Matsen Frederick A, Russ Stacy M, Vu Phuong T, Hsu Jason E, Lucas Robert M, Comstock Bryan A
Department of Orthopaedics and Sports Medicine, University of Washington, Seattle, WA, USA.
Shoulder and Elbow Surgery, Department of Orthopaedics and Sports Medicine, University of Washington Medical Center, 1959 NE Pacific Street, Box 356500, Seattle, WA, 98195-6500, USA.
Clin Orthop Relat Res. 2016 Nov;474(11):2496-2510. doi: 10.1007/s11999-016-4990-1. Epub 2016 Jul 25.
Although shoulder arthroplasties generally are effective in improving patients' comfort and function, the results are variable for reasons that are not well understood.
QUESTIONS/PURPOSES: We posed two questions: (1) What factors are associated with better 2-year outcomes after shoulder arthroplasty? (2) What are the sensitivities, specificities, and positive and negative predictive values of a multivariate predictive model for better outcome?
Three hundred thirty-nine patients having a shoulder arthroplasty (hemiarthroplasty, arthroplasty for cuff tear arthropathy, ream and run arthroplasty, total shoulder or reverse total shoulder arthroplasty) between August 24, 2010 and December 31, 2012 consented to participate in this prospective study. Two patients were excluded because they were missing baseline variables. Forty-three patients were missing 2-year data. Univariate and multivariate analyses determined the relationship of baseline patient, shoulder, and surgical characteristics to a "better" outcome, defined as an improvement of at least 30% of the maximal possible improvement in the Simple Shoulder Test. The results were used to develop a predictive model, the accuracy of which was tested using a 10-fold cross-validation.
After controlling for potentially relevant confounding variables, the multivariate analysis showed that the factors significantly associated with better outcomes were American Society of Anesthesiologists Class I (odds ratio [OR], 1.94; 95% CI, 1.03-3.65; p = 0.041), shoulder problem not related to work (OR, 5.36; 95% CI, 2.15-13.37; p < 0.001), lower baseline Simple Shoulder Test score (OR, 1.32; 95% CI, 1.23-1.42; p < 0.001), no prior shoulder surgery (OR, 1.79; 95% CI, 1.18-2.70; p = 0.006), humeral head not superiorly displaced on the AP radiograph (OR, 2.14; 95% CI, 1.15-4.02; p = 0.017), and glenoid type other than A1 (OR, 4.47; 95% CI, 2.24-8.94; p < 0.001). Neither preoperative glenoid version nor posterior decentering of the humeral head on the glenoid were associated with the outcomes. The model predictive of a better result was driven mainly by the six factors listed above. The area under the receiver operating characteristic curve generated from the cross-validated enhanced predictive model was 0.79 (generally values of 0.7 to 0.8 are considered fair and values of 0.8 to 0.9 are considered good). The false-positive fraction and the true-positive fraction depended on the cutoff probability selected (ie, the selected probability above which the prediction would be classified as a better outcome). A cutoff probability of 0.68 yielded the best performance of the model with cross-validation predictions of better outcomes for 236 patients (80%) and worse outcomes for 58 patients (20%); sensitivity of 91% (95% CI, 88%-95%); specificity of 65% (95% CI, 53%-77%); positive predictive value of 92% (95% CI, 88%-95%); and negative predictive value of 64% (95% CI, 51%-76%).
We found six easy-to-determine preoperative patient and shoulder factors that were significantly associated with better outcomes of shoulder arthroplasty. A model based on these characteristics had good predictive properties for identifying patients likely to have a better outcome from shoulder arthroplasty. Future research could refine this model with larger patient populations from multiple practices.
Level II, therapeutic study.
尽管肩关节置换术通常能有效改善患者的舒适度和功能,但结果存在差异,原因尚不清楚。
问题/目的:我们提出了两个问题:(1)肩关节置换术后2年更好结局与哪些因素相关?(2)多变量预测模型对更好结局的敏感度、特异度、阳性预测值和阴性预测值是多少?
2010年8月24日至2012年12月31日期间接受肩关节置换术(半肩关节置换术、肩袖撕裂性关节病的关节置换术、扩髓和植骨关节置换术、全肩关节或反式全肩关节置换术)的339例患者同意参与这项前瞻性研究。两名患者因缺少基线变量被排除。43例患者缺少2年数据。单变量和多变量分析确定了基线患者、肩部和手术特征与“更好”结局之间的关系,“更好”结局定义为简单肩关节测试中至少提高最大可能改善的30%。结果用于建立预测模型,并使用10倍交叉验证测试其准确性。
在控制潜在的相关混杂变量后,多变量分析显示与更好结局显著相关的因素为美国麻醉医师协会分级I级(比值比[OR],1.94;95%置信区间,1.03 - 3.65;p = 0.041)、与工作无关的肩部问题(OR,5.36;95%置信区间,2.15 - 13.37;p < 0.001)、较低的基线简单肩关节测试评分(OR,1.32;95%置信区间,1.23 - 1.42;p < 0.001)、无既往肩部手术史(OR,1.79;95%置信区间,1.18 - 2.70;p = 0.006)、前后位X线片上肱骨头未向上移位(OR,2.14;95%置信区间,1.15 - 4.02;p = 0.017)以及非A1型肩胛盂(OR,4.47;95%置信区间,2.24 - 8.94;p < 0.001)。术前肩胛盂角度和肱骨头在肩胛盂上的后倾均与结局无关。预测更好结果的模型主要由上述六个因素驱动。交叉验证增强预测模型生成的受试者工作特征曲线下面积为0.79(一般认为0.7至0.8的值为中等,0.8至0.9的值为良好)。假阳性率和真阳性率取决于所选的截断概率(即预测将被分类为更好结局的选定概率)。截断概率为0.68时模型性能最佳,交叉验证预测236例患者结局更好(80%),58例患者结局更差(20%);敏感度为91%(95%置信区间,88% - 95%);特异度为65%(95%置信区间,53% - 77%);阳性预测值为92%(95%置信区间,88% - 95%);阴性预测值为64%(95%置信区间,51% - 76%)。
我们发现六个易于确定的术前患者和肩部因素与肩关节置换术更好结局显著相关。基于这些特征的模型在识别可能从肩关节置换术中获得更好结局的患者方面具有良好的预测性能。未来研究可通过来自多个医疗机构的更大患者群体完善该模型。
II级,治疗性研究。