Maradit Kremers Hilal, Lewallen Laura W, Lahr Brian D, Mabry Tad M, Steckelberg James M, Berry Daniel J, Hanssen Arlen D, Berbari Elie F, Osmon Douglas R
Mayo Clinic, 200 First Street SW, Harwick 6-69, Rochester, MN, 55905, USA,
Clin Orthop Relat Res. 2015 May;473(5):1777-86. doi: 10.1007/s11999-014-4083-y. Epub 2014 Dec 6.
There is increasing interest in using administrative claims data for surveillance of surgical site infections in THAs and TKAs, but the performance of claims-based models for case-mix adjustment has not been well studied. Performance of claims-based models can be improved with the addition of clinical risk factors for surgical site infections.
QUESTIONS/PURPOSES: We assessed (1) discrimination and calibration of claims-based risk-adjustment models for surgical site infections; and (2) the incremental value of adding clinical risk factors to claims-based risk-adjustment models for surgical site infections.
Our study included all THAs and TKAs performed at a large tertiary care hospital from January 1, 2002 to December 31, 2009 (total n = 20,171 procedures). Revision procedures for infections were excluded. Comorbidity data were ascertained through administrative records and classified by the Charlson comorbidity index. Clinical details were obtained from the institutional joint registry and patients' electronic health records. Cox proportional hazards regression models were used to estimate the 1-year risk of surgical site infections with a robust sandwich covariance estimator to account for within-subject correlation of individuals with multiple surgeries. The performance of claims-based risk models with and without the inclusion of four clinical risk factors (morbid obesity, prior nonarthroplasties on the same joint, American Society of Anesthesiologists score, operative time) was assessed using measures of discrimination (C statistic, Somers' D xy rank correlation, and the Nagelkerke R(2) index). Furthermore, calibrations of claims-based risk models with and without clinical factors were assessed graphically by plotting the smoothed trends between model predictions and empirical rates from Kaplan-Meier.
Discrimination of the claims-based risk models was moderate for the THA (C statistic = 0.662, D xy = 0.325, R(2) = 0.028) and TKA (C statistic = 0.621, D xy = 0.241, R(2) = 0.017) cohorts. Inclusion of four clinical risk factors improved discrimination in both cohorts with significant improvement in the C statistic in the THA cohort (C statistic = 0.043; 95% CI, 0.012-0.074) and in the TKA cohort (C statistic = 0.027; 95% CI, 0.007-0.047). Visual inspection suggested that calibration of the claims-based risk models was adequate and comparable to that of models which included the four additional clinical factors.
Claims-based risk-adjustment models for surgical site infections in THA and TKA appear to be adequately calibrated but lack predictive discrimination, particularly with TKAs. The addition of clinical risk factors improves the discriminative ability of the models to a moderate degree; however, addition of clinical factors did not change calibrations, as the models showed reasonable degrees of calibration. When used in the clinical setting, the predictive performance of claims-based risk-adjustment models may be improved further with inclusion of additional clinical data elements.
利用行政索赔数据监测全髋关节置换术(THA)和全膝关节置换术(TKA)手术部位感染的兴趣日益浓厚,但基于索赔的病例组合调整模型的性能尚未得到充分研究。通过添加手术部位感染的临床风险因素,可以提高基于索赔模型的性能。
问题/目的:我们评估了(1)基于索赔的手术部位感染风险调整模型的区分度和校准度;(2)在基于索赔的手术部位感染风险调整模型中添加临床风险因素的增量价值。
我们的研究纳入了2002年1月1日至2009年12月31日在一家大型三级护理医院进行的所有THA和TKA手术(共20,171例手术)。排除感染的翻修手术。通过行政记录确定合并症数据,并根据Charlson合并症指数进行分类。临床细节从机构关节登记处和患者的电子健康记录中获取。使用Cox比例风险回归模型估计手术部位感染的1年风险,并使用稳健的三明治协方差估计量来考虑多次手术个体的个体内相关性。使用区分度测量方法(C统计量、Somers' D xy等级相关性和Nagelkerke R(2)指数)评估包含和不包含四个临床风险因素(病态肥胖、同一关节先前的非关节置换手术、美国麻醉医师协会评分、手术时间)的基于索赔的风险模型的性能。此外,通过绘制模型预测与Kaplan-Meier经验率之间的平滑趋势,以图形方式评估包含和不包含临床因素的基于索赔的风险模型的校准度。
基于索赔的风险模型在THA队列(C统计量 = 0.662,D xy = 0.325,R(2) = 0.028)和TKA队列(C统计量 = 0.621,D xy = 0.241,R(2) = 0.017)中的区分度中等。纳入四个临床风险因素改善了两个队列的区分度,THA队列的C统计量有显著改善(C统计量 = 0.043;95% CI,0.012 - 0.074),TKA队列的C统计量也有改善(C统计量 = 0.027;95% CI,0.007 - 0.047)。目视检查表明,基于索赔的风险模型的校准度足够,且与包含四个额外临床因素的模型相当。
THA和TKA手术部位感染的基于索赔的风险调整模型似乎校准度足够,但缺乏预测区分度,尤其是TKA。添加临床风险因素在一定程度上提高了模型的区分能力;然而,添加临床因素并未改变校准度,因为模型显示出合理的校准度。在临床环境中使用时,通过纳入更多临床数据元素,基于索赔的风险调整模型的预测性能可能会进一步提高。