Publication: A study of expert/novice perception in arthroscopic shoulder surgery
Issued Date
2020-08-14
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2-s2.0-85094887608
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Mahidol University
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SCOPUS
Bibliographic Citation
ACM International Conference Proceeding Series. (2020), 71-77
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Myat Su Yin, Peter Haddawy, Benedikt Hosp, Paphon Sa-Ngasoongsong, Thanwarat Tanprathumwong, Madereen Sayo, Supawit Yangyuenpradorn, Akara Supratak A study of expert/novice perception in arthroscopic shoulder surgery. ACM International Conference Proceeding Series. (2020), 71-77. doi:10.1145/3418094.3418135 Retrieved from: https://repository.li.mahidol.ac.th/handle/20.500.14594/59941
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Title
A study of expert/novice perception in arthroscopic shoulder surgery
Abstract
© 2020 ACM. Arthroscopic shoulder surgery is an advanced orthopedic surgical procedure, which is particularly challenging due to the complex anatomy of the shoulder, and tight spaces for navigation, which also limits the view from the arthroscope. In carrying out arthroscopy, the ability to quickly and effectively navigate through the joint to reach a desired location is essential. Novices often experience confusion in trying to triangulate the information from arthroscopy output with the background knowledge of anatomy while orienting and navigating the instruments. In this paper, we report on the results of the first cadaveric eye-tracking study of arthroscopic surgery in which we investigate differences in perception between experts and novices. Novices' perception is analyzed with cognitive load analysis throughout the procedure and specifically, during the portions of the procedure in which subjects are observed to be confused. In investigating such portions, the gaze data analysis is supplemented with head rotations and acceleration information from gyroscope and accelerometer sensors from the eye tracker. We also use the gathered eye tracking metrics to construct a model to classify subjects into expert/novice. We find statistically significant relations between head movement as well as pupil diameter and periods of confusion. We identify a subset of the metrics that we use to build a simple classifier that is able to distinguish between novices and experts with accuracy of 84%.