| Literature DB >> 35456249 |
Masoud Baikpour1, Alex Carlos2, Ryan Morasse2, Hannah Gissel3, Victor Perez-Gutierrez2, Jessica Nino2, Jose Amaya-Suarez2, Fatimatu Ali2, Talya Toledano4, Joseph Arampulikan4, Menachem Gold4, Usha Venugopal2, Anjana Pillai2, Kennedy Omonuwa2, Vidya Menon2.
Abstract
Predicting the mortality risk of patients with Coronavirus Disease 2019 (COVID-19) can be valuable in allocating limited medical resources in the setting of outbreaks. This study assessed the role of a chest X-ray (CXR) scoring system in a multivariable model in predicting the mortality of COVID-19 patients by performing a single-center, retrospective, observational study including consecutive patients admitted with a confirmed diagnosis of COVID-19 and an initial CXR. The CXR severity score was calculated by three radiologists with 12 to 15 years of experience in thoracic imaging, based on the extent of lung involvement and density of lung opacities. Logistic regression analysis was used to identify independent predictive factors for mortality to create a predictive model. A validation dataset was used to calculate its predictive value as the AUROC. A total of 628 patients (58.1% male) were included in this study. Age (p < 0.001), sepsis (p < 0.001), S/F ratio (p < 0.001), need for mechanical ventilation (p < 0.001), and the CXR severity score (p = 0.005) were found to be independent predictive factors for mortality. We used these variables to develop a predictive model with an AUROC of 0.926 (0.891, 0.962), which was significantly higher than that of the WHO COVID severity classification, 0.853 (0.798, 0.909) (one-tailed p-value = 0.028), showing that our model can accurately predict mortality of hospitalized COVID-19 patients.Entities:
Keywords: COVID-19; chest X-ray; mortality; predictive model; severity score
Year: 2022 PMID: 35456249 PMCID: PMC9025720 DOI: 10.3390/jcm11082157
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.964
Figure 1Flow chart of the study population.
Figure 2Unilateral–unilobar—hazy, right lower lobe infiltrate.
Figure 3Unilateral–multilobar—hazy infiltrates throughout the right lung.
Figure 4Bilateral—not diffuse—hazy infiltrates with a left predominance.
Figure 5Diffuse bilateral—hazy infiltrates throughout both lungs.
Figure 6Dense infiltrate in the left lower lobe.
Figure 7Dense infiltrate in the right upper lobe.
Descriptive statistics of the variables included in the study.
| Variable | Total ( | Status at Discharge | ||
|---|---|---|---|---|
| Alive ( | Expired ( | |||
| Age * | 59.6 (16.0) | 55.4 (15.7) | 67.1 (13.9) | |
| Gender | Female | 263 (41.9%) | 174 (43.3%) | 89 (39.4%) |
| Male | 365 (58.1%) | 228 (56.7%) | 137 (60.6%) | |
| Race | Hispanic | 409 (65.1%) | 252 (62.7%) | 157 (69.5%) |
| African American | 165 (26.3%) | 112 (27.9%) | 53 (23.5%) | |
| White | 21 (3.3%) | 16 (4.0%) | 5 (2.2%) | |
| Asian | 13 (2.1%) | 9 (2.2%) | 4 (1.8%) | |
| Other | 20 (3.2%) | 13 (3.2%) | 7 (3.1%) | |
| Smoking | 37 (6.0%) | 27 (6.8%) | 10 (4.6%) | |
| BMI | Underweight | 7 (1.2%) | 3 (0.8%) | 4 (1.9%) |
| Normal | 95 (16.3%) | 62 (16.7%) | 33 (15.7%) | |
| Overweight | 187 (32.1%) | 126 (33.9%) | 61 (29.0%) | |
| Obese | 293 (50.3%) | 181 (48.7%) | 112 (53.3%) | |
| Past Medical History | ||||
| Asthma/COPD | 112 (17.8%) | 67 (16.7%) | 45 (19.9%) | |
| Hypertension | 280 (44.6) | 182 (45.3%) | 98 (43.4%) | |
| CHF | 47 (7.5%) | 23 (5.7%) | 24 (10.6%) | |
| CKD | 76 (12.1%) | 40 (10.0%) | 36 (15.9%) | |
| DM | 269 (42.8%) | 152 (37.8%) | 117 (51.8%) | |
| Rheumatological Diseases | 22 (3.5%) | 10 (2.5%) | 12 (5.3%) | |
| Cirrhosis | 7 (1.1%) | 6 (1.5%) | 1 (0.4%) | |
| Transplant | 4 (0.6%) | 2 (0.5%) | 2 (0.9%) | |
| Immunosuppression | 14 (2.2%) | 8 (2.0%) | 6 (2.7%) | |
| HIV | 16 (2.5%) | 11 (2.7%) | 5 (2.2%) | |
| Cancer | 39 (6.2%) | 15 (3.7%) | 24 (10.6%) | |
| Symptoms | ||||
| Fever | 408 (65.0%) | 275 (68.4%) | 133 (58.8%) | |
