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Awesome Healthcare Federated Learning

Federated learning, a mechanism of training a shared global model with a central server while keeping all the sensitive data in local institutions where the data belong, provides great promise to connect the fragmented healthcare data sources with privacy-preservation. This repo contains a curated list of Federated Learning papers/resources and recent advancements in Healthcare.

Awesome PRs Welcome License: MIT

Contribute

We welcome contributions to this list! In fact, that's the main reason why I created it - to encourage contributions and encourage people to subscribe to changes in order to stay informed about new and exciting developments in the world of Heathcare Federated Learning.

Need help in

  • Classify the paper into appropriate categories such as [ Survey, Experiment, New Algorithm etc]
  • Sort the paper based on publication year
  • Add new papers to update the list

Thank you for your interest in contributing to this project!

Table of Contents
  1. Papers
  2. Code
  3. datasets
  4. Tutorials
  5. Researchers

Code

  • Tensorflow Federated

  • An Industrial Grade Federated Learning Framework

  • Flower - A Friendly Federated Learning Framework

  • Data science on data without acquiring a copy

Tutorials

Papers

Survey

  • Federated learning for healthcare informatics

    • Jie Xu, Benjamin S. Glicksberg, Chang Su, Peter Walker, Jiang Bian, Fei Wang
    • [Paper]
  • The future of digital health with federated learning

  • Federated Learning for Healthcare Domain - Pipeline, Applications and Challenges

    • Madhura Joshi , Ankit Pal , Malaikannan Sankarasubbu
    • [Paper]
  • Federated Learning for Healthcare Informatics1

  • [Paper]

  • AI in Health: State of the Art, Challenges, and Future Directions

  • Artificial Intelligence in Primary Health Care: Perceptions, Issues, and Challenges

  • Systematic Review of Privacy-Preserving Distributed Machine Learning From Federated Databases in Health Care

  • Open-Source Federated Learning Frameworks for IoT: A Comparative Review and Analysis

Covid-19

  • Federated Learning of Electronic Health Records Improves Mortality Prediction in Patients Hospitalized with COVID-19

  • [Paper]

  • Federated semi-supervised learning for COVID region segmentation in chest CT using multi-national data from China, Italy, Japan

  • [Paper]

  • Collaborative Federated Learning For Healthcare: Multi-Modal COVID-19 Diagnosis at the Edge

  • The value of federated learning during and post-COVID-19

  • SCOR: A secure international informatics infrastructure to investigate COVID-19

  • Real-Time Electronic Health Record Mortality Prediction During the COVID-19 Pandemic: A Prospective Cohort Study

  • COVID-19 IMAGING DATA PRIVACY BY FEDERATED LEARNING DESIGN: A THEORETICAL FRAMEWORK

  • Artificial intelligence in COVID-19 drug repurposing

  • Blockchain-Federated-Learning and Deep Learning Models for COVID-19 detection using CT Imaging

  • Experiments of Federated Learning for COVID-19 Chest X-ray Images

Experiments

  • Federated Learning on Clinical Benchmark Data: Performance Assessment

    • Geun Hyeong Lee and Soo-Yong Shin
    • [Paper]
  • Secure and Robust Machine Learning for Health Care

    • Adnan Qayyum, Junaid Qadir, Muhammad Bilal, Ala Al-Fuqaha
    • [Paper]
  • Privacy-first health research with federated learning

  • Patch-Based Surface Morphometry Feature Selection with Federated Group Lasso Regression

  • Predicting Adverse Drug Reactions on Distributed Health Data using Federated Learning

  • Federated electronic health records research technology to support clinical trial protocol optimization: Evidence from EHR4CR and the InSite platform

  • Probabilistic Predictions with Federated Learning

  • Using federated data sources and Varian Learning Portal framework to train a neural network model for automatic organ segmentation

  • Federated Reinforcement Learning for Training Control Policies on Multiple IoT Devices

  • Lazily Aggregated Quantized Gradient Innovation for Communication-Efficient Federated Learning

  • Privacy-preserving model learning on a blockchain network-of-networks

  • Privacy-Preserving Methods for Feature Engineering Using Blockchain: Review, Evaluation, and Proof of Concept

