Machine Learning-Based Model Helps to Decide which Patients May Benefit from Pancreatoduodenectomy

Author:

Vigia Emanuel123,Ramalhete Luís245ORCID,Filipe Edite1,Bicho Luís1,Nobre Ana1,Mira Paulo1,Macedo Maria1,Aguiar Catarina1,Corado Sofia1ORCID,Chumbinho Beatriz1,Balaia Jorge1,Custódio Pedro1,Gonçalves João1,Marques Hugo P.1

Affiliation:

1. Hepatobiliopancreatic and Transplantation Center, Hospital de Curry Cabral-CHULC, 1050-099 Lisbon, Portugal

2. Faculdade de Ciências Médicas, NOVA Medical School, Universidade NOVA de Lisboa, 1169-056 Lisbon, Portugal

3. CEDOC—Chronic Diseases Research Center, Nova Medical School, 1150-082 Lisbon, Portugal

4. Blood and Transplantation Center of Lisbon, Instituto Português do Sangue e da Transplantação, Alameda das Linhas de Torres, no. 117, 1769-001 Lisboa, Portugal

5. iNOVA4Health-Advancing Precision Medicine, RG11: Reno-Vascular Diseases Group, Faculdade de Ciências Médicas, NOVA Medical School, Universidade NOVA de Lisboa, 1169-056 Lisbon, Portugal

Abstract

Pancreatic ductal adenocarcinoma is an invasive tumor with similar incidence and mortality rates. Pancreaticoduodenectomy has morbidity and mortality rates of up to 60% and 5%, respectively. The purpose of our study was to assess preoperative features contributing to unfavorable 1-year survival prognosis. Study Design: Retrospective, single-center study evaluating the impact of preoperative features on short-term survival outcomes in head PDAC patients. Forty-four prior features of 172 patients were tested using different supervised machine learning models. Patient records were randomly divided into training and validation sets (80–20%, respectively), and model performance was assessed by area under curve (AUC) and classification accuracy (CA). Additionally, 33 patients were included as an independent revalidation or holdout dataset group. Results: Eleven relevant features were identified: age, sex, Ca-19-9, jaundice, ERCP with biliary stent, neutrophils, lymphocytes, lymphocyte/neutrophil ratio, neoadjuvant treatment, imaging tumor size, and ASA. Tree regression (tree model) and logistic regression (LR) performed better than the other tested models. The tree model had an AUC = 0.92 and CA = 0.85. LR had an AUC = 0.74 and CA = 0.78, allowing the development of a nomogram based on absolute feature significance. The best performance model was the tree model which allows us to have a decision tree to help clinical decisions. Discussion and conclusions: Based only on preoperative data, it was possible to predict 1-year survival (91.5% vs. 78.1% alive and 70.9% vs. 76.6% deceased for the tree model and LR, respectively). These results contribute to informed decision-making in the selection of which patients with PDAC can benefit from pancreatoduodenectomy. A machine learning algorithm was developed for the recognition of unfavorable 1-year survival prognosis in patients with pancreatic ductal adenocarcinoma. This will contribute to the identification of patients who would benefit from pancreatoduodenectomy. In our cohort, the tree regression model had an AUC = 0.92 and CA = 0.85, whereas the logistic regression had an AUC = 0.74 and CA = 0.78. To further inform decision-making, a decision tree based on tree regression was developed.

Publisher

MDPI AG

Subject

General Medicine

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