanita Body Composition Analyzer SC-331S. Height (measured to the nearest 0.1 cm) was inputted manually for BMI calculations using a stadiometer. Participants were asked to remove their shoes prior to stepping on the Tanita and obtaining height measurements. BMI was calculated using the weight (kg)/height squared (m2) formula. Waist circumference was measured twice at the midway between the iliac crests and the lower ribs.
Analysis
Initial analysis was conducted to establish the success of randomization. Chi-squared and t-test analyses were conducted by intervention status using the covariates. From this analysis, Body Mass Index (BMI) (p = .039) varied significantly by intervention group. In addition, age was near significant (p = .078). Therefore we used both variables as controls in the regression analysis. Chi-squared and t-test analyses were also conducted for each CHAMPS activity change bivariate variable and change in MVPA by intervention group. CHAMPS activities that were not significantly different were not used in the regression analysis. Additionally, variables from the bivariate analysis that were stretching or yoga were not analyzed in the logistic models due because focus was placed on variables most likely to move participants from sedentary movement to MVPA. Adjusted and unadjusted logistic regression models were then conducted to predict change in MVPA by change in significant CHAMPS activities. Odds ratios were reported for each activity for both adjusted and unadjusted models. ANOVA analysis was then conducted on the continuous change in MVPA outcome variable to determine the overall variance explained for the model that included all significant CHAMPS variables. Individual effect sizes were then calculated for each individual CHAMPS variable to determine the proportion of variance explained by each. Final analysis was only conducted on the intervention group to examine the within group effect of the exposure to the physical activity programming.
Results
Table 2 presents increases in activity type by intervention status by category of activity. A significantly higher proportion of participants in the intervention group increased their overall walking, aerobic exercise and strength or stretching activities by at least 30 min per week between baseline and 16-week follow-up. For example, 43.5% of women in the intervention group reported increasing their leisure time walking by at least 30 min compared to 27.0% in the control group. It should be noted that as part of the intervention, women were offered aerobic and Zumba® classes, stretching, yoga and promotora-led walking groups. Additionally, 32.8% in the intervention group reported increasing their engagement in aerobic classes (primarily Zumba®) compared to 17.8% among the control group. Other significant differences were observed in heavy gardening (28.7% v. 12.8%), light housework (38.2% vs. 30.5%), general exercise (14.5% vs. 3.9%) and other not-specified activity (5.6% vs. 1.8%). There were no significant differences by intervention group for swimming activities or leisure activities such as golf, tennis or hiking. This is most likely due to the low SES status of our participants and a lack of amenities in the area for hiking.
Table 2.
Intervention | Control | P-value† | |
---|---|---|---|
Walking | |||
Leisure time | 147 (43.5) | 76 (27.0) | .000 |
Errand | 82 (24.3) | 43 (15.2) | .005 |
Brisk | 104 (30.8) | 44 (15.6) | .000 |
Aerobic exercise | |||
Dance | 87 (25.7) | 27 (9.6) | .000 |
Aerobic class (Zumba®) | 111 (32.8) | 24 (17.8) | .000 |
Aerobic machines | 26 (7.7) | 8 (2.8) | .008 |
Jogging | 67 (19.8) | 18 (6.4) | .000 |
Lifestyle | |||
Light housework | 129 (38.2) | 86 (30.5) | .046 |
Heavy housework | 79 (23.4) | 48 (17.0) | .051 |
Light gardening | 105 (31.1) | 69 (24.5) | .069 |
Heavy gardening | 97 (28.7) | 36 (12.8) | .000 |
Swimming | |||
Water exercises | 7 (2.1) | 1 (.35) | .059 |
Moderate Swimming | 7 (2.1) | 1 (.35) | .059 |
Slow Swimming | 8 (2.4) | 2 (.71) | .103 |
Stretch/Strength | |||
Yoga | 73 (21.6) | 6 (2.1) | .000 |
Stretching | 71 (21.0) | 22 (7.8) | .000 |
Light strength training | 60 (17.8) | 14 (5.0) | .000 |
Moderate strength training | 21 (6.2) | 9 (3.2) | .081 |
Leisure | |||
Golf- carrying bag | 1 (.30) | 1 (.35) | .898 |
Golf –using cart | 0 (.00) | 1 (.35) | .273 |
Tennis singles | 0 | 0 | NA |
Tennis doubles | 1 (.30) | 0 (.00) | .361 |
Hiking | 43 (12.7) | 33 (11.7) | .700 |
Ball sports | 15 (4.4) | 13 (4.6) | .918 |
Other | |||
Mechanic work | 23 (6.8) | 15 (5.3) | .443 |
General exercise | 49 (14.5) | 11 (3.9) | .000 |
Skating | 2 (.59) | 0 (.00) | .196 |
Biking | 25 (7.4) | 11 (3.9) | .064 |
Other- not specified | 19 (5.6) | 5 (1.8) | .013 |
Accelerometer increase in MVPA (minutes per week) | 108 (32.0) | 96 (34.0) | .581 |
* Intent to treat; † between group differences
A logistic regression analysis was conducted for significant activity variables from the bivariate analysis to predict any increase in accelerometer MVPA for the intervention group only are presented in Table 3. There were significant increases in all CHAMPS activities except aerobic machines (O.R. =1.32, p = .514) and errand walking (O.R. = 1.50, p = .128). Table 3 also shows regression results for logistic regression for decrease in sedentary time. An increase in leisure (O.R. = 2.76, p = .046), errand (O.R. = 3.53, p = .051), and brisk walking (O.R. =4.784, p = .011) were significantly associated with a decrease in sedentary time. Additionally, dance (O.R. = 8.22, p = .003), aerobics class (O.R. = 32.7, p = .001) and light housework (O.R. =6.75, p = .000) were also all associated with a decrease in sedentary time between baseline and follow-up. None of the other variables were significant.
