Department of Physical Therapy, Crean College of Health and Behavioral Sciences, Chapman University, Irvine, California, United States of America.
Department of Electrical and Computer Science Engineering, Fowler School of Engineering, Chapman University, Orange, California, United States of America.
PLoS One. 2022 Jun 3;17(6):e0267936. doi: 10.1371/journal.pone.0267936. eCollection 2022.
Evaluation of surgical skills during minimally invasive surgeries is needed when recruiting new surgeons. Although surgeons' differentiation by skill level is highly complex, performance in specific clinical tasks such as pegboard transfer and knot tying could be determined using wearable EMG and accelerometer sensors. A wireless wearable platform has made it feasible to collect movement and muscle activation signals for quick skill evaluation during surgical tasks. However, it is challenging since the placement of multiple wireless wearable sensors may interfere with their performance in the assessment. This study utilizes machine learning techniques to identify optimal muscles and features critical for accurate skill evaluation. This study enrolled a total of twenty-six surgeons of different skill levels: novice (n = 11), intermediaries (n = 12), and experts (n = 3). Twelve wireless wearable sensors consisting of surface EMGs and accelerometers were placed bilaterally on bicep brachii, tricep brachii, anterior deltoid, flexor carpi ulnaris (FCU), extensor carpi ulnaris (ECU), and thenar eminence (TE) muscles to assess muscle activations and movement variability profiles. We found features related to movement complexity such as approximate entropy, sample entropy, and multiscale entropy played a critical role in skill level identification. We found that skill level was classified with highest accuracy by i) ECU for Random Forest Classifier (RFC), ii) deltoid for Support Vector Machines (SVM) and iii) biceps for Naïve Bayes Classifier with classification accuracies 61%, 57% and 47%. We found RFC classifier performed best with highest classification accuracy when muscles are combined i) ECU and deltoid (58%), ii) ECU and biceps (53%), and iii) ECU, biceps and deltoid (52%). Our findings suggest that quick surgical skill evaluation is possible using wearables sensors, and features from ECU, deltoid, and biceps muscles contribute an important role in surgical skill evaluation.
在招募新外科医生时,需要对微创手术技能进行评估。尽管外科医生的技能水平差异非常复杂,但通过佩戴式肌电图和加速度计传感器,可以确定他们在 pegboard 转移和打结等特定临床任务中的表现。无线可穿戴平台使得在手术任务中快速评估技能时收集运动和肌肉激活信号成为可能。然而,这是具有挑战性的,因为多个无线可穿戴传感器的放置可能会干扰其在评估中的性能。本研究利用机器学习技术来确定用于准确技能评估的最佳肌肉和关键特征。本研究共纳入了 26 名不同技能水平的外科医生:新手(n = 11)、中级(n = 12)和专家(n = 3)。在肱二头肌、肱三头肌、三角肌、尺侧腕屈肌、尺侧腕伸肌和大鱼际肌的双侧放置了 12 个由表面肌电图和加速度计组成的无线可穿戴传感器,以评估肌肉激活和运动变异性特征。我们发现与运动复杂性相关的特征,如近似熵、样本熵和多尺度熵,在技能水平识别中起着关键作用。我们发现,通过以下方式可以最高精度地对技能水平进行分类:i)随机森林分类器(RFC)的 ECU、ii)支持向量机(SVM)的三角肌和 iii)朴素贝叶斯分类器的二头肌,分类准确率分别为 61%、57%和 47%。我们发现,当肌肉组合使用时,RFC 分类器的表现最佳,具有最高的分类准确性:i)ECU 和三角肌(58%)、ii)ECU 和二头肌(53%)和 iii)ECU、二头肌和三角肌(52%)。我们的研究结果表明,使用可穿戴传感器可以实现快速的手术技能评估,并且来自 ECU、三角肌和二头肌的特征在手术技能评估中起着重要作用。