Predicting Recovery Following Total Hip and Knee Arthroplasty Using a Clustering Algorithm

IF 1.5 Q3 ORTHOPEDICS Arthroplasty Today Pub Date : 2024-06-01 DOI:10.1016/j.artd.2024.101395
Ryan T. Halvorson MD , Abel Torres-Espin PhD , Matthew Cherches MD , Matt Callahan MBA , Thomas P. Vail MD , Jeannie F. Bailey PhD
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引用次数: 0

Abstract

Background

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.

Methods

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.

Results

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 (P = .05) and use more opioids (P = .01). Substandard responders had a larger number of comorbidities (P = .02) and used more opioids (P = .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 (P = .04) and American Society of Anesthesiologists class III/IV (P = .004). Poor physical responders were more likely to be female (P = .03), younger (P = .04), American Society of Anesthesiologists III/IV (P = .04), use more opioids (P = .02), and be discharged to a nursing facility (P = .001). The THA and TKA models demonstrated areas under the curve of 0.67 and 0.72.

Conclusions

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.

Level of Evidence

III.

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使用聚类算法预测全髋关节和膝关节置换术后的恢复情况
背景全关节置换术后的恢复因患者而异,但患者群体往往有某些相似的恢复模式。本研究的目的是利用代表不同健康领域的患者报告结果来识别和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。我们假设可以通过术前数据来定义和预测恢复模式。方法从一个大型城市学术中心招募成年患者。为了在身体健康、心理健康和关节特异性测量等领域建立 THA 和 TKA 术后反应模型,我们采用了一种纵向聚类算法,其中包含了每个健康领域。从多个健康领域出发的聚类算法能够定义不同的恢复轨迹,然后使用多项式回归法根据术前和围手术期因素对这些轨迹进行预测。结果1134名接受THA手术的患者中有441人符合资格标准,921名接受TKA手术的患者中有346人符合资格标准,这些患者被用来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。THA康复患者分为三组:标准反应者(50.8%)、晚期精神反应者(13.2%)和次标准反应者(36.1%)。多变量、多项式回归表明,这 3 个组别具有明确的特征。晚期精神反应者倾向于肥胖(P = 0.05)和使用更多阿片类药物(P = 0.01)。反应不达标者合并症较多(P = .02),使用阿片类药物较多(P = .001)。TKA术后康复患者分为标准反应者(55.8%)、精神反应差者(24%)和身体反应差者(20.2%)。精神反应差者更可能是女性(P = .04)和美国麻醉医师协会 III/IV 级(P = .004)。身体反应差者更有可能是女性(P = .03)、年轻(P = .04)、美国麻醉医师协会 III/IV 级(P = .04)、使用更多阿片类药物(P = .02)和出院后去护理机构(P = .001)。结论这项多领域纵向聚类分析确定了 THA 和 TKA 患者恢复的 3 种不同模式,两组患者中的大多数都有明显改善,而另一些患者的恢复轨迹同样明确,但却不尽如人意,要么延迟恢复,要么未能达到预期效果。延迟恢复组和疗效不佳组的患者在 THA 和 TKA 之间略有不同。这些具有相似康复模式的患者组别是由患者特征(包括潜在的可改变的合并症因素)定义的。这项研究表明,THA和TKA术后存在多种明确的恢复轨迹,这为THA和TKA术后恢复提供了一个新的视角。
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来源期刊
Arthroplasty Today
Arthroplasty Today Medicine-Surgery
CiteScore
2.90
自引率
0.00%
发文量
258
审稿时长
40 weeks
期刊介绍: Arthroplasty Today is a companion journal to the Journal of Arthroplasty. The journal Arthroplasty Today brings together the clinical and scientific foundations for joint replacement of the hip and knee in an open-access, online format. Arthroplasty Today solicits manuscripts of the highest quality from all areas of scientific endeavor that relate to joint replacement or the treatment of its complications, including those dealing with patient outcomes, economic and policy issues, prosthetic design, biomechanics, biomaterials, and biologic response to arthroplasty. The journal focuses on case reports. It is the purpose of Arthroplasty Today to present material to practicing orthopaedic surgeons that will keep them abreast of developments in the field, prove useful in the care of patients, and aid in understanding the scientific foundation of this subspecialty area of joint replacement. The international members of the Editorial Board provide a worldwide perspective for the journal''s area of interest. Their participation ensures that each issue of Arthroplasty Today provides the reader with timely, peer-reviewed articles of the highest quality.
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