Theodorou Brandon, Glass Lucas, Xiao Cao, Sun Jimeng
University of Illinois at Urbana-Champaign, Urbana, IL, USA.
IQVIA, Durham, NC, USA.
Patterns (N Y). 2024 Mar 1;5(3):100944. doi: 10.1016/j.patter.2024.100944. eCollection 2024 Mar 8.
The underrepresentation of gender, racial, and ethnic minorities in clinical trials is a problem undermining the efficacy of treatments on minorities and preventing precise estimates of the effects within these subgroups. We propose FRAMM, a deep reinforcement learning framework for fair trial site selection to help address this problem. We focus on two real-world challenges: the data modalities used to guide selection are often incomplete for many potential trial sites, and the site selection needs to simultaneously optimize for both enrollment and diversity. To address the missing data challenge, FRAMM has a modality encoder with a masked cross-attention mechanism for bypassing missing data. To make efficient trade-offs, FRAMM uses deep reinforcement learning with a reward function designed to simultaneously optimize for both enrollment and fairness. We evaluate FRAMM using real-world historical clinical trials and show that it outperforms the leading baseline in enrollment-only settings while also greatly improving diversity.
临床试验中性别、种族和少数族裔代表性不足是一个问题,它破坏了针对少数群体治疗的有效性,并阻碍了对这些亚组内效果的精确估计。我们提出了FRAMM,这是一个用于公平试验地点选择的深度强化学习框架,以帮助解决这一问题。我们关注两个现实世界中的挑战:用于指导选择的数据模式对于许多潜在试验地点来说往往不完整,并且地点选择需要同时针对招募人数和多样性进行优化。为应对缺失数据的挑战,FRAMM有一个带有掩码交叉注意力机制的模态编码器,用于绕过缺失数据。为了进行有效的权衡,FRAMM使用深度强化学习,其奖励函数旨在同时针对招募人数和公平性进行优化。我们使用真实世界的历史临床试验对FRAMM进行评估,结果表明,在仅考虑招募人数的设置中,它优于领先的基线方法,同时也大大提高了多样性。