| Literature DB >> 32050947 |
Nicholas M Mohr1,2,3, Chaorong Wu4, Michael J Ward5,6, Candace D McNaughton5,6, Kelly Richardson7, Peter J Kaboli7,8.
Abstract
BACKGROUND: Inter-facility transfer is an important strategy for improving access to specialized health services, but transfers are complicated by over-triage, under-triage, travel burdens, and costs. The purpose of this study is to describe ED-based inter-facility transfer practices within the Veterans Health Administration (VHA) and to estimate the proportion of potentially avoidable transfers.Entities:
Keywords: Emergency service, hospital; Hospitals, rural; Regionalization; Rural health services; Veterans health
Mesh:
Year: 2020 PMID: 32050947 PMCID: PMC7014752 DOI: 10.1186/s12913-020-4956-6
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Fig. 1Flow diagram of study participants
Patient and hospital-level factors associated with VHA-to-VHA ED inter-facility transfer, 2012–2014
| Non-Transfer | Non-Avoidable Transfer ( | Potentially Avoidable Transfer | |
|---|---|---|---|
| Age, y (SD) | 58.8 (16.0) | 58.9 (15.1) | 56.8 (15.5) |
| Male, n (%) | 5,512,967 (90) | 13,624 (94) | 3930 (92) |
| Rurality of Residence | |||
| Urban, n (%) | 5,078,808 (89) | 9374 (75) | 2899 (78) |
| Large Rural, n (%) | 343,642 (6) | 1678 (13) | 420 (11) |
| Small Rural, n (%) | 160,163 (3) | 826 (7) | 226 (6) |
| Isolated Rural, n (%) | 135,530 (2) | 653 (5) | 177 (5) |
| Day of the Week | |||
| Monday, n (%) | 1,050,212 (17) | 2461 (17) | 706 (17) |
| Tuesday, n (%) | 978,139 (16) | 2260 (16) | 642 (15) |
| Wednesday, n (%) | 934,969 (15) | 2157 (15) | 658 (15) |
| Thursday, n (%) | 913,478 (15) | 2131 (15) | 682 (16) |
| Friday, n (%) | 920,805 (15) | 2171 (15) | 552 (13) |
| Saturday, n (%) | 679,584 (11) | 1637 (11) | 490 (11) |
| Sunday, n (%) | 635,672 (10) | 1743 (12) | 562 (13) |
| Time of Day | |||
| 8a-5p Mon-Fri, n (%) | 3,199,845 (52) | 6998 (48) | 1720 (40) |
| Evenings, nights, and weekends, n (%) | 2,913,014 (48) | 7562 (52) | 2572 (60) |
| Transfer Location | |||
| ED, n (%) | N/A | 5427 (37) | 3212 (75) |
| Inpatient, n (%) | N/A | 9133 (63) | 1080 (25) |
| Hospitalization, n (%) | 1,083,322 (18) | 14,533 (99) | 1435 (33) |
| Hospital Length of Stay, d (median, IQR) | 4 (2, 7) | 5 (3, 9) | 1 (1, 1) |
| Number of ED beds | 15.8 (10.8) | 11.8 (7.3) | 12.7 (6.8) |
| Follow-up care | |||
| Visits at index hospital, n (%) | 4,832,894(79) | 11,841 (81) | 3139 (73) |
| Visits at referral hospital, n (%) | N/A | 10,502 (72) | 3266 (76) |
| 30-day Mortality, n (%) | 82,259 (1.3) | 422 (2.9) | 65 (1.5) |
Abbreviations: y years, SD standard deviation, ED emergency department, d days, IQR interquartile range
Fig. 2Distribution of inter-facility transfers by Clinical Classification Software (CCS) diagnosis group. Each bar shows the number of transfers within each diagnosis group. The left bar (black and white), shows the number of transfers to Veterans Health Administration (VHA) facilities, stratified by potentially avoidable transfer (PAT) status (left vertical axis). The right bar shows the number of non-VHA transfers (right vertical axis). The relative height of the black/white bar and the grey bar shows compares the distributions in transfers to VHA facilities vs. non-VHA facilities. Categories (horizontal axis) are CCS categories, with the CCS category number listed in parentheses after each category
