Self-Reported Waiting Times for Outpatient Health Care Services in Hungary: Results of a Cross-Sectional Survey on a National Representative Sample
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design
2.2. Measures
2.2.1. Waiting Time
2.2.2. Sociodemographic Characteristics and Health Status
2.3. Statistical Analysis
3. Results
3.1. Respondents’ Characteristics
3.2. Waiting Time to Get an Appointment
3.3. Waiting Time at a Doctor’s Office
3.4. Waiting Time Perceived as a Problem
4. Discussion
4.1. Waiting Times in the Outpatient Setting
4.2. Waiting Times Reported as a Problem
4.3. Study Limitations
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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Family Doctor | Public Specialist | Private Specialist | Total | |||||
---|---|---|---|---|---|---|---|---|
n | % | n | % | n | % | n | % | |
Sex | ||||||||
Men | 146 | 49 | 125 | 43 | 28 | 37 | 299 | 45 |
Women | 152 | 51 | 165 | 57 | 48 | 63 | 365 | 55 |
Age group (years) | ||||||||
18–24 | 38 | 13 | 22 | 8.0 | 5 | 7.0 | 65 | 10 |
25–34 | 51 | 17 | 31 | 11 | 33 | 43 | 115 | 17 |
35–44 | 50 | 17 | 48 | 17 | 21 | 28 | 119 | 18 |
45–54 | 43 | 14 | 36 | 12 | 4 | 5.0 | 83 | 13 |
55–64 | 55 | 18 | 49 | 17 | 3 | 4.0 | 107 | 16 |
65+ | 61 | 21 | 104 | 36 | 10 | 13 | 175 | 26 |
Employment status | ||||||||
Without a paid job | 132 | 44 | 177 | 61 | 27 | 36 | 336 | 51 |
With a paid job | 166 | 56 | 113 | 39 | 49 | 64 | 328 | 49 |
Education | ||||||||
Primary | 102 | 34 | 92 | 32 | 15 | 20 | 209 | 32 |
Secondary | 107 | 36 | 103 | 35 | 25 | 33 | 235 | 35 |
Tertiary | 89 | 30 | 95 | 33 | 36 | 47 | 220 | 33 |
Region of residence | ||||||||
Central Hungary | 96 | 32 | 105 | 36 | 32 | 42 | 233 | 35 |
Great Plain and North | 108 | 36 | 108 | 37 | 20 | 26 | 236 | 36 |
Transdanubia | 94 | 32 | 77 | 27 | 24 | 32 | 195 | 29 |
Type of residence | ||||||||
Village | 62 | 21 | 67 | 23 | 14 | 18 | 143 | 21 |
Capital | 63 | 21 | 64 | 22 | 17 | 22 | 144 | 22 |
Other cities | 173 | 58 | 159 | 55 | 45 | 59 | 377 | 57 |
Income quintile | ||||||||
1 (lowest) | 60 | 24 | 55 | 22 | 11 | 17 | 126 | 23 |
2 | 38 | 15 | 42 | 17 | 6 | 10 | 86 | 15 |
3 | 51 | 21 | 50 | 20 | 10 | 16 | 111 | 20 |
4 | 63 | 25 | 46 | 19 | 22 | 34 | 131 | 23 |
5 (highest) | 36 | 15 | 54 | 22 | 15 | 23 | 105 | 19 |
EQ-5D-5L index (mean: 0.858) | ||||||||
Below mean | 88 | 30 | 114 | 39 | 23 | 30 | 225 | 34 |
Above mean | 210 | 70 | 176 | 61 | 53 | 70 | 439 | 66 |
EQ VAS (mean: 73.9) | ||||||||
Below mean | 100 | 34 | 141 | 49 | 24 | 32 | 265 | 40 |
Above mean | 198 | 66 | 149 | 51 | 52 | 68 | 399 | 60 |
Family Doctor (n = 298) | Public Specialist (n = 290) | Private Specialist (n = 76) | |||||||
---|---|---|---|---|---|---|---|---|---|
n | % | Cumulative | n | % | Cumulative | n | % | Cumulative | |
Waiting Time to Get an Appointment | |||||||||
0 days (same day) * | 204 | 68% | 68% | 46 | 16% | 16% | 5 | 7% | 7% |
1 day (next day) | 29 | 10% | 78% | 11 | 4% | 20% | 7 | 9% | 16% |
