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Artificial neural network model from a case series of COVID-19 patients: a prognostic analysis
BACKGROUND AND AIM: There is a need to determine which clinical variables predict the severity of COVID-19. We analyzed a series of critically ill COVID-19 patients to see if any of our dataset’s clinical variables were associated with patient outcomes. METHODS: We retrospectively analyzed the data...
Autores principales: | , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Mattioli 1885
2021
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8182608/ https://www.ncbi.nlm.nih.gov/pubmed/33988146 http://dx.doi.org/10.23750/abm.v92i2.11086 |
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author | Venturini, Sergio Orso, Daniele Cugini, Francesco Crapis, Massimo Fossati, Sara Callegari, Astrid Pellis, Tommaso Tomasello, Dario Carmelo Tonizzo, Maurizio Grembiale, Alessandro D’Andrea, Natascia Vetrugno, Luigi Bove, Tiziana |
author_facet | Venturini, Sergio Orso, Daniele Cugini, Francesco Crapis, Massimo Fossati, Sara Callegari, Astrid Pellis, Tommaso Tomasello, Dario Carmelo Tonizzo, Maurizio Grembiale, Alessandro D’Andrea, Natascia Vetrugno, Luigi Bove, Tiziana |
author_sort | Venturini, Sergio |
collection | PubMed |
description | BACKGROUND AND AIM: There is a need to determine which clinical variables predict the severity of COVID-19. We analyzed a series of critically ill COVID-19 patients to see if any of our dataset’s clinical variables were associated with patient outcomes. METHODS: We retrospectively analyzed the data of COVID-19 patients admitted to the ICU of the Hospital in Pordenone from March 11, 2020, to April 17, 2020. Patients’ characteristics of survivors and deceased groups were compared. The variables with a different distribution between the two groups were implemented in a generalized linear regression model (LM) and in an Artificial Neural Network (NN) model to verify the “robustness” of the association with mortality. RESULTS: In the considered period, we reviewed the data of 22 consecutive patients: 8 died. The causes of death were a severe respiratory failure (3), multi-organ failure (1), septic shock (1), pulmonary thromboembolism (2), severe hemorrhage (1). Lymphocyte and the platelet count were significantly lower in the group of deceased patients (p-value 0.043 and 0.020, respectively; cut-off values: 660/mm3; 280,000/mm3, respectively). Prothrombin time showed a statistically significant trend (p-value= 0.065; cut-off point: 16.8/sec). The LM model (AIC= 19.032), compared to the NN model (Mean Absolute Error, MAE = 0.02), was substantially alike (MSE 0.159 vs. 0.136). CONCLUSIONS: In the context of critically ill COVID-19 patients admitted to ICU, lymphocytopenia, thrombocytopenia, and lengthening of prothrombin time were strictly correlated with higher mortality. Additional clinical data are needed to be able to validate this prognostic score. (www.actabiomedica.it) |
format | Online Article Text |
id | pubmed-8182608 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | Mattioli 1885 |
record_format | MEDLINE/PubMed |
spelling | pubmed-81826082021-06-16 Artificial neural network model from a case series of COVID-19 patients: a prognostic analysis Venturini, Sergio Orso, Daniele Cugini, Francesco Crapis, Massimo Fossati, Sara Callegari, Astrid Pellis, Tommaso Tomasello, Dario Carmelo Tonizzo, Maurizio Grembiale, Alessandro D’Andrea, Natascia Vetrugno, Luigi Bove, Tiziana Acta Biomed Original Investigations/Commentaries BACKGROUND AND AIM: There is a need to determine which clinical variables predict the severity of COVID-19. We analyzed a series of critically ill COVID-19 patients to see if any of our dataset’s clinical variables were associated with patient outcomes. METHODS: We retrospectively analyzed the data of COVID-19 patients admitted to the ICU of the Hospital in Pordenone from March 11, 2020, to April 17, 2020. Patients’ characteristics of survivors and deceased groups were compared. The variables with a different distribution between the two groups were implemented in a generalized linear regression model (LM) and in an Artificial Neural Network (NN) model to verify the “robustness” of the association with mortality. RESULTS: In the considered period, we reviewed the data of 22 consecutive patients: 8 died. The causes of death were a severe respiratory failure (3), multi-organ failure (1), septic shock (1), pulmonary thromboembolism (2), severe hemorrhage (1). Lymphocyte and the platelet count were significantly lower in the group of deceased patients (p-value 0.043 and 0.020, respectively; cut-off values: 660/mm3; 280,000/mm3, respectively). Prothrombin time showed a statistically significant trend (p-value= 0.065; cut-off point: 16.8/sec). The LM model (AIC= 19.032), compared to the NN model (Mean Absolute Error, MAE = 0.02), was substantially alike (MSE 0.159 vs. 0.136). CONCLUSIONS: In the context of critically ill COVID-19 patients admitted to ICU, lymphocytopenia, thrombocytopenia, and lengthening of prothrombin time were strictly correlated with higher mortality. Additional clinical data are needed to be able to validate this prognostic score. (www.actabiomedica.it) Mattioli 1885 2021 2021-05-12 /pmc/articles/PMC8182608/ /pubmed/33988146 http://dx.doi.org/10.23750/abm.v92i2.11086 Text en Copyright: © 2020 ACTA BIO MEDICA SOCIETY OF MEDICINE AND NATURAL SCIENCES OF PARMA https://creativecommons.org/licenses/by-nc-sa/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License |
spellingShingle | Original Investigations/Commentaries Venturini, Sergio Orso, Daniele Cugini, Francesco Crapis, Massimo Fossati, Sara Callegari, Astrid Pellis, Tommaso Tomasello, Dario Carmelo Tonizzo, Maurizio Grembiale, Alessandro D’Andrea, Natascia Vetrugno, Luigi Bove, Tiziana Artificial neural network model from a case series of COVID-19 patients: a prognostic analysis |
title | Artificial neural network model from a case series of COVID-19 patients: a prognostic analysis |
title_full | Artificial neural network model from a case series of COVID-19 patients: a prognostic analysis |
title_fullStr | Artificial neural network model from a case series of COVID-19 patients: a prognostic analysis |
title_full_unstemmed | Artificial neural network model from a case series of COVID-19 patients: a prognostic analysis |
title_short | Artificial neural network model from a case series of COVID-19 patients: a prognostic analysis |
title_sort | artificial neural network model from a case series of covid-19 patients: a prognostic analysis |
topic | Original Investigations/Commentaries |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8182608/ https://www.ncbi.nlm.nih.gov/pubmed/33988146 http://dx.doi.org/10.23750/abm.v92i2.11086 |
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