| Literature DB >> 30621338 |
Dai Su1,2, Yingchun Chen3,4, Hongxia Gao5,6, Haomiao Li7,8, Jingjing Chang9,10, Shihan Lei11,12, Di Jiang13,14, Xiaomei Hu15,16, Min Tan17,18, Zhifang Chen19,20.
Abstract
This study aimed to assess the effect of the county-level medical centre policy on the health outcomes of trauma patients transported by emergency medical service (EMS) system in rural China. The methodology involved the use of electronic health records (EHRs, after 2016) of patients with trauma conditions such as head injury (n = 1931), chest (back) injury (n = 466), abdominal (waist) injury (n = 536), and limb injury (n = 857) who were transported by EMS to the county-level trauma centres of Huining County and Huan County in Gansu, China. Each patient was matched with a counterpart to a county-level trauma centre hospital by propensity score matching. Cox proportional hazard models were used to estimate the hazard ratios (HRs) of such patients in different hospitals. The HRs of all patients with the abovementioned traumatic conditions transported by EMS to county-level trauma centre hospitals were consistently higher than those transported by EMS to traditional hospitals after adjusting for numerous potential confounders. Higher HRs were associated with all patients with trauma (HR = 1.249, p < 0.001), head injury (HR = 1.416, p < 0.001), chest (back) injury (HR = 1.112, p = 0.560), abdominal (waist) injury (HR = 1.273, p = 0.016), and limb injury (HR = 1.078, p = 0.561) transported by EMS to the county-level trauma centre hospitals. Our study suggests that the construction of county-level medical centre provides an effective strategy to improve the health outcomes of EMS-transported trauma patients in Gansu, China. Policy makers can learn from the experience and improve the health outcomes of such patients through a personalised trauma treatment system and by categorizing the regional trauma centre.Entities:
Keywords: Cox proportional hazard model; county-level medical centre; health outcomes; patients with trauma transported by EMS; propensity score matching
Mesh:
Year: 2019 PMID: 30621338 PMCID: PMC6339033 DOI: 10.3390/ijerph16010133
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1The geolocation of Huining County and Huan County in Gansu Province, China.
Basic characteristics of the two counties and the medical capacity of two sample hospitals.
| Characteristic | Huining County | Huan County |
|---|---|---|
| Population (thousands) | 580 | 358 |
| Area (square kilometres) | 6439 | 9236 |
| GDP (million) | 61.42 | 74.95 |
| Sample hospital level | Rate A, level 2 | Rate A, level 2 |
| No. of open beds per thousand people in sample hospital | 1.14 | 1.01 |
| No. of professional physicians per thousand people in sample hospital | 1.57 | 1.35 |
| No. of large medical equipment per thousand people in sample hospital | 0.11 | 0.10 |
GDP, gross domestic product; No., Number. Hospital level is the evaluation index of hospital qualifications based on hospital functions, facilities, and technical strength in China.
Figure 2Study design and flow chart of the observations selection and the classification of those observations for propensity score matching.
Descriptive statistics of patient characteristics before and after propensity score matching in different groups.
