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首页> 外文期刊>Clinical Orthopaedics and Related Research >How Accurate Are the Surgical Risk Preoperative Assessment System (SURPAS) Universal Calculators in Total Joint Arthroplasty?
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How Accurate Are the Surgical Risk Preoperative Assessment System (SURPAS) Universal Calculators in Total Joint Arthroplasty?

机译:外科风险术前评估系统(Surpas)通用计算器在总关节型塑化术中有多准确?

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BackgroundSurgical outcome prediction models are useful for many purposes, including informed consent, shared decision making, preoperative mitigation of modifiable risk, and risk-adjusted quality measures. The recently reported Surgical Risk Preoperative Assessment System (SURPAS) universal risk calculators were developed using 2005-2012 American College of Surgeons National Surgical Quality Improvement Program (ACS-NSQIP), and they demonstrated excellent overall and specialty-specific performance. However, surgeons must assess whether universal calculators are accurate for the small subset of procedures they perform. To our knowledge, SURPAS has not been tested in a subset of patients undergoing lower-extremity total joint arthroplasty (TJA).Questions/purposesHow accurate are SURPAS models' predictions for patients undergoing TJA?MethodsWe identified an internal subset of patients undergoing non-emergency THA or TKA from the 2012 ACS-NSQIP, the most recent year of the SURPAS development dataset. To assess the accuracy of SURPAS prediction models, 30-day postoperative outcomes were defined as in the original SURPAS study: mortality, overall morbidity, and six complication clusters-pulmonary, infectious, cardiac or transfusion, renal, venous thromboembolic, and neurologic. We calculated predicted outcome probabilities by applying coefficients from the published SURPAS logistic regression models to the TJA cohort. Discrimination was assessed with C-indexes, and calibration was assessed with Hosmer-Lemeshow 10-group chi-square tests and decile plots.ResultsThe 30-day postoperative mortality rate for TJA was 0.1%, substantially lower than the 1% mortality rate in the SURPAS development dataset. The most common postoperative complications for TJA were intraoperative or postoperative transfusion (16%), urinary tract infection (5%), and vein thrombosis (3%). The C-indexes for joint arthroplasty ranged from 0.56 for venous thromboembolism (95% CI 0.53 to 0.59 versus SURPAS C-index 0.78) to 0.82 for mortality (95% CI 0.76 to 0.88 versus SURPAS C-index 0.94). All joint arthroplasty C-index estimates, including CIs, were lower than those reported in the original SURPAS development study. Decile plots and Hosmer-Lemeshow tests indicated poor calibration. Observed mortality rates were lower than expected for patients in all risk deciles (lowest decile: no observed deaths, 0.0% versus expected 0.1%; highest decile: observed mortality 0.7% versus expected 2%; p < 0.001). Conversely, observed morbidity rates were higher than expected across all risk deciles (lowest decile: observed 12% versus expected 8%; highest decile: observed morbidity 32% versus expected 25%; p < 0.001)ConclusionsThe universal SURPAS risk models have lower accuracy for TJA procedures than they do for the wider range of procedures in which the SURPAS models were originally developed.Clinical RelevanceThese results suggest that SURPAS model estimates must be evaluated for individual surgical procedures or within restricted groups of related procedures such as joint arthroplasty. Given substantial variation in patient populations and outcomes across numerous surgical procedures, universal perioperative risk calculators may not produce accurate and reliable results for specific procedures. Surgeons and healthcare administrators should use risk calculators developed and validated for specific procedures most relevant to each decision.
机译:背景性结果预测模型对于许多目的是有用的,包括知情同意,共享决策,可修改风险的术前缓解,以及风险调整的质量措施。最近报告的外科风险术前评估系统(Surpas)普遍风险计算器是使用2005-2012美国外科医学院外科医学质量改进计划(ACS-NSQIP)而开发的,他们表现出优异的整体和特殊特定表现。但是,外科医生必须评估通用计算器是否准确,用于他们执行的小程序的小组。据我们所知,Surpas尚未在接受下肢患者的患者患者中进行过度测试(TJA).Questions / purposeshow准确的是Surpas模型对接受TJ的患者的预测鉴定了在不紧急情况下患者的内部子集THA或TKA从2012年ACS-NSQIP,Surpas开发数据集的最近一年。为了评估Surpas预测模型的准确性,30天的术后结果定义为原始Surpas研究:死亡率,总体发病率和六种并发症簇 - 肺,传染性,心脏或输血,肾,静脉血栓栓塞和神经系统。我们通过将已发布的Surpas Logistic回归模型应用于TJA队列来计算预测的结果概率。用C型指数评估歧视,用Hosmer-Lemeshow 10-Group Chi-Square试验和Decile Plots评估校准。TJA的30天术后死亡率为0.1%,显着低于1%的死亡率Surpas开发数据集。 TJA最常见的术后并发症是术中或术后输血(16%),尿路感染(5%)和静脉血栓形成(3%)。关节关节术的C索引范围为0.56,用于静脉血栓栓塞(95%CI 0.53至0.59与Surpas C-Index 0.78)至0.82,用于死亡率为0.82(95%CI 0.76至0.88与Surpas C-Index0.94)。所有关节置换术C型指数估算包括顺便,均低于原始Surpas开发研究中报告的CIS。 Decile Plots和Hosmer-Lemeshow测试表明校准差。所有风险减刑的患者的死亡率低于预期(最低尺寸:未观察到的死亡,0.0%与预期0.1%;最高的十次数:观察到的死亡率0.7%,预期2%; P <0.001)。相反,观察到的发病率均高于所有风险减法的预期(最低的十字:观察到的12%与预期8%;最高的十字:观察到的发病率为32%,预期25%; P <0.001)结论普遍的Surpas风险模型具有较低的准确性TJA程序比他们为更广泛的程序,其中杂志模型最初开发。临床相关的相关结果表明,必须针对个体外科手术或有关关节置换术等相关程序中的受限制群体评估SURPAS模型估计。在许多外科手术中鉴于患者群体和结果的大量变化,普遍的围手术期风险计算器可能不会对特定程序产生准确和可靠的结果。外科医生和医疗管理人员应该使用风险计算器开发并验证与每个决定最相关的具体程序。

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