TY - JOUR
T1 - Accelerating artificial intelligence
T2 - How federated learning can protect privacy, facilitate collaboration, and improve outcomes
AU - Patel, Malhar
AU - Dayan, Ittai
AU - Fishman, Elliot K.
AU - Flores, Mona
AU - Gilbert, Fiona J.
AU - Guindy, Michal
AU - Koay, Eugene J.
AU - Rosenthal, Michael
AU - Roth, Holger R.
AU - Linguraru, Marius G.
N1 - Publisher Copyright:
© The Author(s) 2023.
PY - 2023/10/1
Y1 - 2023/10/1
N2 - Cross-institution collaborations are constrained by data-sharing challenges. These challenges hamper innovation, particularly in artificial intelligence, where models require diverse data to ensure strong performance. Federated learning (FL) solves data-sharing challenges. In typical collaborations, data is sent to a central repository where models are trained. With FL, models are sent to participating sites, trained locally, and model weights aggregated to create a master model with improved performance. At the 2021 Radiology Society of North America’s (RSNA) conference, a panel was conducted titled “Accelerating AI: How Federated Learning Can Protect Privacy, Facilitate Collaboration and Improve Outcomes.” Two groups shared insights: researchers from the EXAM study (EMC CXR AI Model) and members of the National Cancer Institute’s Early Detection Research Network’s (EDRN) pancreatic cancer working group. EXAM brought together 20 institutions to create a model to predict oxygen requirements of patients seen in the emergency department with COVID-19 symptoms. The EDRN collaboration is focused on improving outcomes for pancreatic cancer patients through earlier detection. This paper describes major insights from the panel, including direct quotes. The panelists described the impetus for FL, the long-term potential vision of FL, challenges faced in FL, and the immediate path forward for FL.
AB - Cross-institution collaborations are constrained by data-sharing challenges. These challenges hamper innovation, particularly in artificial intelligence, where models require diverse data to ensure strong performance. Federated learning (FL) solves data-sharing challenges. In typical collaborations, data is sent to a central repository where models are trained. With FL, models are sent to participating sites, trained locally, and model weights aggregated to create a master model with improved performance. At the 2021 Radiology Society of North America’s (RSNA) conference, a panel was conducted titled “Accelerating AI: How Federated Learning Can Protect Privacy, Facilitate Collaboration and Improve Outcomes.” Two groups shared insights: researchers from the EXAM study (EMC CXR AI Model) and members of the National Cancer Institute’s Early Detection Research Network’s (EDRN) pancreatic cancer working group. EXAM brought together 20 institutions to create a model to predict oxygen requirements of patients seen in the emergency department with COVID-19 symptoms. The EDRN collaboration is focused on improving outcomes for pancreatic cancer patients through earlier detection. This paper describes major insights from the panel, including direct quotes. The panelists described the impetus for FL, the long-term potential vision of FL, challenges faced in FL, and the immediate path forward for FL.
KW - IT healthcare evaluation
KW - clinical decision-making
KW - cloud computing
KW - collaborative work practices and IT
KW - data security and confidentiality
KW - databases and data mining
KW - decision-support systems
KW - machine learning
KW - medical imaging
KW - privacy
UR - http://www.scopus.com/inward/record.url?scp=85175587482&partnerID=8YFLogxK
U2 - 10.1177/14604582231207744
DO - 10.1177/14604582231207744
M3 - Article
C2 - 37864543
AN - SCOPUS:85175587482
SN - 1460-4582
VL - 29
JO - Health Informatics Journal
JF - Health Informatics Journal
IS - 4
ER -