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Use of Machine-Learning Algorithms in Intensified Preoperative Therapy of Pancreatic Cancer to Predict Individual Risk of Relapse
Background: Although surgical resection is the only potentially curative treatment for pancreatic cancer (PC), long-term outcomes of this treatment remain poor. The aim of this study is to describe the feasibility of a neoadjuvant treatment with induction polychemotherapy (IPCT) followed by chemorad...
Autores principales: | , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
MDPI
2019
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6562932/ https://www.ncbi.nlm.nih.gov/pubmed/31052270 http://dx.doi.org/10.3390/cancers11050606 |
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author | Sala Elarre, Pablo Oyaga-Iriarte, Esther Yu, Kenneth H. Baudin, Vicky Arbea Moreno, Leire Carranza, Omar Chopitea Ortega, Ana Ponz-Sarvise, Mariano Mejías Sosa, Luis D. Rotellar Sastre, Fernando Larrea Leoz, Blanca Iragorri Barberena, Yohana Subtil Iñigo, Jose C. Benito Boíllos, Alberto Pardo, Fernando Rodríguez Rodríguez, Javier |
author_facet | Sala Elarre, Pablo Oyaga-Iriarte, Esther Yu, Kenneth H. Baudin, Vicky Arbea Moreno, Leire Carranza, Omar Chopitea Ortega, Ana Ponz-Sarvise, Mariano Mejías Sosa, Luis D. Rotellar Sastre, Fernando Larrea Leoz, Blanca Iragorri Barberena, Yohana Subtil Iñigo, Jose C. Benito Boíllos, Alberto Pardo, Fernando Rodríguez Rodríguez, Javier |
author_sort | Sala Elarre, Pablo |
collection | PubMed |
description | Background: Although surgical resection is the only potentially curative treatment for pancreatic cancer (PC), long-term outcomes of this treatment remain poor. The aim of this study is to describe the feasibility of a neoadjuvant treatment with induction polychemotherapy (IPCT) followed by chemoradiation (CRT) in resectable PC, and to develop a machine-learning algorithm to predict risk of relapse. Methods: Forty patients with resectable PC treated in our institution with IPCT (based on mFOLFOXIRI, GEMOX or GEMOXEL) followed by CRT (50 Gy and concurrent Capecitabine) were retrospectively analyzed. Additionally, clinical, pathological and analytical data were collected in order to perform a 2-year relapse-risk predictive population model using machine-learning techniques. Results: A R0 resection was achieved in 90% of the patients. After a median follow-up of 33.5 months, median progression-free survival (PFS) was 18 months and median overall survival (OS) was 39 months. The 3 and 5-year actuarial PFS were 43.8% and 32.3%, respectively. The 3 and 5-year actuarial OS were 51.5% and 34.8%, respectively. Forty-percent of grade 3-4 IPCT toxicity, and 29.7% of grade 3 CRT toxicity were reported. Considering the use of granulocyte colony-stimulating factors, the number of resected lymph nodes, the presence of perineural invasion and the surgical margin status, a logistic regression algorithm predicted the individual 2-year relapse-risk with an accuracy of 0.71 (95% confidence interval [CI] 0.56–0.84, p = 0.005). The model-predicted outcome matched 64% of the observed outcomes in an external dataset. Conclusion: An intensified multimodal neoadjuvant approach (IPCT + CRT) in resectable PC is feasible, with an encouraging long-term outcome. Machine-learning algorithms might be a useful tool to predict individual risk of relapse. A small sample size and therapy heterogeneity remain as potential limitations. |
format | Online Article Text |
id | pubmed-6562932 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2019 |
publisher | MDPI |
record_format | MEDLINE/PubMed |
