Early Warning Scores in Patients with Suspected COVID-19 Infection in Emergency Departments
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design, Population and Setting
2.2. Participants
2.3. Outcome
2.4. Selection of Early Warning Scales
2.5. Predictors and Data Abstraction
2.6. Data Analyses
3. Results
3.1. Patient Characteristics
3.2. EWS Discrimination for the Global Cohort
3.3. EWS Discrimination for the Global Cohort
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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NEWS2 | 3 | 2 | 1 | 0 | 1 | 2 | 3 |
Pulse (bpm) | ≤40 | 41–50 | 51–90 | 91–110 | 111–130 | ≥131 | |
BR (bpm) | ≤8 | 9–11 | 12–20 | 21–24 | ≥25 | ||
T (°C) | ≤35 | 35.1–36 | 36.1–38 | 38.1–39 | ≥39.1 | ||
SBP (mmHg) | ≤90 | 91–100 | 101–110 | 111–219 | ≥220 | ||
SpO2 (%) Scale 1 | ≤91 | 92–93 | 94–95 | ≥96 | |||
SpO2 (%) Scale 2 1 | ≤83 | 84–85 | 86–87 | 88–92 ≥93 air | 93–94 Oxygen | 95–96 Oxygen | ≥97 Oxygen |
Air oxygen | Oxygen | Air | |||||
AVPU (scale) | A | V, P, U | |||||
qSOFA | 1 | ||||||
BR (bpm) | ≥22 | ||||||
SBP (mmHg) | ≤100 | ||||||
GCS (points) | ≤13 | ||||||
MREMS | 0 | 1 | 2 | 3 | 4 | 5 | 6 |
Pulse (bpm) | 70–109 | 55–69 110–139 | 40–54 140–179 | <39 >179 | |||
BR (bpm) | 12–24 | 10–11 25.34 | 6–9 | 35–49 | <5 >49 | ||
SBP (mmHg) | 70–109 | 50–69 110–129 | 130–159 | ≤49 >159 | |||
SpO2 (%) | >89 | 88–89 | 75–85 | <75 | |||
GCS (scale) | 14–15 | 11–13 | 8–10 | 5–7 | 3–4 | ||
Age (years old) | <45 | 45–54 | 55–64 | 65–74 | >74 | ||
RAPS | 0 | 1 | 2 | 3 | 4 | 5 | 6 |
Pulse (bpm) | 70–109 | 55–69 110–139 | 40–54 140–179 | <39 >179 | |||
BR (bpm) | 12–24 | 10–11 25.34 | 6–9 | 35–49 | <5 >49 | ||
MAP (mmHg) | 70–109 | 50–69 110–129 | 130–159 | ≤49 >159 | |||
GCS (scale) | 14–15 | 11–13 | 8–10 | 5–7 | 3–4 |
Total Cohort (n = 663) | SARS-CoV-2 (n = 261) | Non-SARS-CoV-2 (n = 402) | p Value | |
---|---|---|---|---|
Outcomes, mortality | ||||
2-days | 55 (8.3) | 32 (12.3) | 23 (5.7) | 0.004 |
Demographic characteristics | ||||
Sex, female | 341 (51.4) | 141 (54.0) | 200 (49.8) | 0.282 |
Age (years) | 82 (70–88) | 80 (69–88) | 83 (70–88) | 0.348 |
Age groups (years) | ||||
18–49 | 53 (8.0) | 23 (8.8) | 30 (7.5) | |
50–74 | 160 (24.1) | 65 (24.9) | 95 (23.6) | 0.476 |
≥ 75 | 446 (67.3) | 171 (65.5) | 275 (68.4) | 0.611 |
Ambulance | ||||