| Variables | Head Injury | Chest (Back) Injury | Abdominal (Waist) Injury | Limb Injury | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Treated | Control | Treated | Control | Treated | Control | Treated | Control | |||||
| Unmatched | Matched | Unmatched | Matched | Unmatched | Matched | Unmatched | Matched | |||||
| Gender, | ||||||||||||
| Male | 616 (67.8) | 897 (87.7) | 783 (86.2) | 118 (72.8) | 199 (65.4) | 115 (70.9) | 140 (58.3) | 204 (68.9) | 150 (62.7) | 226 (64.9) | 372 (73.0) | 230 (66.2) |
| Female | 292 (32.2) | 126 (12.3) | 125 (13.8) | 44 (27.2) | 105 (34.6) | 47 (29.1) | 100 (41.7) | 92 (31.1) | 90 (37.3) | 122 (35.1) | 137 (27.0) | 118 (34.8) |
| Age group, | ||||||||||||
| 18–40 | 384 (42.3) | 516 (50.4) | 442 (48.7) | 34 (21.0) | 45 (14.8) | 33 (20.3) | 86 (35.8) | 35 (11.7) | 34 (14.2) | 102 (29.3) | 98 (19.3) | 96 (27.5) |
| 41–50 | 212 (23.3) | 248 (24.2) | 226 (24.9) | 54 (33.3) | 90 (29.6) | 51 (31.6) | 70 (29.2) | 90 (30.0) | 77 (31.9) | 72 (20.7) | 79 (15.5) | 73 (21.0) |
| 51–60 | 184 (20.3) | 142 (13.9) | 137 (15.1) | 46 (28.4) | 90 (29.6) | 46 (28.3) | 48 (20.0) | 94 (31.7) | 72 (30.2) | 62 (17.8) | 105 (20.6) | 63 (18.2) |
| 61–70 | 82 (9.0) | 97 (9.5) | 84 (9.3) | 16 (9.9) | 67 (22.2) | 21 (12.9) | 26 (10.8) | 49 (16.7) | 36 (15.1) | 56 (16.1) | 154 (30.3) | 72 (20.6) |
| 71–80 | 38 (4.2) | 15 (1.5) | 15 (1.6) | 10 (6.2) | 11 (3.7) | 11 (6.9) | 8 (3.3) | 30 (10.0) | 21 (8.6) | 40 (11.5) | 73 (14.3) | 44 (12.7) |
| >80 | 8 (0.9) | 4 (0.4) | 4 (0.4) | 2 (1.2) | 0 (0.0) | 0 (0.0) | 2 (0.8) | 0 (0.0) | 0 (0.0) | 16 (4.6) | 0 (0.0) | 0 (0.0) |
| Admission status, | ||||||||||||
| Normal | 802 (88.3) | 924 (90.3) | 812 (89.4) | 154 (95.1) | 299 (98.2) | 158 (97.5) | 220 (91.7) | 296 (100.0) | 240 (100.0) | 340 (97.7) | 509 (100.0) | 348 (100.0) |
| Urgent | 106 (11.7) | 99 (9.7) | 96 (10.6) | 8 (4.9) | 5 (1.8) | 4 (2.5) | 20 (8.3) | 0 (0.0) | 0 (0.0) | 8 (2.3) | 0 (0.0) | 0 (0.0) |
| Inpatient care cost, mean (SD) | 5507.348 (10637.5) | 4568.048 (3045.821) | 4908.619 (3249.856) | 5423.234 (7801.27) | 3604.89 (2935.47) | 4303.73 (4368.813) | 5270.949 (7042.654) | 6705.18 (6805.462) | 6678.151 (7187.803) | 9294.628 (8104.878) | 8857.412 (4527.157) | 9347.126 (4324.453) |
| Surgery conducted or not, mean (SD) | 0.14 (0.348) | 0.22 (0.196) | 0.20 (0.196) | 0.15 (0.357) | 0.09 (0.308) | 0.11 (0.316) | 0.18 (0.382) | 0.26 (0.443) | 0.28 (0.453) | 0.59 (0.494) | 0.46 (0.473) | 0.49 (0.494) |
| Number of disease diagnoses, mean (SD) | 4.53 (2.711) | 3.66 (1.753) | 4.26 (1.905) | 4.59 (2.932) | 3.65 (1.279) | 4.21 (1.439) | 3.92 (2.624) | 3.45 (0.729) | 3.42 (0.752) | 4.05 (3.006) | 3.56 (3.124) | 3.59 (3.006) |
Note: SD, standard deviation.
Figure 3LoS of matched head injury, chest (back) injury, abdominal (waist), and limb injury patients transported by EMS.
Figure 4Kaplan–Meier survival curves of matched full sample patients transported by EMS in two groups.
Figure 5Kaplan–Meier survival curves of matched head injury, chest (back) injury, abdominal (waist), and limb injury patients transported by EMS in two groups.
