| Literature DB >> 32087710 |
Jan Håkon Rudolfsen1, Tore K Solberg2,3, Tor Ingebrigtsen2,3, Jan Abel Olsen4,5,6.
Abstract
BACKGROUND: A vast body of literature has documented regional variations in healthcare utilization rates. The extent to which such variations are "unwarranted" critically depends on whether there are corresponding variations in patients' needs. Using a unique medical registry, the current paper investigated any associations between utilization rates and patients' needs, as measured by two patient-reported outcome measures (PROMs).Entities:
Keywords: Baseline health; EQ-5D; Flat of the curve; Health gain; ODI; Regional variation
Mesh:
Year: 2020 PMID: 32087710 PMCID: PMC7036171 DOI: 10.1186/s12913-020-4968-2
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Fig. 1Flow chart of data merging and excluding
Surgery rates, median EQ-5D at baseline and health at follow-up, number of Disc and Stenosis patients treated and observed, and number of Disc patients relative to Stenosis patients, by region
| Rates | Responsrate | EQ-5D Base | EQ-5D Gain | |
|---|---|---|---|---|
| Telemark | 7,9 | 22 | 0,174 | 0,140 |
| Nordland | 8,8 | 54 | 0.159 | 0,396 |
| Fonna | 9,0 | 52 | 0,189 | 0,292 |
| Ostfold | 9,3 | 29 | 0,159 | 0,309 |
| Oslo Universitetssykehus | 10,0 | 29 | 0,364 | 0,209 |
| Finnmark | 10,7 | 59 | 0,184 | 0,380 |
| Sorlandet | 11,3 | 52 | 0,159 | 0,343 |
| Møre og Romsdal | 11,4 | 39 | 0,260 | 0,280 |
| Universitetssykehuset i Nord Norge | 11,8 | 62 | 0,159 | 0,413 |
| Bergen | 11,9 | 53 | 0,189 | 0,309 |
| Helgeland | 12,0 | 57 | 0,159 | 0,413 |
| Innlandet | 12,5 | 48 | 0,195 | 0,272 |
| Vestfold | 12,5 | 12 | 0,159 | 0,204 |
| St.Olavs | 12,9 | 45 | 0,159 | 0,397 |
| Akershus | 13,1 | 32 | 0,228 | 0,254 |
| Forde | 13,2 | 22 | 0,260 | 0,273 |
| Vestre Viken | 13,9 | 45 | 0,364 | 0,223 |
| Stavanger | 14,6 | 60 | 0,178 | 0,273 |
| Nord Trondelag | 19,0 | 51 | 0,159 | 0,231 |
Fig. 2Distribution of health at baseline, and health gain. Black curves represent the three regions with lowest rates, while red curve represent the three regions with highest rates
The global effects of treatment rates on baseline health, and health gain measured by EQ-5D
| Baseline health | Health Gain | |||
|---|---|---|---|---|
| Linear | Best non-linear | Linear | Best non-linear | |
| Intercept | 0.353*** | 0.322*** | 0.440*** | 0.495*** |
| Rates | 0.002*** | −0.004*** | ||
| −0.17*** | −0.031*** | |||
| R2Marg | ||||
| Observations | 15,810 | 12,232 | ||
*p < 0.1;**p < 0.05;***p < 0.01
Adjusted for: treated within or outside own hospital region; age; gender; smoker, BMI; education; labour market participation; previous surgery; emergency care; self-reported measure on duration of symptoms; and time trend. Significance based on robust standard errors
Fig. 3Plotting treatment rates marginal effect on EQ-5D. The two red curves represents EQ-5D at baseline, black curves represents EQ-5D health gain. Stapeled curves are linear models, solid are non-linear models