BLS | 617 (93.1) | 248 (95.0) | 369 (91.8) | |
ALS | 46 (6.9) | 13 (5.0) | 33 (8.2) | 0.114 |
Nursing home | 300 (45.2) | 119 (45.6) | 181 (45.0) | 0.886 |
Clinical characteristics | ||||
BR (bpm) | 16 (12–24) | 17 (12–25) | 16 (12–23) | 0.133 |
Saturation (%) | 95 (91–98) | 94 (89–97) | 96 (92–98) | 0.002 |
Suppl. O2 | 120 (18.1) | 41 (15.7) | 79 (19.7) | 0.198 |
SBP (mmHg) | 127 (112–146) | 128 (116–148) | 126 (108–145) | 0.056 |
MBP (mmHg) | 88 (79–101) | 89 (82–102) | 87 (77–100) | 0.076 |
Heart rate (bpm) | 86 (73–101) | 95 (75–100) | 86 (73–101) | 0.880 |
T (°C) | 36.4 (36.0–37.0) | 36.4 (36.0–37.0) | 36.4 (36.0–36.9) | 0.953 |
GCS points) | 15 (14–15) | 15 (14–15) | 15 (14–15) | 0.781 |
CACI (points) | 5 (4–7) | 5 (3–6) | 6 (4–8) | 0.001 |
Inpatients | 531 (80.1) | 215 (82.4) | 316 (78.6) | 0.236 |
ICU | 28 (4.2) | 19 (7.3) | 9 (2.2) | 0.002 |
SARS-CoV-2 (n = 261) | Non-SARS-CoV-2 (n = 402) | |||||
---|---|---|---|---|---|---|
Survivors (n = 229) | Nonsurvivors (n = 32) | p Value | Survivors (n = 379) | Nonsurvivors (n = 23) | p Value | |
Demographic characteristics | ||||||
Sex, female | 123 (53.7) | 18 (56.3) | 0.788 | 187 (49.3) | 13 (56.5) | 0.505 |
Age (years) | 79 (68–88) | 85 (79–92) | 0.031 | 82 (69–88) | 86 (80–92) | 0.006 |
Nursing home | 98 (42.8) | 21 (65.6) | 0.015 | 164 (43.3) | 17 (73.9) | 0.004 |
Clinical characteristics | ||||||
BR (bpm) | 16 (12–25) | 24 (12–31) | 0.023 | 16 (12–23) | 22 (12–28) | 0.090 |
Saturation (%) | 95 (90–97) | 89 (84–96) | 0.009 | 96 (92–98) | 92 (81–97) | 0.017 |
Suppl. O2 | 29 (12.7) | 12 (37.5) | <0.001 | 65 (17.2) | 14 (60.1) | <0.001 |
SBP (mmHg) | 128 (117–146) | 129 (112–149) | 0.188 | 128 (111–145) | 102 (88–122) | 0.003 |
MBP (mmHg) | 90 (82–102) | 89 (77–102) | 0.451 | 88 (78–101) | 71 (62–92) | 0.005 |
Heart rate (bpm) | 85 (75–98) | 86 (66–108) | 0.848 | 83 (73–101) | 88 (50–108) | 0.943 |
T (°C) | 36.4 (36.0–37.0) | 36.2 (36.0–37.3) | 0.285 | 36.4 (36.0–36.9) | 36.4 (36.0–37.4) | 0.400 |
GCS points) | 15 (14–15) | 13 (8–15) | 0.001 | 15 (14–15) | 10 (10–14) | <0.001 |
EWS (points) | ||||||
NEWS2 | 4 (2–7) | 10 (5–12) | <0.001 | 4 (2–6) | 11 (7–13) | <0.001 |
qSOFA | 1 (0–1) | 2 (1–2) | <0.001 | 1 (0–1) | 2 (1–2) | <0.001 |
MREMS | 5 (4–7) | 9 (6–12) | <0.001 | 5 (4–7) | 10 (8–13) | <0.001 |
