Mohamad Y Fares, Harry H Liu, Ana Paula Beck da Silva Etges, Benjamin Zhang, Jon J P Warner, Jeffrey J Olson, Catherine J Fedorka, Adam Z Khan, Matthew J Best, Jacob M Kirsch, Jason E Simon, Brett Sanders, John G Costouros, Xiaoran Zhang, Porter Jones, Derek A Haas, Joseph A Abboud
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The aim of this work is to systematically summarize the available literature on the extent to which natural language processing, machine learning, and artificial intelligence (AI) can help improve the predictability of hospital readmissions after orthopaedic and spine surgeries.</p><p><strong>Methods: </strong>This is a systematic review and meta-analysis. PubMed, Embase and Google Scholar were searched, up until August 30, 2023, for studies that explore the use of AI, natural language processing, and machine learning tools for the prediction of readmission rates after orthopedic procedures. Data regarding surgery type, patient population, readmission outcomes, advanced models utilized, comparison methods, predictor sets, the inclusion of perioperative predictors, validation method, size of training and testing sample, accuracy, and receiver operating characteristics (C-statistic), among other factors, were extracted and assessed.</p><p><strong>Results: </strong>A total of 26 studies were included in our final dataset. The overall summary C-statistic showed a mean of 0.71 across all models, indicating a reasonable level of predictiveness. A total of 15 articles (57%) were attributed to the spine, making it the most commonly explored orthopaedic field in our study. When comparing accuracy of prediction models between different fields, models predicting readmissions after hip/knee arthroplasty procedures had a higher prediction accuracy (mean C-statistic = 0.79) than spine (mean C-statistic = 0.7) and shoulder (mean C-statistic = 0.67). In addition, models that used single institution data, and those that included intraoperative and/or postoperative outcomes, had a higher mean C-statistic than those utilizing other data sources, and that include only preoperative predictors. According to the Prediction model Risk of Bias Assessment Tool, the majority of the articles in our study had a high risk of bias.</p><p><strong>Conclusion: </strong>AI tools perform reasonably well in predicting readmissions after orthopaedic procedures. Future work should focus on standardizing study methodologies and designs, and improving the data analysis process, in an attempt to produce more reliable and tangible results.</p><p><strong>Level of evidence: </strong>Level III. 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引用次数: 0
摘要
背景:许多应用和策略被用来帮助评估骨科手术后再入院的趋势和模式,试图推断出可能的风险因素和致病因素。这项工作旨在系统总结现有文献,说明自然语言处理、机器学习和人工智能(AI)在多大程度上有助于提高骨科和脊柱手术后再入院的可预测性:这是一项系统回顾和荟萃分析。截至 2023 年 8 月 30 日,我们在 PubMed、Embase 和 Google Scholar 上搜索了探讨使用人工智能、自然语言处理和机器学习工具预测骨科手术后再住院率的研究。研究提取并评估了有关手术类型、患者人群、再入院结果、所使用的高级模型、比较方法、预测因子集、围术期预测因子的纳入、验证方法、训练和测试样本的大小、准确性和接收者操作特征(C统计量)等因素的数据:结果:共有 26 项研究被纳入最终数据集。在所有模型中,总体汇总 C 统计量的平均值为 0.71,表明预测性达到了合理水平。共有 15 篇文章(57%)涉及脊柱,使其成为我们研究中最常探讨的骨科领域。在比较不同领域预测模型的准确性时,髋关节/膝关节置换术后再入院预测模型的预测准确性(平均 C 统计量 = 0.79)高于脊柱(平均 C 统计量 = 0.7)和肩关节(平均 C 统计量 = 0.67)。此外,使用单一机构数据的模型以及包含术中和/或术后结果的模型比使用其他数据源的模型和仅包含术前预测因素的模型具有更高的平均 C 统计量。根据预测模型偏倚风险评估工具,我们研究中的大多数文章都存在较高的偏倚风险:人工智能工具在预测骨科手术后再入院方面表现良好。今后的工作重点应放在研究方法和设计的标准化以及数据分析过程的改进上,力争得出更可靠、更切实的结果:证据等级:三级。有关证据等级的完整描述,请参阅 "作者须知"。
Utility of Machine Learning, Natural Language Processing, and Artificial Intelligence in Predicting Hospital Readmissions After Orthopaedic Surgery: A Systematic Review and Meta-Analysis.
Background: Numerous applications and strategies have been utilized to help assess the trends and patterns of readmissions after orthopaedic surgery in an attempt to extrapolate possible risk factors and causative agents. The aim of this work is to systematically summarize the available literature on the extent to which natural language processing, machine learning, and artificial intelligence (AI) can help improve the predictability of hospital readmissions after orthopaedic and spine surgeries.
Methods: This is a systematic review and meta-analysis. PubMed, Embase and Google Scholar were searched, up until August 30, 2023, for studies that explore the use of AI, natural language processing, and machine learning tools for the prediction of readmission rates after orthopedic procedures. Data regarding surgery type, patient population, readmission outcomes, advanced models utilized, comparison methods, predictor sets, the inclusion of perioperative predictors, validation method, size of training and testing sample, accuracy, and receiver operating characteristics (C-statistic), among other factors, were extracted and assessed.
Results: A total of 26 studies were included in our final dataset. The overall summary C-statistic showed a mean of 0.71 across all models, indicating a reasonable level of predictiveness. A total of 15 articles (57%) were attributed to the spine, making it the most commonly explored orthopaedic field in our study. When comparing accuracy of prediction models between different fields, models predicting readmissions after hip/knee arthroplasty procedures had a higher prediction accuracy (mean C-statistic = 0.79) than spine (mean C-statistic = 0.7) and shoulder (mean C-statistic = 0.67). In addition, models that used single institution data, and those that included intraoperative and/or postoperative outcomes, had a higher mean C-statistic than those utilizing other data sources, and that include only preoperative predictors. According to the Prediction model Risk of Bias Assessment Tool, the majority of the articles in our study had a high risk of bias.
Conclusion: AI tools perform reasonably well in predicting readmissions after orthopaedic procedures. Future work should focus on standardizing study methodologies and designs, and improving the data analysis process, in an attempt to produce more reliable and tangible results.
Level of evidence: Level III. See Instructions for Authors for a complete description of levels of evidence.
期刊介绍:
JBJS Reviews is an innovative review journal from the publishers of The Journal of Bone & Joint Surgery. This continuously published online journal provides comprehensive, objective, and authoritative review articles written by recognized experts in the field. Edited by Thomas A. Einhorn, MD, and a distinguished Editorial Board, each issue of JBJS Reviews, updates the orthopaedic community on important topics in a concise, time-saving manner, providing expert insights into orthopaedic research and clinical experience. Comprehensive reviews, special features, and integrated CME provide orthopaedic surgeons with valuable perspectives on surgical practice and the latest advances in the field within twelve subspecialty areas: Basic Science, Education & Training, Elbow, Ethics, Foot & Ankle, Hand & Wrist, Hip, Infection, Knee, Oncology, Pediatrics, Pain Management, Rehabilitation, Shoulder, Spine, Sports Medicine, Trauma.