Table 3.
MVPA | Sedentary Time | |||
---|---|---|---|---|
O.R. | P-value | O.R. | P-value | |
Walking | ||||
Leisure time | 3.22 | .000 | 2.76 | .046 |
Errand | 1.50 | .128 | 3.53 | .051 |
Brisk | 4.35 | .000 | 4.74 | .011 |
Aerobic exercise | ||||
Dance | 2.78 | .000 | 8.22 | .003 |
Aerobic class (Zumba®) | 3.66 | .000 | 32.7 | .001 |
Aerobic machines | 1.32 | .514 | .399 | .414 |
Jogging | 2.14 | .007 | 1.22 | .813 |
Lifestyle | ||||
Light housework | 2.16 | .001 | 6.75 | .000 |
Heavy housework | 1.75 | .036 | 1.78 | .388 |
Heavy gardening | 1.78 | .023 | 1.25 | .682 |
Light gardening | 3.13 | .000 | 1.20 | .738 |
Other | ||||
General exercise | 3.21 | .000 | 2.23 | .369 |
Other- not specified | 3.25 | .015 | 1.18 | .856 |
Biking | 2.49 | .029 | …… | …… |
Individual Characteristics | ||||
Age | 1.36 | .016 | 1.03 | .215 |
BMI | 1.03 | .009 | .988 | .638 |
a Intent to treat
Table 4 presents ANOVA and effect size estimates for each significant activity from the logistic regression analysis. The overall variance explained by this model was 15.6%. Significant effect sizes were observed for jogging (1.2%, p = .050), general exercise (1.6%, p = .024), and other exercise not specified (2.6%, p = .003). Table 5 presents the results for sedentary time. The overall variance explained was 35.3%. Significant effect sizes were detected for leisure time (3.1%), errands (1.7%), brisk walking (2.2%), dance (4.2%), and aerobics class (1.3%). There were no other significant effect sizes observed in this analysis. Furthermore, the contributing variables to explain the variance in MVPA and sedentary time differed completely and there was no overlap for any of the activity types.
Table 4.
Partial SS | p-value | Effect Size (%) | |
---|---|---|---|
Walking | |||
Leisure time | 20,006.8 | .165 | .6 |
Errand | 31,281.4 | .083 | .9 |
Brisk | 133.5 | .910 | .004 |
Aerobic exercise | |||
Dance | 681.3 | .798 | .02 |
Aerobic class (Zumba®) | 7051.6 | .409 | .2 |
Aerobic machines | 1130.0 | .7411 | .03 |
Jogging | 39,825.3 | .050 | 1.2 |
Lifestyle | |||
Light housework | 32,025.6 | .079 | .9 |
Heavy housework | 9457.8 | .339 | .6 |
Heavy gardening | 89.1 | .926 | .002 |
Light gardening | 308.3 | .863 | .009 |
Other | |||
General exercise | 53,278.4 | .024 | 1.6 |
Other- not specified | 90,596.3 | .003 | 2.6 |
Biking | 133.5 | .9096 | .004 |
Residual | 3,316,434.2 | ||
Model % variance explained | 15.6 |
a Intent to treat, adjusted for age and BMI
Table 5.
