Decentralized federated learning: Fundamentals, state of the art, frameworks, trends, and challenges
In recent years, Federated Learning (FL) has gained relevance in training collaborative
models without sharing sensitive data. Since its birth, Centralized FL (CFL) has been the …
models without sharing sensitive data. Since its birth, Centralized FL (CFL) has been the …
A review of risk prediction models in cardiovascular disease: conventional approach vs. artificial intelligent approach
ASM Faizal, TM Thevarajah, SM Khor… - Computer methods and …, 2021 - Elsevier
Cardiovascular disease (CVD) is the leading cause of death worldwide and is a global
health issue. Traditionally, statistical models are used commonly in the risk prediction and …
health issue. Traditionally, statistical models are used commonly in the risk prediction and …
[HTML][HTML] Secure logistic regression based on homomorphic encryption: Design and evaluation
Background: Learning a model without accessing raw data has been an intriguing idea to
security and machine learning researchers for years. In an ideal setting, we want to encrypt …
security and machine learning researchers for years. In an ideal setting, we want to encrypt …
Logistic regression model training based on the approximate homomorphic encryption
Background Security concerns have been raised since big data became a prominent tool in
data analysis. For instance, many machine learning algorithms aim to generate prediction …
data analysis. For instance, many machine learning algorithms aim to generate prediction …
Calibrating predictive model estimates to support personalized medicine
Objective: Predictive models that generate individualized estimates for medically relevant
outcomes are playing increasing roles in clinical care and translational research. However …
outcomes are playing increasing roles in clinical care and translational research. However …
A review of automated methods for detection of myocardial ischemia and infarction using electrocardiogram and electronic health records
There is a growing body of research focusing on automatic detection of ischemia and
myocardial infarction (MI) using computer algorithms. In clinical settings, ischemia and MI …
myocardial infarction (MI) using computer algorithms. In clinical settings, ischemia and MI …
G rid Binary LO gistic RE gression (GLORE): building shared models without sharing data
Objective The classification of complex or rare patterns in clinical and genomic data requires
the availability of a large, labeled patient set. While methods that operate on large …
the availability of a large, labeled patient set. While methods that operate on large …
Discernibility and rough sets in medicine: tools and applications
A Øhrn - 2000 - ntnuopen.ntnu.no
This thesis examines how discernibility-based methods can be equipped to posses several
qualities that are needed for analyzing tabular medical data, and how these models can be …
qualities that are needed for analyzing tabular medical data, and how these models can be …
[HTML][HTML] Detecting model misconducts in decentralized healthcare federated learning
Background To accelerate healthcare/genomic medicine research and facilitate quality
improvement, researchers have started cross-institutional collaborations to use artificial …
improvement, researchers have started cross-institutional collaborations to use artificial …
Fair compute loads enabled by blockchain: sharing models by alternating client and server roles
Objective Decentralized privacy-preserving predictive modeling enables multiple institutions
to learn a more generalizable model on healthcare or genomic data by sharing the partially …
to learn a more generalizable model on healthcare or genomic data by sharing the partially …