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Artificial Intelligence and Early Detection of Pancreatic Cancer:2020 Summative Review

Authors :
Julie Fleshman
Sung Poblete
Bruce F. Field
Laura J. Rothschild
Michael H. Rosenthal
Adam Yala
Chris Sander
Graham P. Lidgard
Marcia Irene Canto
Lawrence H. Schwartz
Barbara J. Kenner
Brian M. Wolpin
Debiao Li
Elliot K. Fishman
James A. Taylor
Dana K. Andersen
Ann E. Goldberg
Stephen J. Pandol
David P. Kelsen
David I. Bernstein
Noura S. Abul-Husn
Jane M. Holt
Suresh T. Chari
Anirban Maitra
Yonina C. Eldar
Uri Shalit
Vay Liang W. Go
Anil K. Rustgi
Sudhir Srivastava
Lynn M. Matrisian
Christine A. Iacobuzio-Donahue
William Arthur Hoos
David S. Klimstra
Søren Brunak
Source :
Kenner, B, Chari, S T, Kelsen, D, Klimstra, D S, Pandol, S J, Rosenthal, M, Rustgi, A K, Taylor, J A, Yala, A, Abul-Husn, N, Andersen, D K, Bernstein, D, Brunak, S, Canto, M I, Eldar, Y C, Fishman, E K, Fleshman, J, Go, V L W, Holt, J M, Field, B, Goldberg, A, Hoos, W, Iacobuzio-Donahue, C, Li, D, Lidgard, G, Maitra, A, Matrisian, L M, Poblete, S, Rothschild, L, Sander, C, Schwartz, L H, Shalit, U, Srivastava, S & Wolpin, B 2021, ' Artificial Intelligence and Early Detection of Pancreatic Cancer : 2020 Summative Review ', Pancreas, vol. 50, no. 3, pp. 251-279 . https://doi.org/10.1097/MPA.0000000000001762, Pancreas, vol 50, iss 3, Pancreas
Publication Year :
2021

Abstract

Despite considerable research efforts, pancreatic cancer is associated with a dire prognosis and a 5-year survival rate of only 10%. Early symptoms of the disease are mostly nonspecific. The premise of improved survival through early detection is that more individuals will benefit from potentially curative treatment. Artificial intelligence (AI) methodology has emerged as a successful tool for risk stratification and identification in general health care. In response to the maturity of AI, Kenner Family Research Fund conducted the 2020 AI and Early Detection of Pancreatic Cancer Virtual Summit (www.pdac-virtualsummit.org) in conjunction with the American Pancreatic Association, with a focus on the potential of AI to advance early detection efforts in this disease. This comprehensive presummit article was prepared based on information provided by each of the interdisciplinary participants on one of the 5 following topics: Progress, Problems, and Prospects for Early Detection; AI and Machine Learning; AI and Pancreatic Cancer-Current Efforts; Collaborative Opportunities; and Moving Forward-Reflections from Government, Industry, and Advocacy. The outcome from the robust Summit conversations, to be presented in a future white paper, indicate that significant progress must be the result of strategic collaboration among investigators and institutions from multidisciplinary backgrounds, supported by committed funders.

Details

Language :
English
Database :
OpenAIRE
Journal :
Kenner, B, Chari, S T, Kelsen, D, Klimstra, D S, Pandol, S J, Rosenthal, M, Rustgi, A K, Taylor, J A, Yala, A, Abul-Husn, N, Andersen, D K, Bernstein, D, Brunak, S, Canto, M I, Eldar, Y C, Fishman, E K, Fleshman, J, Go, V L W, Holt, J M, Field, B, Goldberg, A, Hoos, W, Iacobuzio-Donahue, C, Li, D, Lidgard, G, Maitra, A, Matrisian, L M, Poblete, S, Rothschild, L, Sander, C, Schwartz, L H, Shalit, U, Srivastava, S & Wolpin, B 2021, ' Artificial Intelligence and Early Detection of Pancreatic Cancer : 2020 Summative Review ', Pancreas, vol. 50, no. 3, pp. 251-279 . https://doi.org/10.1097/MPA.0000000000001762, Pancreas, vol 50, iss 3, Pancreas
Accession number :
edsair.doi.dedup.....edcafac80f858f68d768f1d677982af1