Health Behaviors and Health Status among Middle-Aged and Older Adults with Chronic Diseases in Taiwan
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Resources and Study Sample
2.2. Empirical Model
2.2.1. Latent Class Analysis
2.2.2. Ordered Logit Model
3. Results
3.1. Latent Classes of Health Behavior
3.2. Self-Reported Health Status, Analysis of Variance Test, and Pairwise Comparisons for Each Latent Class
3.3. Ordered Logit Model Estimation Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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All | |
---|---|
Variables | Proportion (%) or Mean |
Self-Reported Health Status | |
Excellent | 1.71 |
Good | 8.04 |
Fair | 51.69 |
Poor | 32.19 |
Very Poor | 6.37 |
Personal Characteristics | |
Gender/Male | 79.17 |
Married | 79.22 |
HHnumber * | 3.1545 |
Ethnicity | |
Taiwanese | 71.37 |
Hakka | 12.89 |
Mainlander | 3.23 |
Other | 0.19 |
Age category | |
Age 40–49 | 29.15 |
Age 50–59 | 28.67 |
Age 60–69 | 18.88 |
Age 70–79 | 16.60 |
Age 80 or above | 6.70 |
Education Level | |
Junior high school or below | 58.68 |
Senior high school | 24.39 |
College or above | 16.93 |
Regional Variables | |
Northern area | 38.09 |
Central area | 22.49 |
Southern area | 29.24 |
Eastern area | 10.18 |
Monthly Income Level | |
Below NT$40,000 | 75.32 |
NT$40,000–NT$79,999 | 18.78 |
Above NT$80,000 | 5.90 |
Diseases | |
Chronic disease (including cancer, heart, stroke, kidney, lung, or liver diseases) | 33.10 |
Other chronic disease (including gout, arthritis, or osteoporosis) | 31.76 |
Mental disease | 4.23 |
Drug Treatment | |
Hypertension drug | 49.74 |
Diabetes drug | 20.26 |
Hyperlipidemia drug | 17.31 |
Sample Size | 2103 |
Variables | Definition |
---|---|
Dependent Variable Self-reported Health Status | self-reported health status compared to that of the previous year: excellent, good, fair, poor, or very poor (from 1 to 5) |
Health Behavior Indicator | |
Weight Control | if the individual uses weight control to control for hypertension, diabetes, or hyperlipidemia control; yes = 1, else = 0 |
Smoke or Drink Reduction | if the individual reduces smoke or drink to control for hypertension, diabetes, or hyperlipidemia control; yes = 1, else = 0 |
Exercise | if the individual uses regular exercise to control for hypertension, diabetes, or hyperlipidemia control; yes = 1, else = 0 |
Healthy Diet | if the individual uses healthy diet to control for hypertension, diabetes, or hyperlipidemia control; yes = 1, else = 0 |
Relaxation | if the individual uses relaxation to control for hypertension, diabetes, or hyperlipidemia control; yes = 1, else = 0 |
Meditation | if the individual use meditation to control for hypertension, diabetes, or hyperlipidemia control; yes = 1, else = 0 |
Other Control | if the individual uses other methods to control for hypertension, diabetes, or hyperlipidemia control; yes = 1, else = 0 |
Health Behavior Latent Class | |
Class 1: all-controlled | if the individual belongs to this class; yes = 1, else = 0 (the default variable) |
Class 2: exercise and relaxation | if the individual belongs to this class; yes = 1, else = 0 |
Class 3: healthy diet | if the individual belongs to this class; yes = 1, else = 0 |
Class 4: healthy diet and reduced smoking or drinking | if the individual belongs to this class; yes = 1, else = 0 |
Class 5: least-controlled | if the individual belongs to this class; yes = 1, else = 0 |
Personal Characteristics Sex | if the individual’s gender is male; yes = 1, else = 0 |
Married | if the individual’s marital status; married = 1, else = 0 |
HHnumber | number of children live with |
Ethnicity | |
Taiwanese | if the individual is Taiwanese; yes = 1, else = 0 |
Hakka | if the individual is Hakka; yes = 1, else = 0 |
Mainlander | if the individual is mainlander; yes = 1, else = 0 |
Other | if the individual is other ethnicity; yes = 1, else = 0 (the default variable) |
Age Category | |
Age 40–49 | if the individual’s age group is 40–49; yes = 1, else = 0 (the default variable) |
Age 50–59 | if the individual’s age group is 50–59; yes = 1, else = 0 |
