Abstract
Purpose
The purposes of this study were to investigate the moderating effect of lifestyle and Type-D personality on the relation between metabolic syndrome and severity of coronary artery disease and to provide practical knowledge and directions for nursing intervention.
Methods
The participants were 111 adult outpatients with coronary artery disease in the cardiology department of a medical center in Korea. The study tools included diagnostic criteria for metabolic syndrome, lifestyle evaluation tool for patients with metabolic syndrome, the Korean Type-D scale-14, and measures of severity of coronary artery disease. The data were obtained by electronic medical record reviews and surveys using structured questionnaires and interviews. Data were analyzed using descriptive statistics, x2 test, independent t-test, one-way ANOVA, Pearson's correlation coefficient, multiple linear regression analysis and two-way ANOVA.
Results
The severity of coronary artery disease was positively correlated with the presence of metabolic syndrome (r=.26, p=.006) and type-D personality (r=.49, p<.001). There was a significant negative correlation (r=-.54, p<.001) between the severity of coronary artery disease and lifestyle. Lifestyle had the moderating effect on the relationship between metabolic syndrome and severity of coronary artery disease (β=-.22, p<.001), but type-D personality had no moderating effect (F=0.13, p=.719) on it.
Conclusion
Based on the results of this study, it is necessary to establish individualized intervention considering the condition of the patients according to the criteria of the metabolic syndrome diagnosis when establishing the lifestyle intervention plan. And also it is necessary to define influencing factors including the personality on lifestyle change.
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Table 1.
Variables | Characteristics | Categories | MS | Severity of CAD | |||
---|---|---|---|---|---|---|---|
Yes | No | x2 (p) | M± SD | t or F (p) | |||
n (%) | n (%) | ||||||
Sociodemographic characteristics | Gender | Men | 33 (54.1) | 26 (52.0) | 0.05 | 1.41±1.00 | 1.32 |
Women | 28 (45.9) | 24 (48.0) | (.826) | 1.15±1.02 | (.190) | ||
Age (year) | 40~49 | 8 (13.1) | 6 (12.0) | 0.23 | 0.71±0.91 | 2.32 | |
50~59 | 13 (21.3) | 12 (24.0) | (.973) | 1.16±1.02 | (.080) | ||
60~69 | 21 (34.4) | 18 (36.0) | 1.41±0.99 | ||||
≥70 | 19 (31.2) | 14 (28.0) | 1.48±1.00 | ||||
Housemates† | Yes | 52 (85.2) | 46 (92.0) | 1.21 | 1.69±0.85 | 1.54 | |
No | 9 (14.8) | 4 (8.0) | (.271) | 1.23±1.02 | (.126) | ||
Economic status | Low | 12 (19.7) | 7 (14.0) | 0.77 | 1.63±1.11 | 1.60 | |
Moderate | 30 (49.2) | 28 (56.0) | (.679) | 1.28±1.03 | (.207) | ||
High | 19 (31.1) | 15 (30.0) | 1.12±0.88 | ||||
Job | Yes | 35 (57.4) | 26 (52.0) | 0.32 | 1.38±1.00 | 0.86 | |
No | 26 (42.6) | 24 (48.0) | (.571) | 1.21±1.01 | (.390) | ||
Education† | ≤ Elementary school | 12 (19.7) | 14 (28.0) | 2.19 | 1.50±1.07 | 1.44 | |
Middle school | 12 (19.7) | 6 (12.0) | (.534) | 1.44±1.09 | (.441) | ||
High school | 30 (49.2) | 26 (52.0) | 1.14±0.98 | ||||
≥ University | 7 (11.4) | 4 (8.0) | 1.27±0.90 | ||||
Disease-related characteristics | Family history | Yes | 9 (14.8) | 9 (18.0) | 0.21 | 1.28±1.01 | -0.21 |
No | 52 (85.2) | 41 (82.0) | (.644) | 1.33±1.02 | (.838) | ||
Diagnosis | AP | 23 (40.4) | 17 (31.5) | 0.95 | 0.40±0.63 | -9.78 | |
ACS | 34 (59.6) | 37 (68.5) | (.429) | 1.79±0.83 | (<.001) | ||
Comorbidity | No | 10 (18.5) | 27 (47.4) | 18.63 | 0.78±0.75 | 7.58 | |
1 | 28 (51.9) | 28 (49.1) | (<.001) | 1.55±1.08 | (.001) | ||
2 or more | 16 (29.6) | 2 (3.5) | 1.50±0.92 |
Table 2.
Table 3.
Variables | MS | Lifestyle | Type-D personality |
---|---|---|---|
r (p) | r (p) | r (p) | |
Lifestyle | -.21 (.025) | ||
Type-D personality | .23 (.015) | -.40 (<.001) | |
Severity of CAD | .23 (.014) | -.54 (<.001) | .49 (<.001) |