Centre for Peri-operative Medicine, University College London, UK.
Department of Anaesthesia and Peri-operative Medicine, UCL Hospitals, London, UK.
Anaesthesia. 2024 Apr;79(4):389-398. doi: 10.1111/anae.16248. Epub 2024 Feb 18.
Complications are common following major surgery and are associated with increased use of healthcare resources, disability and mortality. Continued reliance on mortality estimates risks harming patients and health systems, but existing tools for predicting complications are unwieldy and inaccurate. We aimed to systematically construct an accurate pre-operative model for predicting major postoperative complications; compare its performance against existing tools; and identify sources of inaccuracy in predictive models more generally. Complete patient records from the UK Peri-operative Quality Improvement Programme dataset were analysed. Major complications were defined as Clavien-Dindo grade ≥ 2 for novel models. In a 75% train:25% test split cohort, we developed a pipeline of increasingly complex models, prioritising pre-operative predictors using Least Absolute Shrinkage and Selection Operators (LASSO). We defined the best model in the training cohort by the lowest Akaike's information criterion, balancing accuracy and simplicity. Of the 24,983 included cases, 6389 (25.6%) patients developed major complications. Potentially modifiable risk factors (pain, reduced mobility and smoking) were retained. The best-performing model was highly complex, specifying individual hospital complication rates and 11 patient covariates. This novel model showed substantially superior performance over generic and specific prediction models and scores. We have developed a novel complications model with good internal accuracy, re-prioritised predictor variables and identified hospital-level variation as an important, but overlooked, source of inaccuracy in existing tools. The complexity of the best-performing model does, however, highlight the need for a step-change in clinical risk prediction to automate the delivery of informative risk estimates in clinical systems.
术后并发症较为常见,与医疗资源的增加、残疾和死亡率有关。继续依赖死亡率估计会对患者和医疗系统造成伤害,但现有的并发症预测工具难以使用且不够准确。我们旨在系统地构建一个准确的术前模型来预测主要术后并发症;比较其与现有工具的性能;并确定预测模型中一般存在的不准确性的来源。分析了英国围手术期质量改进计划数据集的完整患者记录。新模型中,主要并发症定义为 Clavien-Dindo 分级≥2。在 75%的训练集:25%的测试集划分队列中,我们使用最小绝对收缩和选择算子(LASSO)构建了一个越来越复杂的模型流水线,优先选择术前预测指标。我们通过最低的赤池信息量准则来确定训练队列中最好的模型,在准确性和简洁性之间取得平衡。在纳入的 24983 例病例中,有 6389 例(25.6%)患者发生了主要并发症。保留了潜在可改变的危险因素(疼痛、活动能力降低和吸烟)。表现最好的模型非常复杂,指定了各医院的并发症发生率和 11 个患者协变量。与通用和特定预测模型和评分相比,这个新模型的表现明显更好。我们已经开发了一种具有良好内部准确性的新型并发症模型,重新确定了预测变量,并确定了医院层面的差异是现有工具中一个重要但被忽视的不准确来源。然而,表现最好的模型的复杂性确实突出了需要对临床风险预测进行变革,以在临床系统中自动提供有意义的风险估计。