Torlot Frederick, Yew Chang-Yang, Reilly Jennifer R, Phillips Michael, Weber Dieter G, Corcoran Tomas B, Ho Kwok M, Toner Andrew J
Royal Perth Hospital, Perth, Australia.
Department of Anaesthesiology and Perioperative Medicine, Alfred Hospital, Melbourne, Australia.
BJA Open. 2022 Jun 23;3:100018. doi: 10.1016/j.bjao.2022.100018. eCollection 2022 Sep.
Surgical risk prediction tools can facilitate shared decision-making and efficient allocation of perioperative resources. Such tools should be externally validated in target populations before implementation.
Predicted risk of 30-day mortality was retrospectively derived for surgical patients at Royal Perth Hospital from 2014 to 2021 using the Surgical Outcome Risk Tool (SORT) and the related NZRISK (=44 031, 53 395 operations). In a sub-population (=31 153), the Physiology and Operative Severity Score for the enumeration of Mortality (POSSUM) and the Portsmouth variant of this (P-POSSUM) were matched from the Copeland Risk Adjusted Barometer (C2-Ai, Cambridge, UK). The primary outcome was risk score discrimination of 30-day mortality as evaluated by area-under-receiver operator characteristic curve (AUROC) statistics. Calibration plots and outcomes according to risk decile and time were also explored.
All four risk scores showed high discrimination (AUROC) for 30-day mortality (SORT=0.922, NZRISK=0.909, P-POSSUM=0.893; POSSUM=0.881) but consistently over-predicted risk. SORT exhibited the best discrimination and calibration. Thresholds to denote the highest and second-highest deciles of SORT risk (>3.92% and 1.52-3.92%) captured the majority of deaths (76% and 13%, respectively) and hospital-acquired complications. Year-on-year SORT calibration performance drifted towards over-prediction, reflecting a decrease in 30-day mortality over time despite an increase in the surgical population risk.
SORT was the best performing risk score in predicting 30-day mortality after surgery. Categorising patients based on SORT into low, medium (80-90th percentile), and high risk (90-100th percentile) might guide future allocation of perioperative resources. No tools were sufficiently calibrated to support shared decision-making based on absolute predictions of risk.
手术风险预测工具有助于共同决策和围手术期资源的有效分配。在实施此类工具之前,应在目标人群中进行外部验证。
2014年至2021年期间,使用手术结果风险工具(SORT)和相关的NZRISK(=44031例,53395次手术)对皇家珀斯医院的手术患者进行30天死亡率预测风险的回顾性分析。在一个亚组(=31153例)中,从Copeland风险调整晴雨表(英国剑桥C2-Ai)中匹配了用于计算死亡率的生理和手术严重程度评分(POSSUM)及其朴茨茅斯变体(P-POSSUM)。主要结局是通过受试者工作特征曲线下面积(AUROC)统计评估的30天死亡率的风险评分鉴别能力。还探讨了校准图以及根据风险十分位数和时间的结局。
所有四个风险评分对30天死亡率均显示出较高的鉴别能力(AUROC)(SORT=0.922,NZRISK=0.909,P-POSSUM=0.893;POSSUM=0.881),但始终高估了风险。SORT表现出最佳的鉴别能力和校准效果。表示SORT风险最高和第二高十分位数的阈值(>3.92%和1.52-3.92%)分别捕获了大多数死亡病例(分别为76%和13%)以及医院获得性并发症。逐年来看,SORT校准性能趋于过度预测,这反映出尽管手术人群风险增加,但30天死亡率随时间下降。
SORT是预测手术后30天死亡率表现最佳的风险评分。根据SORT将患者分为低、中(第80-90百分位数)和高风险(第90-100百分位数)类别可能会指导未来围手术期资源的分配。没有工具经过充分校准以支持基于绝对风险预测的共同决策。