Introduction

Osteoporosis is characterized by the deterioration of the microstructure of bone tissue and reduced bone density, which increases the risk of skeletal fractures1,2. In the USA, osteoporosis cost $57 billion in 2018, which is projected to grow to over $95 billion per year by 20403. Considering the global increases in life expectancy and the burden of osteoporosis fractures on societies, health systems, and individuals, effective osteoporosis prevention strategies are essential.

Bone mineral density (BMD) decreases following peak bone mass due to multifaceted and complex changes in sex hormones, nutrition, and bone loading4. Modifiable behaviors, such as smoking5, dietary intake6, and exercise7, can contribute to osteoporosis development in old age. As a result of inactivity and reduced weight-bearing loads, such as bed rest8 and time in reduced gravity9, bone turnover and mineral homeostasis are altered. In previous studies, physical activity (PA) and sedentary activity (SA) were associated with different effects on BMD in females and males10. Physical activity is recommended for the management of osteoporosis by the guidelines11. It is controversial, however, whether such interventions have any effect on people who do not have osteoporosis, i.e., those who are seeking prevention of osteoporosis. It is crucial to provide a summary of the evidence in this field so that specific recommendations can be made regarding PA/SA engagement for osteoporosis prevention12.

In 2019, Kim et al.10 used data from the Korea National Health and Nutrition Examination Survey (NHANES) and found that PA correlates positively with hip BMD in men. There was no association between PA and BMD at any site in females. A systematic review has shown that physical activity is very protective against the reduction of bone mineral density in the lumbar spine12. Interestingly, recent studies have found an association between low BMD and SA (such as sitting in front of a TV or the internet) among adolescents13,14. In addition, according to NHANES 2005–2006, there was a negative correlation between repeated exposure to SA and femoral and hip BMD, independent of the number of times women engaged in moderate and vigorous activity15. In a meta-analysis, four studies reported a significant positive association between SA and BMD, and two reported a significant negative association. Five studies reported no correlation between SA and BMD in males16. Thus, a potential association between objectively measured SA/PA and BMD in adulthood needs to be further investigated.

People who are overweight or obese tend to have an increased risk of various life-threatening diseases (including cardiovascular disease (CVD), diabetes and even cancer) and increased mortality17. Several studies have shown that high body fat percentage is an independent risk factor for CVD, coronary events18 and all-cause mortality19,20. Some evidence suggests an association between PA and SA and body fat percentage, but previous studies have reported inconsistent results across age groups.

In conclusion, SA/PA is associated with BMD and body fat percentage, but the evidence for their association is ambiguous. A nationally representative cohort should be used to determine the relationship between SA/PA and BMD and percent body fat in men and women and will provide key information for prevention and treatment strategies for osteoporosis and obesity. Therefore, we used data from NHANES to assess the relationship between SA/PA and BMD and body fat percentage in Americans.

Materials and methods

Study design and population

In this study, the data we analyzed were drawn from the National Health and Nutrition Examination Survey (NHANES), a nationally representative survey of the U.S. population conducted through a complex, multistage, probability sampling design that provides information on the general health and nutritional status of the civilian, noninstitutional population of the United States. The design, data collection procedures, sample weight and informed consent have been described in detail at the National Center for Health Statistics, from which related data can be publicly available. Our analysis combined data from the NHANES cycles 2011–2012, 2013–2014, 2015–2016 and 2017–2018. A total of 39,156 subjects were initially included, of which those aged < 20 years (n = 16,539), those with missing information on lumbar spine BMD measurements (n = 11,086), and those with missing information on sedentary activity time (n = 53) were excluded from the study. There were also subjects with diseases affecting BMD (n = 1691) (including cancer patients (n = 417), thyroid disease (n = 723), rheumatoid arthritis patients (n = 257) and liver disease (n = 294) were excluded from the study. Ultimately, 9,787 eligible subjects were included in the study. The participant selection flow chart is shown in Fig. 1.

Figure 1
figure 1

Flowchart of participants’ selection.

