Department of Health Sciences Research, Mayo Clinic, Rochester, Minnesota, USA.
Mayo Clinic Robert D. and Patricia E. Kern Center for the Science of Health Care Delivery, Mayo Clinic, Rochester, Minnesota, USA.
J Am Med Inform Assoc. 2021 Jun 12;28(6):1065-1073. doi: 10.1093/jamia/ocaa211.
Access to palliative care (PC) is important for many patients with uncontrolled symptom burden from serious or complex illness. However, many patients who could benefit from PC do not receive it early enough or at all. We sought to address this problem by building a predictive model into a comprehensive clinical framework with the aims to (i) identify in-hospital patients likely to benefit from a PC consult, and (ii) intervene on such patients by contacting their care team.
Electronic health record data for 68 349 inpatient encounters in 2017 at a large hospital were used to train a model to predict the need for PC consult. This model was published as a web service, connected to institutional data pipelines, and consumed by a downstream display application monitored by the PC team. For those patients that the PC team deems appropriate, a team member then contacts the patient's corresponding care team.
Training performance AUC based on a 20% holdout validation set was 0.90. The most influential variables were previous palliative care, hospital unit, Albumin, Troponin, and metastatic cancer. The model has been successfully integrated into the clinical workflow making real-time predictions on hundreds of patients per day. The model had an "in-production" AUC of 0.91. A clinical trial is currently underway to assess the effect on clinical outcomes.
A machine learning model can effectively predict the need for an inpatient PC consult and has been successfully integrated into practice to refer new patients to PC.
姑息治疗(PC)的可及性对于许多患有严重或复杂疾病且症状无法控制的患者非常重要。然而,许多本应从 PC 中获益的患者并未尽早或根本未接受 PC。我们希望通过在综合临床框架中构建预测模型来解决这个问题,该模型的目的是:(i)识别有住院患者可能从 PC 咨询中受益,(ii)通过联系患者的护理团队对这些患者进行干预。
使用 2017 年一家大型医院的 68349 例住院患者的电子健康记录数据来训练预测 PC 咨询需求的模型。该模型被发布为一个 Web 服务,连接到机构数据管道,并被 PC 团队监控的下游显示应用程序使用。对于 PC 团队认为合适的患者,团队成员会联系患者相应的护理团队。
基于 20%的保留验证集的训练性能 AUC 为 0.90。最具影响力的变量是之前的姑息治疗、医院科室、白蛋白、肌钙蛋白和转移性癌症。该模型已成功集成到临床工作流程中,每天可对数百名患者进行实时预测。该模型的“生产中”AUC 为 0.91。目前正在进行一项临床试验,以评估对临床结果的影响。
机器学习模型可以有效地预测住院患者 PC 咨询的需求,并已成功集成到实践中,为新患者提供 PC 服务。