  • Healthchain: A novel framework on privacy preservation of electronic health records using blockchain technology

  • Privacy-Preserving in Healthcare Blockchain Systems Based on Lightweight Message Sharing

  • MedBlock: Efficient and Secure Medical Data Sharing Via Blockchain

  • Blockchain distributed ledger technologies for biomedical and health care applications

  • A Decentralized Privacy-Preserving Healthcare Blockchain for IoT

  • Joint Imaging Platform for Federated Clinical Data Analytics

  • Federated Transfer Learning for EEG Signal Classification

  • Federated Learning used for predicting outcomes in SARS-COV-2 patients

  • Large-Scale Water Quality Prediction Using Federated Sensing and Learning: A Case Study with Real-World Sensing Big-Data

  • Multi-site fMRI analysis using privacy-preserving federated learning and domain adaptation: ABIDE results

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

  • Security and privacy requirements for a multi-institutional cancer research data grid: an interview-based study

  • Federated learning of predictive models from federated Electronic Health Records

  • Creating a data exchange strategy for radiotherapy research: towards federated databases and anonymised public datasets

  • Stochastic Channel-Based Federated Learning With Neural Network Pruning for Medical Data Privacy Preservation: Model Development and Experimental Validation

  • Balancing Accuracy and Privacy in Federated Queries of Clinical Data Repositories: Algorithm Development and Validation

  • A collaborative framework for Distributed Privacy-Preserving Support Vector Machine learning

  • Privacy-Preserving Deep Learning for the Detection of Protected Health Information in Real-World Data: Comparative Evaluation

  • A review on the state-of-the-art privacy-preserving approaches in the e-health clouds

  • eHealth Cloud Security Challenges: A Survey

  • Infrastructure and distributed learning methodology for privacy-preserving multi-centric rapid learning health care: euroCAT

  • Developing and Validating a Survival Prediction Model for NSCLC Patients Through Distributed Learning Across 3 Countries

  • Distributed learning: Developing a predictive model based on data from multiple hospitals without data leaving the hospital - A real life proof of concept

  • How Should Health Data Be Used?

  • Data-driven modeling and prediction of blood glucose dynamics: Machine learning applications in type 1 diabetes

  • Building machine learning models without sharing patient data: A simulation-based analysis of distributed learning by ensembling

  • A comparative evaluation of the generalised predictive ability of eight machine learning algorithms across ten clinical metabolomics data sets for binary classification

  • Multi-center machine learning in imaging psychiatry: A meta-model approach

  • A comparison of machine learning methods for classification using simulation with multiple real data examples from mental health studies

  • Distributed deep learning networks among institutions for medical imaging

  • The anatomy of a distributed predictive modeling framework: online learning, blockchain network, and consensus algorithm

  • WebDISCO: a web service for distributed cox model learning without patient-level data sharing

  • Differentially Private Distributed Online Learning

  • An Uplink Communication-Efficient Approach to Featurewise Distributed Sparse Optimization With Differential Privacy

  • A Comprehensive Comparison of Multiparty Secure Additions with Differential Privacy

  • Secure Multiparty Quantum Computation for Summation and Multiplication

  • Hybrid Quantum Protocols for Secure Multiparty Summation and Multiplication

  • A blockchain-based scheme for privacy-preserving and secure sharing of medical data

  • Cost-Efficient and Multi-Functional Secure Aggregation in Large Scale Distributed Application

  • Privacy-Enhanced and Multifunctional Health Data Aggregation under Differential Privacy Guarantees

  • Security issues in healthcare applications using wireless medical sensor networks: a survey

  • A secure distributed logistic regression protocol for the detection of rare adverse drug events

  • High performance logistic regression for privacy-preserving genome analysis

  • Efficient Privacy-Preserving Access Control Scheme in Electronic Health Records System

  • Privacy-Preserving Analysis of Distributed Biomedical Data: Designing Efficient and Secure Multiparty Computations Using Distributed Statistical Learning Theory

  • Learning from electronic health records across multiple sites: A communication-efficient and privacy-preserving distributed algorithm