Age 60–69 | if the individual’s age group is 60–69; yes = 1, else = 0 |
Age 70–79 | if the individual’s age group is 70–79; yes = 1, else = 0 |
Age 80 or above | if the individual’s age group is 80 or above; yes = 1, else = 0 |
Education Level | |
Junior high school or below | if the individual’s education level is illiteracy, elementary school, or junior high school; yes = 1, else = 0 (the default variable) |
Senior high school | if the individual’s education level is senior high school; yes = 1, else = 0 |
College or above | if the individual’s education level is college or above; yes = 1, else = 0 |
Regional Variables | |
Northern area | if the individual is located in Taipei County, Ilan County, Taoyuan County, Hsinchu County, Miaoli County, Taipei City; yes = 1, else = 0 |
Central area | if the individual is located in Taichung County, Changwa County, Nantou County, Yunlin County, Taichung City; yes = 1, else = 0 |
Southern area | if the individual is located in Chiayi County, Tainan County, Kaohsiung County, Pingtung County, Kaohsiung City, Chiayi City, Tainan City; yes = 1, else = 0 |
Eastern area | if the individual is located in Taitung County, Hualien County, Penghu County; yes = 1, else = 0 (the default variable) |
Monthly Income Level | |
Income 1 | if the individual’s monthly income level is below NT$40,000; yes = 1, else = 0 (the default variable) |
Income 2 | if the individual’s monthly income level is between NT$40,000 and NT$79,999; yes = 1, else = 0 |
Income 3 | if the individual’s monthly income level is NT$80,000 or above; yes = 1, else = 0 |
Diseases | |
Chronic Disease | if the individual has chronic diseases such as cancer, heart, stroke, kidney, lung, or liver diseases; yes = 1, else = 0 |
Other Chronic Disease | if the individual has gout, arthritis, or osteoporosis; yes = 1, else = 0 |
Mental | if the individual has mental disease; yes = 1, else = 0 |
Drug Treatment | |
Hypertension drug | if the individual has hypertension drug treatment; yes = 1, else = 0 |
Diabetes drug | if the individual has diabetes drug treatment; yes = 1, else = 0 |
Hyperlipidemia drug | if the individual has hyperlipidemia drug treatment; yes = 1, else = 0 |
2 Classes | 3 Classes | 4 Classes | 5 Classes | 6 Classes | |
---|---|---|---|---|---|
Pearson’s chi-squared | 250.423 | 174.469 | 125.068 | 90.822 | 64.962 |
LR chi-squared | 242.742 | 160.678 | 116.547 | 84.817 | 70.056 |
Chi-squared df | 112 | 104 | 96 | 88 | 80 |
Log-likelihood | −7513.337 | −7472.305 | −7450.240 | −7434.375 | −7426.994 |
AIC | 15,056.674 | 14,990.610 | 14,962.480 | 14,946.750 | 14,947.989 |
BIC | 15,141.441 | 15,120.586 | 15,137.665 | 15,167.143 | 15,213.592 |
Adj-BIC | 15,093.785 | 15,047.513 | 15,039.174 | 15,043.236 | 15,064.268 |
Entropy | 0.639 | 0.551 | 0.643 | 0.742 | 0.734 |
Vong–Lo–Mendell–Rubin likelihood ratio test (LMR) | 1 Versus 2 Classes | 2 Versus 3 Classes | 3 Versus 4 Classes | 4 Versus 5 Classes | 5 Versus 6 Classes |
LMR p-value | 0.0000 | 0.0000 | 0.0000 | 0.0000 | 0.2069 |
Health Behavior Indicators | Sample Proportion (%) | Class 1: All-Controlled | Class 2: Exercise and Relaxation | Class 3: Healthy Diet and Reduced Smoking or Drinking | Class 4: Healthy Diet | Class 5: Least-Controlled |
---|---|---|---|---|---|---|
Weight Control | 35.1% | 62.2% | 14.9% | 38.1% | 17.9% | 2.1% |
Smoke or Drink Reduction | 46.4% | 66.1% | 51.2% | 100% | 0 | 16.4% |
Exercise | 53.7% | 90% | 100% | 24.3% | 37% | 7.4% |
Healthy Diet | 72.3% | 98.3% | 0 | 85.2% | 84.8% | 0 |
Relaxation | 61.5% | 89.6% | 56.1% | 63.8% | 49.3% | 12.8% |
Meditation | 5.8% | 13.8% | 7.8% | 0 | 0.3% | 0.7% |
Other Control | 9.7% | 11.1% | 10.6% | 4.6% | 7.4% | 15.7% |
Sample Size | 687 | 196 | 325 | 559 | 336 | |
(%) | 2103 | (32.67%) | (9.32%) | (15.45%) | (26.58%) | (15.98%) |
Pairwise Comparisons | Difference between the Means of Self-Reported Health Status | p-Value |
---|---|---|
Class 5: least-controlled (mean = 3.5149)—Class 1: all-controlled (mean = 3.2067) | 0.3082 *** | 0.000 |
