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A deep learning algorithm to predict risk of pancreatic cancer from disease trajectories

Authors :
Davide Placido
Bo Yuan
Jessica X. Hjaltelin
Chunlei Zheng
Amalie D. Haue
Piotr J. Chmura
Chen Yuan
Jihye Kim
Renato Umeton
Gregory Antell
Alexander Chowdhury
Alexandra Franz
Lauren Brais
Elizabeth Andrews
Debora S. Marks
Aviv Regev
Siamack Ayandeh
Mary T. Brophy
Nhan V. Do
Peter Kraft
Brian M. Wolpin
Michael H. Rosenthal
Nathanael R. Fillmore
Søren Brunak
Chris Sander
Source :
Placido, D, Yuan, B, Hjaltelin, J X, Zheng, C, Haue, A D, Chmura, P J, Yuan, C, Kim, J, Umeton, R, Antell, G, Chowdhury, A, Franz, A, Brais, L, Andrews, E, Marks, D S, Regev, A, Ayandeh, S, Brophy, M T, Do, N V, Kraft, P, Wolpin, B M, Rosenthal, M H, Fillmore, N R, Brunak, S & Sander, C 2023, ' A deep learning algorithm to predict risk of pancreatic cancer from disease trajectories ', Nature Medicine, vol. 29, pp. 1113-1122 . https://doi.org/10.1038/s41591-023-02332-5
Publication Year :
2023
Publisher :
Springer Science and Business Media LLC, 2023.

Abstract

Pancreatic cancer is an aggressive disease that typically presents late with poor outcomes, indicating a pronounced need for early detection. In this study, we applied artificial intelligence methods to clinical data from 6 million patients (24,000 pancreatic cancer cases) in Denmark (Danish National Patient Registry (DNPR)) and from 3 million patients (3,900 cases) in the United States (US Veterans Affairs (US-VA)). We trained machine learning models on the sequence of disease codes in clinical histories and tested prediction of cancer occurrence within incremental time windows (CancerRiskNet). For cancer occurrence within 36 months, the performance of the best DNPR model has area under the receiver operating characteristic (AUROC) curve = 0.88 and decreases to AUROC (3m) = 0.83 when disease events within 3 months before cancer diagnosis are excluded from training, with an estimated relative risk of 59 for 1,000 highest-risk patients older than age 50 years. Cross-application of the Danish model to US-VA data had lower performance (AUROC = 0.71), and retraining was needed to improve performance (AUROC = 0.78, AUROC (3m) = 0.76). These results improve the ability to design realistic surveillance programs for patients at elevated risk, potentially benefiting lifespan and quality of life by early detection of this aggressive cancer.

Details

ISSN :
1546170X and 10788956
Volume :
29
Database :
OpenAIRE
Journal :
Nature Medicine
Accession number :
edsair.doi.dedup.....2eee684e47fb6a2b97f37854cff113fd
Full Text :
https://doi.org/10.1038/s41591-023-02332-5