Exploratory Outlier Detection for Acceleromyographic Neuromuscular Monitoring: Machine Learning Approach
BackgroundBecause 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 o...
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doaj-b239e4fab1fc49aaa27a39d31e701fa82021-06-21T12:33:29ZengJMIR PublicationsJournal of Medical Internet Research1438-88712021-06-01236e2591310.2196/25913Exploratory Outlier Detection for Acceleromyographic Neuromuscular Monitoring: Machine Learning ApproachMichaël Verdonckhttps://orcid.org/0000-0002-1927-3151Hugo Carvalhohttps://orcid.org/0000-0002-5784-5480Johan Berghmanshttps://orcid.org/0000-0002-3835-562XPatrice Forgethttps://orcid.org/0000-0001-5772-8439Jan Poelaerthttps://orcid.org/0000-0002-0065-2899 BackgroundBecause 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. ObjectiveThis 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. MethodsA 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. ResultsA 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). ConclusionsThe 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. Trial RegistrationClinicalTrials.gov NCT03605225; https://clinicaltrials.gov/ct2/show/NCT03605225https://www.jmir.org/2021/6/e25913 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Michaël Verdonck Hugo Carvalho Johan Berghmans Patrice Forget Jan Poelaert |
spellingShingle |
Michaël Verdonck Hugo Carvalho Johan Berghmans Patrice Forget Jan Poelaert Exploratory Outlier Detection for Acceleromyographic Neuromuscular Monitoring: Machine Learning Approach Journal of Medical Internet Research |
author_facet |
Michaël Verdonck Hugo Carvalho Johan Berghmans Patrice Forget Jan Poelaert |
author_sort |
Michaël Verdonck |
title |
Exploratory Outlier Detection for Acceleromyographic Neuromuscular Monitoring: Machine Learning Approach |
title_short |
Exploratory Outlier Detection for Acceleromyographic Neuromuscular Monitoring: Machine Learning Approach |
title_full |
Exploratory Outlier Detection for Acceleromyographic Neuromuscular Monitoring: Machine Learning Approach |
title_fullStr |
Exploratory Outlier Detection for Acceleromyographic Neuromuscular Monitoring: Machine Learning Approach |
title_full_unstemmed |
Exploratory Outlier Detection for Acceleromyographic Neuromuscular Monitoring: Machine Learning Approach |
title_sort |
exploratory outlier detection for acceleromyographic neuromuscular monitoring: machine learning approach |
publisher |
JMIR Publications |
series |
Journal of Medical Internet Research |
issn |
1438-8871 |
publishDate |
2021-06-01 |
description |
BackgroundBecause 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.
ObjectiveThis 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.
MethodsA 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.
ResultsA 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).
ConclusionsThe 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.
Trial RegistrationClinicalTrials.gov NCT03605225; https://clinicaltrials.gov/ct2/show/NCT03605225 |
url |
https://www.jmir.org/2021/6/e25913 |
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