Kotzé Alwyn, Lawton Tom, Howell Simon J, O'Driscoll Ruairi, Odling-Smee Michael, Shangguan Linqing, Johnson Owen A, Wong David C
Leeds Teaching Hospitals NHS Trust, Leeds, UK.
Faculty of Medicine and Health, University of Leeds, Leeds, UK.
Anaesthesia. 2025 Sep 14. doi: 10.1111/anae.16777.
Demand for surgical treatment is growing and patient complexity is increasing. The NHS England standard contract now requires that pre-operative services risk stratify and optimise patients awaiting surgery. However, current pre-operative workflows (whether electronic or paper-based) remain based primarily on resource-intensive manual tasks. Lack of real-time data transfer has been identified as a key limitation to reducing the surgical backlog.
We developed certified electronic linkages between a live pre-operative assessment system (Smart PreOp, Aire Logic Ltd, Leeds, UK) and the GP Connect system from NHS England to retrieve clinical data directly from general practitioner records into pre-operative questionnaires. We developed machine learning models to categorise patients into lower- and higher-risk cohorts based on their predicted ASA physical status (1 or 2 vs. 3-5) and 30-day postoperative mortality risk. In contrast with previous prediction modelling studies, we constrained variable selection from the outset to variables that are available electronically in real time for all UK surgical patients regardless of where they present (the proposed procedure, demographics and medications lists).
The development and external validation cohorts consisted of 110,732 and 67,878 patients, respectively, from two NHS Trusts using different electronic record systems. In external validation, at decision threshold 0.2, the ASA physical status prediction model had recall 0.69 and precision 0.95 for identifying lower-risk (ASA physical status 1 or 2) patients. The mortality prediction model discriminated well in external validation but was poorly calibrated, lending support to the existing literature showing that hospital-specific modelling improves mortality risk prediction. The technical architecture of the Smart PreOp system facilitates such hospital-specific modelling and periodic model updates.
We conclude that conducting modelling together with systems development can yield accurate prediction models that may be implemented directly into electronic health records. A prospective study of clinical impact and acceptability is warranted.
外科治疗的需求不断增长,患者情况日益复杂。英国国民医疗服务体系(NHS)英格兰标准合同现要求术前服务对等待手术的患者进行风险分层并优化。然而,当前的术前工作流程(无论是电子的还是纸质的)主要仍基于资源密集型的手工任务。缺乏实时数据传输已被确定为减少手术积压的关键限制因素。
我们在一个实时术前评估系统(智能术前评估系统,Aire Logic有限公司,英国利兹)与NHS英格兰的全科医生连接系统之间建立了经过认证的电子链接,以便直接从全科医生记录中检索临床数据并录入术前问卷。我们开发了机器学习模型,根据患者预测的美国麻醉医师协会(ASA)身体状况(1或2级与3 - 5级)和术后30天死亡风险,将患者分为低风险和高风险队列。与之前的预测建模研究不同,我们从一开始就将变量选择限制为所有英国外科患者可实时电子获取的变量(拟进行的手术、人口统计学和药物清单),无论他们在哪里就诊。
开发队列和外部验证队列分别由来自两个使用不同电子记录系统的NHS信托机构的110,732名和67,878名患者组成。在外部验证中,在决策阈值为0.2时,ASA身体状况预测模型识别低风险(ASA身体状况1或2级)患者的召回率为0.69,精确率为0.95。死亡率预测模型在外部验证中区分效果良好,但校准不佳,这支持了现有文献表明特定医院建模可改善死亡风险预测的观点。智能术前评估系统的技术架构有助于进行此类特定医院建模和定期模型更新。
我们得出结论,将建模与系统开发相结合可以产生准确的预测模型,这些模型可以直接应用于电子健康记录。有必要对临床影响和可接受性进行前瞻性研究。