Partial SS | p-value | Effect Size (%) | |
---|---|---|---|
Walking | |||
Leisure time | 40,915.4 | .036 | .031 |
Errand | 491,190.7 | .022 | .017 |
Brisk | 82,025.6 | .003 | .022 |
Aerobic exercise | |||
Dance | 73,597.0 | .005 | .042 |
Aerobic class (Zumba®) | 63,091.7 | .009 | .013 |
Aerobic machines | 102.6 | .916 | .001 |
Jogging | 7046.2 | .383 | .003 |
Lifestyle | |||
Light housework | 31,903.3 | .064 | .013 |
Heavy housework | 5785.5 | .429 | .001 |
Heavy gardening | 2874.7 | .577 | .008 |
Light gardening | 17,375.1 | .171 | .003 |
Other | |||
General exercise | 10,148.5 | .295 | .004 |
Other- not specified | 210.9 | .880 | .000 |
Residual | 2,470,471.2 | ||
Model % variance explained | .353 |
a Intent to treat, adjusted for age and BMI
Discussion
The findings from this study demonstrate that certain activity types were associated with increases in MVPA and decreasing sedentary time in Mexican American women from South Texas on the U.S.-Mexico border that participated in this promotora-led PA intervention. Participants who reported at least a 30 min increase in leisure time walking, brisk walking, dance, aerobics classes, jogging, light housework, heavy housework, heavy gardening, light gardening, general exercise, other exercise, and biking had a higher odds of increasing their accelerometer MVPA at follow-up. The effect size analysis however revealed that the type of activities that most contributed to the change in MVPA were jogging, general exercise, and other PA not specified. In addition, this analysis showed that walking, dance and aerobics class increases had significant associations with a reduction in sedentary time and were the only significant activities to contribute to the effect size. These findings suggest that the type of activities planned in PA interventions may influence the success of that program, particularly in populations that are less likely to engage in physical activities.
Few studies have investigated to what extent does type of PA impact the success of an intervention. Those that have, have generally looked at MVPA as their only outcome measure using one measure, usually walking or other aerobic exercise [52]. Success or failure is often attributed to not reaching or maintaining the desired MVPA [53], rather than assessing the concordance between activity type and achievability of sustained behavioral change. Selecting the correct type of activity to obtain the desired outcome may be the key to success. Our study findings provide a unique contribution to the literature by offering this needed comparison of different types of activity options. As a result, we have identified the physical activities most likely to be associated with an increase with MVPA in low income Mexican American women living in a rural setting in South Texas on the U.S.-Mexico border. Although, the participants in our study are low-income Mexican American women, the research is an important first step to better designed interventions that will have greater impact on sustainable behaviors leading to increased MVPA.
Reducing sedentary time has rarely been used as a desired endpoint to PA interventions. This is despite the growing evidence that decreasing sedentary time can have as substantial impact on obesity and disease risk [54–56]. In this study, the physical activities most associated with a decrease in sedentary time were walking, dance and aerobic exercise. Other studies have used increase in walking as the desired outcome in interventions targeted at Hispanics [9]. These studies have demonstrated long-term success in increasing PA, yet have not measured the impact on reducing sedentary time. Future studies are needed to better understand how interventions designed to promote specific physical activities, such as walking, may have a substantial impact on reducing sedentary time.
In the effect size analysis we observed that the greatest PA contributors to changes in MVPA were jogging, general exercise and other- not specified activity. General exercise and other – not specified activity were activities not measured in the CHAMPS instrument and could include activities that are not captured in many instruments. This brings to question whether standard subjective measures of PA are adequately assessing common activities in economically or race/ethnically marginalized group. Some studies have found a general discordance between objective and subjective measures of PA particularly by race/ethnicity [56, 57]. In most occasions, self-reported PA is over estimated relative to objective measurement through an accelerometer [57, 58]. It may be that self-assessed PA measures are not capturing the right type of activities, particularly in marginalized populations with limited resources to be active. For example, there is some evidence to suggest that Hispanic subgroups, like immigrants, may be more likely to walk for utilitarian purposes, but less likely to engage in recreational PA [59] and that duration in the United States has a negative relationship with the amount of walking Hispanic groups engage in [60]. Self-reported instruments, like the CHAMPS may still provide better insight into what types of activities people engage in in general, but may need to be modified to include race/ethnic or rural/urban specific types of preferred activities in order to get a better sense of actual PA and to effectively evaluate the success of intervention programs [61].
