Relationship Between Surgeon’s Brain Functional Network Reconfiguration and Performance Level During Robot-Assisted Surgery

The current methods of assessment of surgical performance for robot-assisted surgery are subjective. In this paper, we propose a cognitive-based method for objective evaluation of performance. Changes in brain functional networks were extracted and their relationship with performance level was inves...

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Main Authors: Somayeh B. Shafiei, Ahmed Aly Hussein, Khurshid A. Guru
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8367803/
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spelling doaj-7fe3f3f892454b00a71de7bd84aec64c2021-03-29T21:07:31ZengIEEEIEEE Access2169-35362018-01-016334723347910.1109/ACCESS.2018.28413388367803Relationship Between Surgeon’s Brain Functional Network Reconfiguration and Performance Level During Robot-Assisted SurgerySomayeh B. Shafiei0Ahmed Aly Hussein1https://orcid.org/0000-0002-5727-9036Khurshid A. Guru2Department of Mechanical and Aerospace Engineering, University at Buffalo, State University of New York, Buffalo, NY, USAApplied Technology Laboratory for Advanced Surgery, Roswell Park Cancer Institute, Buffalo, NY, USAApplied Technology Laboratory for Advanced Surgery, Roswell Park Cancer Institute, Buffalo, NY, USAThe current methods of assessment of surgical performance for robot-assisted surgery are subjective. In this paper, we propose a cognitive-based method for objective evaluation of performance. Changes in brain functional networks were extracted and their relationship with performance level was investigated. We used electroencephalogram data recorded from a mentor surgeon's brain while supervising and performing surgical tasks of varying complexity [urethrovesical anastomosis (UVA) and lymph-node dissection (LND)]. Multilayer community detection techniques were used to extract functional network communities at frequency bands of θ, α, lower β, upper β, and γ. Results showed different detected communities while supervising and performing LND (more complex). However, for UVA (less complex), the majority of functional communities were similar. This is likely because, in less complicated tasks, the trainee's performance more closely matched the mentor's expectation. Entropy and power distribution through frequency bands showed minimum thermodynamic stability during α and the maximum during y. The relaxation time for channels with high entropy level was also extracted as a brain functional metric at thermodynamic stability state. These metrics may be used to quantify changes of brain functional network as performance improves.https://ieeexplore.ieee.org/document/8367803/Robot-assisted surgerycommunity detectionbrain functional network
collection DOAJ
language English
format Article
sources DOAJ
author Somayeh B. Shafiei
Ahmed Aly Hussein
Khurshid A. Guru
spellingShingle Somayeh B. Shafiei
Ahmed Aly Hussein
Khurshid A. Guru
Relationship Between Surgeon’s Brain Functional Network Reconfiguration and Performance Level During Robot-Assisted Surgery
IEEE Access
Robot-assisted surgery
community detection
brain functional network
author_facet Somayeh B. Shafiei
Ahmed Aly Hussein
Khurshid A. Guru
author_sort Somayeh B. Shafiei
title Relationship Between Surgeon’s Brain Functional Network Reconfiguration and Performance Level During Robot-Assisted Surgery
title_short Relationship Between Surgeon’s Brain Functional Network Reconfiguration and Performance Level During Robot-Assisted Surgery
title_full Relationship Between Surgeon’s Brain Functional Network Reconfiguration and Performance Level During Robot-Assisted Surgery
title_fullStr Relationship Between Surgeon’s Brain Functional Network Reconfiguration and Performance Level During Robot-Assisted Surgery
title_full_unstemmed Relationship Between Surgeon’s Brain Functional Network Reconfiguration and Performance Level During Robot-Assisted Surgery
title_sort relationship between surgeon’s brain functional network reconfiguration and performance level during robot-assisted surgery
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description The current methods of assessment of surgical performance for robot-assisted surgery are subjective. In this paper, we propose a cognitive-based method for objective evaluation of performance. Changes in brain functional networks were extracted and their relationship with performance level was investigated. We used electroencephalogram data recorded from a mentor surgeon's brain while supervising and performing surgical tasks of varying complexity [urethrovesical anastomosis (UVA) and lymph-node dissection (LND)]. Multilayer community detection techniques were used to extract functional network communities at frequency bands of θ, α, lower β, upper β, and γ. Results showed different detected communities while supervising and performing LND (more complex). However, for UVA (less complex), the majority of functional communities were similar. This is likely because, in less complicated tasks, the trainee's performance more closely matched the mentor's expectation. Entropy and power distribution through frequency bands showed minimum thermodynamic stability during α and the maximum during y. The relaxation time for channels with high entropy level was also extracted as a brain functional metric at thermodynamic stability state. These metrics may be used to quantify changes of brain functional network as performance improves.
topic Robot-assisted surgery
community detection
brain functional network
url https://ieeexplore.ieee.org/document/8367803/
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