| Cough | 447 (71.2%) | 302 (75.1%) | 145 (64.2%) | |
| Shortness of Breath | 435 (69.3%) | 254 (63.2%) | 181 (80.1%) | |
| Gastrointestinal Symptoms | 141 (22.5%) | 110 (27.4%) | 31 (13.7%) | |
| Altered Mental Status/Seizures | 80 (12.7%) | 32 (8.0%) | 48 (21.2%) | |
| Days from Onset of Symptoms ** | 4.0 (2.0, 7.0) | 5.0 (3.0, 7.0) | 4.0 (2.0, 7.0) | |
| Sepsis Syndrome | 189 (30.1%) | 53 (13.2%) | 136 (60.2%) | |
| S/F ratio ** | 303.1 (102.1, 447.6) | 342.9 (263.9, 457.1) | 102.2 (97.0, 266.7) | |
| COVID Severity | Moderate | 259 (41.2%) | 247 (61.4%) | 12 (5.3%) |
| Severe | 178 (28.3%) | 112 (27.9%) | 66 (29.2%) | |
| Critical | 191 (30.4%) | 43 (10.7%) | 148 (65.5%) | |
| Length of Stay ** | 6.0 (3.0, 11.0) | 5.0 (2.0, 10.0) | 7.0 (4.0, 11.0) | |
| Mechanical Ventilation on Admission | 134 (21.3%) | 28 (7.0%) | 106 (46.9%) | |
| Mechanical Ventilation | 251 (40.0%) | 67 (16.7%) | 184 (81.4%) | |
| Days to Intubation ** | 0.0 (0.0, 3.0) | 3.0 (0.0, 8.0) | 0.0 (0.0, 2.0) | |
| Duration of Mechanical Ventilation ** | 7.0 (4.0, 12.0) | 11.0 (4.0, 26.0) | 7.0 (4.0, 10.0) | |
| CXR Severity Score ** | 3.0 (1.0, 4.0) | 3.0 (0.0, 3.0) | 3.0 (3.0, 6.0) | |
BMI: Body Mass Index, COPD: Chronic Obstructive Pulmonary Disease, CHF: Congestive Heart Failure, CKD: Chronic Kidney Disease, DM: Diabetes Mellitus, HIV: Human Immune deficiency Virus, CXR: Chest X-ray; * Mean (Standard deviation); ** Median (25th percentile, 75th percentile).
Distribution and frequency of radiographic findings.
|
| |
| No | 149 (23.7%) |
| Yes | 479 (76.3%) |
|
| |
|
| |
| Unilateral Unilobar | 64 (13.4%) |
| Unilateral Multilobar | 21 (4.4%) |
| Bilateral—not diffuse | 63 (13.2%) |
| Diffuse Bilateral | 331 (69.1%) |
|
| |
| Hazy or Interstitial Opacities | 357 (74.5%) |
| Dense Opacities | 122 (25.5%) |
|
| |
| Diffuse-Bilateral with hazy opacities | 256 (53.4%) |
| Diffuse-Bilateral with dense opacities | 75 (15.7%) |
| Unilateral-Unilobar with Hazy opacities | 49 (10.2%) |
| Bilateral with predominance with hazy opacities | 37 (7.7%) |
| Bilateral with predominance with dense opacities | 26 (5.4%) |
| Unilateral-Multilobar with Hazy opacities | 15 (3.1%) |
| Unilateral-Unilobar with dense opacities | 15 (3.1%) |
| Unilateral-Multilobar with dense opacities | 6 (1.3%) |
Binary logistic regression analysis of the independent factors predicting mortality in COVID-19 patients.
| Variables | Adjusted OR (95% CI) | |
|---|---|---|
| Age | 1.063 (1.043, 1.083) | <0.001 |
| Gender | 1.433 (0.865, 2.374) | 0.162 |
| Smoking | 0.962 (0.330, 2.799) | 0.943 |
| Asthma/COPD | 1.045 (0.552, 1.977) | 0.893 |
| CHF | 0.864 (0.345, 2.165) | 0.755 |
| CKD | 0.886 (0.426, 1.842) | 0.745 |
| DM | 1.238 (0.757, 2.023) | 0.395 |
| Cancer | 1.579 (0.618, 4.037) | 0.340 |
| Days from Onset of Symptoms | 0.991 (0.936, 1.050) | 0.766 |
| Sepsis Syndrome | 7.353 (4.434, 12.194) | <0.001 |
| S/F ratio | 0.995 (0.993, 0.997) | <0.001 |
| Mechanical Ventilation on Admission | 5.389 (2.931, 9.908) | <0.001 |
| CXR Severity Score | 1.184 (1.054, 1.330) | 0.005 |
OR: Odds Ratio, CI: Confidence Interval, COPD: Chronic Obstructive Pulmonary Disease, CHF: Congestive Heart Failure, CKD: Chronic Kidney Disease, DM: Diabetes Mellitus, CXR: Chest X-ray.
Predictive model developed in the derivation dataset (N = 439).
| Model | Coefficient | Adjusted OR (95% CI) | |
|---|---|---|---|
| Age | 0.052 | <0.001 | 1.053 (1.032, 1.074) |
| Sepsis Syndrome | 1.865 | <0.001 | 6.459 (3.667, 11.379) |
| S/F ratio | −0.005 | <0.001 | 0.995 (0.993, 0.997) |
| Mechanical Ventilation on Admission | 1.606 | <0.001 | 4.981 (2.519, 9.850) |
| CXR Severity Score | 0.132 | 0.046 | 1.141 (1.003, 1.299) |
| Constant | −3.867 | <0.001 | 0.021 |
OR: Odds Ratio, CI: Confidence Interval, CXR: Chest X-ray.
Figure 8Comparing the AUROC of the predictive model with that of COVID severity in predicting mortality of COVID-19 patients in the validation dataset (N = 189).