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Erschienen in: Surgical Endoscopy 11/2019

21.02.2019

Sensor-based machine learning for workflow detection and as key to detect expert level in laparoscopic suturing and knot-tying

verfasst von: Karl-Friedrich Kowalewski, Carly R. Garrow, Mona W. Schmidt, Laura Benner, Beat P. Müller-Stich, Felix Nickel

Erschienen in: Surgical Endoscopy | Ausgabe 11/2019

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Abstract

Introduction

The most common way of assessing surgical performance is by expert raters to view a surgical task and rate a trainee’s performance. However, there is huge potential for automated skill assessment and workflow analysis using modern technology. The aim of the present study was to evaluate machine learning (ML) algorithms using the data of a Myo armband as a sensor device for skills level assessment and phase detection in laparoscopic training.

Materials and methods

Participants of three experience levels in laparoscopy performed a suturing and knot tying task on silicon models. Experts rated performance using Objective Structured Assessment of Surgical Skills (OSATS). Participants wore Myo armbands (Thalmic Labs™, Ontario, Canada) to record acceleration, angular velocity, orientation, and Euler orientation. ML algorithms (decision forest, neural networks, boosted decision tree) were compared for skill level assessment and phase detection.

Results

28 participants (8 beginner, 10 intermediate, 10 expert) were included, and 99 knots were available for analysis. A neural network regression model had the lowest mean absolute error in predicting OSATS score (3.7 ± 0.6 points, r2 = 0.03 ± 0.81; OSATS min.-max.: 4–37 points). An ensemble of binary-class neural networks yielded the highest accuracy in predicting skill level (beginners: 82.2% correctly identified, intermediate: 3.0%, experts: 79.5%) whereas standard statistical analysis failed to discriminate between skill levels. Phase detection on raw data showed the best results with a multi-class decision jungle (average 16% correctly identified), but improved to 43% average accuracy with two-class boosted decision trees after Dynamic time warping (DTW) application.

Conclusion

Modern machine learning algorithms aid in interpreting complex surgical motion data, even when standard analysis fails. Dynamic time warping offers the potential to process and compare surgical motion data in order to allow automated surgical workflow detection. However, further research is needed to interpret and standardize available data and improve sensor accuracy.
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Metadaten
Titel
Sensor-based machine learning for workflow detection and as key to detect expert level in laparoscopic suturing and knot-tying
verfasst von
Karl-Friedrich Kowalewski
Carly R. Garrow
Mona W. Schmidt
Laura Benner
Beat P. Müller-Stich
Felix Nickel
Publikationsdatum
21.02.2019
Verlag
Springer US
Erschienen in
Surgical Endoscopy / Ausgabe 11/2019
Print ISSN: 0930-2794
Elektronische ISSN: 1432-2218
DOI
https://doi.org/10.1007/s00464-019-06667-4

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