2–5 days (couple of days) | 29 | 10% | 88% | 32 | 11% | 31% | 27 | 36% | 51% |
6–7 days (just less than a week) | 6 | 2% | 90% | 30 | 10% | 41% | 10 | 13% | 64% |
8–14 days (more than a week) | 6 | 2% | 92% | 25 | 9% | 50% | 11 | 14% | 79% |
15–30 days (more than two weeks) | 10 | 3% | 95% | 49 | 17% | 67% | 7 | 9% | 88% |
31–60 days (more than one month) | 5 | 2% | 97% | 41 | 14% | 81% | 6 | 8% | 96% |
61–90 days (more than two months) | 5 | 2% | 99% | 32 | 11% | 92% | 2 | 3% | 99% |
91 days or longer (more than three month | 4 | 1% | 100% | 24 | 8% | 100% | 1 | 1% | 100% |
Share of Respondents who Waited More than 30 Days for an Appointment with a Public Specialist % | Multivariate Logistic Regression: Waited More than 30 Days for an Appointment with a Public Specialist OR (95% CI) | |
---|---|---|
Total | 33.4% | - |
Sex | Chi2 = 0.2 (p = 0.649) | |
Female | 34.5% | (Baseline) |
Male | 32.0% | 0.613 (0.320–1.177) |
Age group | Chi2 = 10.3 (p = 0.067) | |
18–24 | 27.3% | 0.522 (0.145–1.879) |
25–34 | 22.6% | 0.406 (0.106–1.563) |
35–44 | 18.8% | 0.312 * (0.0980–0.993) |
45–54 | 38.9% | 1.056 (0.338–3.297) |
55–64 | 36.7% | 0.532 (0.202–1.403) |
65+ | 41.3% | (Baseline) |
Marital status | Chi2 = 0.1 (p = 0.820) | |
Not married | 34.3% | (Baseline) |
Married | 33.0% | 1.048 (0.573–1.916) |
Employment status | Chi2 = 7.6 (p = 0.006) ** | |
Without a paid job | 39.5% | (Baseline) |
With a paid job | 23.9% | 0.516 (0.228–1.170) |
Education | Chi2 = 1.7 (p = 0.419) | |
Primary | 38.0% | (Baseline) |
Secondary | 29.1% | 0.635 (0.310–1.302) |
Tertiary | 33.7% | 0.743 (0.308–1.792) |
Income quintile | Chi2 = 12.2 (p = 0.016) * | |
1 (lowest) | 41.8% | (Baseline) |
2 | 26.2% | 0.409 (0.142–1.171) |
3 | 46.0% | 1.251 (0.513–3.049) |
4 | 17.4% | 0.278 * (0.0957–0.810) |
5 (highest) | 40.7% | 0.804 (0.291–2.221) |
EQ-5D-5L | Chi2 = 0.2 (p = 0.634) | |
Below median | 35.1% | (Baseline) |
Above median | 32.4% | 1.211 (0.662–2.212) |
EQ VAS | Chi2 = 6.0 (p = 0.014) * | |
Below median | 40.4% | - |
Above median | 26.8% | - |
Settlement | Chi2 = 2.0 (p = 0.362) | |
Village | 26.6% | (Baseline) |
Capital | 36.5% | 0.468 (0.155–1.413) |
Other cities | 32.8% | 1.024 (0.479–2.191) |
Region | Chi2 = 1.2 (p = 0.562) | |
Central Hungary | 35.2% | (Baseline) |
Great Plain and North | 29.6% | 0.347 * (0.137–0.879) |
Transdanubia | 36.4% | 0.704 (0.282–1.758) |
Observations | 290 | 247 |
Wald Chi2 (p) | - | 36.57 (p = 0.0090) |
Pseudo R2 | - | 0.1193 |
Family Doctor (n = 298) | Public Specialist (n = 290) | Private Specialist (n = 76) | |||||||
---|---|---|---|---|---|---|---|---|---|
n | % | Cumulative | n | % | Cumulative | n | % | Cumulative | |
Waiting Time at a Doctor’s Office | |||||||||
Up to 15 min | 63 | 21% | 21% | 55 | 19% | 19% | 45 | 59% | 59% |
More than 15 and up to 30 min | 75 | 25% | 46% | 61 | 21% | 40% | 16 | 21% | 80% |
More than 30 and up to 60 min | 69 | 23% | 69% | 63 | 22% | 62% | 8 | 11% | 91% |
