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从事件预测治疗过程步骤。

Predicting treatment process steps from events.

作者信息

Meier Jens, Dietz Andreas, Boehm Andreas, Neumuth Thomas

机构信息

Innovation Center Computer Assisted Surgery (ICCAS), Universität Leipzig, Semmelweisstrasse 14, 04103 Leipzig, Germany.

Innovation Center Computer Assisted Surgery (ICCAS), Universität Leipzig, Semmelweisstrasse 14, 04103 Leipzig, Germany; Department of ENT Surgery, University Medical Center Leipzig, Liebigstr. 10-14, 04103 Leipzig, Germany.

出版信息

J Biomed Inform. 2015 Feb;53:308-19. doi: 10.1016/j.jbi.2014.12.003. Epub 2014 Dec 12.

Abstract

MOTIVATION

The primary economy-driven documentation of patient-specific information in clinical information systems leads to drawbacks in the use of these systems in daily clinical routine. Missing meta-data regarding underlying clinical workflows within the stored information is crucial for intelligent support systems. Unfortunately, there is still a lack of primary clinical needs-driven electronic patient documentation. Hence, physicians and surgeons must search hundreds of documents to find necessary patient data rather than accessing relevant information directly from the current process step. In this work, a completely new approach has been developed to enrich the existing information in clinical information systems with additional meta-data, such as the actual treatment phase from which the information entity originates.

METHODS

Stochastic models based on Hidden Markov Models (HMMs) are used to create a mathematical representation of the underlying clinical workflow. These models are created from real-world anonymized patient data and are tailored to therapy processes for patients with head and neck cancer. Additionally, two methodologies to extend the models to improve the workflow recognition rates are presented in this work.

RESULTS

A leave-one-out cross validation study was performed and achieved promising recognition rates of up to 90% with a standard deviation of 6.4%.

CONCLUSIONS

The method presented in this paper demonstrates the feasibility of predicting clinical workflow steps from patient-specific information as the basis for clinical workflow support, as well as for the analysis and improvement of clinical pathways.

摘要

动机

临床信息系统中主要由经济驱动的患者特定信息记录,导致这些系统在日常临床工作中的使用存在缺陷。存储信息中缺少有关基础临床工作流程的元数据,这对智能支持系统至关重要。不幸的是,目前仍缺乏以临床基本需求驱动的电子患者文档。因此,内科医生和外科医生必须搜索数百份文档以查找必要的患者数据,而不是直接从当前流程步骤中获取相关信息。在这项工作中,已经开发出一种全新的方法,用额外的元数据丰富临床信息系统中的现有信息,比如信息实体所源自的实际治疗阶段。

方法

基于隐马尔可夫模型(HMM)的随机模型用于创建基础临床工作流程的数学表示。这些模型由真实世界的匿名患者数据创建,并针对头颈癌患者的治疗过程进行了定制。此外,本文还介绍了两种扩展模型以提高工作流程识别率的方法。

结果

进行了留一法交叉验证研究,获得了高达90%的可观识别率,标准差为6.4%。

结论

本文提出的方法证明了从患者特定信息预测临床工作流程步骤作为临床工作流程支持以及临床路径分析和改进基础的可行性。

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