Chen James B, Diane Alioune, Lyman Stephen, Chiu Yu-Fen, Blevins Jason L, Westrich Geoffrey H
ARJR Department, Hospital for Special Surgery, New York, NY, USA.
Arthroplast Today. 2022 Apr 2;15:210-214.e0. doi: 10.1016/j.artd.2022.02.018. eCollection 2022 Jun.
Efficient resource management is becoming more important as the demand for total hip arthroplasty (THA) increases. The purpose of this study is to evaluate the ability of linear regression and Bayesian statistics in predicting implant size for THA using patient demographic variables.
A retrospective, single-institution joint-replacement registry review was performed on patients who underwent primary THA from 2005 to 2019. Demographic information was obtained along with primary THA implant data. A total of 11,730 acetabular and 8536 femoral components were included. A multivariable regression model was created on a training cohort of 80% of the sample and applied to the validation cohort (remaining 20%). Bayesian posterior probability methods were applied to the training cohort and then tested in the validation cohort to determine the 1%, 5%, and 10% error tolerance thresholds.
The most predictive regression model included height, weight, and sex (cup: R = 0.57, all < .001; stem mediolateral size [M/L]: R = 0.32, all < .001). Removing weight had a minimal effect and resulted in a more parsimonious model (cup: R = 0.56, all < .001; stem M/L: R = 0.32, all < .001). Applying the posterior probability estimate to the validation cohort in the Bayesian model using height, weight, and sex demonstrated high accuracy in predicting the range of required implant sizes (95.3% cup and 90.4% stem M/L size).
Implant size in THA is correlated with demographic variables to accurately predict implant size using Bayesian modeling. Predictive models such as linear regression and Bayesian modeling can be used to improve operating room efficiency, supply chain inventory management, and decrease costs associated with THA.
随着全髋关节置换术(THA)需求的增加,高效的资源管理变得愈发重要。本研究旨在评估线性回归和贝叶斯统计方法利用患者人口统计学变量预测THA植入物尺寸的能力。
对2005年至2019年接受初次THA的患者进行了一项回顾性、单机构关节置换登记研究。获取了人口统计学信息以及初次THA植入物数据。共纳入11730个髋臼组件和8536个股骨组件。在样本80%的训练队列上创建多变量回归模型,并应用于验证队列(其余20%)。将贝叶斯后验概率方法应用于训练队列,然后在验证队列中进行测试,以确定1%、5%和10%的误差容忍阈值。
最具预测性的回归模型包括身高、体重和性别(髋臼杯:R = 0.57,均P <.001;股骨柄内外侧尺寸[M/L]:R = 0.32,均P <.001)。去除体重影响极小,得到了更简洁的模型(髋臼杯:R = 0.56,均P <.001;股骨柄M/L:R = 0.32,均P <.001)。在贝叶斯模型中,将后验概率估计应用于使用身高、体重和性别的验证队列,在预测所需植入物尺寸范围方面显示出高精度(髋臼杯为95.3%,股骨柄M/L尺寸为90.4%)。
THA中的植入物尺寸与人口统计学变量相关,利用贝叶斯建模可准确预测植入物尺寸。线性回归和贝叶斯建模等预测模型可用于提高手术室效率、供应链库存管理,并降低与THA相关的成本。