More than 1 and up to 2 h | 55 | 18% | 88% | 60 | 21% | 82% | 5 | 7% | 97% |
More than 2 and up to 3 h | 32 | 11% | 99% | 42 | 14% | 97% | 1 | 1% | 99% |
More than 4 and up to 8 h | 4 | 1% | 100% | 9 | 3% | 100% | 1 | 1% | 100% |
More than 8 h | 0 | 0% | 100% | 0 | 0% | 100% | 0 | 0% | 100% |
Share of Respondents Waited More than 2 h in the Doctor’s Office | Multivariate Logistic Regression: Waited More than 2 h at the Doctor’s Office OR (95% CI) | |
---|---|---|
Total | 13.4% | - |
Provider | Chi2 = 12.4 (p = 0.002) ** | |
Public specialist | 17.6% | (Baseline) |
Family doctor | 12.1% | 0.606 (0.353–1.039) |
Private specialist | 2.6% | 0.101 ** (0.0214–0.479) |
Sex | Chi2 = 0.5 (p = 0.481) | |
Female | 14.2% | (Baseline) |
Male | 12.4% | 1.011 (0.583–1.755) |
Age group | chi2 = 2.2 (p = 0.818) | |
18–24 | 9.2% | 0.418 (0.130–1.345) |
25–34 | 14.8% | 1.583 (0.590–4.243) |
35–44 | 16.0% | 0.897 (0.349–2.306) |
45–54 | 14.5% | 0.735 (0.266–2.036) |
55–64 | 13.1% | 0.764 (0.293–1.991) |
65+ | 12.0% | (Baseline) |
Marital status | chi2 = 1.7 (p = 0.192) | |
Not married | 15.8% | (Baseline) |
Married | 12.2% | 0.822 (0.488–1.384) |
Employment status | chi2 = 0.5 (p = 0.489) | |
Without a paid job | 12.5% | (Baseline) |
With a paid job | 14.3% | 1.758 (0.908–3.404) |
Education | chi2 = 1.6 (p = 0.453) | |
Primary | 15.8% | (Baseline) |
Secondary | 12.8% | 0.770 (0.401–1.479) |
Tertiary | 11.8% | 0.927 (0.451–1.906) |
Income quintile | chi2 = 7.5 (p = 0.111) | |
1 (lowest) | 19.0% | (Baseline) |
2 | 11.6% | 0.497 (0.208–1.183) |
3 | 10.8% | 0.482 (0.211–1.103) |
4 | 9.2% | 0.453 (0.198–1.039) |
5 (highest) | 17.1% | 0.816 (0.332–2.005) |
EQ-5D-5L | chi2 = 1.4 (p = 0.244) | |
Below median | 15.6% | (Baseline) |
Above median | 12.3% | 0.609 (0.343–1.082) |
EQ VAS | chi2 = 3.9 (p = 0.049) * | |
Below median | 16.6% | - |
Above median | 11.3% | - |
Settlement | chi2 = 3.7 (p = 0.155) | |
Village | 9.0% | (Baseline) |
Capital | 15.4% | 0.515 (0.197–1.345) |
Other cities | 12.6% | 1.542 (0.779–3.052) |
Region | chi2 = 3.3 (p = 0.189) | |
Central Hungary | 12.4% | (Baseline) |
Great Plain and North | 16.5% | 0.720 (0.334–1.554) |
Transdanubia | 10.8% | 0.533 (0.227–1.251) |
Observations | 664 | 559 |
Wald chi2 (p) | - | 37.68 (p = 0.0141) |
Pseudo R2 | - | 0.0858 |
VARIABLES | Share of Participants Who Reported Waiting Time to Get an Appointment a Problem | Multivariate Logistic Regression: Was the Time you Waited for the Appointment a Problem for You? OR (95% CI) |
---|---|---|
Total | 25.2% | - |
Waiting time for an appointment | chi2 = 51.5 (p < 0.001) *** | |
Next day | 10.6% | (Baseline) |
Within a few days (2–5 days) | 8.0% | 0.653 (0.133–3.203) |
Less than a week (6–7 days) | 13.0% | 1.648 (0.270–10.08) |
Over 1 week (8–14 days) | 23.8% | 2.050 (0.398–10.56) |
Over 2 weeks (15–30 days) | 31.8% | 8.813 ** (1.892–41.04) |
Over 1 month (31–60 days) | 42.3% | 13.46 ** (2.747–65.90) |
Over 2 months (61–90 days) | 41.0% | 17.69 *** (3.315–94.46) |
