Malisetty Saiteja, Rastegari Elham, Siu Ka-Chun, Ali Hesham H
College of Information Science & Technology, University of Nebraska at Omaha, Omaha, NE 68182, USA.
Business Intelligence & Analytics Department, Creighton University, Omaha, NE 68178, USA.
J Clin Med. 2024 Feb 18;13(4):1150. doi: 10.3390/jcm13041150.
Laparoscopic surgery demands high precision and skill, necessitating effective training protocols that account for factors such as hand dominance. This study investigates the impact of hand dominance on the acquisition and proficiency of laparoscopic surgical skills, utilizing a novel assessment method that combines Network Models and electromyography (EMG) data.
Eighteen participants, comprising both medical and non-medical students, engaged in laparoscopic simulation tasks, including peg transfer and wire loop tasks. Performance was assessed using Network Models to analyze EMG data, capturing muscle activity and learning progression. The NASA Task Load Index (TLX) was employed to evaluate subjective task demands and workload perceptions.
Our analysis revealed significant differences in learning progression and skill proficiency between dominant and non-dominant hands, suggesting the need for tailored training approaches. Network Models effectively identified patterns of skill acquisition, while NASA-TLX scores correlated with participants' performance and learning progression, highlighting the importance of considering both objective and subjective measures in surgical training.
The study underscores the importance of hand dominance in laparoscopic surgical training and suggests that personalized training protocols could enhance surgical precision, efficiency, and patient outcomes. By leveraging advanced analytical techniques, including Network Models and EMG data analysis, this research contributes to optimizing clinical training methodologies, potentially revolutionizing surgical education and improving patient care.
腹腔镜手术需要高精度和高技能,因此需要有效的培训方案来考虑诸如利手等因素。本研究利用一种结合网络模型和肌电图(EMG)数据的新型评估方法,调查利手对腹腔镜手术技能的获得和熟练程度的影响。
18名参与者,包括医学和非医学专业学生,参与了腹腔镜模拟任务,包括移钉和套线任务。使用网络模型分析EMG数据来评估表现,捕捉肌肉活动和学习进展。采用美国国家航空航天局任务负荷指数(TLX)来评估主观任务需求和工作量感知。
我们的分析显示,优势手和非优势手在学习进展和技能熟练程度上存在显著差异,这表明需要量身定制的训练方法。网络模型有效地识别了技能习得模式,而NASA-TLX分数与参与者的表现和学习进展相关,突出了在外科手术训练中同时考虑客观和主观指标的重要性。
该研究强调了利手在腹腔镜手术训练中的重要性,并表明个性化训练方案可以提高手术精度、效率和患者预后。通过利用包括网络模型和EMG数据分析在内的先进分析技术,本研究有助于优化临床训练方法,可能会给外科手术教育带来变革并改善患者护理。