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Towards Optimizing Hospital Patient Transports by Automatically Identifying Interpretable Causes of Delays

机译:通过自动识别延误的可解释原因来优化医院患者的运输

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The continuous financial pressure on hospitals forces them to rethink various workflows. We focus on optimizing hospital transports, within the hospital, as they count up to 30% of the overall hospital cost. In this paper, we discuss a self-learning platform that learns the causes of transport delays, in order to avoid these kinds of delays in the future. We pay special attention to the explainability of the self-learning system, such that management understands the learned causes and remains in control over the automated process. This is achieved by providing the learned causes as sentences that can be understood by non-technical personnel and allowing these causes to first be supervised before the system takes them into account. Once approved, the system will calculate how much more time should be assigned to these transports in order to avoid future delays. As a result, the scheduling of patient transportation can be automatically optimized, while management remains in full control of the process.
机译:医院承受的持续财务压力迫使他们重新考虑各种工作流程。我们专注于优化医院内部的医院运输,因为它们占医院总成本的30%。在本文中,我们讨论了一个自学习平台,该平台学习运输延误的原因,以避免将来出现此类延误。我们特别注意自学习系统的可解释性,以便管理层了解所学原因并保持对自动化过程的控制。这是通过将学习的原因提供为非技术人员可以理解的句子并允许在系统将它们考虑在内之前首先对这些原因进行监督来实现的。一旦获得批准,系统将计算应为这些运输分配更多的时间,以避免将来出现延误。结果,可以自动优化患者运输的日程安排,同时管理人员可以完全控制该过程。

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