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Development of a semi-automated method for subspecialty case distribution and prediction of intraoperative consultations in surgical pathology

机译:开发半自动化的亚专业病例分布方法并预测手术病理学中的术中咨询

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Background:In many surgical pathology laboratories, operating room schedules are prospectively reviewed to determine specimen distribution to different subspecialty services and to predict the number and nature of potential intraoperative consultations for which prior medical records and slides require review. At our institution, such schedules were manually converted into easily interpretable, surgical pathology-friendly reports to facilitate these activities. This conversion, however, was time-consuming and arguably a non-value-added activity.Objective:Our goal was to develop a semi-automated method of generating these reports that improved their readability while taking less time to perform than the manual method.Materials and Methods:A dynamic Microsoft Excel workbook was developed to automatically convert published operating room schedules into different tabular formats. Based on the surgical procedure descriptions in the schedule, a list of linked keywords and phrases was utilized to sort cases by subspecialty and to predict potential intraoperative consultations. After two trial-and-optimization cycles, the method was incorporated into standard practice.Results:The workbook distributed cases to appropriate subspecialties and accurately predicted intraoperative requests. Users indicated that they spent 1–2 h fewer per day on this activity than before, and team members preferred the formatting of the newer reports. Comparison of the manual and semi-automatic predictions showed that the mean daily difference in predicted versus actual intraoperative consultations underwent no statistically significant changes before and after implementation for most subspecialties.Conclusions:A well-designed, lean, and simple information technology solution to determine subspecialty case distribution and prediction of intraoperative consultations in surgical pathology is approximately as accurate as the gold standard manual method and requires less time and effort to generate.
机译:背景:在许多外科病理实验室中,前瞻性地检查手术室时间表,以确定将样本分配给不同的专科服务,并预测可能需要进行术前检查和检查的术中会诊的次数和性质。在我们的机构中​​,将这些时间表手动转换为易于解释,对手术病理友好的报告,以促进这些活动。但是,这种转换非常耗时,而且可以说是一项非增值活动。目的:我们的目标是开发一种半自动化的方法来生成这些报告,从而提高报告的可读性,同时比手工方法花费更少的时间。资料和方法:开发了动态Microsoft Excel工作簿,可以自动将已发布的手术室时间表转换为不同的表格格式。根据时间表中的手术程序说明,​​使用链接的关键字和短语列表按亚专业对病例进行分类,并预测可能的术中咨询。经过两个试验和优化周期后,该方法被纳入标准实践中。结果:工作簿将病例分配到适当的亚专业,并准确预测术中要求。用户表示,他们每天在这项活动上的花费比以前减少了1-2小时,并且团队成员更喜欢格式化新报告。手动和半自动预测的比较表明,对于大多数子专业,术前和术后术中咨询的平均每日差额在实施前后均没有统计学上的显着变化。结论:精心设计,精益且简单的信息技术解决方案来确定亚专业病例的分布和手术病理学中术中咨询的预测与金标准手动方法大致一样准确,并且所需的时间和精力更少。

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