Survival analysis is a fundamental tool in medicine, modeling the time until an event of interest occurs in a population. However, in real-world applications, survival data are often incomplete, censored, distributed, and confidential, especially in healthcare settings where privacy is critical. The scarcity of data can severely limit the scalability of survival models to distributed applications that rely on large data pools. Federated learning is a promising technique that enables machine learning models to be trained on multiple datasets without compromising user privacy, making it particularly well-suited for addressing the challenges of survival data and large-scale survival applications. Despite significant developments in federated l...
Survival trees are a non-parametric modeling strategy that can be included in the area of statistica...
Survival analysis methods are a mainstay of the biomedical fields but are finding increasing use in ...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...
Survival analysis is a fundamental tool in medicine, modeling the time until an event of interest oc...
Federated Survival Analysis (FSA) is an emerging technique for analyzing decentralized survival data...
Survival analysis or time-to-event analysis aims to model and predict the time it takes for an event...
Survival analysis studies time-modeling techniques for an event of interest occurring for a populati...
OBJECTIVE: For multi-center heterogeneous Real-World Data (RWD) with time-to-event outcomes and high...
Survival analysis, time-to-event analysis, is an important problem in healthcare since it has a wide...
This work addresses a type of survival prediction (or survival analysis) problem, where the goal is ...
Deep learning-based medical image analysis is an effective and precise method for identifying variou...
We propose a unified and flexible framework for ensemble learning in the presence of censoring. For ...
Random forests have become one of the most popular machine learning tools in recent years. The main ...
The federated learning setting is prone to suffering from non-identically distributed data across pa...
Access to thesis permanently restricted to Ball State community onlySurvival analysis, which is the ...
Survival trees are a non-parametric modeling strategy that can be included in the area of statistica...
Survival analysis methods are a mainstay of the biomedical fields but are finding increasing use in ...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...
Survival analysis is a fundamental tool in medicine, modeling the time until an event of interest oc...
Federated Survival Analysis (FSA) is an emerging technique for analyzing decentralized survival data...
Survival analysis or time-to-event analysis aims to model and predict the time it takes for an event...
Survival analysis studies time-modeling techniques for an event of interest occurring for a populati...
OBJECTIVE: For multi-center heterogeneous Real-World Data (RWD) with time-to-event outcomes and high...
Survival analysis, time-to-event analysis, is an important problem in healthcare since it has a wide...
This work addresses a type of survival prediction (or survival analysis) problem, where the goal is ...
Deep learning-based medical image analysis is an effective and precise method for identifying variou...
We propose a unified and flexible framework for ensemble learning in the presence of censoring. For ...
Random forests have become one of the most popular machine learning tools in recent years. The main ...
The federated learning setting is prone to suffering from non-identically distributed data across pa...
Access to thesis permanently restricted to Ball State community onlySurvival analysis, which is the ...
Survival trees are a non-parametric modeling strategy that can be included in the area of statistica...
Survival analysis methods are a mainstay of the biomedical fields but are finding increasing use in ...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...