Introduction: Distal Cholangiocarcinoma (dCCA) represents a challenge in hepatobiliary oncology, that requires nuanced post-resection prognostic modeling. Conventional staging criteria may oversimplify dCCA complexities, prompting the exploration of novel prognostic factors and methodologies, including machine learning algorithms. This study aims to develop a machine learning predictive model for recurrence after resected dCCA. Material and methods: This retrospective multicentric observational study included patients with dCCA from 13 international centers who underwent curative pancreaticoduodenectomy (PD). A LASSO-regularized Cox regression model was used to feature selection, examine the path of the coefficient and create a model to predict recurrence. Internal and external validation and model performance were assessed using the C-index score. Additionally, a web application was developed to enhance the clinical use of the algorithm. Results: Among 654 patients, LNR (Lymph Node Ratio) 15, neural invasion, N stage, surgical radicality, and differentiation grade emerged as significant predictors of disease-free survival (DFS). The model showed the best discrimination capacity with a C-index value of 0.8 (CI 95 %, 0.77%–0.86 %) and highlighted LNR15 as the most influential factor. Internal and external validations showed the model's robustness and discriminative ability with an Area Under the Curve of 92.4 % (95 % CI, 88.2%–94.4 %) and 91.5 % (95 % CI, 88.4%–93.5 %), respectively. The predictive model is available at https://imim.shinyapps.io/LassoCholangioca/. Conclusions: This study pioneers the integration of machine learning into prognostic modeling for dCCA, yielding a robust predictive model for DFS following PD. The tool can provide information to both patients and healthcare providers, enhancing tailored treatments and follow-up.
A machine learning predictive model for recurrence of resected distal cholangiocarcinoma: Development and validation of predictive model using artificial intelligence / Perez, Marc; Palnaes Hansen, Carsten; Burdio, Fernando; Sanchez-Velázquez, Patricia; Giuliani, Antonio; Lancellotti, Francesco; de Liguori-Carino, Nicola; Malleo, Giuseppe; Marchegiani, Giovanni; Podda, Mauro; Pisanu, Adolfo; De Luca, Giuseppe Massimiliano; Anselmo, Alessandro; Siragusa, Leandro; Kobbelgaard Burgdorf, Stefan; Tschuor, Christoph; Cacciaguerra, Andrea Benedetti; Koh, Ye Xin; Masuda, Yoshio; Hao Xuan, Mark Yeo; Seeger, Nico; Breitenstein, Stefan; Grochola, Filip Lukasz; Di Martino, Marcello; Secanella, Luis; Busquets, Juli; Dorcaratto, Dimitri; Mora-Oliver, Isabel; Ingallinella, Sara; Salvia, Roberto; Abu Hilal, Mohammad; Aldrighetti, Luca; Ielpo, Benedetto. - In: EUROPEAN JOURNAL OF SURGICAL ONCOLOGY. - ISSN 0748-7983. - 50:7(2024). [10.1016/j.ejso.2024.108375]
A machine learning predictive model for recurrence of resected distal cholangiocarcinoma: Development and validation of predictive model using artificial intelligence
Cacciaguerra, Andrea Benedetti;
2024-01-01
Abstract
Introduction: Distal Cholangiocarcinoma (dCCA) represents a challenge in hepatobiliary oncology, that requires nuanced post-resection prognostic modeling. Conventional staging criteria may oversimplify dCCA complexities, prompting the exploration of novel prognostic factors and methodologies, including machine learning algorithms. This study aims to develop a machine learning predictive model for recurrence after resected dCCA. Material and methods: This retrospective multicentric observational study included patients with dCCA from 13 international centers who underwent curative pancreaticoduodenectomy (PD). A LASSO-regularized Cox regression model was used to feature selection, examine the path of the coefficient and create a model to predict recurrence. Internal and external validation and model performance were assessed using the C-index score. Additionally, a web application was developed to enhance the clinical use of the algorithm. Results: Among 654 patients, LNR (Lymph Node Ratio) 15, neural invasion, N stage, surgical radicality, and differentiation grade emerged as significant predictors of disease-free survival (DFS). The model showed the best discrimination capacity with a C-index value of 0.8 (CI 95 %, 0.77%–0.86 %) and highlighted LNR15 as the most influential factor. Internal and external validations showed the model's robustness and discriminative ability with an Area Under the Curve of 92.4 % (95 % CI, 88.2%–94.4 %) and 91.5 % (95 % CI, 88.4%–93.5 %), respectively. The predictive model is available at https://imim.shinyapps.io/LassoCholangioca/. Conclusions: This study pioneers the integration of machine learning into prognostic modeling for dCCA, yielding a robust predictive model for DFS following PD. The tool can provide information to both patients and healthcare providers, enhancing tailored treatments and follow-up.| File | Dimensione | Formato | |
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