Venäläinen Mikko S, Panula Valtteri J, Eskelinen Antti P, Fenstad Anne Marie, Furnes Ove, Hallan Geir, Rolfson Ola, Kärrholm Johan, Hailer Nils P, Pedersen Alma B, Overgaard Søren, Mäkelä Keijo T, Elo Laura L
Turku University Hospital, University of Turku and Åbo Akademi University, Turku, Finland.
Turku University Hospital and University of Turku, Turku, Finland.
ACR Open Rheumatol. 2024 Oct;6(10):669-677. doi: 10.1002/acr2.11709. Epub 2024 Jul 23.
Preoperative risk prediction models can support shared decision-making before total hip arthroplasties (THAs). Here, we compare different machine-learning (ML) approaches to predict the six-month risk of adverse events following primary THA to obtain accurate yet simple-to-use risk prediction models.
We extracted data on primary THAs (N = 262,356) between 2010 and 2018 from the Nordic Arthroplasty Register Association dataset. We benchmarked a variety of ML algorithms in terms of the area under the receiver operating characteristic curve (AUROC) for predicting the risk of revision caused by periprosthetic joint infection (PJI), dislocation or periprosthetic fracture (PPF), and death. All models were internally validated against a randomly selected test cohort (one-third of the data) that was not used for training the models.
The incidences of revisions because of PJI, dislocation, and PPF were 0.8%, 0.4%, and 0.3%, respectively, and the incidence of death was 1.2%. Overall, Lasso regression with stable iterative variable selection (SIVS) produced models using only four to five input variables but with AUROC comparable to more complex models using all 32 variables available. The SIVS-based Lasso models based on age, sex, preoperative diagnosis, bearing couple, fixation, and surgical approach predicted the risk of revisions caused by PJI, dislocations, and PPF, as well as death, with AUROCs of 0.61, 0.67, 0.76, and 0.86, respectively.
Our study demonstrates that satisfactory predictive potential for adverse events following THA can be reached with parsimonious modeling strategies. The SIVS-based Lasso models may serve as simple-to-use tools for clinical risk assessment in the future.
术前风险预测模型可辅助全髋关节置换术(THA)前的共同决策。在此,我们比较不同的机器学习(ML)方法,以预测初次THA后六个月不良事件的风险,从而获得准确且易于使用的风险预测模型。
我们从北欧关节置换登记协会数据集中提取了2010年至2018年间初次THA(N = 262,356)的数据。我们根据预测假体周围关节感染(PJI)、脱位或假体周围骨折(PPF)以及死亡导致的翻修风险的受试者工作特征曲线下面积(AUROC),对多种ML算法进行了基准测试。所有模型均针对未用于训练模型的随机选择的测试队列(三分之一的数据)进行了内部验证。
因PJI、脱位和PPF导致的翻修发生率分别为0.8%、0.4%和0.3%,死亡发生率为1.2%。总体而言,采用稳定迭代变量选择(SIVS)的套索回归生成的模型仅使用四到五个输入变量,但其AUROC与使用所有32个可用变量的更复杂模型相当。基于年龄、性别、术前诊断、关节面组合、固定方式和手术入路的基于SIVS的套索模型预测PJI、脱位和PPF以及死亡导致的翻修风险,其AUROC分别为0.61、0.67、0.76和0.86。
我们的研究表明,采用简约建模策略可实现对THA后不良事件的满意预测潜力。基于SIVS的套索模型未来可能成为临床风险评估的易于使用的工具。