Estimating individualized treatment rules - particularly in the context of right-censored outcomes - is challenging because the treatment effect heterogeneity of interest is often small, thus difficult to detect. While this motivates the use of very large datasets such as those from multiple health systems or centres, data privacy may be of concern with participating data centres reluctant to share individual-level data. In this case study on the treatment of depression, we demonstrate an application of distributed regression for privacy protection used in combination with dynamic weighted survival modelling (DWSurv) to estimate an optimal individualized treatment rule whilst obscuring individual-level data. In simulations, we demonstrate the flexibility of this approach to address local treatment practices that may affect confounding, and show that DWSurv retains its double robustness even when performed through a (weighted) distributed regression approach. The work is motivated by, and illustrated with, an analysis of treatment for unipolar depression using the United Kingdom's Clinical Practice Research Datalink.
翻译:估算个人化治疗规则 -- -- 特别是在权利审查结果方面 -- -- 具有挑战性,因为治疗效果的差别性往往很小,因此难以检测,这促使人们使用诸如来自多个保健系统或中心的非常庞大的数据集,但数据隐私可能与参与的数据中心不愿意分享个人级数据有关。关于抑郁症治疗的案例研究表明,在使用动态加权生存模型(DWSurv)来估计最佳个人化治疗规则的同时又掩盖个人一级数据时,对隐私保护采用了分布式回归法。在模拟中,我们展示了这一方法在解决可能影响混乱的当地治疗做法方面的灵活性,并表明即使在采用(加权)分布式回归法时,DWSurv仍保持其双重稳健性。这项工作受到联合王国临床实践研究数据链接对单极型抑郁症治疗的分析的推动和说明。