From classical approaches to artificial intelligence, old and new tools for PDAC risk stratification and prediction
Riccardo Farinella
1
,
Alessio Felici
1
,
Giulia Peduzzi
1
,
Sabrina Gloria Giulia Testoni
2
,
Eithne Costello
3
,
Paolo Aretini
4
,
Ricardo Blazquez-Encinas
5
,
Elif Oz
6
,
Aldo Pastore
4
,
Matteo Tacelli
7
,
BURÇAK OTLU
8
,
Daniele Campa
1
,
Manuel Gentiluomo
1
2
3
4
Fondazione Pisana per la Scienza, San Giuliano Terme, Italy
|
5
Publication type: Journal Article
Publication date: 2025-07-01
scimago Q1
wos Q1
SJR: 4.016
CiteScore: 35.0
Impact factor: 15.7
ISSN: 1044579X, 10963650
Abstract
Pancreatic ductal adenocarcinoma (PDAC) is recognized as one of the most lethal malignancies, characterized by late-stage diagnosis and limited therapeutic options. Risk stratification has traditionally been performed using epidemiological studies and genetic analyses, through which key risk factors, including smoking, diabetes, chronic pancreatitis, and inherited predispositions, have been identified. However, the multifactorial nature of PDAC has often been insufficiently addressed by these methods, leading to limited precision in individualized risk assessments. Advances in artificial intelligence (AI) have been proposed as a transformative approach, allowing the integration of diverse datasets—spanning genetic, clinical, lifestyle, and imaging data into dynamic models capable of uncovering novel interactions and risk profiles. In this review, the evolution of PDAC risk stratification is explored, with classical epidemiological frameworks compared to AI-driven methodologies. Genetic insights, including genome-wide association studies and polygenic risk scores, are discussed, alongside AI models such as machine learning, radiomics, and deep learning. Strengths and limitations of these approaches are evaluated, with challenges in clinical translation, such as data scarcity, model interpretability, and external validation, addressed. Finally, future directions are proposed for combining classical and AI-driven methodologies to develop scalable, personalized predictive tools for PDAC, with the goal of improving early detection and patient outcomes.
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Farinella R. et al. From classical approaches to artificial intelligence, old and new tools for PDAC risk stratification and prediction // Seminars in Cancer Biology. 2025. Vol. 112. pp. 71-92.
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Farinella R., Felici A., Peduzzi G., Testoni S. G. G., Costello E., Aretini P., Blazquez-Encinas R., Oz E., Pastore A., Tacelli M., OTLU B., Campa D., Gentiluomo M. From classical approaches to artificial intelligence, old and new tools for PDAC risk stratification and prediction // Seminars in Cancer Biology. 2025. Vol. 112. pp. 71-92.
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TY - JOUR
DO - 10.1016/j.semcancer.2025.03.004
UR - https://linkinghub.elsevier.com/retrieve/pii/S1044579X25000525
TI - From classical approaches to artificial intelligence, old and new tools for PDAC risk stratification and prediction
T2 - Seminars in Cancer Biology
AU - Farinella, Riccardo
AU - Felici, Alessio
AU - Peduzzi, Giulia
AU - Testoni, Sabrina Gloria Giulia
AU - Costello, Eithne
AU - Aretini, Paolo
AU - Blazquez-Encinas, Ricardo
AU - Oz, Elif
AU - Pastore, Aldo
AU - Tacelli, Matteo
AU - OTLU, BURÇAK
AU - Campa, Daniele
AU - Gentiluomo, Manuel
PY - 2025
DA - 2025/07/01
PB - Elsevier
SP - 71-92
VL - 112
SN - 1044-579X
SN - 1096-3650
ER -
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@article{2025_Farinella,
author = {Riccardo Farinella and Alessio Felici and Giulia Peduzzi and Sabrina Gloria Giulia Testoni and Eithne Costello and Paolo Aretini and Ricardo Blazquez-Encinas and Elif Oz and Aldo Pastore and Matteo Tacelli and BURÇAK OTLU and Daniele Campa and Manuel Gentiluomo},
title = {From classical approaches to artificial intelligence, old and new tools for PDAC risk stratification and prediction},
journal = {Seminars in Cancer Biology},
year = {2025},
volume = {112},
publisher = {Elsevier},
month = {jul},
url = {https://linkinghub.elsevier.com/retrieve/pii/S1044579X25000525},
pages = {71--92},
doi = {10.1016/j.semcancer.2025.03.004}
}
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