Limitations and strengths
This study has noteworthy limitations. First, our study was conducted in South Texas, on the U.S.-Mexico border. Therefore, the findings can only be inferred to this population. Also, studies would need to be conducted in other groups to corroborate our findings. An additional limitation is our use of the CHAMPS as our measure of subjective PA. The benefit of the CHAMPS is its use of specific types of activities in constructing measurement of PA. However, it is limited in the type of activities and may as a result create some bias in Hispanic or low income populations. Nevertheless there are few, if any instruments available that taking into consideration specific types of activities like the CHAMPS does. Furthermore, there may be other unmeasured factors directly or indirectly responsible for the observed changes in PA. For example, many of the planned PA sessions were in group settings where women also had opportunity to socialize with other women. This may have served as an unmeasured motivation to engage in the physical activities that Enlace offered.
Despite the limitations, the Enlace study was a unique approach to addressing PA deficits in a marginalized race/ethnic minority community. The use of community-based participatory research was key to the design of the intervention and choice of physical activities that women in this community would be most likely to engage in. Additionally, promotoras stressed that increasing activity overall, will have real benefit. This message was reflected in the increase in several types of activities, including housework. Women fit in more activity within their normal routines in their home making increasing MVPA and decreasing sedentary time more achievable. In addition, this study provides an assessment of what type of physical activities can contribute to meaningful changes in PA that impact health and risk of chronic diseases. It also demonstrated what may be realistic expectations for improvements in communities like these with limited resources and built environments not supportive of PA. Mexican American women living in South Texas have limited resources to be physically active, but despite these limitations, were able to incorporate various traditional and non-traditional types of activities in efforts to meet the recommendations. Future studies need to better assess ways in which Mexican American women and other disparate groups are able to achieve recommended levels of PA and how activity is assessed. Understanding how Mexican American women engage in activity will help improve the effectiveness of PA interventions and improve rates of meeting recommendations in groups with low levels of engagement.
Conclusions
Increasing PA among Mexican Americans and other Hispanic groups is essential to curb current obesity, chronic disease and cancer trajectories. In order to design effective interventions public health practitioners and researchers must take into effect preferences of activities specific to subpopulations like that on the U.S.-Mexico border.
Acknowledgements
Not Applicable.
Abbreviations
- BMI
Body Mass Index
- CHAMPS
Community health activities model program for seniors physical activity questionnaire
- CRC
Community resource centers
- MA
Mexican American
- MVPA
Moderate-to-vigorous physical activity
- PA
Physical activity
- SDT
Self-determination theory
Authors’ contributions
JJS and DPM conceptualized the study. JJS and DPM designed the study; and JJS was responsible for study operations. JJS was responsible for quality assurance. All authors contributed to data analysis, the interpretation of the data, and manuscript preparation. All authors approved the final version of the manuscript.
Funding
This work was supported by the National Heart, Lung and Blood Institute (HL111718-01A1).
Availability of data and materials
The data that support the findings of this study are available from the authors on request.
Ethics approval and consent to participate
This study is a secondary data analysis of existing data from a randomized clinical trial. Data collection and consent forms were approved by The University of Texas Health Science Center at San Antonio Institutional Review Board (HSC20110460H). All participants completed consent forms to participate in this intervention study prior to enrollment. As part of this consent was the approval to publish findings from the data collected from each participant.
Consent for publication
Not applicable.
Competing interests
The authors declare that they have no competing interests.
Footnotes
Publisher’s Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Contributor Information
Jennifer J. Salinas, Email: jennifer.salinas@ttuhsc.edu
Deborah Parra-Medina, Email: parramedina@austin.utexas.edu.
References
- 1.Centers for Disease Control. Facts about Physical Activity. 2015. https://www.cdc.gov/physicalactivity/data/facts.htm Accessed 02-20-2018.
- 2.Lucas JW, Freeman G, Adams PF. National Center for Health Statistics. Health of Hispanic adults: United States, 2010 – 2014. NCHS Data Brief. 2016;251:1–8. [PubMed]
- 3.American Heart Association. American Heart Association Recommendations for Physical Activity in Adults. 2015. http://www.heart.org/HEARTORG/HealthyLiving/PhysicalActivity/FitnessBasics/American-Heart-Association-Recommendations-for-Physical-Activity-in-Adults_UCM_307976_Article.jsp#.WxlMse4vxhE. Retrieved 06-07-2018.
- 4.American Cancer Society. Summary of the ACS guidelines on nutrition and physical activity. 2016. https://www.cancer.org/healthy/eat-healthy-get-active/acs-guidelines-nutrition-physical-activity-cancer-prevention/summary.html. Retrieved 06-07-2018.4.