RAPS | 1 (1–3) | 4 (1–5) | <0.001 | 2 (0–3) | 5 (4–7) | <0.001 |
CACI (points) | 5 (3–6) | 6 (5–8) | 0.002 | 6 (4–8) | 7 (6–11) | 0.003 |
Inpatients | 184 (80.3) | 31 (96.9) | 0.022 | 294 (77.6) | 22 (95.7) | 0.040 |
ICU | 19 (8.3) | 0 | 0.091 | 7 (1.8) | 2 (8.7) | 0.031 |
NEWS2 | qSOFA | MREMS | RAPS | |
---|---|---|---|---|
Global | 0.825 (0.75–0.89) | 0.761 (0.68–0.83) | 0.803 (0.73–0.87) | 0.775 (0.70–0.85) |
SARS-CoV-2 | 0.804 (0.71–0.89) | 0.736 (0.63–0.83) | 0.764 (0.66–0.86) | 0.750 (0.64–0.82) |
Non-SARS-CoV-2 | 0.863 (0.76–0.95) | 0.799 (0.68–0.91) | 0.860 (0.76–0.95) | 0.815 (0.70–0.92) |
Cutoff | Se | Sp | PPV | NPV | LR (+) | LR (−) | OR | |
---|---|---|---|---|---|---|---|---|
NEWS2 | ||||||||
Global | 7 | 78.2 (65.6–87.1) | 73.4 (69.7–76.7) | 21.0 (16.0–27.1) | 97.4 (95.5–98.5) | 2.93 (2.42–3.56) | 0.30 (0.18–0.49) | 9.87 (5.08–19.1) |
SARS-CoV-2 | 8 | 71.9 (54.6–84.4) | 76.4 (70.5–81.5) | 29.9 (20.8–40.8) | 95.1 (91.0–97.4) | 3.05 (2.22–4.19 | 0.37 (0.21–0.65) | 8.28 (3.62–18.9) |
Non-SARS-CoV-2 | 7 | 87.0 (67.9–95.5) | 75.2 (70.6–79.3) | 17.5 (11.7–25.6) | 99.0 (97.0–99.6) | 3.51 (2.77–4.44) | 0.17 (0.06–0.50) | 20.2 (5.87–69.5) |
qSOFA | ||||||||
Global | 2 | 58.2 (45.0–70.3) | 81.4 (78.1–84.3) | 22.1 (16.1–29.5) | 95.6 (93.4–97.0) | 3.13 (2.37–4.14) | 0.51 (0.37–0.71) | 6.09 (3.43–10.8) |
SARS-CoV-2 | 2 | 53.1 (36.4–69.1) | 82.1 (76.6–86.5) | 29.3 (19.2–42.0) | 92.6 (88.2–95.5) | 2.97 (1.93–4.55) | 0.57 (0.39–0.84) | 5.20 (2.40–11.2) |
Non-SARS-CoV-2 | 2 | 65.2 (44.9–81.2) | 81.0 (76.7–84.6) | 17.2 (10.7–26.5) | 97.5 (95.1–98.7) | 3.43 (2.39–4.94) | 0.43 (0.24–0.76) | 7.99 (3.26–19.5) |
MREMS | ||||||||
Global | 8 | 69.1 (56.0–79.7) | 80.6 (77.3–83.5) | 24.4 (18.3–31.7) | 96.6 (94.7–97.9) | 3.56 (2.80–4.52) | 0.38 (0.26–0.57) | 9.28 (5.06–17.1) |
SARS-CoV-2 | 9 | 59.4 (42.3–74.5) | 87.8 (82.9–91.4) | 40.4 (27.6–54.7) | 93.9 (89.9–96.4) | 4.86 (3.10–7.72) | 0.46 (0.30–0.71) | 10.4 (4.67–23.5) |
Non-SARS-CoV-2 | 8 | 78.3 (58.1–90.3) | 81.8 (77.6–85.4) | 20.7 (13.5–30.4) | 98.4 (96.3–99.3) | 4.30 (3.17–5.82) | 0.27 (0.12–0.58) | 16.1 (5.81–45.1) |
RAPS | ||||||||
Global | 4 | 67.3 (54.1–78.2) | 84.2 (81.1–86.9) | 27.8 (20.9–36.0) | 96.6 (94.7–97.8) | 4.26 (3.28–5.53) | 0.39 (0.26–0.57) | 10.9 (5.99–20.1) |
SARS-CoV-2 | 4 | 59.4 (42.3–74.5) | 84.3 (79.0–88.4) | 34.5 (23.4–47.7) | 93.7 (89.5–96.3) | 3.78 (2.49–5.72) | 0.48 (0.31–0.74) | 7.84 (3.56–17.2) |