  • DPSynthesizer: Differentially Private Data Synthesizer for Privacy Preserving Data Sharing

  • A flexible approach to distributed data anonymization

  • Privacy-preserving data cube for electronic medical records: An experimental evaluation

  • A framework to preserve the privacy of electronic health data streams

  • Secure and scalable deduplication of horizontally partitioned health data for privacy-preserving distributed statistical computation

  • Design and implementation of a privacy preserving electronic health record linkage tool in Chicago

  • Privacy preserving interactive record linkage (PPIRL)

  • Privacy-preserving record linkage in large databases using secure multiparty computation

  • Sample Complexity Bounds for Differentially Private Learning

  • Convergence Rates for Differentially Private Statistical Estimation

  • Efficient differentially private learning improves drug sensitivity prediction

  • A Comprehensive Survey on Local Differential Privacy toward Data Statistics and Analysis

  • Privacy-preserving aggregation of personal health data streams

  • Efficient and Privacy-Preserving Online Medical Prediagnosis Framework Using Nonlinear SVM

  • Privacy-preserving biomedical data dissemination via a hybrid approach

  • A community effort to protect genomic data sharing, collaboration and outsourcing

  • Privacy challenges and research opportunities for genomic data sharing

  • Privacy-Preserving Integration of Medical Data : A Practical Multiparty Private Set Intersection

  • Secure multiparty computation for privacy-preserving drug discovery

  • Privacy-Preserving Cost-Sensitive Learning

  • Differentially Private Empirical Risk Minimization

  • Privacy-preserving heterogeneous health data sharing

  • A comprehensive tool for creating and evaluating privacy-preserving biomedical prediction models

  • Privacy-enhancing ETL-processes for biomedical data

  • Privacy-preserving restricted boltzmann machine

  • Privacy preserving processing of genomic data: A survey

  • How (not) to protect genomic data privacy in a distributed network: using trail re-identification to evaluate and design anonymity protection systems

  • Are privacy-enhancing technologies for genomic data ready for the clinic? A survey of medical experts of the Swiss HIV Cohort Study

  • Genome privacy: challenges, technical approaches to mitigate risk, and ethical considerations in the United States

  • The tension between data sharing and the protection of privacy in genomics research

  • ConTPL: Controlling Temporal Privacy Leakage in Differentially Private Continuous Data Release

  • New threats to health data privacy

  • Securing electronic health records without impeding the flow of information

  • How to Accurately and Privately Identify Anomalies

  • A Guide for Private Outlier Analysis

  • Privacy-Aware Distributed Hypothesis Testing

  • Distributed Hypothesis Testing with Privacy Constraints

  • Reliability of Supervised Machine Learning Using Synthetic Data in Health Care: Model to Preserve Privacy for Data Sharing

  • Web-Based Privacy-Preserving Multicenter Medical Data Analysis Tools Via Threshold Homomorphic Encryption: Design and Development Study

  • A Privacy-Preserving Multi-Task Learning Framework for Face Detection, Landmark Localization, Pose Estimation, and Gender Recognition

  • Privacy-enhanced multi-party deep learning

  • Federated Learning: A Survey on Enabling Technologies, Protocols, and Applications

  • Privacy-Preserving Patient Similarity Learning in a Federated Environment: Development and Analysis

  • A Critical Evaluation of Privacy and Security Threats in Federated Learning

  • Properties of a federated epidemiology query system

  • Advanced and secure architectural EHR approaches

  • Implementing security in a distributed web-based EHCR

  • Health information systems - past, present, future

  • Federated healthcare record server--the Synapses paradigm

  • The basic principles of the synapses federated healthcare record server

  • Ternary Compression for Communication-Efficient Federated Learning

  • Distributed learning on 20 000+ lung cancer patients - The Personal Health Train

  • A Distributed Ensemble Approach for Mining Healthcare Data under Privacy Constraints

  • FeARH: Federated machine learning with Anonymous Random Hybridization on electronic medical records

  • Smart Medical Information Technology for Healthcare (SMITH)

  • Patient clustering improves efficiency of federated machine learning to predict mortality and hospital stay time using distributed electronic medical records