Maximum likelihood estimates of multivariable Cox hazard model.
| Variables | All | Head Injury | Chest (Back) Injury | Abdominal (Waist) Injury | Limb Injury | |||||
|---|---|---|---|---|---|---|---|---|---|---|
| Hazard Ratio | 95% CI | Hazard Ratio | 95% CI | Hazard Ratio | 95% CI | Hazard Ratio | 95% CI | Hazard Ratio | 95% CI | |
| Non-medical centre hospital | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. |
| Medical centre hospital | 1.249 *** | 1.125–1.385 | 1.416 *** | 1.216–1.649 | 1.112 | 0.779–1.587 | 1.273 ** | 1.021–1.848 | 1.078 | 0.838–1.387 |
| Gender | ||||||||||
| Male | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. |
| Female | 1.016 | 0.906–1.138 | 1.064 | 0.903–1.252 | 0.997 | 0.685–1.449 | 0.792 | 0.557–1.126 | 0.959 | 0.721–1.274 |
| Age group | ||||||||||
| 18–40 | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. |
| 41–50 | 0.971 | 0.845–1.116 | 1.164 | 0.962–1.408 | 1.004 | 0.611–1.652 | 0.910 | 0.579–1.429 | 1.337 | 0.911–1.962 |
| 51–60 | 1.037 | 0.893–1.205 | 1.224 * | 0.996–1.506 | 1.277 | 0.771–2.114 | 1.160 | 0.702–1.918 | 0.896 | 0.608–1.322 |
| 61–70 | 0.991 | 0.830–1.185 | 1.108 | 0.849–1.447 | 1.087 | 0.606–1.950 | 2.400 *** | 1.337–4.309 | 1.286 | 0.821–2.016 |
| 71–80 | 1.092 | 0.873–1.364 | 1.037 | 0.723–1.489 | 1.296 | 0.642–2.619 | 2.547 ** | 1.130–5.742 | 1.526 * | 0.975–2.387 |
| >80 | 1.086 | 0.724–1.630 | 1.688 | 0.887–3.213 | 0.993 | 0.285–3.455 | 1.198 | 0.161–8.933 | 0.697 | 0.346–1.401 |
| Admission status | ||||||||||
| Normal | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. | Ref. |
| Urgent | 1.440 *** | 3.069–5.799 | 0.755 * | 0.561–1.017 | 1.443 | 0.681–3.055 | 0.621 | 0.325–1.186 | 1.363 | 0.596–3.116 |
| Inpatient care cost | 2.850 *** | 2.480–3.276 | 4.379 | 3.600–5.325 | 5.727 *** | 3.785–8.666 | 0.403 *** | 0.312–0.522 | 0.544 *** | 0.441–0.671 |
| Surgery conducted or not | 0.293 *** | 0.214–0.400 | 0.953 | 0.684–1.328 | 0.527 * | 0.275–1.007 | 2.619 *** | 1.552–4.422 | 12.184 *** | 6.783–21.885 |
| Number of disease diagnoses | 0.906 *** | 0.872–0.941 | 0.822 *** | 0.770–0.878 | 0.923 ** | 0.853–0.998 | 0.978 | 0.898–1.064 | 0.994 | 0.936–1.054 |
| Time *admission status | 0.661 *** | 0.607–0.719 | - | - | - | - | - | - | - | - |
| Time *inpatient care cost | 0.886 *** | 0.876–0.895 | 0.817 *** | 0.804–0.830 | 0.827 *** | 0.803–0.853 | - | - | - | - |
| Time *surgery conducted or not | 1.149 *** | 1.122–1.175 | - | - | - | - | - | - | 0.869 *** | 0.843–0.896 |
| Time *number of disease diagnoses | 1.008 *** | 1.005–1.012 | 1.023 *** | 1.016–1.030 | - | - | - | - | - | - |
Note: CI, confidence interval; “Ref.” denotes the reference group; “*” represents the product symbol of the interaction term. *** p < 0.01; ** p < 0.05; * p < 0.1.