spelling | pubmed-65629322019-06-17 Use of Machine-Learning Algorithms in Intensified Preoperative Therapy of Pancreatic Cancer to Predict Individual Risk of Relapse Sala Elarre, Pablo Oyaga-Iriarte, Esther Yu, Kenneth H. Baudin, Vicky Arbea Moreno, Leire Carranza, Omar Chopitea Ortega, Ana Ponz-Sarvise, Mariano Mejías Sosa, Luis D. Rotellar Sastre, Fernando Larrea Leoz, Blanca Iragorri Barberena, Yohana Subtil Iñigo, Jose C. Benito Boíllos, Alberto Pardo, Fernando Rodríguez Rodríguez, Javier Cancers (Basel) Article Background: Although surgical resection is the only potentially curative treatment for pancreatic cancer (PC), long-term outcomes of this treatment remain poor. The aim of this study is to describe the feasibility of a neoadjuvant treatment with induction polychemotherapy (IPCT) followed by chemoradiation (CRT) in resectable PC, and to develop a machine-learning algorithm to predict risk of relapse. Methods: Forty patients with resectable PC treated in our institution with IPCT (based on mFOLFOXIRI, GEMOX or GEMOXEL) followed by CRT (50 Gy and concurrent Capecitabine) were retrospectively analyzed. Additionally, clinical, pathological and analytical data were collected in order to perform a 2-year relapse-risk predictive population model using machine-learning techniques. Results: A R0 resection was achieved in 90% of the patients. After a median follow-up of 33.5 months, median progression-free survival (PFS) was 18 months and median overall survival (OS) was 39 months. The 3 and 5-year actuarial PFS were 43.8% and 32.3%, respectively. The 3 and 5-year actuarial OS were 51.5% and 34.8%, respectively. Forty-percent of grade 3-4 IPCT toxicity, and 29.7% of grade 3 CRT toxicity were reported. Considering the use of granulocyte colony-stimulating factors, the number of resected lymph nodes, the presence of perineural invasion and the surgical margin status, a logistic regression algorithm predicted the individual 2-year relapse-risk with an accuracy of 0.71 (95% confidence interval [CI] 0.56–0.84, p = 0.005). The model-predicted outcome matched 64% of the observed outcomes in an external dataset. Conclusion: An intensified multimodal neoadjuvant approach (IPCT + CRT) in resectable PC is feasible, with an encouraging long-term outcome. Machine-learning algorithms might be a useful tool to predict individual risk of relapse. A small sample size and therapy heterogeneity remain as potential limitations. MDPI 2019-04-30 /pmc/articles/PMC6562932/ /pubmed/31052270 http://dx.doi.org/10.3390/cancers11050606 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/). |
spellingShingle | Article Sala Elarre, Pablo Oyaga-Iriarte, Esther Yu, Kenneth H. Baudin, Vicky Arbea Moreno, Leire Carranza, Omar Chopitea Ortega, Ana Ponz-Sarvise, Mariano Mejías Sosa, Luis D. Rotellar Sastre, Fernando Larrea Leoz, Blanca Iragorri Barberena, Yohana Subtil Iñigo, Jose C. Benito Boíllos, Alberto Pardo, Fernando Rodríguez Rodríguez, Javier Use of Machine-Learning Algorithms in Intensified Preoperative Therapy of Pancreatic Cancer to Predict Individual Risk of Relapse |
title | Use of Machine-Learning Algorithms in Intensified Preoperative Therapy of Pancreatic Cancer to Predict Individual Risk of Relapse |
title_full | Use of Machine-Learning Algorithms in Intensified Preoperative Therapy of Pancreatic Cancer to Predict Individual Risk of Relapse |
title_fullStr | Use of Machine-Learning Algorithms in Intensified Preoperative Therapy of Pancreatic Cancer to Predict Individual Risk of Relapse |
title_full_unstemmed | Use of Machine-Learning Algorithms in Intensified Preoperative Therapy of Pancreatic Cancer to Predict Individual Risk of Relapse |
title_short | Use of Machine-Learning Algorithms in Intensified Preoperative Therapy of Pancreatic Cancer to Predict Individual Risk of Relapse |
title_sort | use of machine-learning algorithms in intensified preoperative therapy of pancreatic cancer to predict individual risk of relapse |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6562932/ https://www.ncbi.nlm.nih.gov/pubmed/31052270 http://dx.doi.org/10.3390/cancers11050606 |
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