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Machine learning based analysis and detection of trend outliers for electromyographic neuromuscular monitoring.
Verdonck, Michaël; Carvalho, Hugo; Fuchs-Buder, Thomas; Brull, Sorin J; Poelaert, Jan.
Afiliación
  • Verdonck M; Department of Business Informatics and Operations Management, University Ghent, Tweekerkenstraat 2, Ghent, 9000, Belgium. michael.verdonck@multipitch.be.
  • Carvalho H; Department of Anesthesia and Perioperative Medicine, Universitair Ziekenhuis Brussel, Jette, Belgium.
  • Fuchs-Buder T; Department of Anesthesiology and Reanimation, AZ Sint Jan Brugge-Oostende, Oostende, Belgium.
  • Brull SJ; University of Lorraine, Centre Hospitalier Universitaire de Nancy/Hôpitaux de Brabois, Lorraine, France.
  • Poelaert J; Department of Anesthesiology and Perioperative Medicine, Mayo Clinic College of Medicine and Science, Jacksonville, FL, USA.
J Clin Monit Comput ; 38(5): 1163-1173, 2024 Oct.
Article en En | MEDLINE | ID: mdl-38573367
ABSTRACT

PURPOSE:

Neuromuscular monitoring is frequently plagued by artefacts, which along with the frequent unawareness of the principles of this subtype of monitoring by many clinicians, tends to lead to a cynical attitute by clinicians towards these monitors. As such, the present study aims to derive a feature set and evaluate its discriminative performance for the purpose of Train-of-Four Ratio (TOF-R) outlier analysis during continuous intraoperative EMG-based neuromuscular monitoring.

METHODS:

Patient data was sourced from two devices (1) Datex-Ohmeda Electromyography (EMG) E-NMT a dataset derived from a prospective observational trial including 136 patients (21,891 TOF-R observations), further subdivided in two based on the type of features included; and (2) TetraGraph a clinical case repository dataset of 388 patients (97,838 TOF-R observations). The two datasets were combined to create a synthetic set, which included shared features across the two. This process led to the training of four distinct models.

RESULTS:

The models showed an adequate bias/variance balance, suggesting no overfitting or underfitting. Models 1 and 2 consistently outperformed the others, with the former achieving an F1 score of 0.41 (0.31, 0.50) and an average precision score (95% CI) of 0.48 (0.35, 0.60). A random forest model analysis indicated that engineered TOF-R features were proportionally more influential in model performance than basic features.

CONCLUSIONS:

Engineered TOF-R trend features and the resulting Cost-Sensitive Logistic Regression (CSLR) models provide useful insights and serve as a potential first step towards the automated removal of outliers for neuromuscular monitoring devices. TRIAL REGISTRATION NCT04518761 (clinicaltrials.gov), registered on 19 August 2020.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Electromiografía / Monitoreo Neuromuscular / Aprendizaje Automático Límite: Adult / Aged / Female / Humans / Male / Middle aged Idioma: En Revista: J Clin Monit Comput Asunto de la revista: INFORMATICA MEDICA / MEDICINA Año: 2024 Tipo del documento: Article País de afiliación: Bélgica

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Electromiografía / Monitoreo Neuromuscular / Aprendizaje Automático Límite: Adult / Aged / Female / Humans / Male / Middle aged Idioma: En Revista: J Clin Monit Comput Asunto de la revista: INFORMATICA MEDICA / MEDICINA Año: 2024 Tipo del documento: Article País de afiliación: Bélgica