Acute Pancreatitis (AP) is a common gastrointestinal disease with variable clinical outcomes, ranging from mild, self-limited cases to severe episodes that can be life-threatening. Early identification of patients at risk of progression from Mild Acute Pancreatitis (MAP) to severe/necrotizing pancreatitis is critical for early intervention, reducing morbidity, and optimizing resource allocation. This study proposes a radiomic classification model aimed at stratifying patients with MAP according to their progression. In contrast to the state-of-the-art, Model Checking is used to address the problem of the explosion of states in mathematical models. We retrospectively analyzed radiological data from a cohort of patients with MAP, obtaining an average metric of 80% which indicates strong classification ability. The use of Formal Methods allows us to have greater interpretability of the results. This model-building strategy can serve as a valuable tool for medical specialists, providing early insights for personalized management plans, and for computer scientists, increasing knowledge of the disease in the scientific community.

Early prediction of the evolution and prognosis of mild acute pancreatitis through Dual Source-CT and Formal Methods

Sorgente, Valeria;Varriano, Giulia;Nardone, Vittoria;Avella, Pasquale;Spiezia, Salvatore;Rocca, Aldo;Santone, Antonella;Brunese, Maria Chiara
2025-01-01

Abstract

Acute Pancreatitis (AP) is a common gastrointestinal disease with variable clinical outcomes, ranging from mild, self-limited cases to severe episodes that can be life-threatening. Early identification of patients at risk of progression from Mild Acute Pancreatitis (MAP) to severe/necrotizing pancreatitis is critical for early intervention, reducing morbidity, and optimizing resource allocation. This study proposes a radiomic classification model aimed at stratifying patients with MAP according to their progression. In contrast to the state-of-the-art, Model Checking is used to address the problem of the explosion of states in mathematical models. We retrospectively analyzed radiological data from a cohort of patients with MAP, obtaining an average metric of 80% which indicates strong classification ability. The use of Formal Methods allows us to have greater interpretability of the results. This model-building strategy can serve as a valuable tool for medical specialists, providing early insights for personalized management plans, and for computer scientists, increasing knowledge of the disease in the scientific community.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11695/154129
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