Department of Epidemiology, Julius Center for Health Sciences and Primary Care, University Medical Center Utrecht, Utrecht, the Netherlands.
Department of Applied Mathematics, Computer Science and Statistics, Ghent University, Ghent, Belgium.
Biom J. 2024 Dec;66(8):e70011. doi: 10.1002/bimj.70011.
Prediction models are used among others to inform medical decisions on interventions. Typically, individuals with high risks of adverse outcomes are advised to undergo an intervention while those at low risk are advised to refrain from it. Standard prediction models do not always provide risks that are relevant to inform such decisions: for example, an individual may be estimated to be at low risk because similar individuals in the past received an intervention which lowered their risk. Therefore, prediction models supporting decisions should target risks belonging to defined intervention strategies. Previous works on prediction under interventions assumed that the prediction model was used only at one time point to make an intervention decision. In clinical practice, intervention decisions are rarely made only once: they might be repeated, deferred, and reevaluated. This requires estimated risks under interventions that can be reconsidered at several potential decision moments. In the current work, we highlight key considerations for formulating estimands in sequential prediction under interventions that can inform such intervention decisions. We illustrate these considerations by giving examples of estimands for a case study about choosing between vaginal delivery and cesarean section for women giving birth. Our formalization of prediction tasks in a sequential, causal, and estimand context provides guidance for future studies to ensure that the right question is answered and appropriate causal estimation approaches are chosen to develop sequential prediction models that can inform intervention decisions.
预测模型除其他用途外,还用于为干预措施提供医学决策依据。通常,建议高风险不良后果的个体接受干预,而低风险的个体则建议避免干预。标准预测模型并不总是提供与做出此类决策相关的风险:例如,个体可能被估计为低风险,因为过去类似的个体接受了降低风险的干预措施。因此,支持决策的预测模型应针对属于特定干预策略的风险。干预下预测的先前工作假设仅在一个时间点使用预测模型做出干预决策。在临床实践中,干预决策很少只做出一次:它们可能会被重复、推迟和重新评估。这需要在几个潜在的决策时刻重新考虑干预下的估计风险。在当前的工作中,我们强调了在干预下进行序贯预测中制定估计量的关键考虑因素,这些因素可以为此类干预决策提供信息。我们通过举例说明关于选择阴道分娩和剖腹产的案例研究中的估计量来举例说明这些考虑因素。我们在序贯、因果和估计量背景下对预测任务进行形式化,为未来的研究提供了指导,以确保回答正确的问题并选择适当的因果估计方法来开发能够为干预决策提供信息的序贯预测模型。