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Bayesian Hierarchical Models for the Design and Analysis of Studies to Individualize Healthcare [Methods Study], United States, 2015-2020 (ICPSR 39613)

Released/updated on: 2025-12-11
Geographic coverage: United States
Time period: 2015-01-01--2020-01-01

When choosing a treatment, doctors often look at research results that show how well the treatment worked in large groups of people. But many factors can affect how well a treatment works for an individual patient. These factors may include the patient's sex, age, other health problems, or how they responded to treatments in the past. Some patient data sources, such as electronic health records, have this information. But existing statistical methods may not use these data well. For example, existing methods may not be able to take advantage of data that include measurements of a patient's health from more than one point in time.

For this project, the research team developed new methods to analyze data that includes measurements of a patient's health from different points in time. To develop the new methods, the team used a Bayesian approach. Bayesian approaches include findings from previous studies in the analysis, which can make results more accurate.

To access the software and methods, please visit the Neuroconductor website and neuroc_travis GitHub.