Over 3 months or more (91 days and more) | 55.2% | 27.09 *** (4.591–159.8) |
Provider | chi2 = 3.3 (p = 0.196) | |
Public specialist | 27.5% | (Baseline) |
Family doctor | 25.5% | 1.986 (0.882–4.470) |
Private specialist | 16.9% | 0.751 (0.305–1.850) |
Sex | chi2 = 7.4 (p = 0.007) *** | |
Female | 30.3% | (Baseline) |
Male | 18.5% | 0.321 ** (0.156–0.662) |
Age group | chi2 = 5.2 (p = 0.395) | |
18–24 | 18.2% | 0.757 (0.181–3.163) |
25–34 | 31.5% | 2.905 (0.999–8.449) |
35–44 | 27.1% | 1.365 (0.425–4.377) |
45–54 | 27.3% | 0.645 (0.198–2.097) |
55–64 | 29.0% | 1.551 (0.585–4.112) |
65+ | 19.7% | (Baseline) |
Marital status | chi2 = 0.8 (p = 0.363) | |
Not married | 22.4% | (Baseline) |
Married | 26.5% | 1.152 (0.610–2.177) |
Employment status | chi2 = 0.3 (p = 0.581) | |
Without a paid job | 24.1% | (Baseline) |
With a paid job | 26.5% | 2.237 * (1.018–4.917) |
Education | chi2 = 5.1 (p = 0.077) | |
Primary | 32.3% | (Baseline) |
Secondary | 22.1% | 0.778 (0.355–1.702) |
Tertiary | 21.7% | 0.895 (0.373–2.146) |
Income quintile | chi2 = 6.0 (p = 0.200) | |
1 (lowest) | 30.8% | (Baseline) |
2 | 31.5% | 1.573 (0.593–4.174) |
3 | 24.6% | 0.754 (0.299–1.899) |
4 | 26.3% | 2.160 (0.838–5.569) |
5 (highest) | 15.8% | 0.743 (0.273–2.023) |
EQ-5D-5L index | chi2 = 6.5 (p = 0.011) * | |
Below mean | 32.4% | (Baseline) |
Above mean | 21.1% | 0.400 ** (0.210–0.763) |
EQ VAS | chi2 = 7.8 (p = 0.005) ** | |
Below mean | 32.0% | - |
Above mean | 19.9% | - |
Settlement | chi2 = 2.5 (p = 0.289) | |
Village | 22.0% | (Baseline) |
Capital | 24.2% | 1.009 (0.327–3.111) |
Other cities | 31.7% | 0.710 (0.352–1.432) |
Region | chi2 = 1.0 (p = 0.598) | |
Central Hungary | 22.3% | (Baseline) |
Great Plain and North | 26.7% | 1.468 (0.545–3.950) |
Transdanubia | 27.0% | 1.280 (0.465–3.527) |
Observations | 409 | 353 |
Wald chi2 (p) | - | 65.11 (p = 0.0001) |
Pseudo R2 | - | 0.2413 |
VARIABLES | Share of Participants Who Reported Waiting Time at the Doctor’s Office a Problem | Multivariate Logistic Regression: Was the Time You Waited to Be Seen at a Doctor’s Office a Problem for You? OR (95% CI) |
---|---|---|
Total | 35.5% | - |
Waiting time at the doctor’s office | chi2 = 83.3 (p < 0.001 ***) | |
Up to half an hour (15–30 min) | 11.8% | (Baseline) |
Up to an hour (30–60 min) | 32.1% | 3.753 *** (1.856–7.587) |
Between 1 and 2 h | 49.2% | 8.711 *** (4.314–17.59) |
Between 2 and 4 h | 57.3% | 8.637 *** (3.836–19.45) |
Between 4 and 8 h | 92.9% | 127.4 *** (17.34–936.8) |
Provider | chi2 = 0.2 (p = 0.890) | |
Public outpatient specialist | 34.5% | (Baseline) |
General practitioner | 36.6% | 1.092 (0.656–1.818) |
Private outpatient specialist | 35.5% | 1.166 (0.431–3.156) |
Sex | chi2 = 2.2 (p = 0.142) | |
Female | 38.5% | (Baseline) |
Male | 32.2% | 1.143 (0.682–1.915) |
Age group | chi2 = 20.5 (p = 0.001) ** | |
18–24 | 42.6% | 2.401 (0.851–6.776) |
25–34 | 50.6% | 5.329 *** (2.090–13.59) |
35–44 | 40.4% | 1.772 (0.718–4.369) |
