Schematic depicting the FLS box simulator where trainees perform the bimanual dexterity task. A continuous-wave spectrometer is used to measure functional brain activation via raw fNIRS signals in real time. Credit: Nicolás Fernández, Nemani et al., Sci. Adv. 2018; 4: eaat3807

A team of researchers affiliated with several institutions in the U.S. has developed a way to test surgical competency by using brain imaging technology to analyze the brains of surgeons in action. In their paper published in the journal Science Advances, the group describes the system they developed and how well it worked when compared with current methods.

Assessing the skills of people learning to be surgeons is a difficult task, but it is also necessary to make sure they are competent before operating on people. Currently, it is done by instructor surgeons watching students in action and assessing their abilities—and by students taking tests on simulators. In this new effort, the researchers have taken an entirely new approach—using brain imaging equipment to study the brain of a person engaging in a surgical simulation.

Prior research had shown that the brain behaves in specific ways when people are engaging in activities that require a high degree of motor skill—at least for those who have become really good at such an activity. More specifically, they noted that individuals with high levels of have been found to have certain brain characteristics related to things such as how the brain regions are connected, motor dysfunction, level of cognitive function, motor action, perception and multitasking. These findings led to the idea that the process could be reversed—using brain imaging equipment to see if a person engaging in a difficult motor skill task had brain that resembled the of highly skilled people.

Optode positions for coverage over the PFC, M1, and SMA. Red dots indicate infrared sources, blue dots indicate long separation detectors, and textured blue dots indicate short separation detectors. The PFC has three sources (1 to 3), three short separation detectors (S1 to S3), and four long separation detectors (1 to 4). The M1 has 4 sources (4 to 7), 4 short separation detectors (S4 to S7), and 10 long detectors (5 to 14). The SMA has one source (8), one short separation detector (S8), and three long separation detectors (9, 15, and 16). Credit: Nicolás Fernández, Nemani et al., Sci. Adv. 2018; 4: eaat3807

To find out if such an approach might work, they enlisted the assistance of multiple volunteers with one of four levels of expertise: expert surgeons, beginning surgical students, medical students with training and without training. Other volunteers served as a control group. Each of the volunteers was asked to carry out a surgical procedure on a simulator while attached to a functional near-infrared spectroscopy (fNIRS) .

The researchers report that their system showed that expert surgeons had far more advanced motor skills than people in the other groups. They also found that as students were trained, their motor skills became more apparent. They conclude by claiming that their system was more accurate than current methods used for board certification of surgeons.

Brain region labels are shown for PFC, M1, and SMA regions. Average functional activation for all subjects in the Novice and Expert surgeon groups are shown as spatial maps while subjects perform the FLS task. Credit: Nemani et al., Sci. Adv. 2018; 4: eaat3807

More information: Arun Nemani et al. Assessing bimanual motor skills with optical neuroimaging, Science Advances (2018). DOI: 10.1126/sciadv.aat3807

Journal information: Science Advances