  • Robust and Communication-Efficient Federated Learning From Non-i.i.d. Data

  • Federated Tensor Factorization for Computational Phenotyping

  • Cloud-Based Federated Learning Implementation Across Medical Centers

  • ACTION-EHR: Patient-Centric Blockchain-Based Electronic Health Record Data Management for Cancer Care

  • Federated learning improves site performance in multicenter deep learning without data sharing

  • Healthcare information exchange system based on a hybrid central/federated model

  • Accelerating Health Data Sharing: A Solution Based on the Internet of Things and Distributed Ledger Technologies

  • Communication-Efficient Federated Deep Learning With Layerwise Asynchronous Model Update and Temporally Weighted Aggregation

  • The future of digital health with federated learning

  • A novel privacy-preserving federated genome-wide association study framework and its application in identifying potential risk variants in ankylosing spondylitis

  • Privacy-preserving GWAS analysis on federated genomic datasets

  • SAFETY: Secure gwAs in Federated Environment through a hYbrid Solution

  • FedPSO: Federated Learning Using Particle Swarm Optimization to Reduce Communication Costs

  • Big data from electronic health records for early and late translational cardiovascular research: challenges and potential

  • Using big data to improve cardiovascular care and outcomes in China: a protocol for the CHinese Electronic health Records Research in Yinzhou (CHERRY) Study

  • Using nationwide ‘big data’ from linked electronic health records to help improve outcomes in cardiovascular diseases: 33 studies using methods from epidemiology, informatics, economics and social science in the ClinicAl disease research using LInked Bespoke studies and Electronic health Records (CALIBER) programme

  • Distributed clinical data sharing via dynamic access-control policy transformation

  • A secure EHR system based on hybrid clouds

  • A systematic literature review on security and privacy of electronic health record systems: technical perspectives

  • Security Techniques for the Electronic Health Records

  • Advances and current state of the security and privacy in electronic health records: survey from a social perspective

  • Assuring the privacy and security of transmitting sensitive electronic health information

  • Wearable Health Technology and Electronic Health Record Integration: Scoping Review and Future Directions

  • Literature on Wearable Technology for Connected Health: Scoping Review of Research Trends, Advances, and Barriers

  • Privacy-preserving architecture for providing feedback to clinicians on their clinical performance

  • FedMed: A Federated Learning Framework for Language Modeling

  • Real-World Evidence Gathering in Oncology: The Need for a Biomedical Big Data Insight-Providing Federated Network

  • Federated queries of clinical data repositories: the sum of the parts does not equal the whole

  • FL-QSAR: a federated learning based QSAR prototype for collaborative drug discovery

  • Averaging Is Probably Not the Optimum Way of Aggregating Parameters in Federated Learning

  • LoAdaBoost: Loss-based AdaBoost federated machine learning with reduced computational complexity on IID and non-IID intensive care data

  • Federated learning: a collaborative effort to achieve better medical imaging models for individual sites that have small labelled datasets

  • Implementing partnership-driven clinical federated electronic health record data sharing networks

  • Using a Federated Network of Real-World Data to Optimize Clinical Trials Operations

  • The project data sphere initiative: accelerating cancer research by sharing data

  • The national drug abuse treatment clinical trials network data share project: website design, usage, challenges, and future directions

  • A Federated Network for Translational Cancer Research Using Clinical Data and Biospecimens

  • Implementation of a deidentified federated data network for population-based cohort discovery

  • A system to build distributed multivariate models and manage disparate data sharing policies: implementation in the scalable national network for effectiveness research

  • Federated Aggregate Cohort Estimator (FACE): an easy to deploy, vendor neutral, multi-institutional cohort query architecture

  • Sharing medical data for health research: the early personal health record experience

  • Patient-controlled sharing of medical imaging data across unaffiliated healthcare organizations

  • NeuroLOG: sharing neuroimaging data using an ontology-based federated approach

  • Multi-Objective Evolutionary Federated Learning

  • Privacy-Preserving Predictive Modeling: Harmonization of Contextual Embeddings From Different Sources

