# Using Machine Learning Methods to Predict Hospitalization Based on Brixia Score and Patient Clinical Data (from the COVID-19 Pandemic)

**Authors:** Mirela Juković, Aleksandra Mijatović, Radmila Perić, Ljiljana Dražetin, Dijana Nićiforović, Dejan B. Stojanović

PMC · DOI: 10.3390/medicina62020392 · 2026-02-17

## TL;DR

This study uses machine learning to predict hospitalization in COVID-19 patients based on chest X-ray scores and clinical data.

## Contribution

The novel aspect is evaluating multiple ML models to predict hospitalization using Brixia score and clinical variables during the pandemic.

## Key findings

- SVM had the highest AUC (0.851) but low sensitivity for hospitalization prediction.
- Decision Tree was the most balanced model in terms of AUC, accuracy, sensitivity, and specificity.
- Brixia score was identified as the strongest predictor of hospitalization.

## Abstract

Background and Objectives: The use of a standard chest X-ray has become a routine diagnostic method in daily clinical practice for the evaluation of a wide range of lung diseases. During the COVID-19 pandemic, significant challenges occurred in achieving accurate diagnostics and selecting appropriate therapies for patients with different symptoms of diseases. The aim was to cross-correlate radiological findings and clinical data and to develop models to predict hospitalization status, while evaluating the prognostic importance of the different variables. Materials and Methods: A set of variables including Brixia score, and clinical data: gender, age, hypertension, and diabetes was used to explore their association with patient hospitalization. Four different machine learning (ML) methods (Decision Tree—DT, Logistic Regression—LR, Random Forest—RF and Support Vector Machine—SVM) were used for hospitalization outcome prediction. Results: SVM appeared to be with the highest AUC (0.851), with low sensitivity, while DT was the most balanced in the context of AUC, accuracy, sensitivity, and specificity. Brixia score appeared to be the most important predictor for hospitalization within the group of predictors (gender, age, hypertension and diabetes). Conclusions: All four ML models that used in this study provided “good” prediction capabilities (AUC > 0.8), with the exception of SVM that had low sensitivity, emphasizing Brixia score as the strongest predictor of hospitalization. Application of ML methods have considerable potential in various aspects of medical clinical practice and future studies could potentially indicate the importance of applying the ML model in more precise diagnosis, therapy and prognosis of the patient’s clinical condition.

## Linked entities

- **Diseases:** COVID-19 (MONDO:0100096)

## Full-text entities

- **Genes:** CRP (C-reactive protein) [NCBI Gene 1401] {aka PTX1}
- **Diseases:** rheumatoid arthritis (MESH:D001172), HOSPITALIZED (MESH:D003428), corona disease (MESH:D018352), Death (MESH:D003643), HYPERTENSION (MESH:D006973), DT (MESH:D020195), COVID-19 (MESH:D000086382), cough (MESH:D003371), cardiac disease (MESH:D006331), leukaemia (MESH:D015458), melanoma (MESH:D008545), inflammation (MESH:D007249), injury to (MESH:D014947), Parkinson's disease (MESH:D010300), cancer (MESH:D009369), DIABETES (MESH:D003920), Down's syndrome (MESH:D004314), muscle weakness (MESH:D018908), lung abnormalities (MESH:D008171), Alzheimer's disease (MESH:D000544), asthma (MESH:D001249), cystic fibrosis (MESH:D003550), obesity (MESH:D009765), pneumonia (MESH:D011014), cardiomyopathy (MESH:D009202), pulmonary thromboembolism (MESH:D011655), fever (MESH:D005334)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

8 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12942398/full.md

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Source: https://tomesphere.com/paper/PMC12942398