The Impact of Multimorbidities on Catastrophic Health Expenditures among Patients Suffering from Hypertension in China: An Analysis of Nationwide Representative Data
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Sources
2.2. Multimorbidities
2.3. Catastrophic Health Expenditure
2.4. Socioeconomic Status
2.5. Health Insurance
2.6. Variables
2.7. Statistical Analysis
2.8. Sensitivity Analyses
3. Results
3.1. Basic Characteristics of the Sample Population
3.2. Prevalence and Factors Associated with CHE
3.3. Impact of Age, Work Status and Combinations of Socioeconomic Groups and Health Insurance Schemes on the Relevance of Multimorbidities and CHE
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Hypertension Only N = 1143 (16.7%) | Hypertension and 1 Other Chronic Disease N = 1582 (23.1%) | Hypertension and 2 Other Chronic Diseases N = 1493 (21.8%) | Hypertension and 3 Other Chronic Diseases N = 1067 (15.6%) | Hypertension and ≥4 Chronic Diseases N = 1551 (22.7%) | Overall N = 6836 | p Value | |
---|---|---|---|---|---|---|---|
Age | <0.001 | ||||||
Age, years | 63.1 (10.5) | 64.4 (10.2) | 65.2 (10.0) | 65.3 (9.5) | 66.2 (9.3) | 64.9 (9.9) | |
Sex | <0.001 | ||||||
Male | 612 (53.5%) | 800 (50.6%) | 692 (46.3%) | 488 (45.7%) | 647 (41.7%) | 3239 (47.4%) | |
Female | 531 (46.5%) | 782 (49.4%) | 801 (53.7%) | 579 (54.3%) | 904 (58.3%) | 3597 (52.6%) | |
Education | 0.049 | ||||||
No education and primary school | 746 (65.3%) | 1063 (67.2%) | 1012 (67.8%) | 743 (69.6%) | 1107 (71.4%) | 4671 (68.3%) | |
Secondary school | 377 (33.0%) | 485 (30.7%) | 447 (29.9%) | 301 (28.2%) | 415 (26.8%) | 2025 (29.6%) | |
College and above | 20 (1.7%) | 34 (2.1%) | 34 (2.3%) | 23 (2.2%) | 29 (1.9%) | 140 (2.0%) | |
Work status | <0.001 | ||||||
Employed | 757 (66.3%) | 950 (60.1%) | 788 (52.8%) | 519 (48.7%) | 648 (41.9%) | 3662 (53.6%) | |
Jobless † | 5 (0.4%) | 1 (0.1%) | 3 (0.2%) | 2 (0.2%) | 6 (0.4%) | 17 (0.2%) | |
Unemployed | 356 (31.2%) | 580 (36.7%) | 649 (43.5%) | 496 (46.5%) | 800 (51.7%) | 2881 (42.2%) | |
Retired | 24 (2.1%) | 50 (3.2%) | 52 (3.5%) | 49 (4.6%) | 94 (6.1%) | 269 (3.9%) | |
Smoking status | <0.001 | ||||||
Non-smoker | 806 (70.6%) | 1160 (73.3%) | 1143 (76.6%) | 853 (79.9%) | 1252 (80.8%) | 5214 (76.3%) | |
Smoker | 336 (29.4%) | 422 (26.7%) | 350 (23.4%) | 214 (20.1%) | 297 (19.2%) | 1619 (23.7%) | |
Frequency of drinking | <0.001 | ||||||
>1 time/month | 368 (32.2%) | 421 (26.6%) | 359 (24.0%) | 251 (23.5%) | 253 (16.3%) | 1652 (24.2%) | |
<1 time/month | 80 (7.0%) | 96 (6.1%) | 96 (6.4%) | 86 (8.1%) | 97 (6.3%) | 455 (6.7%) | |
Never | 694 (60.8%) | 1065 (67.3%) | 1038 (69.5%) | 730 (68.4%) | 1199 (77.4%) | 4726 (69.2%) | |
Physical examination | <0.001 | ||||||
No | 745 (65.2%) | 956 (60.5%) | 842 (56.5%) | 554 (52.0%) | 781 (50.4%) | 3878 (56.8%) | |
Yes | 397 (34.8%) | 625 (39.5%) | 649 (43.5%) | 512 (48.0%) | 768 (49.6%) | 2951 (43.2%) | |
Health insurance | 0.020 | ||||||
No public health insurance | 42 (3.7%) | 65 (4.1%) | 49 (3.3%) | 34 (3.2%) | 55 (3.6%) | 245 (3.6%) | |
