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Prediction of hospital mortality in intensive care unit patients from clinical and laboratory data: A machine learning approach.
Caires Silveira, Elena; Mattos Pretti, Soraya; Santos, Bruna Almeida; Santos Corrêa, Caio Fellipe; Madureira Silva, Leonardo; Freire de Melo, Fabrício.
Afiliação
  • Caires Silveira E; Multidisciplinary Institute of Health, Federal University of Bahia, Vitória da Conquista 45-029094, Brazil.
  • Mattos Pretti S; Multidisciplinary Institute of Health, Federal University of Bahia, Vitória da Conquista 45-029094, Brazil.
  • Santos BA; Multidisciplinary Institute of Health, Federal University of Bahia, Vitória da Conquista 45-029094, Brazil.
  • Santos Corrêa CF; Multidisciplinary Institute of Health, Federal University of Bahia, Vitória da Conquista 45-029094, Brazil.
  • Madureira Silva L; Multidisciplinary Institute of Health, Federal University of Bahia, Vitória da Conquista 45-029094, Brazil.
  • Freire de Melo F; Multidisciplinary Institute of Health, Federal University of Bahia, Vitória da Conquista 45-029094, Brazil. freiremeloufba@gmail.com.
World J Crit Care Med ; 11(5): 317-329, 2022 Sep 09.
Article em En | MEDLINE | ID: mdl-36160934
BACKGROUND: Intensive care unit (ICU) patients demand continuous monitoring of several clinical and laboratory parameters that directly influence their medical progress and the staff's decision-making. Those data are vital in the assistance of these patients, being already used by several scoring systems. In this context, machine learning approaches have been used for medical predictions based on clinical data, which includes patient outcomes. AIM: To develop a binary classifier for the outcome of death in ICU patients based on clinical and laboratory parameters, a set formed by 1087 instances and 50 variables from ICU patients admitted to the emergency department was obtained in the "WiDS (Women in Data Science) Datathon 2020: ICU Mortality Prediction" dataset. METHODS: For categorical variables, frequencies and risk ratios were calculated. Numerical variables were computed as means and standard deviations and Mann-Whitney U tests were performed. We then divided the data into a training (80%) and test (20%) set. The training set was used to train a predictive model based on the Random Forest algorithm and the test set was used to evaluate the predictive effectiveness of the model. RESULTS: A statistically significant association was identified between need for intubation, as well predominant systemic cardiovascular involvement, and hospital death. A number of the numerical variables analyzed (for instance Glasgow Coma Score punctuations, mean arterial pressure, temperature, pH, and lactate, creatinine, albumin and bilirubin values) were also significantly associated with death outcome. The proposed binary Random Forest classifier obtained on the test set (n = 218) had an accuracy of 80.28%, sensitivity of 81.82%, specificity of 79.43%, positive predictive value of 73.26%, negative predictive value of 84.85%, F1 score of 0.74, and area under the curve score of 0.85. The predictive variables of the greatest importance were the maximum and minimum lactate values, adding up to a predictive importance of 15.54%. CONCLUSION: We demonstrated the efficacy of a Random Forest machine learning algorithm for handling clinical and laboratory data from patients under intensive monitoring. Therefore, we endorse the emerging notion that machine learning has great potential to provide us support to critically question existing methodologies, allowing improvements that reduce mortality.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies / Risk_factors_studies Idioma: En Revista: World J Crit Care Med Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Brasil País de publicação: Estados Unidos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies / Risk_factors_studies Idioma: En Revista: World J Crit Care Med Ano de publicação: 2022 Tipo de documento: Article País de afiliação: Brasil País de publicação: Estados Unidos