Fig. 3Map of ED-based VHA-to-VHA inter-facility transfers, 2012–2014. Each dot on the map indicates a single VHA hospital with an emergency department (ED). Lines between these hospitals indicate transfers between facilities, with the thickness of the line represents the number of transfers. For some pairs of hospitals, the number of transfers are bidirectional, in which case the number of transfers in each direction are added together to represent the total transfer volume. Lines are not drawn between hospitals that have fewer than 100 VHA-to-VHA transfers over the study period. The proportion of transfers within each Veterans Integrated Service Network (VISN) that qualify as potentially avoidable transfers (PAT) is represented by grayscale shading (see legend). Note that non-VHA transfers are not included on this figure. The authors would like to acknowledge Morgan Swanson, BS for her assistance with preparation of this figure
Fig. 4Regional variation in potentially avoidable transfers (PATs) by Clinical Classification Software (CCS) diagnosis group. Each cell in the heat map represents the total number of potentially avoidable transfers within one Veterans Integrated Service Network (VISN) region. CCS diagnosis categories are listed on the vertical axis, with the diagnosis group number listed in parentheses after the CCS category abbreviation. VISN regions are listed on the horizontal axis. Darker colors represent more PATs within the VISN for the diagnosis group
Multivariable explanatory model for potentially avoidable transfer (PAT)
| Variable | Odds Ratio (95%CI) | |
|---|---|---|
| Rural Residence | 0.798 (0.715–0.890) | < 0.001 |
| Arrival during Nights (5p-8a) or Weekend | 1.252 (1.144–1.370) | < 0.001 |
| Diagnosis Group (CCS) | < 0.001 | |
| Mental Illness (5) | 0.238 (0.202–0.282) | |
| Circulatory (7) | 0.518 (0.437–0.615) | |
| Digestive (9) | 0.563 (0.464–0.683) | |
| Signs and Symptoms (17) | 1.000 (ref) | |
| Respiratory (8) | 0.568 (0.456–0.708) | |
| Injury and Poisoning (16) | 1.374 (1.123–1.680) | |
| Genitourinary (10) | 0.789 (0.619–1.004) | |
| Musculoskeletal (13) | 1.571 (1.252–1.972) | |
| Nervous System (6) | 1.617 (1.288–2.030) | |
| Skin (12) | 0.870 (0.667–1.136) | |
| Endocrine/Metabolic (3) | 0.535 (0.380–0.752) | |
| Neoplasms (2) | 0.470 (0.321–0.690) | |
| Blood (4) | 0.511 (0.327–0.798) | |
| Infectious/Parasitic Diseases (1) | 0.380 (0.209–0.693) | |
| VISN | < 0.001 | |
| 1 | 0.480 (0.276–0.834) | |
| 2 | 1.280 (0.863–2.206) | |
| 3 | 1.133 (0.712–1.804) | |
| 4 | 0.534 (0.333–0.857) | |
| 5 | 0.515 (0.319–0.832) | |
| 6 | 0.706 (0.450–1.109) | |
| 7 | 0.516 (0.320–0.834) | |
| 8 | 0.839 (0.544–1.293) | |
| 9 | 0.787 (0.505–1.227) | |
| 10 | 1.791 (0.967–3.316) | |
| 11 | 0.568 (0.349–0.923) | |
| 12 | 0.613 (0.375–1.001) | |
| 15 | 0.896 (0.553–1.454) | |
| 16 | 0.492 (0.291–0.830) | |
| 17 | 0.380 (0.236–0.611) | |
| 18 | 0.788 (0.471–1.320) | |
| 19 | 0.412 (0.215–0.790) | |
| 20 | 0.459 (0.266–0.793) | |
| 21 | 0.957 (0.565–1.622) | |
| 22 | 1.673 (1.011–2.770) | |
| 23 | 1.000 (ref) | |
| More than 50% Board-Certified Emergency Physicians | 1.266 (1.103–1.452) | < 0.001 |
Abbreviations: CCS Clinical Classification Software, VISN Veterans Integrated Service Network