Motesharei Arman, Batailler Cecile, De Massari Daniele, Vincent Graham, Chen Antonia F, Lustig Sébastien
Stryker, Newbury, UK.
Orthopedic Surgery Department, Croix-Rousse Hospital, Lyon, France.
Bone Jt Open. 2022 May;3(5):383-389. doi: 10.1302/2633-1462.35.BJO-2022-0014.R1.
No predictive model has been published to forecast operating time for total knee arthroplasty (TKA). The aims of this study were to design and validate a predictive model to estimate operating time for robotic-assisted TKA based on demographic data, and evaluate the added predictive power of CT scan-based predictors and their impact on the accuracy of the predictive model.
A retrospective study was conducted on 1,061 TKAs performed from January 2016 to December 2019 with an image-based robotic-assisted system. Demographic data included age, sex, height, and weight. The femoral and tibial mechanical axis and the osteophyte volume were calculated from CT scans. These inputs were used to develop a predictive model aimed to predict operating time based on demographic data only, and demographic and 3D patient anatomy data.
The key factors for predicting operating time were the surgeon and patient weight, followed by 12 anatomical parameters derived from CT scans. The predictive model based only on demographic data showed that 90% of predictions were within 15 minutes of actual operating time, with 73% within ten minutes. The predictive model including demographic data and CT scans showed that 94% of predictions were within 15 minutes of actual operating time and 88% within ten minutes.
The primary factors for predicting robotic-assisted TKA operating time were surgeon, patient weight, and osteophyte volume. This study demonstrates that incorporating 3D patient-specific data can improve operating time predictions models, which may lead to improved operating room planning and efficiency. Cite this article: 2022;3(5):383-389.
目前尚未有已发表的预测全膝关节置换术(TKA)手术时间的模型。本研究的目的是设计并验证一个基于人口统计学数据来估计机器人辅助TKA手术时间的预测模型,并评估基于CT扫描的预测指标的额外预测能力及其对预测模型准确性的影响。
对2016年1月至2019年12月期间使用基于图像的机器人辅助系统进行的1061例TKA手术进行回顾性研究。人口统计学数据包括年龄、性别、身高和体重。从CT扫描中计算股骨和胫骨的机械轴以及骨赘体积。这些输入数据被用于开发一个预测模型,该模型旨在仅基于人口统计学数据,以及人口统计学和3D患者解剖学数据来预测手术时间。
预测手术时间的关键因素是外科医生和患者体重,其次是从CT扫描得出的12个解剖学参数。仅基于人口统计学数据的预测模型显示,90%的预测值与实际手术时间相差在15分钟内,73%相差在10分钟内。包含人口统计学数据和CT扫描的预测模型显示,94%的预测值与实际手术时间相差在15分钟内,88%相差在10分钟内。
预测机器人辅助TKA手术时间的主要因素是外科医生、患者体重和骨赘体积。本研究表明,纳入患者特定的3D数据可以改善手术时间预测模型,这可能会改善手术室规划和效率。引用本文:2022;3(5):383-389。