- 5.Aguiñaga Susan, Marquez David X. Impact of Latin Dance on Physical Activity, Cardiorespiratory Fitness, and Sedentary Behavior Among Latinos Attending an Adult Day Center. Journal of Aging and Health. 2017;31(3):397–414. doi: 10.1177/0898264317733206. [DOI] [PubMed] [Google Scholar]
- 6.Jefferis BJ, Parsons TJ, Sartini C, Ash S, Lennon LT, Wannamethee SG, Lee IM, Whincup PH. Does duration of physical activity bouts matter for adiposity and metabolic syndrome? A cross-sectional study of older British men. Int J Behav Nutr Phys Act. 2016;13:36. doi: 10.1186/s12966-016-0361-2. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 7.Boyle T, Vallance JK, Buman MP, Lynch BM. Reallocating time to sleep, sedentary time, or physical activity: associations with waist circumference and body mass index in breast cancer survivors. Cancer Epidemiol Biomark Prev. 2017;26(2):254–260. doi: 10.1158/1055-9965.EPI-16-0545. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 8.Segar M, Taber JM, Patrick H, Thai CL, Oh A. Rethinking physical activity communication: using focus groups to understand women's goals, values, and beliefs to improve public health. BMC Public Health. 2017;17(1):462. doi: 10.1186/s12889-017-4361-1. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 9.Schulz AJ, Israel BA, Mentz GB, Bernal C, Caver D, DeMajo R, Diaz G, Gamboa C, Gaines C, Hoston B, Opperman A, Reyes AG, Rowe Z, Sand SL, Woods S. Effectiveness of a walking group intervention to promote physical activity and cardiovascular health in predominantly non-Hispanic black and Hispanic urban neighborhoods: findings from the walk your heart to health intervention. Health Educ Behav. 2015;42(3):380–392. doi: 10.1177/1090198114560015. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 10.Hu J, Wallace DC, Amirehsani KA, McCoy TP, Coley SL, Wiseman KD, Silva ZA, Hussami CR. Improving physical activity in Hispanics with diabetes and their families. Public Health Nurs. 2015;32(6):625–633. doi: 10.1111/phn.12190. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 11.Vega-López S, Pignotti GA, Keller C, Todd M, Ainsworth B, Nagle Williams A, Records K, Coonrod D, Permana P. Participation in a social-support physical activity intervention modestly improves lipoprotein cholesterol distribution among postpartum sedentary Hispanic women. J Phys Act Health. 2015;12(9):1289–1297. doi: 10.1123/jpah.2014-0245. [DOI] [PubMed] [Google Scholar]
- 12.Wieland ML, Hanza MM, Weis JA, Meiers SJ, Patten CA, et al. Healthy immigrant families: randomized controlled trial of a family-based nutrition and physical activity intervention. Amer J Health Prom. 2018;32(2):473–484. doi: 10.1177/0890117117733342. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 13.Holliday KM, Howard AG, Emch M, Rodríguez DA, Rosamond WD, Evenson KR. Where are adults active? An examination of physical activity locations using GPS in five US cities. J Urban Health. 2017;94(4):459–469. doi: 10.1007/s11524-017-0164-z. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 14.Perez LG, Arredondo EM, Elder JP, Barquera S, Nagle B, Holub CK. Evidence-based obesity treatment interventions for Latino adults in the U.S.: a systematic review. Amer J Prev Med. 2013;44(5):550–560. doi: 10.1016/j.amepre.2013.01.016. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 15.Reed JL, Prince SA, Elliott CG, Mullen KA, Tulloch HE, Hiremath S, Cotie LM, Pipe AL, Reid RD. Impact of workplace physical activity interventions on physical activity and Cardiometabolic health among working-age women: a systematic review and meta-analysis. Circ Cardiovasc Qual Outcomes. 2017 Feb;10(2). [DOI] [PubMed]
- 16.LaMonte MJ, Lewis CE, Buchner DM, Evenson KR, Rillamas-Sun E, Di C, Lee IM, Bellettiere J, Stefanick ML, Eaton CB, Howard BV, Bird C, LaCroix AZ. Both Light Intensity and Moderate-to-Vigorous Physical Activity Measured by Accelerometry Are Favorably Associated With Cardiometabolic Risk Factors in Older Women: The Objective Physical Activity and Cardiovascular Health (OPACH) Study. J Am Heart Assoc. 2017;17:6(10). [DOI] [PMC free article] [PubMed]
