Cargando…

A novel prediction model of the risk of pancreatic cancer among diabetes patients using multiple clinical data and machine learning

INTRODUCTION: Pancreatic cancer is associated with poor prognosis. Considering the increased global incidence of diabetes cases and that individuals with diabetes are considered a high‐risk subpopulation for pancreatic cancer, it is critical to detect the risk of pancreatic cancer within populations...

Descripción completa

Detalles Bibliográficos
Autores principales: Chen, Shih‐Min, Phuc, Phan Thanh, Nguyen, Phung‐Anh, Burton, Whitney, Lin, Shwu‐Jiuan, Lin, Weei‐Chin, Lu, Christine Y., Hsu, Min‐Huei, Cheng, Chi‐Tsun, Hsu, Jason C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10587954/
https://www.ncbi.nlm.nih.gov/pubmed/37737056
http://dx.doi.org/10.1002/cam4.6547
_version_ 1785123473956274176
author Chen, Shih‐Min
Phuc, Phan Thanh
Nguyen, Phung‐Anh
Burton, Whitney
Lin, Shwu‐Jiuan
Lin, Weei‐Chin
Lu, Christine Y.
Hsu, Min‐Huei
Cheng, Chi‐Tsun
Hsu, Jason C.
author_facet Chen, Shih‐Min
Phuc, Phan Thanh
Nguyen, Phung‐Anh
Burton, Whitney
Lin, Shwu‐Jiuan
Lin, Weei‐Chin
Lu, Christine Y.
Hsu, Min‐Huei
Cheng, Chi‐Tsun
Hsu, Jason C.
author_sort Chen, Shih‐Min
collection PubMed
description INTRODUCTION: Pancreatic cancer is associated with poor prognosis. Considering the increased global incidence of diabetes cases and that individuals with diabetes are considered a high‐risk subpopulation for pancreatic cancer, it is critical to detect the risk of pancreatic cancer within populations of person living = with diabetes. This study aimed to develop a novel prediction model for pancreatic cancer risk among patients with diabetes, using = a real‐world database containing clinical features and employing numerous artificial intelligent approach algorithms. METHODS: This retrospective observational study analyzed data on patients with Type 2 diabetes from a multisite Taiwanese EMR database between 2009 and 2019. Predictors were selected in accordance with the literature review and clinical perspectives. The prediction models were constructed using machine learning algorithms such as logistic regression, linear discriminant analysis, gradient boosting machine, and random forest. RESULTS: The cohort consisted of 66,384 patients. The Linear Discriminant Analysis (LDA) model generated the highest AUROC of 0.9073, followed by the Voting Ensemble and Gradient Boosting machine models. LDA, the best model, exhibited an accuracy of 84.03%, a sensitivity of 0.8611, and a specificity of 0.8403. The most significant predictors identified for pancreatic cancer risk were glucose, glycated hemoglobin, hyperlipidemia comorbidity, antidiabetic drug use, and lipid‐modifying drug use. CONCLUSION: This study successfully developed a highly accurate 4‐year risk model for pancreatic cancer in patients with diabetes using real‐world clinical data and multiple machine‐learning algorithms. Potentially, our predictors offer an opportunity to identify pancreatic cancer early and thus increase prevention and invention windows to impact survival in diabetic patients.
format Online
Article
Text
id pubmed-10587954
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-105879542023-10-21 A novel prediction model of the risk of pancreatic cancer among diabetes patients using multiple clinical data and machine learning Chen, Shih‐Min Phuc, Phan Thanh Nguyen, Phung‐Anh Burton, Whitney Lin, Shwu‐Jiuan Lin, Weei‐Chin Lu, Christine Y. Hsu, Min‐Huei Cheng, Chi‐Tsun Hsu, Jason C. Cancer Med RESEARCH ARTICLES INTRODUCTION: Pancreatic cancer is associated with poor prognosis. Considering the increased global incidence of diabetes cases and that individuals with diabetes are considered a high‐risk subpopulation for pancreatic cancer, it is critical to detect the risk of pancreatic cancer within populations of person living = with diabetes. This study aimed to develop a novel prediction model for pancreatic cancer risk among patients with diabetes, using = a real‐world database containing clinical features and employing numerous artificial intelligent approach algorithms. METHODS: This retrospective observational study analyzed data on patients with Type 2 diabetes from a multisite Taiwanese EMR database between 2009 and 2019. Predictors were selected in accordance with the literature review and clinical perspectives. The prediction models were constructed using machine learning algorithms such as logistic regression, linear discriminant analysis, gradient boosting machine, and random forest. RESULTS: The cohort consisted of 66,384 patients. The Linear Discriminant Analysis (LDA) model generated the highest AUROC of 0.9073, followed by the Voting Ensemble and Gradient Boosting machine models. LDA, the best model, exhibited an accuracy of 84.03%, a sensitivity of 0.8611, and a specificity of 0.8403. The most significant predictors identified for pancreatic cancer risk were glucose, glycated hemoglobin, hyperlipidemia comorbidity, antidiabetic drug use, and lipid‐modifying drug use. CONCLUSION: This study successfully developed a highly accurate 4‐year risk model for pancreatic cancer in patients with diabetes using real‐world clinical data and multiple machine‐learning algorithms. Potentially, our predictors offer an opportunity to identify pancreatic cancer early and thus increase prevention and invention windows to impact survival in diabetic patients. John Wiley and Sons Inc. 2023-09-22 /pmc/articles/PMC10587954/ /pubmed/37737056 http://dx.doi.org/10.1002/cam4.6547 Text en © 2023 The Authors. Cancer Medicine published by John Wiley & Sons Ltd. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle RESEARCH ARTICLES
Chen, Shih‐Min
Phuc, Phan Thanh
Nguyen, Phung‐Anh
Burton, Whitney
Lin, Shwu‐Jiuan
Lin, Weei‐Chin
Lu, Christine Y.
Hsu, Min‐Huei
Cheng, Chi‐Tsun
Hsu, Jason C.
A novel prediction model of the risk of pancreatic cancer among diabetes patients using multiple clinical data and machine learning
title A novel prediction model of the risk of pancreatic cancer among diabetes patients using multiple clinical data and machine learning
title_full A novel prediction model of the risk of pancreatic cancer among diabetes patients using multiple clinical data and machine learning
title_fullStr A novel prediction model of the risk of pancreatic cancer among diabetes patients using multiple clinical data and machine learning
title_full_unstemmed A novel prediction model of the risk of pancreatic cancer among diabetes patients using multiple clinical data and machine learning
title_short A novel prediction model of the risk of pancreatic cancer among diabetes patients using multiple clinical data and machine learning
title_sort novel prediction model of the risk of pancreatic cancer among diabetes patients using multiple clinical data and machine learning
topic RESEARCH ARTICLES
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10587954/
https://www.ncbi.nlm.nih.gov/pubmed/37737056
http://dx.doi.org/10.1002/cam4.6547
work_keys_str_mv AT chenshihmin anovelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT phucphanthanh anovelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT nguyenphunganh anovelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT burtonwhitney anovelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT linshwujiuan anovelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT linweeichin anovelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT luchristiney anovelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT hsuminhuei anovelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT chengchitsun anovelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT hsujasonc anovelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT chenshihmin novelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT phucphanthanh novelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT nguyenphunganh novelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT burtonwhitney novelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT linshwujiuan novelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT linweeichin novelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT luchristiney novelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT hsuminhuei novelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT chengchitsun novelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning
AT hsujasonc novelpredictionmodeloftheriskofpancreaticcanceramongdiabetespatientsusingmultipleclinicaldataandmachinelearning