| Literature DB >> 36184235 |
Azam Jahangirimehr1, Elham Abdolahi Shahvali2, Seyed Masoud Rezaeijo3, Azam Khalighi4, Azam Honarmandpour5, Fateme Honarmandpour6, Mostafa Labibzadeh7, Nasrin Bahmanyari8, Sahel Heydarheydari9.
Abstract
BACKGROUND & AIMS: Considering that no standard therapy has yet been found for the novel coronavirus disease (COVID-19), identifying severe cases as early as possible, and such that treatment procedures can be escalated seems necessary. Hence, the present study aimed to develop a machine learning (ML) approach for automated severity assessment of COVID-19 based on clinical and paraclinical characteristics like serum levels of zinc, calcium, and vitamin D.Entities:
Keywords: Automated prediction; COVID-19 severity; Machine learning
Mesh:
Substances:
Year: 2022 PMID: 36184235 PMCID: PMC9339089 DOI: 10.1016/j.clnesp.2022.07.011
Source DB: PubMed Journal: Clin Nutr ESPEN ISSN: 2405-4577
Fig. 1Study flowchart.
Comparison of patients' characteristics (demographical and clinical data) according to COVID-19-related severity.
| Patient Characteristics | Number of Patients/ | Disease Severity | p-value | |||
|---|---|---|---|---|---|---|
| Mild (n = 26) | Moderate (n = 30) | Severe (n = 37) | ||||
| Age (year) | 51.38 ± 15.75 | 42.2 ± 13.7 | 49.7 ± 15.4 | 59.1 ± 13.5 | 0.000∗ | |
| Gender | Female | 52 (55.9%) | 19 (36.5%) | 18 (34.6%) | 15 (28.8%) | |
| Underlying Diseases | Cardiovascular Disease | 20 (21.5%) | 1 (5.0%) | 7 (35.0%) | 12 (60.0%) | |
| Diabetes | 15 (16.1%) | 3 (20.0%) | 2 (13.3%) | 10 (66.7%) | 0.06 | |
| Hypertension | 10 (10.8%) | 1 (10.0%) | 3 (30.0%) | 6 (60.0%) | 0.292 | |
| Pulmonary Disease | 8 (8.6%) | 3 (37.5%) | 4 (50.0%) | 1 (12.5%) | 0.249 | |
| No Underlying Diseases | 44 (47.3%) | 17 (38.6%) | 16 (36.4%) | 11 (25.0%) | ||
| Disease Symptoms | Cough | 56 (60.2%) | 15 (26.8%) | 19 (33.9%) | 22 (39.3%) | 0.905 |
| Dyspnea | 38 (40.9%) | 11 (28.9%) | 11 (28.9%) | 16 (42.1%) | 0.849 | |
| Fever | 27 (29.0%) | 10 (37.0%) | 5 (18.5%) | 12 (44.4%) | 0.196 | |
| Muscle Pain | 18 (19.4%) | 7 (38.9%) | 5 (27.8%) | 6 (33.3%) | 0.515 | |
| Anorexia | 18 (19.4%) | 10 (55.6%) | 3 (16.7%) | 5 (27.8%) | ||
| Fatigue | 12 (12.9%) | 5 (41.7%) | 3 (25.0%) | 4 (33.3%) | 0.523 | |
| Headache | 11 (11.8%) | 4 (36.4%) | 4 (36.4%) | 3 (27.3%) | 0.647 | |
| Digestive Symptoms | 8 (8.6%) | 2 (25.0%) | 4 (50.0%) | 2 (25.0%) | 0.486 | |
| Sore Throat | 6 (6.5%) | 2 (33.3%) | 3 (50.0%) | 1 (16.7%) | 0.460 | |
| Anosmia | 2 (2.2%) | 0 (0.0%) | 2 (100.0%) | 0 (0.0%) | 0.117 | |
∗significance level: p < 0.05.