  • Joint Content Placement and Storage Allocation Based on Federated Learning in F-RANs

  • Variation-Aware Federated Learning with Multi-Source Decentralized Medical Image Data

  • Fold-stratified cross-validation for unbiased and privacy-preserving federated learning

  • Accounting for data variability in multi-institutional distributed deep learning for medical imaging

  • AI in Health: State of the Art, Challenges, and Future Directions

  • Systematic Review of Privacy-Preserving Distributed Machine Learning From Federated Databases in Health Care

  • Federated Learning on Clinical Benchmark Data: Performance Assessment

  • A Secure Federated Transfer Learning Framework

  • TAG: Transformer Attack from Gradient

  • A BETTER ALTERNATIVE TO ERROR FEEDBACK FOR COMMUNICATION-EFFICIENT DISTRIBUTED LEARNING

  • Timely Communication in Federated Learning

  • FLBench: A Benchmark Suite for Federated Learning

  • FedMood:Federated Learning on Mobile Health Data for Mood Detection

  • FedDG: Federated Domain Generalization on Medical Image Segmentation via Episodic Learning in Continuous Frequency Space

  • Advances and Open Problems in Federated Learning

  • Convergence and Accuracy Trade-Offs in Federated Learning and Meta-Learning

  • PFA: Privacy-preserving Federated Adaptation for Effective Model Personalization

  • Federated Transfer Learning: concept and applications

  • FedV: Privacy-Preserving Federated Learning over Vertically Partitioned Data

  • FedDis: Disentangled Federated Learning for Unsupervised Brain Pathology Segmentation

  • A review of deep learning in medical imaging: Imaging traits, technology trends, case studies with progress highlights, and future promises

  • Channel-Driven Monte Carlo Sampling for Bayesian Distributed Learning in Wireless Data Centers

  • Adversarial training in communication constrained federated learning

  • Distributionally Robust Federated Averaging

  • ESTIMATION OF CONTINUOUS BLOOD PRESSURE FROM PPG VIA A FEDERATED LEARNING APPROACH

  • Free-rider Attacks on Model Aggregation in Federated Learning

  • Federated Unlearning

  • SCALING NEUROSCIENCE RESEARCH USING FEDERATED LEARNING

  • Provably Secure Federated Learning against Malicious Clients

  • Hybrid Federated and Centralized Learning

  • A FIRST LOOK INTO THE CARBON FOOTPRINT OF FEDERATED LEARNING

  • Robust Federated Learning with Attack-Adaptive Aggregation

  • FLOP: Federated Learning on Medical Datasets using Partial Networks

  • Edge Bias in Federated Learning and its Solution by Buffered Knowledge Distillation

  • Security and Privacy for Artificial Intelligence: Opportunities and Challenges

  • Training Federated GANs with Theoretical Guarantees: A Universal Aggregation Approach

  • Decentralized Federated Learning Preserves Model and Data Privacy

  • Dopamine: Differentially Private Federated Learning on Medical Data

  • Federated Intrusion Detection for IoT with Heterogeneous Cohort Privacy

  • Reducing bias and increasing utility by federated generative modeling of medical images using a centralized adversary

  • The Future of Digital Health with Federated Learning

  • Federated Learning: Opportunities and Challenges

  • Fusion of Federated Learning and Industrial Internet of Things: A Survey

  • Comparison of Privacy-Preserving Distributed Deep Learning Methods in Healthcare

  • Privacy-Preserving Technology to Help Millions of People: Federated Prediction Model for Stroke Prevention

  • FedHome: Cloud-Edge based Personalized Federated Learning for In-Home Health Monitoring

  • Privacy-preserving medical image analysis

  • Confederated learning in healthcare: training machine learning models using disconnected data separated by individual, data type and identity for Large-Scale Health System Intelligence

  • Robust Aggregation for Adaptive Privacy Preserving Federated Learning in Healthcare

  • SAFER: Sparse Secure Aggregation for Federated Learning

  • Federated Learning for Healthcare Informatics

  • A Federated Learning Framework for Privacy-preserving and Parallel Training

  • A Federated Learning Framework for Healthcare IoT devices

  • FedNER: Privacy-preserving Medical Named Entity Recognition with Federated Learning