Variables

The main variables in this study were SA (independent variable), PA (independent variable), and lumbar spine BMD (dependent variable) and total fat percentage (dependent variable). SA and PA were collected at home by trained interviewers using a structured questionnaire from the Computer Assisted Personal Interviewing (CAPI) system. The PA questionnaire was based on the Global Physical Activity Questionnaire (GPAQ) and provided respondent-level physical activity level data. Sedentary activity was measured by counting the number of hours per day that subjects were sedentary. Physical activity was measured by counting the sum of time spent in vigorous recreational activity and moderate recreational activity in a month for each subject and averaging this into daily activity time. BMD and fat percentage were measured by dual energy x-ray absorptiometry, measured by DXA (Hologic QDR 4500A fan-beam densitometer). Covariates were selected based on previous studies reporting risk factors for BMD, including sociodemographic variables, and blood biochemical characteristics. Questionnaire information was used to obtain information on sex, age, race/ethnicity (non-Hispanic white, non-Hispanic black, Mexican American, Other Hispanic, other race), PIR, physical activity (sedentary, physical activity time), education (Less than 9th grade; 9th–11th grade. High school graduate, college degree or above), alcoholic (no or), and smoker (no or). Comorbidities including thyroid disease, rheumatoid arthritis, liver disease, and malignancy were obtained by self-reported physician diagnosis. Key variables involving body measurements of weight, height and body mass index (BMI) were calculated by dividing weight (kg) by height squared (m2). Blood biochemicals include total protein, blood calcium, cholesterol, blood phosphorus, blood urea nitrogen, vitamin D, and SUA. For more information about the SA, PA, BMD, and fat measurement process and the process of obtaining other covariates, please visit http://www.cdc.gov/nchs/nhanes/.

Statistical analyses

All data were derived from the National Health Service Board sample weights, as the goal of the NHSA is to generate data representative of the civilian noninstitutionalized population in the United States. We performed statistical analyses according to CDC guidelines (https://wwwn.cdc.gov/nchs/nhanes/tutorials/default.aspx). We first processed missing data for covariates: for categorical variables (education, physical activity, drinking status, and smoking status), missing data were considered as a separate group. For missing continuous variables, the corresponding means were used to complement In addition, given the complexity of the survey design, sample weights were considered in the statistical analysis according to CDC guidelines. Characteristics of the study population were expressed as weighted means (standard error, Se) and weighted percentages of continuous variables. Multiple regression analysis was applied to assess the independent correlations between SA, PA and BMD and fat percent. Smooth curve fitting was used to account for the nonlinear relationships between SA, PA and BMD and fat percent. Subgroup analysis was performed using a weighted generalized additive model. All calculations were performed with the R package (http://www.R-project.org, The R Foundation) and (http://www.empowerstats.com, X&Y Solutions, Inc, Boston, MA), and we used percentages of categorical variables and means ± standard deviations of continuous variables. P values less than 0.05 (two-sided) were considered statistically significant.

Results

Our study included 9787 Americans aged 20–59 years with a mean age of 38.28 ± 11.39. In this study, 46.26% were female, 14.84% were Mexican American, 9.96% were other Hispanic, 32.86% were non-Hispanic white, 23.23% were non-Hispanic black, and 19.11% were other races (including multi race). The duration of SA was divided into four groups (Q1: < 4 h; Q2: 4–5.5 h; Q3: 5.5–7 h; Q4: ≥ 7 h), as shown in Table  1. The baseline characteristics of the four groups were significantly different except for total serum calcium, serum phosphorus and cholesterol. Participants in the highest SA group were more often male, non-Hispanic white, had higher education, had higher PIR and BMI, lower total serum protein, and higher serum uric acid.

The results of the multivariate regression analysis are detailed in Table 2. After adjusting for confounders, there was a negative correlation between SA and lumbar BMD (β = − 0.0011, 95% CI − 0.0020 to – 0.0002, P = 0.022). Converting SA from a continuous variable to a categorical variable (four subgroups), individuals in the highest SA group had 0.0091 g/cm2 lower BMD than individuals in the lowest group (β = − 0.0091, 95% CI − 0.0173 to − 0.0009, P = 0.028). Figure 2 shows a smoothed curve fit of the relationship between SA and total BMD.

