Elisa Asensio Blasco, Xavier Borrat Frigola, Xavier Pastor Duran, Artur Conesa González, Narcís Macià, David Sánchez Barcenilla, Ricardo Garrido Bejar, Santiago Frid
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The system architecture included four servers (Coder, Reviewer, Manager, and Terminology Server) supporting real-time coding and review processes. Clinical and operational data from April to October 2024 were analyzed to evaluate the system's performance. Between April 9 and October 4, 2024, a total of 118,534 HPs were recorded. Of these, 74.2% were coded in real-time using the NLP tool, 23.3% were coded by documentation specialists, and 2.5% remained uncoded. The system significantly reduced coding delays and enriched the institutional data warehouse, facilitating real-time research and management activities. Implementing a SNOMED CT-coded HP list supported by NLP and terminology services improved coding accuracy and clinician efficiency. This system enhances clinical understanding, enables evidence-based recommendations, and supports data-driven decision-making in healthcare management and research. 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引用次数: 0
摘要
本研究旨在描述在Clínic de Barcelona医院实施SNOMED ct编码健康问题(HP)清单。该项目的重点是提高临床编码的准确性和效率,从患者入院的过程自动化,同时使编码数据能够用于研究和管理目的的重用。选择SNOMED CT作为记录hp的参考术语。创建了术语子集(我们的健康问题目录- hpc -)以满足本地需求。临床工作站集成了一个NLP工具,以帮助从自然语言输入中对hp进行初级编码。系统架构包括四个服务器(Coder、Reviewer、Manager和Terminology Server),支持实时编码和审查过程。分析了2024年4月至10月的临床和运行数据,以评估系统的性能。在2024年4月9日至10月4日期间,共记录了118,534个hp。其中,74.2%是使用NLP工具实时编码的,23.3%是由文档专家编码的,2.5%是未编码的。该系统大大减少了编码延迟,丰富了机构数据仓库,促进了实时研究和管理活动。实现由NLP和术语服务支持的SNOMED ct编码HP列表可以提高编码准确性和临床医生的效率。该系统增强了临床理解,实现了基于证据的建议,并支持医疗保健管理和研究中的数据驱动决策。临床试验编号不适用。
From Admission to Discharge: Leveraging NLP for Upstream Primary Coding with SNOMED CT.
This study aims to describe implementing a SNOMED CT-coded health problem (HP) list at Hospital Clínic de Barcelona. The project focuses on enhancing the accuracy and efficiency of clinical coding by automating the process from patient admission, while simultaneously enabling the reuse of coded data for research and management purposes. SNOMED CT was selected as the reference terminology for recording HPs. A subset of terms (our Health Problems Catalogue -HPC-) was created to meet local needs. An NLP tool was integrated into the clinical workstation to assist in primary coding HPs from natural language inputs. The system architecture included four servers (Coder, Reviewer, Manager, and Terminology Server) supporting real-time coding and review processes. Clinical and operational data from April to October 2024 were analyzed to evaluate the system's performance. Between April 9 and October 4, 2024, a total of 118,534 HPs were recorded. Of these, 74.2% were coded in real-time using the NLP tool, 23.3% were coded by documentation specialists, and 2.5% remained uncoded. The system significantly reduced coding delays and enriched the institutional data warehouse, facilitating real-time research and management activities. Implementing a SNOMED CT-coded HP list supported by NLP and terminology services improved coding accuracy and clinician efficiency. This system enhances clinical understanding, enables evidence-based recommendations, and supports data-driven decision-making in healthcare management and research. Clinical Trial Number Not applicable.
期刊介绍:
Journal of Medical Systems provides a forum for the presentation and discussion of the increasingly extensive applications of new systems techniques and methods in hospital clinic and physician''s office administration; pathology radiology and pharmaceutical delivery systems; medical records storage and retrieval; and ancillary patient-support systems. The journal publishes informative articles essays and studies across the entire scale of medical systems from large hospital programs to novel small-scale medical services. Education is an integral part of this amalgamation of sciences and selected articles are published in this area. Since existing medical systems are constantly being modified to fit particular circumstances and to solve specific problems the journal includes a special section devoted to status reports on current installations.