Center for Innovation to Implementation, VA Palo Alto Health Care System, Palo Alto, CA; Department of Surgery, Stanford -Surgical Policy Improvement Research and Education Center, Stanford University School of Medicine, Stanford, CA.
San Francisco Veterans Affairs Medical Center, University of California, San Francisco, CA.
J Arthroplasty. 2018 May;33(5):1539-1545. doi: 10.1016/j.arth.2017.12.003. Epub 2017 Dec 13.
Statistical models to preoperatively predict patients' risk of death and major complications after total joint arthroplasty (TJA) could improve the quality of preoperative management and informed consent. Although risk models for TJA exist, they have limitations including poor transparency and/or unknown or poor performance. Thus, it is currently impossible to know how well currently available models predict short-term complications after TJA, or if newly developed models are more accurate. We sought to develop and conduct cross-validation of predictive risk models, and report details and performance metrics as benchmarks.
Over 90 preoperative variables were used as candidate predictors of death and major complications within 30 days for Veterans Health Administration patients with osteoarthritis who underwent TJA. Data were split into 3 samples-for selection of model tuning parameters, model development, and cross-validation. C-indexes (discrimination) and calibration plots were produced.
A total of 70,569 patients diagnosed with osteoarthritis who received primary TJA were included. C-statistics and bootstrapped confidence intervals for the cross-validation of the boosted regression models were highest for cardiac complications (0.75; 0.71-0.79) and 30-day mortality (0.73; 0.66-0.79) and lowest for deep vein thrombosis (0.59; 0.55-0.64) and return to the operating room (0.60; 0.57-0.63).
Moderately accurate predictive models of 30-day mortality and cardiac complications after TJA in Veterans Health Administration patients were developed and internally cross-validated. By reporting model coefficients and performance metrics, other model developers can test these models on new samples and have a procedure and indication-specific benchmark to surpass.
用于术前预测全关节置换术(TJA)后患者死亡和主要并发症风险的统计模型可以提高术前管理和知情同意的质量。尽管存在 TJA 风险模型,但它们存在局限性,包括透明度差和/或性能未知或不佳。因此,目前无法了解现有模型对 TJA 后短期并发症的预测效果如何,或者新开发的模型是否更准确。我们试图开发和进行预测风险模型的交叉验证,并报告详细信息和性能指标作为基准。
超过 90 个术前变量被用作退伍军人健康管理局接受 TJA 的骨关节炎患者术后 30 天内死亡和主要并发症的预测因子。数据分为 3 个样本,用于模型调谐参数的选择、模型开发和交叉验证。生成 C 指数(区分度)和校准图。
共纳入 70569 例诊断为骨关节炎并接受初次 TJA 的患者。经增强回归模型交叉验证,心脏并发症(0.75;0.71-0.79)和 30 天死亡率(0.73;0.66-0.79)的 C 统计量和bootstrap 置信区间最高,深静脉血栓形成(0.59;0.55-0.64)和返回手术室(0.60;0.57-0.63)的最低。
在退伍军人健康管理局患者中,开发并内部交叉验证了 TJA 后 30 天死亡率和心脏并发症的中等准确预测模型。通过报告模型系数和性能指标,其他模型开发人员可以在新样本上测试这些模型,并拥有特定程序和适应症的基准来超越。