Figure 2
figure 2

The association between sedentary activity time and lumbar Spine BMD. (a) Each black point represents a sample. (b) Red line represents the smooth curve fit between variables. Blue lines represent the 95% of confidence interval from the fit. age, race/Hispanic origin, gender, drinking behavior, smoking behavior, BMI, PIR, total protein, serum calcium, cholesterol, serum phosphorus, blood urea nitrogen, Vitamin D, physical activity and SUA were adjusted.

Table 1 Characteristics of the study population based on sedentary activity time quartiles.
Table 2 The association between sedentary activity time(hour) and lumbar BMD (g/cm2).

We then stratified by sex, age, and race/ethnicity, and after stratified analysis, only a negative association was found in non-Hispanic whites (β = − 0.0019 95% CI − 0.0035 to − 0. 0003, P = 0.018), the 20–34 years age group (β = − 0.0015 95% CI − 0.0029 to − 0.0002, P = 0.026), and ≥ 50 years (β = − 0.0036 95% CI − 0.0058 to − 0.0015, P = 0.001) the negative association between sedentary activity time and lumbar spine BMD remained significant. Gender was not a correcting factor for this relationship. Subsequently, we also performed a multiple linear regression analysis to explore the relationship between physical activity time and lumbar spine BMD (Table 3). We found a strong positive association between physical activity time and lumbar spine BMD. Stratified by sex, age, and race/ethnicity, we found a positive association between physical activity time and lumbar spine BMD in men (β = 0.0066 95% CI 0.0020 to 0.0111, P = 0.004) and Other Race—Including Multi-Racial (β = 0.0160 95% CI 0.0067 to 0.0253, P < 0.001) remained significant, and age was not a correcting factor for this relationship.

We also conducted multiple regression analysis on the relationship between SA time, PA time and bone mineral density in multiple parts of the body, and the results are shown in Table 4. We found that SA time was negatively correlated with BMD in multiple parts of the body, while PA time was positively correlated with BMD in multiple parts of the body. Then, we performed multiple linear regression analysis to explore the relationship between SA time, PA time and body fat percentage in multiple parts of the body (Table 5). We found a positive correlation between SA time and body fat percentage at multiple sites, and a strong negative correlation between PA and body fat percentage at multiple sites.

Table 3 The association between physical activity time (hour) and lumbar Spine BMD (g/cm2).
Table 4 The association between SA time(hour), PA time (hour) and bone mineral density (g/cm2).
Table 5 The association between SA time(hour),PA time (hour) and fat.

Discussion

Our cross-sectional study investigated whether SA and PA were independently associated with lumbar BMD and adiposity in the US population using a large, nationally representative sample from the NHANES database. We found a negative association between sedentary activity and lumbar spine BMD and a positive association between sedentary activity and adiposity. Physical activity was positively associated with BMD, and physical activity was negatively associated with adiposity.

Osteoporosis is a multifactorial disease associated with nutritional, exercise, medical and genetic factors, and osteoporosis and osteoporotic fractures produce a heavy burden of disability and economic costs21,22. Previous studies have shown a negative association between SA and BMD; consistent evidence has been reported in older adults23,24. A prospective study from Brazil found that increased sitting time was associated with decreased lumbar BMD in women25. A study from the UK of men in northeastern England also found a negative association between sedentary time and spinal BMD in men24. However, another study from the University of British Columbia showed no observed independent effects of SA time on bone structure, bone density or strength in men and women (P > 0.05)26. Another study using NHANES (2005–2006) data did not find an association between SA and lumbar spine BMD in men or women, which is inconsistent with our findings, and the inconsistency may be due to differences in sample size, differences in SA time collection methods, and differences in study design and statistical methods15. Many previous studies have demonstrated the relationship between physical activity and lumbar spine BMD10,24,27. The results of one study on adolescents support the importance of moderate to severe PA as a positive factor in the accumulation of bone mass in adolescents10. Another study using NHANES (2005–2006) found that while there was no significant correlation between moderate to severe PA and BMD in young adults, in older adults, those with a longer duration of PA had higher BMD28.