UEBMI | 140 (12.3%) | 220 (13.9%) | 243 (16.3%) | 171 (16.0%) | 256 (16.5%) | 1030 (15.1%) | |
URRBMI | 169 (14.8%) | 203 (12.8%) | 200 (13.4%) | 124 (11.6%) | 184 (11.9%) | 880 (12.9%) | |
URBMI | 51 (4.5%) | 65 (4.1%) | 59 (4.0%) | 45 (4.2%) | 87 (5.6%) | 307 (4.5%) | |
NRCMS | 728 (63.7%) | 1006 (63.6%) | 926 (62.1%) | 673 (63.1%) | 936 (60.4%) | 4269 (62.5%) | |
Other * | 12 (1.1%) | 22 (1.4%) | 15 (1.0%) | 19 (1.8%) | 31 (2.0%) | 99 (1.4%) | |
Socioeconomic status | <0.001 | ||||||
Quartile 1 (lowest) | 320 (28.0%) | 425 (26.9%) | 327 (21.9%) | 247 (23.2%) | 319 (20.6%) | 1638 (24.0%) | |
Quartile 2 | 332 (29.1%) | 407 (25.7%) | 398 (26.7%) | 252 (23.6%) | 396 (25.5%) | 1785 (26.1%) | |
Quartile 3 | 257 (22.5%) | 398 (25.2%) | 410 (27.5%) | 295 (27.7%) | 399 (25.7%) | 1759 (25.7%) | |
Quartile 4 (highest) | 232 (20.3%) | 351 (22.2%) | 358 (24.0%) | 272 (25.5%) | 437 (28.2%) | 1650 (24.2%) | |
Area | <0.001 | ||||||
East | 450 (39.4%) | 539 (34.1%) | 494 (33.1%) | 307 (28.8%) | 365 (23.5%) | 2155 (31.5%) | |
Central | 307 (26.9%) | 437 (27.6%) | 423 (28.3%) | 316 (29.6%) | 445 (28.7%) | 1928 (28.2%) | |
West | 316 (27.6%) | 507 (32.0%) | 469 (31.4%) | 367 (34.4%) | 591 (38.1%) | 2250 (32.9%) | |
Northeast | 70 (6.1%) | 99 (6.3%) | 107 (7.2%) | 77 (7.2%) | 150 (9.7%) | 503 (7.4%) | |
Number of family members | 0.002 | ||||||
Population | 2.8 (1.5) | 2.7 (1.4) | 2.7 (1.4) | 2.6 (1.4) | 2.6 (1.4) | 2.7 (1.4) | |
Impoverished | 0.251 | ||||||
No | 1037 (90.7%) | 1435 (92.6%) | 1345 (91.6%) | 960 (91.5%) | 1375 (90.5%) | 6152 (91.7%) | |
Yes | 87 (7.6%) | 114 (7.4%) | 123 (8.4%) | 89 (8.5%) | 145 (9.5%) | 558 (8.3%) |
Coef. (95% CI) | p Value | |
---|---|---|
Number of chronic diseases | 0.22 (0.19, 0.24) | <0.001 |
Age, per 5 years | 0.16 (0.13, 0.18) | <0.001 |
Sex | ||
Male | 1 (ref) | |
Female | 0.19 (0.10, 0.29) | 0.015 |
Education | ||
No education and primary school | 1 (ref) | |
Secondary school | −0.43 (−0.53, −0.32) | 0.048 |
College and above | −0.71 (−1.05, −0.36) | 0.143 |
Work status | ||
Employed | 1 (ref) | |
Jobless † | 0.05 (−0.91, 1.00) | 0.839 |
Unemployed | 0.46 (0.36, 0.56) | <0.001 |
Retired | 0.25 (0.00, 0.50) | 0.151 |
Smoking status | ||
Non-smoker | 1 (ref) | |
Smoker | −0.31 (−0.42, −0.20) | 0.014 |
Frequency of drinking | ||
>1 time/month | 1 (ref) | |
<1 time/month | 0.18 (−0.03, 0.39) | 0.296 |
Never | 0.50 (0.38, 0.61) | <0.001 |
Physical examination | ||
No | 1 (ref) | |
Yes | 0.19 (0.09, 0.28) | 0.074 |
Health insurance | ||
No basic medical insurance | 1 (ref) | |
UEBMI | −0.23 (−0.50, 0.05) | 0.782 |
URRBMI | 0.18 (−0.10, 0.47) | 0.005 |
URBMI | −0.02 (−0.36, 0.31) | 0.747 |
NRCMS | 0.12 (−0.14, 0.38) | 0.012 |
Other * | −0.24 (−0.71, 0.23) | 0.568 |
Socioeconomic status | ||
Quartile 1 (lowest) | 1 (ref) | |
Quartile 2 | −0.15 (−0.28, −0.02) | 0.115 |
Quartile 3 | −0.16 (−0.29, −0.02) | 0.039 |
Quartile 4 (highest) | −0.13 (−0.27, 0.00) | 0.161 |
Area | ||
East | 1 (ref) | |
Central | 0.13 (0.01, 0.26) | 0.206 |
West | 0.25 (0.13, 0.36) | 0.023 |
