The future of intraoperative neuromonitoring (IONM) in spinal surgery1

IF 2.5 Q3 Medicine
W. Bryan Wilent PhD, DABNM , Marcia-Ruth Ndege BS, CNIM , Adam Doan DC, DABNM
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引用次数: 0

Abstract

Preface

On behalf of the NASS section on intraoperative neuromonitoring (IONM), we present a narrative perspective exploring the future of IONM in spine surgery in the US, drawing on current evidence and future projections.

Present state

IONM is used during hundreds of thousands of spinal procedures each year to enhance patient safety via real-time neurodiagnostic feedback. The most common service model is an in-room technologist and a remote supervising professional who interprets the neurophysiological data. The primary goal of IONM is to: (1) detect significant signal changes from baseline, (2) identify the cause—whether technical, positional, anesthetic, or iatrogenic, and (3) pinpoint the site of injury. This diagnostic process is time-sensitive, complex, and dependent on both the signal pattern change and patient and procedural factors that are dynamically variable.

Future: integrating and advancing technology

Artificial intelligence (AI) and machine learning (ML) hold promise to enhance the accuracy in detecting and interpreting signal changes for IONM clinicians and be integrated into surgeon-directed software platforms. However, widespread AI/ML adoption depends on the availability of large, validated IONM datasets—currently hindered by practice variation, inconsistent perioperative documentation, and unharmonized IONM, anesthetic, surgical, and patient medical records.

Future: maturation in Profession

IONM can improve in the consistency in which optimal IONM is delivered, how IONM is utilized with evidence-based planning for alerts, and the collection of harmonized and complete signal and clinical records. Most publications have focused on the diagnostic accuracy of IONM in predicting deficits, but more emphasis is needed on demonstrating the therapeutic impact of interventions to alerts and their role in preventing new deficits.
脊柱外科术中神经监测(IONM)的应用前景
我们代表NASS术中神经监测(IONM)部分,根据目前的证据和未来的预测,提出一个叙事视角,探讨IONM在美国脊柱外科中的未来。每年,通过实时神经诊断反馈,在数十万例脊柱手术中使用Present stateIONM来提高患者的安全性。最常见的服务模式是一名室内技术人员和一名解释神经生理学数据的远程监督专业人员。IONM的主要目标是:(1)检测基线的显著信号变化,(2)确定原因——无论是技术、体位、麻醉还是医源性,以及(3)精确定位损伤部位。这个诊断过程是时间敏感的,复杂的,并且依赖于信号模式的变化和患者和程序因素是动态变化的。未来:整合和推进技术人工智能(AI)和机器学习(ML)有望提高IONM临床医生检测和解释信号变化的准确性,并集成到外科指导的软件平台中。然而,人工智能/机器学习的广泛采用取决于大型、经过验证的IONM数据集的可用性——目前受到实践差异、不一致的围手术期文件和不协调的IONM、麻醉、手术和患者医疗记录的阻碍。未来:ProfessionIONM的成熟可以提高最佳IONM交付的一致性,IONM如何与基于证据的警报计划一起使用,以及协调完整的信号和临床记录的收集。大多数出版物都关注IONM在预测缺陷方面的诊断准确性,但需要更多地强调证明干预措施对警报的治疗影响及其在预防新缺陷中的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.80
自引率
0.00%
发文量
71
审稿时长
48 days
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