With this large cross-sectional study, we demonstrated a negative association between SA and BMD and a positive association between various physical activities and BMD. Increased SA is often accompanied by increased indoor activity, resulting in reduced sunlight exposure and disruption of skeletal homeostasis29. Studies by Kim et al. have also found that sedentary behavior leads to hormonal responses, including the overproduction of the parathyroid hormone, that disrupt calcium metabolism required for bone formation30,31. The human skeleton is always in a bone formation-reabsorption equilibrium, and mechanical loading from exercise or weight bearing promotes bone health, while excessive sedentary activity disrupts this equilibrium and thus negatively affects bone health15. Sedentary activity may also have a negative impact on periosteal attachment, which is weakened by a decrease in continuously associated mechanical stimulation, which can also lead to bone loss. Increased SA time may also represent a decrease in PA time, which has been identified as an important stimulus for osteogenesis in previous studies32, and PA produces dynamic mechanical loads that affect bone through ground reaction forces and muscle contraction activity affecting the skeleton33. Wolfe's law describing bone formation under mechanical loading emphasizes the concept of a coupled association of muscle on bone remodeling32, with possible gender differences due to higher muscle mass in men.

Our study also found that the effect of physical activity on BMD was more pronounced in men. The results of the univariate analysis (P for trend, P < 0.05) also support a dose–response relationship between PA and BMD, i.e. those who are more active have higher BMD. Although it has been suggested that high levels of intense physical activity may be accompanied by a physiological process that overwhelms the osteogenic stimulatory effects of physical activity, the strenuous recreational activity reported by NHANES refers to high aerobic intensity activity in the general population, not high impact intensity activity in athletes34,35. Despite these speculations and findings, the exact mechanism of the correlation between SA, PA and BMD cannot be determined and requires further study.

With this large cross-sectional study, we demonstrated a positive association between SA and percentage body fat, and a negative association between physical activity and percentage body fat. Obesity contributes to increased mortality and a higher risk of cardiovascular disease, diabetes and cancer17. Body mass index (BMI) is often used as a strong indicator of normal weight, overweight and obesity, but healthy individuals with high muscle mass may also be misclassified as overweight or even obese36. Body fat percentage and physical activity correlate more consistently than BMI. Our study found a strong negative correlation between PA and percent body fat and a strong positive correlation between SA and percent body fat. In addition, an additional hour of physical activity per day was inversely associated with trunk adiposity and this effect was more pronounced than total adiposity37. This is consistent with the conclusion we obtained, suggesting that the relationship between physical activity and body fat percentage varies across body parts. Maher and colleagues investigated the relationship between physical activity and sedentary time and obesity based on BMI using NHANES data from 2003 to 2006, and similar to our results, the authors concluded that physical activity was strongly associated with BMI, while sedentary time had no significant results38.This may be due to the fact that physical activity not only reduces fat mass but also increases muscle mass, while sedentary activity is more associated with fat accumulation.

The strength of this study is that it uses a large sample analysis of the NHANES survey, and the data are highly reliable and standardized to be representative of the general U.S. population. In addition, we stratified the analysis according to sex, age and race to make the results more detailed and reliable. There is no denying the following limitations of our study. First, this is a cross-sectional study, and therefore, causality cannot be inferred. Further longitudinal studies with strong evidence are needed to address the causality of these relationships. Second, we did not analyze the relationship between SA, PA, and femoral BMD due to limited data, as insufficient data would have led to incomplete results. Finally, we may not have adjusted for variables that may bias the results, such as calcium intake and dietary intake.

Conclusions

Our findings suggest that there is a negative association between sedentary activity and BMD and a positive association with body fat percentage in the US population. In contrast, there was a positive association between physical activity and BMD and a negative association with body fat percentage. Confounding factors such as race may influence these associations. More research is needed on the relationship between SA, PA and BMD and body fat percentage, including specific mechanisms and confounding factors associated with adjustment. In the meantime, clinical guideline developers should consider the positive effects of recommended physical activity on BMD and the beneficial associations of lowering body fat percentage when developing osteoporosis and obesity prevention strategies.