Comparison of patients' characteristics (paraclinical data) according to COVID-19-related severity.
| Patient Characteristics | Mean ± Std dev | Disease Severity | p-value | |||
|---|---|---|---|---|---|---|
| Mild (n = 26) | Moderate (n = 30) | Severe (n = 37) | ||||
| Blood Test Results | Zinc (μg/dL) | 67.61 ± 15.10 | 69.1 ± 15.2 | 69.4 ± 17.8 | 65.0 ± 12.4 | 0.417 |
| Calcium (mg/dL) | 9.14 ± 0.39 | 9.2 ± 0.3 | 9.1 ± 0.4 | 9.0 ± 0.3 | ||
| Vitamin D (ng/mL) | 11.21 ± 21.40 | 20.0 ± 10.4 | 19.1 ± 11.2 | 24.5 ± 11.4 | 0.077 | |
| FBS (mg/dL) | 151.56 ± 80.78 | 105.5 ± 36.4 | 140.9 ± 78.5 | 173.1 ± 86.6 | ||
| BUN (mg/dL) | 17.97 ± 12.89 | 13.3 ± 3.6 | 21.0 ± 18.5 | 18.4 ± 11.0 | 0.301 | |
| Cr (mg/dL) | 1.08 ± 0.48 | 0.9 ± 0.1 | 1.1 ± 0.6 | 1.1 ± 0.4 | 0.169 | |
| NA (mmol/L) | 138.29 ± 12.43 | 140.4 ± 1.8 | 139.3 ± 4.4 | 136.3 ± 18.2 | 0.344 | |
| K (mmol/L) | 4.92 ± 4.77 | 6.6 ± 9.6 | 4.2 ± 0.3 | 4.4 ± 0.5 | 0.236 | |
| WBC (109/L) | 6.81 ± 2.63 | 6.9 ± 2.3 | 6.4 ± 3.3 | 6.9 ± 2.3 | 0.814 | |
| RBC (1012/L) | 4.53 ± 0.64 | 4.6 ± 0.4 | 4.3 ± 0.5 | 4.5 ± 0.7 | 0.329 | |
| Hb (g/dL) | 12.46 ± 1.55 | 13.1 ± 1.4 | 12.4 ± 1.6 | 12.1 ± 1.5 | 0.06 | |
| HCT (%) | 37.96 ± 4.16 | 39.0 ± 4.6 | 36.8 ± 4.3 | 38.1 ± 3.7 | 0.280 | |
| PLT (109/L) | 224.96 ± 84.71 | 232.2 ± 61.7 | 193.6 ± 71.0 | 240.1 ± 98.4 | 0.140 | |
| Lym (109/L) | 27.65 ± 18.19 | 27.4 ± 16.5 | 29.2 ± 16.6 | 26.7 ± 20.2 | 0.520 | |
| Neut (109/L) | 67.24 ± 12.53 | 68.0 ± 12.2 | 62.9 ± 15.2 | 69.5 ± 10.2 | 0.174 | |
| PH | 7.37 ± 0.06 | 7.3 ± 0.04 | 7.3 ± 0.04 | 7.3 ± 0.08 | 0.869 | |
| pCO2 (mmHg) | 37.54 ± 6.68 | 38.2 ± 4.5 | 37.2 ± 7.0 | 37.2 ± 8.0 | 0.947 | |
| pO2 (mmHg) | 34.56 ± 11.83 | 35.0 ± 12.0 | 34.4 ± 12.6 | 34.5 ± 11.1 | 0.101 | |
| HCO3 (meq/L) | 22.03 ± 2.35 | 21.5 ± 0.6 | 21.6 ± 2.5 | 22.6 ± 2.9 | 0.554 | |
| ESR (mm/hr) | 37.42 ± 24.87 | 33.8 ± 17.7 | 22.2 ± 12.1 | 47.0 ± 29.2 | 0.097 | |
∗significance level: p < 0.05.
FBS: Fasting Blood Sugar, BUN: Blood Urea Nitrogen, Cr: Creatinine, Na: Sodium, K: Potassium, WBC: White Blood Cells, RBC: Red Blood Cells, Hb: Hemoglobin, HCT: Hematocrit, PLT: Platelet, Lym: Lymphocyte, Neut: Neutrophils, PH, pO2, pCO2, and HCO3: Arterial Blood Gas Test, ESR: Erythrocyte Sedimentation Rate.
Comparison of the ML models based on the performance metrics.
| Model | Performance Metrics (%) | ||||
|---|---|---|---|---|---|
| Precision | Recall | F1 score | Accuracy | AUC | |
| SVM | |||||
| DT | 93.5 | 91 | 92.3 | 93 | 92 |
| RF | 94 | 93 | 93.5 | 93 | 93 |
SVM: Support Vector Machine, DT: Decision Tree, RF: Random Forest.
Fig. 2The ROC curves of the ML models for the five-fold cross-validation.