- 17.McEwen MM, Pasvogel A, Murdaugh C, Hepworth J. Effects of a family-based diabetes intervention on behavioral and biological outcomes for Mexican American adults. Diabetes Educ. 2017;43(3):272–285. doi: 10.1177/0145721717706031. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 18.Yun L, Boles RE, Haemer MA, Knierim S, Dickinson LM, Mancinas H, Hambidge SJ, Davidson AJ. A randomized, home-based, childhood obesity intervention delivered by patient navigators. BMC Public Health. 2015;15:506. doi: 10.1186/s12889-015-1833-z. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 19.Falbe J, Cadiz AA, Tantoco NK, Thompson HR, Madsen KA. Active and healthy families: a randomized controlled trial of a culturally tailored obesity intervention for Latino children. Acad Pediatr. 2015;15(4):386–395. doi: 10.1016/j.acap.2015.02.004. [DOI] [PubMed] [Google Scholar]
- 20.Falbe J, Friedman LE, Sokal-Gutierrez K, Thompson HR, Tantoco NK, Madsen KA. "she gave me the confidence to open up": bridging communication by Promotoras in a childhood obesity intervention for Latino families. Health Educ Behav. 2017;44(5):728–737. doi: 10.1177/1090198117727323. [DOI] [PubMed] [Google Scholar]
- 21.Taverno Ross SE, Barone Gibbs B, Documet PI, Pate RR. ANDALE Pittsburgh: results of a promotora-led, home-based intervention to promote a healthy weight in Latino preschool children. BMC Public Health. 2018;18(1):360. doi: 10.1186/s12889-018-5266-3. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 22.Taverno Ross SE, Documet PI, Pate RR, Smith-Tapia I, Wisniewski LM, Gibbs BB. Study protocol for a home-based obesity prevention program in Latino preschool children. Transl J Am Coll Sports Med. 2017;2(14):85–91. doi: 10.1249/TJX.0000000000000038. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 23.McClendon Megan Elizabeth, Umstattd Meyer M. Renée, Ylitalo Kelly R., Sharkey Joseph R. Physical Activity of Mexican-Heritage Youth During the Summer and School-Year: The Role of Parenting Strategies. Journal of Community Health. 2017;42(6):1102–1110. doi: 10.1007/s10900-017-0358-z. [DOI] [PubMed] [Google Scholar]
- 24.Haughton CF, Silfee VJ, Wang ML, Lopez-Cepero AC, Estabrook DP, Frisard C, Rosal MC, Pagoto SL, Lemon SC. Racial/ethnic representation in lifestyle weight loss intervention studies in the United States: a systematic review. Prev Med Rep. 2018;9:131–137. doi: 10.1016/j.pmedr.2018.01.012. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 25.Arredondo EM, Sotres-Alvarez D, Stoutenberg M, Davis SM, Crespo NC, Carnethon MR, Castañeda SF, Isasi CR, Espinoza RA, Daviglus ML, Perez LG, Evenson KR. Physical Activity Levels in U.S. Latino/Hispanic Adults: Results From the Hispanic Community Health Study/Study of Latinos. Am J Prev Med. 2016;50(4):500–508. doi: 10.1016/j.amepre.2015.08.029. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 26.Mama SK, McCurdy SA, Evans AE, Thompson DI, Diamond PM, Lee RE. Using community insight to understand physical activity adoption in overweight and obese African American and Hispanic women: a qualitative study. Health Educ Behav. 2015;42(3):321–328. doi: 10.1177/1090198114557128. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 27.Spector D, Battaglini C, Groff D. Perceived exercise barriers and facilitators among ethnically diverse breast cancer survivors. Oncol Nurs Forum. 2013;40(5):472–480. doi: 10.1188/13.ONF.472-480. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 28.de la Torre A, Sadeghi B, Green RD, Kaiser LL, Flores YG, Jackson CF, Shaikh U, Whent L, Schaefer SE. Niños Sanos, Familia Sana: Mexican immigrant study protocol for a multifaceted CBPR intervention to combat childhood obesity in two rural California towns. BMC Public Health. 2013;13:1033. doi: 10.1186/1471-2458-13-1033. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 29.Smith SA, Ansa B. A systematic review of lifestyle interventions for chronic diseases in rural communities. J Ga Public Health Assoc. 2016;5(4):304–313. doi: 10.21663/jgpha.5.404. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 30.Jilcott Pitts SB, Edwards MB, Moore JB, Shores KA, DuBose KD, McGranahan D. Obesity is inversely associated with natural amenities and recreation facilities per capita. J Phys Act Health. 2013;10(7):1032–1038. doi: 10.1123/jpah.10.7.1032. [DOI] [PubMed] [Google Scholar]
