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机器学习可实现神经外科手术过程中术中运动诱发电位的专家级分类。

Machine learning allows expert level classification of intraoperative motor evoked potentials during neurosurgical procedures.

机构信息

Section of Neurosurgery, Department of Neurosciences, Biomedicine and Movement Sciences, University of Verona, Verona, Italy.

Department of Computer Science, University of Verona, Verona, Italy.

出版信息

Comput Biol Med. 2024 Sep;180:109032. doi: 10.1016/j.compbiomed.2024.109032. Epub 2024 Aug 21.

Abstract

OBJECTIVE

To develop and evaluate machine learning (ML) approaches for muscle identification using intraoperative motor evoked potentials (MEPs), and to compare their performance to human experts.

BACKGROUND

There is an unseized opportunity to apply ML analytic techniques to the world of intraoperative neuromonitoring (IOM). MEPs are the ideal candidates given the importance of their correct interpretation during a surgical operation to the brain or the spine. In this work, we develop and test a set of different ML models for muscle identification using intraoperative MEPs and compare their performance to human experts. In addition, we provide a review of the available literature on current ML applications to IOM data in neurosurgery.

METHODS

We trained and tested five different ML classifiers on a MEP database developed from six different muscles in patients who underwent brain or spinal cord surgery. MEPs were obtained by both transcranial (TES) and direct cortical stimulation (DCS) protocols. The models were evaluated within a single patient and on previously unseen patients, considering signals from TES and DCS both independently and mixed. Ten expert neurophysiologists classified a set of 50 randomly selected MEPs, and their performance was compared to the best performing model.

RESULTS

A total of 25.423 MEPs were included in the study. Random Forest proved to be the best performing model with 99 % accuracy in the single patient dataset task and a 78 %-94 % accuracy range on previously unseen patients. The model performance was maximized by representing MEPs as a set of features typically employed in signal processing compared to traditional neurophysiological parameters. The classification ability of the Random Forest model between six different muscles and across different MEP acquisition modalities (79 %) significantly exceeded that of human experts (mean 48 %).

CONCLUSIONS

Carefully selected ML models proved to have reliable capacity of extracting meaningful information to classify intraoperative MEPs using a limited number of features, proving robustness across patients and signal acquisition modalities, outperforming human experts, and with the potential to act as decision support systems to the IOM team. Such encouraging results lay the path to further explore the underlying nature of clinically important signals, with the aim to continue to produce useful applications to make surgeries safer and more efficient.

摘要

目的

开发和评估使用术中运动诱发电位(MEP)进行肌肉识别的机器学习(ML)方法,并将其性能与人类专家进行比较。

背景

有一个未被充分利用的机会,可以将 ML 分析技术应用于术中神经监测(IOM)领域。MEP 是理想的候选者,因为在手术过程中正确解释它们对于大脑或脊柱非常重要。在这项工作中,我们开发并测试了一组用于使用术中 MEP 进行肌肉识别的不同 ML 模型,并将其性能与人类专家进行比较。此外,我们还对当前 ML 应用于神经外科 IOM 数据的文献进行了综述。

方法

我们在一个由接受脑或脊髓手术的六位患者的六块不同肌肉组成的 MEP 数据库上训练和测试了五种不同的 ML 分类器。MEP 是通过经颅(TES)和直接皮质刺激(DCS)协议获得的。模型在单个患者和以前未见过的患者中进行了评估,同时考虑了 TES 和 DCS 信号的独立和混合情况。十位神经生理学家对一组 50 个随机选择的 MEP 进行了分类,将他们的表现与表现最好的模型进行了比较。

结果

共有 25423 个 MEP 被纳入研究。随机森林模型在单患者数据集任务中表现最佳,准确率为 99%,在以前未见过的患者中准确率范围为 78%-94%。与传统神经生理学参数相比,将 MEP 表示为一组通常用于信号处理的特征,可最大限度地提高模型性能。随机森林模型在六块不同肌肉之间以及在不同 MEP 采集方式之间的分类能力(79%)显著超过了人类专家(平均 48%)。

结论

精心选择的 ML 模型被证明具有可靠的能力,能够使用有限的特征提取有意义的信息来对术中 MEP 进行分类,在患者和信号采集方式方面具有稳健性,表现优于人类专家,并有可能作为 IOM 团队的决策支持系统。这些令人鼓舞的结果为进一步探索临床重要信号的本质奠定了基础,旨在继续开发有用的应用程序,使手术更安全、更高效。

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