| Literature DB >> 34661693 |
Matti Reinikainen1, Stephan M Jakob2, Jukka Takala3, André Moser4, Rahul Raj5, Ville Pettilä6, Irina Irincheeva4,7, Tuomas Selander8, Olli Kiiski9, Tero Varpula6.
Abstract
PURPOSE: Intensive care patients have increased risk of death and their care is expensive. We investigated whether risk-adjusted mortality and resources used to achieve survivors change over time and if their variation is associated with variables related to intensive care unit (ICU) organization and structure.Entities:
Keywords: Cost control; Health care benchmarking; Health resources; Hospital mortality; Intensive care unit; Resource allocation
Mesh:
Year: 2021 PMID: 34661693 PMCID: PMC8724095 DOI: 10.1007/s00134-021-06546-4
Source DB: PubMed Journal: Intensive Care Med ISSN: 0342-4642 Impact factor: 17.440
Fig. 1Flowchart showing study populations and exclusions
Admission characteristics by intensive care unit category and overall
| University ( | Non-university (large) ( | Non-university (small) ( | Overall ( | |
|---|---|---|---|---|
| Age (years) | ||||
| Mean (SD) | 59.8 (17.5) | 58.3 (19.7) | 61 (18.6) | 59.7 (18.1) |
| Median [Min, Max] | 63 [0, 100] | 63 [0, 102] | 64 [0, 101] | 63 [0, 102] |
| Gender | ||||
| Male | 91,789 (62.3%) | 22,957 (63.2%) | 14,674 (62.3%) | 129,420 (62.5%) |
| Female | 55,435 (37.6%) | 13,386 (36.8%) | 8856 (37.6%) | 77,677 (37.5%) |
| Missing | 27 (0%) | 0 (0%) | 7 (0%) | 34 (0%) |
| Type of admission | ||||
| Readmission | 11,040 (7.5%) | 2402 (6.6%) | 1387 (5.9%) | 14,829 (7.2%) |
| First admission | 136,211 (92.5%) | 33,941 (93.4%) | 22,150 (94.1%) | 192,302 (92.8%) |
| Treatment type | ||||
| Elective | 50,374 (34.2%) | 2184 (6%) | 2109 (9%) | 54,667 (26.4%) |
| Emergency | 96,877 (65.8%) | 34,159 (94%) | 21,428 (91%) | 152,464 (73.6%) |
| Surgical treatment | ||||
| Non-surgical | 69,147 (47%) | 27,692 (76.2%) | 16,701 (71%) | 113,540 (54.8%) |
| Surgical | 78,104 (53%) | 8651 (23.8%) | 6836 (29%) | 93,591 (45.2%) |
| SAPS-II score stratum | ||||
| 0–9 | 6467 (4.4%) | 755 (2.1%) | 517 (2.2%) | 7739 (3.7%) |
| 10–19 | 22,904 (15.6%) | 4199 (11.6%) | 2970 (12.6%) | 30,073 (14.5%) |
| 20–29 | 41,601 (28.3%) | 8476 (23.3%) | 6127 (26%) | 56,204 (27.1%) |
| 30–39 | 31,933 (21.7%) | 8404 (23.1%) | 5631 (23.9%) | 45,968 (22.2%) |
| 40–49 | 19,208 (13%) | 6190 (17%) | 3576 (15.2%) | 28,974 (14%) |
| 50–59 | 12,114 (8.2%) | 3829 (10.5%) | 2175 (9.2%) | 18,118 (8.7%) |
| 60–69 | 7277 (4.9%) | 2381 (6.6%) | 1360 (5.8%) | 11,018 (5.3%) |
| 70–79 | 3352 (2.3%) | 1198 (3.3%) | 680 (2.9%) | 5230 (2.5%) |
| 80–89 | 1466 (1%) | 540 (1.5%) | 294 (1.2%) | 2300 (1.1%) |
| ≥ 90 | 929 (0.6%) | 371 (1%) | 207 (0.9%) | 1507 (0.7%) |
| SAPS-II score | ||||
| Mean (SD) | 33.5 (17.2) | 37.7 (17.9) | 36.1 (17.4) | 34.5 (17.5) |
| Median [Min, Max] | 30 [0, 129] | 35 [0, 118] | 33 [0, 135] | 31 [0, 135] |
| TISS EXT score sum | ||||
| Mean (SD) | 127 (212) | 128 (194) | 116 (162) | 126 (204) |
| Median [Min, Max] | 62 [1, 6150] | 69 [2, 4270] | 66 [2, 6120] | 64 [1, 6150] |
| Missing | 176 (0.1%) | 13 (0%) | 9 (0%) | 198 (0.1%) |
| Length of stay (days) | ||||
| Mean (SD) | 3.05 (5.39) | 3.28 (5.35) | 2.91 (4.48) | 3.07 (5.29) |
| Median [Min, Max] | 1.1 [0, 136] | 1.6 [0.00139, 118] | 1.6 [0.00625, 169] | 1.22 [0, 169] |
| Outcome in hospital | ||||
| Survivor | 132,204 (89.8%) | 30,766 (84.7%) | 19,997 (85%) | 182,967 (88.3%) |
| Non-survivor | 15,047 (10.2%) | 5577 (15.3%) | 3540 (15%) | 24,164 (11.7%) |
SAPS-II simplified acute physiology score; LOS length of stay in the intensive care unit; TISS Therapeutic Intervention Scoring System; TISS EXT score sum includes the additional items described in the “Methods”
Fig. 2Changes over time in standardised mortality ratio (SMR) and standardised resource use ratios (SRURLOS. SRURTISS, costSRURLOS, costSRURTISS); box plots show the median, the first and third quartiles, and whiskers defined by 1.5 times the interquartile range; two-sided p value testing of no linear time trend: SRURTISS (Overall population) p = 0.02, SMR (Overall population) p < 0.001
Fig. 3Standardised resource use ratios (SRURLOS, SRURTISS) in relation to standardised mortality ratio (SMR) from 2008 to 2017. Filled circles: an ICU, circle size is proportional to the number of ICU admissions. Solid lines: Gaussian linear regression lines. Dashed lines: their 95% confidence intervals (slope estimates in eTable 4). Dotted horizontal and vertical lines: SRUR = 1 and SMR = 1
Fig. 4Bivariable and multivariable analyses of variables associated with standardised resource utilization ratios (SRURLOS, SRURTISS, costSRURLOS, costSRURTISS) and standardised mortality ratio (SMR). The main finding was that higher number of admissions/bed was consistently associated with lower SRUR but not with SMR: A one SD increase in admissions/bed was associated with a reduction of SRURLOS by 21.0%, 95% CI (27.1%, 14.4%), SRURTISS by 19.9%, 95% CI (27.4%, 11.6%), costSRURLOS by 22.5%, 95% CI (28.2%, 16.4%), costSRURTISS by 21.9%, 95% CI (27.5%, 15.8%).; admissions/bed was not significantly associated with SMR [effect estimate 2.0%, 95% CI (-8.2%, 5.5%)]. *Relative risk with 95% confidence intervals (values outside x-axis range are capped). Values > 1 indicate higher SRUR or SMR. The relative risk of 1.0 (dotted line) indicates an SRUR or SMR of 1. **reported variables adjusted for calendar year (bivariable), and in addition for all other listed variables (multivariable). Details for all variables in eTable8
| Severity of illness adjusted hospital mortality in intensive care patients has substantially decreased over time, without an increase in severity-adjusted resources use. The wide and independent variation in both mortality and resource use suggests that both should be used together and adjusted for severity of illness to compare performance of different ICUs or an individual ICU over time. |