Within-trial data borrowing for sequential multiple assignment randomized trials
Summary. The Sequential Multiple Assignment Randomized Trial (SMART) is a complex trial design that involves randomizing a single participant multiple time
Excited to share new research from my former student Ales Kotalik, along with David Vock, Brian Hobbs, and Nancy Sherwood. Here we discuss how dynamic borrowing methods developed for precision oncology can also be used to improve efficiency in a SMART.
08.04.2025 14:58 β π 2 π 2 π¬ 0 π 0
Biostatistician at University of Minnesota
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Assistant Professor of Biostatistics, University of Minnesota
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