Northeast | 0.14 (−0.05, 0.34) | 0.307 |
Number of family members | −0.21 (−0.24, −0.17) | <0.001 |
Impoverished | ||
No | 1 (ref) | |
Yes | 0.61 (0.43, 0.79) | <0.001 |
Odds Ratio (95% CI) | Robust Standard Error | p Value | |
---|---|---|---|
Number of chronic diseases | 1.21 (1.18, 1.25) | 0.019 | <0.001 |
Age, per 5 years | 1.09 (1.06, 1.13) | 0.017 | <0.001 |
Sex | |||
Male | 1 (ref) | ||
Female | 0.85 (0.75, 0.97) | 0.056 | 0.015 |
Education | |||
No education and primary school | 1 (ref) | ||
Secondary school | 0.88 (0.78, 1.00) | 0.056 | 0.048 |
College and above | 0.75 (0.51, 1.10) | 0.143 | 0.143 |
Work status | |||
Employed | 1 (ref) | ||
Jobless † | 0.90 (0.33, 2.48) | 0.496 | 0.839 |
Unemployed | 1.23 (1.09, 1.39) | 0.074 | <0.001 |
Retired | 1.23 (0.93, 1.64) | 0.180 | 0.151 |
Smoking status | |||
Non-smoker | 1 (ref) | ||
Smoker | 0.84 (0.73, 0.97) | 0.059 | 0.014 |
Frequency of drinking | |||
>1 time/month | 1 (ref) | ||
<1 time/month | 1.13 (0.90, 1.41) | 0.131 | 0.296 |
Never | 1.33 (1.16, 1.53) | 0.093 | <0.001 |
Physical examination | |||
No | 1 (ref) | ||
Yes | 1.10 (0.99, 1.22) | 0.059 | 0.074 |
Health insurance | |||
No basic medical insurance | 1 (ref) | ||
UEBMI | 0.96 (0.70, 1.31) | 0.154 | 0.782 |
URRBMI | 1.55 (1.14, 2.10) | 0.245 | 0.005 |
URBMI | 1.06 (0.74, 1.52) | 0.199 | 0.747 |
NRCMS | 1.42 (1.08, 1.88) | 0.205 | 0.012 |
Other * | 0.86 (0.52, 1.44) | 0.232 | 0.568 |
Socioeconomic status | |||
Quartile 1 (lowest) | 1 (ref) | ||
Quartile 2 | 0.89 (0.77, 1.03) | 0.066 | 0.115 |
Quartile 3 | 0.86 (0.74, 0.99) | 0.064 | 0.039 |
Quartile 4 (highest) | 0.90 (0.77, 1.04) | 0.070 | 0.161 |
Area | |||
East | 1 (ref) | ||
Central | 1.09 (0.95, 1.24) | 0.073 | 0.206 |
West | 1.16 (1.02, 1.32) | 0.076 | 0.023 |
Northeast | 1.12 (0.90, 1.38) | 0.118 | 0.307 |
Number of family members | 0.83 (0.80, 0.86) | 0.017 | <0.001 |
Impoverished | |||
No | 1 (ref) | ||
Yes | 1.54 (1.28, 1.87) | 0.154 | <0.001 |
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Fu, Y.; Chen, M. The Impact of Multimorbidities on Catastrophic Health Expenditures among Patients Suffering from Hypertension in China: An Analysis of Nationwide Representative Data. Sustainability 2022, 14, 7555. https://doi.org/10.3390/su14137555
Fu Y, Chen M. The Impact of Multimorbidities on Catastrophic Health Expenditures among Patients Suffering from Hypertension in China: An Analysis of Nationwide Representative Data. Sustainability. 2022; 14(13):7555. https://doi.org/10.3390/su14137555
Chicago/Turabian StyleFu, Yu, and Mingsheng Chen. 2022. "The Impact of Multimorbidities on Catastrophic Health Expenditures among Patients Suffering from Hypertension in China: An Analysis of Nationwide Representative Data" Sustainability 14, no. 13: 7555. https://doi.org/10.3390/su14137555
APA StyleFu, Y., & Chen, M. (2022). The Impact of Multimorbidities on Catastrophic Health Expenditures among Patients Suffering from Hypertension in China: An Analysis of Nationwide Representative Data. Sustainability, 14(13), 7555. https://doi.org/10.3390/su14137555