- 31.Michimi A, Wimberly MC. Natural environments, obesity, and physical activity in nonmetropolitan areas of the United States. J Rural Health. 2012;28(4):398–407. doi: 10.1111/j.1748-0361.2012.00413.x. [DOI] [PubMed] [Google Scholar]
- 32.Peterson JA, Cheng AL. Physical activity counseling intervention to promote weight loss in overweight rural women. J Am Assoc Nurse Pract. 2013;25(7):385–394. doi: 10.1111/j.1745-7599.2012.00794.x. [DOI] [PubMed] [Google Scholar]
- 33.Jackson C., Dowd A.J., Capozzi L.C., Bridel W., Lau H.Y., Culos-Reed S.N. A turning point: Head and neck cancer patients’ exercise preferences and barriers before and after participation in an exercise intervention. European Journal of Cancer Care. 2018;27(2):e12826. doi: 10.1111/ecc.12826. [DOI] [PubMed] [Google Scholar]
- 34.Simonton Amanda J., Young Cara C., Brown Richard A. Physical Activity Preferences and Attitudes of Individuals With Substance Use Disorders: A Review of the Literature. Issues in Mental Health Nursing. 2018;39(8):657–666. doi: 10.1080/01612840.2018.1429510. [DOI] [PubMed] [Google Scholar]
- 35.Casper JM, Harrolle MG, Kelley K. Gender differences in self-report physical activity and park and recreation facility use among Latinos in Wake County, North Carolina. Ann Behav Med. 2013;45(Suppl 1):S49–S54. doi: 10.1007/s12160-012-9435-9. [DOI] [PubMed] [Google Scholar]
- 36.Burton NW, Khan A, Brown WJ. How, where and with whom? Physical activity context preferences of three adult groups at risk of inactivity. Br J Sports Med. 2012;46(16):1125–1131. doi: 10.1136/bjsports-2011-090554. [DOI] [PubMed] [Google Scholar]
- 37.Aboagye E, Hagberg J, AxeÂn I, Kwak L, Lohela-Karlsson M, Skillgate E, et al. Individual preferences for physical exercise as secondary prevention for non-specific low back pain: a discrete choice experiment. PLoS One. 2017;12(12):e0187709. doi: 10.1371/journal.pone.0187709. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 38.Strong LL, Hoover DS, Heredia NI, Krasny S, Spears CA, Correa-Fernandez V, Wetter DW, Fernandez ME. Perspectives of Mexican-origin smokers on healthy eating and physical activity. Health Educ Res. 2016;31(4):465–477. doi: 10.1093/her/cyw026. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 39.Harwood AE, Hitchman LH, Ingle L, Doherty P, Chetter IC. Preferred exercise modalities in patients with intermittent claudication. J Vasc Nurs. 2018;36:81–84. doi: 10.1016/j.jvn.2017.12.002. [DOI] [PubMed] [Google Scholar]
- 40.Gothe NP, Kendall BJ. Barriers, motivations, and preferences for physical activity among female African American older adults. Gerontol Geri Med. 2016;2:1–8. doi: 10.1177/2333721416677399. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 41.Griffith DM, Bergner EM, Cornish EK, McQueen CM. Physical activity interventions with African American or Latino men: a systematic review. Amer J Men Health. 2018:1–16. [DOI] [PMC free article] [PubMed]
- 42.Olvera N, McCarley KE, Leung P, McLeod J, Rodriguez AX. Assessing physical activity preferences in Latino and white preadolescents. Ped Exer Sci. 2009;21:400–412. doi: 10.1123/pes.21.4.400. [DOI] [PubMed] [Google Scholar]
- 43.Hidalgo County, Texas. Border Colonia Access Program. https://www.hidalgocounty.us/424/Border-Colonia-Access-Program. Accessed 09/17/2018.
- 44.Rivera DZ. The forgotten Americans: a visual exploration of lower Rio Grande Valley Colonias. Mich J Sustain. 2014;2:119–30.
- 45.Texas Department of State Health Services. Behavioral Risk Factor Surveillance System Query: Physical Activity: No Leisure Time PA. http://healthdata.dshs.texas.gov/CommunitySurveys/BRFSS. Accessed 17 Sept 2018.
