We developed a One-shot Distributed Algorithm for Cox proportional-hazards model to analyze Heterogeneous multi-center time-to-event data (ODACH) circumventing the need for sharing patient-level information across sites. This algorithm implements a surrogate likelihood function to approximate the Cox log-partial likelihood function that is stratified by site using patient-level data from a lead site and aggregated information from other sites, allowing the baseline hazard functions and the distribution of covariates to vary across sites. Simulation studies and application to a real-world opioid use disorder study showed that ODACH provides estimates close to the pooled estimator, which analyzes patient-level data directly from all sites via...
For cost-effectiveness and efficiency, many large-scale general-purpose cohort studies are being ass...
The Cox proportional hazards model is one of the most popular survival analysis models used to deter...
Hierarchically clustered populations are often encountered in public health research, but the tradit...
Real-world data, including electronic health records and administrative claims data, are widelyused ...
OBJECTIVE: For multi-center heterogeneous Real-World Data (RWD) with time-to-event outcomes and high...
Integrating real-world data (RWD) from several clinical sites offers great opportunities to improve ...
Integrating data across institutions can improve learning efficiency. To integrate data efficiently ...
Linear mixed models are commonly used in healthcare-based association analyses for analyzing multi-s...
Clinical time-to-event studies are dependent on large sample sizes, often not available at a single ...
Recent years have brought both a notable rise in the ability to efficiently harvest vast amounts of ...
Recent years have brought both a notable rise in theability to efficiently harvest vast amounts of i...
Large collaborative research networks provide opportunities to jointly analyze multicenter electroni...
For cost-effectiveness and efficiency, many large-scale general-purpose cohort studies are being ass...
Electronic health records (EHRs) offer great promises for advancing precision medicine and, at the s...
We propose a novel model for hierarchical time-to-event data, for example, healthcare data in which ...
For cost-effectiveness and efficiency, many large-scale general-purpose cohort studies are being ass...
The Cox proportional hazards model is one of the most popular survival analysis models used to deter...
Hierarchically clustered populations are often encountered in public health research, but the tradit...
Real-world data, including electronic health records and administrative claims data, are widelyused ...
OBJECTIVE: For multi-center heterogeneous Real-World Data (RWD) with time-to-event outcomes and high...
Integrating real-world data (RWD) from several clinical sites offers great opportunities to improve ...
Integrating data across institutions can improve learning efficiency. To integrate data efficiently ...
Linear mixed models are commonly used in healthcare-based association analyses for analyzing multi-s...
Clinical time-to-event studies are dependent on large sample sizes, often not available at a single ...
Recent years have brought both a notable rise in the ability to efficiently harvest vast amounts of ...
Recent years have brought both a notable rise in theability to efficiently harvest vast amounts of i...
Large collaborative research networks provide opportunities to jointly analyze multicenter electroni...
For cost-effectiveness and efficiency, many large-scale general-purpose cohort studies are being ass...
Electronic health records (EHRs) offer great promises for advancing precision medicine and, at the s...
We propose a novel model for hierarchical time-to-event data, for example, healthcare data in which ...
For cost-effectiveness and efficiency, many large-scale general-purpose cohort studies are being ass...
The Cox proportional hazards model is one of the most popular survival analysis models used to deter...
Hierarchically clustered populations are often encountered in public health research, but the tradit...