Suppr超能文献

人工学习与机器学习在脊柱外科手术中的应用:一项系统综述

Artificial Learning and Machine Learning Applications in Spine Surgery: A Systematic Review.

作者信息

Lopez Cesar D, Boddapati Venkat, Lombardi Joseph M, Lee Nathan J, Mathew Justin, Danford Nicholas C, Iyer Rajiv R, Dyrszka Marc D, Sardar Zeeshan M, Lenke Lawrence G, Lehman Ronald A

机构信息

Department of Orthopaedic Surgery, The Spine Hospital, 21611New York-Presbyterian/Columbia University Irving Medical Center, New York, NY, USA.

出版信息

Global Spine J. 2022 Sep;12(7):1561-1572. doi: 10.1177/21925682211049164. Epub 2022 Feb 28.

Abstract

OBJECTIVES

This current systematic review sought to identify and evaluate all current research-based spine surgery applications of AI/ML in optimizing preoperative patient selection, as well as predicting and managing postoperative outcomes and complications.

METHODS

A comprehensive search of publications was conducted through the EMBASE, Medline, and PubMed databases using relevant keywords to maximize the sensitivity of the search. No limits were placed on level of evidence or timing of the study. Findings were reported according to the PRISMA guidelines.

RESULTS

After application of inclusion and exclusion criteria, 41 studies were included in this review. Bayesian networks had the highest average AUC (.80), and neural networks had the best accuracy (83.0%), sensitivity (81.5%), and specificity (71.8%). Preoperative planning/cost prediction models (.89,82.2%) and discharge/length of stay models (.80,78.0%) each reported significantly higher average AUC and accuracy compared to readmissions/reoperation prediction models (.67,70.2%) ( < .001, = .005, respectively). Model performance also significantly varied across postoperative management applications for average AUC and accuracy values ( < .001, < .027, respectively).

CONCLUSIONS

Generally, authors of the reviewed studies concluded that AI/ML offers a potentially beneficial tool for providers to optimize patient care and improve cost-efficiency. More specifically, AI/ML models performed best, on average, when optimizing preoperative patient selection and planning and predicting costs, hospital discharge, and length of stay. However, models were not as accurate in predicting postoperative complications, adverse events, and readmissions and reoperations. An understanding of AI/ML-based applications is becoming increasingly important, particularly in spine surgery, as the volume of reported literature, technology accessibility, and clinical applications continue to rapidly expand.

摘要

目的

本系统评价旨在识别和评估当前基于研究的人工智能/机器学习在脊柱手术中的所有应用,以优化术前患者选择,以及预测和管理术后结果及并发症。

方法

通过EMBASE、Medline和PubMed数据库,使用相关关键词对出版物进行全面检索,以最大限度提高检索的敏感性。对研究的证据水平或时间不设限制。研究结果根据PRISMA指南进行报告。

结果

应用纳入和排除标准后,本评价纳入了41项研究。贝叶斯网络的平均AUC最高(0.80),神经网络的准确率最高(83.0%)、敏感性最高(81.5%)和特异性最高(71.8%)。与再入院/再次手术预测模型(0.67,70.2%)相比,术前规划/成本预测模型(0.89,82.2%)和出院/住院时间模型(0.80,78.0%)各自报告的平均AUC和准确率显著更高(P<0.001,P=0.005,分别)。模型性能在术后管理应用中的平均AUC和准确率值方面也存在显著差异(P<0.001,P<0.027,分别)。

结论

总体而言,纳入评价的研究作者得出结论,人工智能/机器学习为医疗服务提供者优化患者护理和提高成本效益提供了一个潜在有益的工具。更具体地说,人工智能/机器学习模型在优化术前患者选择和规划以及预测成本、出院和住院时间方面平均表现最佳。然而,模型在预测术后并发症、不良事件以及再入院和再次手术方面并不那么准确。随着报告的文献数量、技术可及性和临床应用继续迅速扩大,对基于人工智能/机器学习的应用的理解变得越来越重要,尤其是在脊柱手术中。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6360/9393994/e38553c29720/10.1177_21925682211049164-fig1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验