Antal Bejczy Center for Intelligent Robotics, University Research and Innovation Center, Óbuda University, 1034 Budapest, Hungary.
Doctoral School of Applied Informatics and Applied Mathematics, Óbuda University, 1034 Budapest, Hungary.
Sensors (Basel). 2021 Apr 10;21(8):2666. doi: 10.3390/s21082666.
Sensor technologies and data collection practices are changing and improving quality metrics across various domains. Surgical skill assessment in Robot-Assisted Minimally Invasive Surgery (RAMIS) is essential for training and quality assurance. The mental workload on the surgeon (such as time criticality, task complexity, distractions) and non-technical surgical skills (including situational awareness, decision making, stress resilience, communication, leadership) may directly influence the clinical outcome of the surgery. A literature search in PubMed, Scopus and PsycNet databases was conducted for relevant scientific publications. The standard PRISMA method was followed to filter the search results, including non-technical skill assessment and mental/cognitive load and workload estimation in RAMIS. Publications related to traditional manual Minimally Invasive Surgery were excluded, and also the usability studies on the surgical tools were not assessed. 50 relevant publications were identified for non-technical skill assessment and mental load and workload estimation in the domain of RAMIS. The identified assessment techniques ranged from self-rating questionnaires and expert ratings to autonomous techniques, citing their most important benefits and disadvantages. Despite the systematic research, only a limited number of articles was found, indicating that non-technical skill and mental load assessment in RAMIS is not a well-studied area. Workload assessment and soft skill measurement do not constitute part of the regular clinical training and practice yet. Meanwhile, the importance of the research domain is clear based on the publicly available surgical error statistics. Questionnaires and expert-rating techniques are widely employed in traditional surgical skill assessment; nevertheless, recent technological development in sensors and Internet of Things-type devices show that skill assessment approaches in RAMIS can be much more profound employing automated solutions. Measurements and especially big data type analysis may introduce more objectivity and transparency to this critical domain as well. Non-technical skill assessment and mental load evaluation in Robot-Assisted Minimally Invasive Surgery is not a well-studied area yet; while the importance of this domain from the clinical outcome's point of view is clearly indicated by the available surgical error statistics.
传感器技术和数据收集实践正在不断变化和改进各个领域的质量指标。机器人辅助微创手术(RAMIS)中的手术技能评估对于培训和质量保证至关重要。外科医生的精神工作负荷(例如时间紧迫性、任务复杂性、分心)和非技术手术技能(包括情境意识、决策制定、压力弹性、沟通、领导力)可能直接影响手术的临床结果。在 PubMed、Scopus 和 PsycNet 数据库中进行了相关科学出版物的文献检索。遵循标准的 PRISMA 方法筛选搜索结果,包括 RAMIS 中的非技术技能评估和精神/认知负荷和工作负荷估计。排除了与传统手动微创手术相关的出版物,也没有评估手术工具的可用性研究。 确定了 50 篇与 RAMIS 领域的非技术技能评估和精神负荷及工作负荷估计相关的出版物。确定的评估技术范围从自我评估问卷和专家评分到自主技术,引用了它们最重要的优缺点。 尽管进行了系统研究,但仅发现了为数不多的文章,表明 RAMIS 中的非技术技能和精神负荷评估尚未得到充分研究。工作负荷评估和软技能测量尚未构成常规临床培训和实践的一部分。同时,基于公开的手术错误统计数据,该研究领域的重要性是显而易见的。问卷和专家评分技术广泛应用于传统手术技能评估;然而,传感器和物联网类型设备的最新技术发展表明,采用自动化解决方案,RAMIS 中的技能评估方法可以更加深入。测量方法,特别是大数据类型分析,也可能为这一关键领域带来更多的客观性和透明度。 机器人辅助微创手术中的非技术技能评估和精神负荷评估尚未得到充分研究;然而,从临床结果的角度来看,这一领域的重要性显然是由可用的手术错误统计数据表明的。