Non-SARS-CoV-2 | 4 | 78.3 (58.1–90.3) | 84.2 (80.2–87.5) | 23.1 (15.1–33.6) | 98.5 (96.4–99.3) | 4.94 (3.60–6.79) | 0.26 (0.12–0.56) | 19.1 (6.84–53.5) |
NEWS | qSOFA | RAPS | MREMS | ||
---|---|---|---|---|---|
Global | NEWS | ||||
qSOFA | 0.0006 | ||||
RAPS | 0.049 | 0.651 | |||
MREMS | 0.272 | 0.150 | 0.243 | ||
SARS-CoV-2 | NEWS | ||||
qSOFA | 0.019 | ||||
RAPS | 0.075 | 0.739 | |||
MREMS | 0.171 | 0.510 | 0.697 | ||
Non-SARS-CoV-2 | NEWS | ||||
qSOFA | 0.002 | ||||
RAPS | 0.299 | 0.757 | |||
MREMS | 0.924 | 0.096 | 0.081 |
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Martín-Rodríguez, F.; Martín-Conty, J.L.; Sanz-García, A.; Rodríguez, V.C.; Rabbione, G.O.; Cebrían Ruíz, I.; Oliva Ramos, J.R.; Castro Portillo, E.; Polonio-López, B.; Enríquez de Salamanca Gambarra, R.; et al. Early Warning Scores in Patients with Suspected COVID-19 Infection in Emergency Departments. J. Pers. Med. 2021, 11, 170. https://doi.org/10.3390/jpm11030170
Martín-Rodríguez F, Martín-Conty JL, Sanz-García A, Rodríguez VC, Rabbione GO, Cebrían Ruíz I, Oliva Ramos JR, Castro Portillo E, Polonio-López B, Enríquez de Salamanca Gambarra R, et al. Early Warning Scores in Patients with Suspected COVID-19 Infection in Emergency Departments. Journal of Personalized Medicine. 2021; 11(3):170. https://doi.org/10.3390/jpm11030170
Chicago/Turabian StyleMartín-Rodríguez, Francisco, José L. Martín-Conty, Ancor Sanz-García, Virginia Carbajosa Rodríguez, Guillermo Ortega Rabbione, Irene Cebrían Ruíz, José R. Oliva Ramos, Enrique Castro Portillo, Begoña Polonio-López, Rodrigo Enríquez de Salamanca Gambarra, and et al. 2021. "Early Warning Scores in Patients with Suspected COVID-19 Infection in Emergency Departments" Journal of Personalized Medicine 11, no. 3: 170. https://doi.org/10.3390/jpm11030170
APA StyleMartín-Rodríguez, F., Martín-Conty, J. L., Sanz-García, A., Rodríguez, V. C., Rabbione, G. O., Cebrían Ruíz, I., Oliva Ramos, J. R., Castro Portillo, E., Polonio-López, B., Enríquez de Salamanca Gambarra, R., Gómez-Escolar Pérez, M., & López-Izquierdo, R. (2021). Early Warning Scores in Patients with Suspected COVID-19 Infection in Emergency Departments. Journal of Personalized Medicine, 11(3), 170. https://doi.org/10.3390/jpm11030170