Class 5: least-controlled (mean = 3.5149)—Class 2: exercise and relaxation (mean = 3.2959) | 0.2190 ** | 0.015 |
Class 5: least-controlled (mean = 3.5149)—Class 3: healthy diet and reduced smoking or drinking (mean = 3.3015) | 0.2133 *** | 0.004 |
Class 5: least-controlled (mean = 3.5149)—Class 4: healthy diet (mean = 3.4168) | 0.0981 | 0.356 |
Class 4: healthy diet (mean = 3.4168)—Class 1: all-controlled (mean = 3.2067) | 0.2101 *** | 0.000 |
Class 4: healthy diet (mean = 3.4168)—Class 2: exercise and relaxation (mean = 3.2959) | 0.1209 | 0.330 |
Class 4: healthy diet (mean = 3.4168)—Class 3: healthy diet and reduced smoking or drinking (mean = 3.3015) | 0.1153 | 0.208 |
Class 3: healthy diet and reduced smoking or drinking (mean = 3.3015)—Class 1: all-controlled (mean = 3.2067) | 0.0948 | 0.365 |
Class 3: healthy diet and reduced smoking or drinking (mean = 3.3015)—Class 2: exercise and relaxation (mean = 3.2959) | 0.0056 | 1.000 |
Class 2: exercise and relaxation (mean = 3.2959)—Class 1: all-controlled (mean = 3.2067) | 0.0892 | 0.615 |
Dependent | ||
Variables: Self-Reported Health Status | Odds Ratio (OR) | SE |
Independent Variable Latent Classes | ||
Class 2 | 1.1478 | 0.1805 |
Class 3 | 1.2927 * | 0.1729 |
Class 4 | 1.5247 *** | 0.1716 |
Class 5 | 2.0369 *** | 0.2694 |
Personal Characteristics | ||
Gender/Male | 0.9955 | 0.1147 |
Married | 1.0518 | 0.1184 |
HHnumber | 0.9761 | 0.0197 |
Ethnicity | ||
Taiwanese | 0.9692 | 0.1356 |
Hakka | 1.1940 | 0.2079 |
Mainlander | 1.0052 | 0.2974 |
Age Category | ||
Age 50–59 | 1.0170 | 0.1155 |
Age 60–69 | 1.0562 | 0.1468 |
Age 70–79 | 1.5018 *** | 0.2267 |
Age 80 or above | 0.9990 | 0.1991 |
Education Level | ||
Senior high school College or above | 0.8648 0.7801 * | 0.0964 0.1136 |
Regional Variables | ||
Northern area | 1.2219 | 0.1999 |
Central area | 1.0652 | 0.1864 |
Southern area | 1.1606 | 0.1945 |
Monthly Income Level | ||
NT$40,000–NT$79,999 | 0.8478 | 0.1042 |
Above NT$80,000 | 0.8666 | 0.1794 |
Disease | ||
Chronic disease (including cancer, heart, stroke, kidney, lung, or liver diseases) | 1.4377 *** | 0.1341 |
Other chronic disease (including gout, arthritis, or osteoporosis) | 1.3674 *** | 0.1264 |
Mental | 1.0401 | 0.2284 |
Drug Treatment | ||
Hypertension drug | 0.9523 | 0.0875 |
Diabetes drug | 1.1362 | 0.1239 |
Hyperlipidemia drug | 1.1099 | 0.1261 |
Sample Size | 2103 |
Excellent | Good | Fair | Poor | Very Poor | |
---|---|---|---|---|---|
Coefficient (SE) | Coefficient (SE) | Coefficient (SE) | Coefficient (SE) | Coefficient (SE) | |
Class 2 | −0.0023 (0.0027) | −0.0096 (0.0110) | −0.0193 (0.0220) | 0.0230 (0.0263) | 0.0082 (0.0093) |
Class 3 | −0.0043 * (0.0024) | −0.0179 * (0.0094) | −0.0359 * (0.0187) | 0.0429 * (0.0223) | 0.0152 * (0.0080) |
Class 4 | −0.0071 *** (0.0022) | −0.0293 *** (0.0081) | −0.0590 *** (0.0157) | 0.0704 *** (0.0186) | 0.0249 *** (0.0069) |
Class 5 | −0.0119 *** (0.0030) | −0.0495 *** (0.0098) | −0.0995 *** (0.0183) | 0.1188 *** (0.0216) | 0.0421 *** (0.0085) |
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Tian, W.-H.; Tien, J.J. Health Behaviors and Health Status among Middle-Aged and Older Adults with Chronic Diseases in Taiwan. Int. J. Environ. Res. Public Health 2020, 17, 7196. https://doi.org/10.3390/ijerph17197196
Tian W-H, Tien JJ. Health Behaviors and Health Status among Middle-Aged and Older Adults with Chronic Diseases in Taiwan. International Journal of Environmental Research and Public Health. 2020; 17(19):7196. https://doi.org/10.3390/ijerph17197196
Chicago/Turabian StyleTian, Wei-Hua, and Joseph J. Tien. 2020. "Health Behaviors and Health Status among Middle-Aged and Older Adults with Chronic Diseases in Taiwan" International Journal of Environmental Research and Public Health 17, no. 19: 7196. https://doi.org/10.3390/ijerph17197196
APA StyleTian, W. -H., & Tien, J. J. (2020). Health Behaviors and Health Status among Middle-Aged and Older Adults with Chronic Diseases in Taiwan. International Journal of Environmental Research and Public Health, 17(19), 7196. https://doi.org/10.3390/ijerph17197196