Federated Learning for Healthcare Applications

被引:21
作者
Chaddad, Ahmad [1 ,2 ]
Wu, Yihang [1 ]
Desrosiers, Christian [2 ]
机构
[1] Guilin Univ Elect Technol, Sch Artificial Intelligence, Guilin 541004, Peoples R China
[2] Ecole Technol Superieure, Lab Imagery Vis & Artificial Intelligence, Montreal H3C 1K3, PQ, Canada
基金
中国国家自然科学基金;
关键词
Artificial intelligence (AI); data privacy; federated learning (FL); healthcare; medical imaging; PROSTATE SEGMENTATION; RECOGNITION; FRAMEWORK; DIAGNOSIS; NETWORK; MRI;
D O I
10.1109/JIOT.2023.3325822
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Due to the fast advancement of artificial intelligence (AI), centralized-based models have become critical for healthcare tasks like in medical image analysis and human behavior recognition. Although these models exhibit suitable performance, they are frequently constrained by privacy concerns. To attenuate this, a centralized learning strategy cannot be used in cases where there is a risk of data privacy breach, particularly in healthcare centers. Federated learning (FL) is a technique that allows for training a global model without sharing data by training distributed local models and aggregating them. By implementing FL throughout the training process, we can obtain a model with comparable generalization abilities to centralized learning while maintaining data privacy. This survey provides an introduction to the fundamental concepts and categories of FL, highlights the limitations of the centralized healthcare model, and discusses how FL can address these constraints. We also provide a detailed overview of the healthcare applications using FL models, along with commonly used evaluation metrics and public data sets. In this context, we have implemented a case study to demonstrate how FL can be applied in the healthcare field. Furthermore, we outline the key challenges and future trends in FL.
引用
收藏
页码:7339 / 7358
页数:20
相关论文
共 199 条
[1]   Towards Mitigating Device Heterogeneity in Federated Learning via Adaptive Model Quantization [J].
Abdelmoniem, Ahmed M. ;
Canini, Marco .
PROCEEDINGS OF THE 1ST WORKSHOP ON MACHINE LEARNING AND SYSTEMS (EUROMLSYS'21), 2021, :96-103
[2]   A Comprehensive Empirical Study of Heterogeneity in Federated Learning [J].
Abdelmoniem, Ahmed M. M. ;
Ho, Chen-Yu ;
Papageorgiou, Pantelis ;
Canini, Marco .
IEEE INTERNET OF THINGS JOURNAL, 2023, 10 (16) :14071-14083
[3]   Federated learning and differential privacy for medical image analysis [J].
Adnan, Mohammed ;
Kalra, Shivam ;
Cresswell, Jesse C. ;
Taylor, Graham W. ;
Tizhoosh, Hamid R. .
SCIENTIFIC REPORTS, 2022, 12 (01)
[4]  
adni.loni.usc.edu, Alzheimer's Disease Neuroimaging Intitiative
[5]   COVID-CAPS: A capsule network-based framework for identification of COVID-19 cases from X-ray images [J].
Afshar, Parnian ;
Heidarian, Shahin ;
Naderkhani, Farnoosh ;
Oikonomou, Anastasia ;
Plataniotis, Konstantinos N. ;
Mohammadi, Arash .
PATTERN RECOGNITION LETTERS, 2020, 138 :638-643
[6]   Hyper-Graph Attention Based Federated Learning Methods for Use in Mental Health Detection [J].
Ahmed, Usman ;
Lin, Jerry Chun-Wei ;
Srivastava, Gautam Srivastava .
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2023, 27 (02) :768-777
[7]   Dataset of breast ultrasound images [J].
Al-Dhabyani, Walid ;
Gomaa, Mohammed ;
Khaled, Hussien ;
Fahmy, Aly .
DATA IN BRIEF, 2020, 28
[8]  
Ali S, 2021, Arxiv, DOI arXiv:2106.04463
[9]   The General Data Protection Regulation in the Age of Surveillance Capitalism [J].
Andrew, Jane ;
Baker, Max .
JOURNAL OF BUSINESS ETHICS, 2021, 168 (03) :565-578
[10]  
Anguita D., 2013, ESANN, P437