Motion Smoothness-Based Assessment of Surgical Expertise: The Importance of Selecting Proper Metrics
Abstract
:1. Introduction
2. Materials and Methods
2.1. Research Environment
2.2. Participants
2.3. Tasks
- (1)
- Peg transfer task: The participants grasped a peg (1.6 × 1.4 × 1.6 cm) from a pin on the task board inside a box (Figure 1a) using the laparoscopic grasper (Ethicon Endo-Surgery, Cincinnati, OH, USA) held in the non-dominant hand. After that, they delivered the peg to the grasper held in the dominant hand, moved it to the target (a pin 10 cm away from the initial pin), and dropped it there. Then, the same procedure was conducted for the second peg. Once the two pegs were placed on the dominant hand’s side, the participants conducted the reverse procedure in order to transfer the pegs back to the original position. The peg transfer task is included in the Fundamentals of Laparoscopic Surgery (FLS) curriculum [25].
- (2)
- Bimanual peg transfer task: Using both surgical graspers held in the dominant and non-dominant hands, the participants grasped the two pegs simultaneously from the non-dominant hand’s side, moved them to the targets (pins 10 cm away from the initial pins’ position), and dropped them there. Afterwards, participants grasped the pegs from the dominant hand’s side and moved them back to the initial positions. This task required a high level of bimanual coordination.
- (3)
- Rubber band translocation task: A rubber band was placed around four pins on the task board, and participants grasped the rubber band with two laparoscopic graspers, translocated the rubber band to the distal pins (5.5 cm away from the initial pins), released the rubber band, re-grasped it, and moved it back to the original position. This task was included as it had tool–tissue interaction that could affect surgical performance. This task also required a high level of bimanual coordination.
2.4. Motion Tracking of Surgical Tooltip
2.5. Motion Smoothness Derivation Algorithms
- (1)
- Mean tooltip motion jerk (J) was defined as the mean value of the magnitude of the tooltip motion jerk (the third time derivative of the tooltip position).
- (2)
- Logarithmic dimensionless tooltip motion jerk (DJ) was derived from tooltip motion jerk converted into a dimensionless metric via normalizing by tooltip path length (PL) and task duration (T). The term in Table 1 has a dimension of ; hence, it is normalized using . This normalization is in accordance with [10,14,24]. Since dimensionless motion jerk values had different orders of magnitude across the skill levels, logarithmic values were used to report the results. To derive this metric, we required the tooltip path length, computed by integrating the tooltip velocity magnitude with respect to time.
- (3)
- The 95% tooltip motion frequency (f95%) was calculated in the frequency domain, as opposed to the first two metrics above that were calculated in the time domain. To calculate f95%, we converted the tooltip position data into the frequency domain using the power spectral density of the tooltip position. The power spectral density of the tooltip position was calculated by the pwelch function (10 s Hamming windows and 50% overlap) of MATLAB 2020, implementing Welch’s method. Then, we identified the frequency below which contained 95% of the total power of the tooltip position (Figure 2). We intended not to include the high-frequency and low-amplitude content of the tooltip position signal in the motion smoothness metric calculation, which resulted from the measurement noise. Therefore, we considered 95% of the total power of the tooltip position to derive the motion smoothness metric, neglecting the area under the power spectral density generated from the measurement noise (5%).