  • Evaluating the Communication Efficiency in Federated Learning Algorithms

  • FOCUS: Dealing with Label Quality Disparity in Federated Learning

  • The Disruptions of 5G on Data-driven Technologies and Applications

  • Substra: a framework for privacy-preserving, traceable and collaborative Machine Learning

  • A blockchain-orchestrated Federated Learning architecture for healthcare consortia

  • FedHealth: A Federated Transfer Learning Framework for Wearable Healthcare

  • A Federated Filtering Framework for Internet of Medical Things

  • FADL:Federated-Autonomous Deep Learning for Distributed Electronic Health Record

  • Facing small and biased data dilemma in drug discovery with federated learning

  • FL-QSAR: a federated learning based QSAR prototype for collaborative drug discovery

  • Truly Privacy-Preserving Federated Analytics for Precision Medicine with Multiparty Homomorphic Encryption

  • Reliable and automatic epilepsy classification with affordable, consumer-grade electroencephalography in rural sub-Saharan Afric

  • sPLINK: A Federated, Privacy-Preserving Tool as a Robust Alternative to Meta-Analysis in Genome-Wide Association Studies

  • Blockchained On-Device Federated Learning

  • Federated learning of predictive models from federated Electronic Health Records

  • Federated Learning with Non-IID Data

  • Federated Multi-Task Learning

  • Federated Uncertainty-Aware Learning for Distributed Hospital EHR Data

  • Patient clustering improves efficiency of federated machine learning to predict mortality and hospital stay time using distributed electronic medical records

  • Predictive Modeling of the Hospital Readmission Risk from Patients’ Claims Data Using Machine Learning: A Case Study on COPD

  • Preserving Patient Privacy while Training a Predictive Model of In-hospital Mortality

  • Deep learning for healthcare: review, opportunities and challenges

  • Differential Privacy-enabled Federated Learning for Sensitive Health Data

  • Dissecting racial bias in an algorithm used to manage the health of populations

  • Distributed learning from multiple EHR databases: Contextual embedding models for medical events

  • Federated and Differentially Private Learning for Electronic Health Records

  • Federated Learning in Distributed Medical Databases: Meta-Analysis of Large-Scale Subcortical Brain Data

  • FedHealth: A Federated Transfer Learning Framework for Wearable Healthcare

  • Large-Scale Assessment of a Smartwatch to Identify Atrial Fibrillation

  • Learning from electronic health records across multiple sites: A communication-efficient and privacy-preserving distributed algorithm

  • LoAdaBoost: loss-based AdaBoost federated machine learning with reduced computational complexity on IID and non-IID intensive care data

  • Modern Framework for Distributed Healthcare Data Analytics Based on Hadoop

  • National Health Information Privacy Regulations Under the Health Insurance Portability and Accountability Act

  • Split learning for health: Distributed deep learning without sharing raw patient data

  • Threats to Federated Learning: A Survey

  • Two-stage Federated Phenotyping and Patient Representation Learning

  • TOWARDS FEDERATED LEARNING AT SCALE: SYSTEM DESIGN

  • A Systematic Literature Review on Federated Machine Learning: From A Software Engineering Perspective

  • Privacy-preserving Federated Deep Learning for Wearable IoT-based Biomedical Monitoring

  • A Federated Learning Framework for Healthcare IoT devices

  • A Systematic Literature Review on Federated Learning: From A Model Quality Perspective

  • Achieving Security and Privacy in Federated Learning Systems: Survey, Research Challenges and Future Directions

  • Understanding the nature of information seeking behavior in critical care: Implications for the design of health information technology

  • COMMUNICATION-COMPUTATION EFFICIENT SECURE AGGREGATION FOR FEDERATED LEARNING

  • Deep Representation Learning of Patient Data from Electronic Health Records (EHR): A Systematic Review

  • Differential Privacy Protection Against Membership Inference Attack on Machine Learning for Genomic Data

  • Emerging Trends in Federated Learning: From Model Fusion to Federated X Learning

  • Molecular property prediction: recent trends in the era of artificial intelligence

