Taylor & Francis Group
Browse
usbr_a_2308882_sm6627.pdf (5.32 MB)

Optimizing Patient Recruitment in Global Clinical Trials using Nature-Inspired Metaheuristics

Download (5.32 MB)
Version 2 2024-03-18, 13:40
Version 1 2024-02-06, 13:40
journal contribution
posted on 2024-03-18, 13:40 authored by Mitchell Aaron Schepps, Weng Kee Wong, Matt Austin, Volodymyr Anisimov

A common problem seen in the ineffective execution of global multicenter trials is the frequent inability to recruit a sufficient number of patients. A myriad of barriers to recruiting enough patients timely exist and may include practical limits on the number of recruiting sites imposed by the various countries, as well as administrative, cost and unanticipated issues. The Poisson-gamma recruitment model is a widely accepted statistical tool used to predict and track recruitment at different levels of a trial and make inference. An optimal recruitment plan can be designed using mathematical optimization, however, the search is complicated with multiple nonlinear objectives and constraints that arise from regulatory and budgetary considerations. We review nature-inspired metaheuristic algorithms which are powerful, flexible, general purpose optimization tools and demonstrate their capability and utility in optimizing complex recruitment designs for global clinical trials using the Poisson-gamma model as an exemplary model. This research opens up new avenues for improving the efficiency and effectiveness of patient recruitment in clinical trials, thereby potentially accelerating the development of new medical treatments.

Funding

The research of Mitchell Aaron Schepps was supported by a partnership between Amgen and the University California Los Angeles Department of Biostatistics. The research of Weng Kee Wong was partially supported by the Yushan Fellow Program from the Ministry of Education, Taiwan.

History