HB-EGF Plasmatic Level Contributes to the Development of Early Risk Prediction Nomogram for Severe COVID-19 Cases.
Alexandra Ioana MoatarAimee Rodica ChisDiana NituscaCristian Iulian OanceaCatalin MarianIoan-Ovidiu SirbuPublished in: Biomedicines (2024)
(1) Background: Heparin-Binding Epidermal Growth Factor-like Growth Factor (HB-EGF) is involved in wound healing, cardiac hypertrophy, and heart development processes. Recently, circulant HB-EGF was reported upregulated in severely hospitalized COVID-19 patients. However, the clinical correlations of HB-EGF plasma levels with COVID-19 patients' characteristics have not been defined yet. In this study, we assessed the plasma HB-EGF correlations with the clinical and paraclinical patients' data, evaluated its predictive clinical value, and built a risk prediction model for severe COVID-19 cases based on the resulting significant prognostic markers. (2) Methods: Our retrospective study enrolled 75 COVID-19 patients and 17 control cases from May 2020 to September 2020. We quantified plasma HB-EGF levels using the sandwich ELISA technique. Correlations between HB-EGF plasma levels with clinical and paraclinical patients' data were calculated using two-tailed Spearman and Point-Biserial tests. Significantly upregulated parameters for severe COVID-19 cases were identified and selected to build a multivariate logistic regression prediction model. The clinical significance of the prediction model was assessed by risk prediction nomogram and decision curve analyses. (3) Results: HB-EGF plasma levels were significantly higher in the severe COVID-19 subgroup compared to the controls ( p = 0.004) and moderate cases ( p = 0.037). In the severe COVID-19 group, HB-EGF correlated with age ( p = 0.028), pulse ( p = 0.016), dyspnea ( p = 0.014) and prothrombin time (PT) ( p = 0.04). The multivariate risk prediction model built on seven identified risk parameters (age p = 0.043, HB-EGF p = 0.0374, Fibrinogen p = 0.009, PT p = 0.008, Creatinine p = 0.026, D-Dimers p = 0.024 and delta miR-195 p < 0.0001) identifies severe COVID-19 with AUC = 0.9556 ( p < 0.0001). The decision curve analysis revealed that the nomogram model is clinically relevant throughout a wide threshold probability range. (4) Conclusions: Upregulated HB-EGF plasma levels might serve as a prognostic factor for severe COVID-19 and help build a reliable risk prediction nomogram that improves the identification of high-risk patients at an early stage of COVID-19.
Keyphrases
- growth factor
- sars cov
- coronavirus disease
- prognostic factors
- early onset
- early stage
- end stage renal disease
- respiratory syndrome coronavirus
- ejection fraction
- chronic kidney disease
- newly diagnosed
- metabolic syndrome
- machine learning
- radiation therapy
- lymph node metastasis
- decision making
- transcription factor
- patient reported outcomes
- atrial fibrillation
- big data
- neoadjuvant chemotherapy
- deep learning
- study protocol
- bioinformatics analysis