  • Multimodal Privacy-preserving Mood Prediction from Mobile Data: A Preliminary Study

  • Computation-efficient Deep Model Training for Ciphertext-based Cross-silo Federated Learning

  • Privacy-preserving Artificial Intelligence Techniques in Biomedicine

  • Robust Aggregation for Adaptive Privacy Preserving Federated Learning in Healthcare

  • Molecula rproperty prediction: recent trends in the era of artificial intelligence

  • A Framework for Edge-Assisted Healthcare Data Analytics using Federated Learning

  • A blockchain-orchestrated Federated Learning architecture for healthcare consortia

  • A NOVEL APPROACH TO MACHINE LEARNING APPLICATION TO PROTECTION PRIVACY DATA IN HEALTHCARE: FEDERATED LEARNING

  • FEEL: A Federated Edge Learning System for Efficient and Privacy-Preserving Mobile Healthcare

  • VAFL: a Method of Vertical Asynchronous Federated Learning

  • Anonymizing Data for Privacy-Preserving Federated Learning

  • FedNER: Privacy-preserving Medical Named Entity Recognition with Federated Learning

  • Modelling Audiological Preferences using Federated Learning

  • Privacy-first health research with federated learning

  • A Syntactic Approach for Privacy-Preserving Federated Learning

  • Achieving Privacy-preserving Federated Learning with Irrelevant Updates over E-Health Applications

  • FedHome: Cloud-Edge based Personalized Federated Learning for In-Home Health Monitoring

  • A Federated Learning Framework for Privacy-preserving and Parallel Training

  • Attack Detection Using Federated Learning in Medical Cyber-Physical Systems

  • Dealing with Open Issues and Unmet Needs in Healthcare Through Ontology Matching and Federated Learning

  • Federated Learning used for predicting outcomes in SARS-COV-2 patients

  • FADL:Federated-Autonomous Deep Learning for Distributed Electronic Health Record

  • Personalized Federated Deep Learning for Pain Estimation From Face Images

  • Comparison of Privacy-Preserving Distributed Deep Learning Methods in Healthcare

  • Reproduce Distributed Learning Networks for Medical Imaging and Investigate the Performance in Edge Scenarios (Healthcare)

  • DNet: An Efficient Privacy-Preserving Distributed Learning Framework for Healthcare Systems

  • A pseudonymisation protocol with implicit and explicit consent routes for health records in federated ledgers

  • Communication Efficient Federated Generalized Tensor Factorization for Collaborative Health Data Analytics

  • A Smart Biometric Identity Management Framework for Personalised IoT and Cloud Computing-Based Healthcare Services

  • The Evolution of a Healthcare Software Framework: Reuse, Evaluation and Lessons Learned

  • Confederated learning in healthcare: training machine learning models using disconnected data separated by individual, data type and identity for Large-Scale Health System Intelligence

  • Towards a Keyword Extraction in Medical and Healthcare Education

  • From the Data on Many, Precision Medicine for “One”: The Case for Widespread Genomic Data Sharing

  • Federated Learning in Mobile Edge Networks: A Comprehensive Survey

  • DBA: Distributed Backdoor Attacks against Federated Learning

  • Three Approaches for Personalization with Applications to Federated Learning

  • Federated Learning of a Mixture of Global and Local Models

  • Think Locally, Act Globally: Federated Learning with Local and Global Representations

  • Inverting Gradients - How easy is it to break privacy in federated learning?

  • A Framework for Evaluating Gradient Leakage Attacks in Federated Learning

  • Multi-site fMRI analysis using privacy-preserving federated learning and domain adaptation: ABIDE results

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

  • Multi-Center Federated Learning

  • Federated Learning for Internet of Things: Recent Advances, Taxonomy, and Open Challenges

  • VANTAGE6: an open source priVAcy preserviNg federaTed leArninG infrastructurE for Secure Insight eXchange

  • One Model to Unite Them All: Personalized Federated Learning of Multi-Contrast MRI Synthesis

  • Federated Learning of Generative Image Priors for MRI Reconstruction

Datasets

  • Federated Learning framework to preserve privacy

[Image source]