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Development and Preliminary Evaluation of a Visual Annotation Tool to Rapidly Collect Expert-Annotated Weight Errors in Pediatric Growth Charts

机译:对视觉注释工具的开发与初步评估,以便在儿科生长图表中快速收集专家注释的重量误差

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Patient weights can be entered incorrectly into electronic health record (EHR) systems. These weight errors can cause significant patient harm especially in pediatrics where weight-based dosing is pervasively used. Determining weight errors through manual chart reviews is impractical in busy clinics, and current EHR alerts are rudimentary. To address these issues, we seek to develop an advanced algorithm to detect weight errors using supervised machine learning techniques. The critical first step is to collect labelled weight errors for algorithm training. In this paper, we designed and preliminarily evaluated a visual annotation tool using Agile software development to achieve the goal of supporting the rapid collection of expert-annotated weight errors. The design was based on the fact that weight errors are infrequent and medical experts can easily spot potential errors. The results show positive user feedback and prepared us for the formal user-centered evaluation as the next step.
机译:患者重量可以不正确进入电子健康记录(EHR)系统。 这些体重误差会造成显着的患者伤害,特别是在普遍使用重量的给药的儿科中。 通过手动图表评估确定权重错误在繁忙的诊所是不切实际的,目前的EHR警报是基本的。 为了解决这些问题,我们寻求开发一种先进的算法来使用监督机器学习技术检测权重错误。 关键的第一步是收集标记的重量误差以进行算法训练。 在本文中,我们设计并初步评估了使用敏捷软件开发的可视化注释工具,以实现支持快速收集专家注释的权重错误的目标。 该设计基于重量误差不频繁,医学专家可以轻松发现潜在的错误。 结果显示了积极的用户反馈,并为下一步进行了正式的用户中心评估。

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