Rodriguez Patricia J, Veenstra David L, Heagerty Patrick J, Goss Christopher H, Ramos Kathleen J, Bansal Aasthaa
The Comparative Health Outcomes, Policy & Economics (CHOICE) Institute, University of Washington, Seattle, WA, USA.
The Comparative Health Outcomes, Policy & Economics (CHOICE) Institute, University of Washington, Seattle, WA, USA.
Value Health. 2022 Mar;25(3):350-358. doi: 10.1016/j.jval.2021.11.1360. Epub 2021 Dec 22.
We propose a framework of health outcomes modeling with dynamic decision making and real-world data (RWD) to evaluate the potential utility of novel risk prediction models in clinical practice. Lung transplant (LTx) referral decisions in cystic fibrosis offer a complex case study.
We used longitudinal RWD for a cohort of adults (n = 4247) from the Cystic Fibrosis Foundation Patient Registry to compare outcomes of an LTx referral policy based on machine learning (ML) mortality risk predictions to referral based on (1) forced expiratory volume in 1 second (FEV) alone and (2) heterogenous usual care (UC). We then developed a patient-level simulation model to project number of patients referred for LTx and 5-year survival, accounting for transplant availability, organ allocation policy, and heterogenous treatment effects.
Only 12% of patients (95% confidence interval 11%-13%) were referred for LTx over 5 years under UC, compared with 19% (18%-20%) under FEV and 20% (19%-22%) under ML. Of 309 patients who died before LTx referral under UC, 31% (27%-36%) would have been referred under FEV and 40% (35%-45%) would have been referred under ML. Given a fixed supply of organs, differences in referral time did not lead to significant differences in transplants, pretransplant or post-transplant deaths, or overall survival in 5 years.
Health outcomes modeling with RWD may help to identify novel ML risk prediction models with high potential real-world clinical utility and rule out further investment in models that are unlikely to offer meaningful real-world benefits.
我们提出了一个具有动态决策和真实世界数据(RWD)的健康结果建模框架,以评估新型风险预测模型在临床实践中的潜在效用。囊性纤维化患者的肺移植(LTx)转诊决策提供了一个复杂的案例研究。
我们使用了来自囊性纤维化基金会患者登记处的一组成年人(n = 4247)的纵向RWD,比较基于机器学习(ML)死亡率风险预测的LTx转诊政策与基于以下两种情况的转诊结果:(1)仅基于一秒用力呼气量(FEV);(2)异质性常规护理(UC)。然后,我们开发了一个患者层面的模拟模型,以预测LTx转诊患者的数量和5年生存率,同时考虑移植可用性、器官分配政策和异质性治疗效果。
在UC情况下,5年内只有12%的患者(95%置信区间11%-13%)被转诊进行LTx,而在FEV情况下为19%(18%-20%),在ML情况下为20%(19%-22%)。在UC情况下,309例在LTx转诊前死亡的患者中,31%(27%-36%)在FEV情况下会被转诊,40%(35%-45%)在ML情况下会被转诊。在器官供应固定的情况下,转诊时间的差异并未导致移植、移植前或移植后死亡或5年总生存率的显著差异。
利用RWD进行健康结果建模可能有助于识别具有高潜在真实世界临床效用的新型ML风险预测模型,并排除对不太可能带来有意义的真实世界益处的模型的进一步投资。