- 46.Teixeira PJ, Carraça EV, Markland D, Silva MN, Ryan RM. Exercise, physical activity, and self-determination theory: a systematic review. Int J Behav Nutr Phys Act. 2012;9:78. doi: 10.1186/1479-5868-9-78. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 47.Freedson PS, Miller K. Objective monitoring of physical activity using motion sensors and heart rate. Res Quar Exer Sports. 2000;71(2):S21–S29. doi: 10.1080/02701367.2000.11082782. [DOI] [PubMed] [Google Scholar]
- 48.Freedson PS, Melanson E, Sirard J. Calibration of the computer science and applications, inc. accelerometer. Med Sci Sports Exer. 1998;30(5):777–781. doi: 10.1097/00005768-199805000-00021. [DOI] [PubMed] [Google Scholar]
- 49.Gupta SK. Intention-to-treat concept: a review. Perspect Clin Res. 2011;2(3):109–112. doi: 10.4103/2229-3485.83221. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 50.Parra-Medina D, Wilcox S, Wilson DK, Addy CL, Felton GM, Poston MB. Heart healthy and ethnically relevant (HHER) lifestyle trial for improving diet and physical activity in underserved African American women. Contemp Clin Trials. 2010;31(1):92–104. doi: 10.1016/j.cct.2009.09.006. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 51.Stewart AL, Mills KM, King AC, Haskell WL, Gillis D, Ritter PL. CHAMPS physical activity questionnaire for older adults: outcomes for interventions. Med Sci Sports Exer. 2001;33(7):1126–1141. doi: 10.1097/00005768-200107000-00010. [DOI] [PubMed] [Google Scholar]
- 52.Joseph RP, Benitez TJ, Ainsworth BE, Todd M, Keller C. Acculturation and physical activity among Latinas enrolled in a 12-month walking intervention. West J Nurs Res. 2018;40(7):942–960. doi: 10.1177/0193945917692305. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 53.Balducci S, D'Errico V, Haxhi J, Sacchetti M, Orlando G, Cardelli P, Vitale M, Bollanti L, Conti F, Zanuso S, Nicolucci A, Pugliese G. Italian diabetes and exercise study 2 (IDES_2) investigators. Effect of a behavioral intervention strategy for adoption and maintenance of a physically active lifestyle: the Italian diabetes and exercise study 2 (IDES_2): a randomized controlled trial. Diabetes Care. 2017;40(11):1444–1452. doi: 10.2337/dc17-0594. [DOI] [PubMed] [Google Scholar]
- 54.Moy ML, Teylan M, Weston NA, Gagnon DR, Danilack VA, Garshick E. Daily step count is associated with plasma C-reactive protein and IL_6 in a US cohort with COPD. Chest. 2014;145(3):542–550. doi: 10.1378/chest.13-1052. [DOI] [PubMed] [Google Scholar]
- 55.Löf M, Bergström K, Weiderpass E. Physical activity and biomarkers in breast cancer survivors: a systematic review. Maturitas. 2012;73:134–142. doi: 10.1016/j.maturitas.2012.07.002. [DOI] [PubMed] [Google Scholar]
- 56.Bazargan-Hejazi S, Arroyo JS, Hsia S, Brojeni NR, Pan D. A racial comparison of differences between self-reported and objectively measured physical activity among US adults with diabetes. Ethnic Dis. 2017;27(4):403–410. doi: 10.18865/ed.27.4.403. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 57.Schuna JM, Johnson WD, Tudor-Locke C. Adult self-reported and objectively monitored physical activity and sedentary behavior: NHANES 2005-2006. Intern J Behav Nutr Phys Act. 2013;10:126. doi: 10.1186/1479-5868-10-126. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 58.Fukuoka Y, Haskell W, Vittinghoff E. New insights into discrepancies between self-reported and accelerometer-measured moderate to vigorous physical activity among women - the mPED trial. BMC Public Health. 2016;16(1):761. doi: 10.1186/s12889-016-3348-7. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 59.Doescher MP, Lee C, Saelens BE, Lee C, Berke EM, Adachi-Mejia AM, Patterson DG, Moudon AV. Utilitarian and recreational walking among Spanish- and English-speaking Latino adults in micropolitan US towns. J Immigr Minor Health. 2017;19(2):237–245. doi: 10.1007/s10903-016-0383-5. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 60.Carr LJ, Dunsinger S, Marcus BH. Long-term surveillance of physical activity habits of Latinas enrolled in a 12-month physical activity intervention. J Phys Act Health. 2016;13(7):740–746. doi: 10.1123/jpah.2015-0482. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 61.Ainsworth BE, Haskell WL, Herrmann SD, Meckes N, Bassett DR, Tudor-Locke C, et al. Compendium of physical activities: a second update of codes and MET values. Special communications. Med Sci Sports Exer. 2011;43(8):1575–1581. doi: 10.1249/MSS.0b013e31821ece12. [DOI] [PubMed] [Google Scholar]
Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Data Availability Statement
The data that support the findings of this study are available from the authors on request.