Agarwalla Avinesh, Lu Yining, Reinholz Anna K, Marigi Erick M, Liu Joseph N, Sanchez-Sotelo Joaquin
Department of Orthopedic Surgery, Westchester Medical Center, Valhalla, NY, USA.
Department of Orthopedic Surgery, Mayo Clinic, Rochester, MN, USA.
JSES Int. 2024 May 6;8(5):932-940. doi: 10.1016/j.jseint.2024.04.015. eCollection 2024 Sep.
Identification of prognostic variables for poor outcomes following open reduction internal fixation (ORIF) of displaced proximal humerus fractures have been limited to singular, linear factors and subjective clinical intuition. Machine learning (ML) has the capability to objectively segregate patients based on various outcome metrics and reports the connectivity of variables resulting in the optimal outcome. Therefore, the purpose of this study was to (1) use unsupervised ML to stratify patients to high-risk and low-risk clusters based on postoperative events, (2) compare the ML clusters to the American Society of Anesthesiologists (ASA) classification for assessment of risk, and (3) determine the variables that were associated with high-risk patients after proximal humerus ORIF.
The American College of Surgeons-National Surgical Quality Improvement Program database was retrospectively queried for patients undergoing ORIF for proximal humerus fractures between 2005 and 2018. Four unsupervised ML clustering algorithms were evaluated to partition subjects into "high-risk" and "low-risk" subgroups based on combinations of observed outcomes. Demographic, clinical, and treatment variables were compared between these groups using descriptive statistics. A supervised ML algorithm was generated to identify patients who were likely to be "high risk" and were compared to ASA classification. A game-theory-based explanation algorithm was used to illustrate predictors of "high-risk" status.
Overall, 4670 patients were included, of which 202 were partitioned into the "high-risk" cluster, while the remaining (4468 patients) were partitioned into the "low-risk" cluster. Patients in the "high-risk" cluster demonstrated significantly increased rates of the following complications: 30-day mortality, 30-day readmission rates, 30-day reoperation rates, nonroutine discharge rates, length of stay, and rates of all surgical and medical complications assessed with the exception of urinary tract infection ( < .001). The best performing supervised machine learning algorithm for preoperatively identifying "high-risk" patients was the extreme-gradient boost (XGBoost), which achieved an area under the receiver operating characteristics curve of 76.8%, while ASA classification had an area under the receiver operating characteristics curve of 61.7%. Shapley values identified the following predictors of "high-risk" status: greater body mass index, increasing age, ASA class 3, increased operative time, male gender, diabetes, and smoking history.
Unsupervised ML identified that "high-risk" patients have a higher risk of complications (8.9%) than "low-risk" groups (0.4%) with respect to 30-day complication rate. A supervised ML model selected greater body mass index, increasing age, ASA class 3, increased operative time, male gender, diabetes, and smoking history to effectively predict "high-risk" patients.
对于移位的肱骨近端骨折切开复位内固定术(ORIF)后预后不良的预测变量的识别,一直局限于单一的线性因素和主观的临床直觉。机器学习(ML)有能力根据各种结果指标客观地对患者进行分类,并报告导致最佳结果的变量之间的关联性。因此,本研究的目的是:(1)使用无监督机器学习根据术后事件将患者分层为高风险和低风险组;(2)将机器学习分组与美国麻醉医师协会(ASA)分类进行比较以评估风险;(3)确定肱骨近端ORIF后与高风险患者相关的变量。
回顾性查询美国外科医师学会-国家外科质量改进计划数据库中2005年至2018年期间接受肱骨近端骨折ORIF的患者。评估了四种无监督机器学习聚类算法,以根据观察到的结果组合将受试者分为“高风险”和“低风险”亚组。使用描述性统计比较这些组之间的人口统计学、临床和治疗变量。生成一个监督机器学习算法来识别可能为“高风险”的患者,并与ASA分类进行比较。使用基于博弈论的解释算法来说明“高风险”状态的预测因素。
总体而言,共纳入4670例患者,其中202例被分为“高风险”组,其余(4468例患者)被分为“低风险”组。“高风险”组患者的以下并发症发生率显著增加:30天死亡率、30天再入院率、30天再次手术率、非常规出院率、住院时间以及除尿路感染外评估的所有手术和医疗并发症发生率(P<0.001)。术前识别“高风险”患者的表现最佳的监督机器学习算法是极端梯度提升(XGBoost),其受试者操作特征曲线下面积为76.8%,而ASA分类的受试者操作特征曲线下面积为61.7%。夏普利值确定了以下“高风险”状态的预测因素:更高的体重指数、年龄增加、ASA 3级、手术时间延长、男性、糖尿病和吸烟史。
无监督机器学习表明,就30天并发症发生率而言,“高风险”患者(8.9%)比“低风险”组(0.4%)发生并发症的风险更高。一个监督机器学习模型选择了更高的体重指数、年龄增加、ASA 3级、手术时间延长、男性、糖尿病和吸烟史来有效预测“高风险”患者。