将物联网(IoT)应用于生物医学开发,用于外科研究和医疗保健专业培训

Ian Rubín de la Borbolla, Mark Chicoskie, Trey Tinnell
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引用次数: 6

摘要

个别外科医生依靠住院医师项目作为他们发展必要的软技能的主要渠道,这些软技能是在手术室中取得成功和出类拔萃所必需的。一项需要主观(定性)学习的关键技能包括用手在不同的软硬组织中导航,最重要的是,了解医疗器械在这些条件下的反应。在住院实习期间,学生将学习外科医生的具体教学方法,使用由住院实习项目管理人员和医务人员选择的特定器械。实习时间的可用性并不受住院医生兴趣的限制,而是受资源的限制(例如,尸体部位的高成本、项目保险和在手术室与患者的可用接触时间)。通过在培训期间使用数据提取,外科医生的教学可以确定参与者学习主观技能的程度。没有数据提取,居民缺乏可量化的数字来指导他们。这些值将验证正确的技术并突出需要改进的领域。最后,手术培训的有效性、软技能的掌握和整体手术经验直接帮助或损害患者的预后bb0。我们打算与研究科学家协调开发物联网(IoT)解决方案,将现有数据纳入培训和实时反馈。这些数据与双皮质钻孔条件有关,将为教学外科医生及其外科住院医师提供超越现有的评估工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying the Internet of Things (IoT) to biomedical development for surgical research and healthcare professional training
Individual surgeons rely on residency programs as their main conduit for developing the necessary soft skills needed to succeed and excel in the operating room. One critical skill requiring subjective (qualitative) learning involves navigating through varying soft and hard tissues by hand, and, most importantly, understanding how medical instruments respond under these conditions. During residency, students learn the specific methods of the teaching surgeons, using specific instruments chosen by both the administrators of the residency programs and medical staff. The availability of practice time is limited not by the interest of the resident, but due to limitations in resources (e.g. high cost of cadaver parts, program insurance, and available contact time with patients in the operating room). By using data extraction during training, teaching surgeons can determine how well participants learn a subjective skill. Without data extraction, residents lack quantifiable numbers to guide them. Such values would verify correct techniques and highlight areas for improvement. In the end, the effectiveness of surgical training, mastery of soft skills, and overall surgical experience directly helps or harms patient outcomes [1]. We intend to coordinate with research scientists to develop Internet of Things (IoT) solutions incorporating existing data for training and real-time feedback. This data, which pertains to bicortical drilling conditions, will provide teaching surgeons and their surgical residents evaluation tools beyond those currently available.
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