2.6. Statistical Analysis
3. Results
3.1. Mean Tooltip Motion Jerk
3.2. Logarithmic Dimensionless Tooltip Motion Jerk
3.3. The 95% Tooltip Motion Frequency
3.4. Tooltip Path Length and Task Duration
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Motion Smoothness Metric | Formula |
---|---|
Mean tooltip motion jerk | |
Logarithmic dimensionless tooltip motion jerk | |
95% tooltip motion frequency | The frequency below which contains 95% of the total power of the tooltip position signal. |
Metric | Task | The Instrument Held in the Dominant Hand | The Instrument Held in the Non-Dominant Hand | ||||||
---|---|---|---|---|---|---|---|---|---|
All | N-E | N-I | I-E | All | N-E | N-I | I-E | ||
Mean tooltip motion jerk (J) | Peg transfer | 0.580 | 0.825 | 0.438 | 0.413 | 0.043 * | 0.003 * | 0.438 | 0.556 |
Bimanual peg transfer | 0.736 | 0.825 | 0.518 | 0.730 | 0.970 | 0.940 | 0.797 | 1.000 | |
Rubber band translocation | 0.698 | 0.604 | 0.518 | 0.730 | 0.114 | 0.050 | 0.438 | 0.286 | |
Logarithmic dimensionless tooltip motion jerk (DJ) | Peg transfer | 0.002 * | 0.003 * | 0.019 * | 0.016 * | 0.002 * | 0.003 * | 0.019 * | 0.016 * |
Bimanual peg transfer | 0.001 * | 0.003 * | 0.001 * | 0.016 * | 0.001 * | 0.003 * | 0.001 * | 0.032 * | |
Rubber band translocation | 0.006 * | 0.003 * | 0.060 | 0.063 | 0.011 * | 0.003 * | 0.147 | 0.111 | |
95% tooltip motion frequency (f95%) | Peg transfer | 0.020 * | 0.020 * | 0.029 * | 0.905 | 0.004 * | 0.003 * | 0.007 * | 0.730 |
Bimanual peg transfer | 0.023 * | 0.011 * | 0.083 | 0.413 | 0.024 * | 0.020 * | 0.083 | 0.190 | |
Rubber band translocation | 0.024 * | 0.011 * | 0.060 | 0.905 | 0.004 * | 0.003 * | 0.007 * | 0.730 | |
Tooltip path length (PL) | Peg transfer | 0.003 * | <0.001 * | 0.240 | 0.008 * | 0.005* | 0.002 * | 0.083 | 0.056 |
Bimanual peg transfer | 0.002 * | <0.001 * | 0.012 * | 0.095 | <0.001* | <0.001 * | <0.001 * | 0.095 | |
Rubber band translocation | 0.007 * | <0.001 * | 0.112 | 0.222 | 0.004* | <0.001 * | 0.042 * | 0.222 | |
Task duration (T) | Peg transfer | All: 0.001 * | N-E: 0.001 * | N-I: 0.007 * | I-E: 0.016 * | ||||
Bimanual peg transfer | All: 0.001 * | N-E: 0.001 * | N-I: 0.001 * | I-E: 0.016 * | |||||
Rubber band translocation | All: 0.004 * | N-E: 0.001 * | N-I: 0.112 | I-E: 0.056 |
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Aghazadeh, F.; Zheng, B.; Tavakoli, M.; Rouhani, H. Motion Smoothness-Based Assessment of Surgical Expertise: The Importance of Selecting Proper Metrics. Sensors 2023, 23, 3146. https://doi.org/10.3390/s23063146
Aghazadeh F, Zheng B, Tavakoli M, Rouhani H. Motion Smoothness-Based Assessment of Surgical Expertise: The Importance of Selecting Proper Metrics. Sensors. 2023; 23(6):3146. https://doi.org/10.3390/s23063146
Chicago/Turabian StyleAghazadeh, Farzad, Bin Zheng, Mahdi Tavakoli, and Hossein Rouhani. 2023. "Motion Smoothness-Based Assessment of Surgical Expertise: The Importance of Selecting Proper Metrics" Sensors 23, no. 6: 3146. https://doi.org/10.3390/s23063146
APA StyleAghazadeh, F., Zheng, B., Tavakoli, M., & Rouhani, H. (2023). Motion Smoothness-Based Assessment of Surgical Expertise: The Importance of Selecting Proper Metrics. Sensors, 23(6), 3146. https://doi.org/10.3390/s23063146