Halvorson Ryan T, Torres-Espin Abel, Cherches Matthew, Callahan Matt, Vail Thomas P, Bailey Jeannie F
Department of Orthopaedic Surgery, University of California, San Francisco, San Francisco, CA, USA.
Department of Neurological Surgery, University of California, San Francisco, San Francisco, CA, USA.
Arthroplast Today. 2024 May 11;27:101395. doi: 10.1016/j.artd.2024.101395. eCollection 2024 Jun.
Recovery following total joint arthroplasty is patient-specific, yet groups of patients tend to fall into certain similar patterns of recovery. The purpose of this study was to identify and characterize recovery patterns following total hip arthroplasty (THA) and total knee arthroplasty (TKA) using patient-reported outcomes that represent distinct health domains. We hypothesized that recovery patterns could be defined and predicted using preoperative data.
Adult patients were recruited from a large, urban academic center. To model postoperative responses to THA and TKA across domains such as physical health, mental health, and joint-specific measures, we employed a longitudinal clustering algorithm that incorporates each of these health domains. The clustering algorithm from multiple health domains allows the ability to define distinct recovery trajectories, which could then be predicted from preoperative and perioperative factors using a multinomial regression.
Four hundred forty-one of 1134 patients undergoing THA and 346 of 921 undergoing TKA met eligibility criteria and were used to define distinct patterns of recovery. The clustering algorithm was optimized for 3 distinct patterns of recovery that were observed in THA and TKA patients. Patients recovering from THA were divided into 3 groups: standard responders (50.8%), late mental responders (13.2%), and substandard responders (36.1%). Multivariable, multinomial regression suggested that these 3 groups had defined characteristics. Late mental responders tended to be obese ( = .05) and use more opioids ( = .01). Substandard responders had a larger number of comorbidities ( = .02) and used more opioids ( = .001). Patients recovering from TKA were divided among standard responders (55.8%), poor mental responders (24%), and poor physical responders (20.2%). Poor mental responders were more likely to be female ( = .04) and American Society of Anesthesiologists class III/IV ( = .004). Poor physical responders were more likely to be female ( = .03), younger ( = .04), American Society of Anesthesiologists III/IV ( = .04), use more opioids ( = .02), and be discharged to a nursing facility ( = .001). The THA and TKA models demonstrated areas under the curve of 0.67 and 0.72.
This multidomain, longitudinal clustering analysis defines 3 distinct patterns in the recovery of THA and TKA patients, with most patients in both cohorts experiencing robust improvement, while others had equally well defined yet less optimal recovery trajectories that were either delayed in recovery or failed to achieve a desired outcome. Patients in the delayed recovery and poor outcome groups were slightly different between THA and TKA. These groups of patients with similar recovery patterns were defined by patient characteristics that include potentially modifiable comorbid factors. This research suggests that there are multiple defined recovery trajectories after THA and TKA, which provides a new perspective on THA and TKA recovery.
III.
全关节置换术后的恢复情况因人而异,但患者群体往往会呈现出某些相似的恢复模式。本研究的目的是使用代表不同健康领域的患者报告结局,识别并描述全髋关节置换术(THA)和全膝关节置换术(TKA)后的恢复模式。我们假设可以使用术前数据来定义和预测恢复模式。
从一个大型城市学术中心招募成年患者。为了模拟THA和TKA术后在身体健康、心理健康和关节特异性指标等领域的反应,我们采用了一种纵向聚类算法,该算法纳入了这些健康领域的每一个。来自多个健康领域的聚类算法能够定义不同的恢复轨迹,然后可以使用多项回归从术前和围手术期因素进行预测。
1134例接受THA的患者中有441例,921例接受TKA的患者中有346例符合纳入标准,并用于定义不同的恢复模式。聚类算法针对在THA和TKA患者中观察到的3种不同恢复模式进行了优化。接受THA治疗后恢复的患者分为3组:标准反应者(50.8%)、晚期心理反应者(13.2%)和次标准反应者(36.1%)。多变量多项回归表明这3组具有明确的特征。晚期心理反应者往往肥胖(P = 0.05)且使用更多阿片类药物(P = 0.01)。次标准反应者有更多的合并症(P = 0.02)且使用更多阿片类药物(P = 0.001)。接受TKA治疗后恢复的患者分为标准反应者(55.8%)、心理反应差者(24%)和身体反应差者(20.2%)。心理反应差者更可能为女性(P = 0.04)且美国麻醉医师协会分级为III/IV级(P = 0.004)。身体反应差者更可能为女性(P = 0.03)、年龄较小(P = 0.04)、美国麻醉医师协会分级为III/IV级(P = 0.04)、使用更多阿片类药物(P = 0.02)且出院后入住护理机构(P = 0.001)。THA和TKA模型的曲线下面积分别为0.67和0.72。
这种多领域纵向聚类分析定义了THA和TKA患者恢复的3种不同模式,两个队列中的大多数患者都有显著改善,而其他患者则有同样明确但不太理想的恢复轨迹,要么恢复延迟,要么未能达到预期结果。THA和TKA中延迟恢复和预后不良组的患者略有不同。这些具有相似恢复模式的患者组由包括潜在可改变的合并因素在内的患者特征所定义。这项研究表明,THA和TKA后有多种明确的恢复轨迹,这为THA和TKA的恢复提供了新的视角。
III级。