Nham Fong H, Court Tannor, Zalikha Abdul K, El-Othmani Mouhanad M, Shah Roshan P
Department of Orthopaedic Surgery and Sports Medicine, Detroit Medical Center, Detroit, MI, 48201, USA.
Department of Orthopaedic Surgery, Columbia University Medical Center, New York, NY, 10032, USA.
J Orthop. 2023 May 30;41:39-46. doi: 10.1016/j.jor.2023.05.012. eCollection 2023 Jul.
Machine learning is a subset of artificial intelligence using algorithmic modeling to progressively learn and create predictive models. Clinical application of machine learning can aid physicians through identification of risk factors and implications of predicted patient outcomes.
The aim of this study was to compare patient-specific and situation perioperative variables through optimized machine learning models to predict postoperative outcomes.
Data from 2016 to 2017 from the National Inpatient Sample was used to identify 177,442 discharges undergoing primary total hip arthroplasty, which were included in the training, testing, and validation of 10 machine learning models. 15 predictive variables consisting of 8 patient-specific and 7 situational specific variables were utilized to predict 3 outcome variables: length of stay, discharge, and mortality. The machine learning models were assessed in responsiveness via area under the curve and reliability.
For all outcomes, Linear Support Vector Machine had the highest responsiveness among all models when using all variables. When utilizing patient-specific variables only, responsiveness of the top 3 models ranged between 0.639 and 0.717 for length of stay, 0.703-0.786 for discharge disposition, and 0.887-0.952 for mortality. The top 3 models utilizing situational variables only produced responsiveness of 0.552-0.589 for length of stay, 0.543-0.574 for discharge disposition, and 0.469-0.536 for mortality.
Linear Support Vector Machine was the most responsive machine learning model of the 10 algorithms trained, while decision list was most reliable. Responsiveness was observed to be consistently higher with patient-specific variables than situational variables, emphasizing the predictive capacity and value of patient-specific variables. The current practice in machine learning literature generally deploys a single model, it is suboptimal to develop optimized models for application into clinical practice. The limitation of other algorithms may prohibit potential more reliable and responsive models. III.
机器学习是人工智能的一个子集,它使用算法建模来逐步学习并创建预测模型。机器学习在临床中的应用可以通过识别风险因素和预测患者预后的影响来帮助医生。
本研究的目的是通过优化的机器学习模型比较患者特异性和情境围手术期变量,以预测术后结果。
使用2016年至2017年国家住院患者样本中的数据,识别出177442例接受初次全髋关节置换术的出院病例,这些病例被纳入10个机器学习模型的训练、测试和验证。使用由8个患者特异性变量和7个情境特异性变量组成的15个预测变量来预测3个结果变量:住院时间、出院情况和死亡率。通过曲线下面积和可靠性对机器学习模型的反应性进行评估。
对于所有结果,当使用所有变量时,线性支持向量机在所有模型中具有最高的反应性。仅使用患者特异性变量时,前3个模型对住院时间的反应性在0.639至0.717之间,对出院情况的反应性在0.703至0.786之间,对死亡率的反应性在0.887至0.952之间。仅使用情境变量的前3个模型对住院时间的反应性为0.552至0.589,对出院情况的反应性为0.543至0.574,对死亡率的反应性为0.469至0.536。
线性支持向量机是所训练的10种算法中反应性最高的机器学习模型,而决策列表最可靠。观察到患者特异性变量的反应性始终高于情境变量,强调了患者特异性变量的预测能力和价值。机器学习文献中的当前做法通常采用单一模型,开发优化模型以应用于临床实践是次优的。其他算法的局限性可能会阻碍潜在的更可靠和反应性更高的模型。三。