45–54 | 37.1% | 1.561 (0.542–4.497) |
55–64 | 30.9% | 1.107 (0.493–2.487) |
65+ | 22.8% | (Baseline) |
Marital status | chi2 = 2.7 (p = 0.098) | |
Not married | 30.6% | (Baseline) |
Married | 38.1% | 1.664 (0.969–2.858) |
Employment status | chi2 = 3.5 (p = 0.061) | |
Without a paid job | 31.7% | (Baseline) |
With a paid job | 39.7% | 1.205 (0.639–2.272) |
Education | chi2 = 0.9 (p = 0.627) | |
Primary | 38.3% | (Baseline) |
Secondary | 34.8% | 0.930 (0.513–1.686) |
Tertiary | 33.3% | 0.733 (0.368–1.461) |
Income quintile | chi2 = 11.8 (p = 0.019) * | |
1 (lowest) | 47.6% | (Baseline) |
2 | 28.6% | 0.582 (0.278–1.218) |
3 | 26.7% | 0.539 (0.259–1.119) |
4 | 31.2% | 0.730 (0.345–1.548) |
5 (highest) | 37.5% | 0.969 (0.426–2.203) |
EQ-5D-5L index | chi2 = 2.1 (p = 0.144) | |
Below mean | 39.6% | (Baseline) |
Above mean | 33.1% | 0.519 * (0.307–0.879) |
EQ VAS | chi2 = 4.3 (0.038) * | |
Below mean | 40.7% | - |
Above mean | 31.7% | - |
Settlement | chi2 = 1.7 (p = 0.432) | |
Village | 30.3% | (Baseline) |
Capital | 37.0% | 0.658 (0.260–1.664) |
Other cities | 36.9% | 1.064 (0.600–1.885) |
Region | chi2 = 2.2 (p = 0.326) | |
Central Hungary | 33.3% | (Baseline) |
Great Plain and North | 39.8% | 0.874 (0.394–1.938) |
Transdanubia | 32.9% | 0.770 (0.353–1.680) |
Observations | 501 | 424 |
Wald chi2 (p) | - | 88.62 (p < 0.001) |
Pseudo R2 | - | 0.2131 |
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Brito Fernandes, Ó.; Lucevic, A.; Péntek, M.; Kringos, D.; Klazinga, N.; Gulácsi, L.; Zrubka, Z.; Baji, P. Self-Reported Waiting Times for Outpatient Health Care Services in Hungary: Results of a Cross-Sectional Survey on a National Representative Sample. Int. J. Environ. Res. Public Health 2021, 18, 2213. https://doi.org/10.3390/ijerph18052213
Brito Fernandes Ó, Lucevic A, Péntek M, Kringos D, Klazinga N, Gulácsi L, Zrubka Z, Baji P. Self-Reported Waiting Times for Outpatient Health Care Services in Hungary: Results of a Cross-Sectional Survey on a National Representative Sample. International Journal of Environmental Research and Public Health. 2021; 18(5):2213. https://doi.org/10.3390/ijerph18052213
Chicago/Turabian StyleBrito Fernandes, Óscar, Armin Lucevic, Márta Péntek, Dionne Kringos, Niek Klazinga, László Gulácsi, Zsombor Zrubka, and Petra Baji. 2021. "Self-Reported Waiting Times for Outpatient Health Care Services in Hungary: Results of a Cross-Sectional Survey on a National Representative Sample" International Journal of Environmental Research and Public Health 18, no. 5: 2213. https://doi.org/10.3390/ijerph18052213
APA StyleBrito Fernandes, Ó., Lucevic, A., Péntek, M., Kringos, D., Klazinga, N., Gulácsi, L., Zrubka, Z., & Baji, P. (2021). Self-Reported Waiting Times for Outpatient Health Care Services in Hungary: Results of a Cross-Sectional Survey on a National Representative Sample. International Journal of Environmental Research and Public Health, 18(5), 2213. https://doi.org/10.3390/ijerph18052213