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Published May 2022 | Published
Journal Article Open

The Relationship Between Technical Skills, Cognitive Workload, and Errors During Robotic Surgical Exercises

Abstract

Purpose: We attempt to understand the relationship between surgeon technical skills, cognitive workload, and errors during a simulated robotic dissection task. Materials and Methods: Participant surgeons performed a robotic surgery dissection exercise. Participants were grouped based on surgical experience. Technical skills were evaluated utilizing the validated Global Evaluative Assessment of Robotic Skills (GEARS) assessment tool. The dissection task was evaluated for errors during active dissection or passive retraction maneuvers. We quantified cognitive workload of surgeon participants as an index of cognitive activity (ICA), derived from task-evoked pupillary response metrics; ICA ranged 0 to 1, with 1 representing maximum ICA. Generalized estimating equation (GEE) was used for all modelings to establish relationships between surgeon technical skills, cognitive workload, and errors. Results: We found a strong association between technical skills as measured by multiple GEARS domains (depth perception, force sensitivity, and robotic control) and passive errors, with higher GEARS scores associated with a lower relative risk of errors (all p < 0.01). For novice surgeons, as average GEARS scores increased, the average estimated ICA decreased. In contrast, as average GEARS increased for expert surgeons, the average estimated ICA increased. When exhibiting optimal technical skill (maximal GEARS scores), novices and experts reached a similar range of ICA scores (ICA: 0.47 and 0.42, respectively). Conclusions: This study found that there is an optimal cognitive workload level for surgeons of all experience levels during our robotic surgical exercise. Select technical skill domains were strong predictors of errors. Future research will explore whether an ideal cognitive workload range truly optimizes surgical training and reduces surgical errors.

Additional Information

© 2022, Mary Ann Liebert, Inc. Research reported in this publication was supported in part by the National Institute of Biomedical Imaging and Bioengineering of the National Institutes of Health under Award No. K23EB026493, and by the National Cancer Institute under Award No. 1 R01CA251579-01A1. Authors' Contributions. S.I.R. was in charge of project development, data collection and preparation, and article writing and editing. S.Y.C. performed data analysis and article writing and editing. J.H.N. performed article editing and project management. L.C.P. performed data collection and preparation and article editing. L.G.M. performed data collection and article editing. R.M. performed data collection, data analysis, and article editing. S.M. performed data analysis and article editing. R.K. performed data analysis and article editing. A.A. performed data analysis and article editing. A.J.H. was in charge of project development, data management, and article writing and editing. IRB Approval and Human and Animal Rights. Our study complied with protocols was approved by the University of Southern California's IRB. All procedures performed in studies involving human participants were in accordance with the ethical standards of the institutional and/or national research committee and with the 1964 Helsinki Declaration and its later amendments or comparable ethical standards. This article does not contain any studies with animals performed by any of the authors. Informed consent was obtained from all individuals included in the study. Author Disclosure Statement. A.J.H. is a consultant for Mimic, Quantagene, and Johnson & Johnson. The study was not funded by any of these companies. Other authors have no conflict of interest.

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Created:
August 22, 2023
Modified:
October 24, 2023