| Literature DB >> 32354696 |
Hoyt Burdick1,2, Eduardo Pino1,2, Denise Gabel-Comeau1, Andrea McCoy3, Carol Gu4, Jonathan Roberts4, Sidney Le4, Joseph Slote4, Emily Pellegrini4, Abigail Green-Saxena4, Jana Hoffman5, Ritankar Das4.
Abstract
BACKGROUND: Severe sepsis and septic shock are among the leading causes of death in the USA. While early prediction of severe sepsis can reduce adverse patient outcomes, sepsis remains one of the most expensive conditions to diagnose and treat.Entities:
Keywords: computer methodologies; healthcare; information science; medical informatics
Mesh:
Year: 2020 PMID: 32354696 PMCID: PMC7245419 DOI: 10.1136/bmjhci-2019-100109
Source DB: PubMed Journal: BMJ Health Care Inform ISSN: 2632-1009
Hospital characteristics; geographical region, teaching status and size of hospitals included in this study
| Hospital characteristic | Clinical outcomes analysis |
| Geographical region | |
| Northeast | 1 |
| South | 3 |
| Midwest | 1 |
| West | 4 |
| Teaching status | |
| Teaching | 7 |
| Non-teaching | 2 |
| Hospital Size | |
| Small (<100 beds) | 3 |
| Medium (100–250 beds) | 2 |
| Large (>250 beds) | 4 |
Demographics—aggregated clinical and demographic characteristics of patients from nine hospitals used for clinical outcomes analysis
| Clinical outcomes analysis | ||
| Baseline | MLA | |
| Total no | 12 793 | 62 354 |
| Mean age (SD) | 45 (24.4) | 45 (24.0) |
| Male | 5429 (42.4) | 26 126 (41.9) |
| Female | 7364 (57.6) | 36 228 (58.1) |
| Unknown | — | — |
| White | 11 832 (87.7) | 54 635 (81.8) |
| Black | 594 (4.4) | 2469 (3.7) |
| Hispanic | 1063 (7.87) | 9609 (14.4) |
| Asian American | 10 (0.1) | 44 (0.1) |
| Unknown | — | — |
| Temperature | 36.8 (0.3) | 36.8 (0.3) |
| Respiratory rate | 18.2 (4.7) | 18.2 (4.1) |
| Systolic blood pressure | 127.0 (18.0) | 129.5 (19.1) |
| Diastolic blood pressure | 72.9 (11.0) | 75.1 (11.5) |
| Heart rate | 84.7 (17.3) | 86.1 (18.5) |
| Lactate | 1.9 (1.70) | 1.9 (1.86) |
| Creatinine | 1.4 (2.54) | 1.2 (1.70) |
| International normalised ratio | 1.2 (0.58) | 1.3 (0.90) |
| Platelets | 239.5 (77.1) | 241.9 (85.0) |
| SpO2 | 97.4 (1.6) | 97.4 (1.7) |
| White blood count | 8.4 (2.51) | 8.2 (2.03) |
| PaO2 | 101.7 (47.9) | 103.8 (51.8) |
| Bilirubin | 0.7 (1.3) | 0.7 (1.1) |
| FiO2 | 44.3 (20.4) | 46.6 (22.2) |
| pH | 7.4 (0.08) | 7.4 (0.09) |
Values are shown with percentages of total population or SD.
FiO2, fractional inspired oxygen; MLA, machine learning-based algorithm; PaO2, arterial oxygen tension (or pressure).
Sepsis-related patient outcomes table—analysis of in-hospital mortality, hospital length of stay and 30-day readmissions, in the baseline and MLA periods for sepsis-related patient
| Baseline period | MLA period | Reduction | |
| In-hospital mortality | 3.86% | 2.34% | 39.50% |
| Length of stay | 4.83 days | 3.27 days | 32.27% |
| 30-day readmission | 36.4% | 28.12% | 22.74% |
There were 12 793 patients in the baseline period, of whom, 3592 were included for analysis and 62 354 patients in the MLA period, of whom, 14 166 patients were included for analysis
MLA, machine learning-based algorithm.
Figure 1Patientoutcomes——differences in (A) in-hospital mortality, (B) hospital length of stay and (C) 30-day readmissions in the baseline period and the MLA period for sepsis-related patients. Use of the MLA was associated with a 39.5% reduction of in-hospital mortality (p<0.001), a 32.3% reduction in length of stay (p<0.001) and a 22.7% reduction in 30-day readmissions (p<0.001). MLA, machine learning-based algorithm.