# Use of machine learning to identify protective factors for death from COVID-19 in the ICU: a retrospective study

**Authors:** Lander Dos Santos, Lincoln Luis Silva, Fernando Castilho Pelloso, Vinicius Maia, Constanza Pujals, Deise Helena Borghesan, Maria Dalva Carvalho, Raíssa Bocchi Pedroso, Sandra Marisa Pelloso

PMC · DOI: 10.7717/peerj.17428 · 2024-06-12

## TL;DR

This study uses machine learning to identify factors that increase the chances of survival for ICU patients with severe COVID-19.

## Contribution

The novel contribution is the use of decision trees and logistic regression to identify clinical predictors of ICU discharge in COVID-19 patients.

## Key findings

- Female patients had a 136% higher chance of discharge compared to male patients.
- The absence of bladder and central venous catheters significantly increased discharge chances.
- Shorter duration of mechanical ventilation correlated with better outcomes.

## Abstract

Patients in serious condition due to COVID-19 often require special care in intensive care units (ICUs). This disease has affected over 758 million people and resulted in 6.8 million deaths worldwide. Additionally, the progression of the disease may vary from individual to individual, that is, it is essential to identify the clinical parameters that indicate a good prognosis for the patient. Machine learning (ML) algorithms have been used for analyzing complex medical data and identifying prognostic indicators. However, there is still an urgent need for a model to elucidate the predictors related to patient outcomes. Therefore, this research aimed to verify, through ML, the variables involved in the discharge of patients admitted to the ICU due to COVID-19.

In this study, 126 variables were collected with information on demography, hospital length stay and outcome, chronic diseases and tumors, comorbidities and risk factors, complications and adverse events, health care, and vital indicators of patients admitted to an ICU in southern Brazil. These variables were filtered and then selected by a ML algorithm known as decision trees to identify the optimal set of variables for predicting patient discharge using logistic regression. Finally, a confusion matrix was performed to evaluate the model’s performance for the selected variables.

Of the 532 patients evaluated, 180 were discharged: female (16.92%), with a central venous catheter (23.68%), with a bladder catheter (26.13%), and with an average of 8.46- and 23.65-days using bladder catheter and submitted to mechanical ventilation, respectively. In addition, the chances of discharge increase by 14% for each additional day in the hospital, by 136% for female patients, 716% when there is no bladder catheter, and 737% when no central venous catheter is used. However, the chances of discharge decrease by 3% for each additional year of age and by 9% for each other day of mechanical ventilation. The performance of the training data presented a balanced accuracy of 0.81, sensitivity of 0.74, specificity of 0.88, and the kappa value was 0.64. The test performance had a balanced accuracy of 0.85, sensitivity 0.75, specificity 0.95, and kappa value of 0.73. The McNemar test found that there were no significant differences in the error rates in the training and test data, suggesting good classification. This work showed that female, the absence of a central venous catheter and bladder catheter, shorter mechanical ventilation, and bladder catheter duration were associated with a greater chance of hospital discharge. These results may help develop measures that lead to a good prognosis for the patient.

## Linked entities

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

## Full-text entities

- **Diseases:** death from (MESH:D003643), tumors (MESH:D009369), COVID-19 (MESH:D000086382)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

6 figures with captions in the complete paper: https://tomesphere.com/paper/PMC11179634/full.md

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Source: https://tomesphere.com/paper/PMC11179634