Batailler Cécile, Lording Timothy, De Massari Daniele, Witvoet-Braam Sietske, Bini Stefano, Lustig Sébastien
Orthopedic Surgery Department, Croix-Rousse Hospital, Lyon, France.
IFSTTAR, LBMC UMR_T9406, Université Claude Bernard Lyon 1, Villeurbanne, France.
Arthroplast Today. 2021 Apr 24;9:1-15. doi: 10.1016/j.artd.2021.03.013. eCollection 2021 Jun.
Predictive modeling promises to improve our understanding of what variables influence patient satisfaction after total knee arthroplasty (TKA). The purpose of this article was to systematically review the relevant literature using predictive models of clinical outcomes after TKA. The aim was to identify the predictor strategies used for systematic data collection with the highest likelihood of success in predicting clinical outcomes.
A Preferred Reporting Items for Systematic Reviews and Meta-Analyses protocol systematic review was conducted using 3 databases (MEDLINE, EMBASE, and PubMed) to identify all clinical studies that had used predictive models or that assessed predictive features for outcomes after TKA between 1996 and 2020. The ROBINS-I tool was used to evaluate the quality of the studies and the risk of bias.
A total of 75 studies were identified of which 48 met our inclusion criteria. Preoperative predictive factors strongly associated with postoperative clinical outcomes were knee pain, knee-specific Patient-Reported Outcome Measure (PROM) scores, and mental health scores. Demographic characteristics, pre-existing comorbidities, and knee alignment had an inconsistent association with outcomes. The outcome measures that correlated best with the predictive models were improvement of PROM scores, pain scores, and patient satisfaction.
Several algorithms, based on PROM improvement, patient satisfaction, or pain after TKA, have been developed to improve decision-making regarding both indications for surgery and surgical strategy. Functional features such as preoperative pain and PROM scores were highly predictive for clinical outcomes after TKA. Some variables such as demographics data or knee alignment were less strongly correlated with TKA outcomes.
Systematic review - Level III.
预测模型有望增进我们对全膝关节置换术(TKA)后哪些变量会影响患者满意度的理解。本文旨在使用TKA临床结局的预测模型对相关文献进行系统综述。目的是确定用于系统数据收集的预测策略,这些策略在预测临床结局方面成功可能性最高。
采用系统评价与Meta分析的首选报告项目(PRISMA)方案进行系统综述,使用3个数据库(MEDLINE、EMBASE和PubMed)来识别1996年至2020年间所有使用预测模型或评估TKA后结局预测特征的临床研究。使用ROBINS-I工具评估研究质量和偏倚风险。
共识别出75项研究,其中48项符合我们的纳入标准。与术后临床结局密切相关的术前预测因素为膝关节疼痛、膝关节特异性患者报告结局量表(PROM)评分和心理健康评分。人口统计学特征、既往合并症和膝关节对线与结局的关联不一致。与预测模型相关性最佳的结局指标为PROM评分改善、疼痛评分和患者满意度。
已经开发了几种基于TKA后PROM改善、患者满意度或疼痛的算法,以改善关于手术适应症和手术策略的决策。术前疼痛和PROM评分等功能特征对TKA后的临床结局具有高度预测性。一些变量,如人口统计学数据或膝关节对线,与TKA结局的相关性较弱。
系统综述 - 三级。