Federated learning in medicine: facilitating multi-institutional collaborations without sharing patient data

被引:0
|
作者
Micah J. Sheller
Brandon Edwards
G. Anthony Reina
Jason Martin
Sarthak Pati
Aikaterini Kotrotsou
Mikhail Milchenko
Weilin Xu
Daniel Marcus
Rivka R. Colen
Spyridon Bakas
机构
[1] Intel Corporation,Center for Biomedical Image Computing and Analytics (CBICA)
[2] University of Pennsylvania,Department of Radiology, Perelman School of Medicine
[3] University of Pennsylvania,Department of Diagnostic Radiology
[4] The University of Texas MD Anderson Cancer Center,Department of Cancer Systems Imaging
[5] The University of Texas MD Anderson Cancer Center,Department of Radiology
[6] Washington University School of Medicine,Hillman Cancer Center
[7] University of Pittsburgh Medical Center,Department of Radiology
[8] University of Pittsburgh,Department of Pathology and Laboratory Medicine, Perelman School of Medicine
[9] University of Pennsylvania,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Several studies underscore the potential of deep learning in identifying complex patterns, leading to diagnostic and prognostic biomarkers. Identifying sufficiently large and diverse datasets, required for training, is a significant challenge in medicine and can rarely be found in individual institutions. Multi-institutional collaborations based on centrally-shared patient data face privacy and ownership challenges. Federated learning is a novel paradigm for data-private multi-institutional collaborations, where model-learning leverages all available data without sharing data between institutions, by distributing the model-training to the data-owners and aggregating their results. We show that federated learning among 10 institutions results in models reaching 99% of the model quality achieved with centralized data, and evaluate generalizability on data from institutions outside the federation. We further investigate the effects of data distribution across collaborating institutions on model quality and learning patterns, indicating that increased access to data through data private multi-institutional collaborations can benefit model quality more than the errors introduced by the collaborative method. Finally, we compare with other collaborative-learning approaches demonstrating the superiority of federated learning, and discuss practical implementation considerations. Clinical adoption of federated learning is expected to lead to models trained on datasets of unprecedented size, hence have a catalytic impact towards precision/personalized medicine.
引用
收藏
相关论文
共 50 条
  • [21] Decentralized collaborative multi-institutional PET attenuation and scatter correction using federated deep learning
    Shiri, Isaac
    Sadr, Alireza Vafaei
    Akhavan, Azadeh
    Salimi, Yazdan
    Sanaat, Amirhossein
    Amini, Mehdi
    Razeghi, Behrooz
    Saberi, Abdollah
    Arabi, Hossein
    Ferdowsi, Sohrab
    Voloshynovskiy, Slava
    Gunduz, Deniz
    Rahmim, Arman
    Zaidi, Habib
    EUROPEAN JOURNAL OF NUCLEAR MEDICINE AND MOLECULAR IMAGING, 2023, 50 (04) : 1034 - 1050
  • [22] Decentralized Distributed Multi-institutional PET Image Segmentation Using a Federated Deep Learning Framework
    Shiri, Isaac
    Sadr, Alireza Vafaei
    Amini, Mehdi
    Salimi, Yazdan
    Sanaat, Amirhossein
    Akhavanallaf, Azadeh
    Razeghi, Behrooz
    Ferdowsi, Sohrab
    Saberi, Abdollah
    Arabi, Hossein
    Becker, Minerva
    Voloshynovskiy, Slava
    Gunduz, Deniz
    Rahmim, Arman
    Zaidi, Habib
    CLINICAL NUCLEAR MEDICINE, 2022, 47 (07) : 606 - 617
  • [23] Performance analysis of multi-institutional data sharing in the Clouds4Coordination system
    Petri, Loan
    Rana, Omer F.
    Beach, Tom
    Rezgui, Yacine
    COMPUTERS & ELECTRICAL ENGINEERING, 2017, 58 : 227 - 240
  • [24] A multi-institutional perioperative medicine retreat for internal medicine trainees
    James, P.
    Pi, D. J.
    Packer, C.
    Kroen, C.
    Spinelli, L.
    JOURNAL OF GENERAL INTERNAL MEDICINE, 2007, 22 : 172 - 172
  • [25] The role of cross-silo federated learning in facilitating data sharing in the agri-food sector
    Durrant, Aiden
    Markovic, Milan
    Matthews, David
    May, David
    Enright, Jessica
    Leontidis, Georgios
    COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2022, 193
  • [26] Privacy-preserving federated data access and federated learning: Improved data sharing and AI model development in transfusion medicine
    Li, Na
    Lewin, Antoine
    Ning, Shuoyan
    Waito, Marianne
    Zeller, Michelle P.
    Tinmouth, Alan
    Shih, Andrew W.
    TRANSFUSION, 2024,
  • [27] Multi-Institutional PET/CT Image Segmentation Using a Decentralized Federated Deep Transformer Learning Algorithm
    Shiri, Isaac
    Amini, Mehdi
    Salimi, Yazdan
    Sanaat, Amirhossein
    Saberi, Abdollah
    Razeghi, Behrooz
    Ferdowsi, Sohrab
    Sadr, Alireza Vafaei
    Voloshynovskiy, Slava
    Gunduz, Deniz
    Rahmim, Arman
    Zaidi, Habib
    JOURNAL OF NUCLEAR MEDICINE, 2022, 63
  • [28] Federated Learning in Big Data Application and Sharing
    Yang Jing
    Zhang Quan
    Liu Kunpeng
    Jin Peng
    Zhao Guoyi
    FUZZY SYSTEMS AND DATA MINING VI, 2020, 331 : 423 - 435
  • [29] Studying a Rare Disease Using Multi-Institutional Research Collaborations vs Big Data: Where Lies the Truth?
    Johnson, Aileen C.
    Ethun, Cecilia G.
    Liu, Yuan
    Lopez-Aguiar, Alexandra G.
    Tran, Thuy B.
    Poultsides, George
    Grignol, Valerie
    Howard, J. Harrison
    Bedi, Meena
    Gamblin, T. Clark
    Tseng, Jennifer
    Roggin, Kevin K.
    Chouliaras, Konstantinos
    Votanopoulos, Konstantinos
    Cullinan, Darren
    Fields, Ryan C.
    Delman, Keith A.
    Wood, William C.
    Cardona, Kenneth
    Maithel, Shishir K.
    JOURNAL OF THE AMERICAN COLLEGE OF SURGEONS, 2018, 227 (03) : 357 - +
  • [30] Barriers to organizational learning in a multi-institutional initiative
    Adrianna J. Kezar
    Elizabeth M. Holcombe
    Higher Education, 2020, 79 : 1119 - 1138