Department of Anesthesiology and Perioperative Medicine, Vrije Universiteit Brussel, Jette, Belgium.
Department of Anesthesiology and Perioperative Medicine, Universitair Ziekenhuis Brussel, Brussel, Belgium.
J Med Internet Res. 2021 May 31;23(6):e25913. doi: 10.2196/25913.
Perioperative quantitative monitoring of neuromuscular function in patients receiving neuromuscular blockers has become internationally recognized as an absolute and core necessity in modern anesthesia care. Because of their kinetic nature, artifactual recordings of acceleromyography-based neuromuscular monitoring devices are not unusual. These generate a great deal of cynicism among anesthesiologists, constituting an obstacle toward their widespread adoption. Through outlier analysis techniques, monitoring devices can learn to detect and flag signal abnormalities. Outlier analysis (or anomaly detection) refers to the problem of finding patterns in data that do not conform to expected behavior.
This study was motivated by the development of a smartphone app intended for neuromuscular monitoring based on combined accelerometric and angular hand movement data. During the paired comparison stage of this app against existing acceleromyography monitoring devices, it was noted that the results from both devices did not always concur. This study aims to engineer a set of features that enable the detection of outliers in the form of erroneous train-of-four (TOF) measurements from an acceleromyographic-based device. These features are tested for their potential in the detection of erroneous TOF measurements by developing an outlier detection algorithm.
A data set encompassing 533 high-sensitivity TOF measurements from 35 patients was created based on a multicentric open label trial of a purpose-built accelero- and gyroscopic-based neuromuscular monitoring app. A basic set of features was extracted based on raw data while a second set of features was purpose engineered based on TOF pattern characteristics. Two cost-sensitive logistic regression (CSLR) models were deployed to evaluate the performance of these features. The final output of the developed models was a binary classification, indicating if a TOF measurement was an outlier or not.
A total of 7 basic features were extracted based on raw data, while another 8 features were engineered based on TOF pattern characteristics. The model training and testing were based on separate data sets: one with 319 measurements (18 outliers) and a second with 214 measurements (12 outliers). The F1 score (95% CI) was 0.86 (0.48-0.97) for the CSLR model with engineered features, significantly larger than the CSLR model with the basic features (0.29 [0.17-0.53]; P<.001).
The set of engineered features and their corresponding incorporation in an outlier detection algorithm have the potential to increase overall neuromuscular monitoring data consistency. Integrating outlier flagging algorithms within neuromuscular monitors could potentially reduce overall acceleromyography-based reliability issues.
ClinicalTrials.gov NCT03605225; https://clinicaltrials.gov/ct2/show/NCT03605225.
围手术期对接受神经肌肉阻滞剂的患者的神经肌肉功能进行定量监测已成为现代麻醉护理中绝对和核心的必要条件。由于肌动描记术监测设备的动力学性质,基于肌动描记术的神经肌肉监测设备的人工记录并不罕见。这些在麻醉师中引起了很多怀疑,成为广泛采用的障碍。通过离群值分析技术,监测设备可以学习检测和标记信号异常。离群值分析(或异常检测)是指在数据中找到不符合预期行为的模式的问题。
本研究的动机是开发一种基于加速度计和手部角度运动数据组合的智能手机应用程序,用于神经肌肉监测。在该应用程序与现有的肌动描记术监测设备进行配对比较阶段,注意到两个设备的结果并不总是一致。本研究旨在设计一组特征,以便以错误的四成(TOF)测量的形式检测肌动描记术设备中的离群值。通过开发异常检测算法,测试这些特征在检测错误的 TOF 测量中的潜力。
根据一项专用的加速度计和陀螺仪神经肌肉监测应用程序的多中心开放标签试验,创建了一个包含 35 名患者的 533 个高灵敏度 TOF 测量的数据集。基于原始数据提取了一组基本特征,而另一组特征是基于 TOF 模式特征专门设计的。部署了两种基于成本敏感的逻辑回归(CSLR)模型来评估这些特征的性能。开发模型的最终输出是一个二进制分类,指示 TOF 测量是否为异常值。
总共从原始数据中提取了 7 个基本特征,而另一个基于 TOF 模式特征设计了 8 个特征。模型训练和测试基于单独的数据集:一个数据集有 319 个测量值(18 个异常值),另一个数据集有 214 个测量值(12 个异常值)。基于工程特征的 CSLR 模型的 F1 评分(95%CI)为 0.86(0.48-0.97),显著大于基于基本特征的 CSLR 模型(0.29 [0.17-0.53];P<.001)。
基于工程特征及其在异常检测算法中的相应应用有可能提高整体神经肌肉监测数据的一致性。在神经肌肉监测器中集成异常标记算法有可能减少基于肌动描记术的整体可靠性问题。
ClinicalTrials.gov NCT03605225;https://clinicaltrials.gov/ct2/show/NCT03605225.