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  "Description": "Simulating composite endpoints with recurrent and terminal\nevents under staggered entry, and for constructing one- and\ntwo-sample group sequential test statistics and monitoring\nboundaries based on the mean frequency function. Details will\nbe available in an upcoming publication.",
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