TY - JOUR
T1 - Prediction of Severe Acute Pancreatitis at a Very Early Stage of the Disease Using Artificial Intelligence Techniques, Without Laboratory Data or Imaging Tests
T2 - The PANCREATIA Study
AU - Villasante, Sara
AU - Fernandes, Nair
AU - Perez, Marc
AU - Cordobés, Miguel Angel
AU - Piella, Gemma
AU - Martinez, María
AU - Gomez-Gavara, Concepción
AU - Blanco, Laia
AU - Alberti, Piero
AU - Charco, Ramón
AU - Pando Rau, Elizabeth Paola
AU - Galiana, Carmen
AU - Gonzalez, Carolina
AU - Ausania, Fabio
AU - Harold, Jimmy
AU - Jimmy, Nils
AU - Ramirez, Elena
AU - Salord, Silvia
AU - Sorribas, Maria
AU - Tasayco, Stephanie
N1 - Copyright © 2024 Wolters Kluwer Health, Inc. All rights reserved.
PY - 2024/11/5
Y1 - 2024/11/5
N2 - OBJECTIVE: To evaluate machine learning models' performance in predicting acute pancreatitis severity using early-stage variables while excluding laboratory and imaging tests.SUMMARY BACKGROUND DATA: Severe acute pancreatitis (SAP) affects approximately 20% of acute pancreatitis (AP) patients and is associated with high mortality rates. Accurate early prediction of SAP and in-hospital mortality is crucial for effective management. Traditional scores such as APACHE-II and BISAP are complex and require laboratory tests, while early predictive models are lacking. Machine learning (ML) has shown promising results in predictive modelling, potentially outperforming traditional methods.METHODS: We analysed data from a prospective database of AP patients admitted to Vall d'Hebron Hospital from November 2015 to January 2022. Inclusion criteria were adults diagnosed with AP according to the 2012 Atlanta classification. Data included basal characteristics, current medication, and vital signs. We developed machine learning models to predict SAP, in-hospital mortality, and intensive care unit (ICU) admission. The modelling process included two stages: Stage 0, which used basal characteristics and medication, and Stage 1, which included data from Stage 0 and vital signs.RESULTS: Out of 634 cases, 594 were analysed. The Stage 0 model showed AUC values of 0.698 for mortality, 0.721 for ICU admission, and 0.707 for persistent organ failure. The Stage 1 model improved performance with AUC values of 0.849 for mortality, 0.786 for ICU admission, and 0.783 for persistent organ failure. The models demonstrated comparable or superior performance to APACHE-II and BISAP scores.CONCLUSIONS: The ML models showed good predictive capacity for SAP, ICU admission, and mortality using early-stage data without laboratory or imaging tests. This approach could revolutionise AP patients' initial triage and management, providing a personalised prediction method based on early clinical data.
AB - OBJECTIVE: To evaluate machine learning models' performance in predicting acute pancreatitis severity using early-stage variables while excluding laboratory and imaging tests.SUMMARY BACKGROUND DATA: Severe acute pancreatitis (SAP) affects approximately 20% of acute pancreatitis (AP) patients and is associated with high mortality rates. Accurate early prediction of SAP and in-hospital mortality is crucial for effective management. Traditional scores such as APACHE-II and BISAP are complex and require laboratory tests, while early predictive models are lacking. Machine learning (ML) has shown promising results in predictive modelling, potentially outperforming traditional methods.METHODS: We analysed data from a prospective database of AP patients admitted to Vall d'Hebron Hospital from November 2015 to January 2022. Inclusion criteria were adults diagnosed with AP according to the 2012 Atlanta classification. Data included basal characteristics, current medication, and vital signs. We developed machine learning models to predict SAP, in-hospital mortality, and intensive care unit (ICU) admission. The modelling process included two stages: Stage 0, which used basal characteristics and medication, and Stage 1, which included data from Stage 0 and vital signs.RESULTS: Out of 634 cases, 594 were analysed. The Stage 0 model showed AUC values of 0.698 for mortality, 0.721 for ICU admission, and 0.707 for persistent organ failure. The Stage 1 model improved performance with AUC values of 0.849 for mortality, 0.786 for ICU admission, and 0.783 for persistent organ failure. The models demonstrated comparable or superior performance to APACHE-II and BISAP scores.CONCLUSIONS: The ML models showed good predictive capacity for SAP, ICU admission, and mortality using early-stage data without laboratory or imaging tests. This approach could revolutionise AP patients' initial triage and management, providing a personalised prediction method based on early clinical data.
UR - https://portalrecerca.uab.cat/en/publications/69a35a37-ce01-450c-a340-f08e15f02c13
UR - http://www.scopus.com/inward/record.url?scp=85209145855&partnerID=8YFLogxK
UR - https://www.mendeley.com/catalogue/e896d8fe-3363-3373-9bb7-28d3b47f6603/
U2 - 10.1097/SLA.0000000000006579
DO - 10.1097/SLA.0000000000006579
M3 - Article
C2 - 39498559
SN - 0003-4932
JO